Preprint has been published in a journal as an article
DOI of the published article https://doi.org/10.1109/TPEC51183.2021.9384927
Preprint / Version 1

Fuzzified PaCcET for Economic-Emission Scheduling of Microgrids

##article.authors##

  • Mukesh Gautam University of Nevada, Reno
  • Hanif Livani University of Nevada, Reno
  • Mohammed Ben-Idris University of Nevada, Reno
  • Vahid Sarfi Hitachi ABB Power Grids

DOI:

https://doi.org/10.31224/2784

Keywords:

economic-emission scheduling, fuzzy logic controller, Multi-Objective Optimization, distributed energy resources, PaCcET, emission, economic dispatch, NSGA-II

Abstract

In this paper, a new approach is proposed to solve a multi-objective economic-emission scheduling problem in microgrids (MGs) by simultaneously minimizing the energy and emission costs of the MG with various distributed energy resources (DERs). The proposed approach is an extension of a computationally effective multiobjective optimization technique, Pareto concavity elimination transformation (PaCcET). The proposed approach, referred to as Fuzzified-PaCcET, employs a fuzzy logic controller to dynamically revise crossover and mutation rates in the original PaCcET leading to the faster convergence of the solution. The proposed approach finds the best Pareto front, also referred to as a Non-dominated set (NDS) of solutions, instead of finding a single optimal solution. In order to find the solutions on concave areas of the Pareto front, an iterative objective space transformation is performed in the PaCcET algorithm to allow a linear combination of objective functions (in the transformed objective space). The proposed Fuzzified-PaCcET-based scheduling is implemented on a MG with various dispatchable and non-dispatchable DERs to find the set of optimal solutions according to the total fuel cost of DERs, as well as the most optimum environmental cost. In order to extract the best compromise solution (BCS) among NDS of solutions, a fuzzy-based method is implemented. The comparison of the simulation results of the Fuzzified-PaCcET with that of PaCcET shows that Fuzzified-PaCcET can generate better solution with less computational burden.

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Posted

2023-01-14