Experimental testing of a random neural network smart controller using a single zone test chamber
Monitoring and analysis of energy use and indoor environmental conditions is an urgent need in large buildings to respond to changing conditions in an efficient manner. Correct estimation of occupancy will further improve energy performance. In this work, a smart controller for maintaining a comfort...
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doaj-f3220503888e44a394d3b8725fc9a6652021-09-08T13:23:54ZengWileyIET Networks2047-49542047-49622015-11-014635035810.1049/iet-net.2015.0020Experimental testing of a random neural network smart controller using a single zone test chamberAbbas Javed0Hadi Larijani1Ali Ahmadinia2Rohinton Emmanuel3Des Gibson4Caspar Clark5School of Engineering and Built EnvironmentGlasgow Caledonian UniversityGlasgowUKSchool of Engineering and Built EnvironmentGlasgow Caledonian UniversityGlasgowUKSchool of Engineering and Built EnvironmentGlasgow Caledonian UniversityGlasgowUKSchool of Engineering and Built EnvironmentGlasgow Caledonian UniversityGlasgowUKGas Sensing Solutions Ltd60 Grayshill Road, Westfield North CourtyardGlasgowG68 9HQUKGas Sensing Solutions Ltd60 Grayshill Road, Westfield North CourtyardGlasgowG68 9HQUKMonitoring and analysis of energy use and indoor environmental conditions is an urgent need in large buildings to respond to changing conditions in an efficient manner. Correct estimation of occupancy will further improve energy performance. In this work, a smart controller for maintaining a comfortable environment using multiple random neural networks (RNNs) has been developed. The implementation of RNN‐based controller is demonstrated to be more efficient on hardware and requires less memory compared to both artificial neural networks and model predictive controllers. This controller estimates the number of room occupants by using the information from wireless sensor nodes placed in the Heating, Ventilation and Air Conditioning (HVAC) duct and the room. For an occupied room, the controller can switch between thermal comfort mode (based on predicted mean vote set points) and user defined mode (i.e. occupant defined set points for heating/cooling/ventilation). Furthermore, the hybrid particle swarm optimisation with sequential quadratic programming training algorithms are used (for the first time to the best of the authors' knowledge) for training the RNN and results show that this algorithm outperforms the widely used gradient descent algorithm for RNN. The results show that occupancy estimation by smart controller is 83.08% accurate.https://doi.org/10.1049/iet-net.2015.0020occupancy estimationgradient descent algorithmsequential quadratic programming training algorithmshybrid particle swarm optimisationindoor environmentpredicted mean vote‐based set points |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Abbas Javed Hadi Larijani Ali Ahmadinia Rohinton Emmanuel Des Gibson Caspar Clark |
spellingShingle |
Abbas Javed Hadi Larijani Ali Ahmadinia Rohinton Emmanuel Des Gibson Caspar Clark Experimental testing of a random neural network smart controller using a single zone test chamber IET Networks occupancy estimation gradient descent algorithm sequential quadratic programming training algorithms hybrid particle swarm optimisation indoor environment predicted mean vote‐based set points |
author_facet |
Abbas Javed Hadi Larijani Ali Ahmadinia Rohinton Emmanuel Des Gibson Caspar Clark |
author_sort |
Abbas Javed |
title |
Experimental testing of a random neural network smart controller using a single zone test chamber |
title_short |
Experimental testing of a random neural network smart controller using a single zone test chamber |
title_full |
Experimental testing of a random neural network smart controller using a single zone test chamber |
title_fullStr |
Experimental testing of a random neural network smart controller using a single zone test chamber |
title_full_unstemmed |
Experimental testing of a random neural network smart controller using a single zone test chamber |
title_sort |
experimental testing of a random neural network smart controller using a single zone test chamber |
publisher |
Wiley |
series |
IET Networks |
issn |
2047-4954 2047-4962 |
publishDate |
2015-11-01 |
description |
Monitoring and analysis of energy use and indoor environmental conditions is an urgent need in large buildings to respond to changing conditions in an efficient manner. Correct estimation of occupancy will further improve energy performance. In this work, a smart controller for maintaining a comfortable environment using multiple random neural networks (RNNs) has been developed. The implementation of RNN‐based controller is demonstrated to be more efficient on hardware and requires less memory compared to both artificial neural networks and model predictive controllers. This controller estimates the number of room occupants by using the information from wireless sensor nodes placed in the Heating, Ventilation and Air Conditioning (HVAC) duct and the room. For an occupied room, the controller can switch between thermal comfort mode (based on predicted mean vote set points) and user defined mode (i.e. occupant defined set points for heating/cooling/ventilation). Furthermore, the hybrid particle swarm optimisation with sequential quadratic programming training algorithms are used (for the first time to the best of the authors' knowledge) for training the RNN and results show that this algorithm outperforms the widely used gradient descent algorithm for RNN. The results show that occupancy estimation by smart controller is 83.08% accurate. |
topic |
occupancy estimation gradient descent algorithm sequential quadratic programming training algorithms hybrid particle swarm optimisation indoor environment predicted mean vote‐based set points |
url |
https://doi.org/10.1049/iet-net.2015.0020 |
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