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中国科学院力学研究所机构知识库
Knowledge Management System of Institue of Mechanics, CAS
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康东亮 [2]
王晓荷 [2]
赵亚溥 [2]
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马俊 [1]
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Source Publication:FUEL
Funding Organization:CAS Strategic Priority Research Program
Funding Project:Chinese Academy of Sciences (CAS) Key Research Program of Frontier Sciences[QYZDJ-SSW-JSC019]
Community:非线性力学国家重点实验室
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Defining kerogen maturity from orbital hybridization by machine learning
期刊论文
FUEL, 2022, 卷号: 310, 页码: 10
Authors:
Ma J(马俊)
;
Kang DL(康东亮)
;
Wang XH(王晓荷)
;
Zhao YP(赵亚溥)
Adobe PDF(4071Kb)
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View/Download:331/77
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Submit date:2021/11/29
Kerogen maturity
Orbital hybridization
Machine learning
Quantum chemistry
Predicting the components and types of kerogen in shale by combining machine learning with NMR spectra
期刊论文
FUEL, 2021, 卷号: 290, 页码: 10
Authors:
Kang DL(康东亮)
;
Wang XH(王晓荷)
;
Zheng XJ(郑晓娇)
;
Zhao YP(赵亚溥)
Adobe PDF(5174Kb)
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View/Download:435/156
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Submit date:2021/03/30
Machine learning
Kerogen and shale
Molecular structure
High-throughput prediction
NMR spectra datasets