Role of Deep LSTM Neural Networks And Wi-Fi Networks in Support of Occupancy Prediction in Smart Buildings

被引:24
作者
Qolomany, Basheer [1 ]
Al-Fuqaha, Ala [1 ]
Benhaddou, Driss [2 ]
Gupta, Ajay [1 ]
机构
[1] Western Michigan Univ, Coll Engn & Appl Sci, Comp Sci Dept, Kalamazoo, MI 49008 USA
[2] Univ Houston, Coll Technol, Engn Technol Dept, Houston, TX USA
来源
2017 19TH IEEE INTERNATIONAL CONFERENCE ON HIGH PERFORMANCE COMPUTING AND COMMUNICATIONS (HPCC) / 2017 15TH IEEE INTERNATIONAL CONFERENCE ON SMART CITY (SMARTCITY) / 2017 3RD IEEE INTERNATIONAL CONFERENCE ON DATA SCIENCE AND SYSTEMS (DSS) | 2017年
关键词
Time series; Machine Learning; ARIMA; LSTM; Smart Buildings; Smart Homes; IoT services; Wi-Fi networks;
D O I
10.1109/HPCC-SmartCity-DSS.2017.7
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Knowing how many people occupy a building, and where they are located, is a key component of smart building services. Commercial, industrial and residential buildings often incorporate systems used to determine occupancy. However, relatively simple sensor technology and control algorithms limit the effectiveness of smart building services. In this paper we propose to replace sensor technology with time series models that can predict the number of occupants at a given location and time. We use Wi-Fi datasets readily available in abundance for smart building services and train Auto Regression Integrating Moving Average (ARIMA) models and Long Short-Term Memory (LSTM) time series models. As a use case scenario of smart building services, these models allow forecasting of the number of people at a given time and location in 15, 30 and 60 minutes time intervals at building as well as Access Point (AP) level. For LSTM, we build our models in two ways: a separate model for every time scale, and a combined model for the three time scales. Our experiments show that LSTM combined model reduced the computational resources with respect to the number of neurons by 74.48 % for the AP level, and by 67.13 % for the building level. Further, the root mean square error (RMSE) was reduced by 88.2% - 93.4% for LSTM in comparison to ARIMA for the building levels models and by 80.9 % - 87% for the AP level models.
引用
收藏
页码:50 / 57
页数:8
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