Title
Blind Identification Strategies For Room Occupancy Estimation
Abstract
We propose and test on real data a two-tier estimation strategy for inferring occupancy levels from measurements of CO2 concentration and temperature levels. The first tier is a blind identification step, based either on a frequentist Maximum Likelihood method, implemented using non-linear optimization, or on a Bayesian marginal likelihood method, implemented using a dedicated Expectation-Maximization algorithm. The second tier resolves the ambiguity of the unknown multiplicative factor, and returns the final estimate of the occupancy levels.The overall procedure addresses some practical issues of existing occupancy estimation strategies. More specifically, first it does not require the installation of special hardware, since it uses measurements that are typically available in many buildings. Second, it does not require apriori knowledge on the physical parameters of the building, since it performs system identification steps. Third, it does not require pilot data containing measured real occupancy patterns (i.e., physically counting people for some periods, a typically expensive and time consuming step), since the identification steps are blind.
Year
Venue
Keywords
2015
2015 EUROPEAN CONTROL CONFERENCE (ECC)
System identification, management of HVAC systems, Maximum Likelihood, Expectation-Maximization
Field
DocType
Citations 
Data mining,Frequentist inference,Pattern recognition,A priori and a posteriori,Marginal likelihood,Occupancy,Artificial intelligence,Engineering,System identification,Hidden Markov model,Maximum likelihood sequence estimation,Bayesian probability
Conference
1
PageRank 
References 
Authors
0.35
11
6
Name
Order
Citations
PageRank
Afrooz Ebadat1344.28
Giulio Bottegal28213.89
Damiano Varagnolo312115.26
Bo Wahlberg421040.68
Håkan Hjalmarsson51254175.16
Karl Henrik Johansson63996322.75