首页> 外文会议>Intelligent Systems, 2002. Proceedings. 2002 First International IEEE Symposium >Artificial neural networks for tuning magnetic field of colour cathode ray tube deflection Yoke
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Artificial neural networks for tuning magnetic field of colour cathode ray tube deflection Yoke

机译:人工神经网络对彩色阴极射线管偏转线圈的磁场进行调谐

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This paper presents artificial neural networks (ANN) using for tuning magnetic fields of deflection yokes (DY). The method designed to identify the number of ferroelastic correction shunts and their position and also metal shunts position for deflection yoke tuning to correct residual misconvergence of colours of cathode ray tube. The method consists of two phases: learning and operating. The learning phase is executed only once when the system is adapted to correct the misconvergence for deflection yokes of given type. In the operating phase, the trained neural networks are used to predict changes in misconvergence depending on correction shunt position. The deflection yoke is tuned correctly if 18 primary and 4 secondary parameters fall inside given intervals. During the experimental investigation, 98% of deflection yokes analyzed have been tuned correctly. The software developed is easy adapted for deflection yokes of different types by training neural networks used.
机译:本文提出了用于调整偏转线圈(DY)磁场的人工神经网络(ANN)。该方法旨在识别铁弹性校正分流器的数量及其位置,以及用于偏转系统调谐的金属分流器位置,以校正阴极射线管颜色的残留失会聚。该方法包括两个阶段:学习和操作。当系统适于校正给定类型的偏转系统的失会聚时,学习阶段仅执行一次。在操作阶段,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。如果18个主要参数和4个次要参数落在给定的间隔内,则可以正确调整偏转系统。在实验研究期间,已正确分析了98%的偏转系统。通过训练使用的神经网络,开发的软件很容易适应于不同类型的偏转线圈。

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