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Model based approach in fault detection and diagnosis for DC motor

机译:基于模型的直流电动机故障检测与诊断方法

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Recent advances in microelectronic circuit have enabled the application of process diagnostics to a variety of systems to improve performances and the reliability. Failure detection and isolation strategies monitor a system for degradations and if detected, classify the failure source. One of the most important methods for failure detection and diagnosis is the analysis of the variations of the estimated parameter of DC Motor. In this paper is presented a structure of a method for failure detection and diagnosis based on continuous time parameter estimation of a mathematical model of the DC Motor. Continuous time parameters can be related easily to the physical characterizations of DC Motor. The parameter is directly estimated by well-known prediction error method of identification for dynamic systems. The failure detection it is based on changing the process coefficient and statistical decision methods. Unlike usual papers, the failure can be detected whether others process parameters are not constant.
机译:微电子电路的最新进展已使过程诊断能够应用于各种系统,以提高性能和可靠性。故障检测和隔离策略监视系统的降级,如果检测到故障,则对故障源进行分类。故障检测和诊断的最重要方法之一是分析直流电动机估计参数的变化。本文提出了一种基于直流电动机数学模型的连续时间参数估计的故障检测和诊断方法的结构。连续时间参数可以很容易地与直流电动机的物理特性相关。通过众所周知的动态系统识别的预测误差方法直接估计该参数。故障检测基于更改过程系数和统计决策方法。与通常的论文不同,如果其他过程参数不是恒定的,则可以检测到故障。

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