AC Cooling Time Prediction Using Common Representation Model
The data generated by Air Conditioner (AC) consists mainly of sensor and control data. This paper will use the data generated from 53,528 ACs to predict the AC cooling time. The cooling time is the time taken by the AC to cool to a desired temperature. We have observed certain important issues in th...
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doaj-f5fb2b1484d3464ca8b51ddd402bf1a52021-03-30T03:34:38ZengIEEEIEEE Access2169-35362020-01-01813153413154410.1109/ACCESS.2020.30094679142189AC Cooling Time Prediction Using Common Representation ModelRamasamy Kannan0https://orcid.org/0000-0002-1835-0389Manasij Sur Roy1https://orcid.org/0000-0002-1676-4879Samsung Research and Development Institute India-Bangalore, Bangalore, IndiaSamsung Research and Development Institute India-Bangalore, Bangalore, IndiaThe data generated by Air Conditioner (AC) consists mainly of sensor and control data. This paper will use the data generated from 53,528 ACs to predict the AC cooling time. The cooling time is the time taken by the AC to cool to a desired temperature. We have observed certain important issues in the data gathered from ACs deployed in dynamic real world environments. Poor prediction accuracies are observed for about 76% of the total ACs due to the lack of data regarding the device behavior, AC settings selection behavior and environmental conditions. During the AC operation, it is observed that the user selects only a small subset of the various combinations of the overall possible settings. Due to unavailability of data, Machine Learning (ML) models cannot be generated for new ACs. This leads to a cold start problem. This paper proposes a common AC prediction model that is generated through data shared from multiple connected ACs. Additionally an Auxiliary Task Learning (ATL) based deep learning model will be used for improving prediction accuracy. The proposed solution provides prediction capabilities for all ACs, compared to 24% of ACs supported by individual prediction models.https://ieeexplore.ieee.org/document/9142189/Air conditionerscooling time predictiondeep learningauxiliary task learningAC representation learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ramasamy Kannan Manasij Sur Roy |
spellingShingle |
Ramasamy Kannan Manasij Sur Roy AC Cooling Time Prediction Using Common Representation Model IEEE Access Air conditioners cooling time prediction deep learning auxiliary task learning AC representation learning |
author_facet |
Ramasamy Kannan Manasij Sur Roy |
author_sort |
Ramasamy Kannan |
title |
AC Cooling Time Prediction Using Common Representation Model |
title_short |
AC Cooling Time Prediction Using Common Representation Model |
title_full |
AC Cooling Time Prediction Using Common Representation Model |
title_fullStr |
AC Cooling Time Prediction Using Common Representation Model |
title_full_unstemmed |
AC Cooling Time Prediction Using Common Representation Model |
title_sort |
ac cooling time prediction using common representation model |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2020-01-01 |
description |
The data generated by Air Conditioner (AC) consists mainly of sensor and control data. This paper will use the data generated from 53,528 ACs to predict the AC cooling time. The cooling time is the time taken by the AC to cool to a desired temperature. We have observed certain important issues in the data gathered from ACs deployed in dynamic real world environments. Poor prediction accuracies are observed for about 76% of the total ACs due to the lack of data regarding the device behavior, AC settings selection behavior and environmental conditions. During the AC operation, it is observed that the user selects only a small subset of the various combinations of the overall possible settings. Due to unavailability of data, Machine Learning (ML) models cannot be generated for new ACs. This leads to a cold start problem. This paper proposes a common AC prediction model that is generated through data shared from multiple connected ACs. Additionally an Auxiliary Task Learning (ATL) based deep learning model will be used for improving prediction accuracy. The proposed solution provides prediction capabilities for all ACs, compared to 24% of ACs supported by individual prediction models. |
topic |
Air conditioners cooling time prediction deep learning auxiliary task learning AC representation learning |
url |
https://ieeexplore.ieee.org/document/9142189/ |
work_keys_str_mv |
AT ramasamykannan accoolingtimepredictionusingcommonrepresentationmodel AT manasijsurroy accoolingtimepredictionusingcommonrepresentationmodel |
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1724183247154315264 |