High Throughput and Compact FPGA TRNGs Based on Hybrid Entropy, Reinforcement Strategies, and Automated Exploration
IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems(2025)
Hunan University
Abstract
As a vital security primitive, the true random number generator (TRNG) is a mandatory component to build trust roots for any encryption system. However, existing TRNGs suffer from bottlenecks of low throughput and high area-energy consumption. Additionally, the EDA design of TRNG for specific applications remains an unexplored area. To address these issues, in this work, we propose compact and high-throughput TRNGs based on dynamic hybrid, reinforcement strategies, and automated exploration. First, we present a dynamic hybrid entropy unit and reinforcement strategies to provide sufficient randomness. On this basis, we propose a high-efficiency dynamic hybrid TRNG (DH-TRNG) architecture. It exhibits portability to distinct process FPGAs and passes both NIST and AIS-31 tests without any post-processing. The experiments show it incurs only 8 slices with the highest throughput of 670Mbps and 620Mbps on Xilinx Virtex-6 and Artix-7, respectively. Compared to the state-of-the-art TRNGs, DH-TRNG has the highest Throughput/Slices∙ Power with 2.63× increase. In addition, we propose an automated exploration scheme as a preliminary EDA design for TRNG to better apply to resource-constrained scenarios. This scheme automatically explores TRNGs to meet the design requirements and further reduces the hardware overhead, indicating broad application prospects in TRNG automation design. Finally, we apply the proposed DH-TRNG and the results of automated exploration to stochastic computing for edge detection, achieving promising outcomes.
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Key words
Hardware Security,True Random Number Generator,Ultra-High Throughput,Area-Energy Efficiency
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