Seasonal fluctuations in electricity consumption, an uneven load of supply lines reduce not only the indicator of energy efficiency of networks but also contribute to a decrease in the service life of elements of power supply systems. Revealing the patterns of such fluctuations makes it possible to build models of power consumption, predict its dynamics, which in general will contribute to ensuring the energy efficiency of urban electrical networks and increasing the reliability of power supply systems. A computational, computer and neural network model is proposed that allows to increase the accuracy of the forecast of electricity consumption by household consumers. Based on the developed mathematical model, taking into account the obtaine...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
Abstract: Short-term load forecasting (STLF) plays an essential role in the economic system and save...
In this paper the development of neural network based fuzzy inference system for electricity consump...
International audienceRecently, there has been a significant emphasis on the forecasting of the elec...
International audienceRecently, there has been a significant emphasis on the forecasting of the elec...
The paper proposes the solution to the problem of forecasting the power load for various gas industr...
58-66Electricity consumption is increasing on a daily basis, and consequently, the need for its cont...
This paper shows the electrical load forecast problem solution for gas industry enterprises, taking ...
This paper presents an artificial neural network (ANN) approach to electric energy consumption (EEC)...
Making forecasts for the development of a given process over time, which depends on many factors, is...
This paper proposes a step-by-step technique for combining basic models that forecast electricity co...
The tremendous rise of electrical energy demand worldwide has led to many problems related to effici...
Power systems require the continuous balance of energy supply and demand for their appropriate funct...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
Power systems require the continuous balance of energy supply and demand for their appropriate funct...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
Abstract: Short-term load forecasting (STLF) plays an essential role in the economic system and save...
In this paper the development of neural network based fuzzy inference system for electricity consump...
International audienceRecently, there has been a significant emphasis on the forecasting of the elec...
International audienceRecently, there has been a significant emphasis on the forecasting of the elec...
The paper proposes the solution to the problem of forecasting the power load for various gas industr...
58-66Electricity consumption is increasing on a daily basis, and consequently, the need for its cont...
This paper shows the electrical load forecast problem solution for gas industry enterprises, taking ...
This paper presents an artificial neural network (ANN) approach to electric energy consumption (EEC)...
Making forecasts for the development of a given process over time, which depends on many factors, is...
This paper proposes a step-by-step technique for combining basic models that forecast electricity co...
The tremendous rise of electrical energy demand worldwide has led to many problems related to effici...
Power systems require the continuous balance of energy supply and demand for their appropriate funct...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
Power systems require the continuous balance of energy supply and demand for their appropriate funct...
The paper illustrates a combined approach based on unsupervised and supervised neural networks for t...
Abstract: Short-term load forecasting (STLF) plays an essential role in the economic system and save...
In this paper the development of neural network based fuzzy inference system for electricity consump...