Predicting Nitrogen Content in Rice Using Unmanned Aerial Vehicle Based Multispectral Imaging

IF 1.4 4区 环境科学与生态学 Q4 ENVIRONMENTAL SCIENCES
Rahul Tripathi, Bismay Ranjan Tripathy, Shiv Sundar Jena, Chinmaya Kumar Swain, Sangita Mohanty, Rabi Narayan Sahoo, Shyamsundar Das Mohapatra, Amaresh Kumar Nayak
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Abstract

Precise estimation of rice nitrogen (N) content is essential for optimizing fertilizer use. Traditional methods for estimating N content are time-consuming, laborious, and costly. Unmanned aerial vehicles (UAVs) are time and money efficient substitutes allowing more accurate and flexible monitoring for larger rice areas. The objectives of this study were to: (i) develop random forest (RF) and artificial neural network (ANN) models for predicting and mapping the nitrogen content (%) in rice using seven vegetation indices derived from UAV multispectral sensors and; (ii) assess the key vegetation indices (VI) and their interrelationships with the predicted nitrogen content. Experiments were conducted at two locations in Cuttack district of Odisha, India, with different nitrogen levels. The UAV images were collected synchronizing with the maximum tillering stage of rice and seven indices were generated. The rice sampling was done on the date of flying UAV images and nitrogen content was estimated in the laboratory. RF and ANN models were developed using the N content as dependent and the VIs as independent variables. Both the models exhibited robust predictive capabilities, however, the RF model exhibited better performance, compared to the ANN model. Nitrogen content prediction using the developed RF and ANN models in testing site at farmer's field ranged from 0.78% to 1.95% (R2 of 0.67%) and from 0.5% to 1.78% (R2 of 0.55%), respectively. Normalized difference red edge (NDRE) and normalized difference vegetation index (NDVI) turned out as significant contributors in the development of both the models.

Abstract Image

利用无人机多光谱成像技术预测水稻氮素含量
准确估算水稻氮素含量对优化施肥具有重要意义。估算氮含量的传统方法耗时、费力且昂贵。无人驾驶飞行器(uav)是节省时间和金钱的替代品,可以对更大的水稻区域进行更准确和灵活的监测。本研究的目的是:(i)建立随机森林(RF)和人工神经网络(ANN)模型,利用无人机多光谱传感器获得的7个植被指数来预测和绘制水稻氮素含量(%);(ii)评估关键植被指数及其与预测氮含量的相互关系。在印度奥里萨邦的两个地点进行了不同氮水平的试验。与水稻最大分蘖期同步采集无人机影像,生成7个指标。利用无人机拍摄的影像对水稻进行了采样,并在实验室进行了氮含量估算。以N含量为因变量,VIs为自变量,建立了RF和ANN模型。两种模型都表现出强大的预测能力,但与人工神经网络模型相比,射频模型表现出更好的性能。利用所建立的RF和ANN模型对试验点农田氮素含量的预测范围分别为0.78% ~ 1.95% (R2为0.67%)和0.5% ~ 1.78% (R2为0.55%)。归一化差异红边(NDRE)和归一化差异植被指数(NDVI)在这两个模型的发展中发挥了重要作用。
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来源期刊
Clean-soil Air Water
Clean-soil Air Water 环境科学-海洋与淡水生物学
CiteScore
2.80
自引率
5.90%
发文量
88
审稿时长
3.6 months
期刊介绍: CLEAN covers all aspects of Sustainability and Environmental Safety. The journal focuses on organ/human--environment interactions giving interdisciplinary insights on a broad range of topics including air pollution, waste management, the water cycle, and environmental conservation. With a 2019 Journal Impact Factor of 1.603 (Journal Citation Reports (Clarivate Analytics, 2020), the journal publishes an attractive mixture of peer-reviewed scientific reviews, research papers, and short communications. Papers dealing with environmental sustainability issues from such fields as agriculture, biological sciences, energy, food sciences, geography, geology, meteorology, nutrition, soil and water sciences, etc., are welcome.
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