船舶螺旋桨降噪研究:先进材料和创新几何设计

Zhaowen Zhang
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引用次数: 0

摘要

船舶螺旋桨的降噪技术是目前具有挑战性的方向之一,尽管已经取得了一些进展,但仍在继续研究和开发。本文阐述了常用的降噪方法,即几何结构优化和材料优化。几何结构优化涉及螺旋桨叶片数量、盘载荷比、倾斜角和叶片形状等方面。材料优化包括材料选择、表面涂层优化和螺旋桨管道设计。两种方法都提供了相应的优化方法。提出了一个新颖的创新研究方向,即利用机器学习和神经网络来优化螺旋桨参数。此外,采用圆周摩擦纳米发电机来感知螺旋桨轴承,并确定电信号与粗糙度和转速等因素之间的耦合关系。这种优化旨在通过优化螺旋桨参数来降低噪音。本文最后对中国目前的船舶螺旋桨降噪技术研究提出了见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on ship propeller noise reduction: Advanced materials and innovative geometric design
The noise reduction technology of ship propellers is currently one of the challenging directions, despite some progress having been made, continuous research and development are still underway. This paper elucidates commonly used noise reduction methods, namely geometric structure optimization and material optimization. Geometric structure optimization involves aspects such as the number of propeller blades, disk loading ratio, skew angle, and blade shape. Material optimization encompasses material selection, surface coating optimization, and propeller duct design. Corresponding optimization methods are provided for both approaches. A novel and innovative research direction is proposed, leveraging machine learning and neural networks to optimize propeller parameters. Additionally, employing a circumferential friction nanogenerator to sense propeller bearings and identify the coupling relationship between electrical signals and factors such as roughness and rotational speed. This optimization aims to reduce noise by optimizing propeller parameters. The paper concludes by offering insights for current research on ship propeller noise reduction technology in China.
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