1 Introduction
Surface ozone (), as a harmful air pollutant, has negative consequences for human health (Occupational and Environmental Health Team, 2006; Jerrett et al., 2009; Malley et al., 2017), decreases plant gross primary productivity (e.g., Yue and Unger 2014), and leads to substantial reductions in global crop yields (Avnery et al., 2011; Tai et al., 2014; Tian et al., 2016; Tai and Val Martin, 2017; Mills et al., 2018). It is also an important greenhouse gas, contributing to climate change (Myhre et al., 2013). Surface ozone is produced by the photooxidation of precursors including carbon monoxide (CO), methane (), and other non-methane volatile organic compounds (NMVOCs) in the presence of nitrogen oxides (). These precursors are both generated by human activities and naturally emitted from vegetation and soils. The dominant sink of surface ozone is photochemical loss and dry deposition to the surface including vegetation mainly in the form of leaf stomatal uptake. Depending on all of these production and loss mechanisms, its concentration is highly sensitive to changes in natural and anthropogenic emissions of precursors (Wang et al., 2011), land use and land cover (Ganzeveld et al., 2010; Val Martin et al., 2015; Fu and Tai, 2015), and climate (Jacob and Winner, 2009; Fiore et al., 2012; Schnell et al., 2016). Recent studies found that decreases in anthropogenic emissions alone might not necessarily decrease ozone in some polluted regions if factors such as climatic and land cover changes act to enhance ozone and offset emission control efforts (Zhou et al., 2013; Zhang et al., 2014; Xue et al., 2014).
Land use and land cover change (LULCC) can modify ozone concentration by altering key drivers of ozone such as biogenic volatile organic compound (VOC) emissions and dry deposition (e.g., Wong et al., 2018). These can be referred to as “biogeochemical effects” of LULCC on ozone (as opposed to “biogeophysical effects”, which will be discussed next) because these processes entail directly modifying the biosphere–atmosphere exchange of gases and particles that alters atmospheric composition including ozone itself. Here we limit the biogeochemical effects of LULCC on ozone to processes that influence ozone directly in a given climate, including biogenic VOC emission and the dry deposition of ozone and its precursors; climatic changes that can arise from land cover disturbances of the biogeochemical cycles are not the focus.
LULCC can modify the spatial pattern and magnitude of isoprene emission due to their strong dependence on vegetation type and leaf density (Guenther et al., 2012). For instance, Lathière et al. (2006) found as much as a 29 % decrease in global isoprene emission from a scenario in which 50 % tropical trees are replaced by grasses. Heald and Spracklen (2015) estimated the net effect of LULCC under future anthropogenic influences as a decrease of 12 %–15 % in annual isoprene emission globally. These changes in isoprene emission can in turn modify ozone concentration. For example, Tai et al. (2013) found that LULCC projections in the Intergovernmental Panel on Climate Change (IPCC) A1B scenario with widespread crop expansion could reduce isoprene emission by % globally compared with the land use and land cover at present. Such a reduction could correspondingly lead to an ozone decrease of up to 4 ppbv in the eastern US and western Europe and an increase of up to 6 ppbv in South and Southeast Asia, whereby the difference in the sign of responses is driven primarily by the different ozone production regimes.
Dry deposition is another key factor modulating ozone (e.g., Wesely, 1989; Val Martin et al., 2014; Lin et al., 2019). Dry deposition is the most efficient over densely vegetated regions via the stomatal uptake of ozone and its precursors, and LULCC can alter these fluxes. Kroeger et al. (2014) found that reforestation over peri-urban areas in Texas, USA, could effectively enhance dry deposition, resulting in decreases in ozone and its precursors. Fu and Tai (2015) found that LULCC driven by climate and changes could overall enhance dry deposition and decrease ozone by up to 4 ppbv in East Asia during the past 3 decades. The dry-deposition enhancement mostly arises from climate- and -induced increase in leaf area index (LAI), which more than offsets the compensating effect of cropland expansion (Fu and Tai, 2015). The relative importance of isoprene emission and dry deposition, which could have counteracting effects on ozone given the same LULCC, is strongly dependent on local concentrations and vegetation type (Wong et al., 2018).
LULCC can also affect weather and climate by perturbing the biosphere–atmosphere exchange of water and energy fluxes (e.g., Betts, 2001; Bonan, 2016; Pitman et al., 2009). For example, afforestation generally cools the surface in tropical regions, where evaporative cooling generally exceeds radiative warming from reduced albedo but warms the surface in boreal forests due to the more dominant radiative warming effect (e.g., Arora and Montenegro, 2011; Lee et al., 2011; Bonan, 2008). There is little consensus on the effects of afforestation in midlatitude regions (e.g., Boisier et al., 2012; de Noblet-Ducoudré et al., 2012). Recent studies (Devaraju et al., 2015; Laguë and Swann, 2016) have identified that LULCC in midlatitude regions can modify the global energy balance, impacting cloud cover, precipitation, and the circulation pattern. Furthermore, the impacts of such surface forcing could extend into the upper troposphere, alter the large-scale circulation pattern, and consequently affect the climate in remote regions (Henderson-Sellers et al., 1993; Chase et al., 2000; Swann et al., 2012; Medvigy et al., 2013). Laguë et al. (2019) examined the climatic effects of individual physical components in the land surface (albedo, evaporative resistance, and surface roughness) and found that temperature responds most to changes in albedo and evaporative resistance through large-scale atmospheric feedbacks. Still, how individual land characteristics play out together and interact with each other to affect the atmospheric general circulation are not fully understood.
By and large, the impacts of LULCC on weather and climate are complex. There is high confidence that LULCC can affect regional climate and climate in remote areas as far as few hundreds of kilometers away (Jia et al., 2019). The magnitude and sign of regional climate change vary across regions depending on the magnitude of LULCC and background climatic conditions. However, on the global scale, the net changes resulting from LULCC alone are relatively small (e.g., Matthews et al., 2004; Pongratz et al., 2010; Brovkin et al., 2013; Shevliakova et al., 2013; Simmons and Matthews, 2016). Thus, sometimes climatic responses to LULCC may be difficult to distinguish from natural climate variability especially on the global scale.
