An evolutionary programming method for solving the unit commitment problem

C. Rajan, M. R. Mohan
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引用次数: 6

Abstract

Summary form only given. This paper presents a new approach to solving the short-term unit commitment problem using an evolutionary programming based tabu search method. The objective of this paper is to find the generation scheduling such that the total operating cost can be minimized, when subjected to a variety of constraints. This also means that it is desirable to find the optimal generating unit commitment in the power system for the next H hours. Evolutionary programming, which happens to be a global optimization technique for solving unit commitment problem, operates on a system, which is designed to encode each unit's operating schedule with regard to its minimum up/down time. In this, the unit commitment schedule is coded as a string of symbols. An initial population of parent solutions is generated at random. Here, each schedule is formed by committing all the units according to their initial status ("flat start"). Here the parents are obtained from a pre-defined set of solution's i.e. each and every solution is adjusted to meet the requirements. Then, a random decommitment is carried out with respect to the unit's minimum down times. And TS improves the status by avoiding entrapment in local minima. The best population is selected by evolutionary strategy. The Neyveli Thermal Power Station (NTPS) Unit - Il in India demonstrates the effectiveness of the proposed approach; extensive studies have also been performed for different power systems consists of 10, 26, 34 generating units. Numerical results are shown comparing the cost solutions and computation time obtained by using the evolutionary programming method and other conventional methods like dynamic programming, Lagrangian relaxation and simulated annealing and tabu search in reaching proper unit commitment.
一种求解机组承诺问题的进化规划方法
只提供摘要形式。本文提出了一种基于进化规划的禁忌搜索方法来求解短期机组承诺问题。本文的目标是寻找在各种约束条件下总运行成本最小的发电计划。这也意味着需要在电力系统中找到未来H小时的最佳发电机组承诺。进化规划是解决机组承诺问题的一种全局优化技术,它在一个系统上运行,该系统被设计为对每个机组的运行计划进行编码,并考虑其最小启动/停机时间。在这种情况下,机组投入调度被编码为一串符号。随机生成父解的初始种群。在这里,每个计划都是通过根据它们的初始状态(“平启动”)提交所有单元来形成的。在这里,父级是从一组预定义的解决方案中获得的,即每个解决方案都经过调整以满足要求。然后,根据机组的最小停机时间进行随机退役。TS通过避免陷入局部极小值而改善了状态。最佳种群是通过进化策略选择出来的。印度Neyveli热电站(NTPS)机组- 1证明了所提出方法的有效性;还对由10、26、34个发电机组组成的不同电力系统进行了广泛的研究。数值结果比较了进化规划方法与动态规划、拉格朗日松弛、模拟退火和禁忌搜索等传统方法在达到合适的机组承诺时的代价解和计算时间。
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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