基于多时间尺度的通用航空事故非线性时间序列分析与预测

IF 0.1 4区 工程技术 Q4 ENGINEERING, AEROSPACE Aerospace America Pub Date : 2023-08-16 DOI:10.3390/aerospace10080714
Yufei Wang, Honghai Zhang, Zongbei Shi, Jinlun Zhou, Wenquan Liu
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引用次数: 0

摘要

通用航空事故具有复杂的相互作用和影响,不能简单地用线性模型来解释和预测。本研究以混沌理论为基础,利用通用航空事故数据,对不同时间尺度(HM-scale, ET-scale, EF-scale)进行研究。首先,通过从通用航空事故统计中剔除季节性模式来构建时间序列。其次,通过0-1检验和Lyapunov指数确定了多时间尺度序列的混沌性质。最后,通过引入麻雀搜索算法和帐篷混沌映射,提出了一种CSSA-LSSVM预测模型。选取美国国家运输安全委员会(NTSB)近15年的事故数据进行案例分析。结果表明,0-1测试的相图呈现布朗运动特征,且三个尺度的最大Lyapunov指数均为正,证明了多时间尺度序列的混沌特性。CSSA-LSSVM预测模型的测试结果表明其在时间序列预测方面具有优势,随着时间尺度的减小,预测误差逐渐减小,拟合效果先增强后降低。本研究揭示了通用航空事故的非线性混沌特征,论证了多时间尺度研究在时间序列分析与预测中的重要意义。
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Nonlinear Time Series Analysis and Prediction of General Aviation Accidents Based on Multi-Timescales
General aviation accidents have complex interactions and influences within them that cannot be simply explained and predicted by linear models. This study is based on chaos theory and uses general aviation accident data to conduct research on different timescales (HM-scale, ET-scale, and EF-scale). First, time series are constructed by excluding seasonal patterns from the statistics of general aviation accidents. Secondly, the chaotic properties of multi-timescale series are determined by the 0–1 test and Lyapunov exponent. Finally, by introducing the sparrow search algorithm and tent chaotic mapping, a CSSA-LSSVM prediction model is proposed. The accident data of the National Transportation Safety Board (NTSB) of the United States in the past 15 years is selected for case analysis. The results show that the phase diagram of the 0–1 test presents Brownian motion characteristics, and the maximum Lyapunov exponents of the three scales are all positive, proving the chaotic characteristics of multi-timescale series. The CSSA-LSSVM prediction model’s testing results illustrate its superiority in time series predicting, and when the timescale declines, the prediction error reduces gradually while the fitting effect strengthens and then decreases. This study uncovers the nonlinear chaotic features of general aviation accidents and demonstrates the significance of multi-timescale research in time series analysis and prediction.
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来源期刊
Aerospace America
Aerospace America 工程技术-工程:宇航
自引率
0.00%
发文量
9
审稿时长
4-8 weeks
期刊最新文献
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