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Manufacturing System Design Based on Axiomatic Design: Case of Assembly Line

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DOI: 
https://doi.org/10.3926/jiem.728
Abstract (2. Language): 
Purpose: In this paper, a combined Production Line Design (PLD) process which includes many design aspects is presented, developed and validated. Design/methodology/approach: The PLD process is based on the SADT (Structured Analysis and Design Technique) diagram and the Axiomatic Design (AD) method. Findings: The results of the validation indicated that the production line designed by this process is outperformed the initial line of the company. Practical implications: For a purpose of validation, this proposed process has been applied in a manufacturing company and it has been validated by simulation. Originality/value: Recently, the problems of production line design (PLD) have attracted the attention of many researchers. However, only a few studies have treated the PLD which includes all design aspects. In this work, a combined PLD porcess is presented. It should be noted that the proposed process is simple and effective.
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