1 Introduction
As the atmospheric concentration of continues to rise, the Arctic–boreal zone (ABZ) is expected to continue to warm more rapidly than the rest of the globe . The impacts of this accelerated warming are manifest across all major components of the ABZ – the cryosphere, hydrosphere, and biosphere . The multifaceted ABZ response to warming includes accelerated carbon cycling , permafrost thaw, intensification of disturbance regimes , changes in snow cover and ecosystem water availability , and shifts in vegetation structure and composition . These changes in the whole ABZ terrestrial ecosystem structure and function have important implications for global climate, given the region's strong biophysical coupling and large, and potentially vulnerable, reservoirs of below and aboveground carbon, especially in the permafrost zone .
The responses of carbon cycling in the ABZ to changes in global climate are complex, interconnected, and may have compensating effects . For example, air and soil warming, in conjunction with a lengthening of the annual non-frozen period across the ABZ , stimulate plant productivity directly and indirectly through increased nutrient and water availability . Warming and fertilization have contributed to widespread “greening” across the ABZ, including shrubification and northward treeline expansion , i.e., the encroachment of trees and shrubs into tundra regions. However, rapid warming across much of the ABZ is also accelerating decomposition, causing drought stress in warmer and drier landscapes and intensifying disturbance regimes such as wildfire and insect outbreaks , all of which contribute to the increasingly observed patterns of “browning” in the ABZ .
As an emergent property of global change drivers in the ABZ, the seasonal cycle of exchange across the ABZ has been experiencing changes in timing and magnitude of fluxes. Most critically regarding the magnitude of carbon fluxes, the atmospheric concentration in the ABZ has been measured to be increasing between 30 –60 during the last 60 years . Our current knowledge of the ABZ seasonal cycle of suggests that much of the observed change in seasonal amplitude is due to increased vegetation productivity during the growing season, a result of fertilization and warming . At the same time, fall and winter respiration constitute a large portion of the annual budget and have been increasing with climate change , making the implications for net sink–source dynamics uncertain . Hence, the current and anticipated state of carbon source–sink dynamics remains an open question in part due to the uncertainty in the dominant mechanisms and differential responses governing carbon fluxes across the ABZ.
Ground observations, satellite products, and process-based climate models are all used to understand interactions and feedbacks between changing environmental conditions and carbon cycling in the ABZ. In situ observations of carbon fluxes are required for mechanistic understanding but are often limited across time and space, especially in large and remote regions with extreme temperatures, like the ABZ . For example, respiration during the winter has long been assumed to be effectively zero, but better technology has slowly allowed the seasonal cycle story to grow . Satellite observations provide near-complete coverage in space and time but are indirect observations of ecosystem properties, are challenging in the ABZ due to low insolation in the winter months and extreme snow storms, and contain a variety of uncertainties related to sensor properties, atmospheric contamination, and processing (Duncan et al., 2020). The brevity of the growing season and lack of light in the ABZ throughout the year also contributes to biases in satellite measurements . Process-based models, or terrestrial biosphere models (TBMs), are a particularly invaluable resource for examining mechanisms across spatial and temporal scales, even projecting carbon cycle feedbacks in the future under varying socioeconomic scenarios
The Community Land Model version 5.0 (CLM5.0) is the land component of the Community Earth System Mode version 2.0 . CLM is one of the most widely used land surface models and contributes to many global intercomparisons and future climate projections relevant for scientists and policymakers
This study assesses the ability of CLM5.0 to accurately represent fluxes with gridded model simulations, identifies deficiencies in the simulation of ABZ carbon fluxes, and provides a model recommendation for application in the ABZ. We provide a step-by-step diagnosis of the major factors contributing to biases in the simulation of the seasonal cycle of fluxes in CLM5.0. We use FLUXCOM (a gridded product based on machine learning; ) and the International Land Model Benchmarking Project
2 Methods
We investigate the seasonal cycle of ABZ fluxes with CLM5.0 due to its widespread use and significant model improvements from the previous version. These updated processes include snow physics related to snow age and density, canopy snow interactions, active layer depth, groundwater movement, soil hydrology and biogeochemistry, and river transport . Moving away from globally constant values of plant traits that are challenging to measure, carbon and nitrogen cycle representations now use prognostic leaf photosynthesis traits (the maximum rate of electron transport or and the maximum rate of carboxylation or ; ), carbon costs for nitrogen uptake, leaf nitrogen optimization, and flexible leaf stoichiometry. Stomatal physiology was updated with the Medlyn conductance model, replacing the Ball–Berry model . Additionally plant hydraulics have recently undergone improvement in more realistic stress representation . One primary goal with these improvements was to allow for more physically based parameters that could be informed by observational ecological data, ultimately allowing for better fidelity with hydrological and ecological processes. Land cover inputs to CLM5.0 were updated to capture transient land use changes from the satellite record.
2.1 Pan-Arctic CLM5.0 simulation
We run CLM5.0 at 0.5 by 0.5 grid resolution with meteorology inputs (rainfall, snowfall, 2 air temperature, 2 specific humidity, surface pressure, downward shortwave radiation, downward longwave radiation, 10 wind speed, and cloud cover fraction) from the Global Soil Wetness Project (GSWP3v1,
For our control CLM5.0 simulation, we use an available equilibrated 1850 initialization on NCAR's Cheyenne system with spun-up carbon pools. After model development, we again spin the model using this initial dataset, and we find GPP to equilibrate quickly, within 20 years (Fig. S1 in the Supplement). To be conservative, we spin up the model with our recommended model development versions for 100 years to ensure carbon fluxes have come to equilibrium. Then we use this equilibrated state as initial conditions in a production simulation beginning in 1850 with all the same configurations and climatology as the CLM5.0 release control simulation.
Typical of land surface models, CLM5.0 represents vegetation through broad plant functional types (PFTs). CLM5.0 represents ABZ vegetation using five PFTs: needleleaf evergreen boreal trees (NETs), needleleaf deciduous boreal trees (NDTs), broadleaf deciduous boreal trees (BDTs), deciduous boreal shrubs (hereafter “shrubs”), and arctic C grasses (hereafter “grasses”). We focus model development on PFT-specific comparisons, which allows a direct comparison with observational data. Any improvements to PFT-specific carbon flux simulations have implications for changing vegetation distributions in the ABZ.
