Sustainable DDPG-based Path Tracking For Connected Autonomous Electric Vehicles in extra-urban scenarios

Giacomo Basile, Sara Leccese, A. Petrillo, R. Rizzo, S. Santini
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Abstract

This paper addresses the path-tracking control problem for Connected Autonomous Electric Vehicles (CAEVs) moving in a smart Cooperative Connected Automated Mobility (CCAM) environment, where a smart infrastructure suggests the reference behaviour to achieve. To solve this problem, a novel energy-efficient Deep Deterministic Policy Gradient-based (DDPG) Algorithm, able to minimize its energy consumption while guaranteeing the optimal tracking of the suggested path, is proposed. Specifically, in order to improve the power autonomy and the battery state of charge (SOC), a Comprehensive Power-based Electric Vehicle Consumption Model (CPEM) is exploited for the training of the DDPG agent. The training process confirms the capability of DDPG agent into learning the safe eco-driving policy, while a case of study proves the advantages and the performance of the overall closed-loop of the proposed control strategy.
城市外场景下基于可持续ddpg的自动驾驶汽车路径跟踪
本文研究了在智能协同互联自动移动(CCAM)环境中移动的互联自动电动汽车(caev)的路径跟踪控制问题,其中智能基础设施建议实现参考行为。为了解决这一问题,提出了一种新的高效节能的基于深度确定性策略梯度(Deep Deterministic Policy gradient, DDPG)算法,该算法能够在保证建议路径的最优跟踪的同时最小化其能量消耗。具体而言,为了提高动力自主性和电池荷电状态(SOC),利用基于动力的综合电动汽车消耗模型(CPEM)对DDPG agent进行训练。训练过程验证了DDPG智能体学习安全生态驾驶策略的能力,并通过实例验证了所提控制策略的优越性和整体闭环性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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