A Survey on Data-Driven Scenario Generation for Automated Vehicle Testing DOI Creative Commons

Jinkang Cai,

Weiwen Deng,

Haoran Guang

et al.

Machines, Journal Year: 2022, Volume and Issue: 10(11), P. 1101 - 1101

Published: Nov. 21, 2022

Automated driving is a promising tool for reducing traffic accidents. While some companies claim that many cutting-edge automated functions have been developed, how to evaluate the safety of vehicles remains an open question, which has become crucial bottleneck. Scenario-based testing introduced test vehicles, and much progress achieved. data-driven knowledge-based approaches are hot research topics, this survey mainly about Data-Driven Scenario Generation (DDSG) vehicle testing. Rather than describe contributions every study respectively, in survey, methodologies from various studies anatomized as solutions several significant problems compared with each other. This way, scholars engineers can quickly find state-of-the-art issues they might encounter. Furthermore, critical challenges hinder DDSG described, responding presented at end survey.

Language: Английский

Small data machine learning in materials science DOI Creative Commons
Pengcheng Xu, Xiaobo Ji, Minjie Li

et al.

npj Computational Materials, Journal Year: 2023, Volume and Issue: 9(1)

Published: March 25, 2023

Abstract This review discussed the dilemma of small data faced by materials machine learning. First, we analyzed limitations brought data. Then, workflow learning has been introduced. Next, methods dealing with were introduced, including extraction from publications, database construction, high-throughput computations and experiments source level; modeling algorithms for imbalanced algorithm active transfer strategy level. Finally, future directions in science proposed.

Language: Английский

Citations

288

Machine Learning for Perovskite Solar Cells and Component Materials: Key Technologies and Prospects DOI
Yiming Liu, Xinyu Tan, Jie Liang

et al.

Advanced Functional Materials, Journal Year: 2023, Volume and Issue: 33(17)

Published: Feb. 15, 2023

Abstract Data‐driven epoch, the development of machine learning (ML) in materials and device design is an irreversible trend. Its ability efficiency to handle nonlinear game‐playing problems unmatched by traditional simulation computing software trial‐error experiments. Perovskite solar cells are complex physicochemical devices (systems) that consist perovskite materials, transport layer electrodes. Predicting properties screening component related strong point ML. However, applications ML has only begun boom last two years, so it necessary provide a review involved technologies, application status, facing urgent challenges blueprint.

Language: Английский

Citations

84

Density-Based Affinity Propagation Tensor Clustering for Intelligent Fault Diagnosis of Train Bogie Bearing DOI
Zexian Wei, Deqiang He, Zhenzhen Jin

et al.

IEEE Transactions on Intelligent Transportation Systems, Journal Year: 2023, Volume and Issue: 24(6), P. 6053 - 6064

Published: March 16, 2023

Health monitor of bogie-bearing on the train can ensure constant operation rail transit system. Since metro or other have high safety requirements, it is hard to acquire numerous fault samples. Besides, diagnosing bogie-bearings under variable working conditions challenging due wheel-rail coupling, speed variation, and load fluctuation. An intelligent approach for diagnosis proposed deal with above problems. A third-order tensor model established be suitable conditions. Furthermore, a density-based affinity propagation (DAP-Tensor) clustering algorithm presented identify different failures unlabeled. Train bogie public data sets were employed simulate three probable operation: high-frequency impact, change. Compared existing methods in cases, DAP-Tensor performs better identifying bearing faults Moreover, The DAP-tensor has comparable recognition rate some deep learning methods, which unsupervised characteristics show potential applications trains.

Language: Английский

Citations

64

Identification of Antibiotic Resistance in ESKAPE Pathogens through Plasmonic Nanosensors and Machine Learning DOI
Ting Yu, Ying Fu, Jintao He

et al.

ACS Nano, Journal Year: 2023, Volume and Issue: 17(5), P. 4551 - 4563

Published: March 3, 2023

Antibiotic-resistant ESKAPE pathogens cause nosocomial infections that lead to huge morbidity and mortality worldwide. Rapid identification of antibiotic resistance is vital for the prevention control infections. However, current techniques like genotype susceptibility testing are generally time-consuming require large-scale equipment. Herein, we develop a rapid, facile, sensitive technique determine phenotype among through plasmonic nanosensors machine learning. Key this sensor array contains gold nanoparticles functionalized with peptides differing in hydrophobicity surface charge. The can interact generate bacterial fingerprints alter plasmon resonance (SPR) spectra nanoparticles. In combination learning, it enables 12 less than 20 min an overall accuracy 89.74%. This machine-learning-based approach allows antibiotic-resistant from patients holds great promise as clinical tool biomedical diagnosis.

