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Complex network dynamics in self-assembled atomic-switch networks: prospects for neuromorphic computation

机译:自组装原子开关网络中的复杂网络动力学:神经形态计算的前景

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The inherent power of the biological brain, with regard to pattern recognition, is unparalleled and cannot even be matched by multi-million dollar supercomputers. Inspired from this, neuromorphic computation, where ideas originating from the complex structure and functionality of the biological brain are utilized for advanced computation has shown great potential. In this regard, we are developing on-chip pattern classification capabilities via inexpensive self-assembly of nanoparticles (NPs). The formation of percolating microstructure of Sn NPs and tunnel junctions leads to a complex atomic-switch network (ASN) poised near criticality. Voltage stimulation is utilized for modulating the synaptic structure of the network, which shows potential for utilization as a `reservoir' in reservoir computing (RC).
机译:在模式识别方面,生物大脑的内在力量是无与伦比的,甚至无法与数百万美元的超级计算机相提并论。受此启发,神经形态计算已显示出巨大的潜力,其中源自生物脑的复杂结构和功能的思想被用于高级计算。在这方面,我们正在通过廉价的纳米颗粒(NP)自组装来开发片上模式分类功能。 Sn NPs和隧道结的渗流微观结构的形成导致接近临界状态的复杂原子开关网络(ASN)。电压刺激被用于调节网络的突触结构,这显示了在水库计算(RC)中用作“水库”的潜力。

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