2.2 Model benchmarking and validation with FLUXCOM and ILAMB
Benchmarking is the process of quantifying model performance based on observational data considered to be the expected value or truth. We use FLUXCOM to benchmark gridded fluxes (i.e., gross primary productivity, terrestrial ecosystem respiration, and net ecosystem exchange, or GPP, TER, and NEE) in CLM5.0. FLUXCOM is an upscaled machine learning product based on FLUXNET eddy covariance towers. As a global product, FLUXCOM is particularly useful for filling spatial gaps in tower observations, especially in the relatively data-sparse ABZ. This product uses multiple reanalysis datasets and machine learning methods to train multiple predictors at flux tower sites. The resulting product is the mean of those ensembles, which also allows standard error to be calculated. We use the standard deviation around the mean to identify successful model development. Machine learning is a useful tool for this type of gap filling, as it does not care about geographic locations, just the predictor space, which are the fluxes and environmental conditions. FLUXCOM is unable to simulate fluxes from fires and fertilization accurately, which is why we focus model development on averages over the past couple decades, rather than specific years with forest fires and the increasing amplitude trend. Any systemic problems with FLUXNET data would also exist within FLUXCOM, but validations of regions with sun-induced chlorophyll fluorescence
For an independent set of comparisons that includes additional environmental variables, we also use the International Land Model Benchmarking System
2.3 Point simulation protocol
Although FLUXCOM is an invaluable tool to fill spatial and temporal gaps in tower observations across the ABZ, it is by definition not as accurate as direct in situ observations of fluxes, for instance measurements from EC towers, which also include helpful ancillary information such as detailed vegetation composition. After benchmarking the aggregated grid cell fluxes, we assess model performance at specific EC towers that measure year-round seasonal fluxes, which is a standard model development procedure . We aggregate fluxes of to monthly means from flux towers in the ABZ that are part of the FluxNet (
During our model development process, we examine phenology and photosynthesis schemes in CLM5.0 by running point simulations starting in 1901 using the same inputs as our gridded simulations. For each model issue listed in Sect. , we iteratively test hypotheses and ranges of parameters values that may improve the simulation at the representative towers. Point simulations allow for rapid deployment of model tests, while also conserving computing resources. This speed of computation is invaluable for our multiple model development trajectories. We find that for our focus on phenology and photosynthesis, carbon fluxes equilibrate rapidly and a 20-year spin-up is sufficient for point simulations (Fig. S1 in the Supplement). We run the point simulations through 2014 and compared the years measured by flux towers with the same years simulated by CLM5.0. We acknowledge that the climatology experienced by a given flux tower and the reanalysis data used as model input are different. Thus, we focus on the mean seasonal behavior of the flux towers and CLM5.0 to guide model development. The yearly variance serves as an uncertainty range for our characterization of flux tower behavior. Additionally, using the mean monthly fluxes as calibration data can prevent over-fitting of CLM5.0 parameters. Each model development simulation for a specific PFT is also run for the other PFTs at the development sites (CA-QC2, CA-OAS, US-EML, and RU-SKP). After finalizing a given model development scheme, we implement the updates at the withheld EC sites (Table S1 in the Supplement) and then in a gridded fashion across our ABZ regional domain.
2.4 Model development
We identify several issues in the phenology and photosynthesis schemes in CLM5.0 for the ABZ, which are detailed in Sect. . These can be categorized by (i) extrapolation of schemes and parameterizations designed for temperate vegetation, (ii) biases in the prediction of leaf photosynthetic traits, and (iii) mis-specified carbon allocation parameters. We also incorporate a bug fix as detailed in Sect. S3 in the Supplement.
2.4.1 Phenology onset
The representation of spring and autumn phenology for deciduous trees, shrubs, and grasses in CLM5.0 is based on a study of the conterminous United States and extended to the ABZ. In the extratropics, plants initiate their photosynthetic growing season in response to various climatic factors in spring, reach peak productivity in summer, and enter dormancy in autumn. This is parameterized in CLM5.0 by allowing spring onset to begin once a threshold for cumulative growing degree days is met, as determined by using relationships between temperatures and the satellite-based normalized difference vegetation index (NDVI). Thus, in CLM5.0, onset is based on relationships derived from temperate latitudes and extrapolated to the ABZ. We find that this parameterization requires relatively warm temperatures for the ABZ before onset can begin, which causes a delay in the beginning of the growing season for deciduous plants in the ABZ.
To implement a more mechanistic approach to onset in the ABZ, we identify environmental thresholds that correspond to physiological changes during spring onset in high latitudes. Field observations consistently demonstrate that productivity initiation in the ABZ is governed by the cessation of freezing temperatures and the availability of soil water . Additionally snow cover has been shown to influence the start of the growing season . We use daily output from FLUXCOM and flux towers to identify the initiation of GPP in spring for different PFTs. We then compare the timing of productivity to a variety of CLM5.0 environmental variables known to correspond strongly with GPP onset , including soil temperature, soil moisture, soil ice content, air temperature, liquid and ice precipitation, snow depth, and latent and sensible heat fluxes (Fig. S2 in the Supplement). We find that soil temperature (and thus soil ice content in the third soil layer with depth), minimum 2 temperature, and snow cover undergo notable state transitions around the timing of GPP onset, enabling their use as a phenology threshold in CLM5.0.
For our ABZ deciduous phenology algorithm, we therefore allow photosynthesis to begin when the following environmental criteria occur:
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The 10 average soil temperature in the third soil layer is above 0 .
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The 5 average minimum daily 2 temperature average is above 0 .
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Only a thin layer of snow remains on the ground ( ).
2.4.2 Phenology offset
Fall deciduous phenology in CLM5.0 is based on the same study focused on the temperate latitudes . As with phenology onset, biases arise from the extrapolation of temperate-zone relationships to the high latitudes. Using NDVI, senescence was identified to occur in autumn when daylight decreases . This daylight threshold is then set to be a global constant in CLM5.0. Complete dormancy is reached after 30 after this photoperiod threshold. In the ABZ, this threshold of 11 of total daylight generally causes plants to decrease productivity in October and to begin dormancy in November. In reality, vegetation should be reaching dormancy at the end of September in the high Arctic , with senescence beginning in August . Based on existing physiological studies of ABZ vegetation, it is unclear if temperature or photoperiod are the driving factor that triggers fall senescence , or if a combination of both is necessary for ABZ senescence . Therefore, we focus on photoperiod, which is seasonally more consistent across the ABZ and clearly crucial for photosynthesis. Based on observations at high latitudes, 15 is a more accurate timing for senescence above 65 N . We scale the photoperiod threshold linearly along a latitudinal gradient from 65 N until at 45 N such that the temperate latitudes retain the offset timing determined by .
