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Design of accurate stochastic number generators with noisy emerging devices for stochastic computing

机译:带有噪声的新兴随机计算设备的精确随机数生成器设计

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Stochastic computing (SC) is an unconventional computing paradigm that operates on stochastic bit streams. It has gained attention recently because of the very low area and power needs of its computing core. SC relies on stochastic number generators (SNGs) to map input binary numbers to stochastic bit streams. A conventional SNG comprises a random number source (RNS), typically an LFSR, and a comparator. It needs far more area and power than the SC core, offsetting the latter's main advantages. To mitigate this problem, SNGs employing emerging nanoscale devices such as memristors and spintronic devices have been proposed. However, these devices tend to have large errors in their output probabilities due to unpredictable variations in their fabrication processes and noise in their control signals. We present a novel method of exploiting such devices to design a highly accurate SNG. It is built around an RNS that generates uniformly distributed random numbers under ideal (nominal) conditions. It also has a novel error-cancelling probability conversion circuit (ECPCC) that guarantees very high accuracy in the output probability under realistic conditions when the RNS is subject to errors. An ECPCC can also be used to generate maximally correlated stochastic streams, a useful property for some applications.
机译:随机计算(SC)是在随机位流上运行的非常规计算范例。它最近获得了关注,因为它的计算核心的低区域和电力需求非常低。 SC依赖于随机数字生成器(SNGS)来将输入二进制数映射到随机位流。传统的SNG包括随机数源(RNS),通常是LFSR和比较器。它需要比SC核心更多的区域和功率,抵消后者的主要优点。为了减轻这个问题,已经提出了采用新出现的纳米级设备(如忆体和旋转式设备)的SNG。然而,由于其制造过程中的不可预测的过程和控制信号中的噪声,这些设备往往具有在其输出概率中具有大的误差。我们提出了一种利用这些设备来设计高精度SNG的新方法。它围绕一个RN构建,在理想(标称)条件下产生均匀分布的随机数。它还具有一种新型错误取消概率转换电路(ECPCC),当RNS受到错误时,在现实条件下,在现实条件下的输出概率中保证了非常高的精度。 ECPCC也可用于生成最大相关的随机流,用于某些应用的有用财产。

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