Computer Science ›› 2020, Vol. 47 ›› Issue (6A): 369-374.doi: 10.11896/JsJkx.190900122

• Information Security • Previous Articles     Next Articles

Manufacturing Alliance System Based on Block Chain

HONG Xiao-ling, WAN Hu, XIAO Xiao and SUN Hao-xiang   

  1. School of Mechanical and Electrical Engineering,University of Electronic Science and Technology of China,Chengdu 611731,China
  • Published:2020-07-07
  • About author:HONG Xiao-ling, born in 1995, master.Her main research interests include manufacturing information and intelligent manufacturing robot.
    WAN Hu, born in 1977, Ph.D, associate professor.His main research interests include manufacturing information and intelligent manufacturing robot.

Abstract: Manufacturing industry is the main body of national economy,but compared with the advanced countries,there are serious problems in our manufacturing industry.With the intensification of global competition and the rapid development of computer network technology,alliance mode has become a new organizational mode of enterprise development.For manufacturing companies,seeking cooperation and combining the traditional manufacturing mode and network manufacturing to Jointly cope with the fierce market is necessary to continue to develop in the future information society.For the manufacturing industry whose products have achieved standardized production,based on Dynamic Alliance,this paper proposes the concept of Static Alliance,which is composed of more than two independent enterprises and connected by network information technology.Enterprises establish Static Alliance to Jointly promote enterprise cooperation,transformation and upgrading,and achieve common development and win-win cooperation.In order to realize Static Alliance,this paper also puts forward the concept of Manufacturing Alliance System based on Block Chain (MASBC).MASBC is actually a network platform for realizing Static Alliance,with a five-layer architecture of physical layer,network consensus layer,data layer,server layer and user layer.MASBC is a combination of Manufacturing Execution System (MES) and block chain technology.Through the data acquisition function of MES and the data immutability of block chain,the production process information of the product is stored in the blockchain to guarantee the authenticity of information.This information will be taken as the basis for final profit distribution,so as to promote in-depth cooperation of alliance enterprises and achieve win-win situation.

Key words: Block chain, Manufacturing alliance, Manufacturing mode, MES, Static alliance

CLC Number: 

