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首页> 外文期刊>ISA Transactions >Grid index subspace constructed locally weighted learning identification modeling for high dimensional ship maneuvering system
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Grid index subspace constructed locally weighted learning identification modeling for high dimensional ship maneuvering system

机译:网格指数子空间构建了高维船舶机动系统的本地加权学习识别模型

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摘要

For off-line locally weighted learning (LWL), all training data points need to be stored in memory, which would lead to a heavy computational burden, especially for large amount of training data. To avoid heavy computational burden in LWL, the grid index subspace constructed algorithm is presented for high dimensional ship maneuvering system in this study. First, high dimensional training data can be encoded and stored in equal interval grid, and training data are divided into grids. Second, query point is encoded by using the same strategy as in the first step, and the grid number which belongs to the query point is obtained. Third, the subspace would be per-allocated to the query point by using the grid index which has a light computational complexity. Different from the general cluster algorithm, a subspace rather than a neighborhood is assigned to query point. This way, LWL is carried out in a subspace, and the computational complexity is significantly reduced. As a consequence, real-time performance is effectively guaranteed. Finally, theoretical calculations and simulation examples are given to validate the effectiveness of the proposed scheme. (C) 2018 ISA. Published by Elsevier Ltd. All rights reserved.
机译:对于离线当地加权学习(LWL),所有培训数据点都需要存储在内存中,这将导致繁重的计算负担,特别是对于大量培训数据。为了避免LWL中的繁重计算负担,在本研究中提出了用于高维船舶操纵系统的电网指数子空间构造算法。首先,可以对高维训练数据进行编码并存储在等间隔网格中,并且培训数据被分成网格。其次,通过使用与第一步中的相同策略来编码查询点,并且获得属于查询点的网格号。第三,通过使用具有光计算复杂度的网格索引,将子空间每分配给查询点。与一般集群算法不同,子空间而不是邻域被分配给查询点。这样,LWL在子空间中进行,并且计算复杂性显着降低。因此,有效地保证了实时性能。最后,给出了理论计算和仿真实施例以验证所提出的方案的有效性。 (c)2018 ISA。 elsevier有限公司出版。保留所有权利。

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