2021
DOI: 10.3390/ma14164604
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Modeling Superconducting Critical Temperature of 122-Iron-Based Pnictide Intermetallic Superconductor Using a Hybrid Intelligent Computational Method

Abstract: Structural transformation and magnetic ordering interplays for emergence as well as suppression of superconductivity in 122-iron-based superconducting materials. Electron and hole doping play a vital role in structural transition and magnetism suppression and ultimately enhance the room pressure superconducting critical temperature of the compound. This work models the superconducting critical temperature of 122-iron-based superconductor using tetragonal to orthorhombic lattice (LAT) structural transformation … Show more

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Cited by 13 publications
(3 citation statements)
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“…To do this, tetragonal to orthorhombic lattice structural transformation or RAD as descriptors were used. Consequently, the obtained prediction accuracy was between 86.37% and 98.97% [313]. These results show that the algorithm achieves a better performance when RAD is designated as a descriptor.…”
Section: And Dl-based Methodsmentioning
confidence: 79%
“…To do this, tetragonal to orthorhombic lattice structural transformation or RAD as descriptors were used. Consequently, the obtained prediction accuracy was between 86.37% and 98.97% [313]. These results show that the algorithm achieves a better performance when RAD is designated as a descriptor.…”
Section: And Dl-based Methodsmentioning
confidence: 79%
“…Support vector regression (SVR) effectively addresses and characterizes non-linear systems as a result of the robust underlying structural risk minimization principle inherent to the algorithm [34][35][36]. Given thermoelectric magnesium-based materials β k , τ * k n k , β k represents the input descriptive vectors, which include the operating temperature, ionic radii of the elemental compositions as well as the elemental concentrations, while τ denotes the corresponding measured thermoelectric figure of merit.…”
Section: Support Vector Regression Descriptionmentioning
confidence: 99%
“…The utilization of the kernel trick, convex optimization, and Langrage multipliers enhances the global convergence of the algorithm, and subsequently averts local solutions. These unique features have significantly contributed to the wide application of this algorithm in different areas of study [11][12][13][14]. In an attempt to further enhance the robustness and reliability of SVR-based models, the user-defined parameters of the algorithm are optimized using a genetic algorithm (GA) in this work, with an evolutionary operational principle [15,16].…”
Section: Introductionmentioning
confidence: 99%