Machine Learning-Based Method and Its Performance Analysis for Occupancy Detection in Indoor Environment

Occupancy detection is very interesting research problem which may help in understanding ambient dynamics of the environment, resource utilisation, energy conservation and consumption, electricity usages and patterns, security and privacy related aspects. In addition to this, achieving good accuracy for occupancy detection problem in the home and commercial buildings can help in cost reduction substantially. In this paper, we explain one experiment in which data for occupancy and ambient attributes have been collected. This paper develops machine learning-based intelligent occupancy detection model and compare the results with several machine learning techniques in a detailed manner.

[1]  Ram Pal Singh,et al.  A Conceptual Architectural Design for Intelligent Health Information System: Case Study on India , 2018 .

[2]  Saibal K. Pal,et al.  Empirically developed integrated ICT framework for PDS in developing countries , 2013, 2013 Third World Congress on Information and Communication Technologies (WICT 2013).

[3]  Miguel Á. Carreira-Perpiñán,et al.  OBSERVE: Occupancy-based system for efficient reduction of HVAC energy , 2011, Proceedings of the 10th ACM/IEEE International Conference on Information Processing in Sensor Networks.

[4]  Saibal K. Pal,et al.  ICT Integrated Social Media Framework for consumer awareness in society using ICT tools , 2014, 2014 IEEE/ACIS 13th International Conference on Computer and Information Science (ICIS).

[5]  Luca P. Carloni,et al.  An experimental investigation of occupancy-based energy-efficient control of commercial building indoor climate , 2014, 53rd IEEE Conference on Decision and Control.

[6]  Karl Henrik Johansson,et al.  Estimation of building occupancy levels through environmental signals deconvolution , 2013, BuildSys@SenSys.

[7]  N. Altman An Introduction to Kernel and Nearest-Neighbor Nonparametric Regression , 1992 .

[8]  Ian Richardson,et al.  A high-resolution domestic building occupancy model for energy demand simulations , 2008 .

[9]  Saibal K. Pal,et al.  Intelligent Energy Conservation: Indoor Temperature Forecasting with Extreme Learning Machine , 2016 .

[10]  Saibal K. Pal,et al.  An approach to ensure superior and sustainable software development performance , 2014, 2014 International Conference on Computing for Sustainable Global Development (INDIACom).

[11]  Bing Dong,et al.  Sensor-based occupancy behavioral pattern recognition for energy and comfort management in intelligent buildings , 2009 .

[12]  Luis M. Candanedo,et al.  Accurate occupancy detection of an office room from light, temperature, humidity and CO2 measurements using statistical learning models , 2016 .

[13]  D. J. Allerton,et al.  Book Review: GPS theory and practice. Second Edition, HOFFMANNWELLENHOFF B., LICHTENEGGER H. and COLLINS J., 1993, 326 pp., Springer, £31.00 pb, ISBN 3-211-82477-4 , 1995 .

[14]  Saibal K. Pal,et al.  A new sustainable prototype USP for education information system , 2015, 2015 International Conference on Futuristic Trends on Computational Analysis and Knowledge Management (ABLAZE).

[15]  Prabir Barooah,et al.  Energy-efficient control of under-actuated HVAC zones in commercial buildings , 2015 .

[16]  Alberto E. Cerpa,et al.  Energy efficient building environment control strategies using real-time occupancy measurements , 2009, BuildSys '09.

[17]  Avinash C. Kak,et al.  PCA versus LDA , 2001, IEEE Trans. Pattern Anal. Mach. Intell..

[18]  Sean P. Meyn,et al.  A sensor-utility-network method for estimation of occupancy in buildings , 2009, Proceedings of the 48h IEEE Conference on Decision and Control (CDC) held jointly with 2009 28th Chinese Control Conference.

[19]  Saibal K. Pal,et al.  ELM variants comparison on applications of time series data forecasting , 2016, 2016 International Conference on Advances in Computing, Communications and Informatics (ICACCI).

[20]  Miguel Á. Carreira-Perpiñán,et al.  Occupancy Modeling and Prediction for Building Energy Management , 2014, ACM Trans. Sens. Networks.