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Alternative model structure with simplistic noise model to identify linear time invariant systems subjected to non-stationary disturbances

机译:具有简化噪声模型的替代模型结构,用于识别遭受非平稳扰动的线性时不变系统

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摘要

Non-stationary disturbances are of common occurrence in chemical process industry. These cannot be modeled using constant parameterized models and hence pose a difficult problem in the identification of true process and disturbance dynamics. A simple system identification technique to identify the linear processes affected by non-stationary disturbances is proposed in this work. This uses a time varying bias term, a representative of the additive non-stationary external disturbance entering the process, in addition to the output predictions in an ARMAX or OE model framework. Decoupled loss function and covariance update with different forgetting factors for linear time invariant input-output dynamics part and time varying part (bias term) of the model ensures the unbiased estimation of true process dynamics along with disturbance dynamics. Practical issues such as time delay estimation, model order selection are discussed. Extensions for time varying processes and MIMO processes are also proposed. Validation is performed using various simulation studies.
机译:非平稳干扰在化学过程工业中很常见。这些不能使用恒定参数化模型进行建模,因此在识别真实过程和扰动动力学时会遇到一个难题。在这项工作中,提出了一种简单的系统识别技术来识别受非平稳干扰影响的线性过程。除了ARMAX或OE模型框架中的输出预测外,它还使用时变偏差项,代表进入过程的附加非平稳外部干扰。模型的线性时不变输入-输出动力学部分和时变部分(偏差项)的去耦损失函数和协方差更新具有不同的遗忘因子,可确保对真实过程动力学以及扰动动力学进行无偏估计。讨论了诸如时延估计,模型顺序选择等实际问题。还提出了时变处理和MIMO处理的扩展。使用各种模拟研究进行验证。

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