预测基于 QCA 的层叠 T 栅极在单元缺陷和极化条件下的能量耗散:机器学习模型研究

Manali Dhar, Chiradeep Mukherjee, Ananya Banerjee, Debasmita Manna, Saradindu Panda, Bansibadan Maji
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引用次数: 0

摘要

半导体行业已经遇到了当前半导体材料的物理限制和摩尔预测即将终结的问题。最近出版的《国际器件与系统路线图》显示,半导体行业正在将 "更多摩尔"、"超越摩尔 "和 "超越 CMOS "结合起来,探索量子蜂窝自动机(QCA)等新兴纳米技术的可能性。量子蜂窝自动机具有工作速度快、能耗极低、堆积密度高等特点,因此非常具有吸引力。在这项工作中,我们开发了基于机器学习的模型,提前预测具有单细胞位移缺陷(SCDD)和细胞极化的 LT 通用逻辑门的能量耗散。首先,利用 QCADesigner-E 的相干向量(瓦特/能量)仿真引擎,估算了通过分层 T(LT)和多数票(MV)以及逻辑缩减方法实现的通用逻辑门的单元能量分量。然后,在水平和垂直方向的输出 LT 通用栅极上引入 SCDD,并检查输出单元极化和能量耗散的相应偏差。创建了一个数据集,即 scdd_polarisation_energy (SPE)。研究发现,基于 K-近邻、随机森林和多项式回归的机器学习(ML)模型能够预测 LT 通用逻辑门的能量耗散。在 ML 模型中,输出单元的 SCDD 和输出极化被用作估算器,而能量耗散(以电子伏特计)被用作响应。这些模型不复杂,简化了 QCA 布局中的能量估算过程。这些模型根据 r2 分数、平均绝对误差 (MAE)、平均平方误差 (MSE) 和均方根误差 (RMSE) 进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Predicting Energy Dissipation in QCA-Based Layered-T Gates Under Cell Defects and Polarisation: A Study with Machine-Learning Models

Predicting Energy Dissipation in QCA-Based Layered-T Gates Under Cell Defects and Polarisation: A Study with Machine-Learning Models

The semiconductor industry has encountered the physical constraints of current semiconductor materials and the impending end of Moore's forecast. The recent edition of the International Roadmap for Devices and Systems reveals that the semiconductor industry is now combining More Moore, More than Moore and Beyond CMOS to explore the possibilities towards emerging nanotechnologies like Quantum Cellular Automata (QCA). The fast-working speed, extremely low energy and high packing density make QCA incredibly appealing. In this work, machine learning-based models are developed to predict the energy dissipation of LT universal logic gates in advance with single-cell displacement defect (SCDD) and cell polarisation. Firstly, the cell-wise energy components of the universal logic gates realised by Layered T (LT) and Majority voter (MV) and logic reduction methodologies are estimated utilising the coherence vector (watt/energy) simulation engine of QCADesigner-E. Then, SCDD is introduced at the output LT universal gates in the horizontal and vertical directions, and consequent deviation in output cell polarisation and energy dissipation are examined. A dataset, namely scdd_polarisation_energy (SPE), is created. In particular, K-Nearest Neighbour, Random Forest and Polynomial Regression-based machine learning (ML) models are found to be competent to anticipate the energy dissipation of LT universal logic gates. In ML models, the SCDD at the output cell and output polarisation are used as estimators, and energy dissipation (in electron Volt) is utilised as a response. These models offer less-complex and ease the energy estimation process in the QCA layout. The models are assessed based on r2-score, mean absolute error (MAE), mean squared error (MSE), and root mean squared error (RMSE).

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