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Wyszukujesz frazę "remaining useful life" wg kryterium: Temat


Wyświetlanie 1-2 z 2
Tytuł:
Remaining useful life prediction of bearings with different failure types based on multi-feature and deep convolution transfer learning
Autorzy:
Wu, Chenchen
Sun, Hongchun
Lin, Senmiao
Gao, Sheng
Powiązania:
https://bibliotekanauki.pl/articles/2038032.pdf
Data publikacji:
2021
Wydawca:
Polska Akademia Nauk. Polskie Naukowo-Techniczne Towarzystwo Eksploatacyjne PAN
Tematy:
rolling bearings
remaining useful life
RUL
convolutional neural networks
CNN
transfer learning
TL
Opis:
The accurate prediction of the remaining useful life (RUL) of rolling bearings is of immense importance in ensuring the safe and smooth operation of machinery and equipment. Although the prediction accuracy has been improved by a predictive model based on deep learning, it is still limited in engineering because lots of models use single-scale features to predict and assume that the degradation data of each bearing has a consistent distribution. In this paper, A deep convolutional migration network based on spatial pyramid pooling (SPP-CNNTL) is proposed to obtain higher prediction accuracy with self-extraction of multi-feature from the original vibrating signal. And to consider the differences of the data distribution in different failure types, transfer learning (TL) added with maximum mean difference (MMD) measurement function is used in the RUL prediction part. Finally, the data of IEEE PHM 2012 Challenge is used for verification, and the results show that the method in this paper has high prediction accuracy.
Źródło:
Eksploatacja i Niezawodność; 2021, 23, 4; 685-694
1507-2711
Pojawia się w:
Eksploatacja i Niezawodność
Dostawca treści:
Biblioteka Nauki
Artykuł
Tytuł:
Prediction of remaining useful life for lithium-ion battery with multiple health indicators
Autorzy:
Su, Chun
Chen, Hongjing
Wen, Zejun
Powiązania:
https://bibliotekanauki.pl/articles/1841757.pdf
Data publikacji:
2021
Wydawca:
Polska Akademia Nauk. Polskie Naukowo-Techniczne Towarzystwo Eksploatacyjne PAN
Tematy:
lithium-ion (Li-ion) battery
remaining useful life
RUL
health indicator
HI
generalized regression neural network (GRNN)
non-linear autoregressive (NAR)
Opis:
Lithium-ion (Li-ion) battery has become a primary energy form for a variety of engineering equipments. To ensure the equipments’ reliability, it is crucial to accurately predict Liion battery’s remaining capacity as well as its remaining useful life (RUL). In this study, we propose a novel method for Li-ion battery’s online RUL prediction, which is based on multiple health indicators (HIs) and can be derived from the battery’s historical operation data. Firstly, four types of indirect HIs are built according to the battery’s operation current, voltage and temperature data respectively. On this basis, a generalized regression neural network (GRNN) is presented to estimate the battery’s remaining capacity, and the nonlinear autoregressive approach (NAR) is applied to predict the battery’s RUL based on the estimated capacity value. Furthermore, to reduce the interference, twice wavelet denoising are performed with different thresholds. A case study is conducted with a NASA battery dataset to demonstrate the effectiveness of the method. The result shows that the proposed method can obtain Li-ion batteries’ RUL effectively.
Źródło:
Eksploatacja i Niezawodność; 2021, 23, 1; 176-183
1507-2711
Pojawia się w:
Eksploatacja i Niezawodność
Dostawca treści:
Biblioteka Nauki
Artykuł
    Wyświetlanie 1-2 z 2

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