Evaluation of Deep Learning Networks for Predicting Truss Topology Optimization Results

R. Gorguluarslan, Gorkem Can Ates
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Abstract

The applicability of artificial neural networks (ANNs) on the prediction of the structural optimization results of a truss structure is investigated. Two different ANN architectures are employed and the effect of using various optimizers and activation functions on their prediction performance is evaluated. Unlike the traditional machine learning network strategies where usually a physical response of the truss optimization (such as compliance, stress, etc.) is predicted, in this study, a new way of prediction is utilized for the truss-like structures; particularly predicting the optimized thickness values of the strut members by the ANNs. Thus, the input data used in these networks are the thickness values of the strut members at a certain initial iteration while the optimized thickness values are predicted as the outputs. A cantilever beam example is presented for the truss optimization to show the efficacy of the presented ANNs. The results indicate that using the thickness values at a certain initial iteration as inputs and final iteration thicknesses as outputs in ANNs are promising for the structural optimization prediction of the presented truss problem with the appropriate selection of the architecture, optimizer, activation function, and the input-output data formation.
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深度学习网络预测桁架拓扑优化结果的评价
研究了人工神经网络在桁架结构优化结果预测中的适用性。采用了两种不同的人工神经网络结构,并评估了使用各种优化器和激活函数对其预测性能的影响。与传统的机器学习网络策略预测桁架优化的物理响应(如柔度、应力等)不同,本研究采用了一种新的预测桁架结构的方法;特别是利用人工神经网络预测杆件的优化厚度值。因此,这些网络中使用的输入数据是某个初始迭代时的杆件厚度值,而预测的优化后的厚度值作为输出。最后以悬臂梁为例进行桁架优化,验证了人工神经网络的有效性。结果表明,在人工神经网络中以某一初始迭代时的厚度值作为输入,以最终迭代时的厚度作为输出,只要选择适当的结构、优化器、激活函数和输入输出数据形式,就有望对所提出的桁架问题进行结构优化预测。
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