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Predictive Models for the Characterization of Internal Defects in Additive Materials from Active Thermography Sequences Supported by Machine Learning Methods

机译:从机器学习方法支持的有源热成像序列表征添加材料中内缺损的预测模型

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摘要

The present article addresses a generation of predictive models that assesses the thickness and length of internal defects in additive manufacturing materials. These modes use data from the application of active transient thermography numerical simulation. In this manner, the raised procedure is an ad-hoc hybrid method that integrates finite element simulation and machine learning models using different predictive feature sets and characteristics (i.e., regression, Gaussian regression, support vector machines, multilayer perceptron, and random forest). The performance results for each model were statistically analyzed, evaluated, and compared in terms of predictive performance, processing time, and outlier sensibility to facilitate the choice of a predictive method to obtain the thickness and length of an internal defect from thermographic monitoring. The best model to predictdefect thickness with six thermal features was interaction linear regression. To make predictive models for defect length and thickness, the best model was Gaussian process regression. However, models such as support vector machines also had significative advantages in terms of processing time and adequate performance for certain feature sets. In this way, the results showed that the predictive capability of some types of algorithms could allow for the detection and measurement of internal defects in materials produced by additive manufacturing using active thermography as a non-destructive test.
机译:本文解决了一种预测模型,可评估添加剂制造材料中内部缺陷的厚度和长度。这些模式使用数据应用于有源瞬态热成像数值模拟。以这种方式,凸起的过程是一种ad-hoc混合方法,它使用不同的预测特征集和特征集成有限元模拟和机器学习模型(即回归,高斯回归,支持向量机,多层感知者和随机森林)。在预测性能,处理时间和异常值的比较方面,在统计上分析,评估和比较各种模型的性能结果,以便于选择预测方法以获得从热度监测的内部缺陷的厚度和长度来获得预测方法。预测具有六个热特征的厚度的最佳模型是交互线性回归。为了使缺陷长度和厚度的预测模型,最好的模型是高斯过程回归。然而,诸如支持向量机器的模型在处理时间和某些特征集的足够性能方面也具有重要的优势。以这种方式,结果表明,某些类型的算法的预测能力可以允许使用活性热成像作为非破坏性测试的添加剂制造产生的材料中的内部缺陷的检测和测量。

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