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Configurable analog-digital conversion using the neural engineering framework

机译:使用神经工程框架进行可配置的模数转换

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摘要

Efficient Analog-Digital Converters (ADC) are one of the mainstays of mixed-signal integrated circuit design. Besides the conventional ADCs used in mainstream ICs, there have been various attempts in the past to utilize neuromorphic networks to accomplish an efficient crossing between analog and digital domains, i.e., to build neurally inspired ADCs. Generally, these have suffered from the same problems as conventional ADCs, that is they require high-precision, handcrafted analog circuits and are thus not technology portable. In this paper, we present an ADC based on the Neural Engineering Framework (NEF). It carries out a large fraction of the overall ADC process in the digital domain, i.e., it is easily portable across technologies. The analog-digital conversion takes full advantage of the high degree of parallelism inherent in neuromorphic networks, making for a very scalable ADC. In addition, it has a number of features not commonly found in conventional ADCs, such as a runtime reconfigurability of the ADC sampling rate, resolution and transfer characteristic.
机译:高效的模数转换器(ADC)是混合信号集成电路设计的支柱之一。除了主流IC中使用的常规ADC外,过去还进行了各种尝试来利用神经形态网络来实现模拟域和数字域之间的有效交叉,即构建受神经启发的ADC。通常,它们遭受了与常规ADC相同的问题,即它们需要高精度的手工模拟电路,因此不具有技术可移植性。在本文中,我们提出了一种基于神经工程框架(NEF)的ADC。它在数字域中执行了整个ADC过程的很大一部分,即,它很容易跨技术移植。模数转换充分利用了神经形态网络固有的高度并行性,从而实现了非常可扩展的ADC。此外,它具有许多常规ADC所不具备的功能,例如ADC采样率,分辨率和传输特性的运行时可重新配置性。

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