AI techniques for optimizing multi-objective reservoir operation upon human and riverine ecosystem demands
Journal
Journal of Hydrology
Journal Volume
530
Pages
634-644
Date Issued
2015
Author(s)
Abstract
Flow regime is the key driver of the riverine ecology. This study proposes a novel hybrid methodology based on artificial intelligence (AI) techniques for quantifying riverine ecosystems requirements and delivering suitable flow regimes that sustain river and floodplain ecology through optimizing reservoir operation. This approach addresses issues to better fit riverine ecosystem requirements with existing human demands. We first explored and characterized the relationship between flow regimes and fish communities through a hybrid artificial neural network (ANN). Then the non-dominated sorting genetic algorithm II (NSGA-II) was established for river flow management over the Shihmen Reservoir in northern Taiwan. The ecosystem requirement took the form of maximizing fish diversity, which could be estimated by the hybrid ANN. The human requirement was to provide a higher satisfaction degree of water supply. The results demonstrated that the proposed methodology could offer a number of diversified alternative strategies for reservoir operation and improve reservoir operational strategies producing downstream flows that could meet both human and ecosystem needs. Applications that make this methodology attractive to water resources managers benefit from the wide spread of Pareto-front (optimal) solutions allowing decision makers to easily determine the best compromise through the trade-off between reservoir operational strategies for human and ecosystem needs. © 2015 Elsevier B.V.
Subjects
Artificial intelligence (AI); Artificial neural network (ANN); Ecosystems; Genetic algorithm (GA); Water resources management
SDGs
Other Subjects
Artificial intelligence; Decision making; Ecology; Economic and social effects; Fish; Genetic algorithms; Hydrogeology; Neural networks; Reservoir management; Reservoirs (water); Rivers; Stream flow; Water resources; Water supply; Hybrid artificial neural network; Hybrid methodologies; Non dominated sorting genetic algorithm ii (NSGA II); Operational strategies; River-flow management; Riverine ecosystems; Satisfaction degrees; Water resources management; Ecosystems; anthropogenic effect; artificial intelligence; artificial neural network; genetic algorithm; optimization; species diversity; water management; water resource; water supply; Shihmen Reservoir; Taiwan
Type
journal article