01063nam0-22003731i-450 99000035768040332120191119112108.088-7081-533-1000035768FED01000035768(Aleph)000035768FED0100003576820001010d1989----km-y0itay50------baitay-------001yyMS-DOS 4.0Ken W. Chistopher Jr., Barry A. Feigenbaum, Shon O. SaligaMilanoTecniche nuovecopyr. 1989XIX,543 p.24 cmInformaticatit.orig.: The News DOS 4.0Christopher,Ken W. JR.20651Feigenbaum,Barry A.20652Saliga,Shon O.20653ITUNINARICAUNIMARCBK99000035768040332104 013-200IRC 1726/LDINCH02 52 B 325526FINBN02 52 B 335527FINBNFINBNDINCHMS-DOS 4.01566996UNINAING0104300nam 22007575 450 991100748550332120251006111625.0981-9640-24-510.1007/978-981-96-4024-9(CKB)39124462600041(DE-He213)978-981-96-4024-9(MiAaPQ)EBC32142510(Au-PeEL)EBL32142510(EXLCZ)993912446260004120250531d2025 u| 0engur|||||||||||txtrdacontentcrdamediacrrdacarrierFirst-Principles and Machine Learning Study of Anharmonic Vibration and Dielectric Properties of Materials /by Tomohito Amano1st ed. 2025.Singapore :Springer Nature Singapore :Imprint: Springer,2025.1 online resource (XVIII, 219 p. 52 illus., 45 illus. in color.)Springer Theses, Recognizing Outstanding Ph.D. Research,2190-5061981-9640-23-7 Chapter 1 Introduction -- Chapter 2 Density Functional Theory -- Chapter 3 Anharmonic Phonon Theory -- Chapter 4 Modern Theory and Machine Learning of Polarization -- Chapter 5 Dielectric Properties of Strongly Anharmonic TiO2 -- Chapter 6 Dielectric Properties of Liquid Alcohols and Its Polymers -- Chapter 7 Conclusion.The book presents the author's development of two first-principles methods to calculate dielectric properties of materials based on anharmonic phonon and machine learning, and demonstrates an in-depth analysis of anharmonic crystals and molecular liquids. The anharmonic phonon method, combined with Born effective charges, is useful to study dielectric properties of crystals. The recently developed self-consistent phonon theory (SCPH) enables accurate simulations in strongly anharmonic materials. The author reveals that the combination of SCPH with the four-phonon scattering term accurately reproduces experimental spectra, and discusses how anharmonic phonon self-energies affect the dielectric properties. The second method is molecular dynamics with Wannier centers—the mass centers of Wannier functions. The author constructs a machine learning model that learns Wannier centers for each chemical bond from atomic coordinates to accurately predict the dipole moments. The developed method is, in principle, applicable to molecules of arbitrary size. Its effectiveness is demonstrated and the dielectric properties of several alcohols, including dipole moments, dielectric constants, and absorption spectra, are analyzed. This book benefits students and researchers interested in anharmonic phonons, machine learning, and dielectric properties.Springer Theses, Recognizing Outstanding Ph.D. Research,2190-5061Mathematical physicsComputer simulationMachine learningSemiconductorsCondensed matterMaterials scienceData processingElectronic structureQuantum chemistryComputer programsComputational Physics and SimulationsMachine LearningSemiconductorsCondensed Matter PhysicsCondensed MatterElectronic Structure CalculationsMathematical physics.Computer simulation.Machine learning.Semiconductors.Condensed matter.Materials scienceData processing.Electronic structure.Quantum chemistryComputer programs.Computational Physics and Simulations.Machine Learning.Semiconductors.Condensed Matter Physics.Condensed Matter.Electronic Structure Calculations.530.10285Amano Tomohitoauthttp://id.loc.gov/vocabulary/relators/aut1821887MiAaPQMiAaPQMiAaPQBOOK9911007485503321First-Principles and Machine Learning Study of Anharmonic Vibration and Dielectric Properties of Materials4387820UNINA