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An optimized machine learning based moment-rotation analysis of steel pallet rack connections

机译:基于机器学习的钢托盘连接的力矩旋转分析

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The moment-rotation (M-theta) response of steel pallet rack (SPR) beam-to-column connections (BCCs) is naturally complex and predicted through repeated experimental investigations motivated by the variety in the geometry of commercially available beam end connectors (BECs). Past literature has shown that even finite element modeling (FEM) was somehow unable to fully capture the structural behavior of SPR BCCs in the plastic region. This study proposes an innovative Support vector machine (SVM)-Discrete Wavelet transform (DWT)-based optimized model for M-theta analysis of SPR BCCs. A data set of total thirty-two experiments on SPR BCCs was used to develop the model. The experimental investigations identified the most influential parameters affecting the M-theta response of SPR BCCs which are column thickness, beam depth, and depth of the BEC. Those parameters were optimized using Firefly algorithm and selected as input parameters. Reliability assessment of proposed predictive model was performed using root-mean-square error (RMSE), Pearson coefficient (r), and coefficient of determination 'r-square' (R-2). The findings of predictive model were juxtaposed with experimental outcomes and FEM results, available in the literature, and a close agreement was achieved. The R-2 value of 0.958 and 0.984 were achieved for moment and rotation predictions, respectively. Hence, the proposed SVM-DWT model can be efficiently used to forecast the optimum and reliable M-theta response of SPR BCCs and to minimize the need of repetitive testing.
机译:钢托盘架(SPR)光束柱连接(BCC)的时刻旋转(M-THEA)响应是自然复杂的,并通过商业上可获得的光束端连接器的几何形状中的各种反复实验研究预测(BECS )。过去的文献表明,即使有限元建模(FEM)也不知何时无法完全捕捉塑料区域中SPR BCC的结构行为。本研究提出了一种创新的支持向量机(SVM)-Discrete小波变换(DWT),用于SPCCS的M-Theta分析的基础优化模型。 SPCRBCCS总计三十二个实验的数据集用于开发模型。实验研究确定了影响SPCR BCC的M-THEA响应的最有影响力的参数,该参数是柱厚度,光束深度和BEC的深度。这些参数使用萤火虫算法进行了优化,并选择为输入参数。所提出的预测模型的可靠性评估使用根均方误差(RMSE),Pearson系数(R)和确定系数'R-Square'(R-2)进行。预测模型的结果与实验结果和有限元素的结果并置,在文献中提供,并实现了密切的协议。对于片刻和旋转预测,分别实现了0.958和0.984的R-2值。因此,所提出的SVM-DWT模型可以有效地用于预测SPR BCC的最佳和可靠的M-THEA响应,并最大限度地减少重复测试的需要。

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