Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Ekin D. Cubuk is active.

Publication


Featured researches published by Ekin D. Cubuk.


ACS Nano | 2017

Atomic Layer Deposition of Stable LiAlF4 Lithium Ion Conductive Interfacial Layer for Stable Cathode Cycling

Jin Xie; Austin Sendek; Ekin D. Cubuk; Xiaokun Zhang; Zhiyi Lu; Yongji Gong; Tong Wu; Feifei Shi; Wei Liu; Evan J. Reed; Yi Cui

Modern lithium ion batteries are often desired to operate at a wide electrochemical window to maximize energy densities. While pushing the limit of cutoff potentials allows batteries to provide greater energy densities with enhanced specific capacities and higher voltage outputs, it raises key challenges with thermodynamic and kinetic stability in the battery. This is especially true for layered lithium transition-metal oxides, where capacities can improve but stabilities are compromised as wider electrochemical windows are applied. To overcome the above-mentioned challenges, we used atomic layer deposition to develop a LiAlF4 solid thin film with robust stability and satisfactory ion conductivity, which is superior to commonly used LiF and AlF3. With a predicted stable electrochemical window of approximately 2.0 ± 0.9 to 5.7 ± 0.7 V vs Li+/Li for LiAlF4, excellent stability was achieved for high Ni content LiNi0.8Mn0.1Co0.1O2 electrodes with LiAlF4 interfacial layer at a wide electrochemical window of 2.75-4.50 V vs Li+/Li.


Energy and Environmental Science | 2017

Holistic computational structure screening of more than 12 000 candidates for solid lithium-ion conductor materials

Austin Sendek; Qian Yang; Ekin D. Cubuk; Karel-Alexander N. Duerloo; Yi Cui; Evan J. Reed

We present a new type of large-scale computational screening approach for identifying promising candidate materials for solid state electrolytes for lithium ion batteries that is capable of screening all known lithium containing solids. To be useful for batteries, high performance solid state electrolyte materials must satisfy many requirements at once, an optimization that is difficult to perform experimentally or with computationally expensive ab initio techniques. We first screen 12 831 lithium containing crystalline solids for those with high structural and chemical stability, low electronic conductivity, and low cost. We then develop a data-driven ionic conductivity classification model using logistic regression for identifying which candidate structures are likely to exhibit fast lithium conduction based on experimental measurements reported in the literature. The screening reduces the list of candidate materials from 12 831 down to 21 structures that show promise as electrolytes, few of which have been examined experimentally. We discover that none of our simple atomistic descriptor functions alone provide predictive power for ionic conductivity, but a multi-descriptor model can exhibit a useful degree of predictive power. We also find that screening for structural stability, chemical stability and low electronic conductivity eliminates 92.2% of all Li-containing materials and screening for high ionic conductivity eliminates a further 93.3% of the remainder. Our screening utilizes structures and electronic information contained in the Materials Project database.


Science | 2017

Structure-property relationships from universal signatures of plasticity in disordered solids

Ekin D. Cubuk; Robert Ivancic; Samuel S. Schoenholz; Daniel Strickland; Anindita Basu; Zoey S. Davidson; J. Fontaine; Jyo Lyn Hor; Yun-Ru Huang; Yijie Jiang; Nathan C. Keim; K. D. Koshigan; Joel A. Lefever; Tianyi Liu; Xiaoguang Ma; Daniel J. Magagnosc; E. Morrow; Carlos P. Ortiz; Jennifer Rieser; Amit Shavit; Tim Still; Ye Xu; Yuxiang Zhang; K. N. Nordstrom; Paulo E. Arratia; Robert W. Carpick; Douglas J. Durian; Zahra Fakhraai; Douglas J. Jerolmack; Daeyeon Lee

Behavioral universality across size scales Glassy materials are characterized by a lack of long-range order, whether at the atomic level or at much larger length scales. But to what extent is their commonality in the behavior retained at these different scales? Cubuk et al. used experiments and simulations to show universality across seven orders of magnitude in length. Particle rearrangements in such systems are mediated by defects that are on the order of a few particle diameters. These rearrangements correlate with the materials softness and yielding behavior. Science, this issue p. 1033 A range of particle-based and glassy systems show universal features of the onset of plasticity and a universal yield strain. When deformed beyond their elastic limits, crystalline solids flow plastically via particle rearrangements localized around structural defects. Disordered solids also flow, but without obvious structural defects. We link structure to plasticity in disordered solids via a microscopic structural quantity, “softness,” designed by machine learning to be maximally predictive of rearrangements. Experimental results and computations enabled us to measure the spatial correlations and strain response of softness, as well as two measures of plasticity: the size of rearrangements and the yield strain. All four quantities maintained remarkable commonality in their values for disordered packings of objects ranging from atoms to grains, spanning seven orders of magnitude in diameter and 13 orders of magnitude in elastic modulus. These commonalities link the spatial correlations and strain response of softness to rearrangement size and yield strain, respectively.


