Improved Monitoring of Wind Speed Using 3D Printing and Data-Driven Deep Learning Model for Wind Power Systems

IF 4.3 3区 工程技术 Q2 ENERGY & FUELS
Sanghun Shin, Sangyeun Park, Hongyun So
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Abstract

This study presents a novel method for airflow rate (i.e., wind speed) sensing using a three-dimensional (3D) printing-assisted flow sensor and a deep neural network (DNN). The 3D printing of thermoplastic polyurethane can realize multisensing devices for different flow rate values. Herein, the 3D-printed flow sensor with an actuating membrane is used to simultaneously measure two electrical parameters (i.e., capacitance and resistance) depending on the airflow rate. Subsequently, a data-driven DNN model is introduced and trained using 6,965 experimental data points, including input (resistance and capacitance) and output (airflow rate) data with and without external interferences during capacitance measurements. The mean absolute error (MAE), mean squared error (MSE), and root mean squared logarithmic error (RMSLE) measured using predicted flow rate values by the DNN model with multiple inputs are 0.59, 0.7, and 0.18 for continuous test dataset without interference and 1.16, 3.95, and 0.73 for test dataset with interference, respectively. Compared to the prediction results using single-input cases, the average MAE, MSE, and RMSLE significantly decrease by 70.37%, 88.74%, and 72.26% for test datasets without interference and 51.91%, 53.01%, and 12.20% with interference, respectively. The results suggest a cost-effective and accurate sensing technology for wind speed monitoring in wind power systems.

Abstract Image

利用三维打印和数据驱动的深度学习模型改进风力发电系统的风速监测
本研究提出了一种利用三维(3D)打印辅助流量传感器和深度神经网络(DNN)进行气流速率(即风速)传感的新方法。热塑性聚氨酯的三维打印可以实现不同流速值的多传感设备。在这里,三维打印流量传感器带有一个致动膜,可根据气流速率同时测量两个电参数(即电容和电阻)。随后,引入了数据驱动 DNN 模型,并使用 6965 个实验数据点进行了训练,包括电容测量期间有无外部干扰的输入(电阻和电容)和输出(气流速率)数据。对于无干扰的连续测试数据集和有干扰的测试数据集,使用多输入 DNN 模型预测的流速值测出的平均绝对误差 (MAE)、平均平方误差 (MSE) 和均方根对数误差 (RMSLE) 分别为 0.59、0.7 和 0.18;而使用多输入 DNN 模型预测的流速值测出的平均绝对误差 (MAE)、平均平方误差 (MSE) 和均方根对数误差 (RMSLE) 分别为 1.16、3.95 和 0.73。与使用单输入情况的预测结果相比,无干扰测试数据集的平均 MAE、MSE 和 RMSLE 分别显著降低了 70.37%、88.74% 和 72.26%,有干扰测试数据集的平均 MAE、MSE 和 RMSLE 分别显著降低了 51.91%、53.01% 和 12.20%。这些结果为风力发电系统中的风速监测提供了一种经济、准确的传感技术。
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来源期刊
International Journal of Energy Research
International Journal of Energy Research 工程技术-核科学技术
CiteScore
9.80
自引率
8.70%
发文量
1170
审稿时长
3.1 months
期刊介绍: The International Journal of Energy Research (IJER) is dedicated to providing a multidisciplinary, unique platform for researchers, scientists, engineers, technology developers, planners, and policy makers to present their research results and findings in a compelling manner on novel energy systems and applications. IJER covers the entire spectrum of energy from production to conversion, conservation, management, systems, technologies, etc. We encourage papers submissions aiming at better efficiency, cost improvements, more effective resource use, improved design and analysis, reduced environmental impact, and hence leading to better sustainability. IJER is concerned with the development and exploitation of both advanced traditional and new energy sources, systems, technologies and applications. Interdisciplinary subjects in the area of novel energy systems and applications are also encouraged. High-quality research papers are solicited in, but are not limited to, the following areas with innovative and novel contents: -Biofuels and alternatives -Carbon capturing and storage technologies -Clean coal technologies -Energy conversion, conservation and management -Energy storage -Energy systems -Hybrid/combined/integrated energy systems for multi-generation -Hydrogen energy and fuel cells -Hydrogen production technologies -Micro- and nano-energy systems and technologies -Nuclear energy -Renewable energies (e.g. geothermal, solar, wind, hydro, tidal, wave, biomass) -Smart energy system
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