Short-Term Wind Power Prediction Using Hybrid Auto Regressive Integrated Moving Average Model and Dynamic Particle Swarm Optimization

Pub Date : 2021-04-01 DOI:10.4018/ijcini.20210401.oa9
P. Singh, Nitin Singh, R. Negi
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引用次数: 10

Abstract

With the upsurge in restructuring of the power markets, wind power has become one of the key factors in power generation in the smart grids and gained momentum in the recent years. The accurate wind power forecasting is highly desirable for reduction of the reserve capability, enhancement in penetration of the wind power, stability and economic operation of the power system. The time series models are extensively used for the wind power forecasting. The model estimation in the ARIMA model is usually accomplished by maximizing the log likelihood function and it requires to be re-estimated for any change in input value. This degrades the performance of the ARIMA model. In the proposed work, the model estimation of the ARIMA model is done using latest evolutionary algorithm (i.e., dynamic particle swarm optimization [DPSO]). The use of DPSO algorithm eliminates the need for re-estimation of the model coefficients for any change in input value and moreover, it improves the performance of ARIMA model. The performance of proposed DPSO-ARIMA model has been compared to the existing models.
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基于混合自回归综合移动平均模型和动态粒子群优化的短期风电预测
随着电力市场结构调整的高涨,风电已成为智能电网发电的关键因素之一,近年来发展势头迅猛。准确的风电预测对降低风电的备用能力、提高风电的渗透率、保证电力系统的稳定和经济运行具有重要意义。时间序列模型广泛应用于风力发电预测。ARIMA模型中的模型估计通常是通过最大化对数似然函数来完成的,并且需要对输入值的任何变化进行重新估计。这降低了ARIMA模型的性能。本文采用最新的进化算法(即动态粒子群优化算法[DPSO])对ARIMA模型进行模型估计。DPSO算法的使用消除了输入值变化时对模型系数的重新估计,提高了ARIMA模型的性能。将所提出的DPSO-ARIMA模型的性能与现有模型进行了比较。
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