材料科学
田口方法
熔渣(焊接)
摩擦学
涂层
冶金
铝
人工神经网络
复合材料
计算机科学
机器学习
作者
Pravat Ranjan Pati,Alok Satapathy,Gaurav Gupta,Subhrajit Ray
标识
DOI:10.1177/13506501221106562
摘要
The present research investigates the erosion wear performance of plasma-sprayed Linz-Donawitz (LD) slag coatings through combined execution of experimental design and neural network. This effort reveals that LD slag is coatable on aluminum substrate. Different weight proportions of Al 2 O 3 are mixed with LD slag prior to coating deposition. In this investigation, it is observed that the coating thickness and micro-hardness improve with the addition of Al 2 O 3 into LD slag content. Wear characteristics of LD slag coatings in terms of parametric influence have been analyzed using Taguchi approach. Impact velocity is the most substantial for reducing the wear rate. The results are also optimized using artificial neural network (ANN). The experimental and ANN predicted data established a decent agreement keeping the error within 7%. The wear mechanism failures are also examined microscopically. This study demonstrates that these coatings are found appropriate in tribological areas as well.
科研通智能强力驱动
Strongly Powered by AbleSci AI