Compact and High-Performance TCAM Based on Scaled Double-Gate FeFETs

CoRR(2023)

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摘要
Ternary content addressable memory (TCAM), widely used in network routers and high-associativity caches, is gaining popularity in machine learning and data-analytic applications. Ferroelectric FETs (FeFETs) are a promising candidate for implementing TCAM owing to their high ON/OFF ratio, non-volatility, and CMOS compatibility. However, conventional single-gate FeFETs (SG-FeFETs) suffer from relatively high write voltage, low endurance, potential read disturbance, and face scaling challenges. Recently, a double-gate FeFET (DG-FeFET) has been proposed and outperforms SG-FeFETs in many aspects. This paper investigates TCAM design challenges specific to DG-FeFETs and introduces a novel 1.5T1Fe TCAM design based on DG-FeFETs. A 2-step search with early termination is employed to reduce the cell area and improve energy efficiency. A shared driver design is proposed to reduce the peripherals area. Detailed analysis and SPICE simulation show that the 1.5T1Fe DG-TCAM leads to superior search speed and energy efficiency. The 1.5T1Fe TCAM design can also be built with SG-FeFETs, which achieve search latency and energy improvement compared with 2FeFET TCAM.
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1.5T1Fe DGTCAM,1.5T1Fe TCAM design,2FeFET TCAM,data-analytic applications,DG-FeFET,double-gate FeFET,high-associativity caches,high-performance TCAM,relatively high write voltage,scaled double-gate FeFETs,scaling challenges,SG-FeFETs,single-gate FeFETs,TCAM design challenges,ternary content addressable memory
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