Improvement of Electrical Tomographic Imaging of Moisture by Mixing Machine Learning Models

Grzegorz Kłsowski, T. Rymarczyk, K. Niderla
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Abstract

The article proposes the optimization of the selection of machine learning algorithms used in tomographic applications. This study used electrical impedance tomography (EIT) to illustrate the distribution of moisture inside the walls of the buildings under study. The first task is to discover the ideal settings of hyperparameters used in machine learning algorithms to increase the efficiency of obtaining reliable tomographic images. The second aim of the research is to choose the optimal method of converting measurements into images. The process of turning input observations into output photos is handled by machine learning models. This is called an ill-posed problem or an inverted problem that is difficult to solve because there are not enough arguments. Ensuring the selection of the correct model hyperparameters is an essential task of machine learning. The selection of these hyperparameters has a direct impact on the quality of the reconstruction. Using the k-nearest neighbors algorithm as an example, this article shows how hyperparameter optimization can be applied to regression and classification models. This technology was created to track and visualize the distribution of moisture inside the walls of buildings and other structures. The facts revealed during the investigation showed that the proposed techniques are effective.
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混合机器学习模型改进水分电层析成像
本文提出了层析成像应用中机器学习算法选择的优化问题。本研究使用电阻抗断层扫描(EIT)来说明所研究建筑物墙壁内的水分分布。第一个任务是发现机器学习算法中使用的超参数的理想设置,以提高获得可靠层析图像的效率。研究的第二个目的是选择将测量值转换为图像的最佳方法。将输入观察结果转化为输出照片的过程由机器学习模型处理。这就是所谓的不适定问题或反转问题,因为没有足够的论据而难以解决。确保选择正确的模型超参数是机器学习的基本任务。这些超参数的选择直接影响重构的质量。本文以k近邻算法为例,展示了如何将超参数优化应用于回归和分类模型。这项技术的发明是为了跟踪和可视化建筑物和其他结构的墙壁内的水分分布。调查中发现的事实表明,所提出的技术是有效的。
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