Language: Английский

Citations

51

Coupled retrieval of heavy metal nickel concentration in agricultural soil from spaceborne hyperspectral imagery DOI

Yishan Sun,

Shuisen Chen, Xuemei Dai

et al.

Journal of Hazardous Materials, Journal Year: 2023, Volume and Issue: 446, P. 130722 - 130722

Published: Jan. 3, 2023

Language: Английский

Citations

50

Synergizing the enhanced RIME with fuzzy K-nearest neighbor for diagnose of pulmonary hypertension DOI

Xiao-Ming Yu,

Wenxiang Qin,

Xiao Lin

et al.

Computers in Biology and Medicine, Journal Year: 2023, Volume and Issue: 165, P. 107408 - 107408

Published: Aug. 29, 2023

Language: Английский

Citations

47

A comprehensive survey of research towards AI-enabled unmanned aerial systems in pre-, active-, and post-wildfire management DOI Creative Commons
Sayed Pedram Haeri Boroujeni, Abolfazl Razi,

Sahand Khoshdel

et al.

Information Fusion, Journal Year: 2024, Volume and Issue: 108, P. 102369 - 102369

Published: March 22, 2024

Wildfires have emerged as one of the most destructive natural disasters worldwide, causing catastrophic losses. These losses underscored urgent need to improve public knowledge and advance existing techniques in wildfire management. Recently, use Artificial Intelligence (AI) wildfires, propelled by integration Unmanned Aerial Vehicles (UAVs) deep learning models, has created an unprecedented momentum implement develop more effective Although survey papers explored learning-based approaches wildfire, drone disaster management, risk assessment, a comprehensive review emphasizing application AI-enabled UAV systems investigating role methods throughout overall workflow multi-stage including pre-fire (e.g., vision-based vegetation fuel measurement), active-fire fire growth modeling), post-fire tasks evacuation planning) is notably lacking. This synthesizes integrates state-of-the-science reviews research at nexus observations modeling, AI, UAVs - topics forefront advances elucidating AI performing monitoring actuation from pre-fire, through stage, To this aim, we provide extensive analysis remote sensing with particular focus on advancements, device specifications, sensor technologies relevant We also examine management approaches, monitoring, prevention strategies, well planning, damage operation strategies. Additionally, summarize wide range computer vision emphasis Machine Learning (ML), Reinforcement (RL), Deep (DL) algorithms for classification, segmentation, detection, tasks. Ultimately, underscore substantial advancement modeling cutting-edge UAV-based data, providing novel insights enhanced predictive capabilities understand dynamic behavior.

Language: Английский

Citations

47

An extensive review of hyperspectral image classification and prediction: techniques and challenges DOI

Ganji Tejasree,

L. Agilandeeswari

Multimedia Tools and Applications, Journal Year: 2024, Volume and Issue: 83(34), P. 80941 - 81038

Published: March 9, 2024

Language: Английский

Citations

37

High‐temperature ablation resistance prediction of ceramic coatings using machine learning DOI
Jia Sun, Zhixiang Zhang, Yujia Zhang

et al.

Journal of the American Ceramic Society, Journal Year: 2024, Volume and Issue: 108(1)

Published: Sept. 20, 2024

Abstract Surface ablation temperature and linear rate are two crucial indicators for ceramic coatings under ultrahigh temperatures service, yet the results collection of such in process is difficult due to long‐period material preparation high‐cost test. In this work, four kinds machine learning models applied predict above indicators. The Random Forest (RF) model exhibits a high accuracy 87% predicting surface temperature, while low 60% rate. To optimize model, novel features constructed based on original by sum importance weights model. Thereafter, newly increases significantly, optimized RF improved 11%, exceeding 70% accuracy. By validation with available data experiments, demonstrates precise predictions target variables.

Language: Английский

Citations

26

A multi-swarm optimizer with a reinforcement learning mechanism for large-scale optimization DOI
Xujie Wang, Feng Wang, Qi He

et al.

Swarm and Evolutionary Computation, Journal Year: 2024, Volume and Issue: 86, P. 101486 - 101486

Published: Feb. 3, 2024

Language: Английский

Citations

21