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A DATA MODEL FOR TURBULENCE ANALYSIS DOWNSTREAM OF AN OCEAN CURRENT TURBINE ROTOR FOR HYDROKINETIC POWER GENERATION

机译:用于水力发电的海洋电流涡轮机转子下游湍流分析数据模型

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Neural networks are derived to be used as closed-form representations of mean hydrokinetic turbine performance variables. These representations can be used to obtain estimates of turbine performance when the ambient turbulence characteristics, namely in-flow velocity and turbulence intensity, are given. The neural networks were developed using a detailed hydrodynamic code, which simulates performance of a rigidly mounted hydrokinetic turbine where only rotor rotation is allowed (1-DOF). By varying the in-flow velocity (U) of the water current between 0.4m/s and 2.6m/s with a step of 0.2m/s, as well as Turbulence Intensity (TI) between 5% and 20% with a step of 2.5%, a set of variables including the output shaft power, shaft torque, force on a single blade and drag force were obtained for each case. The obtained data sets were used to train appropriately sized, feed-forward (i.e. without recirculation) neural networks. Four neural networks obtained, one for each output variable of the hydrodynamic code. Each neural net constitutes a closed-form, explicit mathematical relationship (equation) generating estimates for the corresponding dependent variable it has been trained to approximate, when presented with specific values for the independent (input) variables current velocity, U, and turbulence intensity, TI. Four output (dependent) variables of interest of the hydrodynamic code are considered: shaft power, shaft torque, force on a single blade and drag. The dependent variables are actually time-averaged steady-state values derived from each hydrodynamic code run. The results of the neural networks are validated using the background theory, as well as the data generated by the hydrodynamic code. Error of less than 1% has been achieved between the neural net output and the hydrodynamics code data values suggesting that the neural networks and the equations are usable in place of the hydrodynamic code for estimating time-averaged loadings and power production.
机译:衍生神经网络以用作平均水力涡轮机性能变量的闭合形式表示。当给出时,这些表示可用于获得涡轮机性能的估计,即提供了环境湍流特性,即流量流速和湍流强度。使用详细的流体动力学代码开发了神经网络,其模拟了仅允许转子旋转(1-DOF)的刚性安装的水动力学涡轮机的性能。通过改变水流的流量速度(U)在0.4m / s和2.6m / s之间,步骤为0.2m / s,以及湍流强度(Ti)在5%至20%之间,步长为2.5%,为每种情况获得了一组包括输出轴功率,轴扭矩的变量,以及单个刀片上的力和拖曳力。所获得的数据集用于培训适当尺寸的馈电(即没有再循环)神经网络。获得四个神经网络,一个用于流体动力学代码的每个输出变量。每个神经网络构成闭合形式的,显式数学关系(方程)生成对应的依赖变量的估计,当呈现有独立(输入)变量当前速度,U和湍流强度的特定值时,它已经训练以近似,蒂。辅助流体动力学代码的兴趣的四个输出(依赖性)变量:轴功率,轴扭矩,在单个刀片上的力和拖动。从属变量实际上是从每个流体动力学代码运行导出的时间平均稳态值。使用背景理论验证神经网络的结果,以及由流体动力学代码产生的数据。在神经净输出和流体动力学代码数据值之间实现了小于1%的误差,表明神经网络和方程可以代替估计时间平均负载和电力产生的流体动力学代码。

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