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This book investigates in detail the emerging deep learning (DL)
technique in computational physics, assessing its promising
potential to substitute conventional numerical solvers for
calculating the fields in real-time. After good training, the
proposed architecture can resolve both the forward computing and
the inverse retrieve problems. Pursuing a holistic perspective, the
book includes the following areas. The first chapter discusses the
basic DL frameworks. Then, the steady heat conduction problem is
solved by the classical U-net in Chapter 2, involving both the
passive and active cases. Afterwards, the sophisticated heat flux
on a curved surface is reconstructed by the presented Conv-LSTM,
exhibiting high accuracy and efficiency. Besides, the
electromagnetic parameters of complex medium such as the
permittivity and conductivity are retrieved by a cascaded framework
in Chapter 4. Additionally, a physics-informed DL structure along
with a nonlinear mapping module are employed to obtain the
space/temperature/time-related thermal conductivity via the
transient temperature in Chapter 5. Finally, in Chapter 6, a series
of the latest advanced frameworks and the corresponding physics
applications are introduced. As deep learning techniques are
experiencing vigorous development in computational physics, more
people desire related reading materials. This book is intended for
graduate students, professional practitioners, and researchers who
are interested in DL for computational physics.
This book investigates in detail the deep learning (DL) techniques
in electromagnetic (EM) near-field scattering problems, assessing
its potential to replace traditional numerical solvers in real-time
forecast scenarios. Studies on EM scattering problems have
attracted researchers in various fields, such as antenna design,
geophysical exploration and remote sensing. Pursuing a holistic
perspective, the book introduces the whole workflow in utilizing
the DL framework to solve the scattering problems. To achieve
precise approximation, medium-scale data sets are sufficient in
training the proposed model. As a result, the fully trained
framework can realize three orders of magnitude faster than the
conventional FDFD solver. It is worth noting that the 2D and 3D
scatterers in the scheme can be either lossless medium or metal,
allowing the model to be more applicable. This book is intended for
graduate students who are interested in deep learning with
computational electromagnetics, professional practitioners working
on EM scattering, or other corresponding researchers.
This book investigates in detail the deep learning (DL) techniques
in electromagnetic (EM) near-field scattering problems, assessing
its potential to replace traditional numerical solvers in real-time
forecast scenarios. Studies on EM scattering problems have
attracted researchers in various fields, such as antenna design,
geophysical exploration and remote sensing. Pursuing a holistic
perspective, the book introduces the whole workflow in utilizing
the DL framework to solve the scattering problems. To achieve
precise approximation, medium-scale data sets are sufficient in
training the proposed model. As a result, the fully trained
framework can realize three orders of magnitude faster than the
conventional FDFD solver. It is worth noting that the 2D and 3D
scatterers in the scheme can be either lossless medium or metal,
allowing the model to be more applicable. This book is intended for
graduate students who are interested in deep learning with
computational electromagnetics, professional practitioners working
on EM scattering, or other corresponding researchers.
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