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Clustering and motif identification for occupancy-centric control of an air handling unit

机译:用于空气处理单元占用控制的聚类和图案识别

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摘要

Commercial and institutional buildings often operate at a fraction of their full occupancy, yet ventilation is frequently provided assuming maximum occupancy during working hours. Forecasting building occupancy can improve the operation of system level equipment by reducing chronic overventilation. However, developing actionable occupancy forecasting techniques for controls applications is subject to technological, security, and financial barriers. This paper proposes an occupancy forecasting technique that can be implemented in a controller given these constraints. Seven months of Wi-Fi, plug-in equipment and lighting electricity data were collected from an academic office building. Using Wi-Fi data, the building's mean occupancy was demonstrated to be less than 25% of the 1000-person maximum. Representative daily occupancy profiles were produced by different clustering techniques. A classification tree was developed to determine motif occupancy profiles for day-ahead forecasting. Corresponding electrical profiles were taken to see if they followed the same trend as the occupancy profiles; 84.5% of days shared the same trends. The electrical data were fed through the classification tree, with a successful occupancy classification rate of 70.4% and error of 47 +/- 69 persons at 95% confidence. A controls implementation for adaptive outdoor air damper actuation based on this technique is proposed for future work. Crown Copyright (c) 2020 Published by Elsevier B.V. All rights reserved.
机译:商业和机构建筑通常在其全部占用的一小部分下运行,但经常在工作时间的最大占用时提供通风。预测建筑物占用可以通过减少慢性过度透熔化来改善系统级设备的运行。然而,制定控件申请的可行占用预测技术受技术,安全和财务障碍。本文提出了一种占用的预测技术,可以在给定这些约束的控制器中实现。从学术办公楼收集了七个月的Wi-Fi,插入式设备和照明电力数据。使用Wi-Fi数据,建筑的平均入住率被证明占1000人最大值的25%。代表性的每日入住型材是通过不同的聚类技术产生的。开发了一个分类树以确定日期预测的主题占用概况。采用相应的电谱看,看看它们是否遵循与占用概况相同的趋势; 84.5%的日子共享相同的趋势。电气数据通过分类树喂养,成功的占用分类率为70.4%,误差为47 +/- 69人,信心95%。基于该技术的自适应室外空气阻尼器致动的控制实现用于将来的工作。皇家版权(c)2020由elestvier b.v发布。保留所有权利。

著录项

  • 来源
    《Energy and Buildings》 |2020年第9期|110179.1-110179.11|共11页
  • 作者单位

    Carleton Univ Dept Civil & Environm Engn 1125 Colonel Dr Room 3432 CJ Mackenzie Bldg Ottawa ON K1S 5B6 Canada;

    Carleton Univ Dept Civil & Environm Engn 1125 Colonel Dr Room 3432 CJ Mackenzie Bldg Ottawa ON K1S 5B6 Canada;

    Carleton Univ Dept Civil & Environm Engn 1125 Colonel Dr Room 3432 CJ Mackenzie Bldg Ottawa ON K1S 5B6 Canada|Natl Res Council Canada Construct Res Ctr 1200 Montreal Rd Ottawa ON K1K 2E1 Canada;

    Natl Res Council Canada Construct Res Ctr 1200 Montreal Rd Ottawa ON K1K 2E1 Canada;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Occupancy forecasting; Occupancy-centric controls; Clustering; Motif identification; Adaptive ventilation;

    机译:占用预测;以占用的控制;聚类;图案识别;自适应通风;

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