Content area

Abstract

Local-scale reservoirs are important to regional water balance, but these are often overlooked. This study presents a robust machine learning (ML) approach leveraging reanalysis datasets to estimate daily evaporation for local-scale reservoirs in semi-arid South Texas. Selected models were trained with daily lake evaporation model (DLEM) estimates and used climatic and reservoir-specific properties as feature input variables. The multi-reservoirs training approach ensured applicable model generalization. Results show promising predictive performance with R² values ranging from 0.55–0.67 (testing) and 0.64–0.78 (validation), NSE values ranged from 0.54 0.67 (testing) and 0.64–0.78 (validation), and RMSE values ranged between 1.52–1.80 mm/day (testing) and 1.22–1.58 mm/day (validation). The findings highlight potential water savings of up to 2.1×105 ac-ft per year, which is equivalent to ~8% of the capacity of one major regional reservoir, if floating solar photovoltaic (PV) is deployed to cover 30% of its surface.

Details

1010268
Title
Machine Learning Applications for Evaporation Predictions From Small Reservoirs: Potential Water Savings for Lower Rio Grande Valley, Texas
Number of pages
82
Publication year
2025
Degree date
2025
School code
1863
Source
MAI 87/5(E), Masters Abstracts International
ISBN
9798265410818
Committee member
Benavides, Jude; Almeida, Rafael; Ho, Jungseok
University/institution
The University of Texas Rio Grande Valley
Department
Civil Engineering
University location
United States -- Texas
Degree
M.S.E.
Source type
Dissertation or Thesis
Language
English
Document type
Dissertation/Thesis
Dissertation/thesis number
32117329
ProQuest document ID
3275325910
Document URL
https://www.proquest.com/dissertations-theses/machine-learning-applications-evaporation/docview/3275325910/se-2?accountid=208611
Copyright
Database copyright ProQuest LLC; ProQuest does not claim copyright in the individual underlying works.
Database
ProQuest One Academic