ANN-Based Prediction and Optimization of Cooling System in Hotel Rooms

This study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the required time for restoring the current indoor temperature during the setback period in accommodation buildings to the normal set-point temperature in the cooling season. By applying the calculated t...

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Main Authors: Jin Woo Moon, Kyungjae Kim, Hyunsuk Min
Format: Article
Language:English
Published: MDPI AG 2015-09-01
Series:Energies
Subjects:
Online Access:http://www.mdpi.com/1996-1073/8/10/10775
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spelling doaj-af60054164974c41834e8312ce4aa6b22020-11-24T23:06:47ZengMDPI AGEnergies1996-10732015-09-01810107751079510.3390/en81010775en81010775ANN-Based Prediction and Optimization of Cooling System in Hotel RoomsJin Woo Moon0Kyungjae Kim1Hyunsuk Min2School of Architecture and Building Science, Chung-Ang University, Seoul 06974, KoreaDMC R&D Center, Samsung Electronic, Suwon-si 443-742, Gyeonggi-do, KoreaDMC R&D Center, Samsung Electronic, Suwon-si 443-742, Gyeonggi-do, KoreaThis study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the required time for restoring the current indoor temperature during the setback period in accommodation buildings to the normal set-point temperature in the cooling season. By applying the calculated time in the control logic, the operation of the cooling system can be predetermined to condition the indoor temperature comfortably in a more energy-efficient manner. Three major steps employing the numerical computer simulation method were conducted for developing an ANN model and testing its prediction performance. In the development process, the initial ANN model was determined to have input neurons that had a significant statistical relationship with the output neuron. In addition, the structure of the ANN model and learning methods were optimized through the parametrical analysis of the prediction performance. Finally, through the performance tests in terms of prediction accuracy, the optimized ANN model presented a lower mean biased error (MBE) rate between the simulation and prediction results under generally accepted levels. Thus, the developed ANN model was proven to have the potential to be applied to thermal control logic.http://www.mdpi.com/1996-1073/8/10/10775temperature controlsthermal comfortartificial neural networkpredictive controlsaccommodations
collection DOAJ
language English
format Article
sources DOAJ
author Jin Woo Moon
Kyungjae Kim
Hyunsuk Min
spellingShingle Jin Woo Moon
Kyungjae Kim
Hyunsuk Min
ANN-Based Prediction and Optimization of Cooling System in Hotel Rooms
Energies
temperature controls
thermal comfort
artificial neural network
predictive controls
accommodations
author_facet Jin Woo Moon
Kyungjae Kim
Hyunsuk Min
author_sort Jin Woo Moon
title ANN-Based Prediction and Optimization of Cooling System in Hotel Rooms
title_short ANN-Based Prediction and Optimization of Cooling System in Hotel Rooms
title_full ANN-Based Prediction and Optimization of Cooling System in Hotel Rooms
title_fullStr ANN-Based Prediction and Optimization of Cooling System in Hotel Rooms
title_full_unstemmed ANN-Based Prediction and Optimization of Cooling System in Hotel Rooms
title_sort ann-based prediction and optimization of cooling system in hotel rooms
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2015-09-01
description This study aimed at developing an artificial-neural-network (ANN)-based model that can calculate the required time for restoring the current indoor temperature during the setback period in accommodation buildings to the normal set-point temperature in the cooling season. By applying the calculated time in the control logic, the operation of the cooling system can be predetermined to condition the indoor temperature comfortably in a more energy-efficient manner. Three major steps employing the numerical computer simulation method were conducted for developing an ANN model and testing its prediction performance. In the development process, the initial ANN model was determined to have input neurons that had a significant statistical relationship with the output neuron. In addition, the structure of the ANN model and learning methods were optimized through the parametrical analysis of the prediction performance. Finally, through the performance tests in terms of prediction accuracy, the optimized ANN model presented a lower mean biased error (MBE) rate between the simulation and prediction results under generally accepted levels. Thus, the developed ANN model was proven to have the potential to be applied to thermal control logic.
topic temperature controls
thermal comfort
artificial neural network
predictive controls
accommodations
url http://www.mdpi.com/1996-1073/8/10/10775
work_keys_str_mv AT jinwoomoon annbasedpredictionandoptimizationofcoolingsysteminhotelrooms
AT kyungjaekim annbasedpredictionandoptimizationofcoolingsysteminhotelrooms
AT hyunsukmin annbasedpredictionandoptimizationofcoolingsysteminhotelrooms
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