to be the world’s
top IT powerhouse.We thrive to be the world’s top IT powerhouse.
Our mission is to lead innovations
in information technology, create lasting impact,
and educate next-generation leaders of the world.
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to be the world’s
top IT powerhouse.We thrive to be the world’s top IT powerhouse.
Our mission is to lead innovations
in information technology, create lasting impact,
and educate next-generation leaders of the world.
- 2
- 6
to be the world’s
top IT powerhouse.We thrive to be the world’s top IT powerhouse.
Our mission is to lead innovations
in information technology, create lasting impact,
and educate next-generation leaders of the world.
- 3
- 6
to be the world’s
top IT powerhouse.We thrive to be the world’s top IT powerhouse.
Our mission is to lead innovations
in information technology, create lasting impact,
and educate next-generation leaders of the world.
- 4
- 6
to be the world’s
top IT powerhouse.We thrive to be the world’s top IT powerhouse.
Our mission is to lead innovations
in information technology, create lasting impact,
and educate next-generation leaders of the world.
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- 6
are a key thrust
in EE researchAI and machine learning are a key thrust in EE research
AI/machine learning efforts are already a big part of ongoing
research in all 6 divisions - Computer, Communication, Signal,
Wave, Circuit and Device - of KAIST EE
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Highlights
A joint research team from Korea and the United States has developed next-generation, high-resolution image sensor technology with higher power efficiency and a smaller size compared to existing sensors. Notably, they have secured foundational technology for ultra-high-resolution shortwave infrared (SWIR) image sensors, an area currently dominated by Sony, paving the way for future market entry.
Research team led by Professor SangHyeon Kim from the School of Electrical Engineering, in collaboration with Inha University and Yale University in the U.S., has developed an ultra-thin broadband photodiode (PD), marking a significant breakthrough in high-performance image sensor technology.
This research drastically improves the trade-off between the absorption layer thickness and quantum efficiency found in conventional photodiode technology. Specifically, it achieved high quantum efficiency of over 70% even in an absorption layer thinner than one micrometer (μm), reducing the thickness of the absorption layer by approximately 70% compared to existing technologies.
A thinner absorption layer simplifies pixel processing, allowing for higher resolution and smoother carrier diffusion, which is advantageous for light carrier acquisition while also reducing the cost. However, a fundamental issue with thinner absorption layers is the reduced absorption of long-wavelength light.
The research team introduced a guided-mode resonance (GMR) structure* that enables high-efficiency light absorption across a wide spectral range from 400 nanometers (nm) to 1,700 nanometers (nm). This wavelength range includes not only visible light but also light the SWIR region, making it valuable for various industrial applications. *Guided-Mode Resonance (GMR) Structure: A concept used in electromagnetics, a phenomenon in which a specific (light) wave resonates (forming a strong electric/magnetic field) at a specific wavelength. Since energy is maximized under these conditions, it has been used to increase antenna or radar efficiency.
The improved performance in the SWIR region is expected to play a significant role in developing next-generation image sensors with increasingly high resolutions. The GMR structure, in particular, holds potential for further enhancing resolution and other performance metrics through hybrid integration and monolithic 3D integration with complementary metal-oxide-semiconductor (CMOS)-based readout integrated circuits (ROIC).
The research team has significantly enhanced international competitiveness in low-power devices and ultra-high-resolution imaging technology, opening up possibilities for applications in digital cameras, security systems, medical and industrial image sensors, as well as future ultra-high-resolution sensors for autonomous driving, aerospace, and satellite observation.
Professor Sang Hyun Kim, the lead researcher, commented, “This research demonstrates that significantly higher performance than existing technologies can be achieved even with ultra-thin absorption layers.”
The results of this research were published on 15th of November, in the prestigious international journal Light: Science & Applications (JCR 2.9%, IF=20.6), with Professor Dae-Myung Geum of Inha University (formerly a KAIST postdoctoral researcher) and Dr. Jinha Lim (currently a postdoctoral researcher at Yale University) as co-first authors. (Paper title: “Highly-efficient (>70%) and Wide-spectral (400 nm -1700 nm) sub-micron-thick InGaAs photodiodes for future high-resolution image sensors”)
This study was supported by the National Research Foundation of Korea.
