Research on a Personalized Decision Control Algorithm for Autonomous Vehicles Based on the Reinforcement Learning from Human Feedback Strategy

Ning Li, Pengzhan Chen
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Abstract

To address the shortcomings of previous autonomous decision models, which often overlook the personalized features of users, this paper proposes a personalized decision control algorithm for autonomous vehicles based on RLHF (reinforcement learning from human feedback). The algorithm combines two reinforcement learning approaches, DDPG (Deep Deterministic Policy Gradient) and PPO (proximal policy optimization), and divides the control scheme into three phases including pre-training, human evaluation, and parameter optimization. During the pre-training phase, an agent is trained using the DDPG algorithm. In the human evaluation phase, different trajectories generated by the DDPG-trained agent are scored by individuals with different styles, and the respective reward models are trained based on the trajectories. In the parameter optimization phase, the network parameters are updated using the PPO algorithm and the reward values given by the reward model to achieve personalized autonomous vehicle control. To validate the control algorithm designed in this paper, a simulation scenario was built using CARLA_0.9.13 software. The results demonstrate that the proposed algorithm can provide personalized decision control solutions for different styles of people, satisfying human needs while ensuring safety.
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基于人类反馈强化学习策略的自动驾驶汽车个性化决策控制算法研究
针对以往自主决策模型往往忽视用户个性化特征的缺点,本文提出了一种基于 RLHF(来自人类反馈的强化学习)的自主车辆个性化决策控制算法。该算法结合了DDPG(深度确定性策略梯度)和PPO(近端策略优化)两种强化学习方法,并将控制方案分为预训练、人类评估和参数优化三个阶段。在预训练阶段,使用 DDPG 算法对代理进行训练。在人类评估阶段,由不同风格的个体对经过 DDPG 训练的代理生成的不同轨迹进行评分,并根据轨迹训练相应的奖励模型。在参数优化阶段,利用 PPO 算法更新网络参数和奖励模型给出的奖励值,从而实现个性化的自主车辆控制。为了验证本文设计的控制算法,我们使用 CARLA_0.9.13 软件构建了一个仿真场景。结果表明,本文提出的算法可以为不同风格的人群提供个性化的决策控制方案,在满足人的需求的同时确保安全。
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