减少水库下游热污染的模拟优化框架

IF 2.4 4区 环境科学与生态学 Q2 WATER RESOURCES
M. Sedighkia, B. Datta, S. Razavi
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引用次数: 0

摘要

热污染是大坝改变下游河流生态系统自然温度状况对环境的影响。本研究提出了一个模拟-优化框架,以减少水库下游的热污染,并在真实世界的案例研究中进行了测试。该框架试图同时将环境影响以及对水库供水目标的损失降至最低。将混合机器学习模型应用于模拟各种运行场景下水库下游的水温。该模型被证明是稳健的,并且实现了可接受的预测精度。模拟-优化的结果表明,水库的运行方式可以合理地保持自然温度,以保护下游栖息地。然而,这样做将导致水库蓄水和供水目标的重大权衡。这种权衡可能会破坏水库的效益,需要在水库设计和运营中仔细考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A simulation–optimization framework for reducing thermal pollution downstream of reservoirs
Thermal pollution is an environmental impact of large dams altering the natural temperature regime of downstream river ecosystems. The present study proposes a simulation–optimization framework to reduce thermal pollution downstream from reservoirs and tests it on a real-world case study. This framework attempts to simultaneously minimize the environmental impacts as well as losses to reservoir objectives for water supply. A hybrid machine-learning model is applied to simulate water temperature downstream of the reservoir under various operation scenarios. This model is shown to be robust and achieves acceptable predictive accuracy. The results of simulation–optimization indicate that the reservoir could be operated in such a way that the natural temperature regime is reasonably preserved to protect downstream habitats. Doing so, however, would result in significant trade-offs for reservoir storage and water supply objectives. Such trade-offs can undermine the benefits of reservoirs and need to be carefully considered in reservoir design and operation.
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CiteScore
4.50
自引率
8.70%
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