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Comparative Study of Latent Structure Modeling Approaches with Its Application to Prediction Dioxin Emission Concentration

机译:潜在结构建模方法在二恶英排放浓度预测中的比较研究

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Dioxin (DXN) is a kind of pollutant commonly discharged during municipal solid waste incineration (MSWI). In practical industrial processes, the concentration of DXN emission is measured by using offline analysis, but this method is constrained by long time lag and high cost. This study aims to develop soft measuring model for DXN emission concentration by using easy-to-measure MSWI process variables with the latent structure algorithm. Three latent structure algorithms, namely, linear projection to latent structure (PLS), nonlinear kernel PLS (KPLS), and a new improved general algorithm-based selective ensemble KPLS (IGASENKPLS), are applied to build the DXN estimation model. Results show that the latent structure algorithm can successfully generate DXN models with good prediction performance. Nonlinear KPLS can extract more variations from the dataset than linear PLS, but IGASENKPLS can enhance prediction performance even further. The proposed approach demonstrates the feasibility of using latent structure algorithm to model DXN emission concentration by using collinear, nonlinear, and small-size sampling data.
机译:二恶英(DXN)是在城市固体废物焚化(MSWI)中通常排放的一种污染物。在实际的工业过程中,通过脱机分析来测量DXN排放的浓度,但是这种方法存在时间滞后和成本高的问题。本研究旨在通过使用易于测量的MSWI过程变量和潜在结构算法,为DXN排放浓度建立软测量模型。将三种潜在结构算法,即线性投影到潜在结构(PLS),非线性核PLS(KPLS)和新的基于常规算法的改进改进的选择性集成KPLS(IGASENKPLS),用于构建DXN估计模型。结果表明,潜在结构算法可以成功地生成具有良好预测性能的DXN模型。与线性PLS相比,非线性KPLS可以从数据集中提取更多的变化,但是IGASENKPLS可以进一步增强预测性能。所提出的方法证明了通过使用共线性,非线性和小尺寸采样数据,使用潜在结构算法对DXN排放浓度进行建模的可行性。

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