Artificial intelligence enabled Digital Twins for training autonomous cars

Dongliang Chen , Zhihan Lv
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引用次数: 9

Abstract

This exploration is aimed at the system prediction and safety performance of the Digital Twins (DTs) of autonomous cars based on artificial intelligence technology, and the intelligent development of transportation in the smart city. On the one hand, considering the problem of safe driving of autonomous cars in intelligent transportation systems, it is essential to ensure the transmission safety of vehicle data and realize the load balancing scheduling of data transmission resources. On the other hand, convolution neural network (CNN) of the deep learning algorithm is adopted and improved, and then, the DTs technology is introduced. Finally, an autonomous cars DTs prediction model based on network load balancing and spatial-temporal graph convolution network is constructed. Moreover, through simulation, the performance of this model is analyzed from perspectives of Accuracy, Precision, Recall, and F1-score. The experimental results demonstrate that in comparative analysis, the accuracy of road network prediction of the model reported here is 92.70%, which is at least 2.92% higher than that of the models proposed by other scholars. Through the analysis of the security performance of network data transmission, it is found that this model achieves a lower average delay time than other comparative models. Besides, the message delivery rate is basically stable at 80%, and the message leakage rate is basically stable at about 10%. Therefore, the prediction model for autonomous cars constructed here not only ensures low delay but also has excellent network security performance, so that information can interact more efficiently. The research outcome can provide an experimental basis for intelligent development and safety performance improvement in the transportation field of smart cities.

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人工智能使Digital Twins能够训练自动驾驶汽车
针对基于人工智能技术的自动驾驶汽车数字孪生体(Digital Twins, dt)的系统预测和安全性能,以及智慧城市交通的智能化发展进行探索。一方面,考虑到智能交通系统中自动驾驶汽车的安全驾驶问题,必须保证车辆数据的传输安全,实现数据传输资源的负载均衡调度。另一方面,采用深度学习算法中的卷积神经网络(CNN)进行改进,然后引入dt技术。最后,构建了基于网络负载均衡和时空图卷积网络的自动驾驶汽车dt预测模型。并通过仿真,从准确率、精密度、召回率和F1-score四个方面分析了该模型的性能。实验结果表明,通过对比分析,本文模型的路网预测准确率为92.70%,比其他学者提出的模型至少高出2.92%。通过对网络数据传输安全性能的分析,发现该模型比其他比较模型实现了更低的平均延迟时间。消息投递率基本稳定在80%,消息泄漏率基本稳定在10%左右。因此,本文构建的自动驾驶汽车预测模型在保证低时延的同时,还具有良好的网络安全性能,使信息能够更高效地交互。研究成果可为智慧城市交通领域的智能化发展和安全性能提升提供实验依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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