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Neuron unit arrays and Nature/Nurture adaptation for photonic multichip modules.

机译:神经元单元阵列和用于光子多芯片模块的Nature / Nurture自适应。

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摘要

To implement a previously proposed 3-D hybrid electronic/photonic multichip module (PMCM) (mimicking a primate retina structure) capable of low-latency, high-throughput, parallel-processing computations, several critical hardware components are designed, fabricated, and tested. All components are made of MOSIS 1.5 mum n-well BiCMOS (bipolar complimentary metal oxide silicon) fabrication process.; A 12-by-12 dual-input, dual-output silicon neuron unit array chip has been fabricated, and characterized. A desired sigmoid-shape optical output from a vertical surface emitting laser (VCSEL) driven by this chip (with a linear-optical-input) was obtained. A logarithmic amplifier circuitry has been fabricated, and characterized. The dynamic range of its sensed brightness is multiple decades wide. This bipolar-based circuit's high sensitivity at low input signal range can improve the overall optical responsivity of the PMCM if it is integrated. A floating gate design is verified to be a good candidate for the long-term analog weight storage. The floating gate controlled channel resistance can represent the lateral weighted interconnection in the PMCM. A preliminary active pixel sensor design is also characterized, and evaluated for weight storage. Physical constraints, trade-offs, and relationships among the components for optimizing the performance of the PMCM are discussed.; Software-wise, an artificial neural learning algorithm (Nature/Nurture algorithm) is developed for modeling the PMCM. This algorithm describes the weight updating rules for both the vertical fixed (nature-like) and the lateral adaptive (nurture-like) weighted interconnections in the PMCM. The learning algorithm for the lateral weight adaptations is new, and derived based on the multi-layer error back-propagation (BP) supervised learning algorithm using gradient descent method. Results from a simple optical character recognition (OCR) simulation show: (1) A PMCM with only one hidden neuron layer is sufficient to perform the OCR. (2) The Nature/Nurture trained neural network can recognize well the new modified patterns (generated from the original patterns) after the lateral weight adaptations. (3) A neural network similar to the pathways of the PMCM with local connectivity (only 9 vertical and 8 lateral interconnections from each neuron) can also perform pattern recognition with acceptable recognition rate.
机译:为了实现先前提出的能够进行低延迟,高通量,并行处理计算的3-D混合电子/光子多芯片模块(PMCM)(模仿灵长类视网膜结构),设计,制造和测试了几个关键的硬件组件。所有组件均采用MOSIS 1.5微米n阱BiCMOS(双极互补金属氧化物硅)制造工艺制成。已经制造并表征了12×12双输入双输出硅神经元单元阵列芯片。从由该芯片驱动的垂直表面发射激光器(VCSEL)获得了所需的S形光输出(具有线性光输入)。已经制造并表征了对数放大器电路。其感测到的亮度的动态范围是几十年宽。如果集成了这种基于双极性的电路,它在低输入信号范围内的高灵敏度可以改善PMCM的整体光学响应性。经验证,浮栅设计可长期存储模拟重量。浮栅控制的沟道电阻可以表示PMCM中的横向加权互连。还对初步的有源像素传感器设计进行了表征,并进行了重量存储评估。讨论了物理约束,折衷以及组件之间的关系,以优化PMCM的性能。在软件方面,开发了用于对PMCM建模的人工神经学习算法(Nature / Nurture算法)。该算法描述了PMCM中垂直固定(类似于自然)和横向自适应(类似于哺育)加权互连的权重更新规则。用于横向权重自适应的学习算法是新的,是基于使用梯度下降法的多层误差反向传播(BP)监督学习算法导出的。简单的光学字符识别(OCR)模拟结果表明:(1)仅具有一个隐藏神经元层的PMCM足以执行OCR。 (2)经过自然/训练的神经网络可以在横向权重调整后很好地识别出新的修改模式(从原始模式生成)。 (3)与具有局部连通性的PMCM路径相似的神经网络(每个神经元只有9个垂直互连和8个横向互连)也可以以可接受的识别率执行模式识别。

著录项

  • 作者

    Lue, Jaw-Chyng Lormen.;

  • 作者单位

    University of Southern California.$bElectrical Engineering: Doctor of Philosophy.;

  • 授予单位 University of Southern California.$bElectrical Engineering: Doctor of Philosophy.;
  • 学科 Engineering Electronics and Electrical.; Physics Optics.; Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2007
  • 页码 341 p.
  • 总页数 341
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;光学;人工智能理论;
  • 关键词

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