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Multi-model LPV approach to CSTR system identification with stochastic scheduling variable

机译:随机调度变量的多模型LPV方法识别CSTR系统

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摘要

The problem of CSTR system identification is studied with a stochastic scheduling parameter. Multi-model approach is used to describe non-linear process, in which, each linear parameter system is represented by a ARX model. An expectation maximization (EM) algorithm is used for the identification of parameters which are unknown. Furthermore, scheduling variable corresponds to the operating conditions of the nonlinear process is considered as a stochastic parameter, which follows a Markov jump process.
机译:用随机调度参数研究了CSTR系统识别的问题。多模型方法用于描述非线性过程,其中,每个线性参数系统由ARX模型表示。期望最大化(EM)算法用于识别未知的参数。此外,调度变量对应于非线性过程的操作条件被认为是随机参数,其遵循马尔可夫跳跃过程。

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