一种用于协同自适应巡航控制的深度延迟滤波器

IF 2 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS ACM Transactions on Cyber-Physical Systems Pub Date : 2023-11-08 DOI:10.1145/3631613
Kuei-Fang Hsueh, Ayleen Farnood, Isam Al-Darabsah, Mohammad Al Saaideh, Mohammad Al Janaideh, Deepa Kundur
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引用次数: 0

摘要

协同自适应巡航控制(CACC)是一种缓解交通拥堵、提高道路安全的智能交通解决方案。通信时延对CACC系统的性能影响很大,传统的控制方法往往通过调整控制增益来维持系统的稳定性,从而降低控制性能。在本文中,我们研究了存在时间延迟的CACC系统的稳定性,并强调了控制性能和调谐控制器增益之间的权衡,以解决不断增加的延迟。我们提出了一种新的方法,结合称为深度延迟滤波器(DTDF)的神经网络模块来克服这一限制。DTDF利用了这样一个假设,即时间延迟主要来自CACC网络的通信层,这可能会受到不同程度的对抗性延迟的影响。通过考虑汽车状态的时滞版本并预测当前(未延迟)状态,DTDF补偿了通信延迟的影响。该方法将经典控制技术与机器学习相结合,提供了一种混合控制系统,该系统在可解释性和对未知参数的鲁棒性方面表现出色。我们使用各种深度学习架构进行了全面的实验来训练和评估DTDF模型。我们的实验利用由MATLAB、Simulink、Optitrack运动捕捉系统和Qbot2e机器人组成的机器人平台。通过这些实验,我们证明,经过适当的训练,我们的系统可以有效地减轻恒定时间延迟的不利影响,并且在控制性能方面优于传统的CACC基线。据作者所知,这种实验比较是混合机器学习CACC系统背景下的第一次。我们深入探索了初始条件和范围策略参数,以在各种实验场景下评估我们的系统。通过提供详细的见解和实验结果,我们的目标是促进CACC研究的进步,并强调混合机器学习方法在提高CACC系统性能和可靠性方面的潜力。
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A Deep Time Delay Filter for Cooperative Adaptive Cruise Control
Cooperative adaptive cruise control (CACC) is a smart transportation solution to alleviate traffic congestion and enhance road safety. The performance of CACC systems can be remarkably affected by communication time delays, and traditional control methods often compromise control performance by adjusting control gains to maintain system stability. In this paper, we present a study on the stability of a CACC system in the presence of time delays and highlight the trade-off between control performance and tuning controller gains to address increasing delays. We propose a novel approach incorporating a neural network module called the deep time delay filter (DTDF) to overcome this limitation. The DTDF leverages the assumption that time delays primarily originate from the communication layer of the CACC network, which can be subject to adversarial delays of varying magnitudes. By considering time-delayed versions of the car states and predicting the present (un-delayed) states, the DTDF compensates for the effects of communication delays. The proposed approach combines classical control techniques with machine learning, offering a hybrid control system that excels in explainability and robustness to unknown parameters. We conduct comprehensive experiments using various deep-learning architectures to train and evaluate the DTDF models. Our experiments utilize a robot platform consisting of MATLAB, Simulink, the Optitrack motion capture system, and the Qbot2e robots. Through these experiments, we demonstrate that when appropriately trained, our system can effectively mitigate the adverse effects of constant time delays and outperforms a traditional CACC baseline in control performance. This experimental comparison, to the best of the author’s knowledge, is the first of its kind in the context of a hybrid machine learning CACC system. We thoroughly explore initial conditions and range policy parameters to evaluate our system under various experimental scenarios. By providing detailed insights and experimental results, we aim to contribute to the advancement of CACC research and highlight the potential of hybrid machine learning approaches in improving the performance and reliability of CACC systems.
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来源期刊
ACM Transactions on Cyber-Physical Systems
ACM Transactions on Cyber-Physical Systems COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
5.70
自引率
4.30%
发文量
40
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