Abstract

In the MicroGrid environment, the high penetration of uncertain energy sources such as solar Photovoltaics (PVs), Energy Storage Systems (ESSs), Demand Response (DR) programs, Vehicles to Grid (V2G or G2V) and Electricity Markets make the Energy Resource Management (ERM) problem highly complex. All such complexities should be addressed while maximizing income and minimizing the total operating costs of aggregators that accumulate all types of available energy resources from the MicroGrid system. Due to the presence of mixed-integer, discrete variables and non-linear network constraints, it is sometimes very difficult to solve such problem using traditional optimization methods. This paper proposes a new metaheuristic optimization technique entitled the “Enhanced Velocity Differential Evolutionary Particle Swarm Optimization” (EVDEPSO) algorithm to tackle the ERM problem. Its key feature is the updation of the Velocity by the terms named as Enhanced Velocity, Cooperation and Stochastic Uni-Random Distribution and position by the term Deceleration Factor. The performance of the proposed method is measured by a case study comprises of 100 scenarios of a 25-bus MicroGrid with high penetration of aforementioned energy sources. IEEE Computational Intelligence Society organized the competition on the above mentioned problem, in which EVDEPSO secured a second rank. The results of EVDEPSO are compared with the competition participated optimization algorithms. It also compared with well-known optimization algorithms such as Variable Neighborhood Search and Differential Evolutionary Particle Swarm Optimization. The comparison results show that the performance of EVDEPSO is superior in terms of the Ranking Index (R.I) and Average Ranking Index (A.R.I) as compared to the aforementioned algorithms. For effective comparative analysis of algorithms, standard statistical test named as One-Way ANOVA and Tukey Test is used. The results of this test also prove the effectiveness of EVDEPSO algorithm as compared to all tested algorithms.

Highlights

  • In a microgrid environment, the increasing penetration of Distributed Energy Resources (DERs), including renewable resources such as photovoltaic, V2G (Vehicle to Grid), Energy Storage Systems (ESSs), Demand Response programs (DR) and the electricity market endanger the operation of the distribution networks due to its excessive fluctuating nature

  • CASE STUDY AND RESULTS The distribution network used in this case study is a real network of a residential area in Portugal

  • The network comprises 24 underground lines connected to the main grid via a MV / LV transformer at bus 1

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Summary

Introduction

The increasing penetration of Distributed Energy Resources (DERs), including renewable resources such as photovoltaic, V2G (Vehicle to Grid), Energy Storage Systems (ESSs), Demand Response programs (DR) and the electricity market endanger the operation of the distribution networks due to its excessive fluctuating nature. The difficulty of DERs management considered in this paper is a massive integrative problem aimed at maximizing aggregator revenue by minimizing the total operating cost of DERs by taking into account the uncertainties related to solar generation, load demand, electric vehicle travel scheduling and market price variations. The integration of the uncertainties transforms the ERM problem into a Mix-integer nonlinear problem (MINLP) [1] This type of problem is very difficult to solve using a deterministic technique, because it may take several hours to determine the optimal scheduling for these huge dimensions and complex problems. In solving an ERM problem with uncertainties, the energy aggregator aims to find solutions that are near optimal in terms of operating costs and as low as sensitive to parameter variations. Many metaheuristic algorithms have been widely used to solve real-world optimization problems with uncertainty [3]

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