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Adaptive Neuro-Fuzzy Inference System (ANFIS) Model for Forecasting and Predicting Industrial Electricity Consumption in Nigeria

机译:自适应神经模糊推理系统(ANFIS)模型,用于预测和预测尼日利亚的工业用电量

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The main aim of this paper is to model the industrial power consumption in Nigeria with the Adaptive Neuro-Fuzzy Inference System (ANFIS) model and then forecast the industrial power consumed for the next five years beyond the available data. About 45 years (1970 to 2015) dataset was obtained from the Central Bank of Nigeria (CBN), the National Bureau of Statistics (NBS) and other relevant organizations. The data includes population, rainfall, electricity connectivity and temperature which are the explanatory variables. Matlab was used along with the dataset to train and evaluate the ANFIS model which was then used to forecast the industrial power consumption in Nigeria for the years 2016 to 2020.The prediction performance of the ANFIS model was compared to those of Autoregressive Moving Average model and Moving Average model. From the result obtained, ANFIS gave R-square value of 0.9977 (99.77%), SSE value of 395.3674 and RMSE value of 2.9641. The regression coefficient of 99.77% shows that about 99.77% of the variations in the industrial power consumption in Nigeria for the years 1970 to 2015 are explained by the selected explanatory variables. The forecast result showed that the Nigerian industrial power consumption would be about 374.7 MW at the end of 2020 which is about 73.1% increase from the industrial power consumption in 2015. As such, based on the industrial power consumption in 2015, over 73% increment in power supply to the industrial sector will be required to satisfy the industrial sector's power demand in 2020.
机译:本文的主要目的是使用自适应神经模糊推理系统(ANFIS)模型对尼日利亚的工业用电量进行建模,然后在可用数据之外预测未来五年的工业用电量。从尼日利亚中央银行(CBN),国家统计局(NBS)和其他相关组织获得了大约45年(1970年至2015年)的数据集。数据包括人口,降雨量,电力连通性和温度,这是解释性变量。使用Matlab和数据集来训练和评估ANFIS模型,然后将其用于预测尼日利亚2016年至2020年的工业用电量,并将ANFIS模型的预测性能与自回归移动平均模型和移动平均模型。根据获得的结果,ANFIS的R平方值为0.9977(99.77%),SSE值为395.3674,RMSE值为2.9641。回归系数为99.77%,表明所选择的解释变量解释了1970年至2015年尼日利亚工业能耗的大约99.77%。预测结果表明,尼日利亚工业用电量到2020年底约为374.7兆瓦,比2015年的工业用电量增加约73.1%。因此,基于2015年的工业用电量,增量超过73%为满足2020年工业部门的电力需求,需要向工业部门供电。

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