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Golden Path Search Algorithm for the KSA Scheme

The concepts of Industry 4.1 for achieving Zero-Defect (ZD) manufacturing were disclosed in IEEE Robotics and Automation Letters in January 2016. ZD of all the deliverables can be achieved by discarding the defective products via a real-time and online total inspection technology, such as Automatic...

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Published in:IEEE transactions on automation science and engineering 2022-07, Vol.19 (3), p.1-13
Main Authors: Ing, Ching-Kang, Lin, Chin-Yi, Peng, Po-Hsiang, Hsieh, Yu-Ming, Cheng, Fan-Tien
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description The concepts of Industry 4.1 for achieving Zero-Defect (ZD) manufacturing were disclosed in IEEE Robotics and Automation Letters in January 2016. ZD of all the deliverables can be achieved by discarding the defective products via a real-time and online total inspection technology, such as Automatic Virtual Metrology (AVM). Further, the Key-variable Search Algorithm (KSA) of the Intelligent Yield Management (IYM) system developed by our research team can be utilized to find out the root causes of the defects for continuous improvement on those defective products. As such, nearly ZD of all products may be achieved. However, in a multistage manufacturing process (MMP) environment, a workpiece may randomly pass through one of the manufacturing devices with the same function in each stage. Different devices of the same type perform differently in each stage, where the performances will be accumulated through the designated manufacturing process and affect the final yield. KSA can only identify the influence of univariate variables (i.e., single devices) on the yield, yet it cannot detect the manufacturing paths that have significant influence on the yield. In order to cope with this deficiency such that the golden path with a better yield amongst all the MMP paths can be found, this research proposes the Golden Path Search Algorithm (GPSA), which can plan golden paths with high yield under the condition of the number of variables being much larger than that of samples. As a result, it makes the improvement of manufacturing yield be more comprehensive.
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subjects Algorithms
Automation
Continuous improvement
Devices
golden path search algorithm (GPSA)
Indexes
Inspection
intelligent and flexible manufacturing
intelligent yield management (IYM)
key-variable search algorithm (KSA)
Manufacturers
Manufacturing
Manufacturing engineering
Manufacturing processes
Metrology
multistage manufacturing process (MMP)
Performance evaluation
Production
Robotics
Search algorithms
semiconductor manufacturing
Workpieces
Zero defects (ZD)
title Golden Path Search Algorithm for the KSA Scheme
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