Detection and Classification of Stator Inter-Turn Fault Severity Levels using Prominence-Based Features and Neural Networks DOI
Rahul Kumar, Priynka Sharma, Ali Mohammadi

et al.

2022 IEEE Energy Conversion Congress and Exposition (ECCE), Journal Year: 2023, Volume and Issue: unknown, P. 4457 - 4464

Published: Oct. 29, 2023

Stator inter-turn faults (SITFs) are electrical abnormalities in the windings of a motor or generator, resulting from short circuits between adjacent coil turns, potentially leading to reduced performance even catastrophic failures. This paper aims detect SITFs and classify their level severity using combination prominence-based features recently developed neural networks that rely on self-attention mechanisms. The approach involves transforming 3-phase currents extended Park Vector (EVPA), extracting based prominence frequency spectrum, studying geometry gain important insights about data. After this feature-engineering data exploration step, neural-based classifiers have been trained tested. Through comparative study with other approaches, Transformer Encoder achieves highest classification accuracy 97.25% when tested experimental data, outperforming networks. authors also present importance maps for exploring interpretability Encoder, revealing significant contribution classification.

Language: Английский

Machine learning interatomic potential: Bridge the gap between small-scale models and realistic device-scale simulations DOI Creative Commons
Guanjie Wang, Changrui Wang,

Xuanguang Zhang

et al.

iScience, Journal Year: 2024, Volume and Issue: 27(5), P. 109673 - 109673

Published: April 4, 2024

Machine learning interatomic potential (MLIP) overcomes the challenges of high computational costs in density-functional theory and relatively low accuracy classical large-scale molecular dynamics, facilitating more efficient precise simulations materials research design. In this review, current state four essential stages MLIP is discussed, including data generation methods, material structure descriptors, six unique machine algorithms, available software. Furthermore, applications various fields are investigated, notably phase-change memory materials, searching, properties predicting, pre-trained universal models. Eventually, future perspectives, consisting standard datasets, transferability, generalization, trade-off between complexity MLIPs, reported.

Language: Английский

Citations

22

Advanced computational strategies for lithium chemical and electrochemical adsorption: A comprehensive state-of-the-art review DOI
Yanan Pan, Weiquan Zhan, Wencai Zhang

et al.

Desalination, Journal Year: 2025, Volume and Issue: unknown, P. 118524 - 118524

Published: Jan. 1, 2025

Language: Английский

Citations

3

Virtual sample generation in machine learning assisted materials design and discovery DOI Open Access
Pengcheng Xu, Xiaobo Ji, Minjie Li

et al.

Journal of Materials Informatics, Journal Year: 2023, Volume and Issue: 3(3)

Published: July 13, 2023

Virtual sample generation (VSG), as a cutting-edge technique, has been successfully applied in machine learning-assisted materials design and discovery. A virtual without experimental validation is defined an unknown sample, which either expanded from the original data distribution for modeling or designed via algorithms predicting. This review aims to discuss applications of VSG techniques discovery based on research progress recent years. First, we summarize commonly used expansion training set, including Bootstrap, Monte Carlo, particle swarm optimization, mega trend diffusion, Gaussian mixture model, random forest, generative adversarial networks. Next, frequently employed searching are introduced, efficient global proactive progress. Then, universally adopted inverse methods presented, genetic algorithm, Bayesian pattern recognition projection. Finally, future directions proposed.

Language: Английский

Citations

12

Innovative and Sustainable Advances in Polymer Composites for Additive Manufacturing: Processing, Microstructure, and Mechanical Properties DOI Creative Commons
Mohd Shahneel Saharudin, Asif Ullah, Muhammad Younas

et al.