Proceedings of the National Academy of Sciences of the United States of America | 2017

Disconnecting structure and dynamics in glassy thin films

Daniel M. Sussman; Samuel S. Schoenholz; Ekin D. Cubuk; Andrea J. Liu

Significance Do glassy dynamics depend strongly on local structure? In bulk systems, a quantitative answer to this question exists and is affirmative. The dynamical behavior of nanometrically thin glassy films is strikingly different from bulk systems, and it is natural to ask whether this difference stems from local structural differences. Using machine learning techniques, we show that altered dynamics near an interface do not stem from changes of local structure near the interface. Rather, the dynamics depend on the simultaneous occurrence of two independent processes, one that depends on structure but not position within the film, and an Arrhenius process that does not depend on structure but depends sensitively on position. Nanometrically thin glassy films depart strikingly from the behavior of their bulk counterparts. We investigate whether the dynamical differences between a bulk and thin film polymeric glass former can be understood by differences in local microscopic structure. Machine learning methods have shown that local structure can serve as the foundation for successful, predictive models of particle rearrangement dynamics in bulk systems. By contrast, in thin glassy films, we find that particles at the center of the film and those near the surface are structurally indistinguishable despite exhibiting very different dynamics. Next, we show that structure-independent processes, already present in bulk systems and demonstrably different from simple facilitated dynamics, are crucial for understanding glassy dynamics in thin films. Our analysis suggests a picture of glassy dynamics in which two dynamical processes coexist, with relative strengths that depend on the distance from an interface. One of these processes depends on local structure and is unchanged throughout most of the film, while the other is purely Arrhenius, does not depend on local structure, and is strongly enhanced near the free surface of a film.


Proceedings of the National Academy of Sciences of the United States of America | 2018

Machine learning determination of atomic dynamics at grain boundaries

Tristan A. Sharp; Spencer L. Thomas; Ekin D. Cubuk; Samuel S. Schoenholz; David J. Srolovitz; Andrea J. Liu

Significance A machine learning method is used to analyze the atomic structures that rearrange within the grain boundaries of polycrystals. The method readily separates the atomic structures into those that rarely rearrange and those that often rearrange. The likelihood of an atom rearranging under a thermal fluctuation is correlated with free volume and potential energy but is not entirely attributable to those quantities. A machine-learned quantity allows estimation of the energy barrier to rearrangement for particular atoms. The grain boundary atoms that rearrange most have more possible rearrangement trajectories rather than much-reduced energy barriers, as in bulk glasses. The work suggests that polycrystal plasticity can be studied in part from the local atomic structural environments without traditional classification of microstructure. In polycrystalline materials, grain boundaries are sites of enhanced atomic motion, but the complexity of the atomic structures within a grain boundary network makes it difficult to link the structure and atomic dynamics. Here, we use a machine learning technique to establish a connection between local structure and dynamics of these materials. Following previous work on bulk glassy materials, we define a purely structural quantity (softness) that captures the propensity of an atom to rearrange. This approach correctly identifies crystalline regions, stacking faults, and twin boundaries as having low likelihood of atomic rearrangements while finding a large variability within high-energy grain boundaries. As has been found in glasses, the probability that atoms of a given softness will rearrange is nearly Arrhenius. This indicates a well-defined energy barrier as well as a well-defined prefactor for the Arrhenius form for atoms of a given softness. The decrease in the prefactor for low-softness atoms indicates that variations in entropy exhibit a dominant influence on the atomic dynamics in grain boundaries.


Journal of Physical Chemistry Letters | 2018

Metallic Metal–Organic Frameworks Predicted by the Combination of Machine Learning Methods and Ab Initio Calculations

Yuping He; Ekin D. Cubuk; Mark D. Allendorf; Evan J. Reed

Emerging applications of metal-organic frameworks (MOFs) in electronic devices will benefit from the design and synthesis of intrinsically, highly electronically conductive MOFs. However, very few are known to exist. It is a challenging task to search for electronically conductive MOFs within the tens of thousands of reported MOF structures. Using a new strategy (i.e., transfer learning) of combining machine learning techniques, statistical multivoting, and ab initio calculations, we screened 2932 MOFs and identified 6 MOF crystal structures that are metallic at the level of semilocal DFT band theory: Mn2[Re6X8(CN)6]4 (X = S, Se,Te), Mn[Re3Te4(CN)3], Hg[SCN]4Co[NCS]4, and CdC4. Five of these structures have been synthesized and reported in the literature, but their electrical characterization has not been reported. Our work demonstrates the potential power of machine learning in materials science to aid in down-selecting from large numbers of potential candidates and provides the information and guidance to accelerate the discovery of novel advanced materials.


international conference on learning representations | 2018

Intriguing Properties of Adversarial Examples

Ekin D. Cubuk; Barret Zoph; Samuel S. Schoenholz; Quoc V. Le


neural information processing systems | 2018

Realistic Evaluation of Deep Semi-Supervised Learning Algorithms

Avital Oliver; Augustus Odena; Colin Raffel; Ekin D. Cubuk; Ian J. Goodfellow


arXiv: Computer Vision and Pattern Recognition | 2018

AutoAugment: Learning Augmentation Policies from Data.

Ekin D. Cubuk; Barret Zoph; Dandelion Mané; Vijay Vasudevan; Quoc V. Le


Bulletin of the American Physical Society | 2017

Holistic computational structure screening of more than 12,000 candidates for solid lithium-ion conductor materials

Austin Sendek; Qian Yang; Ekin D. Cubuk; Karel-Alexander N. Duerloo; Yi Cui; Evan J. Reed

Collaboration


Dive into the Ekin D. Cubuk's collaboration.

Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Yi Cui

Stanford University

View shared research outputs
Top Co-Authors

Avatar

Andrea J. Liu

University of Pennsylvania

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Amit Shavit

University of Pennsylvania

View shared research outputs
Researchain Logo
Decentralizing Knowledge