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System Identification of Essential Oil Extraction System Using Non-Linear Autoregressive Model with Exogenous Inputs (NARX)

机译:外源投入非线性自回归模型的精油提取系统的系统识别(NARX)

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This paper explores the application of Non-Linear Autoregressive Model with Exogeneous Inputs (NARX) system identification of an essential oil extraction system. Model structure selection was performed using the Binary Particle Swarm Optimization (BP SO) algorithm by (J.Kennedy and R.Eberhart, 1997). The application of BPSO for model structure selection represents each particle's position as binary values. Then, the binary values were used to select a set of regressors columns from the regressor matrix. QR factorization was used to estimate the parameters of the reduced regressor matrix. Tests performed on the essential oil extraction system by (Rahiman, 2009), defined the 2nd order model with three terms, while fulfilling all model validation criterions.
机译:本文探讨了非线性自回归模型与基本油提取系统的共同输入(NARX)系统鉴定的应用。使用二进制粒子群优化(BP SO)算法(J.Kennedy和R.Eberhart,1997)进行模型结构选择。 BPSO用于模型结构选择的应用表示每个粒子的位置作为二进制值。然后,使用二进制值来从回归矩阵中选择一组回归量列。 QR分解用于估计减少的回归矩阵的参数。通过(Rahiman,2009)对基本油提取系统进行的测试定义了三个术语,同时满足了所有模型验证标准。

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