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Soft Sensor for Polypropylene Melt Index based on Improved Orthogonal Least Squares

机译:基于改进的正交最小二乘的聚丙烯熔体指数软传感器

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A new method to build melt index soft sensor is proposed based on improved orthogonal least squares (IOLS) for nonlinear polypropylene process. OLS model has good generalization and sparseness by combining parameter local regularization and leave-one-out mean square error in cost function. Orthogonal signal correction(OSC) is applied to preprocess OLS model in order to reduce the noise information which is uncorrelated with output variables. Considering multi-grade operation in polypropylene plant, model parameter adaptive updating strategy is presented for updating the OLS model parameters online. The application results on real industrial process data show that IOLS can predict polypropylene melt index more accurately than partial least squares (PLS) and OLS.
机译:提出了一种基于改进的正交最小二乘(IOLS)的非线性聚丙烯工艺建立熔融指数软传感器的新方法。通过将参数局部正则化和成本函数中的留一均方误差相结合,OLS模型具有良好的泛化性和稀疏性。为了减少与输出变量不相关的噪声信息,将正交信号校正(OSC)应用于预处理OLS模型。考虑到聚丙烯装置的多级运行,提出了在线更新OLS模型参数的模型参数自适应更新策略。在实际工业过程数据上的应用结果表明,与部分最小二乘(PLS)和OLS相比,IOLS可以更准确地预测聚丙烯的熔融指数。

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