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基于机器学习的废塑料热解制燃料模型构建研究

谌思罕 袁志龙 王晔 孙轶斐

能源环境保护2024,Vol.38Issue(5):127-134,8.
能源环境保护2024,Vol.38Issue(5):127-134,8.DOI:10.20078/j.eep.20240704

基于机器学习的废塑料热解制燃料模型构建研究

Study of model construction of fuel production from waste plastic pyrolysis based on machine learning

谌思罕 1袁志龙 1王晔 1孙轶斐2

作者信息

  • 1. 北京航空航天大学 能源与动力工程学院,北京 102206
  • 2. 北京航空航天大学 能源与动力工程学院,北京 102206||海南大学 环境科学与工程学院,海南海口 570228||北京航空航天大学 国际交叉科学研究院 先进能源与碳中和研究中心,北京 100191
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摘要

Abstract

The conversion of waste plastics into oil(aviation fuel)and syngas(carbon monoxide and hydrogen)through pyrolysis offers an efficient means of recycling and reusing these plastics.Factors such as feedstock types and working conditions have an important impact on pyrolysis products,which makes the reaction mechanism of pyrolysis process more complex,so it is necessary to explore the reac-tion nature through a large number of experimental data,and the experimental cost is high.Machine learning has the advantages of large data processing volume and easy extraction of statistical laws,which can reduce costs and research difficulties.A machine-learning approach was applied to utilize data from non-catalytic and molecular sieve catalytic processes and to build a model for analyzing raw material pyrolysis.The Gradient Boosting Regression(GBR)algorithm has the best fitting performance for predicting oil yield(R2=0.91,RMSE=7.78),while the adaptive boosting algorithm(AdaBoost)has the best fitting performance for predicting gas yield(R2=0.83,RMSE=6.42),enabling accurate prediction of reaction conditions.It was found that optimal oil yield occurred at a heating rate of approx-imately 20℃/min and a temperature of 500℃through importance ranking and single dependency an-alyses.Additionally,a dual dependency analysis of oil yield with reaction temperature,heating rate,and reaction time was conducted.This study quantified the effects of heating rate,pyrolysis temperature and other reaction conditions on the oil and gas yield of plastic pyrolysis,which provides a theoretical basis for the production practice of waste plastic recycling.

关键词

废塑料热解/分子筛催化剂/机器学习/梯度提升算法/依赖性分析

Key words

Waste plastic pyrolysis/Molecular sieve catalyst/Machine learning/Gradient boosting/Dependency analysis

分类

资源环境

引用本文复制引用

谌思罕,袁志龙,王晔,孙轶斐..基于机器学习的废塑料热解制燃料模型构建研究[J].能源环境保护,2024,38(5):127-134,8.

基金项目

国家自然科学基金资助项目(U23B20166,22206011) (U23B20166,22206011)

能源环境保护

2097-4183

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