基于船舶运动的损伤位置双向长短期记忆预测

H. Son, Gi-yong Kim, H. Kang, Jin Choi, Dong-kon Lee, Sung Chul Shin
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引用次数: 0

摘要

海上事故的初始反应对减少事故的发生起着关键作用。因此,使用传感器、模拟和主动响应设备开发了各种决策支持系统。在这项研究中,我们开发了一种基于双向长短期记忆(BiLSTM)的船舶运动数据预测损伤位置的算法,这是一种递归神经网络。为了反映船舶的低频运动特征,取200个采集时间为100 s的时间序列数据作为输入值。升沉、横摇和俯仰被用作预测模型的特征。BiLSTM模型的f1得分为0.92;这比先前模型的f1得分0.90有所改善。此外,75个受损地点中有53个的f1得分在0.90以上。该模型以高精度预测损伤位置,允许快速初始反应,即使船舶没有洪水传感器。该模型可作为机载实时递进式洪水模拟器的高精度输入数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ship Motion-Based Prediction of Damage Locations Using Bidirectional Long Short-Term Memory
The initial response to a marine accident can play a key role to minimize the accident. Therefore, various decision support systems have been developed using sensors, simulations, and active response equipment. In this study, we developed an algorithm to predict damage locations using ship motion data with bidirectional long short-term memory (BiLSTM), a type of recurrent neural network. To reflect the low frequency ship motion characteristics, 200 time-series data collected for 100 s were considered as input values. Heave, roll, and pitch were used as features for the prediction model. The F1-score of the BiLSTM model was 0.92; this was an improvement over the F1-score of 0.90 of a prior model. Furthermore, 53 of 75 locations of damage had an F1-score above 0.90. The model predicted the damage location with high accuracy, allowing for a quick initial response even if the ship did not have flood sensors. The model can be used as input data with high accuracy for a real-time progressive flooding simulator on board.
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