Litcius/Paper detail

Predictive Information Multiagent Deep Reinforcement Learning for Automated Truck Platooning Control

Renzong Lian, Zhiheng Li, Boxuan Wen, Junqing Wei, Jiawei Zhang, Li Li

2023IEEE Intelligent Transportation Systems Magazine12 citationsDOI

Abstract

Human-leading automated truck platooning has been an effective technique to improve traffic capacity and fuel economy and eliminate uncertainties of the traffic environment. Aiming for a tradeoff between the dynamic response of car following and energy-efficient platooning control, a predictive information multiagent soft actor–critic (PI-MASAC) control framework is proposed for a human-leading automated heavy-duty-truck platoon. In this framework, predictive information of environmental dynamics is modeled as the state representation of a deep reinforcement learning algorithm to address the uncertainties of a partially observable environment. In the truck model, the impact of intraplatoon aerodynamic interactions is modeled, which is used to design a constant spacing policy for platooning control. We demonstrate the effectiveness of our approach by testing the human-leading truck platoon under multiple scenarios compared to proximal policy optimization, an intelligent driver model, and linear-based cooperative adaptive cruise control. Our results show that the PI-MASAC learns a novel car-following strategy of peak shaving and valley filling and therefore significantly enhances energy savings by reducing high-intensity accelerations and decelerations. In addition, the PI-MASAC demonstrates its adaptability to various initial scenarios and exhibits good generalization to a larger platoon size.

Topics & Concepts

PlatoonReinforcement learningCruise controlTruckIntelligent transportation systemComputer scienceAdaptabilityEngineeringControl engineeringControl (management)Automotive engineeringArtificial intelligenceEcologyBiologyCivil engineeringTraffic control and managementAutonomous Vehicle Technology and SafetyTransportation Planning and Optimization