翼身混合水下滑翔机形状传递优化

Weixi Chen, Huachao Dong, Peng Wang, Xiaozuo Liu
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摘要

混合翼体水下滑翔机是一种新型的水下航行器,在自然资源勘探中取得了巨大的成功。与常规鱼雷外形相比,BWBUG外形具有更高的升阻比(LDR),因此其外形设计成为近年来海洋工程的研究热点。值得注意的是,传统的设计过程假设没有先验知识,从头开始。然而,由于问题很少孤立存在,解决传统滑翔机的形状问题可能会提供有用的信息,但设计空间的差异阻碍了信息的传递。本文提出了一种滑翔机形状的异构迁移优化方法,该方法由仿真、图像处理、流形学习和进化算法四部分组成。模拟的目标是创造压力和速度云。流形学习将使用来自云地图的信息来创建低维特征空间。在低维空间中映射的信息将用于帮助进化算法寻找最优解。对BWBUG形状优化问题进行了验证,结果表明,从不同但相关的问题域中学习到的知识对新设计有潜在的帮助。
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Blended-wing-body underwater glider shape transfer optimization
The blended-wing-body underwater glider (BWBUG) is a new type of underwater vehicle that has been applied in natural resource exploration with great success. Compared with conventional torpedo shapes, BWBUG's shape has a higher lift-to-drag ratio (LDR), so its shape design has become a research focus of ocean engineering in recent years. It is noteworthy that the traditional design process assumes no prior knowledge and starts from scratch. However, since problems rarely exist in isolation, solving the shape problem of a traditional glider may provide useful information, but the disparity in design space impedes information transmission. This paper presents a heterogeneous transfer optimization method for glider shape, which consists of four parts: simulation, image processing, manifold learning, and the evolution algorithm. The simulation's goal is to create pressure and velocity clouds. Manifold learning will use the information from cloud maps to create a low-dimensional feature space. The information mapped in low-dimensional space will be used to assist evolutionary algorithms in searching for optimal solutions. The proposed method was tested for the shape optimization problem of a BWBUG, and the results show that knowledge learned from different but related problem domains is potentially beneficial to the new design.
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