2024
DOI: 10.1063/5.0184113
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Remaining useful life prediction framework of equipment based on improved golden jackal algorithm assisted-LSTM

Ronghua Ma,
Yongliang Yuan

Abstract: It provides a challenge for remaining useful life prediction due to the complexity of the engine degradation process. Therefore, this paper proposes an improved method for engine remaining useful life prediction with long and short memory neural networks (LSTM) and extraction of health indicators for measured parameters. In order to overcome the limitation of measured parameters, a second-order polynomial approach is implemented to construct novel virtual parameters based on the existing parameters and improve… Show more

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Cited by 2 publications
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