Making design decisions under uncertainties: probabilistic reasoning and robust product design

Making design decisions is characterized by a high degree of uncertainty, especially in the early phase of the product development process, when little information is known, while the decisions made have an impact on the entire product life cycle. Therefore, the goal of complexity management is to reduce uncertainty in order to minimize or avoid the need for design changes in a late phase of product development or in the use phase. With our approach we model the uncertainties with probabilistic reasoning in a Bayesian decision network explicitly, as the uncertainties are directly attached to parts of the design artifact′s model. By modeling the incomplete information expressed by unobserved variables in the Bayesian network in terms of probabilities, as well as the variation of product properties or parameters, a conclusion about the robustness of the product can be made. The application example of a rotary valve from engineering design shows that the decision network can support the engineer in decision-making under uncertainty. Furthermore, a contribution to knowledge formalization in the development project is made.

[1]  Huai Wang,et al.  A System Engineering Approach Using FMEA and Bayesian Network for Risk Analysis—A Case Study , 2019 .

[2]  Ilaria Venanzi,et al.  Robust optimization of a hybrid control system for wind-exposed tall buildings with uncertain mass distribution , 2013 .

[3]  G Frizelle,et al.  The management of complexity in manufacturing: a strategic route map to competitive advantage through the control and measurement of complexity , 1998 .

[4]  P. John Clarkson,et al.  Approaches to Mitigate the Impact of Uncertainty in Development Processes , 2009 .

[5]  Anirban Kundu,et al.  A Novel Approach: Using Bayesian Belief Networks in Product Recommendation , 2011, 2011 Second International Conference on Emerging Applications of Information Technology.

[6]  Mirko Meboldt,et al.  Computational design synthesis of additive manufactured multi-flow nozzles , 2020 .

[7]  I. C. Wright,et al.  Decision making in conceptual engineering design: An empirical investigation , 2003 .

[8]  Ashraf Labib,et al.  Fuzzy Approaches to Evaluation in Engineering Design , 2005 .

[9]  Yang Xiang,et al.  Bayesian probabilistic reasoning in design , 1993, Proceedings of IEEE Pacific Rim Conference on Communications Computers and Signal Processing.

[10]  Carolyn Conner Seepersad,et al.  Bayesian Networks for Set-Based Collaborative Design , 2009, DAC 2009.

[11]  H. Birkhofer,et al.  Modellierung von Unsicherheit in der Produktentwicklung , 2013 .

[12]  Marie-Lise Moullec,et al.  Toward System Architecture Generation and Performances Assessment Under Uncertainty Using Bayesian Networks , 2013 .

[13]  R. Pérez,et al.  The characterization and specification of functional requirements and geometric tolerances in design , 2006 .

[14]  Pablo Bermell-Garcia,et al.  A critical review of Knowledge-Based Engineering: An identification of research challenges , 2012, Adv. Eng. Informatics.

[15]  Francesco Leali,et al.  A review on decision-making methods in engineering design for the automotive industry , 2017 .

[16]  Nam P. Suh,et al.  principles in design , 1990 .

[17]  R. Lachmayer,et al.  A Business Typological Framework for the Management of Product Complexity , 2017 .

[18]  P. C. Gembarski,et al.  THREE WAYS OF INTEGRATING COMPUTER-AIDED DESIGN AND KNOWLEDGE-BASED ENGINEERING , 2020, Proceedings of the Design Society: DESIGN Conference.

[19]  Jerffeson Souza,et al.  A Fuzzy Approach to Requirements Prioritization , 2011, SSBSE.

[20]  Haibing Li,et al.  TEMPLATE-BASED DESIGN FOR DESIGN CO-CREATION , 2018 .

[21]  Patrick T. Hester,et al.  An Analysis of Multi-Criteria Decision Making Methods , 2013 .

[22]  Cengiz Kahraman,et al.  Applications of axiomatic design principles: A literature review , 2010, Expert Syst. Appl..

[23]  Alexander Felfernig,et al.  Configuring Decision Tasks , 2014, Configuration Workshop.

[24]  Lida Xu,et al.  A decision support system for product design in concurrent engineering , 2007, Decis. Support Syst..

[25]  S. Azarm,et al.  Multi-objective robust optimization using a sensitivity region concept , 2005 .

[26]  George A. Hazelrigg,et al.  A Framework for Decision-Based Engineering Design , 1998 .

[27]  Ian Jenkinson,et al.  An Offshore Risk Analysis Method Using Fuzzy Bayesian Network , 2009 .

