1 Introduction
1.1 Temperature is a master physical variable in streams
Water temperature governs the geographical range, condition, and physiology of aquatic organisms (Allan and Castillo, 2007), with coincident influence on stream metabolism (Bernhardt et al., 2018; Brown et al., 2004). For example, as ectotherms, aquatic organisms are very sensitive to ambient water temperature and to its alteration, especially near their upper thermal temperature tolerance (Brett and Groves, 1979; Coutant, 1987; McCullough et al., 2009 for a review on cold-water fish; Souchon and Tissot, 2012 for a review on European non-salmonid fish). Water temperature also governs the life history of invertebrates by affecting egg development, fecundity, dormancy, growth, maturation, voltinism, and emergence (Rader et al., 2007). Therefore, understanding the river thermal regime is crucial to understanding ecological functioning (Hester et al., 2009), particularly in an era of global warming (IPCC, 2007, 2013) and numerous ecological changes (Woodward et al., 2010).
1.2 Drivers of water temperature
Major natural drivers of water temperature are (1) climate, i.e., solar radiation, air temperature, wind, precipitation, upstream water temperature, (2) topography, i.e., stream orientation, stream shading by surrounding vegetation, (3) stream bed characteristics, i.e., hyporheic exchanges, groundwater input, and (4) stream discharge (Caissie, 2006). These governing physical variables can be used to identify the primary environmental determinants of a thermal regime for a given site (Caissie, 2006; Hannah et al., 2004; Kelleher et al., 2012; Mohseni et al., 1998; Webb et al., 2008). During summer, which is a particularly sensitive time for aquatic organisms, the factors leading to stream warming are (1) the input of heat fluxes from upstream (depending on discharge and water temperature), (2) direct and indirect solar radiation dominated by infrared radiation, (3) air–water conduction (convective heat flux or sensible heat), and (4) stream bed conduction. The factors leading to cooling are (1) longwave radiation emitted by the water surface, (2) latent heat, and (3) the influx of groundwater. Importantly, the stream thermal regime may also be influenced by anthropogenic structures, with point-scale effects in the case of dams, or more spatially distributed effects in the case of riparian vegetation clearings. Hence, impacts can vary in spatial and temporal scope, depending on relative size effects of stream (headwater to river) versus human features (e.g., power plant reservoir volume; extent of vegetation clearings). Specifically, dams can modify stream thermal regimes by altering heat storage volumes, and by increasing the contact surface of a stream with the atmosphere.
1.3 Large dam effects
The Hester and Doyle (2011) literature review reveals that the cooling effect of large dams (above 15 m high), where water is released downstream from cooler hypolimnetic layers during stratified periods, is the most described worldwide. The serial discontinuity concept (SDC, Ward and Stanford, 1983) is largely based on this property of water cooling by large stratified impoundments. In the SDC framework, large dams can alter longitudinal downstream water temperature pattern for tens of kilometers depending on dam characteristics, flow regime, river physical characteristics, and downstream inputs of lakes, groundwater, and tributaries (Olden and Naiman, 2010; Ellis and Jones, 2013 for a review). In addition, Ward and Stanford (1983) suggest that dams in headwaters may not alter the natural temperature range, with the assumption that canopy shading, and springs or groundwater influx can buffer annual temperature variations. However, this view may be incomplete, as downstream warming may occur during summer releases from small surface reservoirs (O'Keeffe et al., 1990).
1.4 Small dam characteristics are not well established
Although much is known regarding thermal effects of large dams, less is known about the impacts of small dams because their spatial distribution and physical characteristics are not well established. This is especially true for run-of-the-river dams (RRDs) with little or no thermal stratification and the absence of surface releases (Cumming, 2004; Hayes et al., 2008). Due to the increased surface of the impoundment exposed to solar radiation and decreased flow velocity, RRDs are expected to increase downstream water temperatures, contrary to large dams with cold hypolimnion release. These small dams have been built over many years for a variety of uses (e.g., mills, irrigation, livestock watering, storm water management, aesthetic lakes, hydroelectricity, and stream stabilization). Moreover, in contrast to large dams, the number, spatial location, and characteristics of small dams are not well known or are often very imprecise depending on national databases. The International Commission of Large Dams (ICOLD, 2017) inventoried 59 071 large dams (i.e., a height of 15 m or a height of 5–15 m impounding more than m) in 160 countries, but the number of smaller dams could be several million worldwide. In France alone, the Referentiel des Obstacles à l'Ecoulement des Eaux (the national inventory of dams and weirs) database maintained by the French Biodiversity Agency inventoried 96 222 hydraulics works crossing streams and rivers as of September 2017. This corresponds to a density of 0.42 obstacles per kilometer on a basis of 230 000 km streams with permanent flow. However, the complete characteristics of these hydraulic works are not yet quantified, and it is important to note that height alone is not sufficient to discriminate their environmental effects (Poff and Hart, 2002). Mbaka and Mwaniki (2015) proposed definitions for the different features, considering RRDs as impoundments with heights not exceeding the river bank elevation, small weirs (SW) corresponding to heights of around 5 m, and low-head dams (LHD) with heights of between 5 and 15 m. In this work, we studied dams with a height of less than 5 m, which we hereafter refer to as small dams.
