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Instance-based ensemble deep transfer learning network: A new intelligent degradation recognition method and its application on ball screw

机译:基于实例的整体深度学习网络:一种新的智能退化识别方法及其在滚珠丝杠上的应用

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摘要

Degradation recognition plays an important role in improving the safety of mechanical operation. For most of the existing recognition methods, using large amounts of labeled training data that obey the same probability distribution as testing data is an important pre-requisite for training effective recognition model. Unfortunately, it is difficult to col-lectmassive labeled condition data for some machines like ball screw. This makes it a huge challenge to build reliable recognition model since the labeled training data collected in target domain are insufficient. However, large amounts of labeled data collected in different but related domain (called source domain) are usually available, which can be treated as auxiliary training data to help build better recognition model in target domain. Inspired by the idea of transferring knowledge from source domain to target domain, a new intelligent method named instance-based ensemble deep transfer learning network (IEDT) is proposed in this paper to recognize the degradation under various operating conditions. IEDT mainly consists of three parts: First, source instances that fit better with the target domain are selected by filtering out these unrelated samples iteratively. The remaining source instances are employed to assist insufficient labeled target data to train multiple stacked auto-encoders (SAEs) with different activation functions. And then, the trained SAEs are transferred to target domain as feature extractors. The extracted features are fed into support vector machine (SVM) to construct SAE-SVM models, which are further trained by limited target training data and used for degradation recognition. Finally, ensemble strategy is proposed to calculate final results based on multiple predicted labels of individual SAE-SVMs. Run-to-failure test of ball screw is carried out to collect experimental data under different working conditions. The effectiveness of the proposed IEDT method is validated by rout transfer degradation recognition experiments of ball screw. Results indicate that the proposed IEDT method is superior to comparison methods in degradation recognition when there is only a small amount of labeled condition data.
机译:退化识别在提高机械操作的安全性方面起着重要作用。对于大多数现有的识别方法,使用大量与训练数据服从相同概率分布的标记训练数据是训练有效识别模型的重要先决条件。不幸的是,对于诸如滚珠丝杠之类的某些机器,很难集合所有标注的状态数据。由于在目标域中收集的标记训练数据不足,因此,建立可靠的识别模型面临着巨大的挑战。但是,通常可以使用在不同但相关的域(称为源域)中收集的大量标记数据,可以将其视为辅助训练数据,以帮助在目标域中建立更好的识别模型。受到将知识从源域转移到目标域的想法的启发,本文提出了一种新的智能方法,称为基于实例的集成深度转移学习网络(IEDT),以识别各种操作条件下的性能下降。 IEDT主要包括三个部分:首先,通过迭代地筛选出这些不相关的样本,来选择更适合目标域的源实例。其余的源实例用于协助标记不足的目标数据来训练具有不同激活功能的多个堆叠式自动编码器(SAE)。然后,将经过训练的SAE作为特征提取器转移到目标域。提取的特征被馈入支持向量机(SVM)以构建SAE-SVM模型,并通过有限的目标训练数据对其进行进一步训练,并将其用于降级识别。最后,提出了集成策略,基于单个SAE-SVM的多个预测标签来计算最终结果。进行了滚珠丝杠的失效测试,以收集不同工作条件下的实验数据。滚珠丝杠的溃败传递退化识别实验验证了所提IEDT方法的有效性。结果表明,在只有少量标记条件数据的情况下,提出的IEDT方法在退化识别方面优于比较方法。

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