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Partial constrained least squares (PCLS) and application in soft sensor

机译:部分约束最小二乘(PCLS)和软传感器中的应用

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摘要

With the combination of extracting latent variables and setting constrained samples, partial constrained least squares (PCLS) is proposed and applied for soft sensor. Similar to constrained least squares (CIS), for the purpose of generating matrix equations with Lagrange multiplier, PCLS assigns some samples in calibration set as constrained ones and others as non-constrained ones. Then, this regression coefficients vector for calibration can be obtained by solving matrix equations with partial least squares (PIS). In moving window method of soft sensor, the sample to be predicted is highly related to the samples in previous adjacent sequential time points, thus those samples can be set as constrained ones and other samples not close to those sequential time points in the window as non-constrained ones. Based on the constrained and non-constrained samples, PCLS can be applied to calibrating a model and estimating the predicted sample. Two batches of datasets containing Sulfur Recovery Unite (SRU) and simulated datasets generated by random walk were tested by the proposed method. The results showed that PCLS is the generation of CLS, while CLS is the special case of PCLS when the number of latent variables equals the total number of variables and constrained samples. Meanwhile, in contrast with least squares (LS), PLS and CLS, PCLS can result in smaller prediction errors. Furthermore, four simulated datasets SIM2, SIM3 and SIM4) with trend and/or random walk, or, without trend and/or random walk, showed PCLS can be applied to the datasets when the samples in sequential time points are correlated to those in the previous adjacent sequential time points.
机译:利用提取潜伏变量和设定约束样品的组合,提出了部分约束最小二乘(PCLS)并施加软传感器。与约束最小二乘(CIS)类似,为了生成具有拉格朗日乘法器的矩阵方程,PCLS将校准集的一些样本分配为约束的校准和其他样本作为非受约束的样本。然后,可以通过求解与部分最小二乘(PIS)的矩阵方程来获得用于校准的该回归系数向量。在软传感器的移动窗口方法中,要预测的样本与先前相邻的连续时间点中的样本高度相关,因此可以将这些样本设置为受约束的样本,并且其他样本不接近窗口中的那些连续时间点作为非 - 举办的。基于受约束和非约束样品,可以应用PCLS以校准模型并估计预测的样本。通过所提出的方法测试含有硫恢复Unite(SRU)和随机步行产生的模拟数据集的两批数据集。结果表明,PCLS是CLS的产生,而CLS是当潜在变量的数量等于变量的总数和约束样品时的PCLS的特殊情况。同时,与最小二乘(LS),PLS和CLS相比,PCL可以导致更小的预测误差。此外,具有趋势和/或随机步行的四个模拟数据集SIM2,SIM3和SIM4,或者没有趋势和/或随机步行,显示在顺序时间点的样本与那些中的样本相关时,可以将PCL应用于数据集。以前的相邻顺序时间点。

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