Field Induced Off‐State Instability in InGaZnO Thin‐Film Transistor and its Impact on Synaptic Circuits

Author:

Kang Minseung1ORCID,Cho Ung1ORCID,Kang Jaehyeon1,Han Narae1,Seo Hyeong Jun1,Yang Jee‐Eun2,Shin Seokyeon3,Kim Taehyun3,Kim Sangwook2,Jeong Changwook3,Kim Sangbum1ORCID

Affiliation:

1. Seoul National University Department of Material Science & Engineering Inter‐university Semiconductor Research Center Research Institute of Advanced Materials Seoul National University Seoul 08826 Republic of Korea

2. Samsung Advanced Institute of Technology (SAIT) Samsung Electronics Suwon‐si 16678 Republic of Korea

3. Ulsan National Institute of Science & Technology (UNIST) UNIST Ulsan 44919 Republic of Korea

Abstract

AbstractCharge storage synaptic circuits employing InGaZnO thin‐film transistors (IGZO TFTs) and capacitors are a promising candidate for on‐chip trainable neural network hardware accelerators. However, IGZO TFTs often exhibit bias instability. For synaptic memory applications, the programming transistors are predominantly exposed to asymmetric off‐state biases, and a unique field‐dependent on‐current reduction under off‐scenario is observed which may result in programming current variation. Further examination of the phenomenon is conducted with transmission line‐like method and degradation recovery tests, and current reduction can be attributed to contact resistance increase by charge trapping in the source and drain electrode and the channel region. The current decrease is subsequently formulated with a stretched exponential model with bias‐dependent parameters for quantitative circuit analysis under off‐state degradation. A neural network hardware acceleration simulator is utilized to assess the complicated impact the off‐state current degradation could instigate on on‐chip trainable IGZO TFT‐based synapse arrays. The simulation results generally demonstrate deteriorated training accuracy with aggravated off‐state instability, and the accuracy trend is elucidated from the perspective of weight symmetry point.

Funder

Ministry of Trade, Industry and Energy

Ministry of Science and ICT, South Korea

Samsung

Publisher

Wiley

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