OPTIMIZING INDOOR THERMAL COMFORT PREDICTION USING MACHINE LEARNING MODELS
МАШИНАЛЫҚ ОҚЫТУ МОДЕЛЬДЕРІН ПАЙДАЛАНУ АРҚЫЛЫ КЕҢІСТІКТЕРДЕГІ ЖЫЛУЛЫҚ-ЖАЙЛЫЛЫҚТЫ БОЛЖАУДЫ ОҢТАЙЛАНДЫРУ
ОПТИМИЗАЦИЯ ПРОГНОЗИРОВАНИЯ ТЕПЛОВОГО КОМФОРТА В ПОМЕЩЕНИИ С ИСПОЛЬЗОВАНИЕМ МОДЕЛЕЙ МАШИННОГО ОБУЧЕНИЯ
Assymkhan N. Momynkul N. Kartbayev A.
2025Kazakh-British Technical University
Herald of the Kazakh British Technical UNiversity
2025#22Issue 359 - 74 pp.
Predicting thermal comfort in indoor environments is important for improving residents’ well-being, productivity, and energy efficiency. This study explores machine learning approaches, specifically Support Vector Machines (SVM) and Random Forest (RF), to improve thermal comfort prediction. Traditional methods rely on subjective assessments, whereas our approach leverages data-driven models trained on large thermal comfort datasets. The dataset underwent rigorous preprocessing, with 80% used for training and 20% for testing. The integration of the Internet of Things (IoT) further enhances predictive accuracy by enabling adaptive control in smart building systems. A comparative analysis of SVM and RF reveals that while both models effectively capture the complex interactions between environmental parameters and resident comfort, RF demonstrates greater stability and higher accuracy in most scenarios. The paper proposes potential strategies for integrating additional predictive features to further enhance model accuracy, demonstrating the advancement of machine learning in optimizing indoor comfort.
energy management , heating systems , machine learning , random forest , support vector machine , thermal comfort
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Kazakh-British Technical University, Almaty, Kazakhstan
Kazakh-British Technical University
10 лет помогаем публиковать статьи Международный издатель
Книга Публикация научной статьи Волощук 2026 Book Publication of a scientific article 2026