2.4.3 Day length scaling for photosynthetic parameters
The Farquhar model of photosynthesis for C plants uses two main parameters to represent photosynthetic capacity, (the maximum rate of photosynthetic electron transport) and (the maximum rate of rubisco carboxylase activity). In the current release of CLM5.0, and are predicted by a mechanistic model of Leaf Utilization of Nitrogen for Assimilation
Currently, is scaled in LUNA using day length:
1 The function, , is a scaling factor that is based on the formulation in , which quantifies the relationship between day length and . However, the denominator in this equation in CLM5.0 is set to 12 , when it should be the maximum day length possible at a particular latitude . While 12 is fairly representative for lower latitudes, this scale factor does not work for the ABZ where some regions experience up to 24 of daylight in summer, which allows in Eq. (), particularly around the summer solstice in June. To address this, we replace the default denominator of 12 with the geographically specific annual maximum hours of daylight that occur for a given grid cell.
2.4.4 Temperature acclimationWithin both the photosynthesis and LUNA schemes in CLM5.0, and are scaled from their values on the environmental leaf temperature and to 25 using a modified Arrhenius temperature response function from
2.4.5
J and winter default
The LUNA module calculates and dynamically during the growing season only. When plants are dormant in winter (non-growing season), CLM5.0 uses constant values (see equations in the Supplement Sect. S4). Thus, at the start of the growing season (or first day of spring), and are directly calculated from a winter constant value: We find that this global default winter value strongly influences the prediction of and throughout the entire growing season (Fig. S4 in the Supplement). In all of the ABZ PFTs, raising these default values increases mean growing-season GPP, whereas decreasing them lowers GPP (Fig. S4 in the Supplement). Furthermore, the constant winter values in Eq. (3) represent a high bias globally in , contributing additional bias. Due to the sensitivity of this choice and in an effort to leverage the physiological history of a given location, we choose to save the average predictions of and from the previous growing season for all PFTs ( and ). We preserve the LUNA equations, except these constant values.
2.4.6 Carbon allocationFinally, we investigate the sensitivities of parameters related to carbon allocation, which are relatively uncertain and strongly influence fluxes in the ABZ, particularly the stem-to-leaf ratio and the root-to-leaf ratio. In CLM5.0, the parameter defining the root-to-leaf allocation ratio is set at a constant value of 1.5 for all PFTs. This is not an ideal configuration as boreal trees and tundra vegetation are structurally different than other plant types due to the need to cope with colder temperatures, which should be reflected in allocation to their roots, leaves, and other plant components. Even within a PFT, different species have been measured to have drastically different ratios of allocation to roots and leaves , but for the purpose of circumpolar simulations, we limit our allocation parameters to the PFT level. Root-to-leaf ratios have been measured as consistently high for grasses and shrubs, meaning more allocation to roots than leaves , as the large root systems are key to survival of these Arctic species . We, therefore, tested a higher root-to-leaf allocation of 2 for shrubs and grasses, which agrees relatively well with observations of tundra vegetation . For boreal trees, belowground allocation in evergreen conifers has been found to be higher than in deciduous trees . Lowering the root-to-leaf ratio of DBT to 0.75 better represents the typically shallow root systems of deciduous boreal trees , while being consistent with values implemented in other deciduous tree modeling studies . Observations suggest that boreal NETs in general have more extensive root systems than the deciduous trees , thereby requiring more belowground resources, and that tundra shrubs and grasses allocate even more photosynthate belowground. Thus, observations provide support for NET root-to-leaf allocation to be larger than DBT, and we choose to allow the NET root-to-leaf allocation to remain at the CLM5.0 default value.
Regarding stem allocation, CLM5.0 includes an option for dynamic stem-to-leaf allocation. The ratio is based on NPP and can be used for woody trees and shrubs , generally acting to increase woody growth in favorable conditions . Though this allocation was previously used in CLM4.5 and turned off for CLM5.0, it is an uncertain choice as noted explicitly in . A problem with this allocation scheme was noted in the tropics , but not in temperate or high-latitude climates. We test both options, comparing the static stem-to-leaf ratios used in CLM5.0 to the dynamic allocation option.
3 Results
We investigate the simulation of fluxes in the Arctic–boreal zone by CLM5.0 using gridded and point simulations. We identify biases in the carbon cycle in Sect. , present our mechanistic and additive improvements to phenology and photosynthesis in Sect. , and make our model recommendation in Sect. . This ABZ analysis focuses primarily on GPP fluxes in CLM5.0, but as expected, our assessment extends to TER and NEE due to the interdependence of these carbon fluxes on productivity . We assess simulation biases based on the comparison of CLM5.0 output against FLUXCOM and EC towers, as detailed in Sect. . We address the biases that arise from using the default CLM5.0 parameters and schemes described in Sect. , which can be classified as (1) phenology onset, (2) phenology offset, (3) daylight scaling, (4) Leuning temperature scaling, (5) initial spring value of , (6) dynamic stem-to-leaf carbon allocation, and (7) realist root-to-leaf carbon allocation.
Figure 1
Average summer (JJA) GPP () for (a) CLM5.0 release, (b) our model recommendation, and (c) FLUXCOM, with the differences between the two model simulations and FLUXCOM in (b) and (d). The latitudinal gradient of summer GPP is depicted in (f).
[Figure omitted. See PDF]
3.1 Biases in CLM5.0The latest release of CLM5.0 substantially overestimates summer GPP in the ABZ by or 40 (red line in Figs. b and a). The magnitude of this bias is such that CLM5.0 estimates of GPP for high-latitude tundra vegetation are comparable with the more southern boreal forests (Fig. a). This lack of a latitudinal gradient in CLM5.0 is not supported by FLUXCOM and ILAMB benchmarking (Fig. f). Though most of the ABZ in CLM5.0 is over productive, we note that there is a large area with GPP 0 in Siberia, indicating that this region is not photosynthesizing in CLM5.0 though it should be. Thus, the simulation of carbon fluxes in CLM5.0 is very heterogeneous with areas that are highly productive and areas that are non-functioning, or “dead zones”.
