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Modified recursive partial least squares algorithm with application to modeling parameters of ball mill load

机译:改进的递推偏最小二乘算法在球磨机负荷参数建模中的应用

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Recursive partial least squares (RPLS) regression is effectively used in process monitoring and modeling to deal with the stronger collinearity of the process variables and slow time-varying property of industrial processes. Aim at the RPLS cannot solve the modeling speed and the accuracy problems effectively, a modified sample-wise RPLS algorithm is proposed in this paper. It updates the PLS model according to the process status. We use the approximate linear dependence (ALD) condition to check each new sample. The model is reconstructed recursively such that the new samples satisfy the ALD condition. Experimental study on modeling parameters of ball mill load shows that the proposed modified RPLS algorithm is computationally faster, and the modeling accuracy is higher than conventional RPLS for the time-varying process.
机译:递归偏最小二乘(RPLS)回归有效地用于过程监控和建模中,以处理更强的过程变量共线性和缓慢的工业过程时变特性。针对RPLS无法有效解决建模速度和精度问题的问题,提出了一种改进的基于样本的RPLS算法。它根据过程状态更新PLS模型。我们使用近似线性相关性(ALD)条件来检查每个新样本。递归地重建模型,以使新样本满足ALD条件。球磨机负荷建模参数的实验研究表明,所提出的改进的RPLS算法在时变过程中计算速度更快,建模精度高于传统的RPLS算法。

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