Chen Xiaojiao, Duanmu Dehao, Wang Zheng
Department of Mechanical Engineering, The University of Hong Kong, Hong Kong, China.
Department of Mechanical and Energy Engineering, Southern University of Science and Technology, Shenzhen, China.
Front Robot AI. 2021 Jan 29;7:586490. doi: 10.3389/frobt.2020.586490. eCollection 2020.
Soft robotics has widely been known for its compliant characteristics when dealing with contraction or manipulation. These soft behavior patterns provide safe and adaptive interactions, greatly relieving the complexity of active control policies. However, another promising aspect of soft robotics, which is to achieve useful information from compliant behavior, is not widely studied. This characteristic could help to reduce the dependence of sensors, gain a better knowledge of the environment, and enrich high-level control strategies. In this paper, we have developed a state-change model of a soft robotic arm, and we demonstrate how compliant behavior could be used to estimate external load based on this model. Moreover, we propose an improved version of the estimation procedure, further reducing the estimation error by compensating the influcence of pressure deadzone. Experiments of both methods are compared, displaying the potential effectiveness of applying these methods.
软体机器人因其在收缩或操作时的柔顺特性而广为人知。这些柔软的行为模式提供了安全且自适应的交互,极大地减轻了主动控制策略的复杂性。然而,软体机器人的另一个有前景的方面,即从柔顺行为中获取有用信息,尚未得到广泛研究。这一特性有助于减少对传感器的依赖,更好地了解环境,并丰富高级控制策略。在本文中,我们开发了一个软体机器人手臂的状态变化模型,并展示了如何基于该模型利用柔顺行为来估计外部负载。此外,我们提出了一种改进的估计程序版本,通过补偿压力死区的影响进一步降低估计误差。对这两种方法的实验进行了比较,展示了应用这些方法的潜在有效性。