Susan Dod Brown Professor of Chemical and Biological Engineering
Office Phone
609-258-4591
azp@princeton.edu
Assistant
Jacqueline Armstrong
Office
A317 Engineering Quad
Website
https://scholar.princeton.edu/azpgroup
CV
panagiotopoulos_cv.pdf
Degrees
Ph.D., Massachusetts Institute of Technology, 1986
Dipl. Eng., National Technical University of Athens, 1982
Advisee(s):
Jack Draney
Andreas Kounis-Melas
Dina Kussainova
Maria Carolina Nicola Barbosa Muniz
Ushnish Rana
Jack Weis
Bio/Description
Honors and Awards
BASF Distinguished Lecturer, Wayne State U., 2021SEAS Distinguished Teacher Award, Princeton U., 2020
Robert L. Pigford Memorial Lecturer, U. of Delaware, 2018
Keith E. Gubbins Inaugural Lecturer, N. Carolina State U., 2016
Fellow, American Institute of Chemical Engineers, 2014
Chemical Engineering Distinguished Lecturer, Texas A&M at Qatar, 2013
American Academy of Arts and Sciences, 2012
National Academy of Engineering, 2004
J.M. Prausnitz Award in Applied Chemical Thermodynamics, 1998
Allan P. Colburn Award, American Institute of Chemical Engineers, 1995
Teacher-Scholar Award, Camille and Henry Dreyfus Foundation, 1992
Presidential Young Investigator, National Science Foundation, 1989
Affiliations
Associated Faculty, Princeton Institute for Computational Science and EngineeringAssociated Faculty, Princeton Institute for the Science and Technology of Materials
Research Interests
Research in our group focuses on development and application of theoretical and computer simulation techniques for the study of properties of fluids and materials. Emphasis is on molecular-based models that explicitly represent the main interactions among microscopic constituents of a system. These models can be used to predict the behavior of materials at conditions inaccessible to experiment and to gain a fundamental understanding of the microscopic basis for the observed macroscopic properties. Our work usually requires large-scale numerical calculations involving a number of powerful molecular simulation methodologies. An example of such a methodology is?Gibbs ensemble Monte Carlo, which provides a direct way to obtain coexistence properties of fluids from a single simulation.Ab initio derived machine-learning models. The group use the “Deep Potential” molecular dynamics (DPMD) approach of Car, E, and coworkers [Phys. Rev. Lett. 120:143001 (2018)] to develop force fields for fluids. The approach involves selecting a number (hundreds to thousands) of configurations for a system at thermodynamic state points representative of the conditions of interest. Kohn-Sham density functional theory is then used to obtain the “reference” energies of the corresponding configurations. For every configuration in the training set, a local coordinate frame is set up for every atom and its neighbors inside a smooth cutoff radius to allow for translational and rotational symmetries to be preserved. Permutational invariance is maintained by summing over all possible permutation of atoms of the same type. Then, these “descriptor” representations serve as inputs to a deep neural network to undergo linear and nonlinear transformations and output the energy for every atom. A molecular dynamics simulation is then run using the resulting potential energy surface, generating new configurations; their reference energies are evaluated. If differences between reference energies and the neural network model exceed specified thresholds, the network parameters are adjusted appropriately and the procedure is repeated.
A fundamental shortcoming of many machine learning models is that most such models only take into account interactions within a localized atom-centered spherical representation with a pre-defined radial cutoff. In a recent development, we have been developing methods for incorporation of long-range interactions into such models, as shown in the figure below, showing the training error in system energies for a finite-range (blue) and long-range (red) version of a model.
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Selected Publications
A. Z. Panagiotopoulos, "Direct determination of phase coexistence properties of fluids by Monte Carlo simulation in a new ensemble," Mol. Phys., 61, 813-826 (1987). https://doi.org/10.1080/00268978700101491
A. Statt, H. Casademunt, C. P. Brangwynne and A. Z. Panagiotopoulos, "Model for disordered proteins with strongly sequence-dependent liquid phase behavior," J. Chem. Phys., 152, 075101 (2020). http://dx.doi.org/10.1063/1.5141095
H. Jiang, P. G. Debenedetti, and A. Z. Panagiotopoulos, “Communication: Nucleation rates of supersaturated aqueous NaCl using a polarizable force field,” J. Chem. Phys., 149, 141102 (2018). https://doi.org/10.1063/1.5053652
S. Yue and A. Z. Panagiotopoulos, "Dynamic properties of aqueous electrolyte solutions from non-polarisable, polarisable, and scaled-charge models," Molec. Phys., 117, 3538-49 (2019). http://dx.doi.org/10.1080/00268976.2019.1645901
S. Yue, M. C. Muniz, M. F. Calegari Andrade L. Zhang, R. Car and A. Z. Panagiotopoulos, "When do short-range atomistic machine-learning models fall short?," J. Chem. Phys., 154, 034111 (2021). http://dx.doi.org/10.1063/5.0031215
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Research Areas
Complex Materials and Processing
Energy and Environment
Theory and Computation