Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment Manufacturing

In view of the miniaturization and decentralization characteristics of agricultural equipment factories in China, agricultural equipment manufacturing is well suited to the cloud manufacturing model, but there is no specific research on cloud services optimization for it. To fill the research gap, a...

Full description

Bibliographic Details
Main Authors: Kai Zhou, Yongzhao Wen, Wanying Wu, Zhiyong Ni, Tianguo Jin, Xiaojun Long
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2020/9134695
id doaj-d4cba01c274c4f069c5a7e86bedc95cf
record_format Article
spelling doaj-d4cba01c274c4f069c5a7e86bedc95cf2020-11-25T04:11:44ZengHindawi LimitedMathematical Problems in Engineering1563-51472020-01-01202010.1155/2020/91346959134695Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment ManufacturingKai Zhou0Yongzhao Wen1Wanying Wu2Zhiyong Ni3Tianguo Jin4Xiaojun Long5College of Mechanical and Electronic EngineeringFaculty of Robot Science and EngineeringCollege of Mechanical and Electronic EngineeringCollege of Mechanical and Electronic EngineeringCollege of Mechatronics EngineeringCollege of Mechanical and Electronic EngineeringIn view of the miniaturization and decentralization characteristics of agricultural equipment factories in China, agricultural equipment manufacturing is well suited to the cloud manufacturing model, but there is no specific research on cloud services optimization for it. To fill the research gap, a cloud service optimization method is proposed in this paper. For the optimization model, the dynamic coefficient strategy and the reliability feedback update strategy are added to the mathematical model to strengthen the applicability of farming season. As optimization algorithm, a dynamic artificial ant-bee colony algorithm (DAABA) based on artificial ant colony algorithm and bee colony algorithm is presented. The optimal fusion evaluation strategy is used to save optimization time by reducing the useless iteration, and the iterative adjustment threshold strategy is adopted to improve the accuracy of cloud service by increasing the size of bee colony. Finally, the performance of DAABA is verified to be more superior by comparing with other algorithms.http://dx.doi.org/10.1155/2020/9134695
collection DOAJ
language English
format Article
sources DOAJ
author Kai Zhou
Yongzhao Wen
Wanying Wu
Zhiyong Ni
Tianguo Jin
Xiaojun Long
spellingShingle Kai Zhou
Yongzhao Wen
Wanying Wu
Zhiyong Ni
Tianguo Jin
Xiaojun Long
Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment Manufacturing
Mathematical Problems in Engineering
author_facet Kai Zhou
Yongzhao Wen
Wanying Wu
Zhiyong Ni
Tianguo Jin
Xiaojun Long
author_sort Kai Zhou
title Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment Manufacturing
title_short Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment Manufacturing
title_full Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment Manufacturing
title_fullStr Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment Manufacturing
title_full_unstemmed Cloud Service Optimization Method Based on Dynamic Artificial Ant-Bee Colony Algorithm in Agricultural Equipment Manufacturing
title_sort cloud service optimization method based on dynamic artificial ant-bee colony algorithm in agricultural equipment manufacturing
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2020-01-01
description In view of the miniaturization and decentralization characteristics of agricultural equipment factories in China, agricultural equipment manufacturing is well suited to the cloud manufacturing model, but there is no specific research on cloud services optimization for it. To fill the research gap, a cloud service optimization method is proposed in this paper. For the optimization model, the dynamic coefficient strategy and the reliability feedback update strategy are added to the mathematical model to strengthen the applicability of farming season. As optimization algorithm, a dynamic artificial ant-bee colony algorithm (DAABA) based on artificial ant colony algorithm and bee colony algorithm is presented. The optimal fusion evaluation strategy is used to save optimization time by reducing the useless iteration, and the iterative adjustment threshold strategy is adopted to improve the accuracy of cloud service by increasing the size of bee colony. Finally, the performance of DAABA is verified to be more superior by comparing with other algorithms.
url http://dx.doi.org/10.1155/2020/9134695
work_keys_str_mv AT kaizhou cloudserviceoptimizationmethodbasedondynamicartificialantbeecolonyalgorithminagriculturalequipmentmanufacturing
AT yongzhaowen cloudserviceoptimizationmethodbasedondynamicartificialantbeecolonyalgorithminagriculturalequipmentmanufacturing
AT wanyingwu cloudserviceoptimizationmethodbasedondynamicartificialantbeecolonyalgorithminagriculturalequipmentmanufacturing
AT zhiyongni cloudserviceoptimizationmethodbasedondynamicartificialantbeecolonyalgorithminagriculturalequipmentmanufacturing
AT tianguojin cloudserviceoptimizationmethodbasedondynamicartificialantbeecolonyalgorithminagriculturalequipmentmanufacturing
AT xiaojunlong cloudserviceoptimizationmethodbasedondynamicartificialantbeecolonyalgorithminagriculturalequipmentmanufacturing
_version_ 1715034001450729472