Prediction Method for Aging Life of Rubber O-Rings Based on GRU-LSTM Neural Network
Rao Zheng,
Lijing Liu,
Shuangxi Li
et al.
Abstract:This paper proposes a prediction model for rubber aging life based on the GRU-LSTM neural network to address the issue of sealing failure caused by material aging of rubber O-rings in the petrochemical industry. The model aims to overcome the limits of existing methods, which have low prediction accuracy and poor stability. In this study, we conducted rubber aging experiments to get data on rubber compression set at different temperatures. After preprocessing the data, we experimentally verified and compared t… Show more
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