The modification of the overlying meteorological environment and climate induced by LULCC and the associated exchange of momentum, heat, and moisture between the land and atmosphere can be defined as biogeophysical effects of LULCC. Such effects can further alter surface ozone on local to pan-regional scales (Jiang et al., 2008; Ganzeveld et al., 2010; Wu et al., 2012), and we shall call these and related pathways the biogeophysical effects of LULCC on ozone. In particular, a LULCC-induced increase in surface temperature could (1) accelerate peroxyacetyl nitrate (PAN) decomposition into (Jacob and Winner, 2009; Doherty et al., 2013; Pusede et al., 2015), (2) increase biogenic VOC emissions from vegetation (Guenther et al., 2012; Wang et al., 2013; Squire et al., 2014), and (3) lead to more water vapor in air that tends to increase ozone destruction (Jacob and Winner, 2009). The net effect of higher temperatures is almost always ubiquitously an enhancement of ozone levels reported from both observational (e.g., Porter et al., 2015; Pusede et al., 2015) and modeling (e.g., Shen et al., 2016; Lin et al., 2017) studies in many polluted regions. Meanwhile, any reduction in precipitation, cloud cover, and soil moisture can also enhance surface ozone because of the associated increase in solar radiation and reduced dry-deposition velocity. Figure 1 summarizes the possible biogeochemical and biogeophysical pathways through which a change in forest coverage may influence surface ozone. The relative importance of different pathways, many of which may either counteract or amplify each other, is strongly dependent on forest types.
Figure 1
Schematic diagram showing the biogeochemical and biogeophysical effects of any changes in the forest cover resulting from land use and land cover change (LULCC) on surface ozone. Red arrows indicate the biogeochemical pathways and grey arrows indicate the biogeophysical effects via changes in the overlying meteorological environment. The sign associated with each arrow indicates the correlation between the two variables; the sign of the overall effect (positive or negative) of a given pathway is the product of all the signs along the pathway. We here focus on processes initiated on the land surface by LULCC and the corresponding responses in local near-surface atmosphere (blue box) and remote near-surface atmosphere (yellow box).
[Figure omitted. See PDF]
The LULCC biogeophysical effects have thus far been largely unexplored, though biogeochemical effects of LULCC have been examined by a number of studies (Wu et al., 2012; Fu and Tai, 2015; Heald and Geddes, 2016). Only a few recent studies have implicitly included such biogeophysical effects of LULCC in their coupled land–atmosphere models when assessing the impacts of LULCC on surface ozone. Val Martin et al. (2015) studied the combined effects of LULCC on surface ozone using future LULCC scenarios and found an increase of 2–3 ppbv from 2000 to 2050 over US national parks. Ganzeveld et al. (2010) also calculated the future LULCC from 2000 to 2050 and found that an increase in boundary-layer ozone mixing ratios by up to 20 % over the tropics. However, these studies did not distinguish between the roles of biogeophysical vs. biogeochemical effects or decipher the physics and relative importance of various mechanisms behind the combined effects.
The aim of this study is to investigate how and to what extent global LULCC could affect surface ozone in the near future by investigating and distinguishing between the biogeochemical, biogeophysical, and combined effects of LULCC. We suggest a new line of biogeophysical pathways linking LULCC to surface ozone and also consider biogeochemical pathways through isoprene emission and dry-deposition changes caused by LULCC. In particular, over the regions without significant LULCC but showing substantial ozone changes, we find that the biogeophysical effects arising from LULCC-induced atmospheric circulation changes can be dominant and could be isolated from the combined effects. LULCC is one of the key strategies for climate change mitigation but meanwhile has substantial impacts on ozone pollution. Understanding its comprehensive pathways on surface ozone can help provide important references for integrated air quality and land use management in the future.
2 Data and methods2.1 Modeling framework
To simulate the impacts of LULCC on surface ozone, we use the Community Earth System Model (CESM) version 1.2 (
In CLM4.5, biogenic VOC emissions are computed using the Model of Emissions of Gases and Aerosols from Nature (MEGAN) version 2.1 (Guenther et al., 2012), accounting for the major known processes controlling biogenic VOC emissions from terrestrial ecosystems, such as effects of temperature, solar radiation, soil moisture, leaf age, concentrations, and vegetation species and density. Biogenic VOC emissions in MEGAN are allowed to respond interactively to changes of these processes. Thus, isoprene emission is allowed to respond to spatiotemporal changes in PFTs and the associated changes in meteorological conditions in this study. Dry deposition of gases and aerosols is computed based on the multiple-resistance approach of Wesely (1989), updated by Emmons et al. (2010), Lamarque et al. (2012), and Val Martin et al. (2014). In the scheme, dry-deposition velocity is the inverse of aerodynamic resistance (Ra), sublayer resistance (Rb), and bulk surface resistance (Rc), whereby Rc includes a combination of resistances from vegetation (including stomatal resistance), lower canopy, and ground with specific values for different land types. Correspondingly, dry-deposition velocity in the scheme responds to primarily meteorological and ecophysiological conditions. Soil emissions are dependent on soil moisture, soil temperature, and vegetation cover (Emmons et al., 2010; Yienger and Levy, 1995), while biomass burning emissions and anthropogenic emissions of ozone precursors are prescribed by inventory at present-day levels.
The coupled CAM-Chem–CLM model configuration of CESM can be run with prescribed meteorology to drive atmospheric-chemistry-only simulations (hereafter as dynamical Off-line mode) or with interactive, dynamically simulated meteorology using CAM4 (hereafter as On-line mode). These two modes are both applied in the study. In particular, the Off-line mode is used to quantify the biogeochemical effects of LULCC alone on surface ozone in the absence of any associated meteorological responses to LULCC. The On-line mode is applied to assess the biogeophysical and combined effects on ozone caused by LULCC, considering also the effects of the resulting meteorological changes.
For the Off-line mode, we use the Goddard Earth Observing System Model Version 5 (GEOS-5;
The CAM-Chem-simulated atmospheric chemistry has been extensively evaluated and documented (e.g., Lamarque et al., 2012). In general, CAM-Chem can reasonably replicate observed values at individual sites (CASTNET for the US and EMEP for Europe; Lamarque et al., 2012; Val Martin et al., 2014; Sadiq et al., 2017) and mid- and upper-tropospheric distribution derived from a compilation of ozone measurements (Lamarque et al., 2010; Cooper et al., 2010), albeit with a general overestimation. The performance is comparable to other global and regional models (Lapina et al., 2014; Parrish et al., 2014). Uncertain emissions, coarse resolution (Lamarque et al., 2012), misrepresentation of the dry-deposition process (Val Martin et al., 2014), and overestimation of stomatal resistance (Lin et al., 2019) are all likely factors contributing to the biases.
