Spiking neural networks (SNNs) have shown a potential for having low energy with unsupervised learning capabilities due to their biologically-inspired computation. However, they may suffer from accuracy degradation if their processing is performed under the presence of hardware-induced faults in memories, which can come from manufacturing defects or voltage-induced approximation errors. Since recent works still focus on the fault-modeling and random fault injection in SNNs, the impact of memory faults in SNN hardware architectures on accuracy and the respective fault-mitigation techniques are not thoroughly explored. Toward this, we propose ReSpawn, a novel framework for mitigating the negative impacts of faults in both the off-chip and on-chip memories for resilient and energy-efficient SNNs. The key mechanisms of ReSpawn are: (1) analyzing the fault tolerance of SNNs; and (2) improving the SNN fault tolerance through (a) fault-aware mapping (FAM) in memories, and (b) fault-aware training-and-mapping (FATM). If the training dataset is not fully available, FAM is employed through efficient bit-shuffling techniques that place the significant bits on the non-faulty memory cells and the insignificant bits on the faulty ones, while minimizing the memory access energy. Meanwhile, if the training dataset is fully available, FATM is employed by considering the faulty memory cells in the data mapping and training processes. The experimental results show that, compared to the baseline SNN without fault-mitigation techniques, ReSpawn with a fault-aware mapping scheme improves the accuracy by up to 70% for a network with 900 neurons without retraining.
翻译:Spik Neal 网络(SNNS) 显示,由于生物激励的计算,其能量低且不受监督的学习能力具有不受监督的神经再生能力的潜力。然而,如果在记忆中存在硬件引发的故障,处理工作可能发生准确性退化,这些故障可能来自制造缺陷或电压引发的近似差错。由于最近的工作仍然侧重于SNNS的错误建模和随机错射入,SNNM硬件结构的内存错误对准确性和相应的减少错误技术的影响没有得到彻底的探讨。为此,我们提议 ReSpawn,这是一个减轻断层和节能的SNNNNP内存错误的新型框架。ReS的主要机制是:(1)分析SNNN的错误容忍度;(2)通过(a) 错觉状态绘图(FAM) 来改善SNNND的耐错容忍度;以及(b) 识别错误的训练和绘图(FATTM) 。如果培训没有完全的错误,FANDS 数据在不完全可以使用的情况下, FArialimal dealal deal dal dal 数据进行精确的计算。