1.5 Small dam thermal effects
In their review, Hester and Doyle (2011) concluded that most typical human impacts including small dams alter stream or river temperatures by 5 C or less. Mbaka and Mwaniki (2015), in their global review of the downstream effect of small impoundments, found that out of 43 studies, 25 % reported a temperature increase effect, 2 % noted a decrease effect, and 73 % observed no change. Dripps and Granger (2013) studied the influence of three residential artificial headwater lakes (17–45 ha) on stream (discharge 0.0024–0.0109 m s) thermal regimes. They measured a summer downstream temperature increase of as much as 8.4 C and a decrease of diurnal variability of as much as 3.9 C. Maxted et al. (2005) found that impoundments (height 5 m and surface area 1 ha) in rural catchments increased downstream mean daily stream temperatures by 3.1–6.6 C during the critical summer period, and temperature differences were 3 times higher than those in woody catchments (0.8–2.0 C). In the Laurentian Great Lakes region, Hayes et al. (2008) studied two types of dams with different uses. They measured a weak to no existent thermal effect of low-head barriers (height 0.5 m) built to prevent the upstream migration of sea lamprey (Petromyzon marinus, L.). Conversely, they measured a greater effect for small hydroelectric dams (downstream temperature increases of up to 5.6 C). Analyzing the thermal effects of beaver dams, Weber et al. (2017) found a complex and diverse range of temperature responses. Similarly, some authors find little to no thermal influence of beaver dams (Sigourney et al., 2006), and others find extreme temperature increases of up to 7 C in a headwater passing through large (5 ha) beaver dam complexes (Margolis et al., 2001).
These studies illustrate the large variability in the downstream responses to small dams, and the difficulty in identifying the explanatory variables governing these responses, with dam height alone being a poor predictor. Nevertheless, several explanatory variables are clearly relevant, including stream size, stream order, watershed surface and vegetation cover, climate context, geology and alluvial aquifers, groundwater exchange, impoundment surface directly submitted to radiation, water residence time, and base flow discharge. Variability in the downstream responses appears to be greater in headwaters due to the weak thermal inertia and great diversity of these waterbodies, especially with regard to local shading effects from riparian canopy cover and the relative importance of spring or tributary discharges.
1.6 Objective of the study
The purpose of this study was to quantify the downstream impacts of different types of small dams on the summer water temperature in lowland streams. We chose to examine the summer period because this is when stream temperatures reach maximum annual values with the corresponding highest probability of reducing ecological functioning. We examined the following: (1) temperature regimes upstream and downstream of dams with different structural characteristics, (2) relationships between upstream–downstream stream temperature anomalies and climatic variables, watershed characteristics, and dam hydraulic geometry, (3) the most significant variables explaining the different thermal behaviors, in order to account for dam diversity and functioning in future climate, and (4) the dam thermal effect considering a biological threshold of 22 C, with a calculation of both the number of days with a temperature above this threshold and the average hourly duration above this threshold.
2 Methods
2.1 Study area
Our study area is an alluvial lowland plain northeast of Lyon, France, between the Jura and the northern Massif Central mountain ranges (Fig. 1), at altitudes of between 170 and 320 m. The main river in our study area is the Saone, which has a network of tributaries (Strahler orders 1–5) drained primarily by agricultural (67.4 %; French average 59.5 %) and urban land cover
(7.2 %; French average 5.5 %) (UE-SOeS, CORINE Land Cover, available at:
Figure 1
Location of the study area, the Bresse region – the black points on the right map indicate temperature recording sites.
[Figure omitted. See PDF]
The climate in our study area is cold continental, characterized by hot, dry summers (average maximum temperature of 25.8 C) and cold winters (average maximum temperature of 5 C). The average annual precipitation for the region is 900 mm. This region is distinguished climatically by maximum median air temperatures in July (1960–1990 period) exceeding 25.5 C, which is equivalent to those of the Mediterranean region and of southwest France (Wasson et al., 2002). Regionalized climate projections on the scale of France (Peings et al., 2012) indicated that this region is susceptible to higher summer air temperatures, with increases of 2–3 C for maximum daily temperatures. For scenario A1B (mean concentration of greenhouse gases), the estimation was more than 10 additional days of heat waves (as defined by WMO, 1966) by 2050.
2.2 Sampling sitesThe 11 dams in the study area are overflow structures that occupy the sites of former water mills, some of which still produce energy. The study dams had heights between 1.0 and 2.4 m, with backwater flow lengths from 280 to 2950 m, and impoundment volumes from 1200 to 53 000 m. We calculated the average residence time (in days, d) as the ratio of the impoundment volume (m) to the daily water flow volume (m d). The daily water flow volume is estimated from nearby hydrometric measurement sites (French database HYDRO) that are weighted by a correction coefficient during low flow periods. The correction coefficient is estimated from synoptic gauging performed by the regional hydrometric institute (Direction Regionale de l'Environnement, de l'Amenagement et du Logement, DREAL, 2018). Average residence times at our dams vary from 0.1 to 8.4 d (Table 1).
Table 1
Physical characteristics of dams of the river and impoundments.
