Application of machine learning models to predict energy consumption in smart home systems
The article investigates the application of machine learning methods to forecast energy consumption in the con text of smart home systems. The research is based on the internationally renowned PSML (Power System Ma chine Learning) time series dataset, which includes information on electricity consum...
Збережено в:
| Дата: | 2025 |
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| Автори: | , |
| Формат: | Стаття |
| Мова: | Ukrainian |
| Опубліковано: |
PROBLEMS IN PROGRAMMING
2025
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| Онлайн доступ: | https://pp.isofts.kiev.ua/index.php/ojs1/article/view/856 |
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| Назва журналу: | Problems in programming |
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Репозитарії
Problems in programming| Резюме: | The article investigates the application of machine learning methods to forecast energy consumption in the con text of smart home systems. The research is based on the internationally renowned PSML (Power System Ma chine Learning) time series dataset, which includes information on electricity consumption, generation, balanc ing and load forecasting in the context of a decarbonized energy network. The PSML dataset is characterized by high detail and covers different time scales - from hourly to daily values, which allows assessing both short-term and medium-term trends in energy consumption. The paper provides a comparative analysis of classical and modern machine learning methods, including regres sion, classification and clustering, for load forecasting and identifying patterns in electricity consumption in the domestic environment. Particular attention is paid to optimizing models for working with big data, processing gaps and anomalies, as well as integrating forecasts into automatic smart home energy management systems.Prombles in programming 2025; 3: 29-38 |
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