Abstract

In this paper two reconfiguration methodologies for three-phase electric power distribution systems based on multi-objective optimization algorithms are developed in order to simultaneously optimize two objective functions, (1) power losses and (2) three-phase unbalanced voltage minimization. The proposed optimization involves only radial topology configurations which is the most common configuration in electric distribution systems. The formulation of the problem considers the radiality as a constraint, increasing the computational complexity. The Prim and Kruskal algorithms are tested to fix infeasible configurations. In distribution systems, the three-phase unbalanced voltage and power losses limit the power supply to the loads and may even cause overheating in distribution lines, transformers and other equipment. An alternative to solve this problem is through a reconfiguration process, by opening and/or closing switches altering the distribution system configuration under operation. Hence, in this work the three-phase unbalanced voltage and power losses in radial distribution systems are addressed as a multi-objective optimization problem, firstly, using a method based on weighted sum; and, secondly, implementing NSGA-II algorithm. An example of distribution system is presented to prove the effectiveness of the proposed method.

Highlights

  • The power distribution system reconfiguration consists in altering the system topological structure by opening and closing some switching devices

  • In order to test the performance of both approaches, this paper proposes, first, to apply a Genetic Algorithm (GA) using the weighted sum method and reformulate the multi-objective problem into a single objective problem, applying a Multi-Objective Evolutionary Algorithms (MOEAs) to solve the same multi-objective problems for optimal distribution system reconfiguration

  • Considering standards used by utilities worldwide, as [32, 33], this paper implements the voltage unbalance factor (VUF) as the voltage unbalance index, which is the ratio between negative-sequence and positive-sequence voltage [34]

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Summary

Introduction

The power distribution system reconfiguration consists in altering the system topological structure by opening and closing some switching devices. MOEAs seem suitable to solve multi-objective optimization problems, because they deal simultaneously with a set of feasible solutions [9] This allows to find several members of the Pareto optimal set in a single run of the algorithm, instead of having to perform a serie of separate runs, as needed when using weighted sum. In order to test the performance of both approaches, this paper proposes, first, to apply a Genetic Algorithm (GA) using the weighted sum method and reformulate the multi-objective problem into a single objective problem, applying a MOEA to solve the same multi-objective problems for optimal distribution system reconfiguration. The system loads are altered to test the algorithms in an unbalanced system, and the system is extended to verify the efficiency of the proposed methods in larger unbalanced systems

Mathematical Model
Shunt Components
Three-Phase Power Flow
Problem Formulation
Unbalanced Voltage Minimization
Constraints
Genetic Algorithm in Distribution System Reconfiguration
Genetic Algorithm Parameters
Codification
Initial population
Fitness Evaluation
Operators
Stopping Condition
Multi-objective reconfiguration problem for GAWS
Yes Print Results
Multi-objective reconfiguration problem for NSGA-II
Result Assessment
Topology correction
Kruskal and Prim algorithms
Algorithm Comparison
Study Cases
10 Generations 20 Generations 50 Generations 100 Generations
Unbalanced distribution system
Application of NSGA-II
GAWS for the 66-bus system
NSGA-II for the 66-bus system
Comparison of algorithms
Conclusion and Future Work

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