School of Integrated Circuits Industry, Wang Zheng School of Microelectronics, Changzhou University, Changzhou, Jiangsu 213164, People's Republic of China.
National Laboratory of Solid-State Microstructures, School of Electronic Science and Engineering, Collaborative Innovation Center of Advanced Microstructures, Nanjing University, Nanjing, Jiangsu 210093, People's Republic of China.
J Phys Chem Lett. 2024 Aug 22;15(33):8501-8509. doi: 10.1021/acs.jpclett.4c01896. Epub 2024 Aug 12.
The classification of critical physiological signals using neuromorphic devices is essential for early disease detection. Physical reservoir computing (RC), a lightweight temporal processing neural network, offers a promising solution for low-power, resource-constrained hardware. Although solution-processed memcapacitive reservoirs have the potential to improve power efficiency as a result of their ultralow static power consumption, further advancements in synaptic tunability and reservoir states are imperative to enhance the capabilities of RC systems. This work presents solution-processed electrolyte/ferroelectric memcapacitive synapses. Leveraging the synergistic coupling of electrical double-layer (EDL) effects and ferroelectric polarization, these synapses exhibit tunable long- and short-term plasticity, ultralow power consumption (∼27 fJ per spike), and rich reservoir state dynamics, making them well-suited for energy-efficient RC systems. The classifications of critical electrocardiogram (ECG) signals, including arrhythmia and obstructive sleep apnea (OSA), are performed using the synapse-based RC system, demonstrating excellent accuracies of 97.8 and 80.0% for arrhythmia and OSA classifications, respectively. These findings pave the way for developing lightweight, energy-efficient machine-learning platforms for biosignal classification in wearable devices.
使用神经形态设备对关键生理信号进行分类对于早期疾病检测至关重要。物理 Reservoir Computing (RC) 是一种轻量级的时间处理神经网络,为低功耗、资源受限的硬件提供了有前途的解决方案。尽管基于溶液处理的 memcapacitive 储层由于其超低的静态功耗而有可能提高功率效率,但为了提高 RC 系统的性能,必须进一步改进突触的可调谐性和储层状态。本工作提出了溶液处理的电解质/铁电 memcapacitive 突触。利用电双层 (EDL) 效应和铁电极化的协同耦合,这些突触表现出可调谐的长短期可塑性、超低功耗(每个尖峰约 27 fJ)和丰富的储层状态动力学,非常适合用于节能 RC 系统。基于突触的 RC 系统对关键心电图 (ECG) 信号进行分类,包括心律失常和阻塞性睡眠呼吸暂停 (OSA),分类的准确率分别达到 97.8%和 80.0%。这些发现为开发用于可穿戴设备中生物信号分类的轻量级、节能机器学习平台铺平了道路。