Litcius/Paper detail

Differentiable thermodynamic modeling

Pin-Wen Guan

2021Scripta Materialia16 citationsDOIOpen Access PDF

Abstract

A new framework of thermodynamic modeling is proposed by introducing the concept of differentiable programming, where all the thermodynamic observables including both thermochemical quantities and phase equilibria can be differentiated with respect to the underlying model parameters, thus allowing the models learned by gradient-based optimization. It is shown that thermodynamic modeling and deep learning can be seamlessly integrated and unified within this framework. A preliminary successful application is demonstrated for the Cu-Rh system. It is expected that thermodynamic modeling in a deep learning style can increase prediction power of models, and provide more effective guidance for design, synthesis and optimization of multi-component materials with complex chemistry via learning various types of data.

Topics & Concepts

Differentiable functionComponent (thermodynamics)ObservableComputer scienceAutomatic differentiationThermodynamic systemStatistical physicsMaterials scienceBiological systemThermodynamicsMathematicsPhysicsAlgorithmMathematical analysisBiologyQuantum mechanicsComputationMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyCrystallization and Solubility Studies