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首页> 外文期刊>Marine Georesources & Geotechnology >Optimization design of bionic grousers for the crawled mineral collector based on the deep-sea sediment
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Optimization design of bionic grousers for the crawled mineral collector based on the deep-sea sediment

机译:基于深海沉积物的爬行矿物收集器的仿生细胞优化设计

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Due to the low shear strength of deep-sea sediment, crawled mineral collector is easily slips in the deep-sea mining process, therefore, high-traction bionic grouser is needed to be studied to improve the working efficiency. Based on the rate-dependent characteristics of deep-sea sediment, a rate-dependent extended Drucker-Prager material constitutive model is used to define the deep-sea sediment. The Arbitrary Lagrange-Euler finite element (LEA-FE) was used to simulate the cutting process of different bionic grousers at different speeds. By comparing the simulation of different grousers, it was found that the maximum traction of grouser is related to the grouser parameters (distance L from the top to the curvature change point and curvature radius R). By analyzing the traction characteristics of different bionic grousers, the binary quadratic regression equation between maximum traction and bionic grouser parameters was established and the best bionic grouser parameters were obtained by the optimization algorithm. Based on the rate-dependent properties of deep-sea sediment, the traction characteristics at different speeds were analyzed and the relationship between maximum traction and speeds was established, the best bionic grouser walking speed was obtained, which can provide the theoretical basis for the crawled mineral collector.
机译:由于深海沉积物的剪切强度低,爬行的矿物收集器很容易在深海采矿过程中滑动,因此,需要研究高牵引仿生牢固胆固度以提高工作效率。基于深海沉积物的速率依赖性特性,使用速率依赖的延伸滴爪 - 普拉格材料本构模型来定义深海沉积物。采用任意拉格朗日 - 欧拉有限元(LEA-FE)以不同速度模拟不同仿生群的切割过程。通过比较不同的压紧的模拟,发现加鼠的最大牵引力与加鼠参数(从顶部到曲率变化点和曲率半径R)有关。通过分析不同仿生枢船的牵引特性,建立了最大牵引力和仿生细胞参数之间的二元二元回归方程,优化算法获得了最佳的仿生窖参数。基于深海沉积物的速率依赖性,分析了不同速度的牵引特性,并建立了最大牵引力和速度之间的关系,获得了最佳的仿生粗跑速度,可以为爬行提供理论依据矿物收集器。

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