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Maximizing Total Profit of Thermal Generation Units in Competitive Electric Market by Using a Proposed Particle Swarm Optimization

机译:利用提出的粒子群优化最大化竞争电力市场中热电发电单位的总利润

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摘要

In the paper, a proposed particle swarm optimization (PPSO) is implemented for dealing with an economic load dispatch (ELD) problem considering the competitive electric market. The main task of the problem is to determine optimal power generation and optimal reserve generation of available thermal generation units so that total profit of all the units is maximized. In addition, constraints, such as generation limit and reserve limit of each unit, power demand and reserve demand, must be exactly satisfied. PPSO is an improved version of conventional particle swarm optimization (PSO) by combining pseudo gradient method, constriction factor and a newly proposed position update method. On the other hand, in order to support PPSO to reach good results for the considered problem, a new constraint handling method (NCHM) is also proposed for determining maximum reserve generation and correcting reserve generation. Three test systems with 3, 10 and 20 units are employed to evaluate the real performance of PPSO. In addition to the comparisons with previous methods, salp swarm optimization (SSA), modified differential evolution (MDE) and eight other PSO methods are also implemented for comparisons. Through the result comparisons, two main contributions of the study are as follows: (1) NCHM is very effective for PSO methods to reach a high success rate and higher solution quality, (2) PPSO is more effective than other methods. Consequently, NCHM and PPSO are the useful combination for the considered problem.
机译:在本文中,实施了考虑竞争电力市场的经济负担调度(ELD)问题的拟议粒子群优化(PPSO)。问题的主要任务是确定最佳发电和最佳储备产生的可用热生机组,以便最大化所有单位的总利润。此外,必须完全满足每个单元,功率需求和储备需求的产生限制和储备限制的约束。 PPSO是现有的粒子群优化(PSO)通过组合的伪梯度法,收缩因子和新提出的位置更新方法的改进版本。另一方面,为了支持PPSO来达到所考虑的问题的良好结果,还提出了一种新的约束处理方法(NCHM),用于确定最大储备生成和校正储备生成。采用3个,10和20个单元的三个测试系统来评估PPSO的实际性能。除了与先前方法的比较外,还为比较实施了SALP群优化(SSA),修改的差分演进(MDE)和八种其他PSO方法。通过结果比较,研究的两个主要贡献如下:(1)NCHM对于PSO方法非常有效,以达到高成功率和更高的解决方案质量,(2)PPSO比其他方法更有效。因此,NCHM和PPSO是所考虑的问题的有用组合。

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