Robotic Radiation Pattern Measurement System for 6–110 GHz Based in Both Near Field and Far Field

Michael Meng, Aaron E. Wu, Zane Stokesberry, Tianyun Zhao, Seung Yoon Lee, N. Ghalichechian
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Abstract

A robotic measurement system to characterize antennas in the 6–110 GHz range via both near-field (NF) transformation techniques and far-field (FF) measurements is proposed. Typical measurement systems are not able to adjust distance between the antenna under test (AUT) and standard gain antenna, or can only measure either the NF or FF. To implement a feature-complete system, a robot arm with a repeatability of 0.01 mm is used alongside automated control and data transformation techniques. To demonstrate the capability of the system, we compare the manufacturer data of a 75–110 GHz standard gain horn antenna to both FF measurement data as well as transformed planar NF data. Although the system is still limited in the angle span of certain movements, this can be fixed by adjusting the position of the robot as well as the AUT. The existing data for both the transformed NF as well as measured FF correlate well with data from the manufacturer, indicating the accuracy of the proposed system.
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基于近场和远场的6-110 GHz机器人辐射方向图测量系统
提出了一种机器人测量系统,通过近场变换技术和远场测量来表征6-110 GHz范围内的天线。典型的测量系统不能调节被测天线(AUT)与标准增益天线之间的距离,或者只能测量NF或FF。为了实现功能完整的系统,使用了可重复性为0.01 mm的机械臂以及自动控制和数据转换技术。为了证明该系统的能力,我们将75-110 GHz标准增益喇叭天线的制造商数据与FF测量数据以及转换后的平面NF数据进行了比较。虽然系统在某些动作的角度跨度上仍然有限,但这可以通过调整机器人和AUT的位置来固定。转换后的NF和测量的FF的现有数据与制造商提供的数据具有良好的相关性,表明所提出系统的准确性。
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