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Improving Robustness of ReRAM-based Spiking Neural Network Accelerator with Stochastic Spike-timing-dependent-plasticity

机译:随机尖峰时序依赖可塑性提高基于ReRAM的尖峰神经网络加速器的鲁棒性

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Spike-timing-dependent-plasticity (STDP) is an unsupervised learning algorithm for spiking neural network (SNN), which promises to achieve deeper understanding of human brain and more powerful artificial intelligence. While conventional computing system fails to simulate SNN efficiently, process-inmemory (PIM) based on devices such as ReRAM can be used in designing fast and efficient STDP based SNN accelerators, as it operates in high resemblance with biological neural network. However, the real-life implementation of such design still suffers from impact of input noise and device variation. In this work, we present a novel stochastic STDP algorithm that uses spiking frequency information to dynamically adjust synaptic behavior. The algorithm is tested in pattern recognition task with noisy input and shows accuracy improvement over deterministic STDP. In addition, we show that the new algorithm can be used for designing a robust ReRAM based SNN accelerator that has strong resilience to device variation.
机译:尖峰时序依赖可塑性(STDP)是用于尖峰神经网络(SNN)的无监督学习算法,有望实现对人脑的更深入了解和更强大的人工智能。尽管常规计算系统无法有效地模拟SNN,但是基于ReRAM等设备的过程内存(PIM)可用于设计快速高效的基于STDP的SNN加速器,因为它与生物神经网络非常相似。但是,这种设计的实际实现仍然受到输入噪声和设备变化的影响。在这项工作中,我们提出了一种新颖的随机STDP算法,该算法使用峰值频率信息动态调整突触行为。该算法在带有噪声输入的模式识别任务中进行了测试,显示出比确定性STDP更高的准确性。此外,我们证明了该新算法可用于设计基于鲁棒的基于ReRAM的SNN加速器,该加速器具有对设备变化的强大恢复能力。

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