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Linear Regressor Model for Internet of Things Automated Thermal Conditioning of a Smart Classroom Environment Using Limited dataset

Amiefamonyo, B. F and Anireh, V.I.E and Emmah, V. T (2023) Linear Regressor Model for Internet of Things Automated Thermal Conditioning of a Smart Classroom Environment Using Limited dataset. European Journal of Computer Science and Information Technology, 11 (6). pp. 13-21. ISSN 2054-0957 (Print), 2054-0965 (Online)

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Abstract

This research paper presents a Linear Regressor (LR) modeling approach for automated thermal conditioning of smart spaces in a classroom environment using limited data constraints. Sensitive studies were performed in order to identify the breaking point of the LR model of polynomial-order-of-1 below which it will not be possible to obtain meaningful estimates and controllability actions, considering a range between 5% and 30% limited training data points. Based on several simulation experiments, it was found that the LR breaks at the 10% training data level. This result is valuable for recommender systems that may experience difficulty in obtaining enough primary dataset. Applications that provide early warning signals will also find this study useful.

Item Type: Article
Subjects: T Technology > T Technology (General)
Depositing User: Professor Mark T. Owen
Date Deposited: 28 Nov 2023 01:05
Last Modified: 28 Nov 2023 01:05
URI: https://tudr.org/id/eprint/2392

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