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Layer-by-layer Adaptively Optimized ECC of NAND flash-based SSD Storing Convolutional Neural Network Weight for Scene Recognition

机译:基于卷积神经网络权重的基于NAND闪存的SSD逐层自适应优化ECC,用于场景识别

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Layer-by-layer Adaptively Optimized Error Correcting Code (ECC) is proposed to improve the reliability of triple-level cell (TLC) NAND flash-based SSD for the scene recognition using convolutional neural network (CNN) of IoT edge devices. Layer-by-layer Adaptively Optimized ECC is composed of Layer-by-layer Iteration-Optimized Low Density Parity-Check (LBL-LDPC) and Layer-by-layer Code-length Adjusted Asymmetric Coding (LBL-AC). The conventional techniques like LDPC ECC and Asymmetric Coding (AC) improve the reliability. However, they require large overheads of the ECC decoding time and the flag/parity cell. Proposed LBL-LDPC and LBL-AC decrease the ECC decoding time by 14% and the data overhead by 26%, respectively, without recognition accuracy degradation. In addition, the data-retention time extends by 230%.
机译:为了提高基于三层单元(TLC)NAND闪存的IoT边缘设备的卷积神经网络(CNN)场景识别的可靠性,提出了逐层自适应优化纠错码(ECC)。逐层自适应优化ECC由逐层迭代优化的低密度奇偶校验(LBL-LDPC)和逐层码长调整的不对称编码(LBL-AC)组成。像LDPC ECC和非对称编码(AC)这样的常规技术提高了可靠性。然而,它们需要ECC解码时间和标志/奇偶校验信元的大开销。建议的LBL-LDPC和LBL-AC分别将ECC解码时间减少了14%,数据开销减少了26%,而不会降低识别精度。此外,数据保留时间延长了230%。

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