基于 LQR 的控制策略,改善人机陪伴和自然避障能力

Zefan Su , Hanchen Yao , Jianwei Peng , Zhelin Liao , Zengwei Wang , Hui Yu , Houde Dai , Tim C. Lueth
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引用次数: 0

摘要

在动态和非结构化的人机共生环境中,陪伴机器人需要自然的人机交互,并通过多模态信息融合实现自主智能,从而实现有效协作。然而,在实际应用中,伴随行动的控制精度和协调性并不令人满意。这主要是由于伴随目标与移动机器人之间的运动协调存在困难。本文提出了一种基于线性二次调节器(LQR)的陪伴控制策略,以提高机器人陪伴任务的协调性和精确性。这种方法能使机器人适应伴随目标运动的突然变化。此外,机器人还能在陪伴过程中顺利避开障碍物。首先,建立了一个基于非人体工学约束的人机交互模型,以确定机器人与陪伴目标之间的相对位置和方向。然后,引入基于 LQR 的伴行控制器,其中包含行为动力学,以同时避开障碍物并跟踪伴行目标的方向和速度。最后,通过各种模拟和真实世界的人机陪伴实验来调节目标物体与机器人平台之间的相对位置、方向和速度。实验结果表明,这种方法在整个系统运行过程中的控制距离和方向误差方面优于传统控制算法。所提出的基于 LQR 的控制策略可确保在社交陪伴场景中与目标人物协调一致地运动。
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LQR-based control strategy for improving human–robot companionship and natural obstacle avoidance
In the dynamic and unstructured environment of human–robot symbiosis, companion robots require natural human–robot interaction and autonomous intelligence through multimodal information fusion to achieve effective collaboration. Nevertheless, the control precision and coordination of the accompanying actions are not satisfactory in practical applications. This is primarily attributed to the difficulties in the motion coordination between the accompanying target and the mobile robot. This paper proposes a companion control strategy based on the Linear Quadratic Regulator (LQR) to enhance the coordination and precision of robot companion tasks. This method enables the robot to adapt to sudden changes in the companion target’s motion. Besides, the robot could smoothly avoid obstacles during the companion process. Firstly, a human–robot companion interaction model based on nonholonomic constraints is developed to determine the relative position and orientation between the robot and the companion target. Then, an LQR-based companion controller incorporating behavioral dynamics is introduced to simultaneously avoid obstacles and track the companion target’s direction and velocity. Finally, various simulations and real-world human–robot companion experiments are conducted to regulate the relative position, orientation, and velocity between the target object and the robot platform. Experimental results demonstrate the superiority of this approach over conventional control algorithms in terms of control distance and directional errors throughout system operation. The proposed LQR-based control strategy ensures coordinated and consistent motion with target persons in social companion scenarios.
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