天气状况对智能家居用电量的影响:基于机器学习的预测模型

G. B. Brahim
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引用次数: 2

摘要

随着能源价格的波动,电费已成为许多家庭每月要支付的账单中越来越大的负担。许多国家的许多家庭都喜欢智能电力监视器和智能电力控制器,它们既可以用于智能城市,也可以用于普通家庭。天气条件在电力消耗中起着至关重要的作用,例如,在炎热的沙漠气候中,由于夏季使用空调,电费会增加三倍或四倍。在本文中,我们提出了一种基于机器学习的技术,利用天气数据来预测电力消耗。该方法利用350天以上的家用电器天气数据集,利用随机树预测出相关系数为75.7%的用电量。所获得的结果为最终目标提供了良好的基础,即建立一个精确的智能电力消耗监测仪,用于智慧城市甚至普通家庭,最终通过根据天气情况调节耗电量最大的电器的使用,帮助家庭减少用电。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weather Conditions Impact on Electricity Consumption in Smart Homes: Machine Learning Based Prediction Model
With the fluctuations of energy pricing, the electricity bills for many households is becoming an increasing burden in the monthly bills to be paid. Many households in many countries would appreciate Smart Electricity Monitors and Smart Electricity controllers that can be used both in Smart Cities and regular households. Weather conditions play a vital role in electricity consumption, for example, in a hot desert climate, the electricity bill is tripled or quadrupled due to the use of air conditioning in summer. In this paper, we propose a machine learning based technique to anticipate the electricity consumption using weather data. Using a dataset consisting of reading over 350 days of household appliances with weather condition, the proposed method is able to predict the electricity consumption with a correlation coefficient of 75.7% using Random Tree. The results obtained provide an excellent basis for the ultimate goal of setting up an accurate smart electricity consumption monitor to be used both in Smart Cities and even in regular households which could ultimately help households to reduce electricity by regulating the use of the most electricity consuming appliances according to weather conditions.
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