2.2 Present and future land use and land cover scenarios
For the present-day land cover distribution, satellite phenology based on MODIS, and a cropping dataset from Ramankutty et al. (2008) are used (see Lawrence et al., 2011). The cropping dataset combines agricultural inventory data and two satellite-derived land products. For the future land cover, projections based on the Representative Concentration Pathways (RCPs) 4.5 and 8.5 scenarios are adopted (van Vuuren et al., 2011). Both are computed using integrated assessment models (IAMs) for the Phase 5 of the Coupled Model Intercomparison Project (CMIP5) community, incorporating anthropogenic transformation and activities associated with carbon releases (e.g., wood harvest). These LULCC projections are internally consistent with the corresponding emission scenarios and development pathways for the Fifth Assessment Report (AR5) of the Intergovernmental Panel on Climate Change (IPCC) (Taylor et al., 2012). In general, the RCP4.5 LULCC has the most extensive use of land management as a carbon mitigation strategy, with the expansion of forest areas combined with large reductions in croplands and grasslands. The RCP8.5 LULCC has the least effective use of land management for carbon mitigation, with a large expansion in both croplands and grasslands together with substantial forest losses. In this study, anthropogenic emissions are held constant at the present-day level for all runs; thus the effects of LULCC can be regarded as being decoupled from changes in anthropogenic emissions in order to isolate the effects of LULCC alone.
Both present-day and future land cover are transformed into PFTs changes for implementation into CESM (Lawrence et al., 2012; Oleson et al., 2013). The long-term time series of LULCC span the historical (1850–2005) and future (2006–2100) periods at 5-year intervals (Riahi et al., 2007; van Vuuren et al., 2007; Wise et al., 2009a), and are then interpolated and harmonized with smooth transitions on the annual timescale (Hurtt et al., 2011). For this work, we focus on LULCC from the present-day (2000) to the future (2050) period.
2.3 Model experiments
We have two sets of configuration – Off-line mode and On-line mode – to investigate the impacts of LULCC on surface ozone (see Table 1). We focus on boreal summer month (June–July–August, JJA) averages as this is the period when ozone pollution is generally the most severe in the Northern Hemisphere. In the first set of simulations in Off-line mode, surface ozone would respond to LULCC only through biogeochemical effects that mainly include changes in dry-deposition velocity and isoprene emissions without meteorological responses to LULCC. The Off-line mode includes a control run (Off-line_CTL) using present-day (year 2000) distribution of land use and land cover and two future simulations Off-line_45 and Off-line_85, with year-2050 land use and land cover distribution following RCP4.5 and RCP8.5, respectively. All three experiments are time-sliced simulations using prescribed GEOS-5 meteorology from 2004 to 2017 for 14 years allowing for interannual climate variability, and we use the last 10-year averages for analysis. The statistical significance of the comparison amongst these experiments was assessed by the Student's test at the 95 % confidence levels.
Table 1
List of model experiments.
Case name | Land treatment | Meteorology | Simulated years | Model forcing | |
---|---|---|---|---|---|
1 | Off-line_CTL | Present-day (2000) land use and land cover (LULC) map | GEOS-5 reanalysis (2004–2017) | 14 years, the last 10 years for analysis | – Present-day (2000) well- mixed greenhouse gases and short-lived gases and aerosols, anthropogenic emissions; |
2 | Off-line_45 | 2050 RCP4.5 future LULC map as a time slice | Same as above | Same as above | – Present-day (2000) monthly mean sea surface temperature and sea ice |
3 | Off-line_85 | 2050 RCP8.5 future LULC map as a time slice | Same as above | Same as above | – All simulations use the SP mode in CLM |
4 | On-line_CTL | Present-day (2000) LULC map | Simulated online | 60 years (looped over same year of forcing), the last 30 years for analysis | – Isoprene emission is from MEGAN |
5 | On-line_45TS | 2050 RCP4.5 future LULC map as a time slice | Same as above | Same as above | – Dry-deposition velocity is based on Wesely (1989) updated by Val Martin et al. (2014) |
6 | On-line_85TS | 2050 RCP8.5 future LULC map as a time slice | Same as above | Same as above | |
7, 8 | On-line_45 | 2000–2005 historical, 2006–2065 RCP4.5 transient LULC map | Same as above | 66 years (transient land forcing all the way), the last 30 years for analysis | |
9, 10 | On-line_85 | 2000-2005 historical, 2006–2065 RCP8.5 transient LULC map | Same as above | Same as above |
Case 8 and 10 are in On-line_45 and On-line_85 and are similar to Case 7 and 9, respectively, but with slightly different initial conditions to produce two ensemble members. The analysis time period is from 2036 to 2065, centered around the year 2050, as part of the transient land forcing.
In the second set of On-line mode simulations, ozone would respond to both the biogeochemical and biogeophysical effects caused by future projected LULCC. The first experiment On-line_CTL, reflects present-day conditions and uses land surface forcing for the year 2000. The second and third experiments, On-line_45TS and On-line_85TS, are time-sliced simulations using 2050 land cover distribution following RCP4.5 and RCP8.5, respectively. These two experiments are designed for direct, parallel comparison with the Off-line simulations, except with longer integration (60 years) and analysis (30 years) time to capture interannual climate variability. Because these multi-year simulations are looped over the same year of land cover forcing, they can be regarded as a quasi-ensemble run and the multi-year average can be regarded as the ensemble average. The fourth and fifth experiments, referred to as On-line_45 and On-line_85, are transient simulations performed continuously from the year 2000 to 2065 using transient land cover maps projected for the RCP4.5 and RCP8.5 scenarios, respectively. These On-line transient simulations are repeated by a series of ensemble runs with slightly different initial conditions, with two ensemble members for each scenario. All the On-line experiments analysis is based on the last 30-year average and the ensemble average when modeled variables have attained a quasi-steady state. Comparison between the time-sliced and transient simulations helps us ascertain the strengths of LULCC-induced climate signals.
All simulations are performed with prescribed sea surface temperature and sea-ice cover following the HadISST dataset (Rayner et al., 2003) at the year-2000 level. Long-lived greenhouse gases and thus the radiative forcing from them are kept at present-day conditions (year 2000) to isolate the effects of LULCC only.
