Abstract

Compared with a large power grid, a microgrid electric load (MEL) has the characteristics of strong nonlinearity, multiple factors, and large fluctuation, which lead to it being difficult to receive more accurate forecasting performances. To solve the abovementioned characteristics of a MEL time series, the least squares support vector machine (LS-SVR) hybridizing with meta-heuristic algorithms is applied to simulate the nonlinear system of a MEL time series. As it is known that the fruit fly optimization algorithm (FOA) has several embedded drawbacks that lead to problems, this paper applies a quantum computing mechanism (QCM) to empower each fruit fly to possess quantum behavior during the searching processes, i.e., a QFOA algorithm. Eventually, the cat chaotic mapping function is introduced into the QFOA algorithm, namely CQFOA, to implement the chaotic global perturbation strategy to help fruit flies to escape from the local optima while the population’s diversity is poor. Finally, a new MEL forecasting method, namely the LS-SVR-CQFOA model, is established by hybridizing the LS-SVR model with CQFOA. The experimental results illustrate that, in three datasets, the proposed LS-SVR-CQFOA model is superior to other alternative models, including BPNN (back-propagation neural networks), LS-SVR-CQPSO (LS-SVR with chaotic quantum particle swarm optimization algorithm), LS-SVR-CQTS (LS-SVR with chaotic quantum tabu search algorithm), LS-SVR-CQGA (LS-SVR with chaotic quantum genetic algorithm), LS-SVR-CQBA (LS-SVR with chaotic quantum bat algorithm), LS-SVR-FOA, and LS-SVR-QFOA models, in terms of forecasting accuracy indexes. In addition, it passes the significance test at a 97.5% confidence level.

Highlights

  • Introductionmicrogrid electric load (MEL) forecasting is the basis of microgrid operation scheduling and energy management

  • Considering the CQPSO, CQTS, and CQGA algorithms have been used to determine the parameters of an support vector regression (SVR)-based load forecasting model in [36,37,38,39], those existing algorithms are hybridized with an least squares support vector machine (LS-SVR) model to provide forecasting values to compare with the proposed model here

  • Hybridized with chaotic quantum Tabu search algorithm [37]), LS-SVR-CQGA (LS-SVR hybridized with chaotic quantum genetic algorithm [38]), and LS-SVR-CQBA (LS-SVR hybridized with chaotic quantum bat algorithm [39]), in order to compare the forecasting performance of LS-SVR-based models comprehensively, this article selects back-propagation neural network (BPNN) method as a contrast model

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Summary

Introduction

MEL forecasting is the basis of microgrid operation scheduling and energy management. It is an important prerequisite for the intelligent management of distributed energy. The forecasting performance would directly affect the microgrid system’s energy trading, power supply planning, and power supply quality. The MEL forecasting accuracy is influenced by the mathematical model, and by the associated historical dataset. Compared with the large power grid, microgrid electric load (MEL) has the characteristics of strong nonlinearity, multiple factors, Energies 2018, 11, 2226; doi:10.3390/en11092226 www.mdpi.com/journal/energies

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