Reconfigurable morphing surfaces provide new opportunities for advanced human-machine interfaces and bioinspired robotics. Morphing into arbitrary surfaces on demand requires a device with a sufficiently large number of actuators and an inverse control strategy. Developing compact, efficient control interfaces and algorithms is vital for broader adoption. In this work, we describe a passively addressed robotic morphing surface (PARMS) composed of matrix-arranged ionic actuators. To reduce the complexity of the physical control interface, we introduce passive matrix addressing. Matrix addressing allows the control of N2 independent actuators using only 2N control inputs, which is substantially lower than traditional direct addressing (N2 control inputs). Using machine learning with finite element simulations for training, our control algorithm enables real-time, high-precision forward and inverse control, allowing PARMS to dynamically morph into arbitrary achievable predefined surfaces on demand. These innovations may enable the future implementation of PARMS in wearables, haptics, and augmented reality/virtual reality.
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CITATION STYLE
Wang, J., Sotzing, M., Lee, M., & Chortos, A. (2023). Passively addressed robotic morphing surface (PARMS) based on machine learning. Science Advances, 9(29). https://doi.org/10.1126/sciadv.adg8019