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首页> 外文期刊>The Proceedings of the International Offshore and Polar Engineering Conference >Fast On-line Neuro-fuzzy Controller for Autonomous Underwater Vehicles
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Fast On-line Neuro-fuzzy Controller for Autonomous Underwater Vehicles

机译:自主水下航行器的快速在线神经模糊控制器

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This paper describes a fast on-line neuro-fuzzy controller for underwater robots of which the dynamics are highly nonlinear, coupled, and time-varying. The neuro-fuzzy controller is based on the Fuzzy Membership Function Neural Network (FMFNN) with varying learning rate. Even though FMFNN has advantages of fuzzy logic and neural networks, it is not so easy to decide initial rules for fuzzy inference part and learning rates for neural network part. These two factors affect controller performance so much. There are many research results about how to decide or modify fuzzy rules. However learning rate was not an issue in neuro-fuzzy controller. Thus, in this paper, varying learning rate is applied to FMFNN by considering system error. To show the validity of varying learning rate method, simulation results of FMFNN with varying learning rate are presented with underwater robot control example.
机译:本文介绍了一种用于水下机器人的快速在线神经模糊控制器,其动力学具有高度的非线性,耦合性和时变性。神经模糊控制器基于具有可变学习率的模糊隶属函数神经网络(FMFNN)。尽管FMFNN具有模糊逻辑和神经网络的优势,但要确定模糊推理部分的初始规则和神经网络部分的学习率并不容易。这两个因素对控制器性能的影响很大。关于如何确定或修改模糊规则的研究成果很多。然而,学习率并不是神经模糊控制器的问题。因此,在本文中,考虑系统误差,将变化的学习率应用于FMFNN。为了说明变学习率方法的有效性,以水下机器人控制实例为例,给出了变学习率的FMFNN的仿真结果。

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