Machine Learning Predictions of Oil Yields Obtained by Plastic Pyrolysis and Application to Thermodynamic Analysis

IF 4.3 Q2 ENGINEERING, CHEMICAL ACS Engineering Au Pub Date : 2022-12-29 DOI:10.1021/acsengineeringau.2c00038
Elizabeth R. Belden, Matthew Rando, Owen G. Ferrara, Eric T. Himebaugh, Christopher A. Skangos, Nikolaos K. Kazantzis, Randy C. Paffenroth and Michael T. Timko*, 
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引用次数: 3

Abstract

Chemical recycling via thermal processes such as pyrolysis is a potentially viable way to convert mixed streams of waste plastics into usable fuels and chemicals. Unfortunately, experimentally measuring product yields for real waste streams can be time- and cost-prohibitive, and the yields are very sensitive to feed composition, especially for certain types of plastics like poly(ethylene terephthalate) (PET) and polyvinyl chloride (PVC). Models capable of predicting yields and conversion from feed composition and reaction conditions have potential as tools to prioritize resources to the most promising plastic streams and to evaluate potential preseparation strategies to improve yields. In this study, a data set consisting of 325 data points for pyrolysis of plastic feeds was collected from the open literature. The data set was divided into training and test sub data sets; the training data were used to optimize the seven different machine learning regression methods, and the testing data were used to evaluate the accuracy of the resulting models. Of the seven types of models, eXtreme Gradient Boosting (XGBoost) predicted the oil yield of the test set with the highest accuracy, corresponding to a mean absolute error (MAE) value of 9.1%. The optimized XGBoost model was then used to predict the oil yields from real waste compositions found in Municipal Recycling Facilities (MRFs) and the Rhine River. The dependence of oil yields on composition was evaluated, and strategies for removing PET and PVC were assessed as examples of how to use the model. Thermodynamic analysis of a pyrolysis system capable of achieving oil yields predicted using the machine-learned model showed that pyrolysis of Rhine River plastics should be net exergy producing under most reasonable conditions.

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塑料热解产油率的机器学习预测及其在热力学分析中的应用
通过热解等热过程进行化学回收是将废塑料混合流转化为可用燃料和化学品的一种潜在可行的方式。不幸的是,通过实验测量实际废物流的产品产量可能会耗费大量时间和成本,而且产量对进料成分非常敏感,尤其是对某些类型的塑料,如聚对苯二甲酸乙二醇酯(PET)和聚氯乙烯(PVC)。能够预测产量和从原料组成和反应条件转化的模型有潜力作为工具,将资源优先用于最有前景的塑料流,并评估潜在的预分离策略以提高产量。在本研究中,从公开文献中收集了一个由325个塑料原料热解数据点组成的数据集。数据集分为训练和测试子数据集;训练数据用于优化七种不同的机器学习回归方法,测试数据用于评估所得模型的准确性。在这七种类型的模型中,极限梯度助推(XGBoost)以最高的精度预测了测试集的产油量,对应的平均绝对误差(MAE)值为9.1%。然后,使用优化的XGBoost模型预测了城市回收设施(MRF)和莱茵河中发现的真实废物成分的产油量。评估了油产量对组成的依赖性,并评估了去除PET和PVC的策略,作为如何使用该模型的例子。对能够实现使用机器学习模型预测的石油产量的热解系统的热力学分析表明,在最合理的条件下,莱茵河塑料的热解应该是净火用生产。
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ACS Engineering Au
ACS Engineering Au 化学工程技术-
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期刊介绍: )ACS Engineering Au is an open access journal that reports significant advances in chemical engineering applied chemistry and energy covering fundamentals processes and products. The journal's broad scope includes experimental theoretical mathematical computational chemical and physical research from academic and industrial settings. Short letters comprehensive articles reviews and perspectives are welcome on topics that include:Fundamental research in such areas as thermodynamics transport phenomena (flow mixing mass & heat transfer) chemical reaction kinetics and engineering catalysis separations interfacial phenomena and materialsProcess design development and intensification (e.g. process technologies for chemicals and materials synthesis and design methods process intensification multiphase reactors scale-up systems analysis process control data correlation schemes modeling machine learning Artificial Intelligence)Product research and development involving chemical and engineering aspects (e.g. catalysts plastics elastomers fibers adhesives coatings paper membranes lubricants ceramics aerosols fluidic devices intensified process equipment)Energy and fuels (e.g. pre-treatment processing and utilization of renewable energy resources; processing and utilization of fuels; properties and structure or molecular composition of both raw fuels and refined products; fuel cells hydrogen batteries; photochemical fuel and energy production; decarbonization; electrification; microwave; cavitation)Measurement techniques computational models and data on thermo-physical thermodynamic and transport properties of materials and phase equilibrium behaviorNew methods models and tools (e.g. real-time data analytics multi-scale models physics informed machine learning models machine learning enhanced physics-based models soft sensors high-performance computing)
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