利用图像特征和机器学习算法自动识别智能焊接中的焊点类型

AI EDAM Pub Date : 2024-01-02 DOI:10.1017/s0890060423000227
Satish Sonwane, Shital Chiddarwar
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引用次数: 0

摘要

焊接是最基本、应用最广泛的制造工艺。由于机器人在焊接操作中的广泛应用,智能机器人焊接是一个备受关注的领域。随着工业 4.0 的到来,机器学习得到了长足的发展,以缓解智能应用机器人焊接方面的问题。识别正确的焊点类型对于智能机器人焊接至关重要。它会影响焊接质量,并影响单位成本。机器人控制器必须根据焊点类型改变不同的焊接参数,以达到所需的焊接质量。本文介绍了一种利用图像特征(如边缘、拐角和圆块)的方法,通过机器学习算法来识别不同的焊点类型。特征提取器执行特征提取任务。特征提取器的选择对于准确识别焊点至关重要。本研究比较了五种特征提取器的性能,即 (1) 梯度直方图、(2) 局部二进制模式、(3) ReLU3 层、(4) ReLU4 层和 (5) ResNet18 神经网络的池化层,并将其应用于支持向量机、K-近邻和决策树等分类器。我们使用 Kaggle 焊接接头数据集(对接接头和圆角接头)和我们的内部数据集(Vee、搭接和转角接头)对提出的模型进行了训练和测试。实验结果表明,在 15 个模型中,预训练的 ResNet18 特征提取器和支持向量机分类器性能卓越,对上述数据集的三倍识别准确率为 98.74%,每张图像的计算时间为 31 毫秒。
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Automatic weld joint type recognition in intelligent welding using image features and machine learning algorithms

Welding is the most basic and widely used manufacturing process. Intelligent robotic welding is an area that has received much consideration owing to the widespread use of robots in welding operations. With the dawn of Industry 4.0, machine learning is substantially developing to alleviate issues around applying robotic welding intelligently. Identifying the correct weld joint type is essential for intelligent robotic welding. It affects the quality of the weldment and impacts the per-unit cost. The robot controller must change different welding parameters per joint type to attain the desired weld quality. This article presents an approach that uses image features like edges, corners, and blobs to identify different weld joint types using machine learning algorithms. Feature extractors perform the task of feature extraction. The feature extractor choice is crucial for accurate weld joint identification. The present study compares the performance of five feature extractors, namely (1) Histogram of gradients, (2) Local binary pattern, (3) ReLU3 layer, (4) ReLU4 layer, and (5) Pooling layer of ResNet18 Neural network applied to classifiers like Support Vector machines, K-Nearest Neighbor and Decision trees. We trained and tested the proposed model using the Kaggle Weld joint dataset (for Butt and Fillet Joints) and our in-house dataset (for Vee, lap, and corner joints). The experimental findings show that out of the 15 models, the pre-trained ResNet18 feature extractor with an Support Vector Machines classifier has excellent performance with a threefold recognition accuracy of 98.74% for the mentioned dataset with a computation time of 31 ms per image.

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