These model configurations allow us to separate and examine (1) biogeochemical effects of LULCC on surface ozone, (2) biogeophysical effects on surface ozone, and (3) the combined effects induced by LULCC on surface ozone and its precursors and dry deposition.
3 Results3.1 Projected LULCC from 2000 to 2050
Figure 2 shows the global distribution of present-day (year 2000) PFTs and future projected changes (2000 to 2050) following RCP4.5 and RCP8.5 for three major land cover categories. The future LULCC in RCP4.5 is characterized by extensive forest expansion (Fig. 2f, g). Transition from the present day to 2050 in RCP4.5 highlights the global growth of forest from 71.8 to 74.0 km, at the expense of croplands (from 14.7 to 12.3 km); grasslands slightly increase in area from 33.7 to 33.8 km. The net increase of 2.2 km of forests is consistent with that provided by Hurtt et al. (2011), Lawrence et al. (2012) and Heald and Geddes (2016). Figure 2f also illustrates cropland area increases over Southeast Asia, India, and China. Such increases are due to more bioenergy crop production for the purpose of climate change mitigation, economic advantages from agriculture productivity growth, lower regional land prices, and availability of undeveloped lands in these developing regions (Wise et al., 2009b; Thomson et al., 2011). In contrast, regions such as Europe, the US, and Canada undergo extensive reforestation. RCP8.5 LULCC is characterized by extensive cropland expansion (Fig. 2k, l, m), driven mainly by a large increase in the global population and a slow increase in crop yields due to a slow rate of exchange of technology globally (Riahi et al., 2011). Cropland expansion occurs largely over the tropical belt (30 N–30 S) at the expense of forest reduction. The total increases in croplands are by 1.8 km, and forest area decreases by 2.5 km.
Figure 2
The present-day (2000) land use and land cover by percentage of land coverage, total leaf area index (LAI), and vegetation height (a–e) and their changes from 2000 to 2050 under RCP4.5 (f–j) and RCP8.5 (k–o) scenarios for the boreal summer (June–July–August) (units at the right side of the color bar). Plant function types (PFTs) in CESM are here grouped into three major categories: crop, forest, and grass. The treatment of vegetation including PFT fractional coverage, LAI, and vegetation height is prescribed using the SP mode of CLM4.5 in both the present-day case and future LULCC scenarios. For the future cases, PFT fractional coverage is derived according to the RCP land scenarios.
[Figure omitted. See PDF]
The present-day LAI and its changes associated with the future projected LULCC are shown in Fig. 2d, i, and n. Forest expansion leads to increases in LAI, whereas deforestation results in LAI reduction. For RCP4.5, due to the widespread reforestation and afforestation except in East Asia, LAI increases significantly. Particularly over Europe and the US, the absolute increase in LAI is . For RCP8.5, LAI generally declines with intense reductions over the tropical regions.
3.2 Biogeochemical effects of LULCC on surface ozoneFigure 3 shows the simulated changes in ozone concentrations, isoprene emission rates, and dry-deposition velocities based on the Off-line simulations. We find that isoprene emission changes correspond closely with the LULCC in each future scenario from 2000 to 2050 (Fig. 3b, e). For RCP4.5, isoprene emission increases over the regions with forest expansion, including the US, Europe, and some tropical regions but decreases over East Asia. Such isoprene emission increases are primarily driven by forest expansion, since forest PFTs typically emit much more isoprene than crops and grasses (Guenther et al., 2012). For RCP8.5, isoprene emission decreases over the tropics with slight increases over Europe, north China, and north India, largely due to forest reduction in this scenario.
Figure 3
Simulated 2000-to-2050 changes in surface ozone, isoprene emission, and dry-deposition velocity under RCP4.5 and RCP8.5 projected LULCC for the boreal summer (June–July–August) averaged for the final 10 years of simulations. Regions with dots indicate changes that are significant at the 95 % confidence level. These are results from Off-line runs with prescribed meteorology; i.e., meteorological variables do not respond to LULCC.
[Figure omitted. See PDF]
Table 2Annual average global isoprene emission and ozone dry-depositional sink as influenced by future LULCC in the RCP4.5 and RCP8.5 scenarios; shown separately are changes in prescribed meteorology (biogeochemical effects only) and coupled atmosphere–chemistry–land configurations (both biogeochemical and biogeophysical effects).
Isoprene | % | Ozone dry | % | Ozone | % | ||
---|---|---|---|---|---|---|---|
emissions | change | depositional | change | concentration | change | ||
(Tg C yr) | sink (Tg yr) | (ppbv) | |||||
Off-line | Off-line_CTL | 353.8 | 886.8 | 23.6 | |||
Off-line_45 | 372.3 | 5.2 | 895.4 | 1.0 | 23.7 | 0.4 | |
Off-line_85 | 311.9 | 879.8 | 23.5 | ||||
On-line | On-line_CTL | 417.7 | 969.2 | 26.2 | |||
On-line_45TS | 435.4 | 4.3 | 974.7 | 0.6 | 26.5 | 1.2 | |
On-line_85TS | 386.8 | 964.1 | 26.4 | 0.8 | |||
On-line_45 | 440.3 | 5.5 | 975.6 | 0.6 | 26.6 | 1.5 | |
On-line_85 | 385.2 | 964.1 | 26.3 | 0.4 |
Table 2 summarizes the percentage and absolute changes of the annual global isoprene emission. The simulated present-day annual global isoprene is 353.8 Tg C yr, in the middle of the range 308–678 Tg C yr summarized by Guenther et al. (2012). For the RCP4.5 LULCC, the annual global isoprene emission increases by 5.2 %, but it decreases by 11.8 % for RCP8.5. The isoprene emission changes are in line with these studies by Heald et al. (2008) and Wu et al. (2012), who estimated a decrease of 12 %–15 % in global isoprene emission under the net biogeochemical effect of future LULCC (A1B and A2 scenarios).
Figure 3c shows that LULCC in the RCP4.5 scenario has enhanced dry-deposition velocity over most regions where forests have expanded. Forest with both large LAI and high surface roughness often provides the highest dry-deposition velocity amongst all PFTs (Emmons et al., 2010; Lamarque et al., 2012). The most dramatic changes occur in Europe where local maximum changes occur in land cover between forests and croplands. Local decreases over East Asia are the result of deforestation. For RCP8.5, dry-deposition velocity decreases mostly over the regions where tropical forests are replaced by croplands (Fig. 3f). Equatorial Africa and the Amazon experience the largest decrease in dry-deposition velocity relative to present-day conditions. Some increases over western Europe are the result of local reforestation.
