Detecting nutrient deficiencies in Eucalyptus grandis trees using hyperspectral remote sensing and random forest

IF 0.3 Q4 REMOTE SENSING South African Journal of Geomatics Pub Date : 2022-09-04 DOI:10.4314/sajg.v10i2.14
L. Singh, O. Mutanga, P. Mafongoya, K. Peerbhay, S. Dovey
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Abstract

Nutrient deficiencies in commercial forest trees often lead to stunted growth and reduced chances of field survival, resulting in a loss of time, productivity, and trees that can become more susceptible to a host of infections. While conventional foliar analytical methods provide accurate results, they are not time and cost-effective in a high productivity environment. This study aims to test the capability of remote sensing to detect macronutrient and micronutrient deficiencies rapidly in juvenile trees. We acquired full-waveform hyperspectral data (350nm-2500nm) from 135 young trees planted in individual pots in a controlled forestry nursery environment. We quantified nitrogen (N), phosphorus (P), potassium (K), calcium (Ca), magnesium (Mg), sodium (Na), manganese (Mn), iron (Fe), copper (Cu), zinc (Zn), and boron (B) in young commercially planted forest variety. This study identified the most critical wavebands for detecting nutrient deficiencies using built-in random forest (RF) measures of variable importance. The random forest algorithm's robustness significantly reduced the dataset's noise whilst producing promising results for certain macronutrients such as P and N (0.95 and 0.89, respectively) and micronutrients such as Mn and Cu (0.90 and 0.86, respectively). We identified the red-edge, near-infrared (NIR), visible and short-wave infrared-2 (SWIR-2) regions of the electromagnetic spectrum as the most effective regions for detecting macronutrients and micronutrients in this study. We recommend testing the use of strategic portions of the electromagnetic spectrum for reducing noise and enabling faster computing time, such as portable near-infrared technology.
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利用高光谱遥感和随机森林检测巨桉树的营养缺乏
商业林木的营养缺乏往往会导致生长发育迟缓,野外生存机会减少,导致时间、生产力的损失,树木更容易受到多种感染。虽然传统的叶面分析方法提供了准确的结果,但在高产环境中,它们既不耗时,也不划算。本研究旨在测试遥感技术快速检测幼树宏量营养素和微量营养素缺乏的能力。我们获得了135棵幼树的全波形高光谱数据(350nm-2500nm),这些幼树种植在受控的林业苗圃环境中的各个花盆中。我们量化了商业种植的幼林品种中的氮(N)、磷(P)、钾(K)、钙(Ca)、镁(Mg)、钠(Na)、锰(Mn)、铁(Fe)、铜(Cu)、锌(Zn)和硼(B)。这项研究确定了使用不同重要性的内置随机森林(RF)测量来检测营养缺乏的最关键波段。随机森林算法的稳健性显著降低了数据集的噪声,同时对某些常量营养素如P和N(分别为0.95和0.89)以及微量营养素如Mn和Cu(分别为0.90和0.86)产生了有希望的结果。在本研究中,我们确定电磁光谱的红边、近红外(NIR)、可见光和短波红外-2(SWIR-2)区域是检测大量营养素和微量营养素的最有效区域。我们建议测试电磁频谱的战略性部分的使用,以减少噪声并加快计算时间,例如便携式近红外技术。
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