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Prediction of Optimal Salinities for Surfactant Formulations Using a Quantitative Structure–Property Relationships Approach
- Source :
- Energy and Fuels, Energy and Fuels, American Chemical Society, 2015, 29 (7), pp.4281-4288. ⟨10.1021/acs.energyfuels.5b00825⟩, Energy and Fuels, 7, 29, 4281-4288
- Publication Year :
- 2015
- Publisher :
- American Chemical Society (ACS), 2015.
-
Abstract
- Each oil reservoir could be characterized by a set of parameters such as temperature, pressure, oil composition, and brine salinity, etc. In the context of the chemical enhanced oil recovery (EOR), the selection of high performance surfactants is a challenging and time-consuming task since this strongly depends on the reservoir's conditions. The situation becomes even more complicated if the surfactant formulation is a blend of two or more surfactants. In the present work, we report quantitative structure-property relationships (QSPR) correlating surfactants'structures and their composition in a mixture with optimal salinity (Sopt), corresponding to minimal interfacial tension in the reference brine/surfactants/n-dodecane system, at T = 313 K and P = 0.1 MPa. Particular attention was paid to selected families of surfactants: α-olefin sulfonate (AOS), internal olefin sulfonate (IOS), alkyl ether sulfate (AES), and alkyl glyceryl ether sulfonate (AGES). The models were built and validated on the database containing Sopt values for 75 surfactants' formulations. Molecular structures of amphiphilic molecules were encoded by functional group count descriptors (FGCD), ISIDA substructural molecular fragment (SMF) descriptors, and CODESSA molecular descriptors (CMD). For mixtures, descriptors were calculated as linear combinations of descriptors of individual compounds weighted by their mass fractions in mixtures. Different machine-learning methods-support vector machine (SVM), partial least-squares (PLS) regression, and random subspace (RS)-have been used for the modeling. Both global (on the entire database) and local (on individual families) models have been built. Models display reasonable accuracy (about 0.2 log Sopt units) which is comparable with the experimental error of measured Sopt. Our results show that the suggested approach can be successfully used to build predictive models for relatively small data sets of mixtures of chemical compounds. © 2015 American Chemical Society.
- Subjects :
- Artificial intelligence
Machine learning methods
General Chemical Engineering
RAPID - Risk Analysis for Products in Development
Energy Engineering and Power Technology
Ether
Context (language use)
Least squares approximations
Surface active agents
Olefins
Chemical enhanced oil recoveries
Quantitative structure property relationships
Molecular descriptors
Surface tension
Chemical compounds
chemistry.chemical_compound
Life
Brining
Pulmonary surfactant
Oil well flooding
Internal olefin sulfonates
Organic chemistry
Enhanced recovery
Alkyl
Petroleum reservoirs
chemistry.chemical_classification
Energy
Support vector machines
Learning systems
Alpha olefin sulfonates
Surfactant formulation
Blending
Salinity
Fuel Technology
Sulfonate
chemistry
Chemical engineering
Mixtures
ELSS - Earth, Life and Social Sciences
Partial least-squares regression
[CHIM.CHEM]Chemical Sciences/Cheminformatics
Ethers
Petroleum reservoir engineering
Subjects
Details
- ISSN :
- 15205029 and 08870624
- Volume :
- 29
- Database :
- OpenAIRE
- Journal :
- Energy & Fuels
- Accession number :
- edsair.doi.dedup.....0fc0539d2acdf356e919e43c84915642
- Full Text :
- https://doi.org/10.1021/acs.energyfuels.5b00825