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Weight reduction of aluminum disc wheels under fatigue constraints using a sequential neural network approximation method

机译:疲劳约束下铝盘车轮的减重采用顺序神经网络逼近方法

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摘要

This paper describes a weight reduction problem of aluminum disc wheels under cornering fatigue constraints. It is a special structural optimization problem because of the existence of the implicit fatigue constraint. A sequential neural network approximation method is presented to solve this type of discrete-variable engineering optimization problems. First a back-propagation neural network is trained to simulate the feasible domain formed by the implicit constraints using just a few training data. A search algorithm then searches for the "optimal point" in the feasible domain simulated by the neural network. This new design point is checked against the true implicit constraints to see whether it is feasible, and the new training data is then added to the training set. This process continues in an iterative manner until we get the same design point repeatedly and no new training point is generated. In each iteration, only one evaluation of the implicit constraints is needed to see whether the current design point is feasible. No precise function value or sensitivity calculation is required.
机译:本文描述了在转弯疲劳约束下铝制盘式车轮的减重问题。由于存在隐式疲劳约束,这是一个特殊的结构优化问题。提出了一种顺序神经网络逼近方法来解决这类离散变量工程优化问题。首先,仅使用一些训练数据对反向传播神经网络进行训练,以模拟由隐式约束形成的可行域。然后,搜索算法在神经网络模拟的可行域中搜索“最佳点”。针对真正的隐式约束检查该新设计点,以查看其是否可行,然后将新训练数据添加到训练集中。此过程以迭代方式继续进行,直到我们反复获得相同的设计点并且没有生成新的训练点为止。在每次迭代中,只需要对隐式约束进行一次评估即可了解当前的设计点是否可行。不需要精确的功能值或灵敏度计算。

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