Lee Younghyun, Rhee Hakseung, Kim Geunyoung, Cheong Woon Hyung, Kim Do Hoon, Song Hanchan, Kay Sooyeon Narie, Lee Jongwon, Kim Kyung Min
Department of Materials Science and Engineering, Korea Advanced Institute of Science and Technology (KAIST), 291 Daehak-ro, Yuseong-gu, Daejeon, 34141, Republic of Korea.
Department of Semiconductor Convergence, Chungnam National University (CNU), 99 Daehak-ro, Yuseong-gu, Daejeon, 34141, Republic of Korea.
Nat Commun. 2025 May 9;16(1):4312. doi: 10.1038/s41467-025-59589-2.
Edge computing devices, which generate, collect, process, and analyze data near the source, enhance the data processing efficiency and improve the responsiveness in real-time applications or unstable network environments. To be utilized in wearable and skin-attached electronics, these edge devices must be compact, energy efficient for use in low-power environments, and fabricable on soft substrates. Here, we propose a flexible memristive dot product engine (f-MDPE) designed for edge use and demonstrate its feasibility in a real-time electrocardiogram (ECG) monitoring system. The f-MDPE comprises a 32 × 32 crossbar array embodying a low-temperature processed self-rectifying charge trap memristor on a flexible polyimide substrate and exhibits high uniformity and robust electrical and mechanical stability even under 5-mm bending conditions. Then, we design a neural network training algorithm through hardware-aware approaches and conduct real-time edge ECG diagnosis. This approach achieved an ECG classification accuracy of 93.5%, while consuming only 0.3% of the energy compared to digital approaches, highlighting the strong potential of this approach for emerging edge neuromorphic hardware.
边缘计算设备在数据源附近生成、收集、处理和分析数据,可提高数据处理效率,并在实时应用或不稳定的网络环境中提升响应速度。为了应用于可穿戴和贴肤电子设备,这些边缘设备必须结构紧凑、在低功耗环境下使用时节能,并且能够在柔性基板上制造。在此,我们提出一种专为边缘应用设计的柔性忆阻点积引擎(f-MDPE),并在实时心电图(ECG)监测系统中展示其可行性。f-MDPE包括一个32×32交叉阵列,该阵列在柔性聚酰亚胺基板上集成了经过低温处理的自整流电荷陷阱忆阻器,即使在5毫米弯曲条件下也表现出高度均匀性以及强大的电气和机械稳定性。然后,我们通过硬件感知方法设计了一种神经网络训练算法,并进行实时边缘心电图诊断。该方法实现了93.5%的心电图分类准确率,与数字方法相比,能耗仅为其0.3%,凸显了该方法在新兴边缘神经形态硬件方面的强大潜力。