利用ARIMA、线性回归和随机森林算法对印度太阳能和风能发电进行预测分析

IF 1.5 Q4 ENERGY & FUELS Wind Engineering Pub Date : 2022-11-03 DOI:10.1177/0309524X221126742
Brajlata Chauhan, Rashida Tabassum, S. Tomar, A. Pal
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引用次数: 0

摘要

这项工作的重点是使用机器学习ML算法预测可再生能源(太阳能和风能)的发电。发电预测对于设计更好的微电网储能系统非常重要。各种ML算法如逻辑回归LR和随机森林RA和ARIMA,时间序列算法。使用平均绝对误差、均方误差、均方根平方误差和平均绝对百分比误差来评估每种算法的性能。与太阳能和风能的RF(15.65和61.73)和LR(15.78和54.65)相比,ARIMA模型对太阳能和风能的MAE值(0.06和0.20)非常小。与MSE和RMSE一样,太阳能模型ARIMA的MSE和RMSE值分别为0.01和0.08,风能模型ARIMA的MSE和RMSE值分别为0.07和0.27。通过对这两种算法的矩阵进行比较分析,得出ARIMA模型最适合于太阳能和风能的预测。
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Analysis for the prediction of solar and wind generation in India using ARIMA, linear regression and random forest algorithms
This work focused on the prediction of generation of renewable energy (solar and wind) using the machine learning ML algorithms. Prediction of generation are very important to design the better microgrids storage. The various ML algorithms are as logistic regression LR and random forest RA and the ARIMA, time series algorithms. The performance of each algorithm is evaluated using the mean absolute error, mean squared error, root mean squared error, and mean absolute percentage error. The MAE value for the ARIMA (0.06 and 0.20) model for solar and wind energy is very less as compared to RF (15.65 and 61.73) and LR (15.78 and 54.65) of solar and wind energy. Same with MSE and RMSE, the MSE and RMSE value for the ARIMA of solar energy model obtained is 0.01 and 0.08 and wind energy is 0.07 and 0.27 respectively. Comparative analysis of all of these matrices of each algorithm for both the dataset, we concluded that the ARIMA model is best fit for the forecasting of solar energy and wind energy.
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来源期刊
Wind Engineering
Wind Engineering ENERGY & FUELS-
CiteScore
4.00
自引率
13.30%
发文量
81
期刊介绍: Having been in continuous publication since 1977, Wind Engineering is the oldest and most authoritative English language journal devoted entirely to the technology of wind energy. Under the direction of a distinguished editor and editorial board, Wind Engineering appears bimonthly with fully refereed contributions from active figures in the field, book notices, and summaries of the more interesting papers from other sources. Papers are published in Wind Engineering on: the aerodynamics of rotors and blades; machine subsystems and components; design; test programmes; power generation and transmission; measuring and recording techniques; installations and applications; and economic, environmental and legal aspects.
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