Abstract

Metal oxide-based Resistive Random-Access Memory (RRAM) exhibits multiple resistance states, arising from the activation/deactivation of a conductive filament (CF) inside a switching layer. Understanding CF formation kinetics is critical to achieving optimal functionality of RRAM. Here a phase-field model is developed, based on materials properties determined by ab initio calculations, to investigate the role of electrical bias, heat transport and defect-induced Vegard strain in the resistive switching behavior, using MO2−x systems such as HfO2−x as a prototypical model system. It successfully captures the CF formation and resultant bipolar resistive switching characteristics. High-throughput simulations are performed for RRAMs with different material parameters to establish a dataset, based on which a compressed-sensing machine learning is conducted to derive interpretable analytical models for device performance (current on/off ratio and switching time) metrics in terms of key material parameters (electrical and thermal conductivities, Vegard strain coefficients). These analytical models reveal that optimal performance (i.e., high current on/off ratio and low switching time) can be achieved in materials with a low Lorenz number, a fundamental material constant. This work provides a fundamental understanding to the resistive switching in RRAM and demonstrates a computational data-driven methodology of materials selection for improved RRAM performance, which can also be applied to other electro-thermo-mechanical systems.

Highlights

  • Oxide-based Resistive-Random Access Memory (RRAM) has attracted broad attention as a potential candidate for nextgeneration nonvolatile memories, due to its fast switching speed, small programing current[1], controllable resistance states[2] and ease of fabrication[3]

  • Its resistance is tunable on demand and can be reversely changed between a high resistance/reset state (HRS) and a low resistance/set state (LRS)[4,5]

  • Electrically conductive filaments (CFs) can either be formed to connect both electrodes resulting in LRS in the RRAM, or ruptured inside the oxide layer to switch the device back to HRS

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Summary

Introduction

Oxide-based Resistive-Random Access Memory (RRAM) has attracted broad attention as a potential candidate for nextgeneration nonvolatile memories, due to its fast switching speed, small programing current[1], controllable resistance states[2] and ease of fabrication[3]. Based on this we apply compressed-sensing based machine learning to derive analytical prediction models for the device performance including the current on/off ratio (Ion/Ioff) and resistance switching time (tswitch) of RRAM as a function of the aforementioned key material constants.

Results
Conclusion

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