| Literature DB >> 28262715 |
Gesa A Weyhenmeyer1, Murray Mackay2, Jason D Stockwell3, Wim Thiery4,5,6, Hans-Peter Grossart7,8, Pétala B Augusto-Silva9, Helen M Baulch10, Elvira de Eyto11, Josef Hejzlar12, Külli Kangur13, Georgiy Kirillin14, Don C Pierson1, James A Rusak15,16, Steven Sadro17, R Iestyn Woolway18.
Abstract
Citizen science projects have a long history in ecological studies. The research usefulness of such projects is dependent on applying simple and standardized methods. Here, we conducted a citizen science project that involved more than 3500 Swedish high school students to examine the temperature difference between surface water and the overlying air (Tw-Ta) as a proxy for sensible heat flux (QH). If QH is directed upward, corresponding to positive Tw-Ta, it can enhance CO2 and CH4 emissions from inland waters, thereby contributing to increased greenhouse gas concentrations in the atmosphere. The students found mostly negative Tw-Ta across small ponds, lakes, streams/rivers and the sea shore (i.e. downward QH), with Tw-Ta becoming increasingly negative with increasing Ta. Further examination of Tw-Ta using high-frequency temperature data from inland waters across the globe confirmed that Tw-Ta is linearly related to Ta. Using the longest available high-frequency temperature time series from Lake Erken, Sweden, we found a rapid increase in the occasions of negative Tw-Ta with increasing annual mean Ta since 1989. From these results, we can expect that ongoing and projected global warming will result in increasingly negative Tw-Ta, thereby reducing CO2 and CH4 transfer velocities from inland waters into the atmosphere.Entities:
Year: 2017 PMID: 28262715 PMCID: PMC5338347 DOI: 10.1038/srep43890
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Information on high-frequency temperature data automatically measured in lakes (at a water depth of ~0.5 m) and the overlying air (~1.5 m above the water) in 14 diverse lakes. The lakes are sorted from North to South.
| Lake Country | Location of measuring site (Latitude and Longitude) | Lake surface area | Mean lake depth | Frequency of recorded measurements | Years of measurements considered in this study |
|---|---|---|---|---|---|
| Erken Sweden | 59°50’20”N, 18°37’46”E | 24.2 km2 | 9 m | Every 60 minutes | 1989–2015 |
| Peipsi Estonia/Russia | 58°14’15”N, 27°28’28”E | 3555 km2 | 7.1 m | Air temperature every 60 minutes, water temperature at 8 AM and 8 PM (local time) | 2008–2015 |
| Feeagh Ireland | 53°55’12”N, 9°34’12”W | 4.0 km2 | 14.5 m | Once daily | 2013 |
| Stechlin Germany | 53°09’06”N, 13°10’34”E | 4.3 km2 | 22.3 m | Every 60 minutes | 2012– 2014 |
| Bala UK | 52°53’27”N, 3°37’12”W | 4.1 km2 | 24 m | Every 60 minutes | 2011 |
| Buffalo Pound Canada | 50°35'09”N, 105°23'02”W | 24.4 km2 | 3.8 m | Every10 minutes | 2015 |
| Lake 239 Canada | 49°39'48”N, 93°43'24”W | 0.54 km2 | 11.0 m | Every 10 minutes | 2012 |
| Rimov Reservoir Czechia | 48°50'56”N, 14°29'28”E | 1.8 km2 | 15 m | Every 10 minutes ; | 2015 |
| Douglas US | 45°33'54”N, 84°40'20”W | 13.7 km2 | 8 m | Every 10 minutes | 2011–2015 |
| Harp Canada | 45°22'48”N, 79°08'09”W | 0.7 km2 | 13.3 m | Every 10 minutes | 2013 |
| Shelburne Pond US | 44°23'38”N, 73°09'46”W | 1.8 km2 | 3.4 m | Every 15 minutes | 2015 |
| Emerald US | 36°35’49” N, 118°40’29”W | 0.03 km2 | 6.0 m | Every 60 minutes | 2011 |
| Kivu Democratic Republic of the Congo/Rwanda | 1°43’30”S, 29°14’15”E | 2700 km2 | 240 m | Every 30 minutes | 2013 |
| Curuai floodplain lake (Amazon) Brazil | 2°04’12”S 55°03’58”W | 2250 km2 at high water | 6 m at high water | 30 seconds for water temperature, every 5 minutes for air temperature | 2014 (14 days of data) |
*At Kivu Water temperature was monitored ~2 km southwest of the air temperature measurement site. Because the basin is spatially very homogeneous9, we considered this approach to provide reliable results.
Figure 1Relationship between air temperature (Ta) and the temperature difference between surface water and the overlying air (Tw-Ta).
All temperatures (1355 paired air and water temperatures) were reported from high school students and measured in 11 small ponds, 49 lakes, 22 streams/rivers and at 2 Baltic Sea shore sampling sites across Sweden (panel b) between August 15 and September 30, 2016. The relationship is linear and significant (panel a; R = 0.54, p < 0.0001). The orange color indicates an upward sensible heat flux and the blue color when there is a downward sensible heat flux. The Swedish map was created in ARC GIS, version 10.3.1., using a shape file with open data obtained from the Swedish Meteorological and Hydrological Institute (http://www.smhi.se) under the agreement of the licensing terms specified in Creative Commons Attribution 4.0. (https://creativecommons.org/licenses/by/4.0/) The dots in the map and the text were finally modified in Adobe Illustrator version CS6.
Figure 2Spatial and temporal variations in the temperature gradient between surface water and the overlying air (Tw-Ta).
Panel a: box plots of Tw-Ta variations across small ponds, lakes, streams/rivers and the shoreline of the Baltic Sea (school project, n = 1355), within 24 hours on September 1, 2014 in the Swedish Lake Erken (n = 24), and within a year during the open water season May to October, based on high-frequency temperature measurements from 14 lakes across the globe (Table 1). Box size corresponds to the interquartile range and whiskers to a distance of 1.5 times the interquartile range from the 25th and 75th quantile, respectively. When more than one year of data was available we chose the time period 2010–2015 and plotted the year with the highest Tw-Ta variance. Panel b: Tw-Ta variations within 24 hours in the most northern and dimictic lake (Erken), a tropical lake (Kivu), a shallow polymictic lake (Buffalo) and a deep small reservoir (Rimov). The Tw-Ta values are median values during May to October from all available years (Table 1). Data points from each lake are connected by a spline function with lambda equal to 0.05. In both panels the orange color indicates when there is an upward sensible heat flux and the blue color when there is a downward sensible heat flux.
Figure 3Increasing difference between surface water and air temperature (Tw-Ta) with increasing air temperature (Ta) in Lake Erken.
Shown are year-to-year variations during 1989 to 2015 of in situ Ta and Tw-Ta from Lake Erken at day 21 of each month at midnight (left panel) and noon (right panel). All relationships are linear and highly significant (p < 0.0001). The orange color indicates when there is an upward sensible heat flux and the blue color when there is a downward sensible heat flux.
Figure 4Increasing occasions of negative Tw-Ta with increasing annual mean air temperatures.
The percentage of negative Tw-Ta is based on up to 8760 Tw-Ta measurements (8784 Tw-Ta measurements during leap years) that are available for 23 years from Lake Erken during 1989 to 2015. Shown is also a linear regression including the regression equation and regression statistics.