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基于蚁群优化-支持向量回归的矩形光斑激光熔覆熔池几何形状分析与预测

Analysis and Prediction of Melt Pool Geometry in Rectangular Spot Laser Cladding Based on Ant Colony Optimization-Support Vector Regression.

作者信息

Wang Junhua, Wang Jiameng, Zha Xiaoqin, Lu Yan, Li Kun, Xu Junfei, Xie Tancheng

机构信息

School of Mechanical and Electrical Engineering, Henan University of Science and Technology, Luoyang 471003, China.

National Key Laboratory of Marine Corrosion and Protection, Luoyang Ship Material Research Institute, Luoyang 471023, China.

出版信息

Micromachines (Basel). 2025 Feb 16;16(2):224. doi: 10.3390/mi16020224.

Abstract

The rectangular spot laser cladding system, due to its large spot size and high efficiency, has been widely applied in laser cladding equipment, significantly improving cladding's efficiency. However, while enhancing cladding efficiency, the rectangular spot laser cladding system may also affect the stability of the melt pool, thereby impacting the cladding's quality. To accurately predict the melt pool morphology and size during wide beam laser cladding, this study developed a melt pool monitoring system. Through real-time monitoring of the melt pool morphology, image processing techniques were employed to extract features such as the melt pool width and area. The study used laser power, scanning speed, and the powder feed rate as input variables, and established a prediction model for the melt pool width and area based on Support Vector Regression (SVR). Additionally, an Ant Colony Optimization (ACO) algorithm was applied to optimize the SVR model, resulting in an ACO-SVR-based prediction model for the melt pool. The results show that the relative error in predicting the melt pool width using the ACO-SVR model is less than 2.2%, and the relative error in predicting the melt pool area is less than 9.13%, achieving accurate predictions of the melt pool width and area during rectangular spot laser cladding.

摘要

矩形光斑激光熔覆系统因其光斑尺寸大、效率高,已在激光熔覆设备中得到广泛应用,显著提高了熔覆效率。然而,在提高熔覆效率的同时,矩形光斑激光熔覆系统也可能影响熔池的稳定性,从而影响熔覆质量。为了准确预测宽光束激光熔覆过程中的熔池形态和尺寸,本研究开发了一种熔池监测系统。通过对熔池形态的实时监测,采用图像处理技术提取熔池宽度和面积等特征。该研究将激光功率、扫描速度和送粉速率作为输入变量,基于支持向量回归(SVR)建立了熔池宽度和面积的预测模型。此外,应用蚁群优化(ACO)算法对SVR模型进行优化,得到了基于ACO-SVR的熔池预测模型。结果表明,采用ACO-SVR模型预测熔池宽度的相对误差小于2.2%,预测熔池面积的相对误差小于9.13%,实现了矩形光斑激光熔覆过程中熔池宽度和面积的准确预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/990b/11857141/368095ff2280/micromachines-16-00224-g001.jpg

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