Prediction of nano metal matrix composites based on hybrid approach

IF 1.8 4区 工程技术 Q3 ENGINEERING, CHEMICAL
N. Sudheer Kumar Varma, P. Rajasekhar, G. Ganesan, K. Sita Rama Raju
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引用次数: 0

Abstract

This manuscript proposes a hybrid method to predict the optimal nano-metal matrix composites. The proposed hybrid technique is the wrapper of the Fire-Hawk Optimizer (FHO) and Spiking Neural Network (SNN). Commonly it is known as FHO-SNN method. The main objective of the proposed method is to improve the method parameters for better enhancement in mechanical properties. FHO approach is used to improve the process parameters of stirring squeeze casting method. The SNN predicts optimal parameters. Moreover, the problem based on the casting is reduced. By then the proposed hybrid technique performance is performed in the MATLAB platform and associated with various existing approaches. The proposed system shows the high tensile strength, impact energy and hardness compared with other existing methods.

基于混合方法的纳米金属基复合材料预测
本手稿提出了一种预测最佳纳米金属基复合材料的混合方法。所提出的混合技术是火鹰优化器(FHO)和尖峰神经网络(SNN)的封装。它通常被称为 FHO-SNN 方法。所提方法的主要目的是改进方法参数,以更好地提高机械性能。FHO 方法用于改进搅拌挤压铸造法的工艺参数。SNN 可预测最佳参数。此外,还减少了基于铸造的问题。随后,在 MATLAB 平台上对所提出的混合技术性能进行了分析,并将其与现有的各种方法进行了关联。与其他现有方法相比,建议的系统显示出较高的拉伸强度、冲击能量和硬度。
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来源期刊
Lubrication Science
Lubrication Science ENGINEERING, CHEMICAL-ENGINEERING, MECHANICAL
CiteScore
3.60
自引率
10.50%
发文量
61
审稿时长
6.8 months
期刊介绍: Lubrication Science is devoted to high-quality research which notably advances fundamental and applied aspects of the science and technology related to lubrication. It publishes research articles, short communications and reviews which demonstrate novelty and cutting edge science in the field, aiming to become a key specialised venue for communicating advances in lubrication research and development. Lubrication is a diverse discipline ranging from lubrication concepts in industrial and automotive engineering, solid-state and gas lubrication, micro & nanolubrication phenomena, to lubrication in biological systems. To investigate these areas the scope of the journal encourages fundamental and application-based studies on: Synthesis, chemistry and the broader development of high-performing and environmentally adapted lubricants and additives. State of the art analytical tools and characterisation of lubricants, lubricated surfaces and interfaces. Solid lubricants, self-lubricating coatings and composites, lubricating nanoparticles. Gas lubrication. Extreme-conditions lubrication. Green-lubrication technology and lubricants. Tribochemistry and tribocorrosion of environment- and lubricant-interface interactions. Modelling of lubrication mechanisms and interface phenomena on different scales: from atomic and molecular to mezzo and structural. Modelling hydrodynamic and thin film lubrication. All lubrication related aspects of nanotribology. Surface-lubricant interface interactions and phenomena: wetting, adhesion and adsorption. Bio-lubrication, bio-lubricants and lubricated biological systems. Other novel and cutting-edge aspects of lubrication in all lubrication regimes.
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