Uleru George-Iulian, Hulea Mircea, Burlacu Adrian
Department of Computer Engineering, Gheorghe Asachi Technical University of Iasi, 700050 Iasi, Romania.
Department of Automatic Control, Gheorghe Asachi Technical University of Iasi, 700050 Iasi, Romania.
Biomimetics (Basel). 2022 May 13;7(2):62. doi: 10.3390/biomimetics7020062.
Spiking neural networks are able to control with high precision the rotation and force of single-joint robotic arms when shape memory alloy wires are used for actuation. Bio-inspired robotic arms such as anthropomorphic fingers include more junctions that are actuated simultaneously. Starting from the hypothesis that the motor cortex groups the control of multiple muscles into neural synergies, this work presents for the first time an SNN structure that is able to control a series of finger motions by activation of groups of neurons that drive the corresponding actuators in sequence. The initial motion starts when a command signal is received, while the subsequent ones are initiated based on the sensors' output. In order to increase the biological plausibility of the control system, the finger is flexed and extended by four SMA wires connected to the phalanges as the main tendons. The results show that the artificial finger that is controlled by the SNN is able to smoothly perform several motions of the human index finger while the command signal is active. To evaluate the advantages of using SNN, we compared the finger behaviours when the SMA actuators are driven by SNN, and by a microcontroller, respectively. In addition, we designed an electronic circuit that models the sensor's output in concordance with the SNN output.
当使用形状记忆合金丝进行驱动时,脉冲神经网络能够高精度地控制单关节机械臂的旋转和力。诸如拟人手指等受生物启发的机械臂包含更多同时被驱动的关节。从运动皮层将多块肌肉的控制分组为神经协同作用这一假设出发,这项工作首次提出了一种脉冲神经网络结构,该结构能够通过依次激活驱动相应执行器的神经元组来控制一系列手指运动。当接收到命令信号时开始初始运动,而后续运动则基于传感器的输出启动。为了提高控制系统的生物合理性,手指通过连接到指骨的四根形状记忆合金丝作为主要肌腱进行弯曲和伸展。结果表明,在命令信号激活时,由脉冲神经网络控制的人造手指能够平稳地执行人类食指的多种动作。为了评估使用脉冲神经网络的优势,我们分别比较了形状记忆合金执行器由脉冲神经网络和微控制器驱动时手指的行为。此外,我们设计了一个电子电路,使其与脉冲神经网络的输出一致地模拟传感器的输出。