[28]  Yee Mey Goh,et al.  MANIFESTATION OF UNCERTAINTY - A CLASSIFICATION , 2011 .

[29]  Suh Nam-pyo,et al.  Complexity: Theory and Applications , 2005 .

[30]  Bernhard Schätz,et al.  Design-Space Exploration through Constraint-Based Model-Transformation , 2010, 2010 17th IEEE International Conference and Workshops on Engineering of Computer Based Systems.

[31]  P. Wolniak,et al.  AUTOMATED PRODUCT FUNCTIONALITY AND DESIGN OPTIMIZATION INSTANCING A PRODUCT-SERVICE SYSTEM , 2020, Proceedings of the Design Society: DESIGN Conference.

[32]  Gianfranco La Rocca,et al.  Knowledge based engineering: Between AI and CAD. Review of a language based technology to support engineering design , 2012, Adv. Eng. Informatics.

[33]  David G. Ullman,et al.  Robust decision-making for engineering design , 2001 .

[34]  J. Y Zhu,et al.  Application of Bayesian decision networks to life cycle engineering in Green design and manufacturing , 2003 .

[35]  John Terninko,et al.  Step by Step Qfd: Customer Driven Product Design , 1997 .

[36]  Farhad Alinejad,et al.  Innovative adaptive penalty in surrogate-assisted robust optimization of blade attachments , 2019, Acta Mechanica.

[37]  Sandro Wartzack,et al.  Evaluation of geometric tolerances and generation of variational part representatives for tolerance analysis , 2015 .

[38]  Paul Christoph Gembarski,et al.  Solution Space Development: Conceptual Reflections and Development of the Parameter Space Matrix as Planning Tool for Geometry-based Solution Spaces , 2018, International Journal of Industrial Engineering and Management.

[39]  Sándor Vajna,et al.  Integrated Design Engineering , 2014 .

[40]  Brigitte Moench,et al.  Engineering Design A Systematic Approach , 2016 .

[41]  Kevin Murphy,et al.  Bayes net toolbox for Matlab , 1999 .

[42]  Finn V. Jensen,et al.  Bayesian Networks and Decision Graphs , 2001, Statistics for Engineering and Information Science.

[43]  Alexander Felfernig,et al.  Constraint-based recommender systems: technologies and research issues , 2008, ICEC.

[44]  Tae Hee Lee,et al.  Robust Design: An Overview , 2006 .

[45]  Petter Krus,et al.  Flexible and robust CAD models for design automation , 2012, Adv. Eng. Informatics.

[46]  Roland Lachmayer,et al.  The Use of Knowledge-Based Engineering Systems and Artificial Intelligence in Product Development: A Snapshot , 2019, ISAT.

[47]  Roland Lachmayer,et al.  Case-Based Parametric Analysis: A Method for Design of Tailored Forming Hybrid Material Component , 2018 .

[48]  Nikolaos Papakonstantinou,et al.  Simulation of Interactions and Emergent Failure Behavior During Complex System Design , 2012, J. Comput. Inf. Sci. Eng..

[49]  G. La Rocca,et al.  Knowledge-based engineering to support aircraft multidisciplinary design and optimization , 2010 .

[50]  Gerd Brewka,et al.  Artificial intelligence - a modern approach by Stuart Russell and Peter Norvig, Prentice Hall. Series in Artificial Intelligence, Englewood Cliffs, NJ , 1996, The Knowledge Engineering Review.

[51]  P. John Clarkson,et al.  A Classification of Uncertainty for Early Product and System Design , 2007 .

[52]  G La Rocca,et al.  Knowledge-based engineering to support aircraft multidisciplinary design and optimization , 2010 .

[53]  Paul Christoph Gembarski,et al.  Computer-Aided Engineering Environment for Designing Tailored Forming Components , 2020, Metals.

[54]  Erik K. Antonsson,et al.  Imprecision in Engineering Design , 1995 .

[55]  Adrian A. Hopgood,et al.  Intelligent Systems for Engineers and Scientists , 2021 .

[56]  Jiancheng Lv,et al.  Evolutionary Multiobjective Optimization With Robustness Enhancement , 2020, IEEE Transactions on Evolutionary Computation.

[57]  W. A. Tiao,et al.  House of quality: A fuzzy logic-based requirements analysis , 1999, Eur. J. Oper. Res..

[58]  Xun Xu,et al.  A Knowledge Management System to Support Design for Additive Manufacturing Using Bayesian Networks , 2018 .

[59]  Hao-Tien Liu,et al.  Product design and selection using fuzzy QFD and fuzzy MCDM approaches , 2011 .