图4. 低功耗神经元功能实现 总结与展望:本项工作提出了一个由可重构忆·阻器组成的功能性纺织网络,该网络基于Ag/MoS2/HfAlOx/CNT的结构,具有非易失性存储器和易失性阈值开关特性。通过纺织网络中顶层的人工突触实现了多级电导状态的调制。纺织网络中底层的可重构神经元模拟了整合发放功能,显示了1.9 fJ的超低能耗,比生物神经元和现报道的人工神经元的能耗降低三个数量级。人工突触、神经元和功能电阻被集成到一个加热纺织系统中,用于智能温度调节。超低功耗的纺织神经形态网络可以为智能物联网应用的大脑启发的可重构和可穿戴的神经形态计算电子设备的发展提供新的方向。 原文链接:https://doi.org/10.1038/s41467-022-35160-1 参考文献:(1)Wang T et al. Reconfigurable neuromorphic memristor network
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