A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures

The vapor–liquid critical properties of mixtures, which represent the end points of vapor–liquid equilibrium curves, are crucial for the development of next-generation environmentally friendly working fluids and advancements in supercritical fluid technology. Experimental measurement and theoretical...

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Main Author: Bo Tang (23472) (author)
Other Authors: Xiaoyu Yao (6172691) (author), Xueqiang Dong (2267776) (author), Yanxing Zhao (298370) (author), Maoqiong Gong (2267779) (author)
Published: 2024
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_version_ 1852026342751600640
author Bo Tang (23472)
author2 Xiaoyu Yao (6172691)
Xueqiang Dong (2267776)
Yanxing Zhao (298370)
Maoqiong Gong (2267779)
author2_role author
author
author
author
author_facet Bo Tang (23472)
Xiaoyu Yao (6172691)
Xueqiang Dong (2267776)
Yanxing Zhao (298370)
Maoqiong Gong (2267779)
author_role author
dc.creator.none.fl_str_mv Bo Tang (23472)
Xiaoyu Yao (6172691)
Xueqiang Dong (2267776)
Yanxing Zhao (298370)
Maoqiong Gong (2267779)
dc.date.none.fl_str_mv 2024-09-26T18:35:26Z
dc.identifier.none.fl_str_mv 10.1021/acs.iecr.4c02649.s003
dc.relation.none.fl_str_mv https://figshare.com/articles/dataset/A_New_Fast_Estimation_Method_for_Critical_Properties_of_Mixtures_Based_on_the_Modified_Redlich_Kister_Method-Part_2_Prediction_of_Critical_Properties_for_Binary_and_Ternary_Mixtures/27115113
dc.rights.none.fl_str_mv CC BY-NC 4.0
info:eu-repo/semantics/openAccess
dc.subject.none.fl_str_mv Biochemistry
Medicine
Cancer
Statistics
Science Policy
Plant Biology
Environmental Sciences not elsewhere classified
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Physical Sciences not elsewhere classified
supercritical fluid technology
showing higher accuracy
predicting critical temperatures
predicting critical temperature
correlating critical temperatures
two pure components
fitting data set
three prediction models
prediction accuracy among
predicting critical volumes
predicting critical properties
including critical temperature
covers many systems
containing organic compounds
new methods extend
prediction data set
new prediction models
ternary mixtures consisting
2 </ sub
critical volume data
new models
critical volumes
critical volume
critical properties
new methods
prediction methods
low accuracy
critical pressures
critical pressure
critical point
ternary mixtures
pure substances
part 2
including considering
remaining data
theoretical prediction
prediction ability
van konynenburg
simpler form
molecular polarity
mixtures based
main means
highest correlation
free alkanes
extrapolation ability
experimental measurement
end points
empirical parameters
continuous curve
alicyclic hydrocarbons
adjustable parameters
accurately evaluate
dc.title.none.fl_str_mv A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
dc.type.none.fl_str_mv Dataset
info:eu-repo/semantics/publishedVersion
dataset
description The vapor–liquid critical properties of mixtures, which represent the end points of vapor–liquid equilibrium curves, are crucial for the development of next-generation environmentally friendly working fluids and advancements in supercritical fluid technology. Experimental measurement and theoretical prediction are the main means to obtain the critical properties. However, the existing theoretical prediction methods have the problems of low accuracy, especially when predicting critical volumes of binary mixtures and critical properties of ternary mixtures. Moreover, in most prediction methods, all the data are used to fit the adjustable parameters. No prediction data set was added to test its prediction ability. In this work, new prediction models for critical properties, including critical temperature, critical pressure, and critical volume of binary mixtures and ternary mixtures, were proposed. New methods extend our previous work (Tang et al.’s model) to the prediction of critical volumes and critical properties of ternary mixtures and accurately evaluate the extrapolation ability. New prediction models inherit many advantages of Tang et al.’s model, including considering the effect of molecular polarity to some extent, possessing four fewer adjustable parameters, a simpler form in use, and not requiring the critical volume data of pure substances when predicting critical temperatures and critical pressures of mixtures. Moreover, three new methods possess fast prediction abilities for critical properties of mixtures, showing higher accuracy in predicting critical properties of binary and ternary mixtures in the fitting data set and prediction data set. When predicting critical temperatures and critical pressures, new models can be applied to binary and ternary mixtures consisting of methane-free alkanes, alkenes, alkynes, alicyclic hydrocarbons, benzene and its derivatives, NH<sub>3</sub>, CO<sub>2</sub>, halogenated hydrocarbon, N<sub>2</sub>O, Kr, Xe, sulfur-compounds, and oxygen-containing organic compounds. Notably, new methods are applicable only to class I (continuous curve of the critical point of two pure components) of the vapor–liquid critical locus, classified by Van Konynenburg and Scott. Class I covers many systems and most of the available critical property experimental data. Almost all systems can be covered in predicting critical volumes. About 9000 critical data points including critical temperatures, critical pressures, and critical volumes for binary mixtures and ternary mixtures are collected. About 80% of the data for binary mixtures were used to fit the empirical parameters. The remaining data were used to test the prediction ability for binary and ternary mixtures for three new prediction methods. The prediction model 1 shows the highest correlation and prediction accuracy among the three prediction models. The average absolute relative deviations are 1.13, 3.91, and 5.90 when correlating critical temperatures, critical pressures, and critical volumes; 1.43, 4.94, and 6.93 when predicting critical temperatures, critical pressures, and critical volumes of binary mixtures; and 1.12 and 3.99 when predicting critical temperature and critical pressures of ternary mixtures.
