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首页> 外文期刊>Tribology - Materials, Surfaces & Interfaces >Modelling wear behaviour of Al - SiC metal matrix composites: soft computing technique
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Modelling wear behaviour of Al - SiC metal matrix composites: soft computing technique

机译:模拟Al-SiC金属基复合材料的磨损行为:软计算技术。

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摘要

The focus of this paper is to design and develop an adaptive neuro fuzzy inference system (ANFIS) model for predicting the wear rate of Al-SiC metal matrix composites (MMCs). The data have been generated from a mathematical model developed by using the response surface method on Al-SiC MMCs. The input parameters of the model are reinforcement volume fraction, reinforcement particle size, sliding load, sliding velocity and sliding distance, and the output parameter is the wear rate of Al-SiC MMCs. The performance of the ANFIS model is evaluated by comparing the experimental data with ANFIS models, and the proposed model can be used for predicting the wear rate of Al-SiC MMCs.
机译:本文的重点是设计和开发用于预测Al-SiC金属基复合材料(MMCs)磨损率的自适应神经模糊推理系统(ANFIS)模型。数据是通过在Al-SiC MMC上使用响应面方法开发的数学模型生成的。该模型的输入参数为增强体体积分数,增强体粒径,滑动载荷,滑动速度和滑动距离,输出参数为Al-SiC MMC的磨损率。通过将实验数据与ANFIS模型进行比较,评估了ANFIS模型的性能,该模型可用于预测Al-SiC MMC的磨损率。

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