The globally averaged change in the dry-depositional sink is around 1 % (Table 2). Local dry-deposition velocity changes within 0.05 cm s. The value of dry-deposition velocity change is in line with previous studies exploring future 2050 LULCC alone in the dry-deposition velocity of ozone (e.g., Verbeke et al., 2015), though our results show slightly larger changes due to larger LAI differences between forests and crops/grasses during the boreal summer compared with their annual mean values of differences from Verbeke et al. (2015).
Figure 3a and d show the impacts of future projected LULCC on surface ozone. LULCC under RCP4.5 with massive forest expansion increases isoprene emission that could increase surface ozone but also enhance dry-deposition velocity that could reduce surface ozone. The overall changes in surface ozone are thus generally small due to these compensating effects. There are a few regions with surface ozone changes by up to 2 ppbv. In particular, over the US, opposite surface ozone changes are seen in RCP4.5: an increase in the northeast US and a decrease in the southeast US despite of the fact that both changes are driven by forest expansion (Fig. 3a). Such a contrasting pattern is shaped by the local atmospheric chemical conditions related to --VOC chemistry. The northeast US is a high- region, and increases in isoprene emission result in enhanced ozone, more than offsetting the effect of increasing dry-deposition velocity. In contrast, the southeast US is a high-isoprene-emitting region; additional isoprene may react with ozone and , thereby suppressing surface ozone production (Kang et al., 2003; von Kuhlmann et al., 2004; Fiore et al., 2005; Pfister et al., 2008). Furthermore, in the low- region, OH is largely removed by reactions with biogenic VOCs, producing peroxy radicals that form or producing organic peroxides. Recent studies found that these peroxides can be rapidly photolyzed, making them at best a temporary reservoir (e.g., Thornton et al., 2002; Kubistin et al., 2010). This result implies that in low- regions ozone production may be -saturated more often than current models suggest. Suppressed ozone is also found in the tropical regions of South America and Africa (Fig. S1a in the Supplement). Together with the increase in dry-deposition velocity, overall there is a decrease in surface ozone. Similar to the northeastern US conditions, southern Europe, northeastern India, and northern China are also high- regions.
Under the RCP8.5 scenario with substantial cropland and grassland expansion, decreases in isoprene emission and dry deposition again offset each other in controlling surface ozone in high- regions. Surface ozone concentration decreases by around 1 ppbv over the north-central and southern Africa but increases by up to 2 ppbv over equatorial Africa and central South America (Fig. 3d). In particular, the area with enhanced ozone in these regions corresponds well to reductions in isoprene emission and dry deposition together. Equatorial Africa is a high-isoprene-emitting, low- region; thus decreases of isoprene emission together with reduced dry deposition would lead to enhanced ozone (Fig. S1b).
3.3 Biogeophysical effects of LULCC on surface ozoneNext, we examine results from the On-line simulations, which allow us to assess the impacts of LULCC on surface ozone when the overlying meteorological environment is also modified by LULCC. Figure 4 shows the simulated changes in ozone concentrations, isoprene emissions rates, dry-deposition velocities, and 2 m air temperature from the On-line time-sliced simulations. The simulated changes in surface ozone are in the range from to ppbv (Fig. 4a, e). The magnitude of ozone changes in On-line simulations is overall larger than those in Off-line simulations (Fig. 3 and Table 2), which consider biogeochemical effects only, indicating the importance of complications from the changing meteorological environment in response to LULCC. Within the On-line simulations, more substantial responses of meteorology as well as of surface ozone to LULCC are found in RCP4.5 compared with those in RCP8.5.
Figure 4
Simulated 2000-to-2050 changes in surface ozone, isoprene emission, dry-deposition velocity, and 2 m air temperature for the boreal summer averaged over the 30-year analysis window, under two future scenarios (RCP4.5 and RCP8.5) of LULCC. Regions with dots indicate changes that are significant at the 95 % confidence level. These results are from the On-line runs (land forcing 2050 minus 2000) with dynamic meteorological responses to LULCC from time-sliced simulations On-line_45TS and On-line_85TS (Table 1).
[Figure omitted. See PDF]
In contrast to the clear, localized signals in ozone changes in response to LULCC through biogeochemical pathways, surface ozone changes are more complex when biogeophysical pathways are also involved (Fig. 4a, e). Most importantly, both local and remote ozone changes can be discerned. Such signals are not captured by the Off-line simulations in which changes only respond to LULCC locally (Fig. 3). Furthermore, changes in 2 m air temperature are found to be correlated well with patterns of changes in ozone (Fig. S2a, d), indicating that the biogeophysical drivers that modify meteorological conditions may play critical roles in ozone changes. Figure 4d and h show simulated changes in 2 m air temperature before and after LULCC. Regional-scale temperature changes of up to 2 K are found. Such magnitudes of temperature anomalies induced by LULCC are in line with those from previous experiments (Lawrence et al., 2012; Brovkin et al., 2013). Over the regions where temperature increases, surface ozone increases correspondingly.
Changes in isoprene emission also correlate with temperature changes (Figs. 4b, d, f, h and S2b). Isoprene emission also increases in regions with forest expansion, reflecting not only the biogeochemical effects due to higher fractional coverage of isoprene-emitting vegetation types (Sect. 3.2) but also the biogeophysical effects arising from changing 2 m air temperature.
Changes in dry-deposition velocity (Figs. 4c, g and S2c) also correlate to meteorological changes. In the dry-deposition scheme, stomatal resistance can respond to atmospheric dryness and soil water stress. For instance, drier conditions are captured in RCP4.5 in the north-central US as initiated by the LULCC further east, with anomalous moisture divergence (Fig. 5n) and soil moisture (Fig. 5o). The drier conditions could result in suppressed dry deposition in the corresponding regions (Fig. 5c). The responses of dry deposition to drought conditions have also been observed by recent studies (e.g., Lin et al., 2019). Furthermore, changes in surface roughness can influence aerodynamic resistance and thus dry deposition via modifying boundary-layer turbulence. In LULCC scenarios, surface roughness is modified substantially with increases in RCP4.5 (Fig. 2j) and reductions in RCP8.5 (Fig. 2o), which generally decrease (increase) resistance and enhance (decrease) dry deposition in RCP4.5 (RCP8.5) in LULCC regions, though the overall changes in dry deposition are dominantly shaped by the combined meteorological effects of LULCC.
