Functionality and Fault Modeling of a DC Motor with Verilog-AMS

Nicola Dall'Ora, S. Vinco, F. Fummi
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引用次数: 1

Abstract

In the context of industry 4.0, it is strategic to support factories with innovative maintenance approaches, so to avoid faults and decrease the risks of a production stop. The first step of the digitization of factories has been the collection of large amounts of data monitoring the health status of the plant. However, such data is of little use unless it is clearly correlated with information about faults occurred on the line: some faults may be sporadic, or happen only in extremely critical conditions, and thus no data may be available related to their occurrence. Artificially generating such data would force to actually damage the plant, that is of course not a viable solution. The goal of this work is to generate faulty temporal series, that reproduce the behavior of a component on the occurrence of specific faults. The innovative approach models the component of interest in Verilog-AMS (VAMS) and systematically injects the faults of interest, by keeping a direct link with the real possible cause of such faulty behavior on the plant. To prove the effectiveness of the proposed solution, the approach is applied to a direct current motor (DC motor), an electromechanical system that converts electrical energy into mechanical energy.
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用Verilog-AMS进行直流电机的功能和故障建模
在工业4.0的背景下,通过创新的维护方法来支持工厂是一种战略,从而避免故障并降低生产停止的风险。工厂数字化的第一步是收集大量数据,监测工厂的健康状况。然而,除非这些数据与在线上发生的故障信息有明确的关联,否则这些数据几乎没有用处:有些故障可能是零星的,或者只发生在极其危急的情况下,因此可能没有与故障发生有关的数据。人为地产生这样的数据将迫使实际破坏工厂,这当然不是一个可行的解决方案。这项工作的目标是生成故障时间序列,再现组件在发生特定故障时的行为。该创新方法对Verilog-AMS (VAMS)中感兴趣的组件进行建模,并系统地注入感兴趣的故障,通过与工厂上此类故障行为的实际可能原因保持直接联系。为了证明所提出的解决方案的有效性,将该方法应用于直流电机(DC电机),一种将电能转换为机械能的机电系统。
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