El-Hussieny Haitham, Hameed Ibrahim A, Nada Ayman A
Department of Mechatronics and Robotics Engineering, Egypt-Japan University of Science and Technology (E-JUST), Alexandria 21934, Egypt.
Department of ICT and Natural Sciences, Norwegian University of Science and Technology, 7034 Trondheim, Norway.
Biomimetics (Basel). 2023 Dec 14;8(8):611. doi: 10.3390/biomimetics8080611.
Soft continuum robots, inspired by the adaptability and agility of natural soft-bodied organisms like octopuses and elephant trunks, present a frontier in robotics research. However, exploiting their full potential necessitates precise modeling and control for specific motion and manipulation tasks. This study introduces an innovative approach using Deep Convolutional Neural Networks (CNN) for the inverse quasi-static modeling of these robots within the Absolute Nodal Coordinate Formulation (ANCF) framework. The ANCF effectively represents the complex non-linear behavior of soft continuum robots, while the CNN-based models are optimized for computational efficiency and precision. This combination is crucial for addressing the complex inverse statics problems associated with ANCF-modeled robots. Extensive numerical experiments were conducted to assess the performance of these Deep CNN-based models, demonstrating their suitability for real-time simulation and control in statics modeling. Additionally, this study includes a detailed cross-validation experiment to identify the most effective model architecture, taking into account factors such as the number of layers, activation functions, and unit configurations. The results highlight the significant benefits of integrating Deep CNN with ANCF models, paving the way for advanced statics modeling in soft continuum robotics.
受章鱼和象鼻等天然软体生物的适应性和灵活性启发的软体连续体机器人,是机器人研究的前沿领域。然而,要充分发挥它们的潜力,就需要针对特定的运动和操作任务进行精确建模和控制。本研究引入了一种创新方法,即在绝对节点坐标公式(ANCF)框架内,使用深度卷积神经网络(CNN)对这些机器人进行逆准静态建模。ANCF有效地表示了软体连续体机器人复杂的非线性行为,而基于CNN的模型则针对计算效率和精度进行了优化。这种结合对于解决与基于ANCF建模的机器人相关的复杂逆静力学问题至关重要。进行了广泛的数值实验来评估这些基于深度CNN的模型的性能,证明了它们在静力学建模中适用于实时仿真和控制。此外,本研究还包括一个详细的交叉验证实验,以确定最有效的模型架构,同时考虑层数激活函数和单元配置等因素。结果突出了将深度CNN与ANCF模型集成的显著优势,为软体连续体机器人技术中的高级静力学建模铺平了道路。