交通预测的深度学习:方法、分析和未来方向

Ms. Mutyala Keerthi, OLETI. Gayatri Srinitya, A. Raju, K. Praveena, P. Jagadesh
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引用次数: 0

摘要

在智能交通工具中,游客预测是至关重要的。准确的游客预测有助于方向规划、车辆调度和减少游客拥堵。由于街道社区中独一无二的要素之间的复杂、动态的时空关系,这一问题很难解决。近年来,学界对这一领域进行了大量的研究,特别是对深度掌握技术的研究,大大提高了参观者的预测能力。这个观察的目的是提供一个全面的深度掌握评估-主要基于从多个角度的访问者预测算法。特别地,我们提供了一种分类和精确的公认访客预测算法。其次,我们为众多游客预测项目提供了一份当代方法清单。第三,我们从文献中获取并建立了通常使用的公共数据集,以使不同的研究人员更容易。此外,我们采用全面的实验来评估各种方法在真实的全球公共数据集上的整体性能,以提供评估和分析。最后,我们发现了该领域尚未解决的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Traffic Prediction: Methods, Analysis, and Future Directions
In an clever transportation gadget, visitors prediction is critical. Accurate visitors forecasting can assist with direction planning, car dispatching, and visitors congestion reduction. Due to the complicated and dynamic spatial-temporal relationships among one of a kind elements in the street community, this trouble is tough to solve. Recently, a considerable quantity of studies paintings has been dedicated to this area, specifically the deep mastering technique, which has extensively stepped forward visitors prediction abilities. The intention of this have a take a observe is to offer a whole evaluation of deep mastering-primarily based totally on visitors prediction algorithms from numerous angles. In particular, we offer a taxonomy and a precis of acknowledged visitors prediction algorithms. Second, we offer a listing of contemporary-day today's methodologies for numerous visitors forecast programs. Third, we acquire and set up normally used public datasets from the literature to make it simpler for different researchers. Furthermore, we adopt thorough experiments to evaluate the overall performance of various methods on a real-global public dataset to offer an assessment and analysis. Finally, we discover the field's unsolved problems.
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