人机协同驾驶过程中的动态定量信任建模和实时估算

IF 3.5 2区 工程技术 Q1 PSYCHOLOGY, APPLIED Transportation Research Part F-Traffic Psychology and Behaviour Pub Date : 2024-08-23 DOI:10.1016/j.trf.2024.08.001
Chuan Hu , Siwei Huang , Yu Zhou , Sicheng Ge , Binlin Yi , Xi Zhang , Xiaodong Wu
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引用次数: 0

摘要

自动驾驶汽车(AV)的发展将长期处于人机共驾阶段。信任被认为是驾驶员与自动驾驶系统(ADS)互动的有效基础。以信任不足和信任过度为代表的驾驶员信任误判被认为是导致自动驾驶系统被滥用和误用,甚至发生严重事故的潜在原因。信任的估计和校准对于提高驾驶过程的安全性至关重要。本文主要包括以下两个方面。首先,建立了一个动态和定量的信任估计模型。构建信任估计框架。监测驾驶员的感知风险和行为特征,并使用卡尔曼滤波器对驾驶员的信任度进行动态定量估计。我们进行了驾驶员在环实验,并通过数据驱动方法生成了模型参数。结果表明,该模型在信任度估算方面表现精确,最高准确率达到 74.1%。其次,基于第一部分的模型,提出了校准驾驶员过度信任的提醒策略。设计了一个包含四个风险事件的场景,当检测到过度信任时,ADS 会向驾驶员发出语音提醒。结果表明,在驾驶过程中,提醒策略有利于提高安全性和适度维护信任。当驾驶员过度信任时,提醒组和非提醒组的事故率分别为 60.6% 和 13.0%。本文的贡献可以归结为四点:(1)提出了一种实时信任估计模型,该模型是动态和定量的,考虑了驾驶员信任和感知风险的演变规律;(2)将数学建模和机器学习方法相结合;(3)设计了一种基于信任的提醒策略,旨在提高人机共驾的安全性;(4)驾驶员在环实验验证了该策略在提高安全性、维护驾驶员信任和减少人机共驾中的信任偏差方面的有效性。
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Dynamic and quantitative trust modeling and real-time estimation in human-machine co-driving process

The development of automated vehicles (AVs) will remain in the stage of human–machine co-driving for a long time. Trust is considered as an effective foundation of the interaction between the driver and the automated driving system (ADS). Driver’s trust miscalibration, represented by under-trust and over-trust, is considered to be the potential cause of disuse and misuse of ADS, or even serious accidents. The estimation and calibration of trust are crucial to improve the safety of the driving process. This paper mainly consists of the following two aspects. Firstly, a dynamic and quantitative trust estimation model is established. A framework for trust estimation is constructed. Driver’s perceived risk and behavior features were monitored and a Kalman filter was used to dynamically and quantitatively estimate the driver’s trust. We conducted a driver-in-the-loop experiment and generated model parameters through a data-driven approach. The results demonstrated that the model exhibited precision in trust estimation, with the highest accuracy reaching 74.1%. Secondly, a reminder strategy to calibrate the over-trust of the driver is proposed based on the model from the first part. A scenario with four risky events was designed and the ADS would provide voice reminders to the driver when over-trust was detected. The results demonstrated that the reminder strategy proved to be beneficial for safety enhancement and moderate trust maintenance during the driving process. When the driver is over-trusting, the accident rates of the reminder group and the non-reminder group were 60.6% and 13.0%, respectively. Our contribution in this paper can be concluded by four points: (1) A real-time trust estimation model is proposed, which is dynamic and quantitative, considering the evolution pattern of driver’s trust and the perceived risk; (2) Mathematical modeling and machine learning methods are combined; (3) A trust-based reminder strategy that aims to enhance the safety of human–machine co-driving is designed; (4) Driver-in-loop experiment validates the effectiveness in enhancing the safety, maintaining driver’s trust and reducing trust biases in human–machine co-driving.

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来源期刊
CiteScore
7.60
自引率
14.60%
发文量
239
审稿时长
71 days
期刊介绍: Transportation Research Part F: Traffic Psychology and Behaviour focuses on the behavioural and psychological aspects of traffic and transport. The aim of the journal is to enhance theory development, improve the quality of empirical studies and to stimulate the application of research findings in practice. TRF provides a focus and a means of communication for the considerable amount of research activities that are now being carried out in this field. The journal provides a forum for transportation researchers, psychologists, ergonomists, engineers and policy-makers with an interest in traffic and transport psychology.
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