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Neural network based surface shape modeling of stressed lap optical polishing

机译:基于神经网络的搭接光学抛光表面形状建模

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摘要

It is crucially important to establish an accurate model to represent the relationship between the actuator forces and the lap surface changes when polishing a large and highly aspheric optical surface. To facilitate a computer-controlled optical polishing process, a neural network based stressed lap surface shape model was developed. The developed model reflects the dynamic deformation of a stressed lap. The original data from the microdisplacement sensor matrix were used to train the neural network model. The experimental results show that the proposed model can represent the surface shape of the stressed lap accurately and provide an analytical model to be used to polish the stressed lap control system and the active support system for a large mirror.
机译:建立一个精确的模型来表示抛光大的高度非球面光学表面时致动器力和膝部表面变化之间的关系至关重要。为了促进计算机控制的光学抛光过程,开发了基于神经网络的应力搭接表面形状模型。所开发的模型反映了受力棉卷的动态变形。来自微位移传感器矩阵的原始数据用于训练神经网络模型。实验结果表明,所提出的模型能够准确地反映出受力膝部的表面形状,并提供了用于抛光受力膝部控制系统和大镜子主动支撑系统的分析模型。

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