Abstract

The growing energy demand around the world has increased the usage of renewable energy sources (RES) such as photovoltaic and wind energies. The combination of traditional power systems and RESs has generated diverse problems due especially to the stochastic nature of RESs. Microgrids (MG) arise to address these types of problems and to increase the penetration of RES to the utility network. A microgrid includes an energy management system (EMS) to operate its components and energy sources efficiently. The objectives pursued by the EMS are usually economically related to minimizing the operating costs of the MG or maximizing its income. However, due to new regulations of the network operators, a new objective related to the minimization of power peaks and fluctuations in the power profile exchanged with the utility network has taken great interest in recent years. In this regard, EMSs based on off-line trained fuzzy logic control (FLC) have been proposed as an alternative approach to those based on on-line optimization mixed-integer linear (or nonlinear) programming to reduce computational efforts. However, the procedure to adjust the FLC parameters has been barely addressed. This parameter adjustment is an optimization problem itself that can be formulated in terms of a cost/objective function and is susceptible to being solved by metaheuristic nature-inspired algorithms. In particular, this paper evaluates a methodology for adjusting the FLC parameters of the EMS of a residential microgrid that aims to minimize the power peaks and fluctuations on the power profile exchanged with the utility network through two nature-inspired algorithms, namely particle swarm optimization and differential evolution. The methodology is based on the definition of a cost function to be optimized. Numerical simulations on a specific microgrid example are presented to compare and evaluate the performances of these algorithms, also including a comparison with other ones addressed in previous works such as the Cuckoo search approach. These simulations are further used to extract useful conclusions for the FLC parameters adjustment for off-line-trained EMS based designs.

Highlights

  • The growing energy demand in the industrial, commercial, and residential sectors around the world has significantly increased energy consumption during the last decades.The total primary energy supply, or the energy available in nature before being converted or transformed, has increased from 6.1 billion tons of oil equivalent in 1973 to 13.7 billion tons in 2016 [1]

  • A microgrid is a low-voltage distribution network consisting of loads, distributed generation elements, and energy storage systems (ESS), which can be connected to the mains at a single point of common coupling (PCC)

  • This approach is applied to the energy management system (EMS) of a residential grid-connected electro-thermal microgrid, improving its performance in terms of smoothing the power profile exchanged with the utility network

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Summary

A Comparison of Fuzzy-Based Energy Management Systems

Diego Arcos-Aviles 1,2, * , Diego Pacheco 1,2 , Daniela Pereira 1,2 , Gabriel Garcia-Gutierrez 1,2 , Enrique V.

Introduction
Structure and Operation of the Grid-Connected Microgrid
Microgrid Structure
Microgrid Operation in Grid-Connected Mode
Fitness Function
Optimization Matrix and Search Space
Particle Swarm Optimization Algorithm
Differential Evolution Algorithm
Fuzzy Logic Control Parameters Comparison
Energy Management System Performance Comparison
Conclusions
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