<Photo Credit: CNN>
EE Professor Hyun Myung’s research group was featured on CNN’s ‘Tech for Good’ program for their groundbreaking technologies, ‘DreamWaQ’ and ‘CAROS-H.’
‘DreamWaQ’ is a walking robot control technology designed to reliably navigate in various terrains. This technology is integrated into the quadrupedal robot Hound2, which holds the Guinness World Record for the fastest 100m sprint by a four-legged robot, developed in collaboration with Professor Hae-Won Park’s group from the Department of Mechanical Engineering.
The ‘CAROS(Climbing Aerial RObot System)-H’, a drone capable of climbing walls, is inspired by six-legged insects and represents a futuristic robot that can both fly and walk.
CNN’s production team visited the KAIST campus in Daejeon to film Professor Myung’s group showcasing their innovations. The ‘Tech for Good’ segment aired on CNN on November 17 and 18. Related videos can be viewed on YouTube.
[Part1: DreamWaQ] https://youtu.be/gUhpe_72y2k?t=305
[Part2: CAROS-H] https://youtu.be/3k1TqmMcTPQ?t=315
EE Professor Ian Oakley’s Lab’s Jiwan Kim and Hoheon Jeong
Win Best People’s Choice Award at the ACM UIST Student Innovation Contest
< (From left) Jiwan Kim (PhD candidate), Hoheon Jung (undergraduate) >
PhD candidate Jiwan Kim, and undergraduate Hoheon Jung from Professor Ian Oakley’s lab in the Department of Electrical Engineering, won the Best People’s Choice Award at the Student Innovation Contest held as part of the ‘ACM UIST (ACM Symposium on User Interface Software and Technology)’ in Pittsburgh, USA, from October 13 to 16. The Best People’s Choice Award is given to the project that garners the most enthusiasm and support from attendees during the conference.
The ‘ACM UIST’ is a leading international conference in the field of human-computer interaction. Each year, the Student Innovation Contest invites teams to present innovative ideas using cutting-edge hardware just before its release. This year’s theme involved creating and demonstrating interactive devices for the future using the Gen-M Kit from Seeed Studio. After a competitive preliminary round, eight teams from prestigious institutions, including Carnegie Mellon University, the University of Toronto, and the University of Hong Kong, reached the finals alongside our university’s team.
Jiwan Kim and Hoheon Jung cited the famous quote by novelist Arthur C. Clarke, known for works like 2001: A Space Odyssey: “Any sufficiently advanced technology is indistinguishable from magic.” Inspired by this idea, they developed a wearable device that provides an experience similar to superpowers.
The glove they developed uses surface acoustic waves, radar, and ultrasound to create features such as eavesdropping to hear sounds through walls, enhanced senses to detect nearby movements with closed eyes, and telekinesis to levitate small objects in the air.
Jiwan Kim remarked, “Some might view this as simply implementing technology for amusement, but I believe that fun is also an essential direction for scientific and technological advancement. We focused on interpreting various sensing technologies in the most entertaining way possible and demonstrating them accordingly.”
<Photo. (From left) Professor Jung-Yong Lee, Ph.D. candidate Min-Ho Lee, and Master’s candidate Min Seok Kim of the School of Electrical Engineering>
Existing perovskite solar cells, which have the problem of not being able to utilize approximately 52% of total solar energy, have been developed by a Korean research team as an innovative technology that maximizes near-infrared light capture performance while greatly improving power conversion efficiency. This greatly increases the possibility of commercializing next-generation solar cells and is expected to contribute to important technological advancements in the global solar cell market.
The research team of Professor Jung-Yong Lee of the KAIST EE and Professor Woojae Kim of the Department of Chemistry at Yonsei University developed a high-efficiency and high-stability organic-inorganic hybrid solar cell production technology that maximizes near-infrared light capture beyond the existing visible light range.
The research team suggested and advanced a hybrid next-generation device structure with organic photo-semiconductors that complements perovskite materials limited to visible light absorption and expands the absorption range to near-infrared.