Stream | Dam name | Watershed | Distance | Strahler | Dam | Length | Surface | Volume | Residence | Year of |
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name | (km) | to the | order | height | (impoundment) | (m) | (m) | time (d) | sampling | |
source (m) | (m) | (m) | ||||||||
Veyle | Dompierre | 32 | 11 167 | 3 | 1.2 | 500 | 10 900 | 10 500 | 8.4 | 2010 |
Veyle | Fretaz | 78 | 22 859 | 4 | 1.5 | 535 | 3500 | 2600 | 0.1 | 2014 |
0.1 | 2016 | |||||||||
Veyle | Montfalconnet | 125 | 38 146 | 4 | 2.4 | 1200 | 14 400 | 20 160 | 0.5 | 2015 |
Veyle | Peroux | 500 | 50886 | 5 | 2.4 | 2150 | 39 200 | 53 000 | 0.6 | 2015 |
Veyle | Thuets | 350 | 43 912 | 5 | 1.9 | 2950 | 57 000 | 51 000 | 0.6 | 2016 |
Veyle | Thurignat | 640 | 60 537 | 5 | 1.4 | 1500 | 34 600 | 31 165 | 0.2 | 2016 |
Vieux Jonc | Cailloux | 67 | 11 680 | 3 | 1.0 | 280 | 2340 | 1200 | 0.7 | 2009 |
Renon | Champagne | 122 | 42 368 | 3 | 1.5 | 405 | 2840 | 2130 | 0.7 | 2009 |
0.5 | 2015 | |||||||||
Reyssouze | Moulin Neuf | 209 | 48 217 | 3 | 1.0 | 1800 | 35 520 | 12 420 | 0.3 | 2016 |
Reyssouze | Peloux | 145 | 34 842 | 3 | 1.5 | 1700 | 49 930 | 17 340 | 0.5 | 2016 |
Solnan | Revel | 88 | 15 431 | 3 | 1.8 | 3200 | 31 140 | 28 370 | 2.6 | 2016 |
The structures studied differ considerably in impoundment surface area, residence time, and their position in the hydrographic network (Table 1). These variables govern (1) the input of diurnal heat from solar radiation, (2) the loss of nocturnal heat linked to evaporation and emitted longwave radiation, and (3) the upstream permanent inflow of heat.
2.3 Temperature monitoringThe temperature sampling was performed in summer (from the end of June to the beginning of September) in different years (from 2009 to 2016) by the local water management organization (Syndicat Mixte Veyle Vivante). For two sites, we have data for two different summers (Champagne in 2009 and 2015 and Fretaz in 2014 and 2016) because the local water management organization was particularly interested in the thermal regimes of these rivers (Table 1).
We installed temperature sensors (Hobo® Pendant, Onset Computer Application; accuracy C) upstream and downstream of each dam. Upstream sensors were placed upstream of the backwater flow length of the dam, and downstream sensors were placed m downstream of the dam in the main flow channel. Both upstream and downstream sensors were placed at depths of 20–50 cm. The temperature was recorded at a time step of 30 min. The temperature sensors were calibrated each year using the simple “ice bucket” procedure introduced by Dunham et al. (2005).
The monitoring period had higher than normal air temperatures, except for 2014 (only one site), which was colder with significantly higher precipitation. Precipitation was normal throughout the study period, except in 2009 and 2016, which were lower than normal (Table 2). The summer climatic characteristics for our analysis period are compared with the normal values produced by Meteo France (1981–2010).
Table 2
Climatic characteristics during years of stream temperature monitoring (2009–2016).
Year | Air | Precipitation |
---|---|---|
(July– | temperature | anomaly (%) |
August) | anomaly (C) | |
2009 | 70 | |
2010 | 50 | |
2014 | 165 | |
2015 | 50 | |
2016 | 70 |
Source:
To characterize the influence of dams on stream thermal regimes we first calculated three variables: daily difference between upstream and downstream temperature (1) maximums (), (2) minimums (), and (3) amplitudes () for each site and year. With these data, we then conducted the following analyses:
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median summer differences in , , and (median is used instead of mean to limit the influence of extreme values);
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regression between daily upstream and downstream water temperature to directly assess dam thermal effects;
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regression between daily air and water temperature over the whole recording period to assess the influence of air temperature on observed relationships.
2.5 Site typology analysis
We observed different thermal regimes in our data and wanted to classify them. To do so, we carried out a hierarchical cluster analysis using Euclidian dissimilarities matrix according to the method of Ward Jr. (1963) using the daily dataset () of and obtained over all time series. We forced the classification to integrate the different time-series effect by adding a complete disjunctive table differentiating each time series to the dataset. This procedure makes it possible to group the data first by time series, then in a second step to differentiate them from each other (i.e., to differentiate site thermal regimes).
2.6 Ordination analysis
To characterize the impacts of the different dams, a principal component analysis (PCA) was carried out using the XLSTAT (Addinsoft™) software on the three water temperature variables: , , and . We used the median values for variables in each time series in order to build an input matrix (13 occurrences for three variables).
Then a complementary redundancy analysis (RDA) with an automatic stepwise variable selection procedure was used to identify the physical dam characteristics (Table 1) that significantly explain the PCA results (Ter Braak, 1986).
