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Noisy parallel hybrid model of NBGRU and NCNN architectures for remaining useful life estimation

机译:NBRU和NCNN架构嘈杂的并行混合模型,剩余使用寿命估算

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摘要

Accurate and robust estimation of Remaining Useful life (RUL) is of paramount importance for development of advanced smart and predictive maintenance strategies. To this aim, the paper proposes a new hybrid framework, referred to as the NPBGRU, developed by integration of three fully noisy deep learning architectures. Noisy CNN (NCNN) and Noisy Bi-directional GRU (NBGRU) paths are designed in parallel and their concatenated output is fed into the Noisy fusion center (NFC). Adopting the proposed noisy layers enhances the robustness and generalization behavior of the proposed model. The proposed NPBGRU framework is validated using NASA's C-MAPSS dataset, illustrating state-of-the-art results.
机译:对剩余使用寿命(RUL)的准确和稳健估计对于高级智能和预测维护策略的发展至关重要。为此目的,本文提出了一种新的混合框架,通过整合三个完全嘈杂的深度学习架构而开发的新的混合框架。嘈杂的CNN(NCNN)和嘈杂的双向GRU(NBGRU)路径并联设计,并将其连接输出送入嘈杂的融合中心(NFC)。采用所提出的嘈杂层增强了所提出的模型的鲁棒性和泛化行为。建议的NPBGRU框架使用NASA的C-MAPSS数据集进行了验证,说明了最先进的结果。

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