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Strengths prediction of particulate reinforced metal matrix composites (PRMMCs) using direct method and artificial neural network

机译:使用直接方法和人工神经网络的颗粒增强金属基质复合材料(PRMMC)的强度预测

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Predicting strengths and understanding how these values related to the underlying composite structure is essential for the design and application of particulate reinforced metal matrix composites (PRMMCs). In order to investigate how ultimate strength and endurance limit of an exemplary PRMMC material, WC-20 wt% Co, are related to other structural and mechanical characteristics, an integrated numerical approach consisting of direct methods (DM) and artificial neural network (ANN) is presented in this work. Using few features obtained from elastic and DM analyses as inputs, multiple regression and classification ANNs were established to predict global material strengths. With this approach, the study implied that the distribution pattern of the stress field, in particular the one pertained to the binder phase, has a nontrivial influence over global composite strengths.
机译:预测强度和理解与底层复合结构相关的这些值对于颗粒增强金属基复合材料(PRMMC)的设计和应用是必不可少的。为了研究示例性PRMMC材料的最终强度和耐久极限,WC-20 WT%CO与其他结构和机械特性有关,一种集成的数值方法,包括直接方法(DM)和人工神经网络(ANN)在这项工作中呈现。使用从弹性和DM分析获得的少量特征作为输入,建立多元回归和分类ANN,以预测全球材料强度。通过这种方法,该研究暗示应力场的分布模式,特别是与粘合剂相的那个,对全局复合强度具有非渴望的影响。

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