Short‐term load and spinning reserve prediction based on LSTM and ANFIS with PSO algorithm

M. Ferdosian, H. Abdi, Shahram Karimi, Saeed Kharrati
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Abstract

With the increase in population and the growth of technology, the load demand has increased and major changes in spinning reserve are unavoidable. Short‐term forecasting to hourly predict the required load and spinning reserve is of great importance. All of the power system studies in planning and operation fields are depend on short‐term hourly load forecasting. In this work, the problem of load forecasting and spinning reserve based on deep learning (DL) algorithms and traditional methods is investigated with the help of the proposed information combination system. The proposed method tries to reduce the weaknesses of the stated methods and increase the accuracy of the predicted signal. First, short‐term predicting of load and spinning reserve is performed using a combination of adaptive network‐based fuzzy inference system (ANFIS) and meta‐heuristic algorithms including differential evolution (DE), genetic algorithm (GA), and particle swarm optimization (PSO). The ANFIS‐PSO is selected as the best ANFIS combination in load and spinning reserve prediction with a lower error criterion than other methods. Also, the long short‐term memory (LSTM) network can provide good accuracy for load and spinning reserve forecasting. Therefore, the combination of ANFIS‐PSO and LSTM is used to reduce the average error and error variance.
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基于 LSTM 和 ANFIS 与 PSO 算法的短期负荷和旋转储备预测
随着人口的增加和技术的发展,负荷需求增加,旋转储备的重大变化不可避免。以每小时为单位预测所需负荷和旋转储备的短期预测非常重要。规划和运行领域的所有电力系统研究都依赖于每小时的短期负荷预测。在这项工作中,基于深度学习(DL)算法和传统方法的负荷预测和旋转储备问题在所提出的信息组合系统的帮助下进行了研究。所提出的方法试图减少所述方法的弱点,提高预测信号的准确性。首先,使用基于自适应网络的模糊推理系统(ANFIS)和元启发式算法(包括微分进化算法(DE)、遗传算法(GA)和粒子群优化算法(PSO))的组合,对负荷和旋转储备进行短期预测。ANFIS-PSO 被选为负荷和旋转储备预测的最佳 ANFIS 组合,其误差标准低于其他方法。此外,长短期记忆(LSTM)网络也能为负荷和旋转储备预测提供良好的精度。因此,ANFIS-PSO 和 LSTM 的组合可减少平均误差和误差方差。
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