School of Electrical & Electronic Engineering, Yonsei University, 50 Yonsei-Ro Seodamun-Gu, Seoul 03722, Korea.
Sensors (Basel). 2020 Nov 19;20(22):6626. doi: 10.3390/s20226626.
This study prognoses the remaining useful life of a turbofan engine using a deep learning model, which is essential for the health management of an engine. The proposed deep learning model affords a significantly improved accuracy by organizing networks with a one-dimensional convolutional neural network, long short-term memory, and bidirectional long short-term memory. In particular, this paper investigates two practical and crucial issues in applying the deep learning model for system prognosis. The first is the requirement of numerous sensors for different components, i.e., the curse of dimensionality. Second, the deep neural network cannot identify the problematic component of the turbofan engine due to its "black box" property. This study thus employs dimensionality reduction and Shapley additive explanation (SHAP) techniques. Dimensionality reduction in the model reduces the complexity and prevents overfitting, while maintaining high accuracy. SHAP analyzes and visualizes the black box to identify the sensors. The experimental results demonstrate the high accuracy and efficiency of the proposed model with dimensionality reduction and show that SHAP enhances the explainability in a conventional deep learning model for system prognosis.
本研究使用深度学习模型预测涡扇发动机的剩余使用寿命,这对于发动机的健康管理至关重要。所提出的深度学习模型通过组织具有一维卷积神经网络、长短期记忆和双向长短期记忆的网络,提供了显著提高的准确性。特别是,本文研究了将深度学习模型应用于系统预测中两个实际且关键的问题。第一个问题是不同部件需要大量传感器,即维度灾难。其次,由于深度神经网络的“黑箱”特性,它无法识别涡扇发动机的有问题的部件。因此,本研究采用了降维和 Shapley 可加解释 (SHAP) 技术。模型中的降维降低了复杂性并防止了过拟合,同时保持了高精度。SHAP 分析和可视化黑箱以识别传感器。实验结果表明,提出的具有降维和 SHAP 的模型具有很高的准确性和效率,并表明 SHAP 增强了传统深度学习模型在系统预测中的可解释性。