Spatiotemporal evolution of resistance state in simulated memristive networks

Originally studied for their suitability to store information compactly, memristive networks are now being analysed as implementations of neuromorphic circuits. An extremely high number of elements is thus mandatory. To surpass the limited achievable connectivity due to the featuring size exploiting self-assemblies has been proposed as an alternative, in turn posing more challenges. In an attempt for offering insight on what to expect when characterizing the collective electrical response of switching assemblies, in this work, networks of memristive elements are simulated. Collective electrical behaviour and maps of resistance states are characterized upon different electrical stimuli. By comparing the response of homogeneous and heterogeneous networks, we delineate differences that might be experimentally observed when the number of memristive units is scaled up and disorder arises as an inevitable feature.

[1]  Sergei V. Kalinin,et al.  Conduction at domain walls in oxide multiferroics. , 2009, Nature materials.

[2]  Leon O. Chua,et al.  Brains Are Made of Memristors , 2019, Handbook of Memristor Networks.

[3]  Zhongrui Wang,et al.  Memristive Crossbar Arrays for Storage and Computing Applications , 2021, Adv. Intell. Syst..

[4]  Leon O. Chua Memristor, Hodgkin-Huxley, and Edge of Chaos , 2019, Handbook of Memristor Networks.

[5]  Wayne Luk,et al.  Deep Neural Network Approximation for Custom Hardware , 2019, ACM Comput. Surv..

[6]  Avi Mendelson,et al.  Early-Stage Neural Network Hardware Performance Analysis , 2021, Sustainability.

[7]  Z. Kuncic,et al.  Avalanches and edge-of-chaos learning in neuromorphic nanowire networks , 2021, Nature Communications.

[8]  Farooq Ahmad Khanday,et al.  Resistive Random Access Memory (RRAM): an Overview of Materials, Switching Mechanism, Performance, Multilevel Cell (mlc) Storage, Modeling, and Applications , 2020, Nanoscale Research Letters.

[9]  Leon Chua,et al.  Handbook of Memristor Networks , 2019 .

[10]  D. Stewart,et al.  The missing memristor found , 2008, Nature.

[11]  D. Chialvo Emergent complex neural dynamics , 2010, 1010.2530.

[12]  Yuriy V. Pershin,et al.  Memory effects in complex materials and nanoscale systems , 2010, 1011.3053.

[13]  James M. Shine,et al.  Topological Properties of Neuromorphic Nanowire Networks , 2020, Frontiers in Neuroscience.

[14]  J. Lizier,et al.  Information dynamics in neuromorphic nanowire networks , 2021, Scientific Reports.

[15]  Adam Z. Stieg,et al.  Emergent dynamics of neuromorphic nanowire networks , 2019, Scientific Reports.