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A Study on Establishing a Microstructure-Related Hardness Model with Precipitate Segmentation Using Deep Learning Method

机译:利用深层学习方法建立与沉淀分割的微观结构相关硬度模型的研究

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This paper established a microstructure-related hardness model of a polycrystalline Ni-based superalloy GH4720Li, and the sizes and area fractions of γ’ precipitates were extracted from scanning electron microscope (SEM) images using a deep learning method. The common method used to obtain morphological parameters of γ’ precipitates is the thresholding method. However, this method is not suitable for distinguishing different generations of γ’ precipitates with similar gray values in SEM images, which needs many manual interventions. In this paper, we employ SEM with ATLAS (AuTomated Large Area Scanning) module to automatically and quickly detect a much wider range of microstructures. A deep learning method of U-Net is firstly applied to automatically and accurately segment different generations of γ’ precipitates and extract their parameters from the large-area SEM images. Then the obtained sizes and area fractions of γ’ precipitates are used to study the precipitate stability and microstructure-related hardness of GH4720Li alloy at long-term service temperatures. The experimental results show that primary and secondary γ’ precipitates show good stability under long-term service temperatures. Tertiary γ’ precipitates coarsen selectively, and their coarsening behavior can be predicted by the Lifshitz–Slyozov encounter modified (LSEM) model. The hardness decreases as a result of γ’ coarsening. A microstructure-related hardness model for correlating the hardness of the γ’/γ coherent structures and the microstructure is established, which can effectively predict the hardness of the alloy with different microstructures.
机译:本文建立了一种微晶镍基超合金GH4720LI的微观结构相关硬度模型,并且使用深度学习方法从扫描电子显微镜(SEM)图像中提取γ'沉淀的尺寸和面积分数。用于获得γ'沉淀物形态参数的常用方法是阈值化方法。然而,该方法不适用于区分不同几代γ'沉淀物,在SEM图像中具有类似的灰度值,这需要许多手动干预。在本文中,我们使用ATLAS(自动化大面积扫描)模块的SEM自动,快速地检测更广泛的微观结构。首先应用U-Net的深度学习方法,自动和准确地分段为不同几代γ'析出物,并从大区域SEM图像提取它们的参数。然后,获得的γ'沉淀物的尺寸和面积级分用于研究GH4720LI合金的沉淀稳定性和微观结构相关硬度,在长期的服务温度下。实验结果表明,初级和次级γ'沉淀物在长期服务温度下显示出良好的稳定性。第三型γ'沉淀选择性粗原油,并且可以通过Lifshitz-Slyozov遇到修改(LSEM)模型来预测它们的粗化行为。由于γ'粗化,硬度降低。建立了用于关联γ'/γ相干结构的硬度和微观结构的微结构相关的硬度模型,这可以有效地预测合金的微观结构的硬度。

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