Alam, Sahirul and Sari, Risa Mahardika and Alfian, Ganjar and Farooq, Umar (2024) Room Occupancy Detection Based on Random Forest with Timestamp Features and ANOVA Feature Selection Method. Journal of Computing Science and Engineering, 18 (1). 10 -18. ISSN 19764677
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Abstract
To improve energy efficiency, understanding occupant behavior is crucial for adaptive temperature control and optimal electronic device usage. Our study introduces a room occupancy detection system using machine learning and Internet-of-Things sensors to predict occupant behavior patterns. Initially, indoor IoT sensor devices are installed to observe occupant behavior, and datasets are generated from sensor data, including temperature, humidity, light, and CO2 levels, in both occupied and vacant rooms. The collected dataset undergoes analysis through a machine learning-based model designed to classify room occupancy. First, the timestamp features, extracted from date-time data, such as time of day and part of the day, are extracted. ANOVA feature selection is applied to identify five crucial features. Ultimately, the random forest model is employed to classify room occupancy based on the selected features. Results indicate that our proposed model significantly outperforms other models—achieving improvements of up to 99.713, 99.467, 99.676, 99.676, and 99.571 in accuracy, precision, recall, specificity, and F1-score, respectively. The trained model holds potential for integration into web-based systems for real-time applications. This predictive model is poised to contribute to the optimization of electronic device efficiency within a room or building by continuously monitoring real-time room conditions. Category: Information Retrieval / Web © 2024. The Korean Institute of Information Scientists and Engineers. All Rights Reserved.
Item Type: | Article |
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Additional Information: | Cited by: 0 |
Uncontrolled Keywords: | Classification (of information); Energy efficiency; Feature Selection; Forestry; Internet of things; Real time systems; Thermoelectric equipment; Websites; Electronics devices; Feature selection methods; Features selection; IoT; Machine-learning; Occupancy detections; Occupants behaviours; Random forests; Time-stamp; Web-based system; Analysis of variance (ANOVA) |
Subjects: | T Technology > TK Electrical engineering. Electronics Nuclear engineering |
Divisions: | Vocational School |
Depositing User: | Rita Yulianti Yulianti |
Date Deposited: | 12 Feb 2025 00:56 |
Last Modified: | 12 Feb 2025 00:56 |
URI: | https://ir.lib.ugm.ac.id/id/eprint/13685 |