We next investigate the seasonal cycle of fluxes in the ABZ. Across the ABZ, average productivity in the CLM5.0 simulation is high throughout the year compared to FLUXCOM, which is shown throughout the year in Fig. a. From a seasonal perspective, CLM5.0 vegetation enters dormancy later than observations, as can be seen by the high biases in GPP in fall. The timing of photosynthesis in spring appears to be accurate when we look at the PFT-aggregated average of fluxes. We see a similar high bias in TER in Fig. b, as respiration is tightly coupled to the highly biased GPP. The magnitude of peak summer NEE in CLM5.0 matches observational data better than GPP and TER. However, its seasonal cycle exhibits biases and timing issues related to spring drawdown, summer minimum, and fall peak NEE (Fig. c).
Figure 2
The annual cycle of (a) GPP, (b) TER, and (c) NEE from CLM5.0 and our model recommendation compared to FLUXCOM in the ABZ. Non-productive grid cells in the ABZ are removed from the average, meaning where LAI 0, which is standard procedure in CLM analysis .
[Figure omitted. See PDF]
Assessing the seasonality of fluxes in the ABZ using the PFT-specific output of CLM5.0 reveals biases in phenology that are hidden when PFTs are aggregated together in a grid cell. In terms of phenology, we find that NET begins significant photosynthesis in February in CLM5.0 when air temperatures are well below freezing. This onset of NET photosynthesis is considerably early according to both FLUXCOM (Fig. b) and our understanding of available liquid water for photosynthesis . The peak productivity in NET occurs in June, instead of July as seen in observational data. In contrast, the onset of photosynthesis for deciduous trees and shrubs is consistently late (Fig. ). The gridded CLM5.0 GPP output hides these biases, showing that on average onset in CLM5.0 matches observations (Fig. a). In contrast, the high bias of CLM5.0 productivity during late autumn was easily seen in the gridded CLM5.0 output, and we confirm that this bias is due to the shifted seasonal cycle of deciduous PFTs (Fig. ).
Figure 3
The annual cycle of GPP for CLM5.0 release with intermediate model development steps compared to FLUXCOM for (a) aggregated gridded CLM5.0 output, (b) NET, (c) NDT, (d) BDT, (e) shrubs, and (f) grasses. “Phenology” incorporates changes to onset and offset. “Param. Scaling” adds our scaling of and by daylight and the Leuning parameterization. “Carbon allocation” adds changes to the root-to-leaf and stem-to-leaf parameters. The final model recommendation (“Model Rec.”) incorporates the bug fix (Sect. S3 in the Supplement) and spring initialization of and .
[Figure omitted. See PDF]
Regarding the magnitude of photosynthesis, the CLM5.0 PFT-specific output indicates that both shrubs and grasses have a large high bias of GPP compared to observational data by a factor of 2–3 (Fig. a). We confirm that the tundra grass and shrub PFT-specific output is often greater than or as productive as the boreal trees in CLM5.0 (Fig. e and f vs. b–d). The deciduous boreal trees (NDT and BDT) have a low growing-season GPP bias, while NETs have a high productivity bias. By examining the spatial pattern of the average summer GPP (Fig. ), one can see that there are many areas where GPP 0 for many consecutive years, indicating that the PFT did not survive. In Siberia, a prominent “dead zone” occurs in what should be highly productive deciduous needleleaf larch forests. Smaller dead zone areas are present for all other PFTs across the ABZ (Fig. S5 in the Supplement).
As with the aggregated CLM5.0 output, the PFT-specific biases in TER are similar to those noted for GPP (Fig. S6 in the Supplement). PFT-specific patterns in NEE also tend to follow the biases in GPP and TER, with the notable exception of spring in deciduous vegetation. For these PFTs, there is a large spike of released to the atmosphere, up to 0.5 between April and May, that does not match observations (Fig. S7 in the Supplement). This is primarily due to the late-onset photosynthesis at a time when TER is increasing due to warming air and soil temperatures. We note that the net balance of BDTs is near 0, rather than a sink, which agrees with our conclusions that deciduous trees are not productive enough relative to FLUXCOM and flux towers. Ultimately, the timing and magnitude of biases in TER and NEE confirm our need to focus on GPP as a first step towards better representing seasonal fluxes in CLM5.0 for the ABZ.
Benchmarking CLM5.0 yields the following primary issues for the simulation of GPP across the ABZ:
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The onset of GPP in deciduous PFTs in spring is consistently late across all PFTs.
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The fall senescence of GPP is consistently late.
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There is no latitudinal gradient in summer GPP, due in part to the high GPP bias in tundra grasses and shrubs.
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NETs begin photosynthesis early in winter and reach their peak in productivity in June, instead of July.
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NETs have a high GPP bias throughout the growing season.
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Deciduous trees (BDTs and NDTs) have a low GPP bias.
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There are large areas of PFTs that have no productivity at all or are effectively dead in CLM5.0, particularly the NDTs in Siberia, representing larch forests (Larix spp.).
We confirm these biases in the ABZ by comparing the CLM5.0 PFT-specific output to representative flux towers across the ABZ. For example, the southern boreal mixed forest site at CA-QC2 (Fig. a) contains NET, BDT, and shrub PFTs. The BDT here is a dead zone, where GPP 0, making it a useful site to understand what model thresholds may be influencing one PFT to die out in a simulation, while others remain productive. We also include a BDT site at CA-OAS (Fig. b) to further investigate the simulation of deciduous trees at a productive grid cell in CLM5.0. The grasses and shrubs at Eight Mile Lake, Alaska, are approximately 5 times more productive than observations (Fig. c). In contrast, at the larch forest at RU-SKP (Fig. d), we find that onset is late and GPP is roughly half the observed value, consistent with the low bias in NDT gridded output. We perform model development by examining each issue described in Sect. sequentially on our model development sites: CA-QC2, CA-OAS, US-EML, and RU-SKP. Each flux tower measurement is carefully chosen to cover all CLM5.0 PFTs to understand their complex impacts on GPP across all PFTs, while also including a dead zone to tease out a different kind of bias. Model development follows the procedure and biases described in Sect. ; we begin with phenology, move on to the photosynthesis schemes, and end with adjusting the carbon allocation parameters. The use of flux towers and point simulations allow us to test a range of hypotheses for each model development objective. Successful model development is achieved when GPP is within standard deviation limits. We choose to make the model development additive because the improvements are generally small and justified observationally, but all together make for a substantially improved simulation of ABZ carbon fluxes (Fig. ).
