A framework of physically interactive parameter estimation based on active environmental groping for safe disaster response work

IF 1.5 Q3 INSTRUMENTS & INSTRUMENTATION ROBOMECH Journal Pub Date : 2021-10-02 DOI:10.1186/s40648-021-00209-1
Kamezaki, Mitsuhiro, Uehara, Yusuke, Azuma, Kohga, Sugano, Shigeki
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Abstract

Disaster response robots are expected to perform complicated tasks such as traveling over unstable terrain, climbing slippery steps, and removing heavy debris. To complete such tasks safely, the robots must obtain not only visual-perceptual information (VPI) such as surface shape but also the haptic-perceptual information (HPI) such as surface friction of objects in the environments. VPI can be obtained from laser sensors and cameras. In contrast, HPI can be basically obtained from only the results of physical interaction with the environments, e.g., reaction force and deformation. However, current robots do not have a function to estimate the HPI. In this study, we propose a framework to estimate such physically interactive parameters (PIPs), including hardness, friction, and weight, which are vital parameters for safe robot-environment interaction. For effective estimation, we define the ground (GGM) and object groping modes (OGM). The endpoint of the robot arm, which has a force sensor, actively touches, pushes, rubs, and lifts objects in the environment with a hybrid position/force control, and three kinds of PIPs are estimated from the measured reaction force and displacement of the arm endpoint. The robot finally judges the accident risk based on estimated PIPs, e.g., safe, attentional, or dangerous. We prepared environments that had the same surface shape but different hardness, friction, and weight. The experimental results indicated that the proposed framework could estimate PIPs adequately and was useful to judge the risk and safely plan tasks.
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基于主动环境探索的安全灾害响应物理交互参数估计框架
灾难响应机器人有望执行复杂的任务,如在不稳定的地形上行走、爬湿滑的台阶、清除沉重的碎片。为了安全地完成这些任务,机器人不仅需要获得表面形状等视觉感知信息,还需要获得环境中物体表面摩擦等触觉感知信息。VPI可以通过激光传感器和相机获得。相比之下,HPI基本上只能从物理与环境相互作用的结果中获得,例如反作用力和变形。然而,目前的机器人没有一个功能来估计HPI。在这项研究中,我们提出了一个框架来估计这些物理交互参数(pip),包括硬度、摩擦和重量,这些参数是机器人与环境安全交互的重要参数。为了有效估计,我们定义了地面(GGM)和目标摸索模式(OGM)。具有力传感器的机械臂端点通过位置/力混合控制,主动地接触、推动、摩擦和提升环境中的物体,并根据测量的机械臂端点反作用力和位移估计出三种pip。机器人最终根据估计的pip来判断事故风险,例如安全、注意或危险。我们准备了表面形状相同但硬度、摩擦力和重量不同的环境。实验结果表明,该框架能较好地估计pip值,对风险判断和安全规划任务有一定的指导意义。
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来源期刊
ROBOMECH Journal
ROBOMECH Journal Mathematics-Control and Optimization
CiteScore
3.20
自引率
7.10%
发文量
21
审稿时长
13 weeks
期刊介绍: ROBOMECH Journal focuses on advanced technologies and practical applications in the field of Robotics and Mechatronics. This field is driven by the steadily growing research, development and consumer demand for robots and systems. Advanced robots have been working in medical and hazardous environments, such as space and the deep sea as well as in the manufacturing environment. The scope of the journal includes but is not limited to: 1. Modeling and design 2. System integration 3. Actuators and sensors 4. Intelligent control 5. Artificial intelligence 6. Machine learning 7. Robotics 8. Manufacturing 9. Motion control 10. Vibration and noise control 11. Micro/nano devices and optoelectronics systems 12. Automotive systems 13. Applications for extreme and/or hazardous environments 14. Other applications
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