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Dynamic production system diagnosis and prognosis using model-based data-driven method

机译:基于模型的数据驱动方法对生产系统的动态诊断与预测

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摘要

Advanced manufacturing systems are becoming increasingly complex, subjecting to constant changes driven by fluctuating market demands, new technology insertion, as well as random disruption events. While information about production processes has been becoming increasingly transparent, detailed, and real-time, the utilization of this information for real-time manufacturing analysis and decision-making has been lagging behind largely due to the limitation of the traditional methodologies for production system analysis, and a lack of real-time manufacturing processes modeling approach and real-time performance identification method. In this paper, a novel data-driven stochastic manufacturing system model is proposed to describe production dynamics and a systematic method is developed to identify the causes of permanent production loss in both deterministic and stochastic scenarios. The proposed methods integrate available sensor data with the knowledge of production system physical properties. Such methods can be transferred to a computer for system self-diagnosis/prognosis to provide users with deeper understanding of the underlying relationships between system status and performance, and to facilitate real-time production control and decision making. This effort is a step forward to smart manufacturing for system real-time performance identification in achieving improved system responsiveness and efficiency. (C) 2017 Elsevier Ltd. All rights reserved.
机译:先进的制造系统正变得越来越复杂,受不断变化的市场需求,新技术的应用以及随机中断事件的驱动而不断变化。尽管有关生产过程的信息变得越来越透明,详细和实时,但由于传统的生产系统分析方法的局限性,该信息在实时制造分析和决策中的利用一直滞后。 ,并且缺乏实时制造流程建模方法和实时性能识别方法。本文提出了一种新颖的数据驱动的随机制造系统模型来描述生产动态,并开发了一种系统的方法来确定确定性和随机情况下永久性生产损失的原因。所提出的方法将可用的传感器数据与生产系统物理特性的知识集成在一起。可以将此类方法传输到计算机以进行系统自诊断/自诊断,以使用户对系统状态和性能之间的潜在关系有更深入的了解,并有助于实时生产控制和决策。这项工作是向智能制造迈进的一步,以实现系统实时性能识别,从而提高系统的响应速度和效率。 (C)2017 Elsevier Ltd.保留所有权利。

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