Computer Science ›› 2018, Vol. 45 ›› Issue (2): 140-146.doi: 10.11896/j.issn.1002-137X.2018.02.025

Previous Articles     Next Articles

Comparative Research on Computational Experiment of Social Manufacturing Based on Social Learning Evolution Paradigm

SHI Man, WANG Jun-feng, XUE Xiao and ZHOU Chang-bing   

  • Online:2018-02-15 Published:2018-11-13

Abstract: Under the background of the Internet society,the advanced manufacturing models need to realize collaboration between intra-firm and inter-enterprise from information,social and services.As a new type of manufacturing mode,social manufacturing can adapt to the future socialization,service and large-scale personalized manufacturing environment,and it can solve the problem of multi-participants’ resource sharing,collaboration and interaction in the future manufacturing industry,so it is important to research on this issue.However,the complexity of the social manufacturing system has led to the difficulties of modeling and evaluating the cooperation strategy which has attracted the attention of many researchers.Therefore,this paper presented a social manufacturing computing model based on SLE paradigm including three parts:individual model,interaction model and social model,and further introduced the idea of computatio-nal experiment.The calculation of experiment shows that this model is feasible and effective.It plays a role in promoting the research of social manufacturing.

Key words: Social manufacturing,SLE paradigm,Computational model,Computational experiment,Evolution

[1] DAHLGREN E,GMEN C,LACKNER K,et al.Small Modular Infrastructure[J].The Engineering Economist,2013,58(4):231-264.
[2] ANDREADIS G.A collaborative framework for social mediaaware manufacturing[J].Manufacturing Letters,2015,3(1):14-17.
[3] IZVERCIAN M,POTRA S A.Prosumer-oriented Relationship Management Capability Development for Business Performance [J].Procedia Technology,2014,16:606-612.
[4] YANG C C,SUN J,ZHAO Z Y.Personalized recommendation based on collaborative filtering in social network[C]∥IEEE International Conference on Progress in Informatics and Computing.IEEE,2010:670-673.
[5] XUE X,HAN H F,WANG S F,et al.Computational Experiment-based Evaluation on Context-aware O2O Service Recommendation[J/OL].IEEE Transactions on Services Computing,2016.http:/ieee
[6] JIANG P Y,DING K,LENG J W.Towards a cyber-physical-social-connected and service-oriented manufacturing paradigm:Social Manufacturing[J].Manufacturing Letters,2016,7(1):15-21.
[7] JIANG P Y,DING K,LENG J W,et al.Service-driven social manufacturing paradigm[J].Commputer Integrated Manufacturing Systems,2015,1(6):1637-1649.(in Chinese) 江平宇,丁凯,冷杰武,等.服务驱动的社群化制造模式研究[J].计算机集成制造系统,2015,1(6):1637-1649.
[8] LENG J W,JIANG P Y,ZHANG F Q,et al.Framework and Key Enabling Technologies for Social Manufacturing[J].Applied Mechanics & Materials,2013,312(2):498-501.
[9] DING K,JIANG P Y,ZHANG X.A Framework for Implementing Social Manufacturing System Based on Customized Community Space Configuration and Organization[J].Advanced Materials Research,2013,712-715(6):3191-3194.
[10] XUE X,WANG S F,GUI B,et al.A Computational Experi-ment-based Evaluation Method for Context-aware Services in Complicated Environment[J].Information Sciences,2016,373(9):269-286.
[11] FENG X,MA J H.Building smart communities with cyber-physical systems[C]∥Proceedings of 1st International Sympo-sium on From Digital Footprints to Social and Community Intelligence.ACM,2011:1-6.
[12] LANCICHINETTI A,FORTUNATO S,KERTSZ J.Detec-ting the overlapping and hierarchical community structure of complex networks[J].New Journal of Physics,2008,11(3):19-44.
[13] BIAMINO G.A Semantic Model for Socially Aware Objects[J].Advances in Internet of Things,2012,2(3):47-55.
[14] DING K,JIANG P Y,LENG J W,et al.Modeling and analyzing of an enterprise relationship network in the context of social manufacturing[J].Proceedings of the Institution of Mechanical Engineers Part B Journal of Engineering Manufacture,2015,230(4):1207-1217.
[15] XIONG G,CHEN Y R,SHANG X Q,et al.AHP fuzzy comprehensive method of supplier evaluation in social manufacturing mode[C]∥Intelligent Control and Automation.IEEE,2015:3594-3599.
[16] PANG B H.Multi-criteria Supplier Evaluation Using FuzzyAHP[C]∥International Conference on Mechatronics and Automation.IEEE,2007:2357-2362.
[17] ANDZULIS J,RAPP A,TRAINOR K J,et al.Social mediatechnology usage and customer relationship performance:A capabilities-based examination of social CRM[J].Journal of Business Research,2014,7(6):1201-1208.

No related articles found!
Full text



[1] LEI Li-hui and WANG Jing. Parallelization of LTL Model Checking Based on Possibility Measure[J]. Computer Science, 2018, 45(4): 71 -75 .
[2] SUN Qi, JIN Yan, HE Kun and XU Ling-xuan. Hybrid Evolutionary Algorithm for Solving Mixed Capacitated General Routing Problem[J]. Computer Science, 2018, 45(4): 76 -82 .
[3] ZHANG Jia-nan and XIAO Ming-yu. Approximation Algorithm for Weighted Mixed Domination Problem[J]. Computer Science, 2018, 45(4): 83 -88 .
[4] WU Jian-hui, HUANG Zhong-xiang, LI Wu, WU Jian-hui, PENG Xin and ZHANG Sheng. Robustness Optimization of Sequence Decision in Urban Road Construction[J]. Computer Science, 2018, 45(4): 89 -93 .
[5] SHI Wen-jun, WU Ji-gang and LUO Yu-chun. Fast and Efficient Scheduling Algorithms for Mobile Cloud Offloading[J]. Computer Science, 2018, 45(4): 94 -99 .
[6] ZHOU Yan-ping and YE Qiao-lin. L1-norm Distance Based Least Squares Twin Support Vector Machine[J]. Computer Science, 2018, 45(4): 100 -105 .
[7] LIU Bo-yi, TANG Xiang-yan and CHENG Jie-ren. Recognition Method for Corn Borer Based on Templates Matching in Muliple Growth Periods[J]. Computer Science, 2018, 45(4): 106 -111 .
[8] GENG Hai-jun, SHI Xin-gang, WANG Zhi-liang, YIN Xia and YIN Shao-ping. Energy-efficient Intra-domain Routing Algorithm Based on Directed Acyclic Graph[J]. Computer Science, 2018, 45(4): 112 -116 .
[9] CUI Qiong, LI Jian-hua, WANG Hong and NAN Ming-li. Resilience Analysis Model of Networked Command Information System Based on Node Repairability[J]. Computer Science, 2018, 45(4): 117 -121 .
[10] WANG Zhen-chao, HOU Huan-huan and LIAN Rui. Path Optimization Scheme for Restraining Degree of Disorder in CMT[J]. Computer Science, 2018, 45(4): 122 -125 .