In addition, they revealed the electronic structure problem that mainly occurs in the structure and announced a high-performance solar cell device that dramatically solved this problem by introducing a dipole layer*. *Dipole layer: A thin material layer that controls the energy level within the device to facilitate charge transport and forms an interface potential difference to improve device performance.
Existing lead-based perovskite solar cells have a problem in that their absorption spectrum is limited to the visible light region with a wavelength of 850 nanometers (nm) or less, which prevents them from utilizing approximately 52% of the total solar energy.
To solve this problem, the research team designed a hybrid device that combined an organic bulk heterojunction (BHJ) with perovskite and implemented a solar cell that can absorb up to the near-infrared region.
In particular, by introducing a sub-nanometer dipole interface layer, they succeeded in alleviating the energy barrier between the perovskite and the organic bulk heterojunction (BHJ), suppressing charge accumulation, maximizing the contribution to the near-infrared, and improving the current density (JSC) to 4.9 mA/cm².
The key achievement of this study is that the power conversion efficiency (PCE) of the hybrid device has been significantly increased from 20.4% to 24.0%. In particular, this study achieved a high internal quantum efficiency (IQE) compared to previous studies, reaching 78% in the near-infrared region.
< Figure. The illustration of the mechanism of improving the electronic structure and charge transfer capability through Perovskite/organic hybrid device structure and dipole interfacial layers (DILs). The proposed dipole interfacial layer forms a strong interfacial dipole, effectively reducing the energy barrier between the perovskite and organic bulk heterojunction (BHJ), and suppressing hole accumulation. This technology improves near-infrared photon harvesting and charge transfer, and as a result, the power conversion efficiency of the solar cell increases to 24.0%. In addition, it achieves excellent stability by maintaining performance for 1,200 hours even in an extremely humid environment. >
In addition, this device showed high stability, showing excellent results of maintaining more than 80% of the initial efficiency in the maximum output tracking for more than 800 hours even under extreme humidity conditions.
Professor Jung-Yong Lee said, “Through this study, we have effectively solved the charge accumulation and energy band mismatch problems faced by existing perovskite/organic hybrid solar cells, and we will be able to significantly improve the power conversion efficiency while maximizing the near-infrared light capture performance, which will be a new breakthrough that can solve the mechanical-chemical stability problems of existing perovskites and overcome the optical limitations.”
This study, in which KAIST School of Electrical Engineering Ph.D. candidate Min-Ho Lee and Master’s candidate Min Seok Kim participated as co-first authors, was published in the September 30th online edition of the international academic journal Advanced Materials. (Paper title: Suppressing Hole Accumulation Through Sub-Nanometer Dipole Interfaces in Hybrid Perovskite/Organic Solar Cells for Boosting Near-Infrared Photon Harvesting).
This study was conducted with the support of the National Research Foundation of Korea.
EE Prof. Yong-Hoon Kim’s team succeeded in accelerating calculations
for electronic structure in quantum mechanics
for the first time in the world using a convolutional neural network (CNN) model
< (from left): Prof. Yong-Hoon Kim, Ph.D. candidate Ryong Gyu Lee>
The close relationship between AI and highly complicated scientific computing can be seen in the fact that both the 2024 Nobel Prizes in Physics and Chemistry were awarded to scientists for devising the AI for their respective fields of study. KAIST researchers succeeded in dramatically reducing the computation time for highly sophisticated computer simulations for quantum mechanics by predicting atomic-level chemical bonding information distributed in 3D space using a novel approach to teach AI.
Professor Yong-Hoon Kim’s team from the School of Electrical Engineering developed a 3D computer vision artificial neural network-based computation methodology that bypasses the complex algorithms required for atomic-level quantum mechanical calculations traditionally performed using supercomputers to derive the properties of materials.
