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Confidence Interval Assessment for Charpy Impact Energy Predictions - A Gaussian Mixture Model (GMM)-Based Approach

机译:夏比冲击能量预测的置信区间评估 - 基于高斯混合模型(GMM)的方法

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One of the obstacles of applying data-driven models in industry is the lack of confidence in the accuracy of the model predictions. One way of overcoming this is by adding a confidence interval on the predictions. In this paper, we propose a new approach for the confidence interval assessment for model predictions based on a Gaussian Mixture Model (GMM) framework. The advantages of the presented approach include its capability to handle complicated non-white noise sequences, the ability to provide an accurate confidence interval, and its independence to the type of the data model to be assessed. The proposed approach is applied to an industrial case study: the Charpy impact energy prediction, which includes real industrial data containing a significant noise component and with an inherited sparse data distribution. The resulting confidence intervals reflect the prediction uncertainty against the test data. Furthermore, the GMM-based approach can also be used for model bias correction. The GMM-based confidence interval assessment for data driven models represents a valuable contribution especially in the case of critical applications.
机译:在工业中应用数据驱动模型的障碍之一是对模型预测的准确性缺乏信心。克服这一点的一种方法是通过在预测上添加置信区间。在本文中,我们提出了一种基于高斯混合模型(GMM)框架的模型预测置信区间评估的新方法。所提出的方法的优点包括其能够处理复杂的非白噪声序列,提供准确置信区间的能力,以及其与要评估的数据模型类型的独立性。所提出的方法适用于工业案例研究:夏比冲击能量预测,包括具有显着噪声分量和继承稀疏数据分布的真正工业数据。得到的置信区间反映了对测试数据的预测不确定性。此外,基于GMM的方法也可用于模型偏压校正。数据驱动模型的基于GMM的置信区间评估表示有价值的贡献,特别是在关键应用的情况下。

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