eu_rights_str_mv openAccess
id Manara_f9a9b6e308c19aef399eef2e712e7ad2
identifier_str_mv 10.1021/acs.iecr.4c02649.s003
network_acronym_str Manara
network_name_str ManaraRepo
oai_identifier_str oai:figshare.com:article/27115113
publishDate 2024
repository.mail.fl_str_mv
repository.name.fl_str_mv
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rights_invalid_str_mv CC BY-NC 4.0
spelling A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary MixturesBo Tang (23472)Xiaoyu Yao (6172691)Xueqiang Dong (2267776)Yanxing Zhao (298370)Maoqiong Gong (2267779)BiochemistryMedicineCancerStatisticsScience PolicyPlant BiologyEnvironmental Sciences not elsewhere classifiedBiological Sciences not elsewhere classifiedMathematical Sciences not elsewhere classifiedPhysical Sciences not elsewhere classifiedsupercritical fluid technologyshowing higher accuracypredicting critical temperaturespredicting critical temperaturecorrelating critical temperaturestwo pure componentsfitting data setthree prediction modelsprediction accuracy amongpredicting critical volumespredicting critical propertiesincluding critical temperaturecovers many systemscontaining organic compoundsnew methods extendprediction data setnew prediction modelsternary mixtures consisting2 </ subcritical volume datanew modelscritical volumescritical volumecritical propertiesnew methodsprediction methodslow accuracycritical pressurescritical pressurecritical pointternary mixturespure substancespart 2including consideringremaining datatheoretical predictionprediction abilityvan konynenburgsimpler formmolecular polaritymixtures basedmain meanshighest correlationfree alkanesextrapolation abilityexperimental measurementend pointsempirical parameterscontinuous curvealicyclic hydrocarbonsadjustable parametersaccurately evaluateThe vapor–liquid critical properties of mixtures, which represent the end points of vapor–liquid equilibrium curves, are crucial for the development of next-generation environmentally friendly working fluids and advancements in supercritical fluid technology. Experimental measurement and theoretical prediction are the main means to obtain the critical properties. However, the existing theoretical prediction methods have the problems of low accuracy, especially when predicting critical volumes of binary mixtures and critical properties of ternary mixtures. Moreover, in most prediction methods, all the data are used to fit the adjustable parameters. No prediction data set was added to test its prediction ability. In this work, new prediction models for critical properties, including critical temperature, critical pressure, and critical volume of binary mixtures and ternary mixtures, were proposed. New methods extend our previous work (Tang et al.’s model) to the prediction of critical volumes and critical properties of ternary mixtures and accurately evaluate the extrapolation ability. New prediction models inherit many advantages of Tang et al.’s model, including considering the effect of molecular polarity to some extent, possessing four fewer adjustable parameters, a simpler form in use, and not requiring the critical volume data of pure substances when predicting critical temperatures and critical pressures of mixtures. Moreover, three new methods possess fast prediction abilities for critical properties of mixtures, showing higher accuracy in predicting critical properties of binary and ternary mixtures in the fitting data set and prediction data set. When predicting critical temperatures and critical pressures, new models can be applied to binary and ternary mixtures consisting of methane-free alkanes, alkenes, alkynes, alicyclic hydrocarbons, benzene and its derivatives, NH<sub>3</sub>, CO<sub>2</sub>, halogenated hydrocarbon, N<sub>2</sub>O, Kr, Xe, sulfur-compounds, and oxygen-containing organic compounds. Notably, new methods are applicable only to class I (continuous curve of the critical point of two pure components) of the vapor–liquid critical locus, classified by Van Konynenburg and Scott. Class I covers many systems and most of the available critical property experimental data. Almost all systems can be covered in predicting critical volumes. About 9000 critical data points including critical temperatures, critical pressures, and critical volumes for binary mixtures and ternary mixtures