< Figure 1. Various methodologies are utilized in the simulation of materials and materials, such as quantum mechanical calculations at the nanometer (nm) level, classical mechanical force fields at the scale of tens to hundreds of nanometers, continuum dynamics calculations at the macroscopic scale, and calculations that mix simulations at different scales. These simulations are already playing a key role in a wide range of basic research and application development fields in combination with informatics techniques. Recently, there have been active efforts to introduce machine learning techniques to radically accelerate simulations, but research on introducing machine learning techniques to quantum mechanical electronic structure calculations, which form the basis of high-scale simulations, is still insufficient. >
The density functional theory (DFT) calculations in quantum mechanics using supercomputers have become an essential and standard tool in a wide range of research and development fields, including advanced materials and drug design, as they allow for fast and accurate prediction of quantum properties. *Density functional theory (DFT): A representative theory of ab initio (first principles) calculations that calculate quantum mechanical properties from the atomic level.
However, practical DFT calculations require generating 3D electron density and solving quantum mechanical equations through a complex, iterative self-consistent field (SCF)* process that must be repeated tens to hundreds of times. This restricts its application to systems with only a few hundred to a few thousand atoms. *Self-consistent field (SCF): A scientific computing method widely used to solve complex many-body problems that must be described by a number of interconnected simultaneous differential equations.
Professor Yong-Hoon Kim’s research team questioned whether recent advancements in AI techniques could be used to bypass the SCF process. As a result, they developed the DeepSCF model, which accelerates calculations by learning chemical bonding information distributed in a 3D space using neural network algorithms from the field of computer vision.
< Figure 2. The deepSCF methodology developed in this study provides a way to rapidly accelerate DFT calculations by avoiding the self-consistent field process (orange box) that had to be performed repeatedly in traditional quantum mechanical electronic structure calculations through artificial neural network techniques (green box). The self-consistent field process is a process of predicting the 3D electron density, constructing the corresponding potential, and then solving the quantum mechanical Cohn-Sham equations, repeating tens to hundreds of times. The core idea of the deepSCF methodology is that the residual electron density (δρ), which is the difference between the electron density (ρ) and the sum of the electron densities of the constituent atoms (ρ0), corresponds to chemical bonding information, so the self-consistent field process is replaced with a 3D convolutional neural network model. >
The research team focused on the fact that, according to density functional theory, electron density contains all quantum mechanical information of electrons, and that the residual electron density — the difference between the total electron density and the sum of the electron densities of the constituent atoms — contains chemical bonding information. They used this as the target for machine learning.
They then adopted a dataset of organic molecules with various chemical bonding characteristics, applying random rotations and deformations to the atomic structures of these molecules to further enhance the model’s accuracy and generalization capabilities. Ultimately, the research team demonstrated the validity and efficiency of the DeepSCF methodology on large, complex systems.
< Figure 3. An example of applying the deepSCF methodology to a carbon nanotube-based DNA sequence analysis device model (top left). In addition to classical mechanical interatomic forces (bottom right), the residual electron density (top right) and quantum mechanical electronic structure properties such as the electronic density of states (DOS) (bottom left) containing information on chemical bonding are rapidly predicted with an accuracy corresponding to the standard DFT calculation results that perform the SCF process. >
Professor Yong-Hoon Kim, who supervised the research, explained that his team had found a way to map quantum mechanical chemical bonding information in a 3D space onto artificial neural networks. He noted, “Since quantum mechanical electron structure calculations underpin property simulations at all scales, this research establishes a foundational principle for accelerating material calculations using artificial intelligence.”
Ryong-Gyu Lee, a PhD candidate in the School of Electrical Engineering, served as the first author of this research, which was published online on October 24 in Npj Computational Materials, a prestigious journal in the field of material computation. (Paper title: “Convolutional network learning of self-consistent electron density via grid-projected atomic fingerprints”)
This research was conducted with support from the KAIST Venture Research Program for Graduate and PhD Students and the National Research Foundation of Korea’s Mid-career Researcher Support Program.
EE Ph.D. candidate Edward Jongyoon Choi and Vincent Lukito from Professor Minkyu Je’s Lab
Wins Corporate Special Award (Telechips) at the 25th Korea Semiconductor Design Challenge
<(From left) Ph.D. candidate Edward Jongyoon Choi and Vincent Lukito>
Ph.D. candidate Edward Jongyoon Choi and Vincent Lukito from Professor Minkyu Je’s lab in EE was awarded the prestigious Corporate Special Award (Telechips) at the 25th Korea Semiconductor Design Challenge, held on October 24 at COEX, Seoul.
