首页> 外文会议>ASME International Conference on Ocean, Offshore and Arctic Engineering >DETECTION OF MOORING LINE FAILURE OF A SPREAD-MOORED FPSO: PART 2 — GLOBAL PERFORMANCE ANALYSIS USING MLTSIM
【24h】

DETECTION OF MOORING LINE FAILURE OF A SPREAD-MOORED FPSO: PART 2 — GLOBAL PERFORMANCE ANALYSIS USING MLTSIM

机译:扩展式FPSO的系泊线故障检测:第2部分-使用MLTSIM进行的全局性能分析

获取原文

摘要

This paper presents Part 2 in the development of an Artificial Neural Network (ANN) model for detection of mooring line failure of a spread-moored FPSO, global performance analysis used to generate the training and test data for the study. The development of an ANN model for detection of mooring line failure requires a comprehensive training data that is most practically available from the results of numerical simulations. Time domain analysis is necessary to capture the nonlinear behavior of a moored FPSO system and to represent the behavior of the physical system as accurate as possible. Given the wide range of sea-state conditions, of direction of the sea-states and of draft conditions of the FPSO, the number of time domain simulations is easily larger than J 00,000. Therefore, an accurate and numerically efficient tool is necessary for carrying this task. The FPSO hull motion analysis is performed using MLTSIM, a TechnipFMC in-house, nonlinear time domain floating body motion analysis program. MLTSIM captures various non-linear load and response effects such as mooring stiffness, riser loads, drag and drift forces, as well as various user defined loads. MLTSIM is a numerically efficient and fast time domain solver which can run on both high-performance computing (HPC) system and a single laptop. Numerical model of a FPSO system has been validated using the results of model tests. In addition, the results of numerical simulations, in terms of hull motions and mooring line tensions, are compared with the results of model tests and a commercial software OrcaFlex. This well-calibrated model is then used for generating the numerical data required for the development of the ANN model.
机译:本文介绍了人工神经网络(ANN)模型开发的第二部分,该模型用于检测散布式FPSO的系泊缆故障,用于生成研究的训练和测试数据的全局性能分析。用于检测系泊缆故障的ANN模型的开发需要综合的训练数据,而这些训练数据可以从数值模拟的结果中最实际地获得。时域分析对于捕获停泊的FPSO系统的非线性行为并尽可能准确地表示物理系统的行为是必要的。考虑到广泛的海况条件,海况方向和FPSO的吃水条件,时域模拟的数量很容易大于J 00,000。因此,需要精确且数字高效的工具来执行此任务。 FPSO船体运动分析是使用MLTSIM(TechnipFMC内部的非线性时域浮体运动分析程序)进行的。 MLTSIM捕获各种非线性负载和响应效果,例如系泊刚度,立管负载,阻力和漂移力以及各种用户定义的负载。 MLTSIM是一种数字高效且快速的时域求解器,可以在高性能计算(HPC)系统和单个笔记本电脑上运行。 FPSO系统的数值模型已经使用模型测试的结果进行了验证。此外,将在船体运动和系泊缆索张力方面的数值模拟结果与模​​型测试和商业软件OrcaFlex的结果进行了比较。然后将这个经过良好校准的模型用于生成开发ANN模型所需的数值数据。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号