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Prediction of Intake Vortex Risk by Nearest Neighbors Modeling

机译:最近邻模型对进气涡风险的预测

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摘要

Vortex formation at intakes can cause damage, clogging, reduced flow efficiency, and even loss of life. For practical prediction of vortex risk, engineers often compare expected design parameters with published data by using parameter proximity to evaluate the relative risk of vortex formation. Unfortunately, this procedure is ill-defined, and the resulting risk estimates are highly subjective. In response, a formal equivalent of the data proximity procedure was developed by implementing the nearest neighbors algorithm on available experimental and field data. This database was partitioned and the machine learning parameters adjusted to obtain a stochastic model with maximum predictive accuracy. Unlike the flow parameters and submergence, the approach geometry was not found to be a significant factor in the model, although this may be attributable to data noise and range of tested values. The final model, which excluded the channel approach geometry, fit all vertical intake vortex formation data to within 0.1 % error and perfectly fit the horizontal intake data. Probability charts generated from the model show regions of vortex formation and problems more numerous and larger on average than regions of low vortex probability, thus validating consideration of potential vortex formation risk for conservative intake design.
机译:进气口形成涡流会导致损坏,堵塞,流量效率降低,甚至造成生命损失。为了实际预测涡旋风险,工程师通常通过使用参数接近度来评估涡旋形成的相对风险,从而将预期的设计参数与发布的数据进行比较。不幸的是,该程序定义不明确,因此得出的风险估计值非常主观。作为响应,通过在可用的实验数据和现场数据上实施最近邻算法,开发了数据近似程序的形式等效项。对该数据库进行分区,并调整机器学习参数以获得具有最大预测准确性的随机模型。与流量参数和淹没不同,进近几何形状不是模型中的重要因素,尽管这可能归因于数据噪声和测试值范围。最终模型排除了通道进场几何形状,将所有垂直进气涡流形成数据拟合到0.1%的误差范围内,并完美拟合水平进气数据。从模型生成的概率图显示出涡旋形成的区域和问题的数量比低涡旋概率的区域平均更多且更大,因此可以验证保守进气设计中潜在涡旋形成风险的考虑。

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