Ehrlich Michael, Zaidel Yuval, Weiss Patrice L, Melamed Yekel Arie, Gefen Naomi, Supic Lazar, Ezra Tsur Elishai
Neuro-Biomorphic Engineering Lab, Open University of Israel, Ra'anana, Israel.
Department of Occupational Therapy, University of Haifa, Haifa, Israel.
Front Neurosci. 2022 Sep 29;16:1007736. doi: 10.3389/fnins.2022.1007736. eCollection 2022.
Wheelchair-mounted robotic arms support people with upper extremity disabilities with various activities of daily living (ADL). However, the associated cost and the power consumption of responsive and adaptive assistive robotic arms contribute to the fact that such systems are in limited use. Neuromorphic spiking neural networks can be used for a real-time machine learning-driven control of robots, providing an energy efficient framework for adaptive control. In this work, we demonstrate a neuromorphic adaptive control of a wheelchair-mounted robotic arm deployed on Intel's Loihi chip. Our algorithm design uses neuromorphically represented and integrated velocity readings to derive the arm's current state. The proposed controller provides the robotic arm with adaptive signals, guiding its motion while accounting for kinematic changes in real-time. We pilot-tested the device with an able-bodied participant to evaluate its accuracy while performing ADL-related trajectories. We further demonstrated the capacity of the controller to compensate for unexpected inertia-generating payloads using online learning. Videotaped recordings of ADL tasks performed by the robot were viewed by caregivers; data summarizing their feedback on the user experience and the potential benefit of the system is reported.
安装在轮椅上的机器人手臂可辅助上肢残疾人士进行各种日常生活活动(ADL)。然而,响应式和自适应辅助机器人手臂的相关成本及功耗导致此类系统的使用受限。神经形态脉冲神经网络可用于机器人的实时机器学习驱动控制,为自适应控制提供了一个节能框架。在这项工作中,我们展示了部署在英特尔Loihi芯片上的安装在轮椅上的机器人手臂的神经形态自适应控制。我们的算法设计使用神经形态表示和集成的速度读数来推导手臂的当前状态。所提出的控制器为机器人手臂提供自适应信号,在实时考虑运动学变化的同时引导其运动。我们对一名身体健全的参与者进行了该设备的试点测试,以评估其在执行与ADL相关轨迹时的准确性。我们还进一步展示了控制器使用在线学习来补偿意外产生惯性的负载的能力。护理人员观看了机器人执行ADL任务的录像;报告了总结他们对用户体验和系统潜在益处反馈的数据。