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Investigation of Performance of Electric Load Power Forecasting in Multiple Time Horizons With New Architecture Realized in Multivariate Linear Regression and Feed-Forward Neural Network Techniques

M Vetri Selvi, Sukumar Mishra

2020IEEE Transactions on Industry Applications47 citationsDOI

Abstract

A new multiple parallel input and parallel output architecture-based models are developed for forecasting electric load power consumption. Attention was paid toward the improvement of the accuracy of forecasting using this new architecture built-in by us, as compared to others in the latest literature. The models have an ability to forecast daily load profiles with a lead time of one to seven days. Both multivariate linear regression and feed-forward neural network techniques have been chosen for comparative performance study and analysis. The real-time data used for this research work were collected from Tata Power Delhi Distribution Limited, Delhi, India. Based on the performance criteria provided in the literature, each model is analyzed and the results are presented for two different lead times, i.e., day-ahead and week-ahead only.

Topics & Concepts

Multivariate statisticsArtificial neural networkBayesian multivariate linear regressionLinear regressionComputer scienceElectric power systemFeedforward neural networkFeed forwardElectric powerPower (physics)EngineeringMachine learningControl engineeringPhysicsQuantum mechanicsEnergy Load and Power ForecastingStock Market Forecasting MethodsForecasting Techniques and Applications
Investigation of Performance of Electric Load Power Forecasting in Multiple Time Horizons With New Architecture Realized in Multivariate Linear Regression and Feed-Forward Neural Network Techniques | Litcius