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Robust linear equation dwell time model compatible with large scale discrete surface error matrix

机译:与大规模离散表面误差矩阵兼容的鲁棒线性方程式停留时间模型

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The linear equation dwell time model can translate the 2D convolution process of material removal during subaperture polishing into a more intuitional expression, and may provide relatively fast and reliable results. However, the accurate solution of this ill-posed equation is not so easy, and its practicability for a large scale surface error matrix is still limited. This study first solves this ill-posed equation by Tikhonov regularization and the least square QR decomposition (LSQR) method, and automatically determines an optional interval and a typical value for the damped factor of regularization, which are dependent on the peak removal rate of tool influence functions. Then, a constrained LSQR method is presented to increase the robustness of the damped factor, which can provide more consistent dwell time maps than traditional LSQR. Finally, a matrix segmentation and stitching method is used to cope with large scale surface error matrices. Using these proposed methods, the linear equation model becomes more reliable and efficient in practical engineering. (C) 2015 Optical Society of America
机译:线性方程式停留时间模型可以将亚孔抛光过程中材料去除的2D卷积过程转换为更直观的表达式,并且可以提供相对快速和可靠的结果。但是,该不适定方程的精确解不是那么容易,并且其对于大规模表面误差矩阵的实用性仍然受到限制。这项研究首先通过Tikhonov正则化和最小二乘QR分解(LSQR)方法解决了这个不适定方程,并自动确定了正则化的阻尼因子的可选区间和典型值,具体取决于工具的峰值去除率。影响功能。然后,提出了一种约束LSQR方法来增加阻尼因子的鲁棒性,与传统的LSQR相比,该方法可以提供更一致的停留时间图。最后,使用矩阵分割和拼接方法来处理大规模的表面误差矩阵。使用这些提出的方法,线性方程模型在实际工程中变得更加可靠和有效。 (C)2015年美国眼镜学会

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