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首页> 外文期刊>Electric power systems research >Optimization Of Economic Load Dispatch Of Higher Order General Cost Polynomials And Its Sensitivity Using Modified Particle Swarm Optimization
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Optimization Of Economic Load Dispatch Of Higher Order General Cost Polynomials And Its Sensitivity Using Modified Particle Swarm Optimization

机译:改进的粒子群算法优化高阶通用成本多项式的经济负荷分配及其灵敏度

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摘要

This paper presents a modified particle swarm optimization (MPSO) for constrained economic load dispatch (ELD) problem. Real cost functions are more complex than conventional second order cost functions when multi-fuel operations, valve-point effects, accurate curve fitting, etc., are considering in deregulated changing market. The proposed modified particle swarm optimization (PSO) consists of problem dependent variable number of promising values (in velocity vector), unit vector and error-iteration dependent step length. It reliably and accurately tracks a continuously changing solution of the complex cost function and no extra concentration/effort is needed for the complex higher order cost polynomials in ELD. Constraint management is incorporated in the modified PSO. The modified PSO has balance between local and global searching abilities, and an appropriate fitness function helps to converge it quickly. To avoid the method to be frozen, stagnated/idle particles are reset. Sensitivity of the higher order cost polynomials is also analyzed visually to realize the importance of the higher order cost polynomials for the optimization of ELD. Finally, benchmark data sets and methods are used to show the effectiveness of the proposed method.
机译:本文提出了一种改进的粒子群算法(MPSO),用于约束经济负荷分配(ELD)问题。当在解除管制的不断变化的市场中考虑多燃料操作,阀点效应,精确曲线拟合等时,实际成本函数比常规的二阶成本函数复杂。提出的改进的粒子群优化算法(PSO)由问题相关变量(速度矢量)中的有希望值(单位速度),单位矢量和错误迭代相关步长组成。它可靠,准确地跟踪复杂成本函数的不断变化的解决方案,而ELD中复杂的高阶成本多项式不需要额外的集中精力。约束管理包含在修改后的PSO中。修改后的PSO在本地和全局搜索能力之间取得平衡,适当的适应性功能有助于快速收敛。为避免冻结方法,应将停滞/空转的颗粒复位。还可视地分析了高阶成本多项式的敏感性,以认识到高阶成本多项式对于优化ELD的重要性。最后,使用基准数据集和方法来证明所提出方法的有效性。

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