The prediction of energy consumption plays a significant role in energy conservation and reducing the cost of power generation, to improve energy sustainability and economic stability. Current studies show an increased interest in the application of Machine Learning algorithms to forecast energy utilisation in smart homes. The performance of these Machine Learning algorithms is evaluated using accuracy algorithms. The process of manually selecting best-performing Machine Learning algorithms is still very challenging for data analysts and decision makers because the algorithms might not work well in a different use case or data-set. To address this, we propose a decision algorithm model using machine learning based data mining and picture fu...
Nonintrusive Load Monitoring (NILM) can be used to disaggregate household energyusage collected from...
Machine learning models have proven to be reliable methods in the forecasting of energy use in comme...
The international community has largely recognized that the Earth's climate is changing. Mitigating ...
Energy efficiency in modern homes has recently become a significant issue due to the emergence of sm...
Now the world is becoming more sophisticated and networked, and a massive amount of data is being ge...
The correct analysis of energy consumption by home appliances for future energy management in reside...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
The increasing demand for energy utilization in smart homes has led to the exploration of machine le...
Forecasting future power consumption in residential buildings is important to optimize the power gri...
In the last few years, the expanding energy utilization has imposed the formation of solutions for s...
International audienceEnergy prediction is in high importance for smart homes and smart cities, sinc...
Due to the transition toward the Internet of Everything (IOE), the prediction of energy consumed by ...
The ability to predict future energy consumption is very important for energy distribution companies...
Energy consumption is increasing daily, and with that comes a continuous increase in energy costs. P...
Nonintrusive Load Monitoring (NILM) can be used to disaggregate household energyusage collected from...
Machine learning models have proven to be reliable methods in the forecasting of energy use in comme...
The international community has largely recognized that the Earth's climate is changing. Mitigating ...
Energy efficiency in modern homes has recently become a significant issue due to the emergence of sm...
Now the world is becoming more sophisticated and networked, and a massive amount of data is being ge...
The correct analysis of energy consumption by home appliances for future energy management in reside...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to t...
The increasing demand for energy utilization in smart homes has led to the exploration of machine le...
Forecasting future power consumption in residential buildings is important to optimize the power gri...
In the last few years, the expanding energy utilization has imposed the formation of solutions for s...
International audienceEnergy prediction is in high importance for smart homes and smart cities, sinc...
Due to the transition toward the Internet of Everything (IOE), the prediction of energy consumed by ...
The ability to predict future energy consumption is very important for energy distribution companies...
Energy consumption is increasing daily, and with that comes a continuous increase in energy costs. P...
Nonintrusive Load Monitoring (NILM) can be used to disaggregate household energyusage collected from...
Machine learning models have proven to be reliable methods in the forecasting of energy use in comme...
The international community has largely recognized that the Earth's climate is changing. Mitigating ...