Towards a Procedure for Assessing Supply Chain Risks Using Semantic Technologies

In the APPRIS project an Early-Warning-System (EWS) is developed applying semantic technologies, namely an enterprise ontology and an inference engine, for the assessment of procurement risks. Our approach allows for analyzing internal resources (e.g. ERP and CRM data) and external sources (e.g. entries in the Commercial Register and newspaper reports) to assess known risks, but also for identifying ‘black swans’, which hit enterprises with no warning but potentially large impact. For proof of concept we developed a prototype that allows for integrating data from various information sources, of various information types (structured and unstructured), and information quality (assured facts, news); automatic identification, validation and quantification of risks and aggregation of assessment results on several granularity levels. The motivating scenario is derived from three business project partners’ real requirements for an EWS.

[1]  Joseph H. M. Tah,et al.  Towards a framework for project risk knowledge management in the construction supply chain , 2001 .

[2]  E. E. Inman Enterprise Modeling Advantages of San Francisco for General Ledger Systems , 1998, IBM Syst. J..

[3]  Wang Kan,et al.  Designing knowledge chain networks in China — A proposal for a risk management system using linguistic decision making , 2010 .

[4]  M. Fox,et al.  An Organization Ontology for Enterprise Modelling , 2002 .

[5]  Tonci Grubic,et al.  Supply chain ontology: Review, analysis and synthesis , 2010, Comput. Ind..

[6]  B. Priddat,et al.  E-Government als Virtualisierungsstrategie des Staates , 2002 .

[7]  Michael Uschold,et al.  The Enterprise Ontology , 1998, The Knowledge Engineering Review.

[8]  H. Lan,et al.  SWRL : A semantic Web rule language combining OWL and ruleML , 2004 .

[9]  Barbara Thoenssen,et al.  Automatic, Format-independent Generation of Metadata for Documents Based on Semantically Enriched Context Information , 2013 .

[10]  Barbara Thönssen An Enterprise Ontology Building the Bases for Automatic Metadata Generation , 2010, MTSR.

[11]  Hye Kyung Park,et al.  Virtual enterprise — Information system and networking solution , 1999 .

[12]  Emanuela Merelli,et al.  The Role of Content and Context in Enterprise Repositories , 2010, BPM 2010.

[13]  Barbara Thönssen,et al.  A broader view on Context Models to support Business Process Agility. , 2010 .

[14]  Maria-Eugenia Iacob,et al.  ArchiMate 2.0 Specification , 2012 .

[15]  Walter W.C. Chung,et al.  Networked enterprise: A new business model for global sourcing , 2004 .

[16]  Yu-Liang Chi,et al.  Rule-based ontological knowledge base for monitoring partners across supply networks , 2010, Expert Syst. Appl..

[17]  Barbara Thönssen Turning Risks Into Opportunities. , 2012 .

[18]  Frank Teuteberg,et al.  Semantic Technologies for Business and Information Systems Engineering: Concepts and Applications , 2011 .

[19]  Martin J. O'Connor,et al.  SQWRL: A Query Language for OWL , 2009, OWLED.

[20]  Birger P. Priddat Demokratisierung der Wissensgesellschaft und professioneller Staat , 2002, HMD Prax. Wirtsch..

[21]  Roy Billinton,et al.  Reliability Evaluation of Engineering Systems , 1983 .

[22]  Mauri Leppänen,et al.  A Context-Based Enterprise Ontology , 2007, BIS.

[23]  Liliana Ironi,et al.  The Eleventh International Workshop on Qualitative Reasoning , 1998, AI Mag..