Vehicle arrival time prediction has been studied widely. With the emergence of IoT devices and deep learning techniques, estimated time of arrival (ETA) has become a critical component in intelligent transportation systems. Though many tools exist for ETA, ETA for special vehicles, such as ambulances, fire engines, etc., is still challenging due to the limited amount of traffic data for special vehicles. Existing works use one model for all types of vehicles, which can lead to low accuracy. To tackle this, as the first in the field, we propose a deep transfer learning framework TLETA for the driving time prediction. TLETA constructs cellular spatial-temporal knowledge grids for extracting driving patterns, combined with the road network structure embedding to build a deep neural network for ETA. TLETA contains transferable layers to support knowledge transfer between different categories of vehicles. Importantly, our transfer models only train the last layers to map the transferred knowledge, that reduces the training time significantly. The experimental studies show that our model predicts travel time with high accuracy and outperforms many state-of-the-art approaches.
翻译:对车辆抵达时间的预测进行了广泛的研究。随着IoT装置和深层学习技术的出现,估计抵达时间已成为智能运输系统的一个关键组成部分。尽管埃塔有许多工具,但特殊车辆,如救护车、消防车等的埃塔工具仍然具有挑战性,因为特殊车辆的交通数据有限。现有工程对所有类型的车辆都使用一种模式,这可能导致低准确度。作为实地的第一个项目,我们提议为驾驶时间预测建立一个深转移学习框架TLETA。TLETA为提取驾驶模式建造了蜂窝空间时空知识网,同时铺设了用于为埃塔建造深神经网络的公路网络结构。TLETA包含可转让的层层,以支持不同类别车辆之间的知识转让。重要的是,我们的传输模型只培训最后层来绘制转让的知识,这大大缩短了培训时间。实验研究表明,我们的模型预测旅行时间的准确度很高,并且超越了许多先进方法。