基于NARX网络的智能居住环境占用模式提取与预测

Sawsan M. Mahmoud, Ahmad Lotfi, C. Langensiepen
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引用次数: 7

摘要

本文研究了智能居住环境中占用模式的提取与预测问题。这项研究的结果将有助于老年人在自己的家中独立生活更长时间,并在紧急情况下帮助他们。利用无线传感器网络系统,提取居住者的日常行为模式。然后,这些信息被用来建立居住者的行为模型,该模型最终被用来预测代表预期居住者和其他活动的未来值。占用信号由一长串二进制序列表示,表示占用者在特定区域内的存在或不存在。在将这一系列二进制数据用于任何进一步的分析和预测之前,必须将其转换为更灵活和有效的格式。在对占用二值信号进行转换后,通过循环动态网络构建预测模型,该网络的反馈连接包裹了带有外生输入的非线性自回归网络(NARX)的多层网络。本文报道的结果表明,NARX提供了比传统递归神经网络(如Elman网络)更好的预测结果。这里报告的案例研究是基于一个单人居住的一居室公寓。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Occupancy Pattern Extraction and Prediction in an Inhabited Intelligent Environment Using NARX Networks
In this paper, occupancy pattern extraction and prediction in an intelligent inhabited environment is addressed. The results of this research will help elderly people to live independently in their own home longer and help them in case of an emergency. Using a wireless sensor network system, daily behavioral patterns of the occupant are extracted. This information is then used to build a behavioral model of the occupant which ultimately is used to predict the future values representing the expected occupancy and other activities. The occupancy signal is represented by a long sequence of binary series indicating presence or absence of the occupant in a specific area. It is essential to convert this series of binary data into a more flexible and efficient format before it is applied for any further analysis and prediction. After converting the occupancy binary signals, the prediction model is built through a recurrent dynamic network, with feedback connections enclosing several layers of a Nonlinear Autoregressive netwoRk with eXogenous inputs (NARX) network. The results reported here shows that NARX provide better prediction results than conventional recurrent neural networks such as Elman networks. The case study reported here is based on a one bedroom flat with a single occupant.
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