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Gate/source-overlapped heterojunction Tunnel FET-based LAMSTAR neural network and its Application to EEG Signal Classification

机译:基于栅/源重叠的异质结隧道FET的LAMSTAR神经网络及其在脑电信号分类中的应用

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This paper explores reduced complexity physical implementation of self-organizing-map (SOM) and LAMSTAR (Large Scale Memory Storage and Retrieval) neural network. Unique Gaussian IDS-VGS characteristic of emerging gate/source-overlapped heterojunction Tunnel FET (SO-HTFET) is utilized to simplify the complexity of a SOM. For a given pattern, SO-HTFET-based SOM performs associative processing between the applied pattern feature and the stored neuron states. SO-HTFET reduces the SOM computing cell to just a single transistor. This is remarkable considering that a conventional digital SOM cell will require more than 100 transistors. IDS-VGS variance of SO-HTFET is modulated by varying its drain-to-source voltage (VDS). This enables dynamic adaptation of distance measures in SO-HTFET-based SOM. Various SOM-modules are combined in a LAMSTAR network with link weights to facilitate deep learning and integration of various features of the applied pattern in a decision making process. Electroencephalogram (EEG) classification is studied using SO-HTFET-based LAMSTAR. SO-HTFET enables a higher number of hidden neurons in LAMSTAR by reducing the complexity of SOM and thereby, improves classification accuracy than a conventional design. EEG classification accuracy is specifically evaluated for fixed neuron and dynamic neuron approaches. The optimal variance of SO-HTFET IDS-VGS is extracted for these approaches.
机译:本文探讨了自组织映射(SOM)和LAMSTAR(大型内存存储和检索)神经网络的降低复杂性的物理实现。利用新兴的栅极/源极重叠异质结隧道FET(SO-HTFET)的独特高斯IDS-VGS特性来简化SOM的复杂性。对于给定的模式,基于SO-HTFET的SOM在所应用的模式特征与存储的神经元状态之间执行关联处理。 SO-HTFET将SOM计算单元减少到只有一个晶体管。考虑到传统的数字SOM单元将需要100个以上的晶体管,因此这是非常显着的。 SO-HTFET的IDS-VGS差异通过改变其漏极-源极电压(VDS)进行调制。这使得可以在基于SO-HTFET的SOM中动态调整距离度量。 LAMSTAR网络中将各种SOM模块与链接权重组合在一起,以在决策过程中促进深度学习和所应用模式的各种功能的集成。使用基于SO-HTFET的LAMSTAR研究脑电图(EEG)分类。与传统设计相比,SO-HTFET通过降低SOM的复杂性,可以在LAMSTAR中实现更多数量的隐藏神经元,从而提高了分类精度。脑电图分类准确度专门针对固定神经元和动态神经元方法进行评估。针对这些方法,提取了SO-HTFET IDS-VGS的最佳方差。

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