Figure 5
Changes in surface ozone, isoprene emission, dry-deposition velocity, projected forest, simulated surface albedo, vegetation height, surface net solar radiation, sensible and latent heat fluxes, 2 m air temperature, precipitation, cloud cover, surface wind, vertically integrated moisture transport divergence (vector: kg m s; shading: kg m s), and soil moisture at top 10 cm layer during the boreal summer over North America due to 2000-to-2050 RCP4.5 projected LULCC. Regions with dots indicate changes that are significant at the 95 % confidence level.
[Figure omitted. See PDF]
Table 2 shows that, in general, the percentage changes in isoprene emission and dry deposition in the On-line simulations are smaller than in the Off-line simulations in both scenarios, reflecting that on a global scale, LULCC-induced meteorological changes partly offset the biogeochemical effects of changing land cover types on ozone.
Thus, changes in ozone can be caused by both biogeochemical and biogeophysical effects of LULCC; furthermore, both effects are highly coupled with each other. We find that in particular the biogeophysical effects of LULCC play critical roles in modulating surface ozone. Hereafter, we focus on the broad regions of North America and Europe, in order to elucidate the origins of surface ozone changes in response to LULCC-induced meteorological changes. We also focus on RCP4.5 only, because no significant changes in ozone or other meteorological variables are found for the RCP8.5 LULCC scenario.
3.3.1 North America under RCP4.5 reforestationFor RCP4.5, North America is subjected to intensive regional changes in the land cover over the eastern US and southern Canada (Fig. 5d). Significant changes in surface ozone (Fig. 4a) and 2 m air temperature (Fig. 4d) are found over large continuous areas in North America, including both the regions with intensive LULCC and regions where LULCC is minimal. Let us first focus on the forested regions with intensive LULCC (Fig. 5d), where reforestation results in a significant decrease in surface albedo (Fig. 5e). In the boreal and temperate mixed forests of southern Canada and northeastern US, such an albedo reduction results in a substantial enhancement in absorbed solar radiation (Fig. 5g). Typical of these forest types, the enhanced net radiation is in turn largely dissipated by higher sensible heat (Fig. 5h) instead of latent heat (Fig. 5i), resulting in a 0.5–1 K rise in average air temperature (Fig. 5j). This generates a warmer and drier boundary layer with suppressed precipitation (Fig. 5k), cloud cover (Fig. 5l), and soil moisture (Fig. 5o), constituting a feedback that likely further enhances net radiation. All these meteorological changes contribute to higher surface ozone concentrations (Fig. 5a) beyond the biogeochemical effects alone. In southern Canada, the drier conditions even help suppress dry deposition (Fig. 5c), further enhancing ozone there. These biogeophysical effects can be summarized by the cross-amplifying pathways in the blue box in Fig. 1. Furthermore, reduced wind speed (Fig. 5m) following enhanced roughness (as represented by vegetation height in Fig. 5f) may also reduce moisture transport to these forests, inducing a greater moisture divergence there (Fig. 5n).
In contrast, in the subtropical broadleaf forests in the southeastern US, enhanced forest cover and albedo instead lead to greater moisture convergence from the Gulf of Mexico (Fig. 5n). This generates more favorable water conditions that not only dampen meteorological changes there but also promote dry deposition, leading to only slight changes in ozone. These can also be seen in the cross-counteracting pathways in the blue box of Fig. 1.
Surface ozone also increases significantly over the locations where land use does not change significantly, especially over the Midwest and Great Plains regions of the north-central US (Fig. 5a and d). The ozone enhancement is found to correspond to the drier, warmer, and sunnier conditions there that can be regarded as “remote effects” of LULCC. Such conditions are associated with enhanced moisture divergence (Fig. 5n), which could be caused by the stronger convergence over the surrounding reforested regions that diverges moisture flow from the Great Plains, as well as reduced surface wind speed (Fig. 5m) that can influence regional moisture transport to these regions. The vertically integrated moisture fluxes at present-day conditions are shown in Fig. S3a, illustrating that normally moisture transport from the Gulf of Mexico is deflected by the Rocky Mountains and toward the eastern and north-central US. Due to reforestation, moisture transport is deflected further east and it generates an anomalous moisture flux divergence around the Midwest and Great Plains, resulting in drier conditions in these regions. The drier and warmer boundary layer is also reflected by the lower precipitation (Fig. 5k), cloud cover (Fig. 5l), soil moisture (Fig. 5o), latent heat (Fig. 5i), and the associated higher net radiation (Fig. 5g), sensible heat (Fig. 5h), and air temperature (Fig. 5j). The lower soil moisture can also reduce dry deposition there (Fig. 5c). All these changes can act together to enhance surface ozone over the north-central US as remote effects of LULCC elsewhere; these pathways can be summarized by the yellow box in Fig. 1.
3.3.2 Europe under RCP4.5 reforestation
Substantial increases in surface ozone (Fig. 6a) and air temperature (Fig. 6j) are found in Europe due to the RCP4.5 LULCC scenario, whereby substantial reforestation occurs over in the boreal and temperate mixed forests in the European continental regions (Fig. 6d), modifying surface energy balance significantly. Over the regions with intensive LULCC, the biogeophysical pathways shaping boundary-layer meteorology and ozone are largely similar to southern Canada and northeastern US, where the forest types are similar (see blue box in Fig. 1). In brief, reduced albedo (Fig. 6e) leads to enhanced net radiation (Fig. 6g) and sensible heat (Fig. 6h), raising 2 m air temperature over a large area by 0.4–1.2 K (Fig. 6j) and constituting a hydrometeorological feedback that reduces precipitation (Fig. 6k), cloud cover (Fig. 6l), and soil moisture (Fig. 6o). These changes generate warmer, drier, and sunnier conditions over the forests that favor higher ozone levels. Reforestation also decreases surface wind speed (Fig. 6m) and moisture transport at the near-surface level.
Figure 6
Similar to Fig. 5 but for Europe under RCP4.5.
[Figure omitted. See PDF]
The increases in surface ozone are also found to extend westward and southward beyond the regions with intensive LULCC, likely reflecting remote effects (Fig. 6a). The lower-level wind patterns at 850 hPa under present-day conditions are shown in Fig. S3b, showing that reforested regions are originally on the southerly branch (eastern part) of the Azores High anticyclone. Circulation changes in response to reforestation appears to enable the anticyclonic system to extend eastward, allowing sunny and warm conditions typical of the Azores High to prevail over much of western Europe and parts of North Africa and enhancing surface ozone there.
