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PARTICLE FILTERS FOR DYNAMIC DATA RECTIFICATION AND PROCESS CHANGE DETECTION

机译:用于动态数据校正和过程更改检测的粒子过滤器

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摘要

The objectives of dynamic data rectification are wide-ranging and include the estimation of the process states, process signal de-noising, and outlier detection and removal. One approach reported in the literature for dynamic data rectification is the conjunction of the extended Kalman filter (EKF) and the expectation-maximization algorithm. However, this approach is limited in terms of its applicability due to the EKF being less appropriate where the state and measurement functions are highly non-linear or where the posterior distribution of the states is non-Gaussian. This paper proposes an alternative approach whereby particle filters are utilized for dynamic data rectification. By formulating the rectification problem within a probabilistic framework, the particle filters generate Monte Carlo samples from the posterior distribution of the system states, and thus provide the basis for rectifying the process measurements. Furthermore, the proposed technique is capable of detecting changes in process operation and thus complements the task of process fault diagnosis. The appropriateness of particle filters for dynamic data rectification is demonstrated through its application to a benchmark pH neutralization process.
机译:动态数据校正的目标广泛,包括过程状态的估计,过程信号的去噪以及离群值的检测和消除。文献中报道的一种用于动态数据校正的方法是扩展卡尔曼滤波器(EKF)和期望最大化算法的结合。但是,由于状态和测量函数高度非线性或状态的后验分布为非高斯分布时,EKF不太合适,因此该方法的适用性受到限制。本文提出了一种替代方法,其中利用粒子滤波器进行动态数据校正。通过在概率框架内公式化整流问题,粒子滤波器从系统状态的后验分布生成蒙特卡洛样本,从而为校正过程测量提供基础。此外,所提出的技术能够检测过程操作中的变化,从而补充了过程故障诊断的任务。通过将其应用于基准pH中和过程,证明了颗粒过滤器适用于动态数据校正的适用性。

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