Kou Yuanshi, Liu Xurui, Ma Xiaotian, Xiang Yuanzhuo, Zang Jianfeng
Laboratory for Soft intelligent Materials and Devices, School of Integrated Circuit, Huazhong University of Science and Technology, Wuhan, China.
Wuhan National Laboratory for Optoelectronics, School of Integrated Circuit, Huazhong University of Science and Technology, Wuhan, China.
Front Robot AI. 2023 Dec 11;10:1281362. doi: 10.3389/frobt.2023.1281362. eCollection 2023.
Electromagnetically controlled small-scale robots show great potential in precise diagnosis, targeted delivery, and minimally invasive surgery. The automatic navigation of such robots could reduce human intervention, as well as the risk and difficulty of surgery. However, it is challenging to build a precise kinematics model for automatic robotic control because the controlling process is affected by various delays and complex environments. Here, we propose a learning-based intelligent trajectory planning strategy for automatic navigation of magnetic robots without kinematics modeling. The Long Short-Term Memory (LSTM) neural network is employed to establish a global mapping relationship between the current sequence in the electromagnetic actuation system and the trajectory coordinates. We manually control the robot to move on a curved path 50 times to form the training database to train the LSTM network. The trained LSTM network is validated to output the current sequence for automatically controlling the magnetic robot to move on the same curved path and the tortuous and branched new paths in simulated vascular tracks. The proposed trajectory planning strategy is expected to impact the clinical applications of robots.
电磁控制的小型机器人在精确诊断、靶向给药和微创手术中显示出巨大潜力。此类机器人的自动导航可减少人为干预,以及手术风险和难度。然而,为机器人自动控制建立精确的运动学模型具有挑战性,因为控制过程受各种延迟和复杂环境的影响。在此,我们提出一种基于学习的智能轨迹规划策略,用于磁控机器人在无需运动学建模情况下的自动导航。采用长短期记忆(LSTM)神经网络在电磁驱动系统中的当前序列与轨迹坐标之间建立全局映射关系。我们手动控制机器人在一条弯曲路径上移动50次,以形成训练数据库来训练LSTM网络。经验证,训练后的LSTM网络可输出当前序列,以自动控制磁控机器人在相同弯曲路径以及模拟血管轨迹中的曲折和分支新路径上移动。所提出的轨迹规划策略有望对机器人的临床应用产生影响。