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Generalized prediction and optimal operating parameters of PCDD/F emissions by explainable Bayesian support vector regression

机译:可解释的贝叶斯支持向量回归PCDD / F排放的广义预测和最优运行参数

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摘要

The current derived models for predicting polychlorinated dibenzo-p-dioxins and -furans (PCDD/F) emissions from incineration can only be applied to a specific incinerator due to high deviation or systematic errors. And the models fail to provide quantized guidance for the operation of full-scale municipal solid waste incinerators. To address the problem, explainable Bayesian support vector regression (E-BSVR) has been established to generalized predict and maximumly reduce the PCDD/F emissions. First, forty-two PCDD/F samples were determined from a whole year experiment in a full-scale incinerator. Meanwhile, 1,2,4-trichlorobenzene(1,2,4-TrCBz), carbon monoxide, sulfur dioxide, oxynitride, paniculate matter, fluoride, and hydrogen chloride were measured, as input features. Second, after box-cox transformation normalization, and hyperparameters tuning, the R-Squared and root mean square error (RMSE) of the proposed method are 0.983 and 0.044, exhibiting high accuracy. The high accuracy (R-Squared = 0.992) and generalization are also proven on the dataset with high PCDD/F emissions. Then, the performances of BSVR are compared with kernel ridge regression, multiple linear regression, and unary linear regression, indicating afar smaller RMSE of BSVR. Finally, the optimal operating parameters are calculated through local interpretable model-agnostic explanations and the partial dependence plot. Results indicate that reducing the content of organic chlorine in municipal solid waste and inhibiting the deacon reaction are important methods for reducing PCDD/F emissions. The optimal operating parameters for the maximal reduction of PCDD/F emissions are 1,2,4-TrCBz < 0.098 ug/m~3, fluoride > 0.452 rag/m~3. As a whole, the E-BSVR method can be used as a reliable and accurate approach for the prediction and reduction of PCDD/F emissions.
机译:用于预测聚氯氯的二苯并辛-P-二恶英和 - 焚烧的呋喃(PCDD / F)排放的当前衍生模型只能通过高偏差或系统误差施加到特定的焚烧炉。而模型未能为全级市政固体废物焚烧炉运行提供量化指导。为了解决这个问题,可以确定解释的贝叶斯支持向量回归(E-BSVR),以广义预测和最大限度地减少PCDD / F排放。首先,从全年焚烧​​炉中的全年实验确定四十二个PCDD / F样品。同时,测量1,2,4-三氯苯(1,2,4-TRCBZ),一氧化碳,二氧化硫,氮氧化物,对氟化物,氟化物和氯化氢,作为输入特征。其次,在Box-Cox转换标准化之后,所提出的方法的R线和均方根误差(RMSE)为0.983和0.044,表现出高精度。在具有高PCDD / F排放的数据集上还证明了高精度(R线= 0.992)和泛化。然后,将BSVR的性能与内核脊回归,多元线性回归和一元线性回归进行比较,指示远处的BSVR的RMSE。最后,通过局部可解释模型 - 不可知的解释和部分依赖图来计算最佳操作参数。结果表明,降低城市固体废物中有机氯的含量,抑制直通反应是减少PCDD / F排放的重要方法。用于最大减少PCDD / F排放的最佳操作参数是1,2,4-TRCBZ <0.098 UG / m〜3,氟化物> 0.452 rag / m〜3。总的来说,E-BSVR方法可以用作可靠且准确的方法来预测和减少PCDD / F排放。

著录项

  • 来源
    《Waste Management》 |2021年第11期|437-447|共11页
  • 作者单位

    State Key Laboratory of Clean Energy Utilization Zhejiang University Hangzhou 310027 PR China;

    State Key Laboratory of Clean Energy Utilization Zhejiang University Hangzhou 310027 PR China;

    State Key Laboratory of Clean Energy Utilization Zhejiang University Hangzhou 310027 PR China;

    Zhejiang Fuchunjiang Environmental Technology Research Co. Ltd. Hangzhou 311401 PR China;

    State Key Laboratory of Clean Energy Utilization Zhejiang University Hangzhou 310027 PR China;

    State Key Laboratory of Clean Energy Utilization Zhejiang University Hangzhou 310027 PR China;

    State Key Laboratory of Clean Energy Utilization Zhejiang University Hangzhou 310027 PR China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    PCDD/F; Support vector regression; Bayesian algorithm; Model interpretation; Optimal operating parameters;

    机译:PCDD / F;支持向量回归;贝叶斯算法;模型解释;最佳操作参数;

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