4.7 Article

Multidisciplinary design optimization to identify additive manufacturing resources in customized product development

期刊

出版社

ELSEVIER
DOI: 10.1016/j.jcde.2016.10.001

关键词

Additive manufacturing; Customized products; Multidisciplinary design optimization

资金

  1. SERC
  2. A*STAR Industrial Additive Manufacturing Programme
  3. SIMTech-NTU Joint Lab
  4. AcRF Tier 1 grant from Ministry of Education, Singapore [RG94/13]

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Additive manufacturing (AM) techniques are ideal for producing customized products due to their high design flexibility. Despite the previous studies on specific additive manufactured customized products such as biomedical implants and prostheses, the simultaneous optimization of components, materials, AM processes, and dimensions remains a challenge. Multidisciplinary design optimization (MDO) is a research area of solving complex design problems involving multiple disciplines which usually interact with each other. The objective of this research is to formulate and solve an MDO problem in the development of additive manufactured products customized for various customers in different market segments. Three disciplines, i.e. the customer preference modeling, AM production costing, and structural mechanics are incorporated in the MDO problem. The optimal selections of components, materials, AM processes, and dimensional parameters are searched with the objectives to maximize the functionality utility, match individual customers' personal performance requirements, and minimize the total cost. A multi objective genetic algorithm with the proposed chromosome encoding pattern is applied to solve the MDO problem. A case study of designing customized trans-tibial prostheses with additive manufactured components is presented to illustrate the proposed MDO method. Clusters of multidimensional Pareto-optimal design solutions are obtained from the MDO, showing trade-offs among the objectives. Appropriate design decision can be chosen from the clusters based on the manufacturer's market strategy. (C) 2016 Society for Computational Design and Engineering. Publishing Servies by Elsevier.

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