1. Estimating Lake Water Volume With Regression and Machine Learning Methods
- Author
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Chelsea Delaney, Xiang Li, Kerry Holmberg, Bruce Wilson, Adam Heathcote, and John Nieber
- Subjects
bathymetry ,lake volume ,scale analysis ,machine learning ,Minnesota ,Environmental technology. Sanitary engineering ,TD1-1066 - Abstract
The volume of a lake is a crucial component in understanding environmental and hydrologic processes. The State of Minnesota (USA) has tens of thousands of lakes, but only a small fraction has readily available bathymetric information. In this paper we develop and test methods for predicting water volume in the lake-rich region of Central Minnesota. We used three different published regression models for predicting lake volume using available data. The first model utilized lake surface area as the sole independent variable. The second model utilized lake surface area but also included an additional independent variable, the average change in land surface area in a designated buffer area surrounding a lake. The third model also utilized lake surface area but assumed the land surface to be a self-affine surface, thus allowing the surface area-lake volume relationship to be governed by a scale defined by the Hurst coefficient. These models all utilized bathymetric data available for 816 lakes across the region of study. The models explained over 80% of the variation in lake volumes. The sum difference between the total predicted lake volume and known volumes were
- Published
- 2022
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