Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical Reactions

The Kumar model as a molecular model has achieved successful application. However, only 22 reactions limit its veracity and adaptability for feedstocks. A series of models with different degrees of integration of the free radical model and the molecular model has been proposed to enhance feedstock a...

Full description

Bibliographic Details
Main Authors: Peng Mu, Xiangbai Gu
Format: Article
Language:English
Published: MDPI AG 2020-01-01
Series:Processes
Subjects:
Online Access:https://www.mdpi.com/2227-9717/8/1/91
id doaj-456cadf5b32a4db986503f6f0c21690c
record_format Article
spelling doaj-456cadf5b32a4db986503f6f0c21690c2020-11-25T01:42:38ZengMDPI AGProcesses2227-97172020-01-01819110.3390/pr8010091pr8010091Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical ReactionsPeng Mu0Xiangbai Gu1College of Information Science & Technology, Beijing University of Chemical Technology, Beijing 100029, ChinaCollege of Information Science & Technology, Beijing University of Chemical Technology, Beijing 100029, ChinaThe Kumar model as a molecular model has achieved successful application. However, only 22 reactions limit its veracity and adaptability for feedstocks. A series of models with different degrees of integration of the free radical model and the molecular model has been proposed to enhance feedstock adaptability and simulation accuracy. An improved search engine algorithm, namely Improved PageRank (IPR), is provided and applied to calculate the importance of substances in Kumar model to screen the free-radical reaction network for efficient model selection. A methodology of optimal structure and model parameters chosen is applied to the target to improve the adaptability of the material and the accuracy of the model. Then, two cases with different feedstocks are demonstrated with industrial data to verify the correctness of the proposed approach and its wide feedstock adaptability. The proposed model demonstrates good performance: (1) The mean relative errors (MRE) of the K-R (Kumar and free-radical) model have reached an order of magnitude less than 0.1% compared with 5% in the Kumar model. Further, (2) the K-R model can be implemented to model some feedstocks which Kumar model can’t simulate successfully. The K-R model can be applied in simulation of extensive feedstocks with high accuracy.https://www.mdpi.com/2227-9717/8/1/91reaction network enrichmentk-r modelimproved pagerank algorithm (ipr)model-fittingkinetics
collection DOAJ
language English
format Article
sources DOAJ
author Peng Mu
Xiangbai Gu
spellingShingle Peng Mu
Xiangbai Gu
Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical Reactions
Processes
reaction network enrichment
k-r model
improved pagerank algorithm (ipr)
model-fitting
kinetics
author_facet Peng Mu
Xiangbai Gu
author_sort Peng Mu
title Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical Reactions
title_short Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical Reactions
title_full Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical Reactions
title_fullStr Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical Reactions
title_full_unstemmed Thermal Cracking Furnace Optimal Modeling Based on Enriched Kumar Model by Free-Radical Reactions
title_sort thermal cracking furnace optimal modeling based on enriched kumar model by free-radical reactions
publisher MDPI AG
series Processes
issn 2227-9717
publishDate 2020-01-01
description The Kumar model as a molecular model has achieved successful application. However, only 22 reactions limit its veracity and adaptability for feedstocks. A series of models with different degrees of integration of the free radical model and the molecular model has been proposed to enhance feedstock adaptability and simulation accuracy. An improved search engine algorithm, namely Improved PageRank (IPR), is provided and applied to calculate the importance of substances in Kumar model to screen the free-radical reaction network for efficient model selection. A methodology of optimal structure and model parameters chosen is applied to the target to improve the adaptability of the material and the accuracy of the model. Then, two cases with different feedstocks are demonstrated with industrial data to verify the correctness of the proposed approach and its wide feedstock adaptability. The proposed model demonstrates good performance: (1) The mean relative errors (MRE) of the K-R (Kumar and free-radical) model have reached an order of magnitude less than 0.1% compared with 5% in the Kumar model. Further, (2) the K-R model can be implemented to model some feedstocks which Kumar model can’t simulate successfully. The K-R model can be applied in simulation of extensive feedstocks with high accuracy.
topic reaction network enrichment
k-r model
improved pagerank algorithm (ipr)
model-fitting
kinetics
url https://www.mdpi.com/2227-9717/8/1/91
work_keys_str_mv AT pengmu thermalcrackingfurnaceoptimalmodelingbasedonenrichedkumarmodelbyfreeradicalreactions
AT xiangbaigu thermalcrackingfurnaceoptimalmodelingbasedonenrichedkumarmodelbyfreeradicalreactions
_version_ 1725035042987573248