After the RDA identified the relevant physical dam characteristics, we conducted a multiple linear regression between these characteristics and temperature variables to determine the specific effect sizes of these characteristics on the thermal regime.
Figure 2
Time series of water temperature (C) upstream (blue) and downstream (red) of the Fretaz dam in the Veyle stream, respectively, in the years 2014 (a) and 2016 (b). These example sites are illustrative of the group A typology, where is increased downstream but is not.
[Figure omitted. See PDF]
3 Results3.1 General temperature patterns
Regardless of site or year, we observed a consistent pattern of summer temperature variations consisting of the following (Fig. 2):
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daily (diel) variation (minimum in early morning, maximum in late evening);
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periods of progressively increasing and ; and
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rapid drops in temperature that interrupt these periods, and that are generally linked to precipitation events.
We observed two consistent patterns in upstream–downstream thermal regimes. In the first pattern, is higher downstream, but stays relatively constant (Fig. 2). We note that these upstream–downstream differences were muted in 2014, the cold and humid year (Fig. 2). This thermal pattern (i.e., where increases downstream, but not ) is observed in 7 out of 13 cases (Table 3). In the other cases (6 out of 13; Table 3), we observed a second pattern, where both and are higher downstream of the structure, which results in a consistent shift between the two temperature time series (Fig. 3, selected examples: Dompierre dam, 2010 and Peroux dam, 2015).
Figure 3
Time series of water temperatures upstream (blue line) and downstream (red line) of the (a) Dompierre and (b) Peroux dams in the Veyle stream (2010 and 2015, two warm summer years, respectively, and 2 C, Table 2). These example sites are illustrative of the group B typology, where both and are increased downstream.
[Figure omitted. See PDF]
Figure 4(a) Minimum and (b) maximum daily temperatures upstream and downstream of the run-of-the-river dams (Dompierre site, Veyle stream in 2010; Fretaz site, Veyle stream in 2014). The dashed line is the line.
[Figure omitted. See PDF]
3.2 Upstream–downstream differencesThe two dominant patterns of temperature differences are further illustrated by plotting downstream versus upstream and values at the site. For example, at Dompierre in 2010, we observed a consistent shift of approximately C (both and ) between the upstream and downstream areas with respect to the dam (Fig. 4a). In contrast, at Fretaz in 2014, this shift is dampened, and temperature values between the upstream and downstream regions more closely follow a relationship (Fig. 4b).
Table 3
Median values of differences between daily maximum () and minimum temperatures () and the diurnal ranges () between upstream and downstream regions of the run-of-the-river dams. The daily maximum upstream temperature () is indicated to show the limited influence of the initial temperature on upstream–downstream differences.
Group | Run-of-the-river dam (stream) | ||||
---|---|---|---|---|---|
(C) | (C) | (C) | (C) | ||
A | Moulin Neuf (Reyssouze), 2016 | 0.5 | 24.0 | ||
Cailloux (Vieux Jonc), 2009 | 0.9 | 18.1 | |||
Fretaz (Veyle), 2014 | 0.3 | 0.7 | 19.4 | ||
Fretaz (Veyle), 2016 | 1.2 | 21.2 | |||
Champagne (Renon), 2015 | 0.1 | 0.9 | 20.2 | ||
Montfalconnet (Veyle), 2015 | 1.0 | 19.8 | |||
Champagne (Renon), 2009 | 0.7 | 19.3 | |||
B1 | Thurignat (Veyle), 2016 | 0.6 | 0.3 | 0.4 | 23.2 |
Thuets (Veyle), 2016 | 0.7 | 0.8 | 0.0 | 21.0 | |
Peloux (Reyssouze), 2016 | 0.8 | 0.5 | 0.1 | 23.9 | |
B2 | Peroux (Veyle), 2015 | 1.1 | 1.1 | 21.3 | |
Revel (Solnan), 2016 | 2.1 | 1.7 | 0.1 | 21.9 | |
Dompierre (Veyle), 2010 | 2.4 | 2.2 | 0.4 | 18.2 |
We also observed that was reduced for 61.5 % of our time series (Table 3). This reduction in amplitude is primarily due to a truncated daily minimum downstream temperature that is 0.96 C higher on average than that of the upstream region.
During the summer season, the upstream–downstream changes in the thermal regime are not well correlated with air temperature for the same periods. For example, a simple linear regression between daily maximum air temperature and indicates that air temperature explains only 0.8 % of the variability in upstream–downstream thermal regime shifts.
3.3 Site typologyThe hierarchical cluster analysis applied to the daily summer temperature anomalies distinguished three groups.
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A first group (A) characterized by a
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median of less than 0.5 C,
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median of –1.3 C, and
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median of less than C.
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A second group (B1) characterized by a
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median of –1.2 C and
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median of –1.1 C.
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A third group (B2) characterized by a
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median of greater than 1.2 C and
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median of greater than 1.2 C.
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Figure 5
Box plot distribution (25 %–75 %) of upstream–downstream differences of daily (a) minimum and (b) maximum temperatures for all of the time series studied. (Red lines denote 0 C for and 1 C for and are drawn to help distinguish typologies.) The vertical dashed lines drawn in bold are the limits of the three typologies based on the hierarchical cluster analysis. Dendrogram hierarchical cluster analysis is shown as an inset.
