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A prognostic function for complex systems to support production and co-operative planning based on an extension of object oriented Bayesian networks

机译:复杂系统支持生产和合作规划的预后功能,基于面向对象的贝叶斯网络的扩展

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The high costs of complex systems lead companies to improve their efficiency. This improvement can particularly be achieved by reducing their downtimes because of failures or for maintenance purposes. This reduction is the main goal of Condition-Based Maintenance and of Prognostics and Health Management. Both those maintenance policies need to install appropriate sensors and data processes not only to assess the current health of their critical components but also their future health. These future health assessments, also called prognostics, produce the Remaining Useful Life of the components associated to imprecision quantifications. In the case of complex systems where components are numerous, the matter is to assess the health of whole systems from the prognostics of their components (the local prognostics). In this paper, we propose a generic function that assesses the future availability of complex systems from their local prognostics (the prognostics of their components) by using inferences rules. The results of this function can then be used as decision support indicators for planning productive and maintenance tasks. This function exploits a proposed extension for Object Oriented Bayesian Networks (OOBN) used to model the complex system in order to assess the probabilities of failure of components, functions and subsystems. The modeling of the complex system is required and it is presented as well as modeling transformations to tackle some OOBN limitations. Then, the computing inference rules used to define the future availability of complex systems are presented. The extension added to OOBN consists in indicating the components that should first be maintained to improve the availabilities of the functions and subsystems in order to provide a second kind of decision support indicators for maintenance. A fictitious multi-component system bringing together most of the structures encountered in complex systems is modeled and the results obtained from the application of the proposed generic function are presented as well as ways that production and maintenance planning can used the computed indicators. Then we show how the proposed generic prognostic function can be used to predict propagations of failures and their effects on the functioning of functions and subsystems. (C) 2017 Elsevier B.V. All rights reserved.
机译:复杂系统领导公司的高成本提高了效率。这种改进尤其可以通过减少由于故障或维护目的来减少其停机时间来实现。这种减少是基于条件的维护和预后和健康管理的主要目标。这些维护策略都需要安装适当的传感器和数据流程,不仅要评估其关键组件的当前健康,而且还需要进行其未来的健康。这些未来的健康评估,也称为预测,产生与不精确量化相关的组件的剩余使用寿命。在复杂的系统的情况下,组件众多的复杂系统,问题是评估从其组件的预后(局部预后)的全系统的健康状况。在本文中,我们提出了一种通用功能,通过使用推断规则评估复杂系统的未来可用性(其组件的预测)。然后可以将此功能的结果用作规划生产和维护任务的决策支持指标。此功能利用用于模拟复杂系统的面向对象导向的贝叶斯网络(OOBN)的建议扩展,以便评估组件,功能和子系统失败的概率。需要复杂系统的建模,并呈现它以及建模转换以解决一些OOBN限制。然后,呈现了用于定义复杂系统未来可用性的计算推断规则。添加到OOBN的扩展名称在指示应首先要提高功能和子系统的可用性的组件中,以便提供用于维护的第二种决策支持指标。在复杂系统中遇到的大多数结构的虚拟多组分系统是建模的,并提出了从应用程序的应用中获得的结果以及生产和维护计划可以使用计算指示器的方式。然后,我们展示了所提出的通用预后函数如何用于预测故障的传播及其对功能和子系统的运作的影响。 (c)2017 Elsevier B.v.保留所有权利。

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