Regarding phenology, when new thermal and moisture thresholds for onset are used, the deciduous plants to begin photosynthesis earlier in the season, which more closely matches observations (Fig. ). However, the bias in the magnitude of photosynthesis is not improved by our phenology changes; in fact, the productivity of grasses and shrubs increases further with a growing season that begins earlier in spring (Fig. e and f, comparing the red “CLM5.0 Release” line to the cyan “Phenology” line).
Next, regarding , we find that modifying the function that scales to accurately use the maximum number of daylight hours on each grid cell decreases productivity across all PFTs (Figs. and S8 in the Supplement). In particular, we decrease the June spike in GPP for NET because the daylight fraction around the summer solstice is no longer greater than 1. Overall, this modification decreases the high bias in ABZ GPP by 2 in the summer (Fig. S8 in the Supplement) and generates a latitudinal gradient in the PFT-specific output of trees (Fig. S5 in the Supplement). By reverting the CLM5.0 temperature scaling scheme from to as used in CLM4.5, we find that GPP is decreased for all PFTs, especially in spring when the photosynthesis ramp-up had been artificially high. Our updated model improves phenology of NETs due to more realistic scaling of and (Fig. b, the light blue “Temp Scaling” simulation and Fig. S12 in the Supplement). The GPP of grasses is also decreased (Fig. S13 in the Supplement), but shrubs are still biased high.
After decreasing productivity of all PFTs (Fig. , compare the red “CLM5.0 Release” with the blue “Param. Scaling”), tundra shrub and grass productivity in CLM5.0 retains a substantial high GPP bias (Fig. e and f), while the deciduous tree PFTs have a low GPP bias (Fig. c and d), which may be related to non-optimized ABZ carbon allocation parameters. Allowing for a dynamic stem-to-leaf allocation improves both the timing and magnitude of photosynthesis (Fig. S9 in the Supplement). Additionally, we make PFT-specific alterations to root-to-leaf ratios based on our findings from Sect. . As a result, GPP is lowered in grasses and shrubs and increased for deciduous trees (NDT and BDT), approaching FLUXCOM values (Fig. ). The rest of our changes to the model involve schemes in LUNA that we believe are initialized incorrectly for the ABZ, but also the rest of the world. These recommended model updates include initializing the winter default values of and using the mean value for a given grid cell during the previous growing season (Eqs. 4 and 5 and Fig. S4 in the Supplement) and a model error related to the calculation of 10 leaf temperature (Sect. S3 in the Supplement).
3.3 Improved carbon fluxes in the model recommendation
Based on our changes to phenology, photosynthesis, and carbon allocation schemes, we recommend the following mechanistically based changes to CLM5.0 for a considerably improved representation of fluxes in the ABZ:
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GPP onset is based on soil temperature, air temperature, and snow cover.
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GPP offset is based on a latitudinal photoperiod gradient such that the high Arctic begins senescence earlier.
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is scaled by maximum day length instead of a constant 12 .
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and are scaled by temperature response functions parameterized by .
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and have initial values in spring that are based on the LUNA predictions from the previous growing season, allowing the values to vary across PFTs, time, and space.
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The stem-to-leaf carbon allocation ratio for trees and shrubs is allowed to be dynamic throughout the season.
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Observationally based root-to-leaf carbon allocation ratios are used. For deciduous tree PFTs, the root-to-leaf ratio is decreased, while the ratio for shrubs and grasses is increased.
Figure 4
Comparison of GPP at flux tower sites to the CLM5.0 release and the results of our model development. We performed model development at CA-QC2 (mixed forest site in Quebec), CA-OAS (Aspen forest in Saskatchewan), US-EML (Eight Mile Lake tundra location), and RU-SKP (Yakutsk Spasskaya Larch Forest). We did additional comparisons with FI-SOD (Sodankylä, Finland), RU-TKS (Tiksi grasslands), CA-SF1 (Saskatchewan boreal forest), RU-COK (Chokurdakh Tundra shrubs), RU-SAM (Samoylov grasslands), and CA-GRO (Groundhog River Boreal Forest).
[Figure omitted. See PDF]
We first validate that our modifications to CLM5.0 offer improvements to simulations of fluxes when looking at specific flux towers (Fig. ). For instance, productivity is increased for BDTs at CA-OAS, which is further validated at CA-GRO. The dead zone at CA-QC2 is now highly productive and much closer to observed carbon fluxes in terms of seasonality and magnitude. The new cold deciduous onset scheme causes this improvement, as the previous growing degree-day scheme in CLM5.0 prevented photosynthesis from ever starting. Photosynthesis in NDTs is increased due to our model development, but as shown in both gridded output and RU-SKP, the NDT photosynthesis needs to increase further. The phenology and magnitude of NET is much improved at validation sites. However, as is expected , not all of the flux tower sites have fluxes that are reproduced within the range of observational uncertainty (Figs. c and S11 in the Supplement). For example, although GPP at US-EML is reduced due to our model development, it is still biased high. However, the grasses and shrubs at other validation sites are much improved compared to flux measurements, like the grasses and shrubs at RU-SAM, RU-TKS, and US-ATQ.
We next compare our model improvements in a gridded simulation against fluxes from FLUXCOM (Fig. a). The high productivity bias at high latitudes is substantially reduced due to our model development by decreasing the productivity of ABZ shrubs and grasses. Our model recommendation for CLM5.0 produces a latitudinal gradient (Fig. f) in productivity, with the tundra no longer being as productive as the boreal forest (Fig. ). The timing of photosynthesis is also improved as dormancy is reached by October in most PFTs, instead of November (Figs. and ). In examining the PFT-specific output (Fig. ), we confirm an earlier beginning to spring photosynthesis in deciduous trees, shrubs, and grasses. In contrast, our model development successfully delays the onset of productivity in NETs, due to a combination of daylight scaling and the temperature scaling from . As for the magnitude of photosynthesis, we find that NET photosynthesis is reduced across the ABZ, while the deciduous boreal tree PFTs experience an increase in productivity (Fig. S10 in the Supplement).
