Impact Force Location and Intensity Identification Using Joint-Position Sensors in Humanoids

Samia Choueiri, H. Diab, M. Owayjan, Roger Achkar
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Abstract

Humanoid robots are capable of imitating humans, adapting to changes in an environment, making decisions, and performing tasks. But they are also at a high risk of being hit by an external impact force or disturbance. However, unlike humans, robots do not have sensory neurons to be able to sense the location at which they were hit as well as the intensity of the impact force. In this paper, humanoids are tested for the ability to perceive their surrounding better by recognizing the impact force location and intensity after monitoring the response of the encoders at the different joints due to an external disturbance where additional sensors to the robot are not needed. Using machine learning, several models are trained and then tested to ameliorate and increase the robustness of the stability control algorithm as it can help the robot regain stability in a more educated system. Giving the humanoid the ability to perceive its surroundings better also gives it the ability to react and control its movement and posture with a better and faster response despite the increasing number of degrees of freedom which makes controlling the robot more difficult.
基于关节位置传感器的类人机器人冲击力定位与强度识别
人形机器人能够模仿人类,适应环境变化,做出决策和执行任务。但它们也面临着被外力或扰动撞击的高风险。然而,与人类不同的是,机器人没有感觉神经元来感知它们被击中的位置以及冲击力的强度。在本文中,在不需要额外传感器的情况下,通过监测编码器在不同关节处由于外部干扰而产生的响应,通过识别冲击力的位置和强度,测试了人形机器人更好地感知周围环境的能力。使用机器学习,训练几个模型,然后进行测试,以改进和增加稳定性控制算法的鲁棒性,因为它可以帮助机器人在更有教育的系统中恢复稳定性。赋予人形机器人更好地感知周围环境的能力,也使它能够以更好更快的反应和控制其运动和姿态,尽管自由度越来越大,这使得控制机器人变得更加困难。
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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