考虑预报不确定性的水库防洪多目标鲁棒优化调度研究
编号:4018 访问权限:仅限参会人 更新:2024-04-14 16:22:16 浏览:800次 口头报告

报告开始:2024年05月19日 11:03(Asia/Shanghai)

报告时间:10min

所在会场:[S14] 主题14、水文地球科学 [S14-4] 主题14、水文地球科学 专题14.11、专题14.17(19日上午,B2鹭江厅VIP3)

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摘要
Informing reservoirs with forecasts is highly important for real‐time flood control. This study proposed a forecast‐informed methodology framework for reservoir flood control operation under uncertainty. A new c ombination of two post‐processing methods, that is, the Cloud model and error‐based copula functions, were developed to merge individual AI‐based forecasts to ensemble flood forecasts, so called stochastic errors‐based Cloud (SE‐Cloud). A multi‐objective robust optimization model (MRO) integrating the risk, resilience, and vulnerability was then proposed to tackle flood control problems under ensemble forecasts; for comparison, a two‐objective stochastic optimization model (TSO) was developed to minimize the expected highest reservoir level and peak release. The proposed methodology was applied to the Lishimen reservoir in the Shifeng River subbasin, China, aiming to comprehensively verify the relationships among deterministic forecasts, ensemble forecasts, and flood control performance. Results showed that the Cloud model could effectively integrate different models and improve forecast accuracy. But a higher deterministic forecast quality did not consistently result in improved flood control performance. SE‐Cloud could capture the peak flow and effectively characterize forecast uncertainties and increased hypervolume values by 13.14%–39.65% compared to the Cloud model, indicating the superiority of ensemble forecasts in generating robust solutions over individual deterministic forecasts. MRO released more inflow than TSO, decreasing the expected highest water level by 0.05 m and incrementing the expected peak release by 4.29%. However, with downstream resilience value remaining at zero, it is demonstrated that MRO improving upstream vulnerability did not necessarily diminish resilience. The enhanced robustness highlights the potential of AI‐based ensemble forecasts in flood control.
关键词
机器学习,洪水预报,防洪调度,鲁棒优化
报告人
郭玉雪
特聘研究员 浙江大学

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重要日期
  • 会议日期

    05月17日

    2024

    05月20日

    2024

  • 03月31日 2024

    初稿截稿日期

  • 03月31日 2024

    报告提交截止日期

  • 05月20日 2024

    注册截止日期

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青年地学论坛理事会
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厦门大学近海海洋环境科学国家重点实验室
中国科学院城市环境研究所
自然资源部第三海洋研究所
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