A Cohesive Machine Learning-Based Model for Energy Consumption Prediction in Smart Homes

Sarvinoz Toshpulotova, Muhamamd Fayaz
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Abstract

Energy is the most important and costly resource and its plays a vital role in our daily lives. With the passage of time technologies are advancing, hence, the demand for energy uses is also increasing. In this work, a model has been proposed for energy consumption prediction in the smart home. The proposed model consists of four modules, namely data acquisition, data pre-processing, prediction, performance evaluation, and application. The pre-processing module has four sub-modules namely, output rectification, data cleaning, data transformation, and data reduction. The processed data is then fed to the prediction module, and different machine learning algorithms have been applied to the pre-processed data to predict energy consumption in smart homes. Next, the performance of these algorithms has been evaluated in the performance evaluation stage, in this stage different performance metrics have been considered, such as mean absolute error (MAE), mean absolute percentage error (MAPE), and root mean squared error (RMSE) in order to measure the performance of machine learning algorithms on the given data. The results indicate that the random forest algorithm performance is better as compared to other counterpart algorithms on the given data. The trained random forest algorithm is then used in the web-based interface in order to make able a layman to use the system for energy consumption prediction.
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基于内聚机器学习的智能家居能耗预测模型
能源是最重要和最昂贵的资源,它在我们的日常生活中起着至关重要的作用。随着时间的推移,技术在进步,因此,对能源使用的需求也在增加。本文提出了一种智能家居能耗预测模型。该模型由数据采集、数据预处理、预测、性能评估和应用四个模块组成。预处理模块包括输出整流、数据清洗、数据变换、数据约简四个子模块。处理后的数据被输入到预测模块,不同的机器学习算法被应用到预处理数据中,以预测智能家居的能耗。接下来,在性能评估阶段对这些算法的性能进行了评估,在此阶段考虑了不同的性能指标,如平均绝对误差(MAE)、平均绝对百分比误差(MAPE)和均方根误差(RMSE),以衡量机器学习算法在给定数据上的性能。结果表明,随机森林算法在给定数据上的性能优于其他同类算法。然后在基于web的界面中使用训练好的随机森林算法,以便外行人能够使用该系统进行能耗预测。
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