首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers. Part L, Journal of Materials: Design and Application >Machine learning models applied to friction stir welding defect index using multiple joint configurations and alloys
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Machine learning models applied to friction stir welding defect index using multiple joint configurations and alloys

机译:使用多个关节配置和合金的机器学习模型应用于摩擦搅拌焊接缺陷指数

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摘要

Friction stir welding process has been studied extensively in the last decades since its early stage. Most of the research done so far is related to the process development including tool design, material weldability, post-weld mechanical behavior, and microstructural properties. More recently, in-line process monitoring and artificial intelligence algorithms are introduced into this process, but mainly to specific material configuration and joint thicknesses. This study will focus on the evaluation of different machine learning approaches including principle component analysis, K-nearest neighbor, multilayer perceptron, single vector machine, and random forest methods on a friction stir welding cell environment. The input variables provided from this cell environment are namely divided into two groups: one group refers to the application variables and the other group is related to the friction stir welding process variables. The application variables target the aluminum alloys, joint configuration, sheet thicknesses, initial mechanical properties, and their chemical composition. The friction stir welding process variables dictate the rotational speed, travel speed, forging force, longitudinal and transverse forces, torque, and specific energy. The output response to model from these machine learning algorithms is the defect index, which has been quantified using high-resolution immersed bath ultrasounds. This nondestructive evaluation technique has been described previously, which can detect defects = 150 mu m in thin sheets. The defect index has been classified into five classes, which is distinguished by the nature of defect, cold weld, or hot weld, as well as the width of the internal volumetric defect upon ultrasound C-scan result. The dataset, which is composed of around 500 various process conditions, has been generated over the last few years and the variables were taken exclusively in constant weld regime and in the force control mode using the output average values. This paper compares the best resulting machine learning methods applied on a friction stir welding cell basis, which is the K-nearest neighbor and multilayer perceptron algorithms. The K-nearest neighbor model reaches a deviation of 0.55 on the defect index in comparison with the experimental values, which is slightly better than the multilayer perceptron model, which obtains a score of 0.69. Over the initial 59 available model parameters, 10 and 15 of them were retained in the final algorithm using these techniques. The main predictors include the material thickness, base material ultimate tensile stress, rotational speed, travel speed, weld forces, and specific energy. The K-nearest neighbor model was able to provide a map of defect indices with regard to rotational speed and travel speed but was only possible when a higher density of data was found within the prediction area. A data density score was also included within the model to inform the end-user about the prediction reliability. The machine learning models are mainly about differentiating various cases rather than representing the physical phenomena as determined using the finite element analysis. That being said, in order to improve the prediction reliability as well as the machine learning models, the data twinning concept, which consists of generating simulated friction stir welding process conditions by finite element analysis, is briefly discussed.
机译:自早期阶段以来,在过去几十年中,摩擦搅拌焊接过程已经过度研究。到目前为止,大多数研究都与过程开发有关,包括工具设计,材料可焊性,焊后力学行为和微观结构性能。最近,在线过程监测和人工智能算法被引入到该过程中,但主要是特定的材料配置和关节厚度。本研究将重点关注对不同机器学习方法的评估,包括原理成分分析,K最近邻居,多层感知,单载机和随机森林方法对摩擦搅拌焊接细胞环境。从该单元格环境提供的输入变量是分为两组:一个组是指应用变量,另一组与摩擦搅拌焊接过程变量有关。施用变量靶向铝合金,关节构型,板材厚度,初始机械性能及其化学成分。摩擦搅拌焊接过程变量决定了转速,行进速度,锻造力,纵向和横向力,扭矩和特定能量。从这些机器学习算法到模型的输出响应是缺陷指数,其使用高分辨率浸泡浴超声量量化。此前已经描述了这种非破坏性评估技术,其可以在薄片中检测缺陷> =150μm。缺陷指数已被分为五类,其特征在于缺陷,冷焊接或热焊接的性质,以及在超声C扫描结果时内部体积缺陷的宽度。在过去几年中,由围绕500种不同的处理条件组成的数据集,并且使用输出平均值在恒定焊接方案中独家拍摄变量。本文比较了施加在摩擦搅拌焊接电池的基础上的最佳所产生的机器学习方法,这是k最近邻居和多层的感知算法。与实验值相比,k最近邻模型达到0.55的偏差,该缺陷指数比实验值略好于多层的Perceptron模型,这比得分为0.69。在使用这些技术的最终算法中,它们的初始59可用型号参数,10和15被保留在最终算法中。主要预测器包括材料厚度,基材最终拉伸应力,转速,行进速度,焊接力和特定能量。 K最近邻模型能够提供关于旋转速度和行驶速度的缺陷指数的地图,但是仅在预测区域内发现更高的数据密度时才可能。数据密度得分也包括在模型中,以通知最终用户对预测可靠性。机器学习模型主要涉及各种情况而不是使用有限元分析确定的各种情况而不是表示物理现象。已经说,为了提高预测可靠性以及机器学习模型,简要讨论了通过有限元分析产生模拟摩擦搅拌焊接工艺条件的数据孪晶概念。

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