Development characterization and modeling of a TaOx ReRAM for a neuromorphic accelerator
This report discusses aspects of neuromorphic computing and how it is used to model microsystems.
This report discusses aspects of neuromorphic computing and how it is used to model microsystems.
ECS Transactions
Resistive random access memory (ReRAM), or memristors, may be capable of significantly improve the efficiency of neuromorphic computing, when used as a central component of an analog hardware accelerator. However, the significant electrical variation within a device and between devices degrades the maximum efficiency and accuracy which can be achieved by a ReRAMbased neuromorphic accelerator. In this report, the electrical variability is characterized, with a particular focus on that which is due to fundamental, intrinsic factors. Analytical and ab initio models are presented which offer some insight into the factors responsible for this variability.
Abstract not provided.