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SEAKEEPING ANALYSIS OF A TURRET-MOORED FPSO BY USING ARTIFICIAL NEURAL NETWORKS

机译:使用人工神经网络对炮塔系泊FPSO的海人分析

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Floating offshore structures, particularly floating oil production, storage and offloading systems (FPSOs) are still in great demand, both in small and large reservoirs, for deployment in deep water. The prediction of such vessels' responses to her environmental loading over her lifetime is now often undertaken using response-based design methodology, although the approach is still in its early stages of development. Determining the vessel's responses to hydrodynamic loads induced by long term sea environments is essential for implementing this approach effectively. However, it is often not practical to perform a complete simulation for every 3-hour period of environmental data being considered. Therefore, an Artificial Neural Networks (ANN) modelling technique has been developed for the prediction of FPSO's responses to arbitrary wind, wave and current loads that alleviates this problem. Comparison of results obtained from a conventional mathematical model with those of the ANN-based technique for the case of a 200,000 tdw tanker demonstrates that the approach can successfully predict the vessel's responses due to arbitrary loads.
机译:浮动海上结构,特别是浮动油生产,储存和卸载系统(FPSOS)仍然在小型和大型水库中的需求,用于深水中的部署。现在,预测这种血管对她的环境负荷对她的寿命的反应现在经常使用基于响应的设计方法进行的,尽管这种方法仍处于其早期发展的阶段。确定船舶对长期海环境引起的流体动力载荷的反应对于有效实施这种方法至关重要。然而,对于所考虑的每3小时环境数据来执行完整的模拟通常是不实际的。因此,已经开发了一种人工神经网络(ANN)建模技术,用于预测FPSO对任意风,波浪和电流负荷来缓解该问题的响应。从传统数学模型获得的结果比较与200,000个TDW油轮的基于安基技术的结果表明,该方法可以成功预测由于任意负载而导致的血管的响应。

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