UAV-based multi-sensor data fusion and machine learning algorithm for yield prediction in wheat

被引:0
作者
Shuaipeng Fei
Muhammad Adeel Hassan
Yonggui Xiao
Xin Su
Zhen Chen
Qian Cheng
Fuyi Duan
Riqiang Chen
Yuntao Ma
机构
[1] Chinese Academy of Agricultural Sciences,Institute of Farmland Irrigation
[2] Chinese Academy of Agricultural Sciences,National Wheat Improvement Centre, Institute of Crop Sciences
[3] Yellow River Institute of Hydraulic Research,Water Diversion and Irrigation Engineering Technology Center
[4] China Agricultural University,College of Land Science and Technology
[5] Dezhou Academy of Agricultural Sciences,School of Information Science and Technology
[6] Beijing Forestry University,undefined
来源
Precision Agriculture | 2023年 / 24卷
关键词
Data fusion; Machine learning; Phenotyping; Wheat; Unmanned aerial vehicle;
D O I
暂无
中图分类号
学科分类号
摘要
Early prediction of grain yield helps scientists to make better breeding decisions for wheat. Use of machine learning (ML) methods for fusion of unmanned aerial vehicle (UAV)-based multi-sensor data can improve the prediction accuracy of crop yield. For this, five ML algorithms including Cubist, support vector machine (SVM), deep neural network (DNN), ridge regression (RR) and random forest (RF) were used for multi-sensor data fusion and ensemble learning for grain yield prediction in wheat. A set of thirty wheat cultivars and breeding lines were grown under three irrigation treatments i.e., light, moderate and high irrigation treatments to evaluate the yield prediction capabilities of a low-cost multi-sensor (RGB, multi-spectral and thermal infrared) UAV platform. Multi-sensor data fusion-based yield prediction showed higher accuracy compared to individual-sensor data in each ML model. The coefficient of determination (R2) values for Cubist, SVM, DNN and RR models regarding grain yield prediction were observed from 0.527 to 0.670. Moreover, the results of ensemble learning through integrating the above models illustrated further increase in accuracy. The predictions of ensemble learning showed high R2 values up to 0.692, which was higher as compared to individual ML models across the multi-sensor data. Root mean square error (RMSE), residual prediction deviation (RPD) and ratio of prediction performance to inter-quartile range (RPIQ) were calculated to be 0.916 t ha−1, 1.771 and 2.602, respectively. The results proved that low altitude UAV-based multi-sensor data can be used for early grain yield prediction using data fusion and an ensemble learning framework with high accuracy. This high-throughput phenotyping approach is valuable for improving the efficiency of selection in large breeding activities.
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页码:187 / 212
页数:25
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