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A model-based probabilistic approach for fault detection and identification with application to the diagnosis of automotive engines

机译:故障检测和识别的基于模型的概率方法在汽车发动机诊断中的应用

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摘要

A model based parameter and state estimation technique is presented toward fault diagnosis in dynamic systems. The methodology is based on the representation of the system dynamics in terms of transition probabilities between user-specified sets of magnitude intervals of system parameters and state variables during user-specified time intervals. These intervals may reflect noise in the monitored data, random changes in the parameters, or modeling uncertainties in general. The transition probabilities are obtained from a given system model that yields the current values of the state variables in discrete time from their values at the previous time step and the values of the system parameters at the previous time step. Implementation of the methodology on a simplified model of the air, inertial, fuel, and exhaust dynamics of the powertrain of a vehicle shows that the methodology is capable of estimating the system parameters and tracking the unmonitored dynamic variables within the user-specified magnitude intervals.
机译:提出了一种基于模型的参数和状态估计技术,用于动态系统的故障诊断。该方法基于在用户指定的时间间隔内用户指定的系统参数的幅度间隔集和状态变量之间的转换概率方面的系统动力学表示。这些时间间隔可能会反映出监视数据中的噪声,参数的随机变化或通常的建模不确定性。转换概率是从给定的系统模型中获得的,该模型从状态变量的上一个时间步的值和系统参数的值在离散的时间内得出状态变量的当前值。在车辆动力总成的空气,惯性,燃料和排气动力学的简化模型上实施该方法表明,该方法能够估计系统参数并跟踪用户指定的幅度区间内的不受监控的动态变量。

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