Heat load estimation using Artificial Neural Network

Electricity demand from air conditioners are increasing every year due to increasing ambient air temperature. Several air-conditioned rooms in Thailand currently use low-efficient fixed-speed air conditioners. Prediction of heat load entering air-conditioned rooms may lead to better control of these...

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Main Authors: Apisit Panyafong, Nattawut Neamsorn, Chatchawan Chaichana
Format: Article
Language:English
Published: Elsevier 2020-02-01
Series:Energy Reports
Online Access:http://www.sciencedirect.com/science/article/pii/S2352484719310108
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spelling doaj-a6e5ffc65a4f424ca0797a4225ce69c22020-11-25T03:03:18ZengElsevierEnergy Reports2352-48472020-02-016742747Heat load estimation using Artificial Neural NetworkApisit Panyafong0Nattawut Neamsorn1Chatchawan Chaichana2Master’s Degree Program in Energy Engineering, Faculty of Engineering, Chiang Mai University, Chiang Mai, 50200, ThailandDepartment of Mechanical Engineering, Faculty of Engineering, Chiang Mai University, Chiang Mai, 50200, ThailandDepartment of Mechanical Engineering, Faculty of Engineering, Chiang Mai University, Chiang Mai, 50200, Thailand; Corresponding author.Electricity demand from air conditioners are increasing every year due to increasing ambient air temperature. Several air-conditioned rooms in Thailand currently use low-efficient fixed-speed air conditioners. Prediction of heat load entering air-conditioned rooms may lead to better control of these air conditioners. In this paper, the Artificial Neural Network (ANN) model was developed, trained, and verified. Data from experiments were collected and used in the model. Sensitivity analysis showed that Tamb, Troom, and Gsolar are the major factors affecting heat load. The 3 factors were identified as the main input to the ANN model. There are 17 different model settings used in the study. The settings covered different model configurations such as the transfer function of the output layer, the transfer function of the hidden layer, the number of hidden layers and the number of neurons. It was found that an increasing number of neurons can increase the performance of the ANN model. Nonetheless, it is not conclusive that the increasing number of hidden layers can increase the performance of the model. Finally, it was found that choosing “tansig” as the transfer function of the output layer and “tansig” and “logsig” as transfer function of hidden layers offers the best model performance. Keywords: ANN model, Heat load calculationhttp://www.sciencedirect.com/science/article/pii/S2352484719310108
collection DOAJ
language English
format Article
sources DOAJ
author Apisit Panyafong
Nattawut Neamsorn
Chatchawan Chaichana
spellingShingle Apisit Panyafong
Nattawut Neamsorn
Chatchawan Chaichana
Heat load estimation using Artificial Neural Network
Energy Reports
author_facet Apisit Panyafong
Nattawut Neamsorn
Chatchawan Chaichana
author_sort Apisit Panyafong
title Heat load estimation using Artificial Neural Network
title_short Heat load estimation using Artificial Neural Network
title_full Heat load estimation using Artificial Neural Network
title_fullStr Heat load estimation using Artificial Neural Network
title_full_unstemmed Heat load estimation using Artificial Neural Network
title_sort heat load estimation using artificial neural network
publisher Elsevier
series Energy Reports
issn 2352-4847
publishDate 2020-02-01
description Electricity demand from air conditioners are increasing every year due to increasing ambient air temperature. Several air-conditioned rooms in Thailand currently use low-efficient fixed-speed air conditioners. Prediction of heat load entering air-conditioned rooms may lead to better control of these air conditioners. In this paper, the Artificial Neural Network (ANN) model was developed, trained, and verified. Data from experiments were collected and used in the model. Sensitivity analysis showed that Tamb, Troom, and Gsolar are the major factors affecting heat load. The 3 factors were identified as the main input to the ANN model. There are 17 different model settings used in the study. The settings covered different model configurations such as the transfer function of the output layer, the transfer function of the hidden layer, the number of hidden layers and the number of neurons. It was found that an increasing number of neurons can increase the performance of the ANN model. Nonetheless, it is not conclusive that the increasing number of hidden layers can increase the performance of the model. Finally, it was found that choosing “tansig” as the transfer function of the output layer and “tansig” and “logsig” as transfer function of hidden layers offers the best model performance. Keywords: ANN model, Heat load calculation
url http://www.sciencedirect.com/science/article/pii/S2352484719310108
work_keys_str_mv AT apisitpanyafong heatloadestimationusingartificialneuralnetwork
AT nattawutneamsorn heatloadestimationusingartificialneuralnetwork
AT chatchawanchaichana heatloadestimationusingartificialneuralnetwork
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