Organized by the Ministry of Trade, Industry and Energy and the Korea Semiconductor Industry Association, the Korea Semiconductor Design Challenge aims to cultivate the design capabilities of undergraduate and graduate students in the semiconductor field and to discover creative ideas that enhance the foundational competitiveness of the semiconductor industry.
<Edward Jongyoon Choi and Vincent Lukito at the awards ceremony>
The title of their award-winning research design is “Spike Sorting SoC with Delta-based Detection and Analog CIM-based Autoencoder Neural Network Feature Extraction Achieving 94.54% Accuracy,” in which both Ph.D. students participated.
The research was evaluated based on creativity, technical complexity, commercial viability, and completeness. Their project demonstrated outstanding merit in terms of innovative topics, high technical difficulty and excellence, potential for commercialization, and the completeness and validation of the work, receiving the Special Corporate Award (Telechips).
Professor Hyun Myung Awarded 2024 Hanbit Grand Prize
<EE Prof. Hyun Myung won the 2024 Hanbit Grand Prize ⓒDaejeon MBC>
Professor Hyun Myung in the School of Electrical Engineering won the 2024 Hanbit Grand Prize.
The Hanbit Grand Prize, co-hosted by Hanwha Group and Daejeon MBC, celebrates its 20th anniversary this year and discovers and awards individuals who have served and contributed to various fields in the local community.
The Hanbit Grand Prize selects one winner from each of five categories (science and technology, education/sports promotion, culture and arts, social service, and regional economic development) and awards each winner 10 million won and a plaque. This year, a special award (Oh Sang-wook, two-time Paris Olympics fencing champion, Daejeon) was added.
Professor Hyun Myung, the winner of the Science and Technology category, has contributed to the development of autonomous navigation and locomotion by researching these fields for 16 years, and was recognized for his contribution to winning the international autonomous quadruped robot competition by developing the new blind locomotion control technology called ‘DreamWaQ’.
The awards ceremony was held at the Daejeon MBC Open Hall on October 24 and was broadcast on Daejeon MBC TV on October 29.
<Prof. Hyun Myung was awarded the Hanbit Award, as reported by Daejeon MBC News ⓒDaejeon MBC>
EE Professor Yoo Chang-Dong’s Lab Wins 1st Place in the 2024 SNUBH AKI Datathon
<Photo (from left): Professor Changdong Yoo, Ph.D. candidate Ji Woo Hong, Ph.D. candidate Gwanhyeong Koo, MS candidate Young Hwan Lee, Ph.D. candidate Sunjae Yoon >
Doctoral students Jiwoo Hong, Kwanhyung Koo, and Seonjae Yoon, along with master’s student Younghwan Lee, from Professor Yoo Chang-Dong’s lab participated in the “2024 Bundang Seoul National University Hospital Acute Kidney Injury Datathon” under the team name “U-Vengers” and won the 1st Place Award.
This competition, hosted by Bundang Seoul National University Hospital, was an online datathon where participants used acute kidney injury (AKI) patient datasets to propose ideas and develop digital healthcare AI models.
The key goal was to create AI models that not only performed well but also demonstrated fairness across factors like gender and religion. The U-Vengers were recognized for the performance, fairness, creativity, and applicability of their developed model.
<Team ‘U-Vengers’ being awarded ‘2024 Bundang Seoul National University Hospital Acute Kidney Injury Datathon’>
Details are as follows:
Event: 2024 Bundang Seoul National University Hospital Acute Kidney Injury Datathon
Overview: Participants used an AKI patient dataset to develop AI models for AKI prediction, applicable in real clinical settings. In the preliminary round, models were developed using the MIMIC-IV dataset, and in the final round, real data from Bundang Seoul National University Hospital was used to build practical models.
Competition Period: September 12 – October 20
Award: 1st Place (Director of Biomedical Research Institute Award, Bundang Seoul National University Hospital)
Participants: Jiwoo Hong (Team Leader), Kwanhyung Koo, Younghwan Lee, Seonjae Yoon