SOM-Guided Evolutionary Search for Solving MinMax Multiple-TSP

07/27/2019
by   Vlad-Ioan Lupoaie, et al.
0

Multiple-TSP, also abbreviated in the literature as mTSP, is an extension of the Traveling Salesman Problem that lies at the core of many variants of the Vehicle Routing problem of great practical importance. The current paper develops and experiments with Self Organizing Maps, Evolutionary Algorithms and Ant Colony Systems to tackle the MinMax formulation of the Single-Depot Multiple-TSP. Hybridization between the neural network approach and the two meta-heuristics shows to bring significant improvements, outperforming results reported in the literature on a set of problem instances taken from TSPLIB.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/04/2017

Drift Analysis

Drift analysis is one of the major tools for analysing evolutionary algo...
research
04/14/2016

A Discrete Firefly Algorithm to Solve a Rich Vehicle Routing Problem Modelling a Newspaper Distribution System with Recycling Policy

A real-world newspaper distribution problem with recycling policy is tac...
research
11/16/2006

Evolutionary Optimization in an Algorithmic Setting

Evolutionary processes proved very useful for solving optimization probl...
research
02/14/2006

On the utility of the multimodal problem generator for assessing the performance of Evolutionary Algorithms

This paper looks in detail at how an evolutionary algorithm attempts to ...
research
11/25/2022

Combining Constructive and Perturbative Deep Learning Algorithms for the Capacitated Vehicle Routing Problem

The Capacitated Vehicle Routing Problem is a well-known NP-hard problem ...
research
01/10/2020

A Comprehensive Survey on the Ambulance Routing and Location Problems

In this research, an extensive literature review was performed on the re...
research
07/03/2012

Meme as Building Block for Evolutionary Optimization of Problem Instances

A significantly under-explored area of evolutionary optimization in the ...

Please sign up or login with your details

Forgot password? Click here to reset