论文标题
拓扑优化的AI辅助设计方法,没有预先优化的培训数据
An AI-Assisted Design Method for Topology Optimization Without Pre-Optimized Training Data
论文作者
论文摘要
在初始产品开发过程中,工程师广泛使用了拓扑优化,以获得第一个可能的几何设计。最新的是迭代计算,它需要时间和计算能力。一些新开发的方法使用人工智能来加速拓扑优化。这些需要常规的预选数据,因此取决于可用数据的质量和数量。本文提出了一种用于拓扑优化的AI辅助设计方法,该方法不需要预先优化的数据。设计由人工神经网络(预测因子)提供,基于边界条件和填充程度(材料填充的体积百分比)作为输入数据。在训练阶段,根据给定标准评估了基于随机输入数据产生的几何形状。这些评估的结果流入目标函数,该目标函数通过适应预测变量的参数来最小化。培训完成后,提出的AI辅助设计程序提供了与常规拓扑优化器产生的几何形状相似的几何形状,但需要这些算法所需的计算工作的一小部分。我们预计我们的论文将成为需要数据的基于AI的方法的起点,这很难计算或不可用。
Topology optimization is widely used by engineers during the initial product development process to get a first possible geometry design. The state-of-the-art is the iterative calculation, which requires both time and computational power. Some newly developed methods use artificial intelligence to accelerate the topology optimization. These require conventionally pre-optimized data and therefore are dependent on the quality and number of available data. This paper proposes an AI-assisted design method for topology optimization, which does not require pre-optimized data. The designs are provided by an artificial neural network, the predictor, on the basis of boundary conditions and degree of filling (the volume percentage filled by material) as input data. In the training phase, geometries generated on the basis of random input data are evaluated with respect to given criteria. The results of those evaluations flow into an objective function which is minimized by adapting the predictor's parameters. After the training is completed, the presented AI-assisted design procedure supplies geometries which are similar to the ones generated by conventional topology optimizers, but requires a small fraction of the computational effort required by those algorithms. We anticipate our paper to be a starting point for AI-based methods that requires data, that is hard to compute or not available.