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融合图像与频域特征激光切割挂渣量化预测OA

Quantitative prediction of laser-cut slag adhesion by integrating image and frequency-domain features

中文摘要英文摘要

为实现激光切割熔渣附着精准量化与工艺优化,本研究探索一种基于图像与频域特征的卷积神经网络(CNN)预测方法.构建包含 2 160张 1 mm厚 304不锈钢切割端面图像数据集.基于该数据集,采用高斯模糊、自适应阈值及形态学闭运算等图像处理算法,精确提取了挂渣的面积、高度及周长,将它们作为量化特征.为评估不同特征预测潜力,采用RGB图像及其经二值化处理小波包分解(WPD)频域图像作为输入,并系统对比了VGG16、ResNet50和DenseNet121三种CNN架构回归性能.结果表明,在RGB图像输入路径下,VGG16网络对挂渣面积和高度预测最为精准,其平均绝对误差(MAE)分别达到 0.019 mm2 和 0.044 mm.而对于更能反映动态过程状态的轮廓周长特征,WPD频域输入路径的预测效果显著提升,MAE降至 0.094 mm,归一化平均误差(nMAE)为 5.25%,且其预测值与真实值间拟合斜率与决定系数R2 分别为 0.83与 0.86,呈现强线性关系.本研究证实,VGG16网络在熔渣特征预测中具备良好适用性,且WPD频域特征能更有效地捕捉激光切割过程瞬态信息,所提出方法可作为工艺智能评估与闭环优化的可靠量化工具.

To achieve precise quantification of laser cutting slag adhesion and process optimization,this study investigates a convolutional neural network(CNN)-based prediction method that integrates both image and frequency-domain features.A dataset of 2 160 cross-sectional images of 1 mm thick 304 stainless steel was constructed.From these images,key dross characteristics-area,height,and perimeter were accurately ex-tracted using a combination of image processing techniques including Gaussian blur,adaptive thresholding,and morphological closing operations.To evaluate the predictive potential of different input representations,both RGB images and binarized images transformed via wavelet packet decomposition(WPD)were used as model inputs.The regression performance of three CNN architectures-VGG16,ResNet50,and DenseNet121 was systematically compared.Experimental results demonstrate that VGG16 achieved the highest prediction accuracy for dross area and height using RGB images,with mean absolute errors(MAE)of 0.019 mm2 and 0.044 mm,respectively.For predicting the perimeter,which better reflects dynamic process behavior,the WPD frequency-domain input path yielded a significantly improved MAE of 0.094 mm and a normalized MAE(nMAE)of 5.25%.The regression fit between predicted and actual values showed a slope of 0.83 and a coefficient of determination(R2)of 0.86,indicating a strong linear correlation.This study confirms the effect-iveness of VGG16 in predicting dross-related features and demonstrates the capability of WPD-derived fre-quency-domain features in capturing transient process information during laser cutting.The proposed meth-odology offers a reliable quantitative tool for intelligent process evaluation and closed-loop optimization.

翟杰;芦宇;王鑫鑫;夏元钦

天津职业技术师范大学 电子工程学院,天津 300222天津职业技术师范大学 电子工程学院,天津 300222天津职业技术师范大学 电子工程学院,天津 300222河北工业大学 河北省先进激光技术与装备重点实验室,天津 300401

矿业与冶金

挂渣特征卷积神经网络小波包分解激光切割工艺

dross featuresconvolutional neural networkswavelet packet decompositionlaser cutting pro-cess

《中国光学(中英文)》 2026 (2)

288-298,11

天津市科技计划项目(No.24YDTPJC00510)河北省先进激光技术与装备重点实验室基金(No.HBKL-ALTE2025003)Supported by Tianjin Science and Technology Program Project(No.24YDTPJC00510)Hebei Key Laboratory of Advanced Laser Technology and Equipment(No.HBKL-ALTE2025003)

10.37188/CO.2025-0125

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