PSO-SVM-based method for predicting the demand for airline material carriage

Ming Hao, Yun Wang, Xianfeng Zu
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Abstract

As an important military aircraft material, with the increase in the number of off-site flight missions, it is inevitable to transfer to other sites for carrying security. With the increase of joint exercises, target training and other missions, the mission environment is complex and changeable, which puts forward higher requirements on the level of carry guarantee, among which the accurate prediction of the demand for aviation materials in the mission is one of the main elements of good carry guarantee. In this paper, we propose to use Support Vector Machine (SVM) to predict the number of aircraft materials to be carried, and apply the Particle Swarm Algorithm (PSO) to optimize the SVM parameters. By simulating and comparing PSO-SVM, GS-SVM and GA-SVM, the PSO-SVM algorithm is able to predict the airline material carrying requirements more accurately in a shorter period of time.
基于粒子群支持向量机的航空物资运输需求预测方法
作为一种重要的军用飞机物资,随着场外飞行任务的增多,转移到其他场址承载安全是不可避免的。随着联合演习、目标训练等任务的增多,任务环境复杂多变,对遂行保障水平提出了更高的要求,其中准确预测遂行任务对航空物资的需求是遂行保障的主要要素之一。在本文中,我们提出使用支持向量机(SVM)来预测需要携带的飞机材料的数量,并应用粒子群算法(PSO)来优化支持向量机参数。通过对PSO-SVM、GS-SVM和GA-SVM的仿真比较,PSO-SVM算法能够在更短的时间内更准确地预测航材承载需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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