基于LSTM的交通监控系统缺失数据分析

Rishabh Jain, Sunita Dhingra, Kamaldeep Joshi
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引用次数: 0

摘要

可靠的交通路径优化系统和准确的交通仿真模型是有效的交通管理系统的关键。由于缺乏真实的交通模拟数据,建立更有效的交通管理系统受到阻碍。缺少数据是造成障碍的根本原因之一,因为它肯定会导致对拥塞程度的不准确预测和不太有效的重新配置。这些缺失的数字影响着未来的交通数据挖掘和实时交通监控。在本文中,我们使用基于迁移学习的算法来填补这些缺失数据的空白。这一数据再创造的过程将有助于提高现有交通管理系统的准确性和效率,从而直接改善交通仿真模型和交通路线优化系统的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Missing Data Analysis in Traffic Monitoring System Using LSTM
A dependable traffic route optimization system and an accurate traffic simulation model is crucial for effective traffic management system. The creation of a more efficient traffic management system is hampered by the absence of a realistic traffic simulation data. Missing data is one of the fundamental causes of hindrance, because it will certainly result in inaccurate predictions of congestion levels and less effective reconfiguration. Both future traffic data mining and real-time traffic monitoring are impacted by these missing numbers. In this paper we used transfer learning-based algorithm to fill in the gaps of those missing data. This process of data recreation will help the existing traffic management system by improving its accuracy and efficiency which will directly improve the working of traffic simulation models and traffic route optimization systems.
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