Unit commitment using the ant colony search algorithm

N. Sisworahardjo, A. El-Keib
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引用次数: 90

Abstract

The paper presents an ant colony search algorithm (ACSA)-based approach to solve the unit commitment (UC) problem. This ACSA algorithm is a relatively new meta-heuristic for solving hard combinatorial optimization problems. It is a population-based approach that uses exploitation of positive feedback, distributed computation as well as a constructive greedy heuristic. Positive feedback is for fast discovery of good solutions, distributed computation avoids early convergence, and the greedy heuristic helps find adequate solutions in the early stages of the search process. The ACSA was inspired from natural behavior of the ant colonies on how they find the food source and bring them back to their nest by building the unique trail formation. The UC problem solved using the proposed approach is subject to real power balance, real power operating limits of generating units, spinning reserve, start up cost, and minimum up and down time constraints. The proposed approach determines the search space of multi-stage scheduling followed by considering the unit transition related constraints during the process of state transition. The paper describes the proposed approach and presents test results on a 10-unit test system that demonstrates its effectiveness in solving the UC problem.
单位承诺使用蚁群搜索算法
提出了一种基于蚁群搜索算法(ACSA)的机组承诺问题求解方法。ACSA算法是一种较新的求解组合优化问题的元启发式算法。这是一种基于人口的方法,利用了正反馈、分布式计算以及建设性的贪婪启发式。正反馈是为了快速发现好的解决方案,分布式计算避免了早期收敛,贪婪启发式有助于在搜索过程的早期阶段找到适当的解决方案。ACSA的灵感来自蚁群的自然行为,它们如何通过建立独特的步道来寻找食物来源并将它们带回巢穴。采用该方法解决的UC问题受实际功率平衡、发电机组实际功率运行限制、旋转储备、启动成本和最小上下时间约束。该方法确定了多阶段调度的搜索空间,并考虑了状态转移过程中与单元转移相关的约束。本文介绍了该方法,并给出了一个10单元测试系统的测试结果,证明了该方法在解决UC问题方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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