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Manufacturing System Design Meets Big Data Analytics for Continuous Improvement

机译:制造系统设计与大数据分析相结合以实现持续改进

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Desired business results are the direct result of the system design. It is also theorized that the ‘thinking’ within an organization creates the organization's ‘structure’ or design, which then drives the system's ‘behavior.’ Achievement of enduring change in a system's performance must begin with a change in the thinking of all the people in the enterprise, but especially that of leadership. In the absence of such a change in the thinking, the needed structural changes within a system may result in short-lived, point solutions, resulting in localized optimization of sub-systems versus systemic improvement. Axiomatic design, applied to a manufacturing system, is a design methodology to best reflect, understand and control the inherent complexity of large-scale integrated systems. System stability, and ultimately cost and span-time reduction, are the desired objectives of system design. This paper provides an overview of the manufacturing system design decomposition, and discusses the integrated use of data analytics to identify bottlenecks for system-improvement and use of the manufacturing system design decomposition to cost-justify resource allocation decisions for improvement.
机译:期望的业务结果是系统设计的直接结果。从理论上讲,组织内部的“思维”会创建组织的“结构”或设计,从而驱动系统的“行为”。要实现系统性能的持久变化,必须从改变所有人的思想开始在企业中,尤其是在领导中。如果没有这种思想上的改变,则系统内所需的结构更改可能会导致寿命短的点式解决方案,从而导致子系统的局部优化与系统性改进。公理化设计应用于制造系统,是一种能够最好地反映,理解和控制大规模集成系统固有复杂性的设计方法。系统设计的理想目标是系统的稳定性以及最终的成本和时间的减少。本文提供了制造系统设计分解的概述,并讨论了数据分析的综合使用以识别系统改进的瓶颈,并使用制造系统设计分解以成本合理化的方式进行资源分配决策以进行改进。

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