使用各种机器学习模型进行用电分类

Dr. Bijay Paikaray, Swarna Prabha Jena, Jayanta Mondal, Nguyen Van Thuan, Nguyen Trong Tung, Chandrakant Mallick
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摘要

引言:随着人口一代代增加,人类对电力的依赖程度也在不断提高,电力已成为一种常态和不可或缺的东西,没有电力的生活已变得不可想象:机器学习正在成为一种无需人工干预即可自主执行任务的基本方法。由于影响用电量的因素很多,因此预测用电量具有挑战性;采用以机器学习和人工智能为重点的现代技术是一种潜在的解决方案。方法:本研究采用各种机器学习算法预测用电量,并根据不同变量确定哪种方法在预测数据集方面表现最佳。结果:测试了八个模型,包括线性回归、DT 分类器、RF 分类器、KNN、DT 回归、SVM、逻辑回归和 GNB 分类器。结论:决策树模型的准确性可促进电力的有效利用,从而达到节约用电和降低成本的目的,并为未来规划提供指导。
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Electricity Consumption Classification using Various Machine Learning Models
INTRODUCTION: As population has increased over successive generations, human dependency on electricity has increased to the point where it has become a norm and indispensable, and the idea of living without it has become unthinkable.OBJECTIVES: Machine learning is emerging as a fundamental method for performing tasks autonomously without human intervention. Forecasting electricity consumption is challenging due to the many factors that influence it; embracing modern technology with its heavy focus on machine learning and artificial intelligence is a potential solution.METHODS: This study employs various machine learning algorithms to forecast power usage and determine which method performs best in predicting the dataset based on different variables.RESULTS: Eight models were tested, including Linear Regression, DT Classifier, RF Classifier, KNN, DT Regression, SVM, Logistic Regression, and GNB Classifier. The Decision Tree model had the greatest accuracy of 98.3%.CONCLUSION: The Decision Tree model’s accuracy can facilitate efficient use of electricity, leading to both conservation of electricity and cost savings, and be a guiding light in future planning.
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