利用元学习预测浮式生产储油轮的倾斜和俯仰运动

IF 4 2区 工程技术 Q1 ENGINEERING, CIVIL
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引用次数: 0

摘要

实时运动预测有助于保证浮式生产储油卸油船(FPSO)装置的运行稳定性。随着人工智能的快速发展,递归神经网络(RNN)正成为运动预测数值模拟的可行替代方案。在本研究中,模型识别元学习(MAML)与 RNNs 相结合,对船形 FPSO 的翻滚和俯仰运动进行了确定性预测。之所以采用这种方法,是因为 MAML 可以在不降低精度的情况下提高训练效率。数据来自在上海交通大学深水波浪盆地进行的比例模型试验。在引入 MAML 之前,我们验证了长短期记忆(LSTM)和门控递归单元(GRU)可以准确预测未来约 7.68 秒的波浪起伏。在可学习参数少于 LSTM 的情况下,GRU 的准确性略胜一筹。因此,本研究特别关注 GRU 与 MAML 的结合。MAML 的参数,包括导数阶数、步长、自适应梯度更新次数和任务批量大小,从准确性和训练效率方面进行了系统评估。在 MAML 的帮助下,GRU 对波浪和俯仰的训练效率显著提高,分别提高了约 65% 和 55%。同时,两者的预测误差也减少了约 10%。值得注意的是,MAML 的性能受来波方向和海况变化以及运动的随机性和时变性的影响很小。MAML 是一种强大的工具,可使 RNN 实现 FPSO 运动的实时预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting heave and pitch motions of an FPSO using meta-learning

Real-time motion prediction is helpful in guaranteeing the operation stability of a Floating Production Storage Offloading (FPSO) unit. Recurrent neural networks (RNNs) are becoming feasible alternatives to numerical simulations for motion prediction as artificial intelligence develops rapidly. In this study, model-agnostic meta-learning (MAML) is combined with RNNs to deterministically predict the heave and pitch motions of a ship-shaped FPSO. This approach is motivated by the fact that MAML improves training efficiency without losing accuracy. The data came from a scaled model test conducted at Shanghai Jiao Tong University’s deepwater wave basin. Before introducing MAML, we verified that long short-term memory (LSTM) and gated recurrent unit (GRU) could accurately predict the heave and pitch of about 7.68 s into the future. With fewer learnable parameters than LSTM, GRU demonstrates slightly better accuracy. Therefore, this study focuses particularly on the combination of GRU and MAML. The parameters of MAML, including order of derivative, step size, number of adaption gradient updates, and batch size of the tasks, are evaluated systemically in terms of accuracy and training efficiency. With the assistance of MAML, GRU’s training efficiency for heave and pitch has significantly improved, increasing by approximately 65% and 55%, respectively. Meanwhile, the prediction error for both has decreased by about 10%. Notably, MAML’s performance is minimally affected by variations in incoming wave direction and sea state, as well as the randomness and temporal variability of the motion. MAML is a powerful tool that enables RNNs to achieve real-time prediction of FPSO motion.

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来源期刊
Marine Structures
Marine Structures 工程技术-工程:海洋
CiteScore
8.70
自引率
7.70%
发文量
157
审稿时长
6.4 months
期刊介绍: This journal aims to provide a medium for presentation and discussion of the latest developments in research, design, fabrication and in-service experience relating to marine structures, i.e., all structures of steel, concrete, light alloy or composite construction having an interface with the sea, including ships, fixed and mobile offshore platforms, submarine and submersibles, pipelines, subsea systems for shallow and deep ocean operations and coastal structures such as piers.
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