Traffic flow prediction in inland waterways of Assam region using uncertain spatiotemporal correlative features

被引:0
|
作者
Venkatesan Muthukumaran
Rajesh Natarajan
Amarakundhi Chandrasekaran Kaladevi
Gopu Magesh
Swapna Babu
机构
[1] SRM Institute of Science and Technology,Department of Mathematics, Faculty of Engineering and Technology
[2] University of Applied Science and Technology,Department of Information Technology
[3] Sona College of Technology,Department of Computer Science Engineering
[4] VIT University,School of Information Technology and Engineering
[5] Dr. M.G.R. Educational and Research Institute,Department of Electronics and Communication Engineering
来源
Acta Geophysica | 2022年 / 70卷
关键词
Deep learning; CNN-LSTM; Traffic flow; Prediction; Waterways; Relative error; RoI; RNN; Optimizer; Drop rate;
D O I
暂无
中图分类号
学科分类号
摘要
Modern civilization has reported a significant rise in the volume of traffic on inland rivers all over the globe. Traffic flow prediction is essential for a good travel experience, but adequate computer processes for processing unpredictable spatiotemporal data (timestamp, weather, vessel_ID, water level, vessel_position, vessel_speed) in the inland water transportation industry are lacking. Moreover, such type of prediction relies primarily on past traffic patterns and perhaps other pertinent facts. Thus, we propose a deep learning-based computing process, namely Convolution Neural Network-Long Short-Term Memory Network (CNN-LSTM), a progressive predictor of employing uncertain spatiotemporal information to decrease navigation mishaps, traffic and flow prediction failures during transportation. Spatiotemporal correlation of current traffic flow may be processed using a simplified CNN-LSTM model. This hybridized prediction technique decreases update costs and meets the prediction needs with minimal computing overhead. A short case study on the waterways of the Indian state of Assam from Sandiya (27.835090 latitude, 95.658590 longitude) to Dhubri (26.022699 latitude, 89.978401 longitude) is undertaken to assess the model's performance. The evaluation of the suggested method includes a variety of trajectories of water transportation vehicles, including ferries, sailing boats, container ships, etc. The suggested approach outperforms conventional traffic flow predicting methods when it comes to short-term prediction with minimal predictive error (< 2.75) and exhibited a major difference of more than 45% on the comparison of other methods.
引用
收藏
页码:2979 / 2990
页数:11
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