Optimized Multiple-Bit-Flip Soft-Errors-Tolerant TCAM using Machine Learning

Infall Syafalni, T. Adiono
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Abstract

Soft errors from radiations can change the data in electronic devices especially memory cells such as in TCAMs. The soft errors cause bit-flip errors that makes the data are corrupted in the network. This paper presents a novel machine learning for a multiple-bit-flip-tolerant TCAM that address soft errors problem using partial don't-care keys (X-keys). The general methodology is classified into two steps, i.e., statistical training and X-keys matching. First, we train the machine by collecting match probability of a filter by using X-keys that match the same locations as the search key. This method uses statistical training to determine the most efficient of number of don't cares. Moreover, in the statistical training, we also explore the maximum number of don't cares that produce best performance in covering the soft errors. Finally, the X-keys are implemented in the TCAM to correct bit-flip errors. The suitable number of don't cares in X-key is determined from the distribution of match probability of the X-keys so that the best degree of tolerance of the TCAM against soft errors is found. Match probabilities for various filters are shown. Experimental results demonstrate that the soft-error tolerance using statistical data has better soft-error tolerance than other methods. The proposed method is useful for soft-error tolerant TCAMs in routers and firewalls for robust networks.
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利用机器学习优化的多比特翻转软容错TCAM
来自辐射的软错误可以改变电子设备中的数据,特别是存储器单元,如tcam。软错误导致比特翻转错误,导致网络中的数据损坏。本文提出了一种新的机器学习方法,用于多比特容错TCAM,该方法使用部分不关心密钥(x键)来解决软错误问题。一般的方法分为两个步骤,即统计训练和x键匹配。首先,我们通过使用与搜索键匹配相同位置的x键来收集过滤器的匹配概率来训练机器。该方法使用统计训练来确定最有效的“不关心”数量。此外,在统计训练中,我们还探索了在覆盖软误差时产生最佳性能的最大不在乎数量。最后,在TCAM中实现x键来纠正位翻转错误。根据x键匹配概率的分布确定x键中合适的不关心数,从而找到TCAM对软误差的最佳容忍度。显示了各种过滤器的匹配概率。实验结果表明,基于统计数据的软容错方法比其他方法具有更好的软容错能力。该方法可用于鲁棒网络中路由器和防火墙中的软容错tcam。
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