新型 Vogel 近似法与随机森林算法在双向功能分级锥形多孔梁振动分析中的集成:评估

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES Scientific African Pub Date : 2024-09-20 DOI:10.1016/j.sciaf.2024.e02397
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引用次数: 0

摘要

功能分级材料是一类复合材料,其特点是成分和微观结构逐渐变化,从而进一步引起材料性能的相应变化。本研究的重点是评估双向功能分级锥形多孔梁(FGTPB)的振动行为。该方法采用矩形截面,以应对与材料特性波动以及厚度和宽度尺寸的几何锥度相关的挑战。研究采用了一种新颖的方法,将 Vogel 近似技术与随机森林算法(一种尚未用于分析结构振动、建立边界条件和求解运动方程的方法)相结合。建议的梁理论与现有文献中的 FGTPB 材料(如氧化铝和 SUS304)在不同锥度、孔隙率、梯度和宽度比下的比较结果得到了验证。材料的梯度和孔隙率在前三个基频模式中形成了统一的模式。梯度指数越高,梁的刚度和固有频率就越高,而孔隙度指数则会降低刚度,从而降低固有频率。通过将 Vogel 近似方法与机器学习技术相结合,该研究改进了 FGTPB 的振动行为分析。材料和结构工程学科将因此受到重大影响。
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The novel Vogel's approximation method integrated with a random forest algorithm in the vibration analysis of a two-directional functionally graded taper porous beam: Assessment
A functionally graded material is a class of composite materials characterized by gradual variations in composition and microstructure, which further induces the respective changes in the material properties. This study focuses on evaluating the vibration behavior of two directional functionally graded taper porous beams (FGTPB). This approach adopts a rectangular cross-section in order to deal with the challenges related to fluctuating material characteristics and geometric tapering in both thickness and width dimensions. The research employs a novel approach that merges Vogel's approximation technique with the Random Forest algorithm, an approach that has not been used in analyzing structural vibrations, establish boundary conditions and solve equations of motion. Comparative results of the suggested beam theory with the existing literature on FGTPB materials such as alumina and SUS304 at various taper, porosity, gradient and width ratios verified it. The material gradation and porosity developed a uniform pattern in the first three modes of fundamental frequencies. Higher gradient indices increased the rigidity and natural frequencies of the beams whereas the porosity index decreased the rigidity, resulting in lower natural frequencies. By combining Vogel's approximation method with machine learning techniques, the study improved vibration behavior analysis in FGTPB. The disciplines of materials and structural engineering are significantly impacted by this.
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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