深度学习和自动驾驶汽车:战略主题、应用和研究议程,使用SciMAT和以内容为中心的分析,系统综述

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2023-07-13 DOI:10.3390/make5030041
Fábio Eid Morooka, Adalberto Manoel Junior, T. Sigahi, Jefferson de Souza Pinto, I. Rampasso, R. Anholon
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引用次数: 3

摘要

深度学习(DL)在自动驾驶汽车(AV)项目中的应用已经引起了研究人员和公司越来越多的兴趣。这导致近年来DL-AV的科学研究迅速增加,鼓励研究人员进行系统的文献综述(slr)来组织有关该主题的知识。然而,对DL-AV上现有单反的批判性分析揭示了一些方法上的差距,特别是关于文献计量软件的使用,这些软件是分析大量数据和提供对特定领域知识结构的整体理解的强大工具。本研究旨在利用科学制图分析工具(SciMAT)和内容分析,确定DL-AV研究的战略主题和趋势。使用SciMAT开发了战略图表和集群网络,从而确定了运动主题和研究机会。内容分析允许对数字数据在AV项目设计中应用的学术文献的贡献进行分类;用于自动驾驶汽车的神经网络和人工智能模型;以及DL-AV研究的跨学科主题,包括能源、立法、伦理和网络安全。对每一个类别的潜在研究途径进行了讨论。本研究的发现既有利于有经验的学者,他们可以获得关于DL-AV文献的浓缩信息,也有利于新研究人员,他们可能会被与技术发展和其他社会和环境影响问题相关的主题所吸引。
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Deep Learning and Autonomous Vehicles: Strategic Themes, Applications, and Research Agenda Using SciMAT and Content-Centric Analysis, a Systematic Review
Applications of deep learning (DL) in autonomous vehicle (AV) projects have gained increasing interest from both researchers and companies. This has caused a rapid expansion of scientific production on DL-AV in recent years, encouraging researchers to conduct systematic literature reviews (SLRs) to organize knowledge on the topic. However, a critical analysis of the existing SLRs on DL-AV reveals some methodological gaps, particularly regarding the use of bibliometric software, which are powerful tools for analyzing large amounts of data and for providing a holistic understanding on the structure of knowledge of a particular field. This study aims to identify the strategic themes and trends in DL-AV research using the Science Mapping Analysis Tool (SciMAT) and content analysis. Strategic diagrams and cluster networks were developed using SciMAT, allowing the identification of motor themes and research opportunities. The content analysis allowed categorization of the contribution of the academic literature on DL applications in AV project design; neural networks and AI models used in AVs; and transdisciplinary themes in DL-AV research, including energy, legislation, ethics, and cybersecurity. Potential research avenues are discussed for each of these categories. The findings presented in this study can benefit both experienced scholars who can gain access to condensed information about the literature on DL-AV and new researchers who may be attracted to topics related to technological development and other issues with social and environmental impacts.
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来源期刊
CiteScore
6.30
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0.00%
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审稿时长
7 weeks
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