首页> 外文期刊>Optik: Zeitschrift fur Licht- und Elektronenoptik: = Journal for Light-and Electronoptic >Optimized least-squares support vector machine for predicting aero-optic imaging deviation based on chaotic particle swarm optimization
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Optimized least-squares support vector machine for predicting aero-optic imaging deviation based on chaotic particle swarm optimization

机译:优化最小二乘支持向量机,用于基于混沌粒子群优化预测航空 - 光学成像偏差

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摘要

In the time-averaged flow field, aero-optic imaging deviation (AOID) and its influencing variables are connected by complicated and strongly coupled nonlinear time-dependent relationships that present many difficulties for fast calculation of AOID. To achieve real-time online AOID compensation in practice, chaotic particle swarm optimization (CPSO) and the least-squares support vector machine (LSSVM) are combined to construct a predictive AOID model for supersonic aircraft in flight. With its strong global-search capability, the CPSO algorithm is used to optimize the parameters of the LSSVM predictive model. First, a chaotic sequence is used to initialize the particle positions, thereby enhancing search diversity. The premature convergence of normal particle swarm optimization (PSO) is then countered by using CPSO. If PSO falls into a local optimum, the extreme position of the population is adjusted and the current search trajectory of the particles is disturbed so that the particles search new neighborhoods and paths, thereby increasing the probability of escaping the local optimum. The simulation results show that the predictive accuracy of the CPSO-LSSVM model exceeds that of the LSSVM model alone or the back-propagation neural network model. The CPSO-LSSVM model is effective at compensating for AOID within a limited range, and it avoids the disadvantages of traditional geometrical-optics calculations, namely that they are time-consuming, laborious, and error-prone. When the training data of LSSVM is enough, any AOID can be estimated by the CPSO-LSSVM model.
机译:在时间平均流场中,通过复杂且强烈的耦合的非线性时间依赖关系来连接空气 - 光学成像偏差(AOIZ)及其影响变量,其呈现许多难以快速计算AOIZ的困难。为了在实践中实现实时在线AOID补偿,混沌粒子群优化(CPSO)和最小二乘支持向量机(LSSVM)组合以构建飞行中超音速飞机的预测AOIZ模型。通过其强大的全球搜索功能,CPSO算法用于优化LSSVM预测模型的参数。首先,使用混沌序列来初始化粒子位置,从而增强搜索分集。然后使用CPSO对抗正常粒子群优化优化(PSO)的过早收敛。如果PSO落入局部最佳,则调整群体的极端位置,并且颗粒的当前搜索轨迹被扰乱,使得粒子搜索新的邻域和路径,从而增加逃离局部最佳的概率。仿真结果表明,CPSO-LSSVM模型的预测精度超出了LSSVM模型的单独或后传播神经网络模型。 CPSO-LSSVM模型在补偿有限范围内的AOID方面有效,并且避免了传统的几何光学计算的缺点,即它们是耗时,费力和容易出错的。当LSSVM的训练数据足够时,可以通过CPSO-LSSVM模型估算任何AOID。

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