Economic Dispatch with Environmental Considerations using Particle Swarm Optimization

M. AlRashidi, M. El-Hawary
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引用次数: 27

Abstract

This paper presents a particle swarm optimization (PSO) algorithm to solve an economic-emission dispatch problem (EED). This problem has been getting more attention recently due to the deregulation of the power industry and strict environmental regulations. It is formulated as a highly nonlinear constrained multiobjective optimization problem with conflicting objective functions. PSO algorithm is used to solve the formulated problem on two standard test systems, namely the 30-bus and 14-bus systems. Results obtained show that PSO algorithm outperformed most previously proposed algorithms used to solve the same EED problem. These algorithms included evolutionary algorithm, stochastic search technique, linear programming, and adaptive Hopfield neural network. PSO was able to find the Pareto optimal solution set for the multiobjective problem. In addition, PSO results were compared to LINGO software outcomes. Comparison results signify the effectiveness and robustness of PSO as a promising optimization tool for this specific problem
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考虑环境的粒子群优化经济调度
提出了一种求解经济排放调度问题的粒子群优化算法。最近,由于电力行业的放松管制和严格的环境法规,这个问题越来越受到关注。将其表述为一个目标函数相互冲突的高度非线性约束多目标优化问题。在30总线和14总线两种标准测试系统上,采用粒子群算法求解上述问题。结果表明,粒子群算法在求解相同的EED问题时优于大多数现有算法。这些算法包括进化算法、随机搜索技术、线性规划和自适应Hopfield神经网络。粒子群算法能够找到多目标问题的Pareto最优解集。此外,将PSO结果与LINGO软件结果进行比较。对比结果表明,粒子群算法是一种很有前途的优化工具
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