The use of electricity has a significant impact on the environment, energy distribution costs, and energy management since it directly impacts these costs. Long-standing techniques have inherent limits in terms of accuracy and scalability when it comes to predicting power usage. It is now feasible to properly anticipate power use using previous data thanks to improvements in machine learning techniques. In this paper, we provide a machine learning-based method for forecasting power use. In this study, we investigate a number of machine learning techniques, including linear regression, K Nearest Neighbours, XGBOOST, random forest, and artificial neural networks(ANN), to forecast power usage. Using historical electricity use data received fro...
In this paper we present modified Newton’s model (MNM) to model electricity consumption data. A prev...
Energy production and supply are important challenges for civilisation. Renewable energy sources pre...
This research applies machine learning methods to build predictive models of Net Load Imbalance for ...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
The use of machine learning (ML) algorithms for power demand and supply prediction is becoming incre...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
As a known fact, energy usage and demand exponentially rises year after year, hence forth power base...
Now the world is becoming more sophisticated and networked, and a massive amount of data is being ge...
This paper presents research on the application of various machine learning models to predict power ...
The tremendous rise of electrical energy demand worldwide has led to many problems related to effici...
For effective management of power systems in heavy industries, accurate power demand forecasting is ...
The global requirement for electricity is increasing daily with the expansion of infrastructure and ...
Forecasting electricity demand and consumption accurately is critical to the optimal and costeffecti...
The issue of obtaining reliable forecasting methods for electricity consumption has been widely disc...
The unprecedented growth of renewable energy has introduced the negative effect of variability in th...
In this paper we present modified Newton’s model (MNM) to model electricity consumption data. A prev...
Energy production and supply are important challenges for civilisation. Renewable energy sources pre...
This research applies machine learning methods to build predictive models of Net Load Imbalance for ...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
The use of machine learning (ML) algorithms for power demand and supply prediction is becoming incre...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
As a known fact, energy usage and demand exponentially rises year after year, hence forth power base...
Now the world is becoming more sophisticated and networked, and a massive amount of data is being ge...
This paper presents research on the application of various machine learning models to predict power ...
The tremendous rise of electrical energy demand worldwide has led to many problems related to effici...
For effective management of power systems in heavy industries, accurate power demand forecasting is ...
The global requirement for electricity is increasing daily with the expansion of infrastructure and ...
Forecasting electricity demand and consumption accurately is critical to the optimal and costeffecti...
The issue of obtaining reliable forecasting methods for electricity consumption has been widely disc...
The unprecedented growth of renewable energy has introduced the negative effect of variability in th...
In this paper we present modified Newton’s model (MNM) to model electricity consumption data. A prev...
Energy production and supply are important challenges for civilisation. Renewable energy sources pre...
This research applies machine learning methods to build predictive models of Net Load Imbalance for ...