Affiliation:
1. CU-ICAR: Clemson University, Automotive Engineering, USA
Abstract
<div>Different platoon controls of connected automated vehicles have been studied to
improve the entire fleet’s overall energy efficiency and driving safety. The
platoons can be used during highway cruising to reduce unnecessary braking,
shorten required headway, and thus improve traffic capacity and fuel economy.
They can also be used in urban driving to improve traffic efficiency at
intersections. However, there remain two problems that prevent the technology
from achieving maximum benefit. First, the presence of human-driven vehicles
will change the behavior of the fleet and platoon control of connected mixed
traffic. Second, the communication uncertainties impose negative impacts on the
dynamics of the platoon. A high-performance state predictor for surrounding
vehicles can reduce the human-driven vehicle’s influence and help handle
communication uncertainties better. This article proposes a novel inverse model
predictive control (IMPC)-based approach to capture and predict longitudinal
human driving behaviors. It is also leveraged to formulate an efficient ego
vehicle model predictive control (MPC) approach to handle random communication
delays and packet losses in three different communication topologies: the
predecessor following, the predecessor–leader following, and the
multi-predecessor following. The proposed approach is compared with several
prediction approaches in simulation to demonstrate its effectiveness and find
the appropriate communication topology for mixed traffic platoon control. The
results show that the predecessor–leader following topology can enhance the
benefits of the integrated model predictive control strategy. Specifically, it
can lower the average control errors of the following connected and automated
vehicles by more than 50% and decrease the control efforts by 10%.</div>
Subject
Artificial Intelligence,Computer Science Applications,Automotive Engineering,Control and Systems Engineering,General Medicine