Electricity is a very crucial needed to people nowadays, even more we could say that electricity is being primary needed for people. The demand of elec�tric power from consumer is not fixed by time to time. While the electrical load can not be stored on a large scale, but it should be available when people needed it. Many forecasting methods were developed to optimize the result. Artificial Neural Network (ANN) is one of the methods which are developed to get result of forecast near to the actual data. This thesis implemented artificial neural network Resilient Propagation to predict the consumption of electrical load. Used data for forecast�ing is daily data from July 2015 to August 2015. Prediction result of the smallest MSE 0,0006...
Presently, electrical energy consumption continues to increase from year to year. Therefore, a short...
Accurate electricity demand forecasts are critical for daily operations planning. They influence man...
A Dissertation submitted to the Department of Electrical Engineering for the MScNeural network techn...
Electric energy is one of the tools to support the welfare of society. Their population grow and the...
Forecasting the consumption of electric power on a daily basis allows considerable money savings for...
Electric power is one of the main needs of society today, ranging from household consumers to indust...
Short-term electrical load prediction is one way that can be used to generate and distribute electri...
Short-term electrical load prediction is one way that can be used to generate and distribute electri...
The study is about to forecast the electricity demand values of UTP. The electricity profile of GDC...
LONG-TERM LOAD FORECASTING ON THE JAVA-MADURA-BALI ELECTRICITY SYSTEM USING ARTIFICIAL NEURAL NETWOR...
Load forecasting remains as an important activity for the power systems industry, being a critical s...
The development of population from time to time is increased and the need for electricity consumptio...
International audienceThe increasing global demand for electrical energy coupled with rise in cost o...
Excessive use of electronic devices in household and industry has made the demand of nation’s electr...
With the deregulation of electrical energy industries, a prior estimated value of electrical power l...
Presently, electrical energy consumption continues to increase from year to year. Therefore, a short...
Accurate electricity demand forecasts are critical for daily operations planning. They influence man...
A Dissertation submitted to the Department of Electrical Engineering for the MScNeural network techn...
Electric energy is one of the tools to support the welfare of society. Their population grow and the...
Forecasting the consumption of electric power on a daily basis allows considerable money savings for...
Electric power is one of the main needs of society today, ranging from household consumers to indust...
Short-term electrical load prediction is one way that can be used to generate and distribute electri...
Short-term electrical load prediction is one way that can be used to generate and distribute electri...
The study is about to forecast the electricity demand values of UTP. The electricity profile of GDC...
LONG-TERM LOAD FORECASTING ON THE JAVA-MADURA-BALI ELECTRICITY SYSTEM USING ARTIFICIAL NEURAL NETWOR...
Load forecasting remains as an important activity for the power systems industry, being a critical s...
The development of population from time to time is increased and the need for electricity consumptio...
International audienceThe increasing global demand for electrical energy coupled with rise in cost o...
Excessive use of electronic devices in household and industry has made the demand of nation’s electr...
With the deregulation of electrical energy industries, a prior estimated value of electrical power l...
Presently, electrical energy consumption continues to increase from year to year. Therefore, a short...
Accurate electricity demand forecasts are critical for daily operations planning. They influence man...
A Dissertation submitted to the Department of Electrical Engineering for the MScNeural network techn...