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Uncertainty and sensitivity analyses of co-combustion/pyrolysis of textile dyeing sludge and incense sticks: Regression and machine-learning models

机译:纺织染色污泥和香棒共燃烧/热解的不确定性和敏感性分析:回归和机器学习模型

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摘要

Bioenergy generation from biomass waste through co-combustion/pyrolysis fulfills simultaneously multiple objectives of reductions in fossil fuel use, greenhouse gas emission, and solid waste stream. This experimental study aimed to quantify the multiple co-combustion/pyrolysis responses of textile dyeing sludge (TDS) and incense sticks (IS) as a function of blend ratio (BR), heating rate (HR), atmosphere type (Atm), and temperature (Temp). Joint optimizations, and predictor importance, sensitivity, uncertainty and interaction analyses were conducted using data-driven models for the responses of remaining mass (RM), derivative thermogravimetry (DTG), and differential scanning calorimetry (DSC). The data-driven models compared in this study were Box Behnken design (BBD)-based regression models, general linear models (GLM), and the six full models with all the predictors included of multivariate adaptive regression splines, multiple linear regressions, random forests (RF), regression decision tree (RDT), RDT with ensemble and bagger, and gradient boosting machine. BBD, GLM, and Sobols total and first-order indices indicated HR as the most important and sensitive predictor in the joint optimizations. GLM pointed to a three-way interaction among HR, BR, and Atm, while BBD, and Sobols second-order index showed a two-way interaction between HR and BR as the most important ones. RF outperformed the other full models for all the responses in terms of validation metrics. RF showed the two most important predictors as Temp and BR for RM; HR and Temp for DSC; and Temp and HR for DTG, respectively, which also constituted the most important two-way interactions. (C) 2019 Elsevier Ltd. All rights reserved.
机译:通过共燃烧/热解从生物量废物中产生生物能量,同时满足化石燃料使用,温室气体排放和固体废物流的多重减少目标。该实验研究旨在量化纺织染色污泥(TDS)和香棒(A)的多种共燃烧/热解应答,作为共混比(BR),加热速率(HR),大气型(ATM)和温度(温度)。使用数据驱动模型对剩余质量(RM),衍生热重量(DTG)和差示扫描量热法(DSC)的响应进行数据驱动模型进行联合优化和预测的重要性,灵敏度,不确定和相互作用分析。在本研究中的数据驱动模型是盒Behnken设计(BBD)的回归模型,一般线性模型(GLM)和六种完整模型,其中包含多变量自适应回归样条,多元线性回归,随机林的多元线性回归(rf),回归决策树(rdt),RDT,坐标和架架和梯度升压机。 BBD,GLM和SOBOLS总数和一阶指数指出HR作为联合优化中最重要和最敏感的预测因子。 GLM指向HR,BR和ATM之间的三向相互作用,而BBD和SOBOLS二阶指数显示HR和BR之间的双向相互作用作为最重要的。 RF在验证指标方面表现出所有响应的其他全部型号。 RF显示了最重要的预测因子,如TEMP和RM;人力资源和DSC的温度;分别为DTG的温度和HR,也构成了最重要的双向相互作用。 (c)2019 Elsevier Ltd.保留所有权利。

著录项

  • 来源
    《Renewable energy》 |2020年第5期|463-474|共12页
  • 作者单位

    Guangdong Univ Technol Inst Environm Hlth & Pollut Control Sch Environm Sci & Engn Guangdong Key Lab Environ Guangzhou Key Lab Environm Catalysis & Pollut Con Guangzhou 510006 Peoples R China;

    Abant Izzet Baysal Univ Dept Chem Engn TR-14030 Bolu Turkey;

    Abant Izzet Baysal Univ Dept Environm Engn TR-14030 Bolu Turkey|Ardahan Univ Dept Environm Engn TR-75002 Ardahan Turkey;

    Guangdong Univ Technol Inst Environm Hlth & Pollut Control Sch Environm Sci & Engn Guangdong Key Lab Environ Guangzhou Key Lab Environm Catalysis & Pollut Con Guangzhou 510006 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Thermochemical conversions; Box-Behnken design; Machine learning; Numeric optimization; Empirical models;

    机译:热化学转换;Box-Behnken设计;机器学习;数字优化;经验模型;

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