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A multi-granularity approach for estimating the sustainability of a factory simulation model: semiconductor packaging as an example

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Abstract

Dynamic factory simulation has been considered as an effective means to control a factory. However, the large amount of money, time, efforts, and know-how required for conducting a factory simulation study force a factory to pursue the persistent application of the factory simulation model, i.e. the sustainability of the factory simulation model. Therefore, strategies are required to facilitate the rapid establishment of the factory simulation model, to lower the technical requirements of the model, and to reduce the effort and time spent on simulation tasks, thus increasing users’ willingness to continue the application of the model. However, such issues have rarely been discussed. In addition, no method is available for estimating the sustainability of a factory simulation model. To address this problem, short-time evidence was analyzed rather than observing data over a long period. Then, a multi-granularity approach is proposed to estimate the sustainability of a factory simulation model based on these evidences. The proposed methodology has been applied to the simulation of a real semiconductor packaging facility. According to the experimental results, the multi-granularity approach reduced the input space by 89% and maintained a very high estimation accuracy. In addition, it also saved considerable time in building the models for estimating sustainability. Furthermore, without the multi-granularity approach, the sustainability of the factory simulation model could be observed only after a long period.

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Acknowledgement

This study is jointly sponsored by Ministry of Science and Technology and Siliconware Precision Industries Co., Ltd.

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Correspondence to Min-Chi Chiu.

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Chen, T., Wang, LC. & Chiu, MC. A multi-granularity approach for estimating the sustainability of a factory simulation model: semiconductor packaging as an example. Oper Res Int J 18, 711–729 (2018). https://doi.org/10.1007/s12351-017-0342-5

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  • DOI: https://doi.org/10.1007/s12351-017-0342-5

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