Title: XGBoost regression model-based electricity tariff plan recommendation in smart grid environment

Authors: Dayal Kumar Behera; Madhabananda Das; Subhra Swetanisha; Janmenjoy Nayak

Addresses: School of Computer Engineering, Kalinga Institute of Industrial Technology (KIIT) (Deemed to be University), Patia, Bhubaneswar, 751024, Odisha, India ' School of Computer Engineering, Kalinga Institute of Industrial Technology (KIIT) (Deemed to be University), Patia, Bhubaneswar, 751024, Odisha, India ' Department of Computer Science and Engineering, Trident Academy of Technology, Bhubaneswar, 751024, Odisha, India ' Department of Computer Science, Maharaja Sriram Chandra BhanjaDeo University, Baripada, Odisha-757003, India

Abstract: Power system deregulation enables the power industry to provide residential customers to choose retailing electricity plan. This allows competition among retailers or traders and also minimises the energy expenditure with quality of services. We have proposed an XGBoost regression model for electricity tariff plan recommendation. Firstly, proposed regression model with basic statistical features is compared with support vector regression (SVR), decision tree (DT), Bayesian ridge and KNN regression model. Secondly, performance of the proposed model is extensively studied by combining the features from other user-based, item-based and matrix factorisation-based techniques. In this research, dataset shared in the project Smart Grid Smart City (SGSC), Australia is used for conducting experimental analysis. A rating inference approach is designed to infer the choice of electricity consumer for a specific retailing plan. The proposed model achieves better performance as compared to other baseline methods.

Keywords: XGBoost regression model; recommender system; smart grid; power system; electricity tariff plan recommendation.

DOI: 10.1504/IJICA.2022.123223

International Journal of Innovative Computing and Applications, 2022 Vol.13 No.2, pp.79 - 87

Received: 19 Feb 2020
Accepted: 31 May 2020

Published online: 06 Jun 2022 *

Full-text access for editors Full-text access for subscribers Purchase this article Comment on this article