Machine Learning Prediction of the Experimental Transition Temperature of Fe(II) Spin-Crossover Complexes

被引:10
作者
Vennelakanti, Vyshnavi [1 ,2 ]
Kilic, Irem B. [1 ]
Terrones, Gianmarco G. [1 ]
Duan, Chenru [1 ,2 ]
Kulik, Heather J. [1 ,2 ]
机构
[1] MIT, Dept Chem Engn, Cambridge, MA 02139 USA
[2] MIT, Dept Chem, Cambridge, MA 02139 USA
关键词
POTENTIAL-ENERGY SURFACES; DENSITY-FUNCTIONAL THEORY; IRON(II) COMPLEX; INTERATOMIC POTENTIALS; THERMAL-CONDUCTIVITY; ROOM-TEMPERATURE; NEURAL-NETWORKS; MONONUCLEAR; HYSTERESIS; DISCOVERY;
D O I
10.1021/acs.jpca.3c07104
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
Spin-crossover (SCO) complexes are materials that exhibit changes in the spin state in response to external stimuli, with potential applications in molecular electronics. It is challenging to know a priori how to design ligands to achieve the delicate balance of entropic and enthalpic contributions needed to tailor a transition temperature close to room temperature. We leverage the SCO complexes from the previously curated SCO-95 data set [Vennelakanti et al. J. Chem. Phys. 159, 024120 (<bold>2023</bold>)] to train three machine learning (ML) models for transition temperature (T-1/2) prediction using graph-based revised autocorrelations as features. We perform feature selection using random forest-ranked recursive feature addition (RF-RFA) to identify the features essential to model transferability. Of the ML models considered, the full feature set RF and recursive feature addition RF models perform best, achieving moderate correlation to experimental T-1/2 values. We then compare ML T-1/2 predictions to those from three previously identified best-performing density functional approximations (DFAs) which accurately predict SCO behavior across SCO-95, finding that the ML models predict T-1/2 more accurately than the best-performing DFAs. In addition, we study ML model predictions for a set of 18 SCO complexes for which only estimated T-1/2 values are available. Upon excluding outliers from this set, the RF-RFA RF model shows a strong correlation to estimated T-1/2 values with a Pearson's r of 0.82. In contrast, DFA-predicted T-1/2 values have large errors and show no correlation to estimated T-1/2 values over the same set of complexes. Overall, our study demonstrates slightly superior performance of ML models in comparison with some of the best-performing DFAs, and we expect ML models to improve further as larger data sets of SCO complexes are curated and become available for model training.
引用
收藏
页码:204 / 216
页数:13
相关论文
共 139 条
[1]   Machine learning of material properties: Predictive and interpretable multilinear models [J].
Allen, Alice E. A. ;
Tkatchenko, Alexandre .
SCIENCE ADVANCES, 2022, 8 (18)
[2]  
[Anonymous], 2013, Spin-Crossover Materials:Properties and Applications
[3]   High-dimensional neural-network potentials for multicomponent systems: Applications to zinc oxide [J].
Artrith, Nongnuch ;
Morawietz, Tobias ;
Behler, Joerg .
PHYSICAL REVIEW B, 2011, 83 (15)
[4]   Representing potential energy surfaces by high-dimensional neural network potentials [J].
Behler, J. .
JOURNAL OF PHYSICS-CONDENSED MATTER, 2014, 26 (18)
[5]   Generalized neural-network representation of high-dimensional potential-energy surfaces [J].
Behler, Joerg ;
Parrinello, Michele .
PHYSICAL REVIEW LETTERS, 2007, 98 (14)
[6]   Perspective: Machine learning potentials for atomistic simulations [J].
Behler, Joerg .
JOURNAL OF CHEMICAL PHYSICS, 2016, 145 (17)
[7]   Interplay between spin-crossover and luminescence in a multifunctional single crystal iron(ii) complex: towards a new generation of molecular sensors [J].
Benaicha, Bouabdellah ;
Van Do, Khanh ;
Yangui, Aymen ;
Pittala, Narsimhulu ;
Lusson, Alain ;
Sy, Mouhamadou ;
Bouchez, Guillaume ;
Fourati, Houcem ;
Gomez-Garcia, Carlos J. ;
Triki, Smail ;
Boukheddaden, Kamel .
CHEMICAL SCIENCE, 2019, 10 (28) :6791-6798
[8]  
Bergstra J., 2013, P 12 PYTH SCI C, V13
[9]   Designing a mechanically driven spin-crossover molecular switch via organic embedding [J].
Bhandary, Sumanta ;
Tomczak, Jan M. ;
Valli, Angelo .
NANOSCALE ADVANCES, 2021, 3 (17) :4990-4995
[10]   Adaptive machine learning framework to accelerate ab initio molecular dynamics [J].
Botu, Venkatesh ;
Ramprasad, Rampi .
INTERNATIONAL JOURNAL OF QUANTUM CHEMISTRY, 2015, 115 (16) :1074-1083