DEMAND FORECASTING OF INDUSTRIAL ELECTRICAL ENERGY CONSUMPTION FOR TAMILNADU STATE

T. Senthilkumar, R. Venkatesh, J SamCharles, P. Senthil, Praveen kumar
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Abstract

Energy consumption forecasting is vitally important for the deregulated electricity industry in India, particularly in Tamilnadu state. A large variety of mathematical methods have been developed for energy forecasting. In this study, historical data set including population (POP), Gross state domestic Product (GSDP), Yearly peak demand (YPD), and Per Capita income (PCI) were considered from the year 2005 to 2011.Firstly, the multiple linear regression model (MLRM)has been developed. The regression model outputs were optimized using Neural network method.
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泰米尔纳德邦工业用电需求预测
能源消耗预测对印度放松管制的电力行业至关重要,尤其是在泰米尔纳德邦。各种各样的数学方法已经被开发出来用于能源预测。本研究采用2005年至2011年的历史数据集,包括人口(POP)、国家国内生产总值(GSDP)、年峰值需求(YPD)和人均收入(PCI)。首先,建立了多元线性回归模型(MLRM)。采用神经网络方法对回归模型输出进行优化。
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来源期刊
Academic Journal of Manufacturing Engineering
Academic Journal of Manufacturing Engineering Engineering-Industrial and Manufacturing Engineering
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