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Machine learning application to predict yields of solid products from biomass torrefaction

机译:机器学习应用,以预测生物量烘焙的固体产品产量

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Machine learning was used to develop a model that had the capability to predict yields of solid products from biomass torrefaction using input features of biomass properties and torrefaction conditions. With ten-fold cross-validation, several machine learning algorithms were evaluated, and their hyper parameters were optimized by a full-factor grid search. Gradient tree boosting algorithm was found to have the highest prediction accuracy with R-2 of about 0.90 and an average error of 0.07 w/w. Six highly important features on making predictions of the model were torrefaction temperature, residence time, and O-2 concentration in the reacting gas for torrefaction conditions, as well as volatile matter, carbon content, and oxygen content for biomass properties. Unlike the carbon content, the other features were found to have a negative effect on the yields of torrefied biomass. The biomass property features contributed to the solid yields for about 30%, with approximately one-third accounted by the volatile matter. (c) 2020 Elsevier Ltd. All rights reserved.
机译:机器学习用于开发一种模型,该模型能够使用生物质性质和烘焙状况的输入特征来预测生物质烘焙的固体产物的产量。通过十倍的交叉验证,评估了几种机器学习算法,并且通过全因素网格搜索优化了它们的超参数。发现梯度树升压算法具有最高的预测精度,R-2约为0.90,平均误差为0.07 w / w。在制定模型的预测中的六个非常重要的特征是烘焙气体的烘焙温度,停留时间和O-2浓度,以及用于生物质性质的挥发性物质,碳含量和氧含量。与碳含量不同,发现其他特征对雾化生物质的产率产生负面影响。生物质性能有助于固体产率约30%,大约三分之一的挥发物质占挥发物质。 (c)2020 elestvier有限公司保留所有权利。

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