Although GPP is our main focus of development due to the number of productivity biases, we find improvements in other component fluxes. Changes in TER generally follow those of GPP, and our modifications substantially reduce the high summer respiration bias in CLM5.0 (Fig. ), which is mostly due to the reduction of GPP and TER in grasses and shrubs at high latitudes (Fig. S6 in the Supplement). The respiration of deciduous tree PFTs did not change substantially, but TER decreases in NETs due to the decrease in GPP. Due to the improvements in GPP onset and offset, the model no longer simulates large net emissions in spring (Fig. S7 in the Supplement), which better matches observations of NEE. In many PFTs the respiration and thus NEE in fall are high in the gridded output. Although this does not match FLUXCOM, it is consistent with recent measurements of high fall respiration in the ABZ . The net balance of carbon fluxes does not change substantially due to our model development. We find that the carbon sink in ABZ CLM5.0 decreases by about 12 , which is due to a smaller net sink in the summer and larger carbon release in fall.
3.4 Validation with ILAMBComparing output from CLM5.0 and our model recommendation to observational data provided by the ILAMB framework confirms broad improvements in model fidelity (Fig. ). This includes the fluxes we focus development on, as well as surface fluxes (sensible heat, latent heat, albedo). ILAMB confirms that the high GPP bias and late phenology biases are reduced. LAI, in particular, has been improved greatly in the Arctic in regards to both timing and magnitude (Fig. ). According to the ILAMB score, the implemented changes are not detrimental to any other essential land surface variables, and in fact improve their simulation according to the centralized benchmark scores. Breaking down the overall benchmark score, our model recommendation shows large improvements in the spatial distribution and interannual variability scores. The seasonal cycle score of GPP did not improve substantially, which makes sense due to the phenology problems only becoming apparent in the PFT-specific output, which is not a standard ILAMB benchmark. The NEE seasonal cycle is substantially improved according to ILAMB, which agrees with our FLUXCOM validation. The relative improvements to moisture and heat fluxes are particularly noteworthy, as these changes can feed back to the regional climate system.
Figure 5
ILAMB benchmark score of CLM5.0 model development recommendation against previous versions of CLM: 5.0 and 4.5 (a). LAI seasonal results compared to MODIS (b).
[Figure omitted. See PDF]
Figure 6
Seasonal global GPP benchmarked in ILAMB. Our model recommendation for the ABZ is applied globally and benchmarked for GPP in CLM4.5 and CLM5.0.
[Figure omitted. See PDF]
We are also interested in contributing to the improvement of the global CLM5.0 simulation. We confirm that a global simulation is possible and reasonable (Fig. ) with these additions to the code base. All but two of our model improvements are limited to the ABZ, meaning that we do not expect significant biases to emerge at lower latitudes due to our model development, and our ILAMB validation confirms this. The constant LUNA equation is one of the global changes and the other is the change in temperature scaling from to . Additional testing at lower latitudes, which is outside of the scope of this study, is necessary to determine the effects on the global carbon budget.
4 DiscussionThrough mechanistic model development, we have reduced the biases in carbon cycling in CLM5.0 for the Arctic–boreal PFTs. Many of our recommendations in Sect. affect several of the biases noted in Sect. , indicative of the many interconnected schemes in CLM5.0. Ultimately, we believe our modifications to be reasonable, observationally based, and a step towards a more accurate simulation of carbon cycling in high-latitude terrestrial ecosystems, but we also discuss the limitations of our model development choices and identify avenues of research that could continue to improve CLM5.0.
Having more accurate phenology in CLM5.0 is critical for understanding the recent and future changes in biogeochemistry in the ABZ, as global change drivers during the shoulder seasons may be drivers of carbon cycle changes. Deciduous trees have protective mechanisms to avoid the onset of growth when there is a strong probability of cold snaps , and our new thresholds are key environmental conditions designed to mimic the end-of-winter signals. The use of threshold values in onset schemes is a well established phenology method that is used in other models, like LPJ and the Canadian Terrestrial Ecosystem Model. These schemes can be fairly simple or more complicated, much like growing degree-day (GDD) models. We choose to focus on environmental thresholds due to the uniqueness of the ABZ environment, which is dominated by freeze–thaw dynamics, making a threshold approach effective. We did investigate other GDD schemes, but we found that many GDD models perform similarly and in the ABZ have a documented late onset , just like the current scheme in CLM5.0. We did not identify a scheme well validated in the ABZ, as most observational validation studies are focused on the lower latitudes, and those studies also identify that gridded phenology products tend to be produced using optical imagery, which often does not correspond well with fluxes in shoulder seasons . Ultimately, using another GDD scheme from the known literature would be trading one extrapolated temperate scheme for another. This threshold approach may have limitations for a warming world, which is why an ABZ-focused phenology study, using novel datasets like PhenoCam has potential to uncover more complicated vegetation processes and filling in gaps from satellite-based studies .
Implementing an offset scheme with a latitudinal gradient in CLM5.0 is a first step towards more realistic timing of fall senescence in CLM5.0, and additional work is needed to understand how temperature and other climate drivers impact the timing of dormancy. Studies are divided on the issue of whether temperature or photoperiod are driving offset in the ABZ. Field experiments have found photoperiod to be a likely driver at high latitudes , but temperature and even precipitation may be more important at lower latitudes. Experiments of high arctic tundra have shown that senescence can be delayed by up to 15 due to warming . Given this uncertainty, we suggest that photoperiod is a sufficient and justified approximation for fall dormancy, until better mechanistic relationships can be derived from observational data. The late bias in fall phenology has also been noted in other TBMs , also likely due to extrapolation of temperate schemes to the high latitudes. Thus, our simple daylight threshold here could be applicable to other models.
One of the most impactful changes to CLM5.0 GPP is the use of maximum day length to scale , rather than 12 . Equation () would previously scale the prediction of high, particularly in June with the summer solstice and day length at its maximum. The previous use of 12 for maximum day length is likely a holdover from using LUNA in the tropics, as was the cited basis for Eq. (), which used maximum day length appropriately. After we fix this substantial scaling bias, we find other algorithms and parameterizations are more sensitive to model changes. This opens up many avenues of model development, some of which we are able to accomplish in this study, like more realistic allocation parameters and scaling changes to and . For future steps, we argue that a re-parameterization CLM is necessary, as previous model tunings attempted to bring down the high GPP bias through parameter choices rather than this bug fix.
