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Ship Maneuvering Modeling Based on Fuzzy Rules Extraction and Optimization

机译:基于模糊规则提取和优化的船舶操纵建模

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This paper aims to verify the capability of fuzzy inference system in establishing time series model for ship manoeuvrability. The traditional modeling approaches are usually based on a unified framework. Due to the presence of outliers or noises in ship sailing records, it is difficult in achieving satisfactory performance directly from data. In this paper, we propose a combined time series modeling method by the use of data mining technique and fuzzy system theory. Data mining concepts are introduced to improve the fuzzy rule extraction algorithm to make the resulting fuzzy inference system more robust with respect to the noises or outliers. A ship 20°/20° zig-zag test is simulated. The data point records in time series are obtained from an actual manoeuvring test. With comprehensive robustness analysis, our fuzzy inference system using data mining technology is proved to be a robust and accurate tool for ship manoeuvring simulation.
机译:本文旨在验证模糊推理系统在建立船舶操纵性时间序列模型中的能力。传统的建模方法通常基于统一的框架。由于船舶航行记录中存在异常值或噪音,因此很难直接从数据中获得令人满意的性能。在本文中,我们利用数据挖掘技术和模糊系统理论,提出了一种组合的时间序列建模方法。引入了数据挖掘概念,以改进模糊规则提取算法,以使所得的模糊推理系统在噪声或离群值方面更具鲁棒性。模拟了船用20°/ 20°之字形测试。时间序列中的数据点记录是从实际的操纵测试中获得的。通过全面的鲁棒性分析,我们证明了使用数据挖掘技术的模糊推理系统是用于船舶操纵仿真的鲁棒且准确的工具。

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