配电网负荷智能预测系统研究

S. Gbadamosi, O. Adedayo
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引用次数: 0

摘要

提出了一种用于配电网中期负荷预测的自适应神经模糊推理系统(ANFIS)技术。该技术是由模糊逻辑系统和人工神经网络(ANN)组成的综合系统。系统的输入包括星期几、温度、时间、配电网上当前和以前每小时的负荷。数据收集周期为两年。使用模糊逻辑系统对输入数据进行表述和映射,并采用人工神经网络进行推理。实验结果表明,该方法的平均负荷预测精度为87.23%,回归系数为0.873。通过对负荷预测系统的分析,可以有效地规划、管理和组织负荷预测,预测准确。
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An Intelligent System for Load Forecasting on a Distribution Network
This paper presents an Adaptive Neuro-Fuzzy Inference system (ANFIS) technique for medium-term load forecasting in a distribution network. This technique is an integrated system consisting of fuzzy logic systems and Artificial Neural network (ANN). The inputs to the system include days of the week, temperature, time, current and previous hourly load on the distribution network. The data collection is within the period of two years. The formulation and mapping of the input data is done using fuzzy logic system and ANN are employed for generation of inference. The experimental results show the average load pre-diction accuracy of 87.23% and regression coefficient of 0.873. The analysis of the proposed ANFIS for load forecast is effective in planning, managing and organizing the electric load forecast with accurate prediction.
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