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A bias-scalable current-mode analog support vector machine based on margin propagation

机译:基于余量传播的偏置可缩放电流模式模拟支持向量机

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Bias-scalability in analog CMOS circuits refers to a current-mode design paradigm where the operation of the circuit remains invariant to the operating conditions (weak-inversion, moderate-inversion or strong-inversion) of the transistors. In this paper we present the design and implementation of a bias-scalable analog support vector machine (SVM) based on our previously reported margin propagation (MP) technique. All the computation in the proposed SVM occur in the logarithmic domain and requires only the use of addition, subtraction and threshold operation which can be implemented using KCL and diodes. The SVM parameters are stored on an array of temperature compensated floating-gate current memories and the training of the SVM is achieved using an offline procedure. Measured results from a SVM prototyped in a 0.5µm CMOS process validates the bias-scalability across different MOSFET operating regimes.
机译:模拟CMOS电路的偏置可扩展性是指一种电流模式设计范例,其中电路的操作与晶体管的工作条件(弱反转,中反转或强反转)保持不变。在本文中,我们基于先前报道的余量传播(MP)技术介绍了可偏置缩放的模拟支持向量机(SVM)的设计和实现。建议的SVM中的所有计算都在对数域中进行,仅需要使用加,减和阈值运算即可,这些运算可以使用KCL和二极管来实现。 SVM参数存储在温度补偿的浮栅电流存储器的阵列上,并且使用离线过程实现SVM的训练。采用0.5µm CMOS工艺原型制作的SVM的测量结果验证了不同MOSFET工作方案的偏置可扩展性。

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