Forecasting energy demand and efficiency in a smart home environment through advanced ensemble model: Stacking and voting

Nadia Drir, Younes Kebour
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Abstract

Smart homes integrate several sensors to facilitate information exchange and the execution of tasks. In addition, with the development of the Internet of Things (IoT) platforms, the control of appliances and remote devices has become possible. This sensor collects data in real time to closely monitor the devices of a user’s household. The present study employs a machine learning methodology to perform a global analysis of energy consumption and efficiency in smart homes. In This work we propose two advanced ensemble models to improve the performance of energy consumption in smart homes, the first one is a voting ensemble model based on a ranking weight averaging that combines following basic machine learning techniques: decision tree (DT), random forest (RF), and eXtreme Gradient Boosting (XGB). The second one is the stacking ensemble model in which the basic models (DT-RF-XGB) are combined through stacked generalization, then uses a secondary layer model or meta-learner (RF) to provide output prediction. The findings obtained show that the proposed ensemble model based on DT-RF-XGB using stacking technique surpasses all other basic algorithms with R2 around 0.9825.
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通过高级集合模型预测智能家居环境中的能源需求和效率:堆叠和投票
智能家居集成了多个传感器,以促进信息交流和任务执行。此外,随着物联网(IoT)平台的发展,控制电器和远程设备成为可能。这种传感器可实时收集数据,密切监控用户家中的设备。本研究采用机器学习方法对智能家居的能耗和能效进行全局分析。在这项工作中,我们提出了两种先进的集合模型来提高智能家居的能耗性能,第一种是基于排序权重平均的投票集合模型,它结合了以下基本机器学习技术:决策树(DT)、随机森林(RF)和极梯度提升(XGB)。第二种是堆叠集合模型,通过堆叠泛化将基本模型(DT-RF-XGB)结合起来,然后使用第二层模型或元学习器(RF)提供输出预测。研究结果表明,基于 DT-RF-XGB 的拟议集合模型采用了堆叠技术,其 R2 约为 0.9825,超过了所有其他基本算法。
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