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通过物理信息神经网络实现短偶极子传感器响应线性化

Short-Dipole Sensor Response Linearization Through Physics-Informed Neural Networks.

作者信息

Fasse Alessandro, Meyer Romain, Neufeld Esra, Haas Maxim, Chavannes Nicolas, Kuster Niels

机构信息

Foundation for Research on Information Technologies in Society (IT'IS), Zurich, Switzerland.

Schmid & Partner Engineering AG (SPEAG), Zurich, Switzerland.

出版信息

Bioelectromagnetics. 2025 May;46(4):e70010. doi: 10.1002/bem.70010.

DOI:10.1002/bem.70010
PMID:40401324
Abstract

Short-dipole diode sensors loaded with highly resistive lines are commonly used to measure the time-averaged square of the high-frequency electromagnetic field amplitude directly. Their precision, simplicity, broadband, high dynamic range capability, and minimal scattering make them ideal for application in the near-field of sources, particularly for demonstrating compliance with exposure limits. However, the usage of these sensors to cover multiple orders of magnitude of field amplitude requires signal-specific linearization of the sensor response. Traditionally, linearization had been performed for each signal or modulation by measurement and, more recently, by simulations based on a calibrated sensor model. These approaches have become prohibitively expensive with the launch of the fifth generation of mobile communication (5G), which added thousands of diverse and complex modulation schemes. In response to these challenges, we first developed an innovative approach to accelerate sensor model simulations with an enhancement of accuracy, which allows us to subsequently establish a data set comprising a large number of probe parameters and signal characteristic configurations. Subsequently, a physics-informed neural network (PINN) was trained with readily accessible signal characteristics to obtain on-the-fly linearization parameters with acceptable uncertainties across the relevant dynamic range. In contrast to traditional artificial intelligence (AI) models that predominantly rely on pattern recognition from precomputed data, our approach ensures that the model captures the intrinsic relationships and system dynamics inherent to the physical phenomena under study. Our AI-based approach achieves an error below 0.4 dB at peak specific absorption rate (SAR) values of up to . In addition, AI accelerates the determination of linearization parameters by a factor  34,000 and reduces storage requirements  350,000 times, allowing linearization parameters to be computed on site.

摘要

加载有高电阻线的短偶极二极管传感器通常用于直接测量高频电磁场振幅的时间平均平方值。它们的精度高、结构简单、带宽宽、动态范围大且散射极小,使其非常适合在源的近场中应用,特别是用于证明符合暴露限值。然而,使用这些传感器来覆盖多个数量级的场振幅需要对传感器响应进行特定信号的线性化处理。传统上,线性化是通过测量针对每个信号或调制来进行的,最近则是通过基于校准传感器模型的模拟来实现。随着第五代移动通信(5G)的推出,增加了数千种多样且复杂的调制方案,这些方法的成本变得高得令人望而却步。为应对这些挑战,我们首先开发了一种创新方法,通过提高精度来加速传感器模型模拟,这使我们能够随后建立一个包含大量探头参数和信号特征配置的数据集。随后,使用易于获取的信号特征训练了一个物理信息神经网络(PINN),以在相关动态范围内获得具有可接受不确定性的实时线性化参数。与主要依赖预先计算数据的模式识别的传统人工智能(AI)模型不同,我们的方法确保模型捕捉到所研究物理现象固有的内在关系和系统动态。我们基于AI的方法在高达……的峰值比吸收率(SAR)值下实现了低于0.4 dB的误差。此外,AI将线性化参数的确定速度提高了34,000倍,并将存储需求减少了350,000倍,从而允许现场计算线性化参数。

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