Gaussian process regression‐based load forecasting model

Author:

Yadav Anamika1,Bareth Rashmi1,Kochar Matushree1,Pazoki Mohammad2ORCID,Sehiemy Ragab A. El3

Affiliation:

1. Department of Electrical Engineering National Institute of Technology Raipur Raipur India

2. School of Engineering, Damghan University Damghan Iran

3. Electrical Engineering Department Faculty of Engineering, Kafrelsheikh University Kafrelsheikh Egypt

Abstract

AbstractIn this paper, Gaussian Process Regression (GPR)‐based models which use the Bayesian approach to regression analysis problem such as load forecasting (LF) are proposed. The GPR is a non‐parametric kernel‐based learning method having the ability to provide correct predictions with uncertainty in measurements. The proposed model provides an hourly and monthly load forecast for an Australian city and four Indian cities in the Maharashtra state. Twelve GPR models are trained with historical datasets including hourly load and environmental data. To evaluate the trained model, the actual and predicted load demand curve is plotted and mean average percentage error (MAPE) is calculated corresponding to different kernel functions of the GPR model. To the best of the author's knowledge, the prediction of load demand using GPR for Indian cities of Maharashtra state has been made for the first time. The calculated MAPE in LF is 0.15% for Australia and 0.002%, 0.209%, 0.077%, and 0.140% for Indian cities viz. Nasik, Bhusawal, Kolhapur, and Aurangabad, respectively. The test results illustrate that minimum MAPE in load prediction is obtained using the proposed model that is GPR with ‘Exponential’ kernel functions. Furthermore, the comparative analysis with the existing approaches confirms the dominance of the proposed model.

Publisher

Institution of Engineering and Technology (IET)

Subject

Electrical and Electronic Engineering,Energy Engineering and Power Technology,Control and Systems Engineering

Reference40 articles.

1. Short-term load forecasting

2. Analysis and evaluation of five short-term load forecasting techniques

3. A novel adequate bi-level reactive power planning strategy

4. Static transmission expansion planning for realistic networks in Egypt

5. Lee K.Y. Cha Y.T. Ku C.C.:A study on neural networks for short‐term load forecasting. In:Proceedings of the First International Forum on Applications of Neural Networks to Power Systems IEEE pp.26–30(1991)

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