基于手性突触晶体管物理储池的手写数字识别

Handwritten digit recognition based on chiral synaptic transistor physical reservoir

  • 摘要: 储池计算作为一种快速、低功耗的神经形态计算技术,在处理时序信号方面备受青睐,因其仅需训练简单的读出层,训练成本较低。传统储池计算在时空信号提取方面存在维度受限的问题,其输出特性通常局限于电压或光强等单一物理量。圆偏振光作为一种具有手性选择特性的光学激励,通过引入左旋(left-handed circularly polarized light,L-CPL)和右旋(right-handed circularly polarized light,R-CPL)可实现多维信息处理,为储池计算引入新的物理维度。目前,面向时序信号处理的储池计算系统通常依赖分立的感知、存储与计算单元,导致系统效率低、能耗高且结构笨重。为应对上述问题,本文开发了一种基于手性有机半导体的圆偏振光突触晶体管及其储池计算系统。该系统所采用的手性有机半导体(S,S,R,R)-DPP6T对不同偏振态的光表现出显著差异的电响应,为储池计算系统的光调控提供了新机制,填补了光输入–电响应型储池计算在偏振维度调控方面的空白。该系统在左旋与右旋圆偏振光下分别实现了手写数字识别,识别准确率分别达到95.52%和96.06%,使同一数据集在不同偏振态下获得差异化解读成为可能,为构建高效、低功耗、多维度的储池计算系统提供了新方案。

     

    Abstract: Reservoir computing, as a rapid and low-power neuromorphic computing technology, has garnered significant attention for processing temporal signals due to its low training cost, which stems from the need to train only a simple readout layer. However, traditional reservoir computing is limited in feature dimensionality for spatiotemporal signal extraction, and its output characteristics are restricted to parameters such as voltage or light intensity. Circularly polarized light (CPL), an optical excitation with chiral selectivity, enables multidimensional information processing through left-handed circularly polarized light (L-CPL) and right-handed circularly polarized light (R-CPL), thereby introducing a new physical dimension into reservoir computing. Current reservoir computing systems for temporal signal processing typically rely on separate sensing, memory, and computing units, resulting in inefficiency, high energy consumption, and bulky architectures. To address these challenges, we developed a CPL-based synaptic transistor using a chiral organic semiconductor and its corresponding reservoir computing system. The device employs the chiral organic semiconductor (S,S,R,R)-DPP6T, which exhibits strongly differentiated electrical responses to different polarization states of light, providing a novel mechanism for optical regulation in reservoir computing systems and filling the gap in polarization-dimension control for light-input electrical-response reservoir computing. This system achieved handwritten digit recognition under both L-CPL and R-CPL illumination, with high accuracies of 95.52% and 96.06%, respectively. This capability enables the interpretation of the same dataset under different polarization states, offering a new solution for efficient, low-power, and multidimensional reservoir computing.

     

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