DocumentCode
2833385
Title
Improving ant colony optimization performance through prediction of best termination condition
Author
Veluscek, M. ; Kalganova, T. ; Broomhead, P.
Author_Institution
Sch. of Eng. & Design, Brunel Univ., Uxbridge, UK
fYear
2015
fDate
17-19 March 2015
Firstpage
2394
Lastpage
2402
Abstract
The Ant Colony System (ACS) is a well-known bio-inspired optimization algorithm which has been successfully applied to several NP-hard optimization problems, including transportation network optimization. This paper introduces a method to improve the computational time required by the algorithm in finding high quality solutions. The purpose of the method is to predict the best termination iteration for an unseen instance by analyzing the performance of the optimization process on solved instances. A fitness landscape analysis is used to understand the behavior of the optimizer on all given instances. A comprehensive set of features is presented to characterize instances of the transportation network optimization problem. This set of features is associated to the results of the fitness landscape analysis through a machine learning-based approach, so that the behavior of the optimization algorithm may be predicted before the optimization start and the termination iteration may be set accordingly. The proposed system has been tested on a real-world transportation network optimization problem and two randomly generated problems. The proposed method has drastically reduced the computational times required by the ACS in finding high quality solutions.
Keywords
ant colony optimisation; computational complexity; learning (artificial intelligence); traffic engineering computing; transportation; ACS; NP-hard optimization problems; ant colony optimization; ant colony system; bio-inspired optimization; computational time; machine learning; termination condition; transportation network; Acceleration; Ant colony optimization; Optimization; Prediction algorithms; Production; Standards; Transportation; Ant Colony Optimization; Hardness Prediction; Instance Difficulty; Termination Condition Adaptation; Transportation Network Optimization;
fLanguage
English
Publisher
ieee
Conference_Titel
Industrial Technology (ICIT), 2015 IEEE International Conference on
Conference_Location
Seville
Type
conf
DOI
10.1109/ICIT.2015.7125451
Filename
7125451
Link To Document