PreCount: a predictive model for correcting real-time occupancy count data

Abstract Sensing the number of people occupying a building in real-time facilitates a number of pervasive applications within the area of building energy optimization and adaptive control. To ascertain occupant counts, the adoption of camera-based sensors i.e. 3D stereo-vision and thermal cameras ha...

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Main Authors: Fisayo Caleb Sangogboye, Mikkel Baun Kjærgaard
Format: Article
Language:English
Published: SpringerOpen 2018-08-01
Series:Energy Informatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s42162-018-0016-4
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spelling doaj-e3c6a6aa501a47c1aafbda355d3791f02020-11-25T00:49:12ZengSpringerOpenEnergy Informatics2520-89422018-08-011112210.1186/s42162-018-0016-4PreCount: a predictive model for correcting real-time occupancy count dataFisayo Caleb Sangogboye0Mikkel Baun Kjærgaard1SDU Center for Energy Informatics Mærsk McKinney Møller Institute University of Southern DenmarkSDU Center for Energy Informatics Mærsk McKinney Møller Institute University of Southern DenmarkAbstract Sensing the number of people occupying a building in real-time facilitates a number of pervasive applications within the area of building energy optimization and adaptive control. To ascertain occupant counts, the adoption of camera-based sensors i.e. 3D stereo-vision and thermal cameras have grown significantly. However, camera-based sensors can only produce occupant counts with accumulating errors. Existing methods for correcting such errors can only correct erroneous count data at the end of the day and not in real-time. However, many applications depend on real-time corrected counts. In this paper, we present an algorithm named PreCount for accurately correcting raw counts in real-time. The core idea of PreCount is to learn error estimates from the past. We evaluated the accuracy of the PreCount algorithm using datasets from four buildings. Also, the Normalized Root Mean Squared Error was used to evaluate the performance of PreCount. Our evaluation results show that in real-time PreCount achieved a significantly lower Normalized Root Mean Squared Error compared to raw counts and other correction approach with a maximum error reduction of 68% when benchmarked with ground truth data. By presenting a more accurate algorithm for estimating occupant counts in real-time, we hope to enable buildings to better serve the actual number of people to improve both occupant comfort and energy efficiency.http://link.springer.com/article/10.1186/s42162-018-0016-4Occupant countReal-time systemMachine learningEnergy optimization
collection DOAJ
language English
format Article
sources DOAJ
author Fisayo Caleb Sangogboye
Mikkel Baun Kjærgaard
spellingShingle Fisayo Caleb Sangogboye
Mikkel Baun Kjærgaard
PreCount: a predictive model for correcting real-time occupancy count data
Energy Informatics
Occupant count
Real-time system
Machine learning
Energy optimization
author_facet Fisayo Caleb Sangogboye
Mikkel Baun Kjærgaard
author_sort Fisayo Caleb Sangogboye
title PreCount: a predictive model for correcting real-time occupancy count data
title_short PreCount: a predictive model for correcting real-time occupancy count data
title_full PreCount: a predictive model for correcting real-time occupancy count data
title_fullStr PreCount: a predictive model for correcting real-time occupancy count data
title_full_unstemmed PreCount: a predictive model for correcting real-time occupancy count data
title_sort precount: a predictive model for correcting real-time occupancy count data
publisher SpringerOpen
series Energy Informatics
issn 2520-8942
publishDate 2018-08-01
description Abstract Sensing the number of people occupying a building in real-time facilitates a number of pervasive applications within the area of building energy optimization and adaptive control. To ascertain occupant counts, the adoption of camera-based sensors i.e. 3D stereo-vision and thermal cameras have grown significantly. However, camera-based sensors can only produce occupant counts with accumulating errors. Existing methods for correcting such errors can only correct erroneous count data at the end of the day and not in real-time. However, many applications depend on real-time corrected counts. In this paper, we present an algorithm named PreCount for accurately correcting raw counts in real-time. The core idea of PreCount is to learn error estimates from the past. We evaluated the accuracy of the PreCount algorithm using datasets from four buildings. Also, the Normalized Root Mean Squared Error was used to evaluate the performance of PreCount. Our evaluation results show that in real-time PreCount achieved a significantly lower Normalized Root Mean Squared Error compared to raw counts and other correction approach with a maximum error reduction of 68% when benchmarked with ground truth data. By presenting a more accurate algorithm for estimating occupant counts in real-time, we hope to enable buildings to better serve the actual number of people to improve both occupant comfort and energy efficiency.
topic Occupant count
Real-time system
Machine learning
Energy optimization
url http://link.springer.com/article/10.1186/s42162-018-0016-4
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