As with the length-of-day scaling described above, the photosynthetic temperature acclimations in scaling of and were not created for ABZ latitudes and tend to exacerbate model biases. We, therefore, recommend not using these functions from and stress the need for further research on photosynthetic temperature acclimation in the ABZ, especially for projecting responses to future climate. The current implementation generates unrealistic seasonal temperature response functions for GPP resulting in model biases . Previous work by advocated for removing the 11 limit from , but our tests of this did not decrease productivity of the grasses and shrubs at high latitudes (not shown) or offer any other improvements, at least not without a re-parameterization of the acclimation scheme. We do advise caution in using the parameterization globally, as it does not have the same process understanding as , but the decrease in bias in the ABZ makes ideal for regional ABZ simulation. Recently, have created an acclimation parameterization that included ground measurement sites from Utqiaġvik (formerly Barrow), Alaska, and Finland. Though most of Canada and Siberia are not represented in the parameterization, including this recent observationally based acclimation function in CLM5.0 is a logical next step for a better ABZ simulation that includes temperature acclimation, a critical process for projecting carbon budges into the future.
The initialization of and in spring is a highly sensitive choice (Fig. S4 in the Supplement). We find improvements in GPP when using the mean predicted value of and from the previous year as an initial spring value. The default values for spring and in CLM5.0 are high for ABZ PFTs . Now with a default value that considers the PFT and climatological conditions of and , the simulated seasonal cycle of and mimic the timing of GPP more closely. We observe only very small temporal fluctuation in these average values of and , indicating that the LUNA predictions are relatively stable for each geographic–climatological region. The productivity for most ABZ PFTs is decreased throughout the whole summer due to this change in CLM5.0. Though we note that LUNA simulates lower values of and in most Arctic–boreal PFTs, this implementation of average and allows for spatial and temporal variability, including increases in and in some locations. Therefore, there is potential for this scheme to improve future predictions, as the sensitive initialized spring values can now adjust in a warming climate.
Finally, we examine the carbon allocation parameters in CLM5.0, which are a considerable and long-standing source of uncertainty in TBMs. appropriately called carbon allocation the “Achilles' heel of most forest models”. We argue that CLM5.0 does not use ideal carbon allocation values for the ABZ, but there are multiple diverging development paths for carbon allocation that could lead to a better simulation. During model development and testing of carbon allocation ratios for roots, leaves, and stems, we attempt to balance static and dynamic allocation schemes but acknowledge there is always room for further development and improvement. The default parameters in CLM5.0 do not utilize dynamic stem-to-leaf carbon allocation due to exponential increases in biomass in the tropics , but not necessarily for the ABZ. We find that simulations of productivity are improved across all ABZ PFTs when this ratio is dynamic. In the model, the previous year's NPP is used to set this ratio, based on the assumption that NPP can serve as a proxy for environmental conditions that send resources to either roots or leaves, thereby increasing woody allocation in favorable growth environments . In the previous version of CLM, CLM4.5, dynamic stem-to-leaf allocation generally lowered carbon allocation, sending more carbon to leaves than stems, agreeing with observational comparisons , which is the same pattern we see in ABZ PFTs in CLM5.0.
The final improvements to the deciduous tree PFTs, grasses, and shrubs come from changing the root-to-leaf ratio, which is currently the same constant value for all PFTs and does not make sense ecologically . We test a range of allocation values for each PFT, using observational data to guide our decisions. These static carbon allocation ratios are our best estimate for mimicking emergent plant processes, and we find that the allocation parameters relative to other PFTs may be more important for model simulations than matching observations exactly. The success of focusing on allocation parameters relative to other PFTs may be of guidance to other model schemes. The NDT allocation that we find does align with observations and is used in other models . The grass allocation parameter is low compared to some observations, but we find increasing the root-to-leaf ratio for grass PFTs in CLM5.0 only succeeds in killing productivity completely. We did consider changing the allocation of NETs but had little success in finding parameters that made sense (Fig. S14 in the Supplement). With the difficulty in relating allocation parameters to model counterparts, a more dynamic scheme may be needed for future model versions. For instance, the carbon allocation to roots may saturate when LAI 1 in Arctic shrubs . Allowing TBMs to adjust these carbon ratios based on LAI may be the next step in CLM5.0 model development, approximating the realistic behavior of plant species.
The “dead zones” in CLM5.0 are caused by a combination of issues, such as late onset and allocation parameters. However, these increases in productivity do not clearly and substantially improve the dead PFTs in CLM5.0 as a whole, particularly the non-productive area of Siberia (Fig. c). These areas of non-productivity are particularly problematic for future CLM5.0 simulations due to the suspected importance of Siberian fluxes for current and future seasonal carbon balance . Although we did not cause any additional areas to die, we also did not succeed in increasing productivity in the larch forests of Siberia. It is also worth noting that areas with “dead zones” clearly visible in the gridded product have all PFTs dead, not just NDT. We hypothesize that there may be thresholds for climatic drivers that inhibit photosynthesis. For instance, there is a minimum relative humidity threshold for nitrogen allocation in LUNA. This threshold appears to be somewhat arbitrary and the ABZ often experiences a dry continental climate. The larch forests of Siberia could benefit from a lower relative humidity threshold to raise their low productivity and potentially improve “dead zones”. A test of this hypothesis does raise productivity for deciduous tree PFTs, but the “dead zones” do not become productive. We require more information on relative humidity and nitrogen allocation at low temperatures to determine if this parameter should be changed in the model. Here we focus on mechanistic model development, but a parameter specific to ABZ vegetation may lead to further improvements.
The relative improvements to each PFT are also significant. For instance, as noted previously, our model recommendation generates a latitudinal gradient in CLM5.0 (Fig. f), which is due to tundra vegetation being less productive. The Arctic grasses and shrubs are now less productive than the boreal trees, which is consistent with observations. The deciduous tree PFTs in our model recommendation are more productive than the CLM5.0 release, with NDT productivity increasing by 20 and BDT increasing by 50 (not shown). Additional work is needed for the deciduous schemes, as deciduous trees are observed to be more productive than evergreen trees . We did decrease the high bias of productivity in NETs by 20 , but NETs are still causing a high bias in the simulation of GPP. The evergreen scheme has long been noted to be relatively simple in CLM5.0 and a key next step for model development.
