Professor Joon Young Kwak, development of memristor-based switching device
Professor Joon Young Kwak's research team from the Division of Electronic and Semiconductor Engineering at the College of Engineering has successfully developed a zirconium oxide (ZrO₂) memristor-based switching device for low-power neuromorphic computing. This breakthrough in next-generation semiconductor devices, which has the potential to reshape the future of AI hardware, has been featured as the cover article in the February 2025 issue of the prestigious international journal InfoMat (IF: 22.7, JCR top 3.1%), garnering significant attention.
Memristors have been emerging as promising candidates for computing systems in post-Moore applications, particularly electrochemical metallization-based memristors, which are poised to play a crucial role in neuromorphic computing and machine learning. These devices are favored for their high integration density, low power consumption, rapid switching speed, and significant on/off ratio. Despite advancements in various materials, achieving adequate electrical performance—characterized by threshold switching (TS) behavior, spontaneous reset, and low off-state resistance—remains challenging due to the limitations in conductance filament control within the nanoscale resistive switching layer. In this study, an efficient method to control the ZrO2 crystallinity is introduced for tunable volatility memristor by establishing the filament paths through a simple thermal treatment process in a single oxide layer. The effect of ZrO2 crystallinity to create localized filament paths for enhancing Ag migration and improving TS behavior is also investigated. In contrast to its amorphous counterpart, crystallized ZrO2 volatile memristor, treated by rapid thermal annealing, demonstrates a steep switching slope, a high resistance state, and forming-free characteristics. The superior volatile performance is attributed to localized conductive filaments along low-energy pathways, such as dislocations and grain boundaries. By coupling with enhanced volatile switching behavior, the volatility is finely tuned to function as short-term memory for reservoir computing, making it particularly well-suited for tasks such as audio and image recognition.
The research paper "Crystallinity-controlled volatility tuning of ZrO₂ memristor for physical reservoir computing" is available on the WILEY Online Library website.