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A Novel Binary Social Learning Particle Swarm Optimizer for Power System Unit Commitment

机译:电力系统单元承诺的新型二元社会学习粒子群优化器

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The unit commitment(UC) problem is a critical problem in economic dispatch of power system, and it is the key to planning for short-term power generation. Its economic benefit is generally greater than the benefit of economic distribution of load. However, unit commitment is a high-dimensional, nonconvex, discrete, nonlinear mixed integer optimization problem, and is difficult to find the optimal theoretical solution. Therefore, people have been actively studying to solve this problem. Social learning particle swarm optimizer is a recent proposed metaheuristic algorithm specialized in solving the high-dimensional problem. In this paper, a novel binary social learning particle swarm optimizer (BSLPSO) is proposed for solving the UC problem associated with lambda iteration method. In order to verify the effectiveness of the algorithm for UC problem, a comprehensive numerical study of 10 to 100 units has been conducted, and compared with other related algorithms. The result shows that this algorithm performs well in UC problem and is better than other algorithms.
机译:单位承诺(UC)问题是电力系统经济调度的关键问题,它是规划短期发电的关键。其经济效益通常大于负荷经济分配的益处。但是,单位承诺是一种高维,非凸,离散的非线性混合整数优化问题,并且很难找到最佳的理论解决方案。因此,人们一直在积极学习来解决这个问题。社会学习粒子群优化器是最近提出的成群质算法,专门解决了高维问题。本文提出了一种新颖的二进制社交学习粒子群优化器(BSLPSO),用于解决与Lambda迭代方法相关的UC问题。为了验证UC问题算法的有效性,已经进行了10至100个单元的综合数值研究,并与其他相关算法进行比较。结果表明,该算法在UC问题中执行良好,比其他算法更好。

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