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采用人工神经网络和多元线性回归预测装有可控管道的小型风力涡轮机的发电功率和转子转速。

Prediction of power generation and rotor angular speed of a small wind turbine equipped to a controllable duct using artificial neural network and multiple linear regression.

机构信息

Tarbiat Modares University, Tehran, P.O. Box: 14115-111, Iran.

Tarbiat Modares University, Tehran, P.O. Box: 14115-111, Iran. Electronic address: http://

出版信息

Environ Res. 2021 May;196:110434. doi: 10.1016/j.envres.2020.110434. Epub 2020 Nov 6.

Abstract

Wind power is one of the most popular sources of renewable energies with an ideal extractable value that is limited to 0.593 known as the Betz-Joukowsky limit. As the generated power of wind machines is proportional to cubic wind speed, therefore it is logical that a small increment in wind speed will result in significant growth in generated power. Shrouding a wind turbine is an ordinary way to exceed the Betz limit, which accelerates the wind flow through the rotor plane. Several layouts of shrouds are developed by researchers. Recently an innovative controllable duct is developed by the authors of this work that can vary the shrouding angle, so its performance is different in each opening angle. As a wind tunnel investigation is heavily time-consuming and has a high cost, therefore just four different opening angles have been assessed. In this work, the performance of the turbine was predicted using multiple linear regression and an artificial neural network in a wide range of duct opening angles. For the turbine power generation and its rotor angular speed in different wind velocities and duct opening angles, regression and an ANN are suggested. The developed neural network model is found to possess better performance than the regression model for both turbine power curve and rotor speed estimation. This work revealed that in higher ranges of wind velocity, the turbine performance intensively will be a function of shrouding angle. This model can be used as a lookup table in controlling the turbines equipped with the proposed mechanism.

摘要

风力发电是最受欢迎的可再生能源之一,其理想的可提取值限制在 0.593,称为贝兹-儒科夫斯基极限。由于风力机产生的功率与风速的立方成正比,因此风速的微小增量将导致产生的功率显著增长是合乎逻辑的。为了超过贝兹极限,风力涡轮机的罩壳是一种常见的方法,它可以加速通过转子平面的风流。研究人员开发了几种罩壳的布局。最近,这项工作的作者开发了一种创新的可控管道,可以改变罩壳角度,因此在每个开口角度下的性能都不同。由于风洞研究非常耗时且成本高昂,因此仅评估了四个不同的开口角度。在这项工作中,使用多元线性回归和人工神经网络在广泛的管道开口角度范围内预测了涡轮机的性能。对于涡轮机在不同风速和管道开口角度下的发电功率及其转子角速度,建议使用回归和 ANN。对于涡轮机功率曲线和转子速度估计,所开发的神经网络模型的性能均优于回归模型。这项工作表明,在较高的风速范围内,涡轮机的性能将强烈依赖于罩壳角度。该模型可用于控制配备所提出机构的涡轮机的查询表。

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