Abstract

In Beijing, Shanghai, Hangzhou, and other cities in China, traffic congestion caused by traffic incidents also accounts for 50% to 75% of the total traffic congestion on expressways. Therefore, it is of great significance to study an accurate and timely automatic traffic incident detection algorithm for ensuring the operation efficiency of expressways and improving the level of road safety. At present, many effective automatic event detection algorithms have been proposed, but the existing algorithms usually take the original traffic flow parameters as input variables, ignoring the construction of feature variable sets and the screening of important feature variables. This paper presents an automatic event detection algorithm based on deep cycle limit learning machine. The traffic flow, speed, and occupancy of downstream urban expressway are extracted as input values of the deep-loop neural network. The initial connection weights and output thresholds of the deep-loop neural network are optimized by using the improved particle swarm optimization (PSO) algorithm for global search. The higher classification accuracy of the extreme learning machine is trained, and the generalization performance of the extreme learning machine is improved. In addition, the extreme learning machine is used as a learning unit for unsupervised learning layer by layer. Finally, the microwave detector data of Tangqiao viaduct in Hangzhou are used to verify the experiment and compared with LSTM, CNN, gradient-enhanced regression tree, SVM, BPNN, and other methods. The results show that the algorithm can transfer low-level features layer by layer to form a more complete feature representation, retaining more original input information. It can save expensive computing resources and reduce the complexity of the model. Moreover, the detection accuracy of the algorithm is high, the detection rate is higher than 98%, and the false alarm rate is lower than 3%. It is better than LSTM, CNN, gradient-enhanced regression tree, and other algorithms. It is suitable for urban expressway traffic incident detection.

Highlights

  • China’s road traffic situation is extremely grim

  • More than 50% of urban road traffic congestion in Shanghai, China, is caused by expressway traffic incidents. e congestion caused by traffic accidents on expressways will reduce the capacity of expressways, affect the operational efficiency of expressways, and seriously cause traffic accidents, threatening people’s lives and property safety. erefore, it is necessary to study the detection algorithm of expressway traffic incidents, improve the management level of expressway traffic incidents, detect and deal with traffic incidents in time, and reduce the impact of traffic incidents on urban expressway traffic

  • If traffic volume is detected to exceed this value, the system draws a conclusion that traffic incidents occur. e standard normal deviation algorithm is applied to Houston Bay Highway

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Summary

Introduction

China’s road traffic situation is extremely grim. With the rapid development of urban road traffic, the numbers of car ownerships and motor vehicle drivers show a trend of rapid growth, which led road traffic incidents to have maintained a high base and high accident rate for many years. Erefore, compared with the traditional neural network method, ELM shows obvious advantages in classification problems and can maintain good learning [7] performance; learning speed can be increased by hundreds or even thousands of times, which is conducive to solving traffic incident detection problems in the context of large data. E importance measure of random forest variables is used to select the characteristic variables for traffic incident detection, and the deep cycle limit learning machine model is used to train the characteristic variables. Erefore, before constructing the incident detection algorithm, we must first analyze the traffic flow characteristics in the event state to determine the characteristic parameters of the model. A complete set of initial variables is constructed based on the measured, predicted, and combined values of the traffic flow parameters in the upstream and downstream areas.

Method of the Deep Cycle Limit Learning Machine
Case Study
Findings
Conclusion
Full Text
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