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Investigation of Weather Impact on Electric Load Power Forecasting based on Cascade Forward Neural Network Technique

机译:基于级联神经网络技术的天气对电力负荷预测的影响研究

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Electric Load Power Load Forecasting (ELPF) is an important activity in any power distribution utilities. Most of the literatures debates that an Artificial Neural Network (ANN) based load forecasting technique always yields a higher accuracy as related to traditional statistical learning and regression techniques especially in short term load forecasting. Hence one such ANN i.e. cascade forward neural network (CFNN)-based technique is attempted here in this paper. This paper mainly deals with study the impact of weather in ELPF models developed using CFNN in a day-ahead time horizon.
机译:电力负荷电力负荷预测(ELPF)是任何配电实用程序中的重要活动。大多数文献争论说,基于人工神经网络(ANN)的负荷预测技术始终会产生更高的准确性,这与传统的统计学习和回归技术相关,尤其是在短期负荷预测中。因此,本文尝试了一种基于ANN的技术,即基于级联前向神经网络(CFNN)的技术。本文主要研究在日前时间范围内使用CFNN开发的ELPF模型中天气的影响。

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