Dynamic Traveling Route Planning Method for Intelligent Transportation Using Incremental Learning-Based Hybrid Deep Learning Prediction Model with Fine-Tuning

IF 1.1 Q3 TRANSPORTATION SCIENCE & TECHNOLOGY Transport and Telecommunication Journal Pub Date : 2022-11-01 DOI:10.2478/ttj-2022-0024
Shridevi Jeevan Kamble, Manjunath R. Kounte
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引用次数: 0

Abstract

Abstract Predicting the most favorable traveling routes for Vehicles plays an influential role in Intelligent Transportation Systems (ITS). Shortest Traveling Routes with high congestion grievously affect the driving comfort level of VANET users in populated cities. As a result, increase in journey time and traveling cost. Predicting the most favorable traveling routes with less congestion is imperative to minimize the driving inconveniences. A major downside of existing traveling route prediction models is to continuously learn the real-time road congestion data with static benchmarking datasets. However, learning the new information with already learned data is a cumbersome task. The main idea of this paper is to utilize incremental learning on the Hybrid Learning-based traffic Congestion and Timing Prediction (HL-CTP) to select realistic, congestion-free, and shortest traveling routes for the vehicles. The proposed HL-CTP model is decomposed into three steps: dataset construction, incremental and hybrid prediction model, and route selection. Firstly, the HL-CTP constructs a novel Traffic and Timing Dataset (TTD) using historical traffic congestion information. The incremental learning method updates the novel real-time data continuously with the TDD during prediction to optimize the performance efficiency of the hybrid prediction model closer to real-time. Secondly, the hybrid prediction model with various deep learning models performs better by taking the route prediction decision based on the best sub-predictor results. Finally, the HL-CTP selects the most favorable vehicle routes selected using traffic congestion, timing, and uncertain environmental information and enhances the comfort level of VANET users. In the simulation, the proposed HL-CTP demonstrates superior performance in terms of Mean Square Error (MSE), Mean Absolute Error (MAE), and Root Mean Square Error (RMSE).
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基于增量学习和微调的混合深度学习预测模型的智能交通动态出行路线规划方法
摘要在智能交通系统(ITS)中,预测车辆最有利的行驶路线具有重要的作用。在人口密集的城市中,高度拥堵的最短出行路线严重影响了VANET用户的驾驶舒适度。因此,增加了旅行时间和旅行成本。为了最大限度地减少驾驶不便,预测最有利的出行路线是必要的。现有出行路线预测模型的一个主要缺点是需要使用静态基准数据集不断学习实时道路拥堵数据。然而,用已经学过的数据学习新的信息是一项繁琐的任务。本文的主要思想是利用基于混合学习的交通拥堵和时间预测(HL-CTP)的增量学习,为车辆选择现实的、无拥堵的、最短的行驶路线。本文提出的HL-CTP模型分为数据集构建、增量和混合预测模型、路径选择三个步骤。首先,HL-CTP利用历史交通拥堵信息构建了一个新的交通和定时数据集(TTD)。增量学习方法在预测过程中通过TDD不断更新新的实时数据,优化混合预测模型的性能效率,使其更接近实时。其次,结合多种深度学习模型的混合预测模型基于最佳子预测结果进行路线预测决策,具有较好的性能。最后,利用交通拥堵、时间和不确定环境信息选择最有利的车辆路线,提高VANET用户的舒适度。在仿真中,提出的HL-CTP在均方误差(MSE)、平均绝对误差(MAE)和均方根误差(RMSE)方面表现出优异的性能。
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来源期刊
Transport and Telecommunication Journal
Transport and Telecommunication Journal TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.00
自引率
0.00%
发文量
21
审稿时长
35 weeks
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