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Neurocomputing and Associative Memories Based on Ovenized Aluminum Nitride Resonators

机译:基于传承铝氮化铝谐振器的神经关联和关联回忆

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Neurocomputing has been regarded as an intriguing alternative to the von Neumann architecture for computing systems, especially for such applications as pattern recognition, image processing, and associative memory. However, implementations using CMOS technology have largely been considered impractical due to the required circuit complexity and corresponding power consumption. In this paper we propose a novel configuration for a recently-developed ovenized aluminum nitride (AIN) resonator that is used as a thermally-tunable analog impedance for implementation of artificial neurons and synapses. We demonstrate and elaborate on our building blocks for artificial neurons and synapses using such resonators. Localized impedance tuning via multiple heaters on a single device enables a compact DAC (digital-to-analog converter) for programming artificial synapses and a simple-yet-efficient means for implementing artificial neurons. We also show the functionality of our proposed circuits using two pattern recognition examples based on compact circuit simulation models for ovenized AIN resonators. The resonator device models are characterized from measurement data.
机译:Neurocompuling被认为是用于计算系统的von Neumann架构的有趣替代方案,特别是对于这种应用,作为模式识别,图像处理和关联存储器。然而,由于所需的电路复杂性和相应的功耗,使用CMOS技术的实施主要被认为是不切实际的。在本文中,我们提出了一种用于最近开发的氮化铝(AIN)谐振器的新颖结构,其用作用于实施人工神经元和突触的热可调模拟阻抗。我们在使用这种谐振器的人工神经元和突触上展示并详细说明并详细说明。通过单个设备上的多个加热器通过多个加热器调谐的局部阻抗调谐,用于编程人工突触和实现人造神经元的简单尚有效的手段的紧凑型DAC(数字到模拟转换器)。我们还使用基于紧凑型AIN谐振器的紧凑型电路仿真模型,使用两个模式识别示例来显示我们所提出的电路的功能。谐振器设备模型的特征在于测量数据。

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