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A software defined-based hybrid cloud for the design of smart micro-manufacturing system

机译:基于软件定义的混合云,用于智能微型制造系统的设计

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摘要

For purposes of re-configurability and flexibility, a few control data are extracted from manufacturing data generated from a production line in a smart factory. A production manager can rearrange those control data selected from the manufacturing data to formulate the mission of a production line. All related data are saved in a cloud storage after being verified by a security mechanism. They can be accessed only with permission. Since the structures of control data and manufacturing data are different, they are saved in various databases. However, accessing different databases results in additional communication cost, and the data-save performance will be decreased simultaneously. The production line setting may be changed based on the mission of the received orders, so the control data will be modified. It costs huge communication overhead if the cloud storage queries the control data for each request. In this paper, we propose two cache-based mechanisms, termed laziness approach and flow-based update (FBU) approach, to reduce the cost of verifying the save permission. The laziness approach gets the corresponding control data when the received data can not be matched to the information in the cache. The update process of the FBU approach is similar to that of the laziness, but the FBU downloads the entire control data of the specific production line. According to our analysis results, both mechanisms provide better performance than that of on-demand approach in terms of data-save process. In the worst case analysis, the FBU approach only needs a half cost of that required by the laziness approach. Moreover, the optimal cache size is inversely proportional to the stability of the production line setting, and we also suggest an optimal setting of the cache size.
机译:出于重新配置和灵活性的目的,从智能工厂中的生产线产生的制造数据中提取了一些控制数据。生产经理可以重新排列从制造数据中选择的控制数据,以制定生产线的任务。在通过安全机制验证后,所有相关数据都保存在云存储中。它们只能通过许可访问。由于控制数据和制造数据的结构不同,因此它们保存在各种数据库中。但是,访问不同的数据库导致额外的通信成本,数据保存性能将同时减少。可以基于所接收的订单的任务来改变生产线设置,因此将修改控制数据。如果云存储查询每个请求的控制数据,则需要巨大的通信开销。在本文中,我们提出了两种基于缓存的机制,称为Laziness方法和基于流量的更新(FBU)方法,以降低验证保存许可的成本。当接收的数据不能与高速缓存中的信息匹配时,Laziness方法获取相应的控制数据。 FBU方法的更新过程类似于懒惰的方法,但FBU下载了特定生产线的整个控制数据。根据我们的分析结果,两种机制都提供了比数据保存过程的按需方法更好的性能。在最坏的情况下,FBU方法仅需要懒惰方式所需的一半成本。此外,最佳高速缓存大小与生产线设置的稳定性成反比,我们还建议高速缓存大小的最佳设置。

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  • 来源
    《Microsystem technologies》 |2018年第10期|共12页
  • 作者单位

    Natl Chin Yi Univ Technol Dept Comp Sci &

    Informat Engn 57 Sec 2 Zhongshan Rd Taichung 41170 Taiwan;

    Natl Taiwan Univ Inst Ind Engn Room 517 Coll Engn Bldg 30 Sec 3 Xinhai Rd Taipei 106 Taiwan;

    Natl Taiwan Univ Inst Ind Engn Room 517 Coll Engn Bldg 30 Sec 3 Xinhai Rd Taipei 106 Taiwan;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 微电子学、集成电路(IC);
  • 关键词

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