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首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Identification of flight state under different simulator modes using improved diffusion maps
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Identification of flight state under different simulator modes using improved diffusion maps

机译:识别在不同的飞行状态模拟器使用改进的扩散模式的地图

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摘要

To identify the difference between dynamic and static simulator modes, a novel data analyzing method was presented in this paper using flight data sampled from manual flight task. The proposed method combined diffusion maps and kernel fuzzy c-means algorithm (KFCM) to identify types of flight data. Hybrid bacterial foraging (BF) and particle swarm optimization (PSO) algorithm (BF-PSO) was also introduced to optimize unknown parameters of the KFCM. This algorithm increased the possibility to find the optimal values avoided being trapped in local minima. The clustering accuracy of the proposed method applied in flight dataset demonstrated this method had the ability to recognize the types of flight state. The results of the paper indicated that the pilots movement sensing influenced pilot performance under the manual departure task. (C) 2016 Elsevier GmbH. All rights reserved.
机译:确定动态和之间的区别静态模拟模式,一种新颖的数据分析方法本文提出了使用飞行数据采样从人工飞行任务。该方法结合扩散和地图内核模糊c均值算法(KFCM)来识别类型的飞行数据。(BF)和粒子群优化(PSO)算法(BF-PSO)也被引入优化KFCM的未知参数。算法找到的可能性增加避免被困在当地的最优值最小值。方法应用于演示飞行数据集这种方法有识别能力类型的飞行状态。表明飞行员运动传感影响飞行员手工条件下的性能离职的任务。版权。

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