Adaptive Circuit Approaches to Low-Power Multi-Level/Cell FeFET Memory

2020 25th Asia and South Pacific Design Automation Conference (ASP-DAC)(2020)

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摘要
Ferroelectric FETs (FeFETs) have emerged as a promising multi-level/cell (MLC) nonvolatile memory (NVM) candidate for low-power applications. This originates from the advantages of both efficient memory access and intrinsic device-level in-memory computing flexibilities. However, there still exist challenges for FeFET MLC NVM: (i) high power consumption in read operations due to high-gain requirement for sense amplifiers during sensing, and (ii) high latency and energy consumption in write operations with conventional recursive program-and-verify. Targeting at lower power, less latency, and higher density, this work investigates and optimizes the read and write approaches to MLC FeFET NVM design: (i) Adaptive FeFET memory State Mapping (ASM) between the FeFET drain-source current and the digital states to increase the sensing margin; (ii) Adaptive FeFET Gate Biasing (AGB) read methods that adopt the optimized FeFET gate voltage to boost the sensible dynamic range and to store more levels of states per cell; (iii) Adaptive Prediction-based Direct (APD) write methods that minimize the program-andverify activities. Evaluations show significant latency and energy improvement. Furthermore, the number of sensible levels of states per cell is also increased with an enhanced dynamic sensing range and an enhanced sensing margin.
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关键词
Adaptive circuit approaches,low-power applications,efficient memory access,high power consumption,read operations,high-gain requirement,sense amplifiers,energy consumption,write operations,MLC FeFET NVM design,optimized FeFET gate voltage,enhanced dynamic sensing range,enhanced sensing margin,conventional recursive program-program-and-verify,adaptive FeFET memory state mapping,adaptive prediction-based direct write methods,intrinsic device-level in-memory computing flexibilities,adaptive FeFET gate biasing read methods,FeFET drain-source current,low-power multilevel-cell FeFET memory
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