车辆行驶时间估计的自适应神经网络算法比较

Yasmin Adel Hanafy, Mohamed Gazya, M. Mashaly, M. A. E. Ghany
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引用次数: 2

摘要

车辆到达特定目的地所需时间的估计是导航和智能交通系统(ITS)的主要关注点之一,因为它对交通用户和交通供应商都有帮助。旅行时间估计有助于运输供应商深入了解评估旅行路线,从而提高运输系统对运输用户的可靠性。此外,行程时间的估计有助于减少旅行者的焦虑和压力。此外,实时交通数据极大地影响了出行时间的估计。因此,找到一个准确的实时行程估计模型是非常重要的。机器学习(ML)及其分支深度学习已被证明是解决这一问题的有效技术。虽然存在多个ML模型来估计旅行时间,但它们主要是离线模型,并且它们的大小是固定的。因此,寻找一个自适应的在线ML模型是实时旅行估计的重要任务。本文重点比较了两种动态环境下的自适应在线机器学习算法,即带对冲反向传播的多层感知器和贪婪的分层预训练。本文证明了带对冲反向传播的MLP算法优于贪婪的分层预训练算法。据报道,具有对冲反向传播的MLP和贪婪分层预训练算法的均方误差百分比分别为4.52%和6.32%。
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A Comparison Between Adaptive Neural Networks Algorithms for Estimating Vehicle Travel Time
The estimation of the time needed for a vehicle to reach a specific destination is one of the main focuses of navigation and Intelligent Transport Systems (ITS) as it helps both transit users and transit providers. Travel time estimation helps transportation providers to gain insight into evaluating travel routes, hence enhancing the transportation system reliability of their systems for transport users. In addition, travel time estimation helps in reducing the anxiety and stress for the travelers. Moreover, real time traffic data extremely impacts travel time estimation. Consequently, finding an accurate model for real time travel estimation is very crucial. Machine learning (ML) and its branch deep learning have proven to be efficient techniques to address this problem. Although there exists multiple ML models that estimate travel time, they are mainly offline models and they are fixed in size. Consequently, finding an adaptive online ML model is a vital task for real time travel estimation. This paper focuses comparing two adaptive online ML algorithms that operate in dynamic environment, namely multi-layer perceptron with hedge backpropagation and the greedy layer-wise pretraining. This paper shows that MLP with hedge backpropagation outperforms the greedy layer-wise pretraining algorithm. The mean square error percentages for MLP with hedge backpropagation and greedy layer-wise pretraining algorithm are reported to have values of 4.52% and 6.32%, respectively.
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