[Figure omitted. See PDF]
Figure 6PCA analysis with sites plotted and temperature anomaly variables shown. Ellipses are drawn to visualize the groups obtained with the hierarchical cluster analysis.
[Figure omitted. See PDF]
3.4 Ordination resultsThe first axis of the PCA analysis (74.1 % of total inertia) is correlated to all daily temperature daily anomalies, in particular to the . The second axis (25.3 %) discriminates the with (Fig. 6). Results of the RDA show that the water residence time and the impoundment surface explain 95.2 % of the PCA structure. The projection of the sites on these axes shows a strong spreading along the first axis (Fig. 6). Additionally, the dams that had two different measurement years stay within the same range on this first axis (i.e., Fretaz and Champagne) (Fig. 6).
Multiple regression analyses between the temperature variables (median values of and ) and the physical characteristics obtained by the RDA (residence time and impoundment surface) resulted in high explanatory power (). These regressions identified the significant contribution of residence time for and , whereas only the surface area had a significant contribution for (Table 4).
Table 4
Results of multiple linear regressions performed on the two indicators, and , using the dam physical characteristics surface area and residence time. Significant values are shown in bold.
Dependent | Independent | Standardized | value | |
---|---|---|---|---|
variable | variable physical | coefficient | ||
characteristics | ||||
Surface area | 0.39 | 0.041 | 0.72 | |
Residence time | 0.80 | 0.001 | ||
Surface area | 0.48 | 0.68 | ||
Residence time | 0.80 | 0.001 |
To further illustrate the different thermal regime effects from our typology analysis, we compare intra-daily temperature variations for a 3 d time series in group A (small thermal effect) with group B (large thermal effect; Fig. 7):
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In the example of group A (Fig. 7a), the downstream thermal warming effect is limited to the nighttime () period (observed difference of 1 C warmer). Additionally, although the biological benchmark of 22 C is exceeded both upstream and downstream during the day on 20 August, the duration above the thermal threshold is short, preceded and followed by more favorable temperatures (i.e., the remission period).
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In contrast, in group B (Fig. 7b), the downstream temperature is systematically higher than that of the upstream region, with a temperature difference varying from to 2.4 C. The 22 C threshold is exceeded downstream for a cumulative 42 h over the 3 d period. The 15 and 16 August have downstream temperatures that rarely go below 22 C, leaving no time for thermal remission (return to a temperature that is better tolerated physiologically by fish). At the same time, the upstream part of the stream is maintained at daily temperatures not exceeding this threshold.
Figure 7
Time series of water temperatures upstream (blue line) and downstream (red line) of the (a) Caillou (Vieux Jonc stream) and (b) Revel (Solnan stream) dams for 3 d during August.
[Figure omitted. See PDF]
For all sites, by studying the average daily duration with a temperature continuously exceeding 22 C, we can see the following (Fig. 8):
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downstream durations are always greater than or equal to those of the upstream durations, regardless of site typology;
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the largest upstream–downstream differences occur in the B2 group;
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group A is generally not affected by an upstream–downstream increase, except for two sites which exhibit a 2 h increase.
Mean of the daily maximum duration with a stream temperature above 22 C, upstream and downstream of each site monitored in the study. A (circles), B1 (closed triangles), and B2 (open triangles) are the groups of sites resulting from the hierarchical cluster analysis.
[Figure omitted. See PDF]
3.6 Ecologically relevant seasonal temperature variationsWe observed very similar results to our intra-daily duration analysis in our analogous study on the proportion of summer days where the maximum water temperature exceeded the threshold of 22 C. For example, group B was much more likely to exhibit downstream increases in daily threshold exceedances (Fig. 9). Conversely, several of the group A sites had lower proportions of days where downstream daily exceedances were greater than upstream daily exceedances (i.e., Champagne 2015, Caillou 2009, Fretaz 2016).
Figure 9
Percentage of the number of summer days with a diurnal maximum water temperature above 22 C, upstream and downstream of each site monitored in the study. A (circles), B1 (filled triangles), and B2 (open triangles) are the groups of sites resulting from the hierarchical cluster analysis.
[Figure omitted. See PDF]
4 DiscussionThe number of small dams in streams is greater than the number of large dams ( m) by several orders of magnitude (Downing et al., 2006; Poff and Hart, 2002; Verpoorter et al., 2014). Despite this, small dam effects on thermal regimes are much less well known than those of large dams (Downing, 2010; Ecke et al., 2017; Smith et al., 2017). Thus, this presents a challenge with respect to identifying and generalizing the significant drivers of a realistic thermalscape (Isaak et al., 2017), which is essential for understanding the current ecological status of rivers and for predicting future changes under different climate change scenarios with sufficient realism. In addition, summertime, which has the highest temperatures, appears to potentially be the most critical period for aquatic organisms and, as such, requires special attention (Kemp et al., 2012; Zaidel, 2018).
The purpose of this study was to quantify the downstream impacts of different types of small dams on the summer water temperature in lowland streams. We investigated these effects in 11 dams across five lowland streams in the Bresse region for different climate years (12 summer time series in warmer and drier years than normal and one series in a colder and wetter year 2014; Table 2). We observed the clear influence of small dams on the downstream thermal regime at all sites: 23 % of the time series exhibited a C elevation of , and 77 % of the time series exhibited shifts to 1 C. Across all time series, the mean increase of was 1 C. For 85 % of time series, the increase in was greater than 0.5 C; this increase reached 2.4 C at certain structures (Dompierre, Fig. 6).
