| Literature DB >> 28786983 |
Hilary A Dugan1,2, Jamie C Summers3, Nicholas K Skaff4, Flora E Krivak-Tetley5, Jonathan P Doubek6, Samantha M Burke7, Sarah L Bartlett8, Lauri Arvola9, Hamdi Jarjanazi10, János Korponai11,12, Andreas Kleeberg13, Ghislaine Monet14, Don Monteith15, Karen Moore16, Michela Rogora17, Paul C Hanson1, Kathleen C Weathers2.
Abstract
Anthropogenic sources of chloride in a lake catchment, including road salt, fertilizer, and wastewater, can elevate the chloride concentration in freshwater lakes above background levels. Rising chloride concentrations can impact lake ecology and ecosystem services such as fisheries and the use of lakes as drinking water sources. To analyze the spatial extent and magnitude of increasing chloride concentrations in freshwater lakes, we amassed a database of 529 lakes in Europe and North America that had greater than or equal to ten years of chloride data. For each lake, we calculated climate statistics of mean annual total precipitation and mean monthly air temperatures from gridded global datasets. We also quantified land cover metrics, including road density and impervious surface, in buffer zones of 100 to 1,500 m surrounding the perimeter of each lake. This database represents the largest global collection of lake chloride data. We hope that long-term water quality measurements in areas outside Europe and North America can be added to the database as they become available in the future.Entities:
Year: 2017 PMID: 28786983 PMCID: PMC5548073 DOI: 10.1038/sdata.2017.101
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444
Figure 1Workflow for all datasets included in the global lake chloride database.
Figure 2Map of North America and Europe showing the locations of lakes included in the global lake chloride database.
Column names, column description, and percentage of sites with data for each feature for lake file.
| SALT_ID | Internal lake ID number | 100% |
| FileName | File name | 100% |
| Common.Name | Name of lake or reservoir that is commonly used. | 100% |
| Latitude (decimal degrees) | Latitudinal coordinate of lake | 100% |
| Longitude (decimal degrees) | Longitudinal coordinate of lake | 100% |
| Continent | Geographic location of lake | 100% |
| Country | Geographic location of lake | 100% |
| State | Abbreviation of state or province (only for North American lakes) | 69.1% |
| Area.km2 | Surface area of lake | 100% |
| Depth.m | Maximum depth of lake | 66.4% |
| LakeType | Type of lake: natural or reservoir | 100% |
| YearMin | Start year of dataset | 100% |
| YearMax | End year of dataset | 100% |
| YearsTotal | Total years of dataset coverage | 100% |
| MeanCl.mgL | Mean chloride concentration | 100% |
| OutliersRemoved | Number of outliers removed from original data | 100% |
| ShapefileMethod | Method used to obtain shapefile. Either: circle, GLWD, manual, NHD, or NHN. | 100% |
| CoastDist.km | Distance to the nearest coastline | 100% |
| WetDryDep | Sea salt deposition in kg ha−1 yr−1 (sum of wet and dry deposition) | 100% |
| Precip.mm | Mean annual total precipitation from 1960 to 1990 | 100% |
| TempMMM | Long-term mean monthly temperatures from 1960 to 1990. MMM represents the month of the year. | 100% |
| RoadDensityXXX | Road density, where XXX represents 100, 200, 300, 400, 500, 1,000, and 1,500-m buffer zones surrounding the lake. Measured in km km−2. | 100% |
| LandImperviousBinXXX | Impervious surface, where XXX represents 100, 200, 300, 400, 500, 1,000, and 1,500-m buffer zones surrounding the lake. Calculated from datasets with binary pixels via Method 1 (see above). Measured in percent. | 69.2% |
| LandImperviousPerXXX | Impervious surface, where XXX represents 100, 200, 300, 400, 500, 1,000, and 1,500-m buffer zones surrounding the lake. Calculated from datasets with percentage pixels via Method 2 (see above). Measured in percent. | 92.9% |
Column name and description for lake chloride data file.
| SALT_ID | Internal lake ID number |
| FileName | File name |
| Common.Name | Name of lake or reservoir that is commonly used |
| Station | Sampling station ID. The ID is program specific and is included to cross-reference sites with original sources. For some lakes, data are present from multiple stations. |
| Sample.Date | Date of sample collection. All data were collected on discrete days, with the exception of early data from Lake Mendota and Monona (see Methods). |
| Sample.Depth | Depth of sample collection |
| Chloride | Chloride concentration in mg l−1 |
| Decimal.Date | Sample date provided as decimal value |
| Std.Chloride | Chloride concentration provided as a standardized z-score value, which was calculated for each lake |
| Integrated.Depth | Is TRUE if sample was integrated over a portion of the water column. Is FALSE otherwise. If a sample depth is given, this was the starting depth of sampling. |
Figure 3Time series of chloride concentrations in Lake Constance and Vänern. Data points are colored by lake depth.
Figure 4Comparison of the two methods of quantifying impervious surface in 100–1,500-m buffer zones around all US lakes in the database.
In Method 1, each pixel is a Boolean value (TRUE, impervious; FALSE, not impervious). In Method 2, each pixel is quantified as percent impervious surface from 0–100%.
Figure 5Comparison of impervious surface and road density calculations for Trout Lake and Lake Wingra, Wisconsin, USA.
Values are given for a 500-m buffer. Impervious surface calculations via Method 1 have higher absolute values than Method 2, but relative differences are similar (see Fig. 4).