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A Surrogate Based Optimization Approach for the Development of Uncertainty-Aware Reservoir Operational Rules: the Case of Nestos Hydrosystem

机译:基于替代的不确定性水库调度规则开发的优化方法-以内斯托斯水文系统为例

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摘要

Operation of large-scale hydropower reservoirs is a complex problem that involves conflicting objectives, such as hydropower generation and water supply. Deriving optimal operational rules is a challenging task due to the non-linearity of the system dynamics and the uncertainty of future inflows and water demands. A common approach to derive optimal control policies is to couple simulation models with optimization algorithms. This paper in order to investigate the performance of a future reservoir and safely infer about its significance employs stochastic simulation, thus long synthetically generated time-series and a multi-objective version of the Parameterization-Simulation-Optimization (PSO) framework to develop uncertainty-aware operational rules. Furthermore, in order to handle the high computational effort that ensues from that coupling we investigate the potential of a surrogate-based multi-objective optimization algorithm, ParEGO. The PSO framework is deployed with WEAP21 water resources management model as simulation engine and MATLAB for the implementation of optimization algorithms. A comparison between NSGAII and ParEGO optimization algorithms is performed to assess the effectiveness of the proposed algorithm. The aforementioned comparison showed that ParEGO provides efficient approximations of the Pareto front while reducing the computational effort required. Finally, the potential benefit and the significance of the future reservoir is underlined.
机译:大型水力水库的运行是一个复杂的问题,涉及相互矛盾的目标,例如水力发电和供水。由于系统动力学的非线性以及未来流入量和用水量的不确定性,得出最佳运行规则是一项艰巨的任务。推导最佳控制策略的常用方法是将仿真模型与优化算法结合在一起。为了研究未来储层的性能并安全地推断其意义,本文采用了随机模拟方法,因此采用了长时间综合生成的时间序列和参数化-模拟-优化(PSO)框架的多目标版本来开发不确定性,知道操作规则。此外,为了处理这种耦合导致的大量计算工作,我们研究了基于代理的多目标优化算法ParEGO的潜力。 PSO框架与WEAP21水资源管理模型一起作为仿真引擎和MATLAB进行部署,以实现优化算法。进行了NSGAII和ParEGO优化算法之间的比较,以评估所提出算法的有效性。前述比较表明,ParEGO提供了帕累托前沿的有效近似,同时减少了所需的计算量。最后,强调了未来水库的潜在利益和意义。

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