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Solution to profit based unit commitment problem using particle swarm optimization

机译:使用粒子群算法解决基于利润的单位承诺问题

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In this paper, an algorithm to solve the profit based unit commitment problem (PBUCP) under deregulated environment has been proposed using Particle Swarm Optimization (PSO) intelligent technique to maximize the GENCOs profit. Deregulation in power sector increases the efficiency of electricity production and distribution, offer lower prices, higher quality, a secure and a more reliable product. The proposed algorithm has been developed from the view point of a generation company wishing to maximize its profit in the deregulated power and reserve markets. UC schedule depends on the market price in the deregulated market. In deregulated environment utilities are not required to meet the demand. GENCO can consider a schedule that produce less than the predicted load demand and reserve but creates maximum profit. More number of units are committed when the market price is higher. When more number of generating units are brought online more power is generated and participated in the deregulated market to get maximum profit. This paper presents a new approach of GENCOs profit based unit commitment using PSO technique in a day ahead competitive electricity markets. The profit based unit commitment problem is solved using various PSO techniques such as Chaotic PSO (CPSO), New PSO (NPSO) and Dispersed PSO (DPSO) and the results are compared. Generation, spinning reserve, non-spinning reserve, and system constraints are considered in proposed formulation. The proposed approach has been tested on IEEE-30 bus system with 6 generating units as an individual GENCO. The results obtained are quite encouraging and useful in deregulated market. The algorithm and simulation are carried out using Matlab software.
机译:本文提出了一种利用粒子群算法(PSO)智能技术来解决管制环境下基于收益的单位承诺问题(PBUCP)的算法,以最大化GENCO的收益。电力部门的放松管制提高了电力生产和分配的效率,提供了更低的价格,更高的质量,更安全,更可靠的产品。提出的算法是从一家发电公司的角度开发的,该公司希望在放松管制的电力和备用市场中获得最大利润。 UC时间表取决于放松管制的市场中的市场价格。在放松管制的环境中,不需要公用事业来满足需求。 GENCO可以考虑一个进度表,该进度表的产量少于预期的负荷需求和储备量,但却创造了最大的利润。当市场价格较高时,将承诺更多的单位数量。当更多的发电机组上线时,就会产生更多的电力并参与放松管制的市场,以获取最大的利润。本文介绍了在竞争激烈的电力市场中使用PSO技术的GENCO基于利润的单位承诺的新方法。使用各种PSO技术(例如混沌PSO(CPSO),新PSO(NPSO)和分散PSO(DPSO))解决了基于利润的单位承诺问题,并对结果进行了比较。提议的公式考虑了发电量,旋转储备,非旋转储备和系统约束。所提议的方法已经在具有6个发电单元作为单独GENCO的IEEE-30总线系统上进行了测试。获得的结果非常令人鼓舞,并且在放松管制的市场中很有用。使用Matlab软件进行算法和仿真。

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