基于先验混合策略纳什均衡的车辆意图预测贝叶斯方法

IF 4.8 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC Automotive Innovation Pub Date : 2023-08-22 DOI:10.1007/s42154-023-00229-0
Giovanni Lucente, Reza Dariani, Julian Schindler, Michael Ortgiese
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引用次数: 0

摘要

汽车自动化领域最先进的技术将在未来几年导致混合交通环境,在这种环境中,联网和自动化车辆必须与人类驾驶的车辆进行交互。在这种情况下,有必要建立一个意图预测模型,该模型能够预测交通场景在未来几秒钟内如何演变,包括车辆的物理状态、可能的机动以及交通参与者之间的相互作用。本文提出了一种用于车辆意图预测的贝叶斯方法,利用混合策略纳什均衡(MSNE)形式的博弈论框架作为先验估计来模拟交通参与者之间的相互影响。然后根据Kullback-Leibler散度计算可能性。该游戏被建模为具有个人偏好的静态非零和多矩阵游戏,这是一种众所周知的战略游戏。找到这些游戏的MSNE是在PPAD \(\cap\) PLS复杂度类中,具有多项式时间可追溯性。该方法在长期(10秒)的模拟中显示出良好的结果,其计算复杂性允许在线应用。
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A Bayesian Approach with Prior Mixed Strategy Nash Equilibrium for Vehicle Intention Prediction

The state-of-the-art technology in the field of vehicle automation will lead to a mixed traffic environment in the coming years, where connected and automated vehicles have to interact with human-driven vehicles. In this context, it is necessary to have intention prediction models with the capability of forecasting how the traffic scenario is going to evolve with respect to the physical state of vehicles, the possible maneuvers and the interactions between traffic participants within the seconds to come. This article presents a Bayesian approach for vehicle intention forecasting, utilizing a game-theoretic framework in the form of a Mixed Strategy Nash Equilibrium (MSNE) as a prior estimate to model the reciprocal influence between traffic participants. The likelihood is then computed based on the Kullback-Leibler divergence. The game is modeled as a static nonzero-sum polymatrix game with individual preferences, a well known strategic game. Finding the MSNE for these games is in the PPAD \(\cap\) PLS complexity class, with polynomial-time tractability. The approach shows good results in simulations in the long term horizon (10s), with its computational complexity allowing for online applications.

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来源期刊
Automotive Innovation
Automotive Innovation Engineering-Automotive Engineering
CiteScore
8.50
自引率
4.90%
发文量
36
期刊介绍: Automotive Innovation is dedicated to the publication of innovative findings in the automotive field as well as other related disciplines, covering the principles, methodologies, theoretical studies, experimental studies, product engineering and engineering application. The main topics include but are not limited to: energy-saving, electrification, intelligent and connected, new energy vehicle, safety and lightweight technologies. The journal presents the latest trend and advances of automotive technology.
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