首页> 外文会议>Artifical Neural Networks in Engineering (ANNIE'96) Conference, held November 10-13, 1996, in St. Louis, Missouri, U.S.A. >Genetic algorithm-based method for solving an overdetermined system of equations corrupted by measurement noise
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Genetic algorithm-based method for solving an overdetermined system of equations corrupted by measurement noise

机译:基于遗传算法的解决由于测量噪声而破坏的方程组的方法

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This paper describes a novel method for prediction of atmospheric temperature profiles. The profiles are described by an overdetermined system of equations corrupted by measurement noise. The goal is to predict the temperatures in four range bins with reasonable accuracy. Solving the equations by a classical linear least squares fit results in predicted temperature error over 30K for small amount of noise in the measurements themselves. Since this result is physically implausible, we developed a geneetic algorithm based mehtod and we incorporated into the fitness function correction terms based on oru experience with the atmospheric temperature profiles. The results improved dramatically. The technique devised is tested on a simulated data set and the resutls are described.
机译:本文介绍了一种预测大气温度曲线的新方法。这些轮廓由一个因测量噪声而破坏的超定方程组来描述。目的是以合理的精度预测四个范围仓中的温度。用经典的线性最小二乘拟合法求解方程,会因测量本身中产生少量噪声而导致30K以上的预测温度误差。由于此结果在物理上是不可信的,因此我们开发了一种基于Mehtod的遗传算法,并根据oru经验与大气温度曲线将其纳入了适应度校正项。结果大为改善。设计的技术在模拟数据集上进行了测试,并描述了结果。

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