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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Combined Economic and Emission Dispatch Problem of Wind-Thermal Power System Using Gravitational Particle Swarm Optimization Algorithm
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Combined Economic and Emission Dispatch Problem of Wind-Thermal Power System Using Gravitational Particle Swarm Optimization Algorithm

机译:用引力粒子群优化算法综合风电力系统的经济和排放派出问题

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In this paper, a novel hybrid optimization approach, namely, gravitational particle swarm optimization algorithm (GPSOA), is introduced based on particle swarm optimization (PSO) and gravitational search algorithm (GSA) to solve combined economic and emission dispatch (CEED) problem considering wind power availability for the wind-thermal power system. The proposed algorithm shows an interesting hybrid strategy and perfectly integrates the collective behaviors of PSO with the Newtonian gravitation laws of GSA. GPSOA updates particle’s velocity caused by the dependent random cooperation of GSA gravitational acceleration and PSO velocity. To describe the stochastic characteristics of wind speed and output power, Weibull-based probability density function (PDF) is utilized. The CEED model employed consists of the fuel cost objective and emission-level target produced by conventional thermal generators and the operational cost generated by wind turbines. The effectiveness of the suggested GPSOA is tested on the conventional thermal generator system and the modified wind-thermal power system. Results of GPSOA-based CEED problems by means of the optimal fuel cost, emission value, and best compromise solution are compared with the original PSO, GSA, and other state-of-the-art optimization approaches to reveal that the introduced GPSOA exhibits competitive performance improvements in finding lower fuel cost and emission cost and best compromise solution.
机译:本文基于粒子群优化(PSO)和引力搜索算法(GSA)来介绍一种新的混合优化方法,即重力粒子群优化算法(GPSOA),以解决经济和排放派遣(CEED)问题风电力系统的风力发电。所提出的算法显示了一个有趣的混合策略,并完美地将PSO的集体行为与GSA的牛顿重力定律集成。 GPSOA更新由GSA引力加速度和PSO速度的依赖随机合作引起的粒子速度。为了描述风速和输出功率的随机特性,使用了基于Weibull的概率密度函数(PDF)。采用的CEED模型包括常规热发电机产生的燃料成本目标和发射水平目标,以及风力涡轮机产生的操作成本。建议的GPSOA的有效性在传统的热发电机系统和改进的风力发电系统上测试。通过最佳燃料成本,排放值和最佳妥协解决方法与原始PSO,GSA和其他最新的优化方法进行了最佳的燃料成本的结果,揭示介绍的GPSOA表现出竞争力寻找较低的燃料成本和发射成本以及最佳妥协解决方案的性能改进。

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