利用径向基函数人工神经网络预测珊瑚南FLNG并排卸载可操作性

E. Auburtin, Thiago Miliante, Diego Lima
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引用次数: 3

摘要

Coral South浮式液化天然气(FLNG)装置旨在将其产品卸载到并排(SBS)配置的液化天然气运输船(LNGC)上,使用海洋装载臂(MLA)技术。使用这种方法,多个设计方面需要在工程早期阶段对大量环境条件进行精确的流体动力学模拟,包括风海和涌浪,FLNG系泊设备的尺寸,候选LNG船队的mla设计以及LNG卸载的可用性。复杂的现象,如多体流体动力耦合和液化天然气晃动在部分填充的储罐必须考虑,非线性靠泊特性需要时域模拟。然而,在现有的23年后发数据库中描述的所有环境条件的计算时间,以及在推进器辅助下获得的FLNG航向的所有可能性,对于多个LNGC和加载条件,与项目工程阶段时间框架不兼容,因此必须首先在适当规模的环境条件样本上进行模拟。创建一个数据库,该数据库可用于预测与任何环境相关的数据。所选择的环境条件样本必须满足计算时间的限制,同时保持足够的分辨率以保证可靠性。在其他项目中,从有限数量的模拟中得出的符合可操作性标准的时域量被用来通过插值来预测任何未知环境的行为。这种方法存在一些局限性,例如依赖于波实现(种子)的最大值的过拟合,这被视为噪声,并且不适合将结果推广到样本外的非模拟环境。本文介绍了在珊瑚南FLNG项目中使用的改进方法。采用径向基函数(RBF)人工神经网络(ANN)对影响SBS卸载可操作性的变量进行建模。人工神经网络从用k均值聚类算法定义的样本上进行的模拟结果中学习。对RBF进行了修改,以适应驱动参数的具体情况,其中一些是周期性的(波方向),其余是非周期性的。实现了种子相关最大值的适当平滑和对未知环境的精确估计(推广)。学习过程不需要大量的计算时间,并且需要较少的初步时域模拟。这种设计方法对项目工程阶段的计算进行了重大改进,但它也可以在海上应用,以帮助制定与每周预测的SBS LNG卸载作业相关的决策。当Coral South FLNG投入使用时,学习数据库可能会通过现场测量来完成,以进一步提高其准确性。该原则也可以推广到其他受环境条件限制的海上作业。
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Prediction of Coral South FLNG Side-by-Side Offloading Operability Using Radial Basis Function Artificial Neural Networks
Coral South Floating Liquefied Natural Gas (FLNG) unit is designed to offload its product to LNG Carriers (LNGC) moored in a Side-by-Side (SBS) configuration, using Marine Loading Arms (MLA) technology. With such a method, multiple design aspects require accurate hydrodynamic simulations at an early stage of engineering phase for a large number of environmental conditions, including wind sea and swell: sizing of FLNG mooring outfitting, design of the MLAs for the candidate LNGC fleet and availability of LNG offloading. Complex phenomena like multi-body hydrodynamic coupling and LNG sloshing in partially filled tanks must be accounted for, and non-linear berthing characteristics require time-domain simulations. However the computing time for all the environmental conditions described in the available 23-year hindcast databases combined with all the possibilities of FLNG heading obtained with thruster assistance, for multiple LNGC and loading conditions, is not compatible with the project engineering phase timeframe, so the simulations must be first performed on a suitable-size sample of environmental conditions, creating a database which can then be used for predicting the data related to any environment. The selected sample of environmental conditions must meet the constraints of computing time while keeping a sufficient resolution to be reliable. In other projects, the time-domain quantities subject to operability criteria, derived from this limited number of simulations, were used to predict the behavior for any unknown environment by interpolation. This approach presented some limitations like the overfitting of maxima dependent on the wave realization (seed), which is seen as a noise, and was not best suited for generalizing the results to non-simulated environments out of the sample. In this paper, the improved methodology used for the Coral South FLNG project is presented. A Radial Basis Function (RBF) Artificial Neural Network (ANN) is used to model the variables impacting the SBS offloading operability. The ANN learns from the results of simulations performed on a sample defined with a K-means clustering algorithm. The RBF is modified to be adapted to the specifics of the driving parameters, of which some are periodic (wave direction) and the rest non-periodic. A proper smoothing of seed-dependent maxima and accurate estimations for unknown environments (generalizations) are achieved. The learning process does not require significant computing time and fewer preliminary time-domain simulations are needed. This design methodology represents a significant improvement for the calculations performed during the project's engineering phase, but it may also be applied later once offshore, to assist in decision making relative to the weekly forecasted SBS LNG offloading operations. When Coral South FLNG operates, the learning database may be completed with on-site measurements to further improve its accuracy. The principle may also be extended to other offshore operations constrained by environmental conditions.
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