  • TP303
[1] HUA G.Study on the interaction between knowledge diffusion and the evolution of dynamic alliance.BeiJing:BeiJing Jiaotong University,2011.
[2] CHEN Y O,ZHOU G Q.Research on Multi-agent System in Intelligent Manufacturing with Enterprise Alliance//2015 International Conference on Industrial Informatics-Computing Technology,Intelligent Technology,Industrial Information Integration.IEEE,Wuhan,2015:172-175.
[3] LI Y,WAN L,WANG W.An Organization Model for Enterprise Alliance Based on Automotive Industry Chain//2010 International Conference on Multimedia Technology.IEEE,Ningbo,2010:1-5.
[4] ZHANG L,SHEN L,XIE X,et al.Research on Virtual Logistics Enterprise Alliance System Operation Model based on MAS//2007 IEEE International Conference on Automation and Logistics.Jinan,2007:336-339.
[5] MAO J.Supply Chain System Modeling Based on Dynamic Alliance Enterprise//2011 Third International Conference on Measuring Technology and Mechatronics Automation.Shangshai,2011:613-616.
[6] GUO L.Research on modern industrial organization mode.Wuhan:Wuhan University of Technology,2004.
[7] ZHAI L L.Evolution mechanism and management mode of high-tech virtual enterprises.BeiJing:Science Press,2012:10-11.
[8] 工业和信息化部信息化和软件服务业司.中国区块链技术和应用发展白皮书(2016).北京:工业和信息化部,2016.
[9] 华为区块链技术开发团队.区块链技术及应用.北京:清华大学出版社,2019:34-37.
[10] WANG Z H,LIU P Z,SONG C B,et al.Research and development of flexible and reliable traceability system for agricultural products based on blockchain.Computer Engineering..https://doi.org/10.19678/J.issn.1000-3428.0056262.
[11] ZHANG G X,CUI J Y,CAI W X,et al.Research on organic vegetable ceertification and traceability scheme based on blockchian.Journal of Anhui Agricultural Sciences,2019.http://kns.cnki.net/kcms/detail/34.1076.S.20191226.1104.066.html.
[12] 中国区块链技术和产业发展论坛.中国区块链技术和应用发展研究报告(2018).上海:工信部中国电子技术标准化研究院,2018.
[13] SINGH P K,SINGH R,NANDI S K,et al.Managing Smart Home Appliances with Proof of Authority and Blockchain//Communications in Computer and Information Science.Switzerland,2019:221-232.
[14] ANGRISH A,CRAVER B,HASAN M,et al.Case Study for Blockchain in Manufacturing:“FabRec”:A Prototype for Peer-to-Peer Network of Manufacturing Nodes.Procedia Manufacturing,2018,26:1180-1192.
[15] ZHOU R Y,QIAN L.Blockchain based digital right management for distributed xontent delivery network..https://doi.org/10.19734/J.issn.1001-3695.2018.11.0870.
[16] CHEN Z H,LI Q,GAN J,et al.VC Chain:An alliance audio-video copyright blockchain system.Computer Engineering and Science,2019,41(11):1939-1948.
[17] 魏剑锋.企业集群研究——基于知识信息的视角.北京:中国经济出版社,2013:49-59.
[18] LI Z S.Research on the block-chain bassed method of electronic certificate deposit with intergrity.Computer Era,2019(12):1-4.
[19] YANG Q.Research and implementation of blockchain-based smart contracts.Mianyang:Southwest University of Science and Technology,2015:18-25.
[20] DUAN Y B,TU H N,LU Y.The research and development of CNC system production workshop’s manufacturing execution system.Manufacturing Technology & Machine Tool,2016(2):130-134.
[21] CASTRO M,LISKOV B.Practical Byzantine fault tolerance //Proceedings of the 3rd Symposium on Operating Systems Design and Implementation.New Orleans,USA:USENIX Association,1999:173-186.
[22] FAN J,YI L T,SHU J W.Research on the technologies of Byzantine system.Journal of Software,2013,24(6):1346-1360.
[1] CHEN Kun-feng, PAN Zhi-song, WANG Jia-bao, SHI Lei, ZHANG Jin. Moderate Clothes-Changing Person Re-identification Based on Bionics of Binocular Summation [J]. Computer Science, 2022, 49(8): 165-171.
[2] YE Yue-jin, LI Fang, CHEN De-xun, GUO Heng, CHEN Xin. Study on Preprocessing Algorithm for Partition Reconnection of Unstructured-grid Based on Domestic Many-core Architecture [J]. Computer Science, 2022, 49(6): 73-80.
[3] FENG Lei, ZHU Deng-ming, LI Zhao-xin, WANG Zhao-qi. Sparse Point Cloud Filtering Algorithm Based on Mask [J]. Computer Science, 2022, 49(5): 25-32.
[4] ZHAO Yue, YU Zhi-bin, LI Yong-chun. Cross-attention Guided Siamese Network Object Tracking Algorithm [J]. Computer Science, 2022, 49(3): 163-169.
[5] FENG Deng-guo. New Cryptographic Primitive: Definition, Model and Construction of Ratched Key Exchange [J]. Computer Science, 2022, 49(1): 1-6.
[6] ZHOU Yi-hua, JIA Yu-xin, JIA Li-yuan, FANG Jia-bo, SHI Wei-min. Data Integrity Verification Scheme of Shared EMR Based on Red Black Tree [J]. Computer Science, 2021, 48(9): 330-336.
[7] LIU Dan, GUO Shao-zhong, HAO Jiang-wei, XU Jin-chen. Implementation of Transcendental Functions on Vectors Based on SIMD Extensions [J]. Computer Science, 2021, 48(6): 26-33.
[8] LIU Wei, LI Dong-kun, XU Chang, TIAN Zhao, SHE Wei. Channel Assignment Algorithm Based on Particle Swarm Optimization in Emergency Communication Networks [J]. Computer Science, 2021, 48(5): 277-282.
[9] CHENG Xu, CUI Yi-ping, SONG Chen, CHEN Bei-jing, ZHENG Yu-hui, SHI Jin-gang. Object Tracking Algorithm Based on Temporal-Spatial Attention Mechanism [J]. Computer Science, 2021, 48(4): 123-129.
[10] CUI Jian-qun, HUANG Dong-sheng, CHANG Ya-nan, WU Shu-qing. Congestion Control Based on Message Quality and Node Reliability in DTN [J]. Computer Science, 2021, 48(4): 268-273.
[11] LI Ai-ling, ZHANG Feng-li, GAO Qiang, WANG Rui-jin. Trajectory Next Footprint Prediction Model Based on Adaptive Timestamp and Multi-scale Feature Extraction [J]. Computer Science, 2021, 48(11A): 191-197.
[12] LIU Shuai, CHEN Jian-hua. Certificateless Signature Scheme Without Bilinear Pairings and Its Application in Distribution Network [J]. Computer Science, 2020, 47(9): 304-310.
[13] CHENG Sheng-gan, YU Hao-ran, WEI Jian-wen, James LIN. Design and Optimization of Two-level Particle-mesh Algorithm Based on Fixed-point Compression [J]. Computer Science, 2020, 47(8): 56-61.
[14] XIE Wen-kang, FAN Wei-bei, ZHANG Yu-jie, XU He, LI Peng. ENLHS:Sampling Approach to Auto Tuning Kafka Configurations [J]. Computer Science, 2020, 47(8): 119-126.
[15] REN Shuai, WANG Meng, FAN Ao-xiong, GAO Ze, XU Jie, Shahzad KHURRAM, ZHANG Tao. Zero-high-resolution Information Hiding Algorithm for 3D Mesh Model [J]. Computer Science, 2020, 47(7): 328-334.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!