161 research outputs found
Time-domain Green dyadics for temporally dispersive, bi-isotropic media
Time-domain Green dyadics for linear, homogeneous, temporally dispersive bi-isotropic media are presented. Complex time-dependent electromagnetic field is introduced. Approximation to the complex field from an electric point dipole in an unbounded bi-isotropic medium with respect to the slowly varying components (second forerunner approximation) is obtained. Numerical examples are presented. Surface integral equations for the tangential components of the electromagnetic fields are derived for two standard scattering problems
Quantization of spinor field in the Schwarzschild spacetime and spin sums for solutions of the Dirac equation
We discuss the problem of canonical quantization of a free massive spinor
field in the Schwarzschild spacetime. It is shown that a consistent procedure
of canonical quantization of the field can be carried out without taking into
account the internal region of the black hole, the canonical commutation
relations in the resulting theory hold exactly and the Hamiltonian has the
standard form. Spin sums are obtained for solutions of the Dirac equation in
the Schwarzschild spacetime.Comment: 19 pages, 1 figur
Transient electromagnetic wave propagation in laterally discontinuous, dispersive media
This paper concerns propagation of transient electromagnetic waves in laterally discontinuous dispersive media. The approach, used here, employs a component decomposition of all fields. Specifically, the propagation operator that maps a transverse field on one plane to another plane is specified. Expansion of this mapping near the wave front determines the precursor or forerunner of the problem
Anomaly segmentation model for defects detection in electroluminescence images of heterojunction solar cells
Efficient defect detection in solar cell manufacturing is crucial for stable
green energy technology manufacturing. This paper presents a
deep-learning-based automatic detection model SeMaCNN for classification and
semantic segmentation of electroluminescent images for solar cell quality
evaluation and anomalies detection. The core of the model is an anomaly
detection algorithm based on Mahalanobis distance that can be trained in a
semi-supervised manner on imbalanced data with small number of digital
electroluminescence images with relevant defects. This is particularly valuable
for prompt model integration into the industrial landscape. The model has been
trained with the on-plant collected dataset consisting of 68 748
electroluminescent images of heterojunction solar cells with a busbar grid. Our
model achieves the accuracy of 92.5%, F1 score 95.8%, recall 94.8%, and
precision 96.9% within the validation subset consisting of 1049 manually
annotated images. The model was also tested on the open ELPV dataset and
demonstrates stable performance with accuracy 94.6% and F1 score 91.1%. The
SeMaCNN model demonstrates a good balance between its performance and
computational costs, which make it applicable for integrating into quality
control systems of solar cell manufacturing
Algorithms for design optimization of chemistry of hard magnetic alloys using experimental data
A multi-dimensional random number generation algorithm was used to distribute chemical concentrations of each of the alloying elements in the candidate alloys as uniformly as possible while maintaining the prescribed bounds on the minimum and maximum allowable values for the concentration of each of the alloying elements. The generated candidate alloy compositions were then examined for phase equilibria and associated magnetic properties using a thermodynamic database in the desired temperature range. These initial candidate alloys were manufactured, synthesized and tested for desired properties. Then, the experimentally obtained values of the properties were fitted with a multi-dimensional response surface. The desired properties were treated as objectives and were extremized simultaneously by utilizing a multi-objective optimization algorithm that optimized the concentrations of each of the alloying elements. This task was also performed by another conceptually different response surface and optimization algorithm for double-checking the results. A few of the best predicted Pareto optimal alloy compositions were then manufactured, synthesized and tested to evaluate their macroscopic properties. Several of these Pareto optimized alloys outperformed most of the candidate alloys on most of the objectives. This proves the efficacy of the combined meta-modeling and experimental approach in design optimization of the alloys. A sensitivity analysis of each of the alloying elements was also performed to determine which of the alloying elements contributes the least to the desired macroscopic properties of the alloy. These elements can then be replaced with other candidate alloying elements such as not-so-rare earth elements
Self-Organizing Maps for Pattern Recognition in Design of Alloys
A combined experimental\u2013computational methodology for accelerated design of AlNiCo-type permanent
magnetic alloys is presented with the objective of simultaneously extremizing several magnetic
properties. Chemical concentrations of eight alloying elements were initially generated using a quasirandom
number generator so as to achieve a uniform distribution in the design variable space. It was
followed by manufacture and experimental evaluation of these alloys using an identical thermo-magnetic
protocol. These experimental data were used to develop meta-models capable of directly relating
the chemical composition with desired macroscopic properties of the alloys. These properties were
simultaneously optimized to predict chemical compositions that result in improvement of properties.
These data were further utilized to discover various correlations within the experimental dataset by using
several concepts of artificial intelligence. In this work, an unsupervised neural network known as selforganizing
maps was used to discover various patterns reported in the literature. These maps were also
used to screen the composition of the next set of alloys to be manufactured and tested in the next
iterative cycle. Several of these Pareto-optimized predictions out-performed the initial batch of alloys.
This approach helps significantly reducing the time and the number of alloys needed in the alloy
development process
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