Abstract

Price forecasting (PF) is the primary concern in distributed power generation. This paper presents a novel and improved technique to forecast electricity prices. The data of various power producers, Capacity Purchase Price (CPP), Power Purchase Price (PPP), Tariff rates, and load demand from National Electric Power Regulatory Authority (NEPRA) are considered for MAPE reduction in PF. Eight time-series and auto-regression algorithms are developed for data fetching and setting the objective function. The feed-forward ANFIS based on the ML approach and space vector regression (SVR) is introduced to PF by taking the input from time series and auto-regression (AR) algorithms. Best-feature selection is conducted by adopting the Binary Genetic Algorithm (BGA)-Principal Component Analysis (PCA) approach that ultimately minimizes the complexity and computational time of the model. The proposed integration strategy computes the mean absolute percentage error (MAPE), and the overall improvement percentage is 9.24%, which is valuable in price forecasting of the energy management system (EMS). In the end, EMS based on the Firefly algorithm (FA) has been presented, and by implementing FA, the cost of electricity has been reduced by 21%, 19%, and 20% for building 1, 2, and 3, respectively.

Highlights

  • It is necessary to forecast electricity prices for the Independent System Operator (ISO)and the end-users and marketers

  • energy management system (EMS) based on the Firefly algorithm (FA) has been implemented, and the cost of electricity has been reduced by 21%, 19%, and 20% for building 1, 2, and

  • This study aims to consider the factor of maximizing user comfort, peak-to-average ratio (PAR), and the low cost by considering firefly optimization (FF)

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Summary

Introduction

It is necessary to forecast electricity prices for the Independent System Operator (ISO)and the end-users and marketers. It is necessary to forecast electricity prices for the Independent System Operator (ISO). The profit bidders in the potential electricity market need the future electricity prices in order to earn a good profit; the existing electricity market has made PF more complex as it is highly deregulated and non-linear. Due to the system’s non-linear and unstable behavior, accurate prediction of prices has become more complex. It affects the bidding policies in the electricity market. The AI-based forecasting approach has attracted much attention in recent years. It assures a guaranteed level of accuracy of price estimation compared to unstable variations of dependent or independent variables in the statistical model

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