首页> 外文期刊>Building and Environment >Modeling personalized occupancy profiles for representing long term patterns by using ambient context
【24h】

Modeling personalized occupancy profiles for representing long term patterns by using ambient context

机译:为个性化的占用情况建模,以通过使用环境来表示长期模式

获取原文
获取原文并翻译 | 示例
       

摘要

Occupancy is a crucial factor in deciding the load for a building's HVAC system. To incorporate and account for occupancy, most simulation tools use fixed design profiles that are based on statistical methods, which use large-scale occupant surveys and/or observations from a number of similar buildings. Such survey and observational data are labor- and time- intensive to gather, and do not accurately represent the actual occupancy patterns. Consequently, fixed design profiles may deviate from actual occupancies of a building. Data acquired by wireless sensor networks could provide high-resolution and accurate information for describing indoor ambient variations caused by occupancy status changes and screening irregular presence. This paper proposes a framework to model personalized occupancy profiles for representing occupants' long-term presence patterns. A personalized occupancy profile is described as typical weekday/weekend occupancy probability as a function of time for a specific occupant. Regression modeling, time-series modeling, pattern recognition modeling and stochastic process modeling are tested to model the expected occupancy status and their performances are compared in terms of the degree of statistical approximation to actual occupancy. The paper evaluates the impact of implementing personalized occupancy profiles on energy simulation results by simulating energy consumption of four thermal zones in a building for four months using OpenStudio. The results show that the personalized occupancy profiles acquired through time-series modeling, pattern recognition modeling and stochastic process modeling outperform the fixed design profiles and observation-based profiles currently used in building energy simulations.
机译:占用率是决定建筑物的HVAC系统负载的关键因素。为了合并和考虑占用情况,大多数模拟工具使用基于统计方法的固定设计配置文件,这些配置文件使用大规模的居民调查和/或来自许多类似建筑物的观测值。这样的调查和观察数据收集起来很费力和时间,并且不能准确地代表实际的居住模式。因此,固定的设计轮廓可能会与建筑物的实际使用情况有所出入。通过无线传感器网络获取的数据可以提供高分辨率和准确的信息,以描述由占用状态变化和筛选不规则状态引起的室内环境变化。本文提出了一个框架,以建模个性化的居住情况档案,以代表乘客的长期居住模式。个性化的占用情况被描述为特定工作人员的典型工作日/周末占用概率与时间的函数关系。测试了回归建模,时间序列建模,模式识别建模和随机过程建模,以对预期的占用状态进行建模,并根据统计近似程度与实际占用率对它们的性能进行了比较。本文通过使用OpenStudio模拟建筑物中四个热区的能耗四个月来评估实施个性化的占用情况对能源模拟结果的影响。结果表明,通过时间序列建模,模式识别建模和随机过程建模获得的个性化占用配置文件优于目前在建筑能耗模拟中使用的固定设计配置文件和基于观测的配置文件。

著录项

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