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首页> 外文期刊>Bulletin of materials science >Significance of artificial neural network analytical models in materialsa?? performance prediction
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Significance of artificial neural network analytical models in materialsa?? performance prediction

机译:物质中人工神经网络分析模型的意义??性能预测

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In materials science, performance prediction of materials plays an important role in improving the quality of materials as well as preventing serious damage to the environment and threat to public safety. Traditional regression analysismodels in materials science are not yet perfect, limited to capture nonlinearities of data and time-consumption for prediction, and have a poor ability to handle a large amount of data. This leads to a demand for analyses of materials data using novel computer science methods. In recent years, artificial neural networks (ANNs) are increasingly performing as a strong tool to establish the relationships among data and being successfully applied in materials science due to their generalization ability, noise tolerance and fault tolerance. In this paper, some typical ANN applications for predicting various properties (corrosion,structural, tribological and so on) of different materials serving multiple environments (atmosphere, stress, weld and so on) are reviewed. It highlights the significance of ANN in materials-related problems in separate sections arranged by the level of simplicity, ranging from simple ANN models alone to more complicated ANN models along with the hybrid use of other computing and input-ranking methods, and the trend of ANN in the context of materials science with some limitations.
机译:在材料科学中,材料的性能预测在提高材料质量方面发挥着重要作用,并防止对环境严重损害以及对公共安全的威胁。材料科学中的传统回归分析尚未完美,仅限于捕获数据的非线性和预测的时间消耗,并且具有较差的处理大量数据的能力。这导致使用小型计算机科学方法对材料数据分析的需求。近年来,人工神经网络(ANNS)越来越多地表现为强大的工具,以建立数据之间的关系,并且由于其泛化能力,噪声容差和容错而成功地应用于材料科学。在本文中,综述了一些典型的ANN应用,用于预测用于多种环境(大气,应力,焊接等)的不同材料的各种性质(腐蚀,结构,摩擦学等)的应用。它突出了ANN在由简单级别排列的单独部分中与材料相关问题的重要性,从单独的简单ANN模型到更复杂的ANN模型以及混合使用其他计算和输入排名方法,以及趋势在材料科学的背景下具有一些限制。

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