A Quantum-inspired evolutionary algorithm with a competitive variation operator for multiple-fault diagnosis
Academic Article
Publication Date:
2011
abstract:
A heuristic search algorithm, the Quantum-inspired Competitive Evolutionary Algorithm (QuCEA), based on both quantum and evolutionary computing, is proposed. The individuals of a population, coded as qubit strings, evolve by means of an original variation operator inspired by competitive learning. The proposed operator is application independent and intuitively controllable by a single real parameter. QuCEA has been applied to Multiple-Fault Diagnosis, a typical NP-hard problem for industrial diagnosis. In particular, the proposed algorithm gives remarkable results both in simulation and in on-field tests for a lift monitoring system, also in comparison with a standard genetic algorithm and a state-of-the-art Quantum-inspired Evolutionary Algorithm. © 2011 Elsevier B.V. All rights reserved.
Iris type:
01.01 Articolo in rivista
Keywords:
Competitive learning; Evolutionary algorithms; MultipleFault Diagnosis; Quantum computing
List of contributors:
Maisto, Domenico
Published in: