Machine Learning-Based Electricity Load Forecast for the Agriculture Sector

Megha Sharma, Namita Mittal, Anukram Mishra, Arun Gupta
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引用次数: 5

Abstract

A large section of the population has a source of income from the agriculture sector, but their share in the Indian GDP is low. Thus, there is a need to forecast energy to improve and increase productivity. The main sources of energy in agriculture are electricity, coal, and diesel. Among them, electricity plays an important role in land irrigation. Power forecasting is also essential for demand response management. Thus, any process that dissolves future consumption is favorable. This article presents a time series-based technique for forecasting medium-term load in agriculture. The aim is to find the peak periods of power consumption by months and seasons using statistical and machine learning-based techniques. The result shows that SARIMA has lower RMSE and exponential smoothing has lower RMSPE error than random forest and LSTM, which makes the statistical approach more efficient than intelligent approach for historical datasets. The season-wise peak demand occurs during the Rabi season. Finally, five-year ahead load in the agriculture sector was determined using the best models.
基于机器学习的农业用电负荷预测
很大一部分人口的收入来自农业部门,但他们在印度GDP中的份额很低。因此,有必要预测能源,以改善和提高生产力。农业的主要能源是电、煤和柴油。其中,电力在土地灌溉中起着重要作用。电力预测对于需求响应管理也是必不可少的。因此,任何消除未来消耗的过程都是有利的。本文提出了一种基于时间序列的农业中期负荷预测技术。其目的是使用统计和基于机器学习的技术,以月和季节为单位找到电力消耗的高峰期。结果表明,与随机森林和LSTM相比,SARIMA具有更低的RMSE,指数平滑具有更低的RMSPE误差,使得统计方法比智能方法更有效地处理历史数据集。季节性需求高峰出现在拉比季节。最后,利用最佳模型确定农业部门未来五年的负荷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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