As with most studies of the high latitudes, we are limited by the availability of ground observations . For instance, we only have one flux tower corresponding to NDT (RU-SKP), which is also unfortunately a PFT in CLM5.0 that needs substantial work, particularly in the dead zone in Siberia (Fig. S5 in the Supplement). For other PFTs we restrict our tower choices to have the best data available. We only include EC flux observations where the vegetation classes corresponded with the CLM5.0 PFTs that occur within the ABZ. Metadata indicating a mixed forest or a combination of short stature vegetation and trees causes comparisons to not be clean (Fig. S11 in the Supplement), meaning we withhold these kind of sites for extra validation. These flux towers are not ideal sites for model development, but they do generally confirm a reduction in GPP due to our model development efforts. The EC record must also span at least three consecutive years before 2014 due to the forcing dataset used by CLM ending in 2014, which does not allow us to leverage the most recent ABZ ground observations. These criteria restrict our point-based analysis to only a few sites (Table S1 in the Supplement), which does further limit our ability to make statistically robust conclusions. We attempt to mitigate this lack of data by validating carbon flux results with point simulations and gridded simulations. Then, we use ILAMB to confirm improvements in other independent variables that were not the focus of model development. More comprehensive model improvements for the ABZ may be possible through an increase in the availability and spatial representativeness of tower EC data. We look forward to the increased emphasis on data archiving, standardization, and synthesis, as well as more detailed examination of functional relationships and PFT-specific parameters. As our understanding evolves, observational networks improve, and long-term data archives grow, we stress the need for continued development and model fidelity for high-latitude terrestrial ecosystems given their importance in the global climate system.
5 Conclusions
We have approached model development for cycling in the ABZ in a mechanistic and targeted fashion, leveraging available observational data and derived products. We find that many biases are interconnected, meaning that mechanistic model development and bug fixes can improve part of the simulation, while making other aspects worse (Fig. ). Overall, our work with CLM5.0 in the ABZ highlights the importance of regional model analysis and development. We find the extrapolation of model schemes developed for temperate latitudes to the high latitudes to be the root of many biases, as has also been noted elsewhere .
We find that a physically based phenology formulation using soil temperatures, air temperature, and snow depth is more accurate than the existing parameterization developed for temperate latitudes. Allowing offset timing to vary with latitude instead of a single global value improved circumpolar leaf offset. We improve the scaling of daylight in the maximum rate of electron transport () using the maximum day length. Additionally, we remove a global initialization of the maximum rate of electron transport () and the maximum rate of carboxylation () that biases prediction of these critical photosynthesis components each spring. We also recommend the temperature scaling of and for the ABZ, as is not optimized for the ABZ, biasing both the maximum productivity and phenology. Finally, we adjust carbon allocation ratios for ABZ PFTs to levels that better match observations and result in more realistic simulations of GPP.
We assess the performance of our model recommendation in a global simulation, confirming that a global simulation is possible and yields reasonable carbon fluxes. Furthermore, we actually identify improvements in the global carbon cycle and budget according to ILAMB metrics. The reduction of biases in the ABZ carbon cycle has implications for future projections with models that overestimate GPP. The modifications we implement here illustrate that previous extrapolations of temperate or even tropical observations cause significant biases. We advocate for more regional ABZ-focused development to ensure accuracy in the ABZ when implemented in global simulations, as the high latitudes are a critical component of the rapidly changing climate system.
Code availability
Our model recommendations are currently on GitHub for
incorporation into the CESM master branch and CLM5.1. Please see the pull
request and discussion here:
A more permanent storage of the code is available here: 10.5281/zenodo.4706221 .
Data availability
For any questions or interest in our model data, please reach out to the corresponding authors Leah Birch and Brendan Rogers.
The supplement related to this article is available online at:
Author contributions
LB and BMR designed the study and model development. LB performed benchmarking, model development, and validation. All authors contributed to the paper.
Competing interests
The authors declare that they have no conflict of interest.
Acknowledgements
This work was funded by the National Aeronautics and Space Administration (NASA) Arctic-Boreal Vulnerability Experiment (ABoVE) and Carbon Cycle Science programs (NNX17AE13G).
Funding for AmeriFlux data resources was provided by the U.S. Department of Energy's Office of Science. This work used eddy covariance data acquired and shared by the FLUXNET community, including these networks: AmeriFlux, AfriFlux, AsiaFlux, CarboAfrica, CarboEuropeIP, CarboItaly, CarboMont, ChinaFlux, Fluxnet-Canada, GreenGrass, ICOS, KoFlux, LBA, NECC, OzFlux-TERN, TCOS-Siberia, and USCCC. The ERA-Interim reanalysis data are provided by ECMWF and processed by LSCE. The FLUXNET eddy covariance data processing and harmonization was carried out by the European Fluxes Database Cluster, AmeriFlux Management Project, and Fluxdata project of FLUXNET, with the support of CDIAC and ICOS Ecosystem Thematic Center as well as the OzFlux, ChinaFlux, and AsiaFlux offices.
We would like to thank all involved in the ILAMB project, particularly Nathan Collier, for providing a valuable resource for the community.
We would like to acknowledge high-performance computing support from Cheyenne (10.5065/D6RX99HX) provided by NCAR's Computational and Information Systems Laboratory, sponsored by the National Science Foundation.
Finally, we would like to thank our three anonymous reviewers and the editors at GMD for their helpful comments.
Financial support
This research has been supported by the NASA (ABoVE and Carbon Cycle Science grant no. NNX17AE13G).
Review statement
This paper was edited by Hisashi Sato and reviewed by three anonymous referees.
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Abstract
The Arctic–boreal zone (ABZ) is experiencing amplified warming, actively changing biogeochemical cycling of vegetation and soils. The land-to-atmosphere fluxes of
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1 Woodwell Climate Research Center, Falmouth, MA, USA
2 National Center for Atmospheric Research, Boulder, CO, USA
3 University of Michigan, Ann Arbor, MI, USA
4 San Diego State University, San Diego, CA, USA
5 GFZ German Research Centre for Geosciences, Potsdam, Germany
6 University of BC, Vancouver, BC, Canada