Advanced Learning Technologies for Intelligent Transportation Systems: Prospects and Challenges

IF 5.3 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Ruhul Amin Khalil;Ziad Safelnasr;Naod Yemane;Mebruk Kedir;Atawulrahman Shafiqurrahman;NASIR SAEED
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引用次数: 0

Abstract

Intelligent Transportation Systems (ITS) operate within a highly intricate and dynamic environment characterized by complex spatial and temporal dynamics at various scales, further compounded by fluctuating conditions influenced by external factors such as social events, holidays, and weather. Navigating the intricacies of modeling the intricate interaction among these elements, creating universal representations, and employing them to address transportation issues. Yet, these intricacies comprise just one facet of the multifaceted trials confronting contemporary ITS. This paper offers an all-encompassing survey exploring Deep learning (DL) utilization in ITS, primarily focusing on practitioners' methodologies to address these multifaceted challenges. The emphasis lies on the architectural and problem-specific factors that guide the formulation of innovative solutions. In addition to shedding light on the state-of-the-art DL algorithms, we also explore potential applications of DL and large language models (LLMs) in ITS, including traffic flow prediction, vehicle detection and classification, road condition monitoring, traffic sign recognition, and autonomous vehicles. Besides, we identify several future challenges and research directions that can push the boundaries of ITS, including the critical aspects, including transfer learning, hybrid models, privacy and security, and ultra-reliable low-latency communication. Our aim for this survey is to bridge the gap between the burgeoning DL and transportation communities. By doing so, we aim to facilitate a deeper comprehension of the challenges and possibilities within this field. We hope that this effort will inspire further exploration of fresh perspectives and issues, which, in turn, will play a pivotal role in shaping the future of transportation systems.
智能交通系统的先进学习技术:前景与挑战
智能交通系统(ITS)是在一个高度复杂多变的环境中运行的,其特点是在不同尺度上具有复杂的空间和时间动态变化,同时还受到社会事件、节假日和天气等外部因素的影响而不断变化。如何对这些因素之间错综复杂的互动关系进行建模、创建通用表征并将其用于解决交通问题,是一项复杂的工作。然而,这些错综复杂的问题只是当代智能交通系统所面临的多方面考验的一个方面。本文对深度学习(DL)在智能交通系统中的应用进行了全方位的调查,主要侧重于从业人员应对这些多方面挑战的方法。重点在于指导制定创新解决方案的架构和特定问题因素。除了阐明最先进的深度学习算法,我们还探讨了深度学习和大型语言模型(LLM)在智能交通系统中的潜在应用,包括交通流量预测、车辆检测和分类、道路状况监测、交通标志识别和自动驾驶汽车。此外,我们还确定了可推动智能交通系统发展的若干未来挑战和研究方向,包括迁移学习、混合模型、隐私和安全以及超可靠低延迟通信等关键方面。我们开展这项调查的目的,是在蓬勃发展的数字语言和交通领域之间架起一座桥梁。通过这样做,我们希望促进对这一领域的挑战和可能性有更深入的理解。我们希望这一努力能激发对新观点和新问题的进一步探索,进而在塑造未来交通系统的过程中发挥关键作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.60
自引率
0.00%
发文量
25
审稿时长
10 weeks
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