Characterizing Intra-Die Spatial Correlation Using Spectral Density Method

Qiang Fu, W. Luk, Jun Tao, Changhao Yan, Xuan Zeng
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引用次数: 8

Abstract

A spectral domain method for intra-die spatial correlation function extraction is presented. Based on theoretical analysis of random field, the spectral density, as the spectral domain counterpart of correlation function, is employed to estimate the parameters of the correlation function effectively in the spectral domain. Compared with the existing extraction algorithm in the original spatial domain, the proposed method can obtain the same quality of results in the spectral domain. In actual measurement process, the unavoidable measurement error with arbitrary frequency components would greatly confound the extraction results. A filtering technique is further proposed to diminish the high frequency components of the measurement error and recover the data from noise contamination for parameter estimation. Experimental results have shown that the proposed method is practical and stable.
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用谱密度方法表征模内空间相关性
提出了一种模内空间相关函数的谱域提取方法。在对随机场进行理论分析的基础上,利用谱密度作为相关函数的谱域对应物,在谱域中有效地估计相关函数的参数。与现有的原始空间域提取算法相比,该方法可以在谱域获得相同质量的结果。在实际测量过程中,不可避免的存在任意频率分量的测量误差,会极大地干扰提取结果。进一步提出了一种滤波技术,以减少测量误差的高频成分,并从噪声污染中恢复数据用于参数估计。实验结果表明,该方法实用、稳定。
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