In this paper, five different deep learning models are being compared for predicting travel time. These models are autoregressive integrated moving average (ARIMA) model, recurrent neural network (RNN) model, autoregressive (AR) model, Long-short term memory (LSTM) model, and gated recurrent units (GRU) model. The aim of this study is to investigate the performance of each developed model for forecasting travel time. The dataset used in this paper consists of travel time and travel speed information from the state of Missouri. The learning rate used for building each model was varied from 0.0001-0.01. The best learning rate was found to be 0.001. The study concluded that the ARIMA model was the best model architecture for travel time prediction and forecasting.
翻译:本文比较了五个不同的深层次学习模型,以预测旅行时间。这些模型是自动递减综合移动平均(ARIMA)模型、经常性神经网络(RNN)模型、自动递减模型(AR)模型、长期短期内存模型(LSTM)和封闭式经常性单元模型(GRU)模型。本研究的目的是调查每个已开发的旅行预测时间模型的性能。本文使用的数据集包括来自密苏里州的旅行时间和旅行速度信息。每个模型的构建所使用的学习率从0.0001-0.01不等。最佳学习率被确定为0.001。研究的结论是,ARIMA模型是旅行时间预测和预测的最佳模型。