基于氧化铪构建的人工神经网络研究进展

Research progresses on artificial neural network based on hafnium oxide

  • 摘要: 氧化铪铁电隧道结(ferroelectric tunnel junction, FTJ)凭借独特的材料特性与器件性能,在存内计算中展现出较好的应用潜力。本文对铪基材料在人工神经网络中的应用与实现进行系统考察,为未来非冯·诺伊曼架构的硬件实现提供理论与实验依据。对HfO2基FTJ的材料特性、器件性能及其在存内计算中的潜在应用进行深入分析:探讨铪基材料的研究背景、国内外研究现状及发展趋势;分析FTJ的工作原理,涵盖开关比、耐久性以及多态存储等关键指标,并总结当前改善材料铁电性能的主要方法;重点讨论铪基FTJ在人工神经网络中的应用情况,并对其未来发展方向进行展望。

     

    Abstract: The hafnium oxide ferroelectric tunnel junction (FTJ) has shown great potential in in-memory computing due to its unique material properties and device performance. This paper systematically examines the application of hafnium-based FTJ in artificial neural networks, providing both theoretical and experimental foundations for the hardware realization of non-von Neumann architectures. Material properties, device performance of HfO2-based FTJs, and their potential applications in in-memory computing are thoroughly analyzed. The research background, global advancements, and emerging trends in hafnium-based materials are reviewed. The operational principles of FTJs are explored, with an emphasis on critical metrics such as switching ratio, endurance, and multi-state storage, alongside current strategies to enhance their ferroelectric characteristics. The integration of hafnium-based FTJs into neural networks is evaluated, and potential future development pathways are projected.

     

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