Modelling of an AUV with Voith-Schneider vector thruster

Rajat Mishra, M. Chitre
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引用次数: 3

Abstract

First principles physics models are generally used in system identification of Autonomous Underwater Vehicles (AUVs). These models, through different parameters, capture the effects of hydrodynamics, inertial weight and other important characteristics. Due to the large number of parameters, which can number to hundreds, it is difficult to estimate such models. Moreover, AUV capabilities like thrust vectoring increases the non-linearity of the model. We suggest solving the problem of modelling AUVs with the help of a rectifier activated multilayer perceptron, making use of their motion data and control inputs. We also provide details on the optimisation of our model and compare its performance with that of a standard system identification technique. Although the rectifier neural network's performance was tested for a typical streamlined AUV with a Voith-Schneider thruster, the model presented here is general and can be easily extended to other systems.
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带Voith-Schneider矢量推进器的AUV建模
在自主水下航行器(auv)系统识别中,一般采用第一性原理物理模型。这些模型,通过不同的参数,捕捉流体力学,惯性重量和其他重要特性的影响。由于参数数量很大,可以达到数百个,因此很难估计这种模型。此外,AUV的推力矢量等功能增加了模型的非线性。我们建议利用整流器激活的多层感知器,利用它们的运动数据和控制输入,来解决auv建模问题。我们还提供了模型优化的详细信息,并将其性能与标准系统识别技术进行了比较。虽然整流神经网络的性能是在一个典型的流线型水下航行器上测试的,但这里提出的模型是通用的,可以很容易地扩展到其他系统。
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