首页> 外文会议>2017 International Conference on Sustainable Information Engineering and Technology >On the usage of hybrid 1-D convolutional network and long-short-term-memory network for constant-amplitude multiple-site fatigue damage prediction on aircraft lap joints
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On the usage of hybrid 1-D convolutional network and long-short-term-memory network for constant-amplitude multiple-site fatigue damage prediction on aircraft lap joints

机译:一维卷积网络和长短时记忆网络在飞机搭接接头等幅多点疲劳损伤预测中的应用

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摘要

Multiple site fatigue damage is a problem that affects many operators of aging aircraft. The methods currently in place for prediction of such damage are conservative, sensitive to noise and cannot fully account for grain-level material variations, which results in aircrafts being more conservatively designed than they need to be. The authors augmented the dataset of the FAA AR-07/22 report into a sizable body of variable- and constant-amplitude multiple-site fatigue damage sequences. This was done implementing and tuning the algorithm from AFGROW, implementing the plastic zone linkup criteria for crack interaction, as well as adding Gaussian noise at different stages of the computation. The interim model used for predicting the damage is a hybrid 1-D convolution and bidirectional LSTM model, which achieved an average of 171.26% MAPE, and 4.028 MSLE on the interim version of the dataset. A detailed breakdown of the error characteristics and the hyperparameters that have salient effects on the performance of the model are also examined.
机译:多地点疲劳损坏是一个影响飞机老化的许多操作员的问题。当前用于预测此类损坏的方法是保守的,对噪声敏感的,并且不能完全考虑颗粒级材料的变化,这导致飞机的设计比需要的更为保守。作者将FAA AR-07 / 22报告的数据集扩充为相当大的可变振幅和恒定振幅多点疲劳损伤序列。这是通过执行和调整AFGROW中的算法,实现塑性区链接标准以进行裂纹相互作用以及在计算的不同阶段添加高斯噪声来完成的。用于预测损坏的临时模型是一维卷积和双向LSTM混合模型,该模型在数据集的临时版本上平均达到171.26%的MAPE和4.028 MSLE。还检查了误差特征和对模型性能有显着影响的超参数的详细分类。

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