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首页> 外文期刊>IEEE Transactions on Power Systems >A Particle Swarm Optimization to Identifying the ARMAX Model for Short-Term Load Forecasting
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A Particle Swarm Optimization to Identifying the ARMAX Model for Short-Term Load Forecasting

机译:粒子群算法用于短期负荷预测的ARMAX模型辨识

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摘要

In this paper, a new particle swarm optimization (PSO) approach to identifying the autoregressive moving average with exogenous variable (ARMAX) model for one-day to one-week ahead hourly load forecasts was proposed. Owing to the inherent nonlinear characteristics of power system loads, the surface of the forecasting error function possesses many local minimum points. Solutions of the gradient search-based stochastic time series (STS) technique may, therefore, stall at the local minimum points, which lead to an inadequate model. By simulating a simplified social system, the PSO algorithm offers the capability of converging toward the global minimum point of a complex error surface. The proposed PSO has been tested on the different types of Taiwan Power (Taipower) load data and compared with the evolutionary programming (EP) algorithm and the traditional STS method. Testing results indicate that the proposed PSO has high-quality solution, superior convergence characteristics, and shorter computation time.
机译:在本文中,提出了一种新的粒子群优化(PSO)方法,用于提前一天到一周的小时负荷预测来识别带有外生变量(ARMAX)模型的自回归移动平均值。由于电力系统负载的固有非线性特性,预测误差函数的表面具有许多局部最小点。因此,基于梯度搜索的随机时间序列(STS)技术的解决方案可能会停在局部最小点上,从而导致模型不足。通过模拟简化的社交系统,PSO算法提供了向复杂错误表面的全局最小点收敛的功能。拟议的PSO已针对不同类型的台湾电力(Taipower)负载数据进行了测试,并与进化规划(EP)算法和传统的STS方法进行了比较。测试结果表明,所提出的粒子群优化算法具有高质量的解决方案,优异的收敛性和较短的计算时间。

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