Heddy Gerald, Huzaifa Umer, Beling Peter, Haimes Yacov, Marvel Jeremy, Weiss Brian, LaViers Amy
University of Virginia, Charlottesville, VA, 22904, USA.
National Institute of Standards and Technology, Gaithersburg, MD, 20899, USA.
Proc Annu Conf Progn Health Manag Soc. 2015;6:039.
The vision of Smart Manufacturing Systems (SMS) includes collaborative robots that can adapt to a range of scenarios. This vision requires a classification of multiple system behaviors, or sequences of movement, that can achieve the same high-level tasks. Likewise, this vision presents unique challenges regarding the management of environmental variables in concert with discrete, logic-based programming. Overcoming these challenges requires targeted performance and health monitoring of both the logical controller and the physical components of the robotic system. Prognostics and health management (PHM) defines a field of techniques and methods that enable condition-monitoring, diagnostics, and prognostics of physical elements, functional processes, overall systems, etc. PHM is warranted in this effort given that the controller is vulnerable to program changes, which propagate in unexpected ways, logical runtime exceptions, sensor failure, and even bit rot. The physical component's health is affected by the wear and tear experienced by machines constantly in motion. The controller's source of faults is inherently discrete, while the latter occurs in a manner that builds up continuously over time. Such a disconnect poses unique challenges for PHM. This paper presents a robotic monitoring system that captures and resolves this disconnect. This effort leverages supervisory robotic control and model checking with linear temporal logic (LTL), presenting them as a novel monitoring system for PHM. This methodology has been demonstrated in a MATLAB-based simulator for an industry inspired use-case in the context of PHM. Future work will use the methodology to develop adaptive, intelligent control strategies to evenly distribute wear on the joints of the robotic arms, maximizing the life of the system.
智能制造系统(SMS)的愿景包括能够适应一系列场景的协作机器人。这一愿景需要对多种系统行为或运动序列进行分类,这些行为或序列能够实现相同的高级任务。同样,这一愿景在与基于离散逻辑的编程协同管理环境变量方面也带来了独特的挑战。克服这些挑战需要对机器人系统的逻辑控制器和物理组件进行有针对性的性能和健康监测。预测与健康管理(PHM)定义了一个技术和方法领域,可实现对物理元件、功能过程、整个系统等的状态监测、诊断和预测。鉴于控制器容易受到程序更改(这些更改会以意想不到的方式传播)、逻辑运行时异常、传感器故障甚至数据位损坏的影响,因此在这项工作中采用PHM是有必要的。物理组件的健康状况会受到不断运动的机器所经历的磨损的影响。控制器的故障源本质上是离散的,而后者则以随着时间不断累积的方式出现。这种脱节给PHM带来了独特的挑战。本文提出了一种机器人监测系统,该系统能够捕捉并解决这种脱节问题。这项工作利用了机器人监督控制和线性时态逻辑(LTL)模型检查,并将它们作为一种用于PHM的新型监测系统呈现出来。这种方法已在基于MATLAB的模拟器中针对PHM背景下的一个受行业启发的用例进行了演示。未来的工作将使用该方法开发自适应智能控制策略,以均匀分布机器人手臂关节上的磨损,从而最大限度地延长系统寿命。