Our results corroborate the reviews and meta-analyses in the general trend for a small dam warming effect within a range of 0–3 C (Lessard and Hayes, 2003; Maxted et al., 2005; Mbaka and Mwaniki, 2015; Ecke et al., 2017, 27 studies; Means, 2018, 24 sites; Zaidel, 2018, 18 sites). Occasionally, downstream warming effects reach as high as 7 C (Margolis et al., 2001; Carlisle et al., 2014), or 3–6 C (Fraley, 1987; Lessard and Hayes, 2003, for a part of their sample; Dripps and Granger, 2013). One possible explanation is that such sites correspond to very large impoundments in comparison with low natural flows, with large areas exposed to solar radiation, which emphasizes the need for an analysis of the physical characteristics of their structures. There are also situations where the downstream temperature is lower than the upstream temperature, as we observed in one situation in our study (Moulin Neuf, Reyssouze, Fig. 6). We suggest that this phenomenon, as in the case of certain beaver dams (Majerova et al., 2015; Weber et al., 2017), occurs when the existence of a structure modifies the equilibrium conditions of the alluvial groundwater table, which under increased pressure can supply the downstream end of the structure with cooler water.
The morphology of the structures therefore appears to be of fundamental influence; impoundments with high-head dams and a small surface area would have cooler downstream temperatures, whereas impoundments with low-head dams and a large surface area would have warmer downstream temperatures (Fuller and Peckarsky, 2011, Rocky Mountains in Colorado; Means, 2018, upper Columbia River). We attempted to avoid possible temperature effects from alluvial groundwater by placing the downstream stations as close as possible to the dam ( m). Despite the operating precautions taken, it is possible that the Moulin Neuf site, Reyssouze, which had several secondary channels, was still influenced by groundwater inflows.
Dams in our study area also caused downstream dampening in diurnal thermal amplitudes. We observed that the daily amplitude of the downstream temperature is reduced in 61.5 % of studied cases compared with that of the upstream region; this is the same proportion as noted in the observations of Zaidel (2018) for 58 % of the 30 structures studied in Massachusetts. Kemp et al. (2012) also concluded that the main influence of beaver ponds was a reduction in river temperature fluctuations. Amplitude reduction is primarily due to increased daily minimum downstream temperatures (by C in our study). Studying 24 beaver ponds in Washington State, Means (2018) also observed that the minimum temperature downstream was 0.8 C higher compared with the minimum temperature upstream.
4.1 What physical variables are important?
The effect of small dams on stream thermal regimes has received little attention to date, and there is still no consensus regarding which dam physical variables best predict downstream temperature patterns. Most research is focused on isolated case studies (i.e., one stream, Kornis et al., 2015; Majerova et al., 2015; Smith et al., 2017; Weber et al., 2017), and in cases where thermal measurements are secondary variables, there is often incomplete information about the physical dam characteristics (Kemp et al., 2012). Nevertheless, as early as the pioneering studies (Cook, 1940), certain dam characteristic emerged as candidate variables (e.g., exposed surface subjected to radiation and water residence time) to explain downstream shifts in thermal regime. At the same time, other commonly used dam characteristics, like dam water level and dam height, appear to be insufficient to predict a thermal effect downstream (Poff and Hart, 2002). We have described precisely these different candidate metrics for the observed sites (Table 1). Our results show that the sites can be grouped based on different behaviors for , , and .
We observed two distinct behaviors in upstream–downstream thermal regime shifts in the 13 time series (Fig. 6). The first behavior, which we call group A, is characterized by an impoundment effect that reduced the downstream amplitude of the daily temperature and increased the minimum temperature (the median of was limited to 0.3 C at most). The second behavior, which we call group B (split into subgroups B1 and B2), is characterized by an increase of both daily minimum and maximum temperatures with a corresponding change in amplitude.
We found that residence time and surface area were the principal explanatory variables of upstream–downstream temperature differences. Indeed, redundancy analysis indicated the primary differences among our site typologies were explained by these variables. For example, Group A is characterized by a short residence time (less than 0.7 d) and a small impoundment surface area (less than 35 500 m), whereas group B is characterized either by a large surface area (greater than 35 000 m) with a short residence time (e.g., 0.2 d; group B1), or by long residence times (e.g., 8.4 d; group B2,). These physical differences are directly linked to the observed differences in thermal regime shifts. In group B2, we suggest that long residence times reduce cooling effects; the nocturnal input (i.e., the cooling effect) becomes negligible in the general heat exchange balance. However, for group B1 dams with short residence time, but large surface areas, increased energy supply by solar radiation on the larger surface may overwhelm any potential cooling effects. Multiple regression (Table 4) clarified the direction and magnitude of these effects and indicated that is best explained by both residence time and surface area (group B effects), whereas is best explained by only residence time (group A effects).
