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Home NEWS Science News Technology

SKKU Research Team Deciphers the Source of Stochasticity, Advancing Next-Generation Data Security and Computing

Bioengineer by Bioengineer
March 11, 2026
in Technology
Reading Time: 4 mins read
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SKKU Research Team Deciphers the Source of Stochasticity, Advancing Next-Generation Data Security and Computing
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A pioneering collaboration led by Professor Jung Ho Yoon from Sungkyunkwan University’s School of Advanced Materials Science and Engineering, in partnership with Professor Kyeongtae Kim of Incheon National University and Dr. Sunghoon Hur at the Korea Institute of Science and Technology (KIST), has uncovered vital insights into the complex resistive switching mechanisms of ion-motion-mediated volatile memristors. These emerging semiconductor devices, considered some of the most promising candidates for future computing technologies, demonstrate stochastic electrical behavior that had, until now, remained elusive in its fundamental origin. This breakthrough study elucidates that the resistive switching is governed not by a single filament formation, as was traditionally assumed, but by a more intricate interplay involving multiple conductive filaments dynamically competing with each other, modulated by electrothermal effects.

For years, the enigmatic stochasticity inherent in memristor operation posed a significant obstacle to the design of reliable devices capable of leveraging this randomness for practical purposes. Memristors operate by forming and dissolving metallic ion filaments within their solid electrolyte matrix under voltage bias. These filaments spontaneously emerge and disappear, creating volatile memory states that hold immense promise for applications demanding intrinsic randomness, such as true random number generation (TRNG) critical for secure cryptographic systems and probabilistic computing architectures aimed at tackling complex optimization problems. Despite their potential, capturing the real-time filamentary dynamics inside memristors remained a formidable challenge due to the nanoscale phenomena occurring inside opaque device structures.

Addressing this investigative gap, the research team implemented scanning thermal microscopy (SThM), a highly sensitive nanoscale thermal probing technique. By harnessing SThM’s capability to detect minute Joule heat signatures during filament formation and rupture events, they managed to visualize spatially localized temperature variations on the device surface related to resistive switching. This approach unveiled compelling evidence of multiple localized hot spots arising and vanishing repeatedly, which correlates strongly with the presence of several conductive filaments co-existing and intermittently conducting current. The thermal imaging corroborated the theoretical prediction that the resistive switching process in volatile memristors is far from a single filament event but rather a dynamic competitive interplay modulated by ionic motion and Joule heating.

The identification of these multi-filament dynamics, entangled with complex electrothermal feedback mechanisms, sheds light on the intrinsic stochasticity in memristor operation. This nuanced understanding enables the precise modulation and optimization of filament behavior, allowing researchers to tailor devices that maximize stochastic properties required for next-generation computational functions. Through sophisticated device engineering, stochastic memristors can now be effectively harnessed as hardware true random number generators, capable of generating entirely unpredictable digital and analog random sequences fundamental for secure data encryption and probabilistic information processing paradigms.

Expanding on the practical implications, the team successfully devised a bimodal TRNG system utilizing the memristors’ inherent stochastic switching to produce random numbers in both digital and analog domains. This innovation marks a transformative step toward integrating memristor-based true randomness sources directly into hardware security modules, circumventing the limitations of conventional pseudo-random algorithms and thereby enhancing cryptographic robustness. In a striking demonstration of real-world applicability, the researchers conducted secure data encryption and decryption sequences using the randomness derived from the stochastic memristors as encryption keys, decisively illustrating the feasibility of this technology in safeguarding sensitive information.

Furthermore, the study ventured into exploring the memristor’s potential for probabilistic computing, an emerging computational paradigm inspired by the stochastic processes found in natural systems. By manipulating the multi-filament resistive switching, the team implemented an inverse operation of a binary full-adder circuit — a fundamental building block of arithmetic logic — showcasing how such devices could perform complex logic functions under probabilistic frameworks. This development signifies a critical advance toward designing low-energy, fault-tolerant computing systems that can efficiently solve combinatorial optimization and machine learning challenges, which are pivotal for artificial intelligence and data-centric applications.

Professor Jung Ho Yoon reflected on the implications of these findings, emphasizing the paradigm shift from viewing memristor functionality as a simplistic filament rupture model to appreciating the rich, multi-filament and electrothermal interactions underpinning device behavior. This deeper mechanistic insight paves the way for the rational design of intelligent semiconductor devices tailored for stochastic and probabilistic computing architectures. The team envisions establishing global leadership in this technological frontier by translating their fundamental discoveries into practical, scalable applications that revolutionize how information is processed and secured.

The experimental success of visualizing multi-filament competition through nanoscale thermal imaging techniques stands as a methodological milestone. It underscores the power of combining advanced microscopy with rigorous electrothermal modeling to decode nanoscale device physics that were previously obscured. This breakthrough is expected to stimulate further research into tuning memristive properties via material engineering and device geometry optimization, ultimately unlocking new functionalities for neuromorphic computing, random number generation, and secure communication systems.

Supported by prominent South Korean funding agencies including the National Research Foundation and the Commercialization Promotion Agency for R&D Outcomes, this study represents a robust interdisciplinary effort encompassing materials science, electrical engineering, and applied physics. The full findings have been detailed in the article titled “Unraveling Origin of Stochasticity in Multi-Filamentary Memristor,” published on January 21 in the esteemed journal Advanced Functional Materials, boasting an impact factor of 19.0 and high citation ranking. The rigorous peer-reviewed publication offers a comprehensive exposition of the experimental techniques, theoretical models, and potential device architectures arising from this work.

In summary, this investigation redefines our understanding of volatile memristor devices by revealing a complex, multi-filament conductive framework coupled with electrothermal modulatory effects responsible for their stochastic switching behavior. These insights not only resolve longstanding questions about randomness origins in memristors but also unlock new possibilities for next-generation computational systems characterized by true hardware-level randomness and probabilistic processing capabilities. As the semiconductor industry seeks innovative solutions amid the limits of conventional technologies, this research charts a promising route toward integrating inherently stochastic memristors into future intelligent information processing platforms.

Subject of Research: Stochastic Switching Mechanisms in Ion-Motion-Mediated Volatile Memristors and Their Applications in True Random Number Generation and Probabilistic Computing

Article Title: Unraveling Origin of Stochasticity in Multi-Filamentary Memristor

News Publication Date: January 21, 2024

Web References: http://dx.doi.org/10.1002/adfm.202527482

Image Credits: Prof. Jung Ho Yoon

Keywords

Materials Science, Memristor, Stochastic Switching, Volatile Memristor, Conductive Filaments, Electrothermal Effects, Scanning Thermal Microscopy, True Random Number Generator, Probabilistic Computing, Semiconductor Devices, Joule Heating, Cryptography

Tags: electrothermal modulation in memristorsintrinsic randomness in computingion-motion-mediated volatile memristorsmultiple conductive filaments dynamicsnext-generation semiconductor devicesprobabilistic computing advancementsresistive switching mechanismssecure cryptographic systems developmentstochastic behavior in memristorsSungkyunkwan University memristor researchtrue random number generation technologyvolatile memristor memory states

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