Control Architecture for Autonomous RF Cavity Filter and Multiplexer Tuning

Yarkin Yigit, O. Suvak
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引用次数: 1

Abstract

The method of tuning a cavity filter and multiplexer is a stringent process since material and manufacturing tolerances. The post-production process is not only time consuming but also expensive, especially for high-order narrowband complex filters which include coupling and cross-coupling parts. In addition to manual tuning of these filters limits precise tuning and production volumes and it increases manufacturing costs. In this scope, it is inevitable to replace this traditional manual tuning task with some more advanced and automatic methods. In order to overcome these problems, software controlled robotic tuning system is implemented. This paper introduces robotic control architecture for cavity filter and multiplexer tuning based on intelligence computer-aided tuning. The system is specially designed for miniaturized tuning screw filters. It works fully autonomously and its members are COBOT, single and multi-axis robotic arms, and a cartesian platform. Also, it includes a pattern recognition system and force-torque sensors to sense and measure all relevant data during the operation process. Rf tuning and control algorithms architectures are built on data driven model which fed and learned from data derived during the test with optimization approaches. The system works with soft locking principle to prevent damage to tuning screws. In the end, experimental automated tuned filter performance and improvement of tuning iteration times are given.
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自主射频空腔滤波器和多路调谐控制体系
由于材料和制造公差,腔滤波器和多路复用器的调谐方法是一个严格的过程。后期制作过程不仅耗时而且昂贵,特别是对于包含耦合和交叉耦合部件的高阶窄带复杂滤波器。此外,这些过滤器的手动调整限制了精确的调整和产量,并增加了制造成本。在这个范围内,不可避免地要用一些更先进的自动方法来取代这种传统的人工调优任务。为了克服这些问题,实现了软件控制的机器人调谐系统。介绍了基于智能计算机辅助调谐的空腔滤波和多路调谐机器人控制体系结构。该系统是专门为小型螺旋调谐滤波器设计的。它完全自主工作,其成员是COBOT,单轴和多轴机械臂,以及笛卡尔平台。此外,它还包括一个模式识别系统和力-扭矩传感器,以感知和测量操作过程中的所有相关数据。射频调谐和控制算法架构建立在数据驱动模型上,该模型采用优化方法从测试过程中获得的数据中进行反馈和学习。该系统采用软锁原理,防止调谐螺钉损坏。最后给出了实验自动调谐滤波器的性能和调谐迭代次数的改进。
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