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On Partitioning of an SHM Problem and Parallels with Transfer Learning

机译:转移学习的SHM问题和平行区分区

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In the current work, a problem-splitting approach and a scheme motivated by transfer learning is applied to a structural health monitoring problem. The specific problem in this case is that of localising damage on an aircraft wing. The original experiment is described, together with the initial approach, in which a neural network was trained to localise damage. The results were not ideal, partly because of a scarcity of training data, and partly because of the difficulty in resolving two of the damage cases. In the current paper, the problem is split into two sub-problems and an increase in classification accuracy is obtained. The sub-problems are obtained by separating out the most difficult-to-classify damage cases. A second approach to the problem is considered by adopting ideas from transfer learning (usually applied in much deeper) networks to see if a network trained on the simpler damage cases can help with feature extraction in the more difficult cases. The transfer of a fixed trained batch of layers between the networks is found to improve classification by making the classes more separable in the feature space and to speed up convergence.
机译:在当前的工作中,将问题分裂方法和通过转移学习激励的方案应用于结构健康监测问题。在这种情况下的具体问题是飞机机翼上的定位损坏。原始实验描述于初始方法,其中神经网络训练以定位损坏。结果并不理想,部分原因是训练数据的稀缺性,部分是因为难以解决两个损伤案件。在目前的论文中,问题分为两个子问题,并且获得了分类精度的增加。通过分离最困难的损伤案例来获得子问题。通过采用从转移学习(通常适用于更深的)网络的想法来考虑问题的第二种方法,以了解在更简单的损坏情况下训练的网络可以帮助在更困难的情况下提取特征提取。发现在网络之间传递固定训练训练批次的层,通过使特征空间中更可分分离并加速收敛来改善分类。

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