Manufacturing Knowledge Graph: A Connectivism to Answer Production Problems Query With Knowledge Reuse

Manufacturing knowledge (MK) is enjoying a “new golden age” in the academic domain, marked by vast reuse to support product-related production problems (PPs) solving decision making for manufacturing enterprises in the industry sector. However, the practice of MK reuse and research is fragmented and insufficient, which cannot be mature to provide a systemic solution for that a decision-maker has to consider the involving issues: how MK can be used earlier and rightly; what kind of practical problems can be solved? In order to answer those interconnecting issues, this paper firstly proposes a connectivism framework to clarify the compressive relationship of problem-to-problem, knowledge-to-knowledge and problem-to-knowledge with knowledge integration, knowledge matching, and problem-solving layers. Then, based on the framework, an ontology-based MK graph (MKG) is constructed with a unified MK-filter to collect and integrate multifactor and multilevel MK, and a graph-oriented meta-knowledge model (MKM) is proposed to represent the details between the knowledge entities (i.e., concept and instance), which also shows the contribution to knowledge reasoning. After that, driven by a structure temporal query (i.e., 5W2H), a semantics-based knowledge computation is developed to compute the intrinsic term similarity (IS) and relational term similarity (RS) between two knowledge entities in the MKG. Finally, a case study is taken to demonstrate the effectiveness and performance of the proposed methods.

[1]  Boonserm Kulvatunyou,et al.  An analysis of OWL-based semantic mediation approaches to enhance manufacturing service capability models , 2014, Int. J. Comput. Integr. Manuf..

[2]  Robert I. M. Young,et al.  Design of a manufacturing knowledge model , 2008, Int. J. Comput. Integr. Manuf..

[3]  Yang Gao,et al.  Multistream Classification with Relative Density Ratio Estimation , 2019, AAAI.

[4]  Fei Tao,et al.  Data and knowledge mining with big data towards smart production , 2017, J. Ind. Inf. Integr..

[5]  James F. Allen Maintaining knowledge about temporal intervals , 1983, CACM.

[6]  Jason Weston,et al.  Translating Embeddings for Modeling Multi-relational Data , 2013, NIPS.

[7]  Nathan W Hartman,et al.  Identified research directions for using manufacturing knowledge earlier in the product life cycle , 2017, Int. J. Prod. Res..

[8]  Miao Cui,et al.  Implementation processes of online and offline channel conflict management strategies in manufacturing enterprises: A resource orchestration perspective , 2018, Int. J. Inf. Manag..

[9]  André Ogliari,et al.  Stimulating design team creativity based on emotional values: A study on idea generation in the early stages of new product development processes , 2019, International Journal of Industrial Ergonomics.

[10]  Robert Arp,et al.  Building Ontologies with Basic Formal Ontology , 2015 .

[11]  Peter Szolovits,et al.  What Is a Knowledge Representation? , 1993, AI Mag..

[12]  Hiba Arnaout,et al.  Effective searching of RDF knowledge graphs , 2017, J. Web Semant..

[13]  Simone Paolo Ponzetto,et al.  BabelNet: The automatic construction, evaluation and application of a wide-coverage multilingual semantic network , 2012, Artif. Intell..

[14]  Zhiyuan Liu,et al.  Representation Learning of Knowledge Graphs with Entity Descriptions , 2016, AAAI.

[15]  Anna Karwasz,et al.  Productivity Increase Through Reduced Changeover Time , 2016 .

[16]  Klaus-Dieter Althoff,et al.  Knowledge-based multi-agent system for manufacturing problem solving process in production plants , 2018 .

[17]  Enrico Motta,et al.  Improving comprehension of knowledge representation languages: A case study with Description Logics , 2019, Int. J. Hum. Comput. Stud..

[18]  David M. W. Powers,et al.  Evaluation: from precision, recall and F-measure to ROC, informedness, markedness and correlation , 2011, ArXiv.

[19]  Rui Huang,et al.  Structured modeling of heterogeneous CAM model based on process knowledge graph , 2018 .

