校园建筑室内温度特征及其对能耗的影响

Ali Safari Khatouni, M. Bauer, H. Lutfiyya
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引用次数: 0

摘要

楼宇监控和管理是智慧城市的重要组成部分。它为城市管理者和电力供应商提供有价值的信息,以更好地优化他们的资源。近年来,随着电力价格的稳步上涨,高效利用供暖、通风和空调系统变得至关重要,因为它们占建筑物耗电量的10%以上。随着物联网(IoT)的发展,越来越多的暖通空调设备正在部署传感器。这些传感器可以产生大量的数据,这些数据可以转化为有关建筑物运行的知识。在本文中,我们研究了来自200多个房间的建筑物的大量传感器数据。我们分析了建筑物的功耗,并比较了使用室内和室外温度预测建筑物功耗的不同算法。我们比较了8种不同的机器学习(ML)算法,以检查它们的有效性。然后我们根据温度设置对房间进行分组。我们的评估结果说明了合理的预测精度,并指出了一些低效率的温度设置簇。研究结果可以帮助学校更好地利用资源,降低能耗成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Indoor Temperature Characterization and its Implication on Power Consumption in a Campus Building
Building monitoring and management are some of the important components of smart cities. It provides valuable information to the city manager and power supplier to better optimize their resources. With a steady rise in electricity prices in recent years, the importance of efficient use of the Heating, Ventilating, and Air-Conditioning (HVAC) systems becomes vital since they contribute to more than 10% of building power consumption. Given the growth on the Internet of Things (IoT) more HVAC equipment is being deployed with sensors. These sensors can produce large amounts of data that can be transformed into knowledge about the operation of a building. In this paper, we examine a large amount of sensor data from a building with more than 200 rooms. We analyze the power consumption of the building and compare different algorithms to predict the power consumption of the building using indoor and outdoor temperatures. We compare 8 different Machine Learning (ML) algorithms in order to examine their effectiveness. We then cluster rooms based on the temperature settings. Our evaluation results illustrate reasonable prediction accuracy and pinpoint several clusters with an inefficient temperature setting. The results can help the university to better utilize its resources and reduce the power consumption costs.
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