To summarize, we observed two primary thermal regime effects of small dams. The first group is characterized by a downstream impoundment effect that increases and reduces , but does not significantly change ( to 0.3 C). The second group shows downstream increases in both and , with the little change to ( to 0.4 C). For the second group, the change in thermal regime is much clearer, with overall median differences of approximately –2.4 C. This clear break in the thermal regime between the upstream and downstream ecosystems was most notable during very hot periods. A larger sample of this second group type (group B) would permit a more quantitative characterization of the dams (surface area, residence time, and morphometry of the impoundment), and a possible indication of threshold values above which thermal regime shifts may emerge. One potential path forward is to create regionalized statistical models based on geographical data and dam databases, analogous to the way that ecological risk analyses are constructed (Allan et al., 2012; Van Looy et al., 2015). However, we realize that our dataset is provincial in temporal and regional extent, potentially limiting extrapolation of results to other areas with different groundwater and climatic influences.
In summary, although mean air temperature and dam height were poor predictors of daily summer temperature anomalies, residence time and surface area could clearly explain the differences in the thermal regime induced by small RRDs. These variables are candidate to generalize results to other regions. However, this generalization necessitates more precise information than most dam descriptions in the vast majority of available public databases.
4.2 Analysis of the thermal regime from an ecological perspective
The influence of dams on downstream processes varies throughout time. For example, analyses of hydrological regimes' shifts should simultaneously consider intensity, duration, frequency, seasonality, and rhythm of change (Poff et al., 1997). Ecological stresses from thermal regime shifts should account for the duration and amplitude of exposure to high temperatures and the recovery from stress during periods of lower temperature (Bevelhimer and Bennet, 2000). In this work, we examined both seasonal and intra-daily thermal effects of dams using an ecological perspective.
Shifts in downstream ecological pattern and process are dependent on the magnitude of thermal change from upstream to downstream. For fish, the literature suggests that downstream increases of approximately 2 C (Hay et al., 2006) or 3 C (Verneaux, 1977) can result in significant community shifts for many biotypologies. From this perspective, the majority of our sites belonging to groups A and B1 present a low risk with regard to the potential change in fish communities as they exhibited a moderate absolute downstream temperature increase of 0–1 C. However, the higher downstream increases of our B2 group (1.2–2.4 C; Fig. 6) are likely to influence the composition of fish communities. This is especially true for certain species close to the threshold of their thermal comfort, which are often the same species already under conservation efforts. Such temperature increases can also amplify the general metabolism in the stream, possibly leading to the unwanted proliferation of algae, a less stable oxygen cycle, and stronger effects of toxic compounds (Heugens et al., 2001 in Souchon and Tissot, 2012).
On the scale of several days, it is important not to underestimate the influence of cumulative exposure to temperatures close to the maximum tolerable temperatures (Tissot and Souchon, 2010), for which the incidence of temperature variations has an impact on biological communities (Lessard and Hayes, 2003; in nine streams in Michigan, USA). In this study, we used a temperature of 22 C as an illustrative threshold known to be a thermal stress benchmark value for salmonids, especially for brown trout, Salmo trutta (Elliott and Elliot, 2010: upper critical incipient lethal temperature for juveniles, which is considered a very sensitive stage; Ojanguren et al., 2001: general activity of brown trout juvenile). In addition, this threshold is known to be important for the life cycle of aquatic invertebrates (Ward, 1976; Brittain and Saltveit, 1989). By looking at the fraction of time that daily maximum temperatures exceeded this threshold, we found that the majority of sites in our study area, regardless of dam structure, are unfavorable in summer for species sensitive to this threshold. Importantly, however, we found that for sites that are more favorable (e.g., Dompierre or Thuets, left side of figure), the presence of small dams induces a clear shift towards an elevated percentage of the number of days above the temperature threshold, from less than 20 % upstream to more than 40 % downstream.
On the daily scale, it is necessary to not only consider the maximum tolerable temperature, but also its duration of influence, as the temperature of nocturnal remission and its duration must be sufficient for organisms to repair their heat stress proteins. For example, Schrank et al. (2003) and Johnstone and Rahel (2003) suggested that daily minima provide a respite from elevated daily maximum temperatures if there is sufficient time to repair protein damage (McCullough et al., 2009). We explored this issue by calculating the average hourly duration of temperatures above the 22 C threshold at each site. We found that small dams more than doubled this daily threshold exceedance duration on average (, mean SE), and at one site (Dompierre) increased this duration by an order of magnitude (Fig. 8). To further illustrate this effect and the differences among site typology, we presented two examples of a daily temperature regime during 3 d in August at the Caillou (type A) and Revel (type B2) sites (Fig. 7). At Caillou, upstream from the dam (Fig. 7a), the diel natural variation offers remission temperature for brown trout, with several hours at a temperature 20 C each day. The situation is less favorable downstream with no sufficient time below this temperature. At Revel (Fig. 7b), the observed thermal daily pattern is similar, but the structure associated with group B2 exacerbated the warming of water, leading to fewer remission periods.
Without appropriate biological data, it is difficult to know how minimum and maximum water temperatures affect acclimation, performance, and stress (McCullough et al., 2009). Exploring this question may be especially relevant because small dams clearly alter stream thermal regimes. Moreover, future global warming could exacerbate these effects as it is expected to increase daily minimum temperatures more than daily maximum temperatures, with a corresponding decrease in the diurnal temperature range and an increase in mean daily temperature (Easterling et al., 1997; Vose et al., 2005).
