基于机器学习和高通量计算筛选金属有机框架的甲烷/乙烷/丙烷分离性能  被引量:13

Machine Learning and High-throughput Computational Screening of Metalorganic Framework for Separation of Methane/ethane/propane

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作  者:蔡铖智 李丽凤 邓小梅 李树华 梁红 乔智威 Cai Chengzhi;Li Lifeng;Deng Xiaomei;Li Shuhua;Liang Hong;Qiao Zhiwei(Guangzhou Key Laboratory for New Energy and Green Catalysis,School of Chemistry and Chemical Engineering,Guangzhou University,Guangzhou 510006)

机构地区:[1]广州大学化学化工学院能源与催化研究所,广州510006

出  处:《化学学报》2020年第5期427-436,共10页Acta Chimica Sinica

基  金:国家自然科学基金(Nos.21978058,21676094,21576058);广东省自然科学基金(No.2020A1515010800)资助。

摘  要:针对天然气中的甲烷、乙烷、丙烷(C_1、C_2、C_3)气体分离困难的问题,本工作采用高通量计算了137953种假设的金属有机框架(Metal-organicframework,MOF)对这三种混合气体的吸附分离吸能.为了避免水蒸气的竞争吸附,首先,筛选出31399种疏水性MOF.然后,单变量分析了这些MOF的最大孔径(LCD)、孔隙率(Φ)、体积比表面积(VSA)、亨利系数(K)、吸附热(Q_(st))、密度(ρ)共六种MOF结构/能量描述符与MOF对C_1、C_2、C_3的选择性、吸附量及两者权衡值(Trade-off between S_(i/j) and N_i, TSN)的关系,发现了吸附量和选择性"第二峰值"的存在;尤其对于C_1、C_2的分离,所有最优MOF都分布在第二峰值区间.随后采用决策树、随机森林(Random forest, RF)、支持向量机和反向传播神经网络四种机器学习算法,分别训练并预测了六种MOF描述符与性能指标的关系,结果表明RF预测效果最好.然后应用RF算法定量地分析出K、LCD和ρ三种描述符对TSN_(C1)、TSN_(C2)的相对重要性最高,而TSN_(C3)的是K、Q_(st)和ρ,根据这些描述符分别设计了吸附C_1、C_2、C_3最优MOF的决策树模型路径.最后筛选出针对C_1、C_2和C_3不同分离应用的18种最优MOF.本工作基于机器学习和高通量计算的研究思路和研究方法,第二峰值规律的发现以及最优设计路线的提出将有助于MOF在吸附分离领域的发展提供有力的指导和启示.In this work,the separation performance of methane/ethane/propane(C1,C2 and C3)mixture in the 137953 hypothetical metal-organic frameworks(MOFs)is calculated by high throughput computational screening and multiple machine learning(ML)algorithms.First,to avoid the competitive adsorption of water vapor,31399 hydrophobic MOFs(hMOFs)were screened out.Then,grand canonical Monte Carlo(GCMC)simulations were employed to calculate the adsorption behavior of a mixture with a mole ratio of C1∶C2∶C3=7∶2∶1 in these hMOFs,respectively.Second,the relationships among six MOF structures/energy descriptors(the largest cavity diameter(LCD),void fraction(φ),volumetric surface area(VSA),Henry coefficient(K),heat of adsorption(Qst),density of MOF(ρ))and three performance indicators of MOFs(selectivities(S),adsorption capacities(N)of C1,C2,C3 and their trade-offs(TSN))were established.The LCDs were calculated by Zeo++software,and VSAs were calculated using RASPA software using He and N2 as probes,respectively,and Qst and K were calculated in an infinite dilution of each gas molecule in an infinite dilution state using NVT-MC method in RASPA software.Then,we found that there existed the“second peaks”of N and S in part of structure-property relationships,and all the optimal MOFs located in the range of second peaks,especially for the separation of C1 or C2.Third,the above-mentioned six MOF descriptors and three MOF performance indicators were trained,tested and predicted by four ML algorithms,including decision tree,random forest(RF),support vector machine and Back Propagation neural network.Although the predictive effect for the selectivity was very low,the introduction of TSN can significantly improve the accuracy of ML prediction,especially for RF algorithm(R=0.99).Therefore,the RF was used to quantitatively analyze the relative importance of each MOF descriptor,and found that three descriptors(K,LCD andρ)possessed the highest importance for the separation of C1 and C2,and three other descriptors(K,Qst andρ)for the sep

关 键 词:金属有机框架 气体分离 分子模拟 机器学习 

分 类 号:TE644[石油与天然气工程—油气加工工程] TP181[自动化与计算机技术—控制理论与控制工程]

 

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