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Digitizing uncertainty modeling for reverse engineering applications: regression versus neural networks

机译:用于逆向工程应用的数字化不确定性建模:回归与神经网络

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摘要

The coordinate measuring machine is one of the two types of digitizers most popularly used in reverse engineering. A number of factors affect the digitizing uncertainty, such as travel speeds of the probe, pitch values (sampling points), probe angles (part orientations), probe sizes, and feature sizes. A proper selection of these parameters in a digitization or automatic inspection process can improve the digitizing accuracy for a given coordinate-measuring machine. To do so, some empirical models or decision rules are required. This paper applies and compares the nonlinear regression analysis and neural network modeling methods in developing empirical models for estimating the digitizing uncertainty. The models developed in this research can aid error prediction, accuracy improvement, and operation parameter selection in computer-aided reverse engineering and automatic inspection.
机译:坐标测量机是逆向工程中最常用的两种数字化仪之一。许多因素会影响数字化不确定性,例如探针的行进速度,螺距值(采样点),探针角度(零件方向),探针尺寸和特征尺寸。在数字化或自动检查过程中正确选择这些参数可以提高给定坐标测量机的数字化精度。为此,需要一些经验模型或决策规则。本文在开发用于估计数字化不确定性的经验模型中应用和比较了非线性回归分析和神经网络建模方法。在这项研究中开发的模型可以在计算机辅助逆向工程和自动检查中帮助错误预测,准确性改善和操作参数选择。

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