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Soft Measurement Method for Dioxin Emission Concentration In Municipal Solid Waste Incineration Process

机译:城市固体废物焚烧过程中二恶英排放浓度的软测量方法

摘要

Disclosed is a soft measurement method of DXN emission concentration based on multi-source latent feature selective ensemble (SEN) modeling. First, MSWI process data is divided into subsystems of different sources according to industrial processes, and principal component analysis (PCA) is used to separately extract the subsystems' latent features and conduct multi-source latent feature primary selection according to the threshold value of the principal component contribution rate preset by experience. Using mutual information (MI) to evaluate the correlation between the latent features of the primary selection and DXN, and adaptively determine the upper and lower limits and thresholds of the latent feature reselection; finally, based on the reselected latent features, a least squares-support vector machine (LS-SVM) algorithm with a hyperparameter adaptive selection mechanism is used to establish DXN emission concentration sub-models for different subsystems, and based on branch and bound (BB) and prediction error information entropy weighting algorithm to optimize the selection of sub-models and calculation weights coefficient, a SEN soft measurement model of DXN emission concentration is constructed.
机译:公开了一种基于多源潜在特征选择性集合(SEN)建模的DXN发射浓度的软测量方法。首先,根据工业过程将MSWI进程数据分为不同来源的子系统,并且主要成分分析(PCA)用于单独提取子系统的潜在特征并根据阈值进行多源潜在级别初级选择。主要成分缴费率按经验预设。使用互信息(MI)来评估主要选择和DXN的潜在特征与DXN之间的相关性,并自适应地确定潜在特征重选的上限和下限和阈值;最后,基于重新选择的潜在特征,使用具有超级数据级自适应选择机制的最小二乘 - 支持向量机(LS-SVM)算法用于为不同子系统建立DXN发射集中子模型,并基于分支和绑定(BB )和预测误差信息熵权加权算法优化子模型的选择和计算权重系数,构建了DXN发射浓度的森软测量模型。

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