A Platform Independent Web-Application for Short-Term Electric Power Load Forecasting on a 33/11 kV Substation Using Regression Model

Venkataramana Veeramsetty, Gudelli Sushma Vaishnavi, Modem Sai Pavan Kumar, Prabhu Kiran, Nagula Sumanth, Potharaboina Prasanna, Surender Reddy Salkuti

A Platform Independent Web-Application for Short-Term Electric Power Load Forecasting on a 33/11 kV Substation Using Regression Model

Číslo: 4/2022
Periodikum: Advances in Electrical and Electronic Engineering
DOI: 10.15598/aeee.v20i4.4561

Klíčová slova: Day ahead forecasting; hourly ahead forecasting; linear regression model; load forecasting; web application.

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Anotace: Short-term electric power load forecasting is a critical and essential task for utilities of the electric power industry for proper energy trading and that enable the independent system operator to operate the network without any technical and economical issues. In this paper, machine learning model such as linear regression model is used to forecast the active power load one hour and one day ahead. Real time active power load data to train and test the machine learning model is collected from a 33/11 kV substation located in Telangana State, India. Based on the simulation results, it is observed that linear regression model can forecast the load with less mean absolute error i.e. 0.042 with training data and 0.045 with testing data in comparison with support vector regressor model for an hour ahead operation. Whereas in the case of the day ahead operation, linear regression model can forecast the load with less mean absolute error i.e. 0.055 with training data and 0.057 with testing data in comparison with support vector regressor model. A platform independent web application is developed to help the operators of the 33/11 kV substation which is located in Godishala, Telangana State, India.