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Long Short-Term Memory Network for Remaining Useful Life estimation

机译:长期内记忆网络剩余的使用寿命估算

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Remaining Useful Life (RUL) of a component or a system is defined as the length from the current time to the end of the useful life. Accurate RUL estimation plays a critical role in Prognostics and Health Management(PHM). Data driven approaches for RUL estimation use sensor data and operational data to estimate RUL. Traditional regression based approaches and recent Convolutional Neural Network (CNN) approach use features created from sliding windows to build models. However, sequence information is not fully considered in these approaches. Sequence learning models such as Hidden Markov Models (HMMs) and Recurrent Neural Networks (RNNs) have flaws when modeling sequence information. HMMs are limited to discrete hidden states and are known to have issues when modeling long-term dependencies in the data. RNNs also have issues with long-term dependencies. In this work, we propose a Long Short-Term Memory (LSTM) approach for RUL estimation, which can make full use of the sensor sequence information and expose hidden patterns within sensor data with multiple operating conditions, fault and degradation models. Extensive experiments using three widely adopted Prognostics and Health Management data sets show that LSTM for RUL estimation significantly outperforms traditional approaches for RUL estimation as well as Convolutional Neural Network (CNN).
机译:组件或系统的剩余使用寿命(RUL)被定义为从当前时间到使用寿命结束的长度。准确的RUL估计在预后和健康管理中发挥着关键作用(PHM)。 RUL估计的数据驱动方法使用传感器数据和操作数据来估算RUL。基于传统的回归方法和最近的卷积神经网络(CNN)方法使用从滑动窗口创建的功能来构建模型。但是,在这些方法中不完全考虑序列信息。序列学习模型,如隐藏的马尔可夫模型(HMMS)和经常性神经网络(RNNS)在建模序列信息时具有缺陷。 HMMS仅限于离散隐藏状态,并且已知在数据中建模长期依赖项时存在问题。 RNN还具有长期依赖项的问题。在这项工作中,我们提出了一个长期的短期内存(LSTM)方法,用于RUL估计,可以充分利用传感器序列信息,并在传感器数据内暴露具有多个操作条件,故障和劣化模型的传感器数据中的隐藏模式。采用三种广泛采用的预后和健康管理数据集的广泛实验表明,RUL估计的LSTM显着优于RUL估计以及卷积神经网络(CNN)的传统方法。

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