智能家居中智能能耗的机器学习

Asem Alzoubi
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引用次数: 25

摘要

个人快乐的增长是一个人为自己提供能量的能力的直接结果。由于人们可以通过当前的创新更快地构建和增强他们的生活方式,由于智能房屋和结构的使用,多年来宝贵的能源已经成为一种受欢迎的扩张。对能源的需求大于供给,导致能源短缺。为了跟上对能源的需求,正在制定新的战略。许多地区的住宅能源使用量在30%到40%之间。随着智能家居的出现和扩展,资产管理、节能自动化、安全和医疗保健监控等应用对智能的需求不断增加。在本研究中,能源消耗优化是通过使用能源管理方法来解决的。最近,在建筑节能的背景下,对数据融合的兴趣激增。利用所提出的数据融合技术,计算了能耗预测的准确率和漏报率。模拟结果正在与先前报道的方法进行比较。它还具有92%的预测准确率,这比之前报道的任何其他技术都要高。随着家庭用电量的增加和分散的新能源的引入,降低电费对家庭来说变得越来越重要。安装家庭能源管理系统是解决这些问题的切实可行的办法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MACHINE LEARNING FOR INTELLIGENT ENERGY CONSUMPTION IN SMART HOMES
The growth of personal pleasure is a direct result of a person's ability to provide themselves with energy. Since people may construct and enhance their way of life more swiftly with current innovation, valuable energy has become a sought-after expansion for many years due to the utilization of smart houses and structures. The demand for energy is greater than the supply, resulting in a lack of energy. In order to keep up with the demand for energy, new strategies are being developed. Many areas' residential energy use is between 30 and 40 percent. There has been an increase in the need for intelligence in applications like as asset management, energy-efficient automating, safety, and healthcare monitoring as a result of smart homes coming into existence and expanding. Energy consumption optimization is being tackled with the use of an energy management approach in this study. There has been a recent surge in interest in data fusion in the context of building energy efficiency. Accuracy and miss rate of energy consumption predictions were calculated utilizing the data fusion technique presented by the proposed study. Simulated findings are being compared with those of previously reported methods. It also has a prediction accuracy of 92 percent, which is greater than that of any other technique that has been previously reported. It's becoming increasingly important for households to keep their power costs down as the amount of electricity they consume rises and dispersed new energy sources are introduced. The installation of a home energy management system is a practical solution to these issues.
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