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Global structural optimization considering expected consequences of failure and using ANN surrogates

机译:考虑故障预期后果并使用ANN替代方案的全局结构优化

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摘要

The literature is filled with structural optimization articles which claim to minimize costs but which disregard the costs of failure. Due to uncertainties, minimum cost can only be achieved by considering expected consequences of failure. This article discusses challenges in solving real structural optimization problems, taking into account expected consequences of failure. The solution developed herein combines non-linear FE analysis (by positional FEM), structural reliability analysis, Artificial Neural Networks (used as surrogates for objective function) and a hybrid Particle Swarm Optimization algorithm, which efficiently solves for the global optimum. Optimization of a steel-frame transmission line tower is the application example.
机译:文献中充斥着结构优化文章,这些文章声称可以将成本降至最低,但忽略了故障成本。由于不确定性,只能通过考虑故障的预期后果来实现最低成本。本文讨论了解决实际结构优化问题时所遇到的挑战,同时考虑了预期的失效后果。本文开发的解决方案结合了非线性有限元分析(通过位置有限元法),结构可靠性分析,人工神经网络(用作目标函数的替代物)和混合粒子群优化算法,可以有效地求解全局最优值。应用实例是钢框架输电线路塔的优化。

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