are collected. About 80% of the data for binary mixtures were used to fit the empirical parameters. The remaining data were used to test the prediction ability for binary and ternary mixtures for three new prediction methods. The prediction model 1 shows the highest correlation and prediction accuracy among the three prediction models. The average absolute relative deviations are 1.13, 3.91, and 5.90 when correlating critical temperatures, critical pressures, and critical volumes; 1.43, 4.94, and 6.93 when predicting critical temperatures, critical pressures, and critical volumes of binary mixtures; and 1.12 and 3.99 when predicting critical temperature and critical pressures of ternary mixtures.2024-09-26T18:35:26ZDatasetinfo:eu-repo/semantics/publishedVersiondataset10.1021/acs.iecr.4c02649.s003https://figshare.com/articles/dataset/A_New_Fast_Estimation_Method_for_Critical_Properties_of_Mixtures_Based_on_the_Modified_Redlich_Kister_Method-Part_2_Prediction_of_Critical_Properties_for_Binary_and_Ternary_Mixtures/27115113CC BY-NC 4.0info:eu-repo/semantics/openAccessoai:figshare.com:article/271151132024-09-26T18:35:26Z
spellingShingle A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
Bo Tang (23472)
Biochemistry
Medicine
Cancer
Statistics
Science Policy
Plant Biology
Environmental Sciences not elsewhere classified
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Physical Sciences not elsewhere classified
supercritical fluid technology
showing higher accuracy
predicting critical temperatures
predicting critical temperature
correlating critical temperatures
two pure components
fitting data set
three prediction models
prediction accuracy among
predicting critical volumes
predicting critical properties
including critical temperature
covers many systems
containing organic compounds
new methods extend
prediction data set
new prediction models
ternary mixtures consisting
2 </ sub
critical volume data
new models
critical volumes
critical volume
critical properties
new methods
prediction methods
low accuracy
critical pressures
critical pressure
critical point
ternary mixtures
pure substances
part 2
including considering
remaining data
theoretical prediction
prediction ability
van konynenburg
simpler form
molecular polarity
mixtures based
main means
highest correlation
free alkanes
extrapolation ability
experimental measurement
end points
empirical parameters
continuous curve
alicyclic hydrocarbons
adjustable parameters
accurately evaluate
status_str publishedVersion
title A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
title_full A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
title_fullStr A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
title_full_unstemmed A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
title_short A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
title_sort A New Fast Estimation Method for Critical Properties of Mixtures Based on the Modified Redlich–Kister Method-Part 2: Prediction of Critical Properties for Binary and Ternary Mixtures
topic Biochemistry
Medicine
Cancer
Statistics
Science Policy
Plant Biology
Environmental Sciences not elsewhere classified
Biological Sciences not elsewhere classified
Mathematical Sciences not elsewhere classified
Physical Sciences not elsewhere classified
supercritical fluid technology
showing higher accuracy
predicting critical temperatures
predicting critical temperature
correlating critical temperatures
two pure components
fitting data set
three prediction models
prediction accuracy among
predicting critical volumes
predicting critical properties
including critical temperature
covers many systems
containing organic compounds
new methods extend
prediction data set
new prediction models
ternary mixtures consisting
2 </ sub
critical volume data
new models
critical volumes
critical volume
critical properties
new methods
prediction methods
low accuracy
critical pressures
critical pressure
critical point
ternary mixtures
pure substances
part 2
including considering
remaining data
theoretical prediction
prediction ability
van konynenburg
simpler form
molecular polarity
mixtures based
main means
highest correlation
free alkanes
extrapolation ability
experimental measurement
end points
empirical parameters
continuous curve
alicyclic hydrocarbons
adjustable parameters
accurately evaluate