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Accelerated learning using Gaussian process models to predict static recrystallization in an Al-Mg alloy

机译:使用高斯过程模型加速学习以预测Al-Mg合金中的静态再结晶

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This paper describes an investigation into the suitability of Gaussian process models for predicting the microstructure evolution arising from static recrystallization. These methods have the advantage of not requiring a prior understanding of the micromechanical processes. They are wholly empirical and use a Bayesian framework to infer the probability distribution of data, given a 'training set' comprising observed outputs for known inputs. Given the evidence from the training set, they can make a prediction and assess its certainty, taking into account the noise in the data. In addition, non-uniform deformation geometries were chosen to provide the training data, both to approximate typical manufacturing processes with complex strain paths and to investigate whether learning could be accelerated by using only a small number of test samples containing a distribution of deformation histories. The model was trained and tested on data from samples of a cold-deformed and annealed aluminium-magnesium alloy. [References: 19]
机译:本文描述了对高斯过程模型是否适用于预测静态再结晶引起的微观结构演变的研究。这些方法的优点是不需要事先了解微机械过程。它们完全是经验性的,并使用贝叶斯框架来推断数据的概率分布,给定一个“训练集”,其中包括已知输入的观测输出。给定来自训练集的证据,他们可以考虑数据中的噪声来做出预测并评估其确定性。此外,选择非均匀的变形几何形状来提供训练数据,以近似于具有复杂应变路径的典型制造过程,并研究仅使用少量包含变形历史分布的测试样本是否可以加速学习。对模型进行了训练和测试,数据来自冷变形和退火的铝镁合金样品。 [参考:19]

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