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Research on PSO-ARMA-SVR Short-Term Electricity Consumption Forecast Based on the Particle Swarm Algorithm

机译:基于粒子群算法的PSO-ARMA-SVR短期电力消耗预测研究

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Aimed at the problem of order determination of short-term power consumption in a time series model, a new method was proposed to determine the order and the moving average of the ARMA model by particle swarm optimization (PSO).According to the difference between the predicted value and the real value of the ARMA model, the fitness function of the particle swarm optimization algorithm is constructed, while the optimal solution which satisfies the ARMA model is confirmed by adjusting the inertia weight, population size, particle velocity, and iteration number. Finally, SVR regression is performed by using a support vector machine to correct the residual sequence obtained after the prediction of ARMA. The final prediction result is obtained by adding the predicted values and corrected residual. Based on the data of historical electricity load of a residential district in 2016~2017, the proposed method is compared with the traditional models. The result of the use of MATLAB simulation shows that the method is simple and feasible, greatly improves the model prediction accuracy, and implements the new method for short-term load forecasting of a small sample.
机译:在顺序确定的时间序列模型短期功率消耗的问题为目标,一个新的方法,提出了以确定的顺序和由粒子群优化(PSO)的移动平均ARMA模型的。据之间的差预测值和ARMA模型的实际值,构造了粒子群优化算法的适应性功能,而通过调节惯性重量,种群尺寸,粒子速度和迭代号来确认满足ARMA模型的最佳解决方案。最后,通过使用支持向量机来执行SVR回归来校正在ARMA预测之后获得的残余序列。最后预测结果是通过将预测的值获得校正和残留。根据2016〜2017年住宅区的历史电量负荷数据,将该方法与传统模型进行比较。使用MATLAB仿真的结果表明,该方法简单且可行,大大提高了模型预测精度,实现了用于小型样本的短期负荷预测的新方法。

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