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首页> 外文期刊>Robotics & Machine Learning Daily News >Reports on Machine Learning Findings from Coventry University Provide New Insights [Machine-Learning Approach to Determine Surface Quality on a Reactor Pressure Vessel (RPV) Steel]
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Reports on Machine Learning Findings from Coventry University Provide New Insights [Machine-Learning Approach to Determine Surface Quality on a Reactor Pressure Vessel (RPV) Steel]

机译:机器学习研究报告从考文垂大学(机器学习提供新的见解方法来确定表面质量反应堆压力容器(以下)钢)

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The news editors obtained a quote from the research from Coventry University: “This paper is primarily focused on an experimental study targeting nuclear reactor materials manufactured from the milling process with various machining parameters to produce varying surface quality conditions to mimic the varying material surface qualities of in-field conditions. From energising a local area electromagnetically, a receiver coil is used to obtain the emitted Barkhausen noise, from which the condition of the material surface can be inspected. Investigations were carried out with the support of machine-learning algorithms, such as Neural Networks (NN) and Classification and Regression Trees (CART), to identify the differences in surface quality. Another challenge often faced is undertaking an analysis with limited experimental data. Other non-destructive methods such as Magnetic Adaptive Testing (MAT) were used to provide data imputation for missing data using other intelligent algorithms. For data reinforcement, data augmentation was used.”
机译:报价从获得的新闻编辑本文研究从考文垂大学:“是主要集中在实验研究针对核反应堆材料制造铣削过程的各种加工参数产生不同的表面质量条件模拟不同材料表面攷虑质量条件。一个局域电磁,接收线圈用于获取巴克豪森噪声排放,材料表面的状况可以检查。机器学习算法的支持下,如神经网络(NN)和分类和回归树(CART),来确定的表面质量的差异。经常面对正在进行的分析有限的实验数据。方法如磁自适应测试(垫)被用来提供数据归责失踪吗数据使用其他智能算法。强化,增强数据。”

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