Computer Science ›› 2020, Vol. 47 ›› Issue (11A): 6-10.doi: 10.11896/jsjkx.191000147

• Artificial Intelligence • Previous Articles     Next Articles

Study on Intelligent Scheduling System of Composite Shop

ZHANG Wei, YU Cheng-long   

  1. China Aerospace Academy of Systems Science and Engineering,Beijing 100048,China
  • Online:2020-11-15 Published:2020-11-17
  • About author:ZHANG Wei,born in 1983,master,engineer.His main research interests include production process control technology.
    YU Cheng-long,born in 1979,Ph.D,se-nior engineer.His main research inte-rests include intelligent manufacturing research,planning and application.
  • Supported by:
    This work was supported by the Defense Industrial Technology Development Program(JCKY2016203B083,JCKY2017203B071,JCKY2017203C105).

Abstract: To solve the problem of insufficient real-time and practicability of experience-based production scheduling in aerospace composite workshop,an aerospace intelligent scheduling system is proposed,and the architecture and function composition of the system are discussed.Furthermore,the calculating method based on perceptual information is studied,and the prototype system of aerospace composite workshop is developed and verified.According to the production real-time data and the scheduling know-ledge,the system can automatically judge and optimize resource allocation,calculate man-hours of each process step,and rearrange and output the scheduling plan according to the production disturbances.It provides a basis for the formulation of the enterprise scheduling program and lays the foundation for the development of the subsequent engineering intelligent scheduling system.

Key words: Composite shop, Intelligent, Man-hour calculating, Resource allocating, Scheduling system

CLC Number: 

