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Generative Adversarial Networks for Failure Prediction

机译:生成式对抗网络用于故障预测

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摘要

Prognostics and Health Management (PHM) is an emerging engineering discipline which is concerned with the analysis and prediction of equipment health and performance. One of the key challenges in PHM is to accurately predict impending failures in the equipment. In recent years, solutions for failure prediction have evolved from building complex physical models to the use of machine learning algorithms that leverage the data generated by the equipment. However, failure prediction problems pose a set of unique challenges that make direct application of traditional classification and prediction algorithms impractical. These challenges include the highly imbalanced training data, the extremely high cost of collecting more failure samples, and the complexity of the failure patterns. 'Iraditional oversampling techniques will not be able to capture such complexity and accordingly result in overfitting the training data. This paper addresses these challenges by proposing a novel algorithm for failure prediction using Generative Adversarial Networks (GAN-FP). GAN-FP first utilizes two GAN networks to simultaneously generate training samples and build an inference network that can be used to predict failures for new samples. GAN-FP first adopts an info-GAN to generate realistic failure and non-failure samples, and initialize the weights of the first few layers of the inference network. The inference network is then tuned by optimizing a weighted loss objective using only real failure and non-failure samples. The inference network is further tuned using a second GAN whose purpose is to guarantee the consistency between the generated samples and corresponding labels. GAN-FP can be used for other imbalanced classification problems as well. Empirical evaluation on several benchmark datasets demonstrates that GAN-FP significantly outperforms existing approaches, including under-sampling, SMOTE, ADASYN, weighted loss, and infoGAN augmented training.
机译:预测与健康管理(PHM)是一门新兴的工程学科,与设备健康和性能的分析和预测有关。 PHM的主要挑战之一是准确预测设备中即将发生的故障。近年来,用于故障预测的解决方案已经从构建复杂的物理模型演变为使用利用设备生成的数据的机器学习算法。但是,故障预测问题带来了一系列独特的挑战,这些挑战使直接应用传统分类和预测算法不切实际。这些挑战包括高度不平衡的训练数据,收集更多故障样本的极高成本以及故障模式的复杂性。传统的过采样技术将无法捕捉到这种复杂性,从而导致训练数据过拟合。本文通过提出一种使用生成对抗网络(GAN-FP)进行故障预测的新算法来解决这些挑战。 GAN-FP首先利用两个GAN网络来同时生成训练样本并构建一个推理网络,该网络可用于预测新样本的失败。 GAN-FP首先采用info-GAN来生成实际的故障样本和非故障样本,并初始化推理网络的前几层的权重。然后通过仅使用实际故障和非故障样本优化加权损失目标来优化推理网络。使用第二个GAN进一步调整推理网络,第二个GAN的目的是保证所生成的样本和相应标签之间的一致性。 GAN-FP也可以用于其他不平衡分类问题。对几个基准数据集的经验评估表明,GAN-FP明显优于现有方法,包括欠采样,SMOTE,ADASYN,加权损失和infoGAN增强训练。

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