首页> 外文期刊>ASHRAE Transactions >A Case Study of Using Multi-Functional Sensors to Predict the Indoor Air Temperature in Classrooms
【24h】

A Case Study of Using Multi-Functional Sensors to Predict the Indoor Air Temperature in Classrooms

机译:使用多功能传感器预测课堂室内空气温度的案例研究

获取原文
获取原文并翻译 | 示例
       

摘要

An integral step in reducing buildings' energy consumption, which contributes to about 40% of the total energy use in the U.S., is developing an accurate energy model. The two primary approaches in developing an energy model are referred to as black-box and white-box methods. The latter is based on thermodynamic laws, while the former can be based on machine learning methods such as decision trees, regression methods, or artificial neural networks to predict the building performance characteristics such as energy use and indoor air temperature. One of the important factors, which has a direct impact on the accuracy of these methods, is the proper inputs. The most decisive inputs have a greater influence on the model's accuracy and these inputs might vary between different types of buildings, locations, and occupancy levels. Therefore, researchers have been using either synthetic data (e.g., generated data through energy simulation tools) or experimental data (e.g., collected data via sensors) to determine the important inputs. Multiple researchers have studied different types of buildings but there are limited research studies about campus buildings that collect data through multi-functional wireless sensors network. This paper studies the impact of different inputs, including the activity of the cooling system, occupancy, humidity, and irradiance for the different wavelengths of radiations (i.e., infrared and visible range) on the accuracy of indoor air temperature's prediction. These data are collected by a multifunctional wireless sensors network installed in a classroom located in New York for 1.5 months. Long short-term memory (LSTM) model, which is an artificial recurrent neural network (RNN) model, is developed to predict the indoor air temperature and to detect the inputs with the highest impact on the indoor air temperature prediction, the XGBoost approach is adopted. The results show that an acceptable level of accuracy can be achieved by only using a limited number of inputs such as doors open/closed status, radiations closer to the higher end of visible light wavelength, and the cooling system's fan speed. Demonstration of design and application of such multifunctional sensors can contribute to similar research studies in larger scales focused on campus-level energy models.
机译:减少建筑能耗的一体化步骤,这有助于美国的总能量占总能源的40%正在开发精确的能源模型。开发能量模型的两个主要方法被称为黑盒和白盒方法。后者基于热力学定律,而前者可以基于机器学习方法,例如决策树,回归方法或人工神经网络,以预测建筑物性能特性,例如能量使用和室内空气温度。具有直接影响这些方法的准确性的重要因素之一是适当的输入。最果断的输入对模型的准确性产生了更大的影响,这些输入可能因不同类型的建筑物,地点和占用水平而变化。因此,研究人员已经使用了合成数据(例如,通过能量仿真工具产生的数据)或实验数据(例如,通过传感器收集数据)来确定重要的输入。多个研究人员研究了不同类型的建筑物,但有关校园建筑的研究研究有限,通过多功能无线传感器网络收集数据。本文研究了不同输入的影响,包括用于不同波长的冷却系统,占用,湿度和辐照的活动,对室内空气温度预测的准确性的不同波长的辐射(即红外和可见范围)。这些数据由安装在位于纽约的教室中的多功能无线传感器网络收集1.5个月。开发了长短期内存(LSTM)模型,即人工复发性神经网络(RNN)模型,以预测室内空气温度,并检测对室内空气温度预测的最高影响的输入,XGBoost方法是采纳。结果表明,只有使用更多门打开/关闭状态,诸如门的有限数量的输入可以实现可接受的精度水平,靠近可见光波长的较高端的辐射,以及冷却系统的风扇速度。这些多功能传感器的设计和应用的示范可以有助于更大尺度的类似研究研究,专注于校园级能量模型。

著录项

  • 来源
    《ASHRAE Transactions》 |2020年第1期|3-11|共9页
  • 作者单位

    Department of Energy Management and Energy and Green Technologies Laboratory (EnTech Lab) New York Institute of Technology (NYIT) Old Westbury NY;

    Integrated Medical Systems (IMS) Laboratory at the School of Engineering and Computing Sciences NYIT Old Westbury NY;

    Integrated Medical Systems (IMS) Laboratory at the School of Engineering and Computing Sciences NYIT Old Westbury NY;

    Electrical and Computer Engineering Department at University of North Carolina at Charlotte NC;

    Department of Computer Science NYIT Old Westbury NY;

    Department of Electrical & Computer Engineering and IMS Laboratory NYIT Old Westbury NY;

    Department of Energy Management NYIT Old Westbury NY;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 21:40:46

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号