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An evolutionary programming based tabu search method for unit commitment problem with cooling-banking constraints

机译:用于冷却银行限制的单位承诺问题的基于进化编程的Tabu搜索方法

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This paper presents a new approach to solve the short-term unit commitment problem using an evolutionary programming based tabu search method with cooling and banking constraints. 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 solutions, 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. 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.
机译:本文介绍了一种新方法,可以使用具有冷却和银行限制的进化编程的Tabu搜索方法来解决短期单位承诺问题。本文的目的是找到生成调度,使得当受到各种约束时,可以最小化总运营成本。这也意味着期望在下一个H小时内找到电力系统中的最佳产生单元承诺。进化编程恰好是解决单位承诺问题的全局优化技术,在一个系统上运行,旨在编码每个单元的操作计划的最小上/下时间。在此,单位承诺计划被编码为一串符号。随机生成母体解决方案的初始群体。这里,通过根据其初始状态(“平面开始”)来提交所有单位来形成每个计划。这里,父母是从预定义的一组解决方案中获得的,即调整每个解决方案以满足要求。然后,对单位的最小停机时间进行随机退换。通过避免在当地最小值中捕获来提高状态。最好的人口被进化战略选择。示出了通过使用进化编程方法和其他传统方法,如动态编程,拉格朗日放松所获得的成本解决方案和计算时间的比较了数值结果。

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