Dynamically Reversible Filament Networks Enabling Programmable In‐Sensor Memory for High‐Precision Neuromorphic Interactions

神经形态工程学 材料科学 蛋白质丝 计算机体系结构 形状记忆合金 人工神经网络 纳米技术 计算机科学 人工智能 复合材料
作者
Lei Liu,Shifan Yu,Yijing Xu,Hongyu Chen,Huasen Wang,Wansheng Lin,Yuxuan Hu,Zijian Huang,Chao Wei,Yu-Chen Lin,Ziquan Guo,Tingzhu Wu,Jianghui Zheng,Zhong Chen,Yuanjin Zheng,Xinqin Liao
出处
期刊:Advanced Functional Materials [Wiley]
标识
DOI:10.1002/adfm.202504456
摘要

Abstract Embodied intelligent tactile systems represent a groundbreaking paradigm for autonomous agents, facilitating dynamic perception and adaptation in unstructured environments. Traditional von Neumann architectures suffer from inefficiencies due to the separation of sensing and memory units, where mechanical relaxation is often overlooked as non‐informative noise rather than utilized as a computational resource. The transition dynamics from mechanical stimulation to memory encoding and their potential in neuromorphic interactions remain largely unexplored. Here, we present a transformative breakthrough in the seamless integration of sensing and memory (SMI) within a single device through programmable tactile memory. Utilizing polyborosiloxane (PBS) filament networks with dynamically reversible boron‐oxygen and hydrogen bonds, the design enhances adhesion and energy dissipation. It enables pressure‐induced electrically readable memory states with tunable retention times (260 ms to 63.9 s) and 99.6% linearity, supporting applications, such as threshold triggering, biomimetic pain perception, and motion recognition. The SMI sensor's in‐sensor memory and logic functions facilitate intelligent control, while its memory retention capabilities enable pain visualization and action‐driven modulation. Additionally, the spatiotemporal tactile memory achieves high‐precision motion recognition (98.33%) without relying on continuous time‐series data. This work introduces a novel mechanism for constructing SMI devices, advancing the development of intelligent neuromorphic tactile systems.
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