Hydro Generation Scheduling Using Refined Genetic Algorithm

Po-Hung Chen, C. Kuo, Hsin-Fu Lee, Cheng-Chuan Chen
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引用次数: 2

Abstract

This paper presents a novel solution algorithm based on a refined genetic algorithm for solving the hydro generation scheduling problem. In this work, complete solution algorithms and encoding/decoding techniques are proposed for solving different types of hydro plants involving hydraulically independent plants, hydraulically coupled plants, and pump-storage plants. In the proposed approach, the hydraulically coupled plants which are located on the same river are solved concurrently as a multi-plant scheduling problem rather than as several single-plant scheduling problems in sequence. The difficult water balance constraints caused by hydraulic coupling are embedded and satisfied throughout the proposed encoding and decoding algorithm. The proposed approach is applied with great success to the actual Taipower system, which consists of two hydraulically independent plants, three hydraulically coupled plants, four pump-storage plants, and 34 thermal units.
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基于改进遗传算法的水力发电调度
提出了一种基于改进遗传算法的水力发电调度问题求解算法。本文提出了求解水力独立电站、水力耦合电站和抽水蓄能电站等不同类型水电站的完整求解算法和编解码技术。该方法将位于同一河流上的水工耦合电站作为一个多电站调度问题同时解决,而不是作为多个单电站顺序调度问题来解决。在整个编解码算法中嵌入并满足水力耦合引起的水平衡困难约束。所提出的方法在实际的台电系统中取得了巨大的成功,该系统由两个水力独立电厂、三个水力耦合电厂、四个抽水蓄能电厂和34个热力机组组成。
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