残余应力
喷丸
材料科学
激光喷丸
残余物
休克(循环)
压力(语言学)
抗压强度
喷丸
铝
随机森林
计算机科学
结构工程
复合材料
算法
机器学习
工程类
哲学
内科学
医学
语言学
作者
Yuanhang Zhou,Peilong Song,Wei Su,Pengyu Wei,Ruonan Zhang,Xin Guo,Zhipeng Ding,Hongbing Yao
标识
DOI:10.1016/j.matdes.2024.113079
摘要
Laser Shock Peening (LSP) is an advanced technique for enhancing surface properties, drawing significant interest for its ability to induce beneficial residual stresses in materials. Traditional LSP design processes, reliant on manual parameter selection, often result in imprecise control over the stress distribution, necessitating multiple iterations and high costs. This study introduces a machine learning (ML)-based approach, utilizing the Random Forest (RF) algorithm, to automate and optimize the design of LSP parameters for nickel-aluminium bronze surfaces. Our findings demonstrate the RF model’s capability to accurately predict and optimize residual stress distributions, achieving compressive stresses up to 472 MPa with a notable reduction in design iterations. The model forecasts both uniform and non-uniform stress patterns, particularly identifying areas susceptible to Residual Stress Holes (RSH) with improved precision. With an Absolute Percentage Error (APE) of only 6.2 %, our approach significantly outperforms traditional ML algorithms, offering a novel method for efficiently designing complex residual stress fields in LSP applications.
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