Abstract

Improved performance electricity demand forecast can provide decentralized energy system operators, aggregators, managers, and other stakeholders with essential information for energy resource scheduling, demand response management, and energy market participation. Most previous methodologies have focused on predicting the aggregate amount of electricity demand at national or regional scale and disregarded the electricity demand for small-scale decentralized energy systems (buildings, energy communities, microgrids, local energy internets, etc.), which are emerging in the smart grid context. Furthermore, few research groups have performed attribute selection before training predictive models. This paper proposes a machine learning (ML)-based integrated feature selection approach to obtain the most relevant and nonredundant predictors for accurate short-term electricity demand forecasting in distributed energy systems. In the proposed approach, one of the ML tools- binary genetic algorithm (BGA) is applied for the feature selection process and Gaussian process regression (GPR) is used for measuring the fitness score of the features. In order to validate the effectiveness of the proposed approach, it is applied to various building energy systems located in the Otaniemi area of Espoo, Finland. The findings are compared with those achieved by other feature selection techniques. The proposed approach enhances the quality and efficiency of the predictor selection, with minimal chosen predictors to achieve improved prediction accuracy. It outperforms the other evaluated feature selection methods. Besides, a feedforward artificial neural network (FFANN) model is implemented to evaluate the forecast performance of the selected predictor subset. The model is trained using two-year hourly dataset and tested with another one-year hourly dataset. The obtained results verify that the FFANN forecast model based on the BGA-GPR FS selected training feature subset has achieved an annual MAPE of 1.96%, which is a very acceptable and promising value for electricity demand forecasting in small-scale decentralized energy systems.

Highlights

  • Decentralized energy system operators, aggregators, suppliers, managers or other stakeholders are challenged by several confronts, varying from inadequate electricity supply to increasing consumption

  • This paper proposes a machine learning based hybrid feature selection method to obtain the most relevant and nonredundant features for improved short-term forecasting of electricity demand in decentralized energy systems

  • As far as we have investigated, the binary genetic algorithm (BGA)-Gaussian Process Regression (GPR) based hybrid machine learning approach has never been applied for feature selection problem in the domain of electricity demand forecasting

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Summary

INTRODUCTION

Decentralized energy system operators, aggregators, suppliers, managers or other stakeholders are challenged by several confronts, varying from inadequate electricity supply to increasing consumption. The goal of this paper is to propose and implement a feature selection approach for modeling and forecasting the fluctuating electricity demand in decentralized energy systems in general and buildings in particular. This paper proposes a machine learning based hybrid feature selection method to obtain the most relevant and nonredundant features for improved short-term forecasting of electricity demand in decentralized energy systems. As far as we have investigated, the BGA-GPR based hybrid machine learning approach has never been applied for feature selection problem in the domain of electricity demand forecasting. Assuming an intelligent heuristic algorithm should be the best option to determine the search target; a research problem exists and shall be addressed by replacing the conventional GA with the BGA and hybridizing it with robust fitness evaluation measure (GPR in this paper).

INITIAL POPULATION
FITNESS EVALUATION
VIII. CONCLUSION
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