A Measurement Frequency Estimation Method for Failure Prognosis of an Automated Tire Condition Monitoring System

R. Meissner, H. Meyer, F. Raddatz
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引用次数: 2

Abstract

The ongoing digitalization allows operators and manufacturers to constantly gain new insights about their asset’s performance and degradation status. This information could potentially help to reduce operating and maintenance costs. Although significant amount of research has been spent in determining Remaining Useful Lifetimes (RUL) of various systems, these efforts often implicitly assume an unrestricted availability of measurement data. However, the amount of acquired data significantly drives the necessary investment cost or is sometimes even impossible to obtain in required frequencies in reality. In this paper, we will investigate the changes of the precision for the RUL prognosis on the example of a Tire Pressure Indication System (TPIS). After a possible layout with sensor requirements for a fully automated condition monitoring system has been developed in theory, we describe necessary data cleansing steps to account for environmental impacts on the system’s performance and to derive the system’s health status. With the help of a Monte Carlo (MC) simulation, we evaluate the system’s sensitivity towards changes in precision of the RUL for different measurement frequencies, prognostic models, and parameter settings. The results allow an estimation of the minimum pressure measurement frequency for a fully automated TPIS in order to obtain the required prognostic performance and to maximize cost efficiency.
轮胎状态自动监测系统故障预测的测量频率估计方法
持续的数字化使运营商和制造商能够不断获得有关资产性能和退化状态的新见解。这些信息可能有助于降低操作和维护成本。尽管在确定各种系统的剩余使用寿命(RUL)方面已经进行了大量的研究,但这些工作通常隐含地假设测量数据的可用性不受限制。然而,获取的数据量极大地推动了必要的投资成本,有时甚至无法在现实中获得所需的频率。本文将以轮胎压力指示系统(TPIS)为例,研究RUL预测精度的变化。在理论上开发了全自动状态监测系统的传感器要求的可能布局后,我们描述了必要的数据清理步骤,以解释环境对系统性能的影响,并得出系统的健康状态。在蒙特卡罗(MC)模拟的帮助下,我们评估了系统对不同测量频率、预测模型和参数设置下RUL精度变化的敏感性。该结果可用于估计全自动TPIS的最小压力测量频率,以获得所需的预测性能并最大限度地提高成本效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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