Overall, we find that biogeophysical effects can have strong impacts on surface ozone through modifying local and remote meteorological conditions such as surface warming, drying, and circulation anomalies initiated by local LULCC (Fig. 1). Our results of temperature changes are consistent with the previous study of Swann et al. (2012) that illustrated the local and remote climate effects of the northern midlatitude reforestation. They conducted a model experiment with extreme afforestation and found substantial warming in North America and Europe. In addition, Govindasamy and Caldeira (2001) and Unger (2014) also found surface cooling due to deforestation.
3.3.3 Transient experiments versus time-slice experimentsIn the above sections, for a direct, parallel comparison with the Off-line configurations, we have used the time-sliced experiments with the present-day land cover in the year 2000 and future land cover in the year 2050. However, in reality the LULCC is transient with the land cover changing gradually; therefore, transient runs in On-line mode with the land cover evolving from the present day all the way to the year 2065 are also conducted (On-line_45 and On-line_85, each with two ensemble members; see Table 1). Figure 7 shows the changes in ozone and other variables from the transient simulations, using 2036 to 2065 as the 30-year averaging period to capture interannual variability. We find that changes in ozone, 2 m air temperature, and other factors controlling ozone are very similar between the transient and time-sliced runs (see also Table 2), with only statistically insignificant differences in different variables in most places (see Fig. S6). The consistent simulated results from the transient (Fig. 7) and time-sliced (Fig. 4) LULCC further reflect the robustness of the LULCC-induced signals at least over North America and Europe, which are strong enough to cause changes in meteorology and ozone pollution in places remote from LULCC, and indicate that the atmospheric responses and biogeophysical effects are generally fast-responding at a quasi-steady state on timescales of years to decades with respect to the slow LULCC.
Figure 7
Similar to Fig. 4, but these results are from the transient simulations On-line_45 and On-line85 (Table 1), averaged over the two ensemble members for each scenario.
[Figure omitted. See PDF]
4 Conclusions and discussionLULCC is expected to continue to co-occur with future socioeconomic development and anthropogenic emission reduction strategies. These changes likely had and will continue to have a large impact on air quality and climate. However, the impacts of LULCC on surface ozone pollution are not fully understood, and the attribution to different LULCC-mediated pathways is far from complete. Here, we investigate and quantify specifically the biogeochemical effects (via modifying ozone-relevant chemical fluxes), biogeophysical effects (via modifying the overlying meteorological environment), and the combined effects of LULCC on surface ozone air quality.
We address the biogeochemical effects alone by performing CESM simulations with prescribed meteorology, and investigate the combined effects using an atmosphere–chemistry–land coupled configuration with dynamic meteorology. We find that the biogeochemical effects of changing isoprene emission and dry deposition following LULCC mostly offset each other, resulting in only modest changes in ozone by up to 2 ppbv from 2000 to 2050. However, surface ozone can be significantly altered by up to 5 ppbv when considering the combined effects associated with the LULCC. In particular, the biogeophysical effects facilitated through temperature changes play a critical role in shaping surface ozone. We find that surface ozone changes correspond well with temperature changes in RCP4.5 over both regions with intensive LULCC and regions with limited LULCC.
The surface ozone changes due to future LULCC are comparable with anthropogenic emissions and climate and thus should be taken into account in future research and policy planning. For example, summertime surface ozone changes induced by climate change alone are projected to increase by 1–10 ppb in the US, Europe, and East and South Asia (e.g., Jacob and Winner, 2009; Fiore et al., 2012). It is also found that the combined effects of changing climate, emissions, and land cover on surface ozone are up to 10 ppb in the US under two RCP scenarios, and the contributions from the three factors have comparable magnitudes although of different signs (Val Martin et al., 2015). Wang et al. (2011) found that in China, summertime surface ozone decreases by ppb on average with a maximum reduction of 25 ppb if all anthropogenic emissions are removed. Our simulated ozone changes induced by LULCC are substantial and within the same order of magnitude as the above studies and others that considered meteorological responses to LULCC (Ganzeveld et al., 2010; Val Martin et al., 2015). This highlights the important roles of LULCC in modulating surface ozone.
The mechanisms behind hydrometeorological responses to LULCC are summarized in Fig. 1. In brief, first, surface properties and processes (e.g., surface albedo and evapotranspiration) are altered, leading to changes in the surface energy balance. In boreal and temperate mixed forests, the albedo effect dominates, leading to higher net radiation, and sensible heat and surface temperature but reduced precipitation, cloud cover, and soil moisture. These local changes can also induce a regional circulation response, in particular the formation of anomalous moisture divergence and corresponding warmer and drier conditions over the surrounding regions even with limited LULCC. In subtropical broadleaf forests, however, both the albedo and evapotranspiration effects are important, and they tend to offset each other, leading to minimal hydrometeorological changes.
In our analysis of LULCC-induced hydrometeorological changes, we have focused on the surface and the overlying boundary layer. Many studies have found that LULCC-induced surface changes can propagate to upper levels as high as 200 hPa (e.g., Chase et al., 2000; Swann et al., 2012; Medvigy et al., 2013; Xu et al., 2015; Jia et al., 2019). In our study, significant meteorological changes can be detected at the upper levels up to 200 hPa due to LULCC (not shown), which can lead to circulation changes, storm track displacement, and anomalous subsidence especially at midlatitudes, likely constituting feedbacks on precipitation, moisture transport, and temperature. However, we find no clear conclusions as to whether these upper-level changes and feedbacks could have sufficient influence on ozone-relevant hydrometeorological conditions beyond that or can be explained by boundary-layer dynamics alone.
Weaker responses of temperature as well as of surface ozone to LULCC are found in RCP8.5 compared with those in RCP4.5. The different extent of temperature responses can be attributed to the location where LULCC occurs. For RCP4.5, LULCC is most intense in the midlatitude regions of the Northern Hemisphere. In contrast, most LULCC for RCP8.5 occurs over the equatorial regions and Southern Hemisphere. Temperature responses to LULCC may be less sensitive to tropical changes or changes over the Southern Hemisphere, which is dominated by the vast oceanic expanse. Van der Molen et al. (2011) using other models also found similar patterns and named such climate responses to LULCC “tropical damping”. The classical theory of such tropical damping is associated with a decrease in cloud cover after deforestation, which then results in increased incoming radiation at the surface and a lower planetary albedo, both counteracting the increase in surface albedo with deforestation.
