Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization Algorithm

The multi-autonomous underwater vehicle (AUV) distributed task allocation model of a contract net, which introduces an equilibrium coefficient, has been established to solve the multi-AUV distributed task allocation problem. A differential evolution quantum artificial bee colony (DEQABC) optimizatio...

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Main Authors: Li Jianjun, Zhang Ru Bo
Format: Article
Language:English
Published: Sciendo 2017-11-01
Series:Polish Maritime Research
Subjects:
Online Access:https://doi.org/10.1515/pomr-2017-0106
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spelling doaj-e210a5df1a324e32b2796335a7383f172021-09-05T13:59:50ZengSciendoPolish Maritime Research2083-74292017-11-0124s3657110.1515/pomr-2017-0106pomr-2017-0106Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization AlgorithmLi Jianjun0Zhang Ru Bo1College of Computer Science and Technology, Harbin Engineering University, ChinaFaculty of Computer Science and Technology, Harbin Engineering University, ChinaThe multi-autonomous underwater vehicle (AUV) distributed task allocation model of a contract net, which introduces an equilibrium coefficient, has been established to solve the multi-AUV distributed task allocation problem. A differential evolution quantum artificial bee colony (DEQABC) optimization algorithm is proposed to solve the multi-AUV optimal task allocation scheme. The algorithm is based on the quantum artificial bee colony algorithm, and it takes advantage of the characteristics of the differential evolution algorithm. This algorithm can remember the individual optimal solution in the population evolution and internal information sharing in groups and obtain the optimal solution through competition and cooperation among individuals in a population. Finally, a simulation experiment was performed to evaluate the distributed task allocation performance of the differential evolution quantum bee colony optimization algorithm. The simulation results demonstrate that the DEQABC algorithm converges faster than the QABC and ABC algorithms in terms of both iterations and running time. The DEQABC algorithm can effectively improve AUV distributed multi-tasking performance.https://doi.org/10.1515/pomr-2017-0106differential evolution quantum artificial bee colony algorithmmulti-auvcontract nettask allocation
collection DOAJ
language English
format Article
sources DOAJ
author Li Jianjun
Zhang Ru Bo
spellingShingle Li Jianjun
Zhang Ru Bo
Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization Algorithm
Polish Maritime Research
differential evolution quantum artificial bee colony algorithm
multi-auv
contract net
task allocation
author_facet Li Jianjun
Zhang Ru Bo
author_sort Li Jianjun
title Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization Algorithm
title_short Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization Algorithm
title_full Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization Algorithm
title_fullStr Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization Algorithm
title_full_unstemmed Multi-Auv Distributed Task Allocation Based on the Differential Evolution Quantum Bee Colony Optimization Algorithm
title_sort multi-auv distributed task allocation based on the differential evolution quantum bee colony optimization algorithm
publisher Sciendo
series Polish Maritime Research
issn 2083-7429
publishDate 2017-11-01
description The multi-autonomous underwater vehicle (AUV) distributed task allocation model of a contract net, which introduces an equilibrium coefficient, has been established to solve the multi-AUV distributed task allocation problem. A differential evolution quantum artificial bee colony (DEQABC) optimization algorithm is proposed to solve the multi-AUV optimal task allocation scheme. The algorithm is based on the quantum artificial bee colony algorithm, and it takes advantage of the characteristics of the differential evolution algorithm. This algorithm can remember the individual optimal solution in the population evolution and internal information sharing in groups and obtain the optimal solution through competition and cooperation among individuals in a population. Finally, a simulation experiment was performed to evaluate the distributed task allocation performance of the differential evolution quantum bee colony optimization algorithm. The simulation results demonstrate that the DEQABC algorithm converges faster than the QABC and ABC algorithms in terms of both iterations and running time. The DEQABC algorithm can effectively improve AUV distributed multi-tasking performance.
topic differential evolution quantum artificial bee colony algorithm
multi-auv
contract net
task allocation
url https://doi.org/10.1515/pomr-2017-0106
work_keys_str_mv AT lijianjun multiauvdistributedtaskallocationbasedonthedifferentialevolutionquantumbeecolonyoptimizationalgorithm
AT zhangrubo multiauvdistributedtaskallocationbasedonthedifferentialevolutionquantumbeecolonyoptimizationalgorithm
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