首页> 外文期刊>Wear: an International Journal on the Science and Technology of Friction, Lubrication and Wear >Neural network analysis for erosive wear of hard coatings deposited by thermal spray: Influence of microstructure and mechanical properties
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Neural network analysis for erosive wear of hard coatings deposited by thermal spray: Influence of microstructure and mechanical properties

机译:热喷涂沉积硬涂层腐蚀磨损的神经网络分析:微观结构和机械性能的影响

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An artificial neural network (ANN) analysis is used to obtain a model to predict the rate of erosive wear of hard coatings deposited by two different kinds of thermal spray techniques. High Velocity Oxygen Fuel (HVOF) and Flame Spray FlexiCords (FS/FC) techniques were used under various operational conditions. Different microstructural features that control the mechanical and the tribological performances of three groups of deposits: tungsten carbide, chromium carbide and metallic alloy coatings, were analyzed. The ANN technique involves database use to predict erosive wear evolution, having a large number of variables like deposition process, impingement angles and velocity of the erosive particles, porosity, roughness, microhardness and fracture toughness. Commercially available powders were used as feed-stock for coatings deposited by HVOF. Commercial cord wires were used in the FS/FC coating deposition. The slurry erosion testing was performed using a laboratory made pot-type slurry erosion tester, at impact velocity of 3,61 m/s and 9,33 m/s combined with impact angle of 30 degrees and 90 degrees. From the results, it was observed that the microhardness and fracture toughness, as a combination factor, have the greatest influence on erosive rate followed by porosity. Samples coated with WC-CoCr cermet coating with fine WC carbides exhibit higher erosion resistance as compared with the other conventional cermet and metallic alloy coatings, mainly because of its homogenous microstructure and improved properties like low porosity, high microhardness and high fracture toughness. The numerical results obtained via neural network model were compared with the experimental results. The agreement between the experimental and numerical results is considered a good aspect. (C) 2017 Elsevier B.V. All rights reserved.
机译:人工神经网络(ANN)分析用于获得模型,以预测由两种不同种类的热喷涂技术沉积的硬涂层的腐蚀磨损速率。在各种操作条件下使用高速氧气燃料(HVOF)和火焰喷涂屈光度(FS / FC)技术。对三组沉积物的机械和摩擦学性能的不同微观结构特征进行分析,分析碳化钨,碳化物和金属合金涂层。 ANN技术涉及数据库用于预测侵蚀磨损的磨损进化,具有大量变量,如沉积过程,抗腐蚀颗粒,孔隙率,粗糙度,微硬度和断裂韧性的撞击角和速度。市售粉末用作沉积HVOF的涂料的进料原料。在FS / Fc涂层沉积中使用商用绳子线。使用实验室制成的锅型浆料腐蚀测试仪进行浆料侵蚀测试,冲击速度为3,61米/秒,9,33米/秒,与30度和90度的冲击角相结合。从结果中,观察到微硬度和断裂韧性,作为组合因子,对腐蚀速率的影响最大,随后是孔隙率。与其他常规金属陶瓷和金属合金涂层相比,涂有具有细WC碳化物的WC-Coct Cermet涂层的样品具有更高的耐腐蚀性,主要是因为其均匀的微观结构和改善的性质,如低孔隙率,高孔隙性和高裂缝韧性。将通过神经网络模型获得的数值结果与实验结果进行了比较。实验和数值结果之间的协议被认为是一个很好的方面。 (c)2017 Elsevier B.v.保留所有权利。

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