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Ship domain identification using Fast and Accurate Online Self-organizing Parsimonious Fuzzy Neural Networks

机译:船舶域名识别使用快速准确的在线自我组织定义模糊神经网络

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In this paper, we propose a novel ship domain model identified by the Fast and Accurate Online Self-organizing Parsimonious Fuzzy Neural Network (FAOS-PFNN), which is an effective and powerful algorithm for nonlinear system identifications. The blocking area is introduced to be the reference model of ship domains to generate testing and checking databases for online modeling based on the FAOS-PFNN. The main features of our proposed method are as follows: (1) a mass of reasonable input-output data pairs possessing the complex nonlinear dynamics of ship domains could be randomly extracted; (2) based on the dependable databases, the intelligent ship domain model could be online identified by the FAOS-PFNN while training data pairs sequentially arrives; (3) dynamic and static parameters of own and target ships encountered could be reasonably and comprehensively incorporated into the resulting fuzzy neural network model of ship domains; and, (4) the shape and size of ship domains could be implemented by three independent fuzzy neural systems based on the FAOS-PFFN. It is shown that the identified ship domain model could capture well the key nonlinear properties of ship domains over a wide range. Simulation studies demonstrate the high performance of identification and generalization in the proposed intelligent ship domain model.
机译:在本文中,我们提出了一种新颖的船域模型,通过快速准确的在线自组织解析模糊神经网络(FAOS-PFNN),这是一种有效而强大的非线性系统识别算法。封锁区域被引入到船舶域的参考模型,以基于FAOS-PFNN生成用于在线建模的测试和检查数据库。我们提出的方法的主要特点如下:(1)可以随机提取具有船舶域复杂非线性动态的合理输入输出数据对的质量; (2)基于可靠的数据库,智能船域模型可以通过FAOS-PFNN识别在线,而培训数据对顺序到达; (3)可以合理地,综合地纳入遇到的自己和目标船舶的动态和静态参数,并综合地纳入船舶域的产生模糊神经网络模型; (4)船域的形状和尺寸可以由基于FAOS-PFFN的三个独立的模糊神经系统来实现。结果表明,所识别的船舶域模型可以在宽范围内捕获船域的关键非线性特性。仿真研究表明,智能船域模型中的识别和泛化的高性能。

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