论文标题
建模风力涡轮机的性能和与机器学习的唤醒相互作用
Modeling Wind Turbine Performance and Wake Interactions with Machine Learning
论文作者
论文摘要
对在陆上风电场收集的SCADA和气象数据进行了不同的机器学习(ML)模型,然后根据预测风速,湍流强度以及在涡轮机和风电场水平上的电源捕获的忠诚度和准确性进行评估,以在不同的风能和大气条件下进行评估。用于数据质量控制和预处理的ML方法应用于正在研究的数据集中,发现超过了标准统计方法。由线性插值模型,高斯工艺,深神经网络(DNN)和支持向量机组成的混合模型,与DNN滤镜配对,可实现高精度,以建模风力涡轮机功率捕获。由于风场在风电场上的演变以及与操作涡轮机相关的效果,开发的风速和湍流强度($ Ti $)的修改也使用DNN型号捕获。因此,使用模型来预测功率捕获的模型来实现涡轮级建模,同时通过组合预测风速的模型和从自由式条件的每个涡轮机位置与预测功率捕获的模型相结合,可以实现农场级建模。结合这些模型提供了与预期的功率捕获性能一致的结果,并持有对风电场建模和诊断的未来努力的希望。尽管训练ML模型在计算上的昂贵,但使用训练有素的模型在典型的现代笔记本电脑上仅需几秒钟,并且总计算成本仍然低于其他可用的中心模拟方法。
Different machine learning (ML) models are trained on SCADA and meteorological data collected at an onshore wind farm and then assessed in terms of fidelity and accuracy for predictions of wind speed, turbulence intensity, and power capture at the turbine and wind farm levels for different wind and atmospheric conditions. ML methods for data quality control and pre-processing are applied to the data set under investigation and found to outperform standard statistical methods. A hybrid model, comprised of a linear interpolation model, Gaussian process, deep neural network (DNN), and support vector machine, paired with a DNN filter, is found to achieve high accuracy for modeling wind turbine power capture. Modifications of the incoming freestream wind speed and turbulence intensity, $TI$, due to the evolution of the wind field over the wind farm and effects associated with operating turbines are also captured using DNN models. Thus, turbine-level modeling is achieved using models for predicting power capture while farm-level modeling is achieved by combining models predicting wind speed and $TI$ at each turbine location from freestream conditions with models predicting power capture. Combining these models provides results consistent with expected power capture performance and holds promise for future endeavors in wind farm modeling and diagnostics. Though training ML models is computationally expensive, using the trained models to simulate the entire wind farm takes only a few seconds on a typical modern laptop computer, and the total computational cost is still lower than other available mid-fidelity simulation approaches.