基于多物理场高斯过程建模的霍尔效应传感器设计优化

Yanwen Xu, Zhuoyuan Zheng, Kanika Arora, D. Senesky, Pingfeng Wang
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引用次数: 1

摘要

磁场传感器器件已被广泛用于跟踪磁通浓度的变化,霍尔传感器在许多工程应用中具有广阔的应用前景。为了保证霍尔效应传感器在使用时的质量和性能,需要对其进行优化设计。虽然已经有实验建立的经验模型来指导霍尔效应传感器的设计,但霍尔效应传感器设计参数与相应性能之间的内在关系尚未得到深入研究。本文提出了一种基于物理的机器学习技术来优化霍尔磁传感器的几何设计,以获得低偏移和高灵敏度的特性。首先建立了基于多物理场的有限元模型来模拟和预测不同几何形状的霍尔效应传感器的霍尔电压、偏置电压和传感器灵敏度。此外,为了提高霍尔传感器的设计效率,利用多物理场仿真结果构建基于高斯过程(GP)的代理模型,采用自适应采样策略对霍尔传感器的性能进行有效研究。利用该模型对霍尔传感器的三种几何形状进行了研究和优化,所得结果与经验实验结果一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hall Effect Sensor Design Optimization With Multi-Physics Informed Gaussian Process Modeling
Magnetic field sensor devices have been widely used to track changes in magnetic flux concentration, and the Hall sensors are promising in many engineering applications. Design optimization of the Hall effect sensor is required to ensure the quality and capability of the device when in service. Even though there has been empirical models established from experiments to guide the design of the Hall effect sensor, the underlying relationship in Hall effect sensor design parameters and corresponding performances has not been looked into thoroughly. This paper presents a physics-informed machine learning technique to optimize the geometry design of Hall magnetic sensors for a low offset and high sensitivity characteristic. Multi-physics based finite element models were first developed to simulate and predict the Hall voltage, offset voltage and sensor sensitivity of different Hall effect sensors with various geometries. In addition, to improve the design efficiency, Gaussian Process (GP) based surrogate models were constructed from multiphysics-based simulation results to effectively investigate the Hall sensor performances with an adaptive sampling strategy. Three types of geometries of Hall sensor were studied and optimized with the proposed physics-informed GP model, the obtained results were consistent with the empirical experimental result.
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