首页> 外文会议>ASME Pressure Vessels amp;amp;amp; Piping Conference >WELDING SIMULATION INTEGRATED WITH MACHINE LEARNING TO TRAIN A META-MODEL FOR FAST EXPLORATION OF VARIOUS WELD SEQUENCE SCENARIOS
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WELDING SIMULATION INTEGRATED WITH MACHINE LEARNING TO TRAIN A META-MODEL FOR FAST EXPLORATION OF VARIOUS WELD SEQUENCE SCENARIOS

机译:焊接仿真与机器学习集成,培训了培训META模型,以便快速探索各种焊接序列情景

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摘要

Distortion is a common problem in welded structures, and therefore welding standards require a mitigation plan to be in place before welding. When dealing with multiple welds, an optimal intermittent weld sequence can effectively minimize the distortion by counter-balancing the transient distortion during welding. However, the process of finding an effective weld sequence is a challenging task given a large number of possible combinations, i.e. several thousand for a few welds. As an acceptable approach, welding simulation tools allow engineers to optimize a welding sequence without the need for multiple physical samples. Despite efficient simulation tools and powerful supercomputers, yet simulation tools have been limited by CPU time and therefore not mature for practical designs. To this end, we constructed and integrated an inexpensive low-fidelity machine learning (ML) algorithm with the expensive high-fidelity simulation. This ML model was then trained to increase the fidelity by a wisely chosen train set of simulation to construct a meta-model for active exploration of various weld sequence scenarios. As opposed to existing ML algorithms that require an extensive data set to train, our algorithm picks relatively small training set to construct a meta-model. We present an example of our algorithm implemented in a real welded structure project.
机译:扭曲是焊接结构中的常见问题,因此焊接标准需要在焊接前进行减轻计划。当处理多种焊接时,最佳间歇焊接序列可以通过反击焊接期间的瞬态失真来有效地减少失真。然而,找到有效焊接序列的过程是给出了大量可能的组合的具有挑战性的任务,即一些焊缝数千。作为可接受的方法,焊接仿真工具允许工程师优化焊接序列而无需多个物理样本。尽管有效的仿真工具和强大的超级计算机,但仿真工具受到CPU时间的限制,因此对于实用设计而言不成熟。为此,我们构建并集成了具有昂贵的高保真模拟的廉价的低保真机学习(ML)算法。然后训练该ML模型以通过明智的列车仿真训练来增加保真度,以构建用于各种焊接序列情景的主动探索的元模型。与需要广泛的数据集的现有ML算法相反,我们的算法选择相对小的训练集来构建元模型。我们提出了在真正的焊接结构项目中实现的算法的示例。

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