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Functional Model of Monofin Swimming Technique Based on the Construction of Neural Networks

机译:基于神经网络构建的单鳍游泳技术功能模型

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摘要

In this study we employed an Artificial Neuronal Network to analyze the forces flexing the monofin in reaction to water resistance. In addition we selected and characterized key kinematic parameters of leg and monofin movements that define how to use a monofin efficiently and economically to achieve maximum swimming speed. By collecting the data recorded by strain gauges placed throughout the monofin, we were able to demonstrate the distribution of forces flexing the monofin in a single movement cycle. Kinematic and dynamic data were synchronized and used as entry variable to build up a Multi-Layer Perception Network. The horizontal velocity of the swimmer’s center of body mass was used as an output variable. The network response graphs indicated the criteria for achieving maximum swimming speed. Our results pointed out the need to intensify the angular velocity of thigh extension and dorsal flexion of the feet, to strengthen velocity of attack of the tail and to accelerate the attack of the distal part of the fin. The other two parameters which should be taken into account are dynamics of tail flexion change in downbeat and dynamics of the change in angle of attack in upbeat.Key points class="unordered" style="list-style-type:disc">The one-dimensional structure of the monofin swimming creates favorable conditions to study the swimming technique.Monofin swimming modeling allows unequivocal interpretation of the propulsion structure. This further permits to define the mechanisms, which determine efficient propulsion.This study is the very first one in which the Neuronal Networks was applied to construct a functional/applicable to practice model of monofin swimming.The objective suggestions lead to formulating the criteria of monofin swimming technique, which plays the crucial role in achieving maximal swimming speed.Theoretical and empirical (realistic) verification created by parameters indicate by neural networks, paves the way for creating suitable models, which could be employed for other sports.
机译:在这项研究中,我们采用了人工神经元网络来分析在抵抗水反应中弯曲单片的力。此外,我们选择并表征了腿部和单脚鳍运动的关键运动学参数,这些参数定义了如何有效而经济地使用单脚鳍以达到最大游泳速度。通过收集放置在整个单片上的应变仪记录的数据,我们能够证明在单个运动周期中弯曲单片的力的分布。运动学和动态数据被同步并用作输入变量以建立多层感知网络。游泳者体重中心的水平速度用作输出变量。网络响应图表示达到最大游泳速度的标准。我们的研究结果指出,有必要增强大腿伸展的角速度和脚的背屈,以增强尾巴的攻击速度,并加速对鳍远端的攻击。其他应考虑的两个参数是拍打时尾巴屈曲变化的动力和拍打时迎角变化的动力。关键点 class =“ unordered” style =“ list-style-type:disc” > <!-列表行为=无序前缀词=标记类型=光盘最大标签大小= 0-> 单鳍游泳的一维结构为研究游泳技术创造了有利条件。 莫诺芬游泳模型允许对推进结构进行明确的解释。 该研究是第一个应用神经元网络构建功能性/适用于单鳍游泳的实践模型的研究。 > 客观的建议导致制定单鳍游泳技术的准则,这对于实现最大游泳速度起着至关重要的作用。 由神经网络指示的参数创建的理论和经验(现实)验证,为创建合适的模型铺平了道路,该模型可用于其他运动。

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