[20]  Kai Ding,et al.  Social Sensors (S2ensors): A Kind of Hardware-Software-Integrated Mediators for Social Manufacturing Systems Under Mass Individualization , 2017 .

[21]  Francisco Chiclana,et al.  Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model , 2018, Knowl. Based Syst..

[22]  Timothy W. Simpson,et al.  Reuse of Manufacturing Knowledge to Facilitate Platform-Based Product Realization , 2006, J. Comput. Inf. Sci. Eng..

[23]  Euiho Suh,et al.  Building the knowledge map: an industrial case study , 2003, J. Knowl. Manag..

[24]  Pingyu Jiang,et al.  Manifold learning based rescheduling decision mechanism for recessive disturbances in RFID-driven job shops , 2016, Journal of Intelligent Manufacturing.

[25]  Arthur C. Graesser,et al.  Exploring development of social capital in a CMOOC through language and discourse , 2018, Internet High. Educ..

[26]  Chao Zhang,et al.  Graph-based knowledge reuse for supporting knowledge-driven decision-making in new product development , 2017, Int. J. Prod. Res..

[27]  Deborah L. McGuinness,et al.  OWL Web ontology language overview , 2004 .

[28]  Angappa Gunasekaran,et al.  Explaining the Impact of Reconfigurable Manufacturing Systems on Environmental Performance: the role of top management and organizational culture , 2017 .

[29]  Lejian Liao,et al.  Knowledge graph embedding with concepts , 2019, Knowl. Based Syst..

[30]  Tingting Xu,et al.  Multi-agent single-objective negotiation mechanism of personalized product supply chain based on personalized index , 2018, Advances in Mechanical Engineering.

[31]  Bernard Kamsu-Foguem,et al.  Knowledge reuse integrating the collaboration from experts in industrial maintenance management , 2013, Knowl. Based Syst..

[32]  Taher H. Haveliwala,et al.  Adaptive methods for the computation of PageRank , 2004 .

[33]  Janis Terpenny,et al.  Development and Utilization of Ontologies in Design for Manufacturing , 2010 .

[34]  Evgeniy Gabrilovich,et al.  A Review of Relational Machine Learning for Knowledge Graphs , 2015, Proceedings of the IEEE.

[35]  Pingyu Jiang,et al.  A framework for planing and solving production problems with manufacturing knowledge reuse , 2019, 2019 IEEE International Conference on Smart Manufacturing, Industrial & Logistics Engineering (SMILE).

[36]  Tingting Xu,et al.  Negotiation model and tactics of manufacturing enterprise supply chain based on multi-agent , 2018, Advances in Mechanical Engineering.

[37]  Mansur R. Kabuka,et al.  Ontology matching with semantic verification , 2009, J. Web Semant..

[38]  Dudi Landau,et al.  Building and Querying an Enterprise Knowledge Graph , 2019, IEEE Transactions on Services Computing.

[39]  Jens Lehmann,et al.  DBpedia - A large-scale, multilingual knowledge base extracted from Wikipedia , 2015, Semantic Web.

[40]  John E. Ettlie,et al.  Design Reuse in Manufacturing and Services , 2008 .

[41]  Gerhard Weikum,et al.  YAGO2: A Spatially and Temporally Enhanced Knowledge Base from Wikipedia: Extended Abstract , 2013, IJCAI.

[42]  George Siemens Connectivism: A Learning Theory for the Digital Age , 2004 .

[43]  Praveen Paritosh,et al.  Freebase: a collaboratively created graph database for structuring human knowledge , 2008, SIGMOD Conference.

[44]  A. Narayanan,et al.  Efficient formulation and heuristics for multi-item single source ordering problem with transportation cost , 2016 .

[45]  Yifan Li,et al.  Multistream regression with asynchronous concept drift detection , 2017, 2017 IEEE International Conference on Big Data (Big Data).

[46]  Chao Zhang,et al.  Knowledge-driven digital twin manufacturing cell towards intelligent manufacturing , 2019, Int. J. Prod. Res..