  • TH391
[1] LIU Y H,MA J,MOU J H,et al.Dynamic sequencing of mix-model assembly line oriented to rush orders[J].Computer Integrated Manufacturing System,2017,23(12):2647-2656.
[2] KU W Y,BECK J C.Mixed integer programming models for job shop scheduling:A computational analysis[J].Computers & Operations Research,2016(73):165-173.
[3] ZHANG Y F,YANG T,WANG J Q,et al.Intelligent navigation of assembly activities based on real-time manufacturing information[J].Computer Integrated Manufacturing System,2014,20(1):28-36.
[4] FAN H L,XIONG H G,JIANG G Z,et al.Survey of dispatching rules for dynamic Job-Shop scheduling problem[J].Journal of Computer Applications,2016,33(3):648-653.
[5] FRAMINA J M,PEREZ-GONZALEZ P.New approximate algorithms for the customer order scheduling problem with total completion time objective[J].Computers & Operations Research,2017(78):181-192.
[6] AHMADI E,ZANDIEH M,FARROKH M,et al.A multi objective optimization approach for flexible job shop scheduling problem under random machine breakdown by evolutionary algorithms[J].Computers & Operations Research,2016(73):56-66.
[7] WANG L,DENG J,WANG S Y.Survey on optimization algorithms for distributed shop scheduling[J].Control and Decision,2016,31(1):1-11.
[8] ZAHMANI M,ATMANI B.A data mining based dispatchingrules selection system for the job shop scheduling problem[J].Journal of Advanced Manufacturing Systems,2019,18(1):35-56.
[9] SHOKOUHI E.Integrated multi-objective process planning and flexible job shop scheduling considering precedence constraints[J].Journal Production & Manufacturing Research,2018,69(1):61-89.
[10] BÜRG Y,REINHAR D.A neighborhood for complex job shopscheduling problems with regular objectives[J].Journal of Scheduling,2017,20(4):391-422.
[11] SUN Q Q,DING M.Research on intelligent service scheduling scheduling in aviation compound production workshop[J].Intelligent Manufacturing,2017(12):39-43.
[12] WANG Q B,ZHANG W X,WANG B L,et al.Research on Agent-based Hybrid Flow Shop Dynamic Scheduling Problem[J].Journal of Computer Applications,2017,37(10):2991-2998.
[13] MIRKO K,JENS E,MICHAEL F,et al.A data-driven simulation-based optimisation approach for adaptive scheduling and control of dynamic manufacturing systems[J].Advanced Materials Research,2016(1140):449-456.
[14] BARENJI A V,BARENJI R V,ROUDI D,et al.A dynamic multi-agent-based scheduling approach for SMEs[J].The International Journal of Advanced Manufacturing Technology,2017(89):3123-3137.
[15] NASIRI M M,YAZDANPARAST R,JOLAI F.A simulation optimisation approach for real-time scheduling in an open shop environment using a composite dispatching rule[J].International Journal of Computer Integrated Manufacturing,2017,30(12):1239-1252.
[1] NING Han-yang, MA Miao, YANG Bo, LIU Shi-chang. Research Progress and Analysis on Intelligent Cryptology [J]. Computer Science, 2022, 49(9): 288-296.
[2] YUAN Wei-lin, LUO Jun-ren, LU Li-na, CHEN Jia-xing, ZHANG Wan-peng, CHEN Jing. Methods in Adversarial Intelligent Game:A Holistic Comparative Analysis from Perspective of Game Theory and Reinforcement Learning [J]. Computer Science, 2022, 49(8): 191-204.
[3] LI Sun, CAO Feng. Analysis and Trend Research of End-to-End Framework Model of Intelligent Speech Technology [J]. Computer Science, 2022, 49(6A): 331-336.
[4] WANG Yu-jue, LIANG Yu-hao, WANG Su-qin, ZHU Deng-ming, SHI Min. Construction of Ontology Library for Machining Process of Mechanical Parts [J]. Computer Science, 2022, 49(6A): 661-666.
[5] XIE Wan-cheng, LI Bin, DAI Yue-yue. PPO Based Task Offloading Scheme in Aerial Reconfigurable Intelligent Surface-assisted Edge Computing [J]. Computer Science, 2022, 49(6): 3-11.
[6] ZHOU Tian-qing, YUE Ya-li. Multi-Task and Multi-Step Computation Offloading in Ultra-dense IoT Networks [J]. Computer Science, 2022, 49(6): 12-18.
[7] DONG Dan-dan, SONG Kang. Performance Analysis on Reconfigurable Intelligent Surface Aided Two-way Internet of Things Communication System [J]. Computer Science, 2022, 49(6): 19-24.
[8] XIA Jing, MA Zhong, DAI Xin-fa, HU Zhe-kun. Efficiency Model of Intelligent Cloud Based on BP Neural Network [J]. Computer Science, 2022, 49(2): 353-367.
[9] JIANG Hao-chen, WEI Zi-qi, LIU Lin, CHEN Jun. Imbalanced Data Classification:A Survey and Experiments in Medical Domain [J]. Computer Science, 2022, 49(1): 80-88.
[10] QU Li-cheng, LYU Jiao, QU Yi-hua, WANG Hai-fei. Intelligent Assignment and Positioning Algorithm of Moving Target Based on Fuzzy Neural Network [J]. Computer Science, 2021, 48(8): 246-252.
[11] CHEN Jing-yu, GUO Zhi-jun, YIN Ya-kun. Full Traversal Path Planning and System Design of Intelligent Lawn Mower Based on Hybrid Algorithm [J]. Computer Science, 2021, 48(6A): 633-637.
[12] WU Lan, WANG Han, LI Bin-quan. Unsupervised Domain Adaptive Method Based on Optimal Selection of Self-supervised Tasks [J]. Computer Science, 2021, 48(6A): 357-363.
[13] NIU Kang-li, CHEN Yu-zhang, ZHANG Gong-ping, TAN Qian-cheng, WANG Yi-chong, LUO Mei-qi. Vehicle Flow Measuring of UVA Based on Deep Learning [J]. Computer Science, 2021, 48(6A): 275-280.
[14] ZHOU Xin, LIU Shuo-di, PAN Wei, CHEN Yuan-yuan. Vehicle Color Recognition in Natural Traffic Scene [J]. Computer Science, 2021, 48(6A): 15-20.
[15] ZHANG Ju, LI Xue-yun. Research on Intelligent Production Line Scheduling Problem Based on LGSO Algorithm [J]. Computer Science, 2021, 48(6A): 668-672.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!