Our study has several limitations. First, the energy transport between the ocean and land has not been taken into account. Although using a fully interactive ocean component would increase the variability of simulated climate and decrease the signal-to-noise ratio in sensitivity experiments using small forcings, such as LULCC (e.g., Davin and de Noblet-Ducoudre 2010; Brovkin et al., 2013), coupled atmosphere–ocean simulations are crucial for future climate change projections for the longer term (e.g., well past the end of the 21st century). In addition, future LULCC projections in RCPs are predicted from the ensemble of socioeconomic and emission scenarios to match identified pathways of greenhouse gas concentrations. Large uncertainties remain in such projections, calling for a more skillful design of LULCC-related metrics and the corresponding spatial patterns for better air quality predictions. Third, the biogeochemical effects of LULCC on ozone in this study do not consider climatic changes or anthropogenic emission change but only focus on the more immediate effects generated from LULCC such as isoprene emission and dry deposition, mostly due to model limitations. For example, emission is projected to decline sharply over the northeastern US in RCP4.5. As the level decreases, ozone production may become more -limited and thus the sensitivity to isoprene emission may be reduced, rendering the overall biogeochemical effects of LULCC smaller. However, since the biogeophysical effects operate in locations remote from the source regions, they may be less affected by emission changes in the source regions. The full biogeochemical effects of LULCC on ozone, which include biogeochemical-cycle–climate feedbacks and co-effects of anthropogenic emission and LULCC, will warrant further investigation but will foreseeably present greater challenges for process attribution and interpretation.
Atmospheric internal variability is one factor that could affect the significance of our results. Large internal variability of the climate system reduces the signal-to-noise ratio for LULCC-induced climatic changes (Deser et al., 2012). To ascertain the impacts of such variability, we have adopted an analysis period of 30 years for both the time-sliced simulations (looping over the single-year LULCC forcing) and two-member ensemble transient LULCC simulations. Results from both simulation approaches all show broadly consistent signals induced by LULCC in North America and Europe, indicating the significance of our results and the strong signal-to-noise ratios at least over those continents. When applicable, more ensemble members for transient simulations can be used to further confirm the impacts of such variability. Furthermore, we have compared the magnitudes of interannual standard deviations of the near-surface temperature of the CTL run with the LULCC-induced climate signals. Our results show that the climate signals are not weak and can be regionally comparable to interannual variability at midlatitudes (Fig. S4), e.g., over North America and Europe. It is also noteworthy that the time-sliced experiments with single-year forcing looped for multiple years give results very similar to the transient simulations, further pointing to the robustness of LULCC impacts.
Our study highlights the complexity of land surface forcing and the importance of biogeophysical effects of LULCC on surface ozone air quality, emphasizing the importance of LULCC in shaping atmospheric chemistry that could be as important as anthropogenic emissions and climate. Our study can provide an important reference for policy makers to consider the substantial roles of LULCC in tackling air pollution and climate change, to develop a more comprehensive set of climatically relevant metrics for the management of the terrestrial biosphere, and to explore co-benefits among air pollution, climate change, and land use management strategies.
Data availability
Most of the data produced by this study and presented in the paper are deposited in a publicly available institutional repository, accessible via this link:
The supplement related to this article is available online at:
Author contributions
LW designed the model experiments, performed numerical simulations and analysis, and co-wrote the paper; APKT and CYT are the co-principal investigators, who designed the research, performed some of the analysis, and co-wrote the paper; MS, PW and KKWC contributed the interpretation of the results and writing of the paper.
Competing interests
The authors declare that they have no conflict of interest.
Acknowledgements
This work was supported by the Vice-Chancellor Discretionary Fund (Project ID: 4930744) from The Chinese University of Hong Kong (CUHK) given to the Institute of Environment, Energy and Sustainability. It is also supported by a General Research Fund grant (Project ID: 14306015) from the Research Grants Council of Hong Kong given to Amos P. K. Tai.
Financial support
This research has been supported by the Vice-Chancellor Discretionary Fund (Project ID: 4930744) from The Chinese University of Hong Kong (CUHK) given to the Institute of Environment, Energy and Sustainability and by a General Research Fund grant (Project ID: 14306015) from the Research Grants Council of Hong Kong.
Review statement
This paper was edited by Frank Dentener and reviewed by four anonymous referees.
You have requested "on-the-fly" machine translation of selected content from our databases. This functionality is provided solely for your convenience and is in no way intended to replace human translation. Show full disclaimer
Neither ProQuest nor its licensors make any representations or warranties with respect to the translations. The translations are automatically generated "AS IS" and "AS AVAILABLE" and are not retained in our systems. PROQUEST AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY, ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR PURPOSE. Your use of the translations is subject to all use restrictions contained in your Electronic Products License Agreement and by using the translation functionality you agree to forgo any and all claims against ProQuest or its licensors for your use of the translation functionality and any output derived there from. Hide full disclaimer
© 2020. This work is published under https://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.
Abstract
Surface ozone (
You have requested "on-the-fly" machine translation of selected content from our databases. This functionality is provided solely for your convenience and is in no way intended to replace human translation. Show full disclaimer
Neither ProQuest nor its licensors make any representations or warranties with respect to the translations. The translations are automatically generated "AS IS" and "AS AVAILABLE" and are not retained in our systems. PROQUEST AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY, ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR PURPOSE. Your use of the translations is subject to all use restrictions contained in your Electronic Products License Agreement and by using the translation functionality you agree to forgo any and all claims against ProQuest or its licensors for your use of the translation functionality and any output derived there from. Hide full disclaimer
Details



1 Institute of Environment, Energy and Sustainability, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China; Department of Geography and Resource Management, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China
2 Institute of Environment, Energy and Sustainability, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China; Earth System Science Programme, Faculty of Science, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China; Partner State Key Laboratory of Agrobiotechnology, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China
3 Institute of Environment, Energy and Sustainability, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China; Earth System Science Programme, Faculty of Science, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China
4 Earth System Science Programme, Faculty of Science, The Chinese University of Hong Kong, Shatin, Hong Kong SAR, China
5 Department of Earth and Environmental Sciences, Macquarie University, Sydney, 2109, Australia; Climate Research, NSW Department of Planning, Industry and Environment, Sydney, Australia