论文标题
近海风力涡轮载荷的概率替代建模,带有锁链的高斯工艺
Probabilistic surrogate modeling of offshore wind-turbine loads with chained Gaussian processes
论文作者
论文摘要
基于链式高斯工艺的概念,异质的高斯过程回归用于构建替代物,以预测离岸风力涡轮机上特定地点的负载。流入湍流和不规则波的随机性导致负载响应最能表示为随机变量而不是确定性值。此外,这些随机来源对负载的影响很大程度上取决于平均环境条件 - 例如,在低平均风速下,流入湍流的载荷可变性要比高风速下的变化少得多。从统计上讲,这被称为异质性。确定性和大多数随机替代物并未解释异质噪声,从而对结构响应产生了不完整且潜在的误导图片。在本文中,我们借鉴了统计推断的最新进步,以在嘈杂的数据库上训练异质的替代模型,以预测响应的条件PDF。该模型通过IEA-10MW-RWT的10分钟载荷统计数据进行通知,但均受到空气和流体动力载荷的约束,并使用OpenFast模拟。根据标准高斯过程回归评估其性能。在这两个模型中,预测的平均值都是相似的,但是异质的替代物近似响应的较大差异。
Heteroscedastic Gaussian process regression, based on the concept of chained Gaussian processes, is used to build surrogates to predict site-specific loads on an offshore wind turbine. Stochasticity in the inflow turbulence and irregular waves results in load responses that are best represented as random variables rather than deterministic values. Moreover, the effect of these stochastic sources on the loads depends strongly on the mean environmental conditions -- for instance, at low mean wind speeds, inflow turbulence produces much less variability in loads than at high wind speeds. Statistically, this is known as heteroscedasticity. Deterministic and most stochastic surrogates do not account for the heteroscedastic noise, giving an incomplete and potentially misleading picture of the structural response. In this paper, we draw on the recent advancements in statistical inference to train a heteroscedastic surrogate model on a noisy database to predict the conditional pdf of the response. The model is informed via 10-minute load statistics of the IEA-10MW-RWT subject to both aero- and hydrodynamic loads, simulated with OpenFAST. Its performance is assessed against the standard Gaussian process regression. The predicted mean is similar in both models, but the heteroscedastic surrogate approximates the large-scale variance of the responses significantly better.