Journal of Manufacturing and Materials Processing, Journal Year: 2025, Volume and Issue: 9(2), P. 51 - 51

Published: Feb. 6, 2025

Additive manufacturing (AM) has revolutionised the production of customised components across industries such as aerospace, automotive, healthcare, electronics, and renewable energy industries. Offering unmatched design freedom, reduced time-to-market, minimised material waste, AM enables fabrication high-quality, products with greater sustainability compared to traditional methods like machining injection moulding. Additionally, reduces consumption, resource requirements, CO2 emissions throughout a material’s lifecycle, aligning global goals. This paper highlights insights into polymers, comparing bio-based polymers. Bio-based polymers exhibit lower carbon footprints during but may face challenges in durability mechanical performance. Conversely, while more robust, require higher inputs contribute emissions. Polymer composites tailored for further enhance properties support development innovative, eco-friendly solutions. Special Issue brings together cutting-edge research on polymer AM, focusing processing techniques, microstructure–property relationships, performance, sustainable practices. These advancements underscore AM’s transformative potential deliver versatile, high-performance solutions diverse

Language: Английский

Citations

0

Comparative Analysis of Synthetic Microstructure Reconstruction for Metallic Aerospace Alloys With Generative Networks DOI
Zekeriya Ender Eğer,

Waris Khan,

Kuang Kuang

et al.

AIAA SCITECH 2022 Forum, Journal Year: 2025, Volume and Issue: unknown

Published: Jan. 3, 2025

Language: Английский

Citations

0

Research on prediction of energy density and power density of biomass carbon-based supercapacitors based on machine learning DOI
Xueying Lu, Chenxi Zhao,

Huanyu Tu

et al.

Sustainable materials and technologies, Journal Year: 2025, Volume and Issue: unknown, P. e01309 - e01309

Published: March 1, 2025

Language: Английский

Citations

0

Review of empowering computer-aided engineering with artificial intelligence DOI Creative Commons

Xuwen Zhao,

Xingyu Tong, Fangwei Ning

et al.

Advances in Manufacturing, Journal Year: 2025, Volume and Issue: unknown

Published: March 14, 2025

Language: Английский

Citations

0

Comparison of machine-learning models in predicting the liquidus temperature of aluminum cryolitic bath DOI
Konstantinos Betsis, Nikolaos E. Karkalos, Anthimos Xenidis

et al.

Materials Chemistry and Physics, Journal Year: 2025, Volume and Issue: unknown, P. 130865 - 130865

Published: April 1, 2025

Language: Английский

Citations

0

Feature-Assisted Machine Learning for Predicting Band Gaps of Binary Semiconductors DOI Creative Commons

Sitong Huo,

Shuqing Zhang, Qilin Wu

et al.

Nanomaterials, Journal Year: 2024, Volume and Issue: 14(5), P. 445 - 445

Published: Feb. 28, 2024

The band gap is a key parameter in semiconductor materials that essential for advancing optoelectronic device development. Accurately predicting gaps of at low cost significant challenge science. Although many machine learning (ML) models prediction already exist, they often suffer from interpretability and lack theoretical support physical perspective. In this study, we address these challenges by using combination traditional ML algorithms the ‘white-box’ sure independence screening sparsifying operator (SISSO) approach. Specifically, enhance accuracy predictions binary semiconductors integrating importance rankings vector regression (SVR), random forests (RF), gradient boosting decision trees (GBDT) with SISSO models. Our model uses only intrinsic features constituent elements their calculated Perdew–Burke–Ernzerhof method, significantly reducing computational demands. We have applied our to predict 1208 theoretically stable compounds. Importantly, highlights critical role electronegativity determining material gaps. This insight not enriches understanding principles underlying but also underscores potential approach guiding synthesis new valuable materials.

Language: Английский

Citations

3

Machine learning-driven analysis of dielectric response in polymethyl methacrylate nanocomposites reinforced with multi-walled carbon nanotubes DOI
Prince Jain, Sanketsinh Thakor, Anand Y. Joshi

et al.

Journal of Materials Science Materials in Electronics, Journal Year: 2024, Volume and Issue: 35(20)

Published: July 1, 2024

Language: Английский

Citations

3