基于数据挖掘和小波神经网络的航材消耗预测方法
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(1. 海军航空工程学院兵器科学与技术系,山东 烟台 264001;2. 海军航空工程学院科研部,山东 烟台 264001;3. 91557部队,浙江 舟山 316000;4. 91440部队,河南 洛阳 471000)

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V240.2

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Prediction Method of Air Material Consumption Based on Data Mining and WNN
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(1. Naval Aeronautical and Astronautical University, Department of Weapon Science and Technology,Yantai Shandong 264001, China;2. Naval Aeronautical and Astronautical University,Department of Scientific Research,Yantai Shandong 264001, China;3. The 91557th Unit of PLA, Zhoushan Zhejiang 316000, China;4. The 91440th Unit of PLA, Luoyang Henan 471000, China)

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    摘要:

    运用数据挖掘技术对航材消耗的历史数据进行关联分析,筛选出对保障飞机飞行有重要作用的航材消耗数据,大大缩减了需要预测的航材数量,同时对消耗航材之间的内在影响关系进行量化。在分析人工鱼群算法原理的基础上,对算法中步长参数和视野范围参数的设置方法进行了改进。实例结果表明,运用小波神经网络预测航材消耗的方法大大降低了预测误差,说明了该方法的有效性、可行性和实用性。

    Abstract:

    In this paper, the correlation analysis on historical data of air material consumption was presented by using data mining technology, filting out the important material consumption data on the protection of aircraft flight, greatly reducing the amount of air material needed to forecast, and the influence between consumption materials relationship was quantified. The principle of artificial fish swarm algorithm was analyzed, and the setting method of step parameter and visual field parameter was improved on the basis of it. The example results showed that the method of wavelet neural network could greatly reduce the prediction error of air material consumption, illustrated the effectiveness, feasibility and practicality of the method.

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孙臣良,郑伟,赵涛,陈洪光.基于数据挖掘和小波神经网络的航材消耗预测方法[J].海军航空大学学报,2014,29(3):235-238, 256
SUN Chen-liang, ZHENG Wei, ZHAO Tao, CHEN Hong-guang. Prediction Method of Air Material Consumption Based on Data Mining and WNN[J]. JOURNAL OF NAVAL AVIATION UNIVERSITY,2014,29(3):235-238, 256

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  • 在线发布日期: 2015-04-28
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