Selective Checksum based On-line Error Correction for RRAM based Matrix Operations

2020 
Resistive RAM technology with it’s in memory computation and matrix vector multiplication capabilities has paved the way for efficient hardware implementations of neural networks. The ability to store the training weights and perform a direct matrix vector multiplication with the applied inputs thus producing the outputs directly reduces a lot of memory transfer overhead. But such schemes are prone to various soft errors and hard errors due to immature fabrication processes creating marginal cells, read disturbance errors, etc. Soft errors are of concern in this case since they can potentially cause mi-classification of objects leading to catastrophic consequences for safety critical applications. Since the location of soft errors are not known previously, they can potentially manifest in the field leading to data corruption. In this paper, a new on-line error correcting scheme is proposed based on partial and selective checksums which can correct errors in the field. The proposed scheme can correct any number of errors in a single column of a given RRAM matrix. Two different checksum computation schemes are proposed, a majority voting-based scheme and a Hamming code-based scheme. The memory overhead and decoding area, latency and dynamic power consumption for both the proposed schemes are presented. It is seen that the proposed solutions can achieve low decoding latency and comparatively smaller memory and area overhead in order to guarantee protection against errors in a single column. Lastly, a scheme to extend the proposed scheme to multiple column errors is also discussed.
    • Correction
    • Source
    • Cite
    • Save
    • Machine Reading By IdeaReader
    3
    References
    1
    Citations
    NaN
    KQI
    []