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Distributed reflectance model mining of leaf nitrogen content by using gene expression programming

机译:使用基因表达规划,分布式反射模型开采叶片氮含量

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Estimating dynamically for leaf nitrogen concentration is an important subject in the studies on crop monitoring. The traditional regression methods including linear regression, partial least squares regression, support vector machine regression and random forest regression depended on a priori knowledge and many subjective factors. Moreover, these methods have high time complexity and low computational efficiency for complex and high-dimensional hyperspectral data. In order to better find reflectance model of LNC for complex and high-dimensional hyperspectral data, this paper presents distributed reflectance model mining of leaf nitrogen content by using gene expression programming (DRMMLNC-GEP) which combined with GEP and grid service. The comparative results show that the DRMMLNC-GEP outperforms all other algorithms on the average time-consumption, value of R-square and prediction accuracy. Meanwhile, experimental results also show that with the increasing of datasets size, DRMMLNC-GEP demonstrates good speed-up ratio and scale-up ratio too.
机译:用于叶片氮浓度的动态估计是作物监测研究中的重要主题。传统的回归方法包括线性回归,部分最小二乘回归,支持向量机回归和随机森林回归取决于​​先验知识和许多主观因素。此外,这些方法具有高时间复杂度和用于复杂的高光谱数据的低计算效率。为了更好地找到LNC的复杂和高维光谱数据的反射率模型,通过使用与GEP和网格服务结合的基因表达编程(DRMMLNC-GEP)介绍了叶片氮含量的分布式反射模型开采。比较结果表明,DRMMLNC-GEP在平均时间消耗,R范围的值和预测精度的平均时间消耗,值的比例优于所有其他算法。同时,实验结果还表明,随着数据集尺寸的增加,DRMMLNC-GEP也表明了良好的加速比和比例比率。

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