In this study, we present and validate an ensemble-based Hankel Dynamic Mode Decomposition with control (HDMDc) for uncertainty-aware seakeeping predictions of a high-speed catamaran, namely the Delft 372 model. Experimental measurements (time histories) of wave elevation at the longitudinal center of gravity, heave, pitch, notional flight-deck velocity, notional bridge acceleration, and total resistance were collected from irregular wave basin tests on a 1:33.3 scale replica of the Delft 372 model under sea state 5 conditions at Fr = 0.425, and organized into training, validation, and test sets. The HDMDc algorithm constructs an equation-free linear reduced-order model of the seakeeping vessel by augmenting states and inputs with their time-lagged copies to capture nonlinear and memory effects. Two ensembling strategies, namely Bayesian HDMDc (BHDMDc), which samples hyperparameters considered stochastic variables with prior distribution to produce posterior mean forecasts with confidence intervals, and Frequentist HDMDc (FHDMDc), which aggregates multiple model obtained over data subsets, are compared in providing seakeeping prediction and uncertainty quantification. The FHDMDc approach is found to improve the accuracy of the predictions compared to the deterministic counterpart, also providing robust uncertainty estimation; whereas the application of BHDMDc to the present test case is not found beneficial in comparison to the deterministic model. FHDMDc-derived probability density functions for the motions closely match both experimental data and URANS results, demonstrating reliable and computationally efficient seakeeping prediction for design and operational support.
翻译:本研究提出并验证了一种基于集成的带控制Hankel动态模态分解方法,用于高速双体船(即Delft 372模型)的不确定性感知耐波性预测。实验测量数据(时间历程)包括纵向重心处的波高、升沉、纵摇、虚拟飞行甲板速度、虚拟舰桥加速度及总阻力,这些数据采集自Delft 372模型(缩尺比1:33.3)在Fr = 0.425、海况5条件下的不规则波池试验,并被划分为训练集、验证集和测试集。HDMDc算法通过将状态量和输入量与其时间滞后副本进行增广,以捕捉非线性和记忆效应,从而构建了一个无方程线性降阶耐波性船舶模型。研究比较了两种集成策略在提供耐波性预测和不确定性量化方面的表现:贝叶斯HDMDc将超参数视为具有先验分布的随机变量进行采样,以生成带有置信区间的后验均值预测;频率主义HDMDc则通过聚合在数据子集上获得的多个模型进行预测。研究发现,与确定性模型相比,FHDMDc方法提高了预测精度,同时提供了稳健的不确定性估计;而BHDMDc在当前测试案例中的应用相较于确定性模型并未显现优势。FHDMDc导出的运动概率密度函数与实验数据及URANS结果高度吻合,证明了该方法能为设计与运营支持提供可靠且计算高效的耐波性预测。