Dynamic Data-driven Microscopic Traffic Simulation using Jointly Trained Physics-guided Long Short-Term Memory

IF 0.7 4区 计算机科学 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Htet Naing, Wentong Cai, Hu Nan, Wu Tiantian, Yu Liang
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引用次数: 0

Abstract

Symbiotic simulation systems that incorporate data-driven methods (such as machine/deep learning) are effective and efficient tools for just-in-time (JIT) operational decision making. With the growing interest on Digital Twin City, such systems are ideal for real-time microscopic traffic simulation. However, learning-based models are heavily biased towards the training data and could produce physically inconsistent outputs. In terms of microscopic traffic simulation, this could lead to unsafe driving behaviours causing vehicle collisions in the simulation. As for symbiotic simulation, this could severely affect the performance of real-time base simulation models resulting in inaccurate or unrealistic forecasts, which could, in turn, mislead JIT what-if analyses. To overcome this issue, a physics-guided data-driven modelling paradigm should be adopted so that the resulting model could capture both accurate and safe driving behaviours. However, very few works exist in the development of such a car-following model that can balance between simulation accuracy and physical consistency. Therefore, in this paper, a new “jointly-trained physics-guided Long Short-Term Memory (JTPG-LSTM)” neural network, is proposed and integrated to a dynamic data-driven simulation system to capture dynamic car-following behaviours. An extensive set of experiments was conducted to demonstrate the advantages of the proposed model from both modelling and simulation perspectives.

基于联合训练物理引导的长短期记忆的动态数据驱动微观交通模拟
结合数据驱动方法(如机器/深度学习)的共生模拟系统是即时(JIT)运营决策的有效和高效工具。随着人们对数字双城的兴趣日益浓厚,这种系统是实时微观交通模拟的理想选择。然而,基于学习的模型严重偏向于训练数据,可能产生物理上不一致的输出。在微观交通模拟中,这可能会导致不安全的驾驶行为,导致模拟中的车辆碰撞。对于共生模拟,这可能会严重影响实时基础模拟模型的性能,导致不准确或不现实的预测,进而可能误导JIT的假设分析。为了克服这个问题,应该采用物理指导的数据驱动的建模范式,以便最终的模型可以捕获准确和安全的驾驶行为。然而,在这种跟车模型的开发中,能够在仿真精度和物理一致性之间取得平衡的作品很少。因此,本文提出了一种新的“联合训练物理引导的长短期记忆(JTPG-LSTM)”神经网络,并将其集成到一个动态数据驱动的仿真系统中,以捕获动态跟车行为。一组广泛的实验从建模和仿真的角度证明了所提出的模型的优势。
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来源期刊
ACM Transactions on Modeling and Computer Simulation
ACM Transactions on Modeling and Computer Simulation 工程技术-计算机:跨学科应用
CiteScore
2.50
自引率
22.20%
发文量
29
审稿时长
>12 weeks
期刊介绍: The ACM Transactions on Modeling and Computer Simulation (TOMACS) provides a single archival source for the publication of high-quality research and developmental results referring to all phases of the modeling and simulation life cycle. The subjects of emphasis are discrete event simulation, combined discrete and continuous simulation, as well as Monte Carlo methods. The use of simulation techniques is pervasive, extending to virtually all the sciences. TOMACS serves to enhance the understanding, improve the practice, and increase the utilization of computer simulation. Submissions should contribute to the realization of these objectives, and papers treating applications should stress their contributions vis-á-vis these objectives.
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