Blachnik Marcin, Przyłucki Roman, Golak Sławomir, Ściegienka Piotr, Wieczorek Tadeusz
Department of Industrial Informatics, Silesian University of Technology, 44-100 Gliwice, Poland.
SR Robotics Sp. z o.o., Lwowska 38, 40-389 Katowice, Poland.
Sensors (Basel). 2023 Jul 30;23(15):6806. doi: 10.3390/s23156806.
Scanning underwater areas using magnetometers in search of unexploded ordnance is a difficult challenge, where machine learning methods can find a significant application. However, this requires the creation of a dataset enabling the training of prediction models. Such a task is difficult and costly due to the limited availability of relevant data. To address this challenge in the article, we propose the use of numerical modeling to solve this task. The conducted experiments allow us to conclude that it is possible to obtain high compliance with the numerical model based on the finite element method with the results of physical tests. Additionally, the paper discusses the methodology of simplifying the computational model, allowing for an almost three times reduction in the calculation time without affecting model quality. The article also presents and discusses the methodology for generating a dataset for the discrimination of UXO/non-UXO objects. According to that methodology, a dataset is generated and described in detail including assumptions on objects considered as UXO and nonUXO.
使用磁力计扫描水下区域以寻找未爆炸弹药是一项艰巨的挑战,机器学习方法在其中可找到重要应用。然而,这需要创建一个能用于训练预测模型的数据集。由于相关数据的可用性有限,这样的任务既困难又昂贵。为应对本文中的这一挑战,我们提议使用数值建模来解决此任务。所进行的实验使我们能够得出结论,基于有限元法的数值模型与物理测试结果能够高度吻合。此外,本文讨论了简化计算模型的方法,该方法可使计算时间减少近三倍,且不影响模型质量。本文还介绍并讨论了生成用于区分未爆炸弹药/非未爆炸弹药物体的数据集的方法。根据该方法,生成并详细描述了一个数据集,包括对被视为未爆炸弹药和非未爆炸弹药的物体的假设。