论文标题
通过耦合线性回归和深度卷积的复发单元,对流线型堰的精确排放系数预测
Accurate Discharge Coefficient Prediction of Streamlined Weirs by Coupling Linear Regression and Deep Convolutional Gated Recurrent Unit
论文作者
论文摘要
流线型的堰是一种自然风格的堰类型,在液压工程师中引起了极大的关注,这主要是由于其既定性能具有高排放系数。计算流体动力学(CFD)被认为是预测排放系数的强大工具。为了绕过基于CFD的评估的计算成本,本研究提出了数据驱动的建模技术,作为CFD仿真的替代方法,以根据实验数据集预测放电系数。为此,在使用K折叠交叉验证技术分解数据集后,进行了经典和混合机器学习深度学习(ML DL)算法的性能评估。在ML技术中,研究了线性回归(LR)随机森林(RF)支持向量机(SVM)K-Nearest邻居(KNN)和决策树(DT)算法。在DL的背景下,使用不同的误差指标比较了长期短期记忆(LSTM)卷积神经网络(CNN)和门控复发单元(GRU)及其混合形式,例如LSTM GRU,CNN LSTM和CNN GRU技术。发现所提出的三层层次DL算法由卷积层和两个随后的GRU级别组成,这也与LR方法杂交,导致误差指标较低。本文为简化的堰的数据驱动建模铺平了道路。
Streamlined weirs which are a nature-inspired type of weir have gained tremendous attention among hydraulic engineers, mainly owing to their established performance with high discharge coefficients. Computational fluid dynamics (CFD) is considered as a robust tool to predict the discharge coefficient. To bypass the computational cost of CFD-based assessment, the present study proposes data-driven modeling techniques, as an alternative to CFD simulation, to predict the discharge coefficient based on an experimental dataset. To this end, after splitting the dataset using a k fold cross validation technique, the performance assessment of classical and hybrid machine learning deep learning (ML DL) algorithms is undertaken. Among ML techniques linear regression (LR) random forest (RF) support vector machine (SVM) k-nearest neighbor (KNN) and decision tree (DT) algorithms are studied. In the context of DL, long short-term memory (LSTM) convolutional neural network (CNN) and gated recurrent unit (GRU) and their hybrid forms such as LSTM GRU, CNN LSTM and CNN GRU techniques, are compared using different error metrics. It is found that the proposed three layer hierarchical DL algorithm consisting of a convolutional layer coupled with two subsequent GRU levels, which is also hybridized with the LR method, leads to lower error metrics. This paper paves the way for data-driven modeling of streamlined weirs.