水电发电调度的多目标随机方法

A. Sauhats, R. Petrichenko, K. Baltputnis, Z. Broka, R. Varfolomejeva
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引用次数: 11

摘要

本文提出了一种求解水力发电短期调度多目标优化的随机方法。以利润最大化为主要目标,并增加了减少机组启停次数的子目标。考虑了未来电价和河水流入的随机性。我们使用基于人工神经网络的算法来预测市场价格和水流入。引入不确定性模型来表示参数的随机性,解决以利润为基础的单位承诺的短期优化问题。以实际水电站为例,通过为发电公司提供市场条件下的日前竞价策略和发电机组的帕累托最优小时调度计划,验证了所提算法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-objective stochastic approach to hydroelectric power generation scheduling
In this paper, we propose a novel stochastic approach to multi-objective optimization of hydroelectric power generation short-term scheduling. Maximization of profit is chosen as the main objective with additional sub-objective-to reduce the number of startups and shutdowns of generating units. The random nature of future electricity prices and river water inflow is taken into account. We use an artificial neural network-based algorithm to forecast market prices and water inflow. Uncertainty modeling is introduced to represent the stochastic nature of parameters and to solve the short-term optimization problem of profit-based unit commitment. A case study is conducted on a real-world hydropower plant to demonstrate the feasibility of the proposed algorithm by providing the power generation company with the day-ahead bidding strategy under market conditions and a Pareto optimal hourly dispatch schedule of the generating units.
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