4.3 Diversity of situations
We measured variable warming effects according to a diversity of situations present within a relatively modest geographical area (2025 km), subjected to the same climate. We suggest that based on the downstream warming effects we observed, and because of the high density of dams in the landscape (0.64 per km), the thermal landscape of this region is potentially fragmented. In other words, we expect that small dams in this region create a discontinuous distribution of stream thermal regimes throughout the river network. However, we acknowledge that to have a realistic thermal landscape, where ecological dynamics can be predicted in the long term, it is necessary to account for additional features than we have done here. For example, it is important to consider the effects of unshaded versus shaded river reaches, which influence radiation warming effects, and the spatial distributions of groundwater inflows, which provide cooling effects. We note that regardless of application, using air temperature to predict water temperature at the daily scale should be used with caution (see Sect. 3.2).
Our work highlights physical dam characteristics that could be useful in a large-scale heat risk analysis, or in modeling scenarios aiming to account for changes in thermal regimes. For example, a simple model using only a small dam residence time and surface area may be able to diagnose thermal regime change at the regional scale with sufficient accuracy. Moreover, the results presented here could also provide essential guidance to environmental protection authorities in their prioritization of rivers to be protected or restored, especially for those rivers that require greater thermal resilience.
Given the complexity and high variability of the river systems encountered in this study (Strahler orders spanning 3–5), it seems essential to us (and see Isaak et al., 2017, 2018; Steel et al., 2017; Dzara et al., 2019) to continue to conduct and expand well targeted stream temperature monitoring. This type of monitoring is requisite before being able to model stream temperature with sufficient spatial and temporal resolution. Modeling these systems accurately is a major challenge, because these aquatic spaces will undergo major thermal and hydrological alteration with climate change, where tipping points in biotic distributions are likely to occur.
5 Conclusions
We quantified the impact of small dams on the temperature of streams, and identified major drivers of these impacts, adding to a current paucity of information on this topic in the scientific literature. Our unique interannual, cross-site analysis of summer stream temperatures showed that contemporary dam impacts are already ecologically significant to downstream reaches, and these effects may be exacerbated by expected warming in the study area (see IPCC scenarios of global change for Val de Saone). We identified the primary drivers of the temperature regime responses as residence time and the impoundment surface area. The influence of these drivers in other landscapes needs to be confirmed by other datasets that are not yet well developed or accessible.
Code and data availability
Code, spreadsheets, and data used in this work are available upon request from the authors.
Author contributions
AC, KVL, and YS designed the field study and AC conducted it. JSD conducted the stream temperature duration threshold analysis and provided critical review/editing of the paper and figures. All authors contributed to the paper preparation.
Competing interests
The authors declare that they have no conflict of interest.
Acknowledgements
We thank the three anonymous referees who made it possible to improve the text. We also thank the local river management body, the Syndicat Mixte Veyle Vivante and its employees Laurent Charbonnier and Stéphane Kihl, for installing the measurement network, for their help with field monitoring, and for their valuable practical advice. Furthermore, we are grateful for the punctual gauging data (edition of 15 April 2002) provided by the regional branch of the Ministry of the Environment (Dreal Rhône-Alpes; formerly DIREN SEMA). The Rhone Mediterranean Corsica Water Agency provided financial support which allowed the times series to be recorded and the data to be analyzed. Jacob Diamond is supported by POI FEDER Loire n2017-EX001784, the Water Agency of Loire Catchment AELB, and the University of Tours.
Review statement
This paper was edited by Anas Ghadouani and reviewed by three anonymous referees.
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Abstract
The purpose of this study was to quantify the downstream impacts of different types of small dams on summer water temperature in lowland streams. We examined (1) temperature regimes upstream and downstream of dams with different structural characteristics, (2) relationships between stream temperature anomalies and climatic variables, watershed area, dam height, impoundment length and surface area, and residence time, (3) the most significant variables explaining the different thermal behaviors, and (4) the dam thermal effect considering a biological threshold of 22
Water temperature loggers were installed upstream and downstream of 11 dams in the Bresse region (France) and monitored at 30 min intervals during summer (June to September) over the 2009–2016 period, resulting in 13 paired water temperature time series (two sites were monitored for two summers, allowing the opportunity to compare cold and hot summers).
At 23 % of the dams, we observed increased downstream maximum daily temperatures of more than 1
We hierarchically clustered the sites based on three temperature anomaly variables: upstream–downstream differences in (1) maximum daily temperature (
Overall, we show that small dams can meaningfully alter the thermal regimes of flowing waters, and that these that these effects can be explained with sufficient accuracy (
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1 River Hydro-Ecology Lab, National Research Institute of Science and Technology for Environment and Agriculture, UR Riverly, Lyon, France
2 OVAM, Stationsstraat 110, 2800 Mechelen, Belgium
3 River Hydro-Ecology Lab, National Research Institute of Science and Technology for Environment and Agriculture, UR Riverly, Lyon, France; Université de Tours, E.A 6293 GéoHydrosytèmes COntinentaux, Parc de Grandmont, 37200 Tours, France