水电厂水库运行政策中泄漏最小化的惩罚因子法——以日本为例

D. K. Jha, N. Yorino, Y. Zoka, Y. Sasaki, Y. Hayashi, K. Iwata, R. Oe
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引用次数: 2

摘要

为了减少水电站水库运行过程中的溢出量,本文考虑了一种包含能量最大化型目标函数的惩罚因子。以日本某水电站为研究对象,建立了独立入流过程假设的随机动态规划模型。与确定性模型相比,SDP模型能更好地考虑与入流有关的固有不确定性。根据运行策略,确定了典型水年(干旱年、平均年和丰水年)的库容引导曲线。得到了不同惩罚函数常数值下的运行策略,并确定了平均年的模拟存储引导曲线。能源产生与泄漏减少曲线可以绘制为各种情况;盈亏平衡点可以根据与能源和泄漏相关的成本函数来确定。
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Penalty Factor Approach of Minimizing Spill in Finding Operating Policy for Reservoir of a Hydropower Plant: A Case of Japan
This paper considers a penalty factor incorporated energy maximization type objective function, in order to reduce the amount of spill during the operation of the reservoir of a hydropower plant. Stochastic dynamic programming (SDP) model with independent inflow process assumption is developed for a hydropower plant located in Japan. SDP models can incorporate the inherent uncertainty associated with the stream inflows better than the deterministic models. Reservoir storage guide curves for typical water years (dry, average and wet years) are identified based on the operating policy. Operating policies with various values of constant of penalty function are obtained and, simulated storage guide curve for an average year is identified. Energy generation versus spill reduction curve may be plotted for various cases as such; a break-even point can be identified based on the cost functions associated with the energy and spill.
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