Harnessing the magnetic field of the Earth for navigation has shown promise as a viable alternative to other navigation systems. A magnetic navigation system collects its own magnetic field data using a magnetometer and uses magnetic anomaly maps to determine the current location. The greatest challenge with magnetic navigation arises when the magnetic field measurements from the magnetometer encompass the magnetic field from not just the Earth, but also from the vehicle on which it is mounted. It is difficult to separate the Earth magnetic anomaly field, which is crucial for navigation, from the total magnetic field reading from the sensor. The purpose of this challenge problem is to decouple the Earth and aircraft magnetic signals in order to derive a clean signal from which to perform magnetic navigation. Baseline testing on the dataset has shown that the Earth magnetic field can be extracted from the total magnetic field using machine learning (ML). The challenge is to remove the aircraft magnetic field from the total magnetic field using a trained model. This challenge offers an opportunity to construct an effective model for removing the aircraft magnetic field from the dataset by using a scientific machine learning (SciML) approach comprised of an ML algorithm integrated with the physics of magnetic navigation.
翻译:磁导航系统使用磁强计收集自己的磁场数据,并使用磁异常图确定当前位置;磁强计的磁场测量不仅包括地球磁场,而且包括磁场的载体;很难将对导航至关重要的地球磁场与从传感器读取的全部磁场区分开来;这个挑战问题的目的是使地球和飞机磁信号脱钩,以便从中获取用于进行磁导航的清洁信号;对数据集进行基线测试表明,利用机器学习(ML),可以从磁场中提取地球磁场;使用经过训练的模型,将飞机磁场从总磁场中去除;这项挑战提供了一个机会,利用科学机器学习(SciML)方法,将飞机磁场从数据集中分离出来,从而建立一个有效的模型,将飞机磁场从数据集中去除,其中包括与磁力导航物理学相结合的ML算法。