This paper proposes a novel calibration methodology utilizing adaptive polynomial regression to significantly improve the accuracy of vector signal generators (VSGs) across a wide frequency range. Existing VSG calibration techniques often rely on fixed polynomial orders or discrete calibration points, leading to residual inaccuracies, particularly at higher frequencies. Our approach dynamically adjusts the polynomial order based on observed error trends, and employs a dense, adaptive grid of calibration points guided by a Bayesian optimization framework. This achieves a 10x reduction in residual error compared to conventional methods and paves the way for more precise measurement systems and advanced communication technologies.

1. Introduction

Vector signal generators (VSGs)…

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