一种基于神经图灵机的剩余使用寿命估计方法

Alex Falcon, Giovanni D'Agostino, G. Serra, G. Brajnik, C. Tasso
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引用次数: 1

摘要

机械设备剩余使用寿命的估算是预测与健康管理领域的重要问题之一。能够可靠地估计这些价值可以改进维护计划并减少与之相关的成本。鉴于高质量传感器的可用性,能够测量组件的几个方面,有可能收集大量数据,这些数据可用于调整精确的数据驱动模型。深度学习方法,特别是那些基于长短期记忆网络的方法,最近取得了很大的成果,因此似乎能够有效地处理这个问题。神经网络架构的最新进展,在几个不同的领域产生了显著的改进,包括使用外部存储器,允许模型存储推断的知识片段,以便以后访问和操作。为了进一步提高迄今为止获得的精度,本文提出了一种新的方法来解决剩余使用寿命估计问题,即赋予基于lstm的模型与基于内容的内存寻址系统交互的能力。为了证明该模型可获得的改进,我们使用NASA发布的基准数据集成功地使用它来估计涡轮风扇发动机的剩余使用寿命。最后,我们对文献中的几种方法进行了详尽的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural Turing Machine-based approach to Remaining Useful Life Estimation
Estimating the Remaining Useful Life of a mechanical device is one of the most important problems in the Prognostics and Health Management field. Being able to reliably estimate such value can lead to an improvement of the maintenance scheduling and a reduction of the costs associated with it. Given the availability of high quality sensors able to measure several aspects of the components, it is possible to gather a huge amount of data which can be used to tune precise data-driven models. Deep learning approaches, especially those based on Long-Short Term Memory networks, achieved great results recently and thus seem to be capable of effectively dealing with the problem. A recent advancement in neural network architectures, which yielded noticeable improvements in several different fields, consists in the usage of an external memory which allows the model to store inferred fragments of knowledge that can be later accessed and manipulated. To further improve the precision obtained thus far, in this paper we propose a novel way to address the Remaining Useful Life estimation problem by giving an LSTM-based model the ability to interact with a content-based memory addressing system. To demonstrate the improvements obtainable by this model, we successfully used it to estimate the remaining useful life of a turbofan engine using a benchmark dataset published by NASA. Finally, we present an exhaustive comparison to several approaches in the literature.
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