Toward efficient spatial variation decomposition via sparse regression

Wangyang Zhang, K. Balakrishnan, Xin Li, D. Boning, Rob A. Rutenbar
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引用次数: 14

Abstract

In this paper, we propose a new technique to accurately decompose process variation into two different components: (1) spatially correlated variation, and (2) uncorrelated random variation. Such variation decomposition is important to identify systematic variation patterns at wafer and/or chip level for process modeling, control and diagnosis. We demonstrate that spatially correlated variation carries a unique sparse signature in frequency domain. Based upon this observation, an efficient sparse regression algorithm is applied to accurately separate spatially correlated variation from uncorrelated random variation. An important contribution of this paper is to develop a fast numerical algorithm that reduces the computational time of sparse regression by several orders of magnitude over the traditional implementation. Our experimental results based on silicon measurement data demonstrate that the proposed sparse regression technique can capture spatially correlated variation patterns with high accuracy. The estimation error is reduced by more than 3.5× compared to other traditional methods.
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基于稀疏回归的空间变异分解研究
本文提出了一种将过程变化精确分解为两个不同分量的新技术:(1)空间相关变化和(2)不相关随机变化。这种变异分解对于在晶圆和/或芯片水平上识别系统变异模式对于过程建模、控制和诊断非常重要。我们证明了空间相关变异在频域具有独特的稀疏特征。在此基础上,采用一种高效的稀疏回归算法,将空间相关变异与不相关随机变异精确分离。本文的一个重要贡献是开发了一种快速的数值算法,使稀疏回归的计算时间比传统的实现减少了几个数量级。基于硅测量数据的实验结果表明,稀疏回归技术可以高精度地捕获空间相关的变化模式。与其他传统方法相比,估计误差降低了3.5倍以上。
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