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Intelligent deflection yoke magnetic field tuning

机译:智能偏转线圈磁场调谐

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This paper presents a method and a system to identify the number of magnetic correction shunts and their positions for deflection yoke tuning to correct the misconvergence of colors of a cathode ray tube. The method proposed consists of two phases, namely, learning and optimization. In the learning phase, the radial basis function neural network is trained to learn a mapping: correction shunt position → changes in misconvergence. In the optimization phase, the trained neural network is used to predict changes in misconvergence depending on a correction shunt position. An optimization procedure based on the predictions returned by the neural net is then executed in order to find the minimal number of correction shunts needed and their positions. During the experimental investigations, 98% of the deflection yokes analyzed have been tuned successfully using the technique proposed.
机译:本文提出了一种方法和系统,用于识别磁校正分流器的数量及其位置,以进行偏转线圈调谐,以校正阴极射线管颜色的失会聚。所提出的方法包括两个阶段,即学习和优化。在学习阶段,对径向基函数神经网络进行训练以学习映射:校正分流器位置→不收敛的变化。在优化阶段,受过训练的神经网络将根据校正分流器的位置来预测失会聚的变化。然后执行基于神经网络返回的预测的优化过程,以便找到所需的校正分流器及其位置的最小数量。在实验研究过程中,已使用所提出的技术成功地调整了98%的偏转系统。

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