Optimizing UAV Hyperspectral Imaging for Predictive Analysis of Nutrient Concentrations, Biomass Growth, and Yield Prediction of Potatoes

IF 1.2 4区 农林科学 Q3 AGRONOMY
Ayush K. Sharma, Simranpreet Kaur Sidhu, Aditya Singh, Lincoln Zotarelli, Lakesh K. Sharma
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引用次数: 0

Abstract

Accurate real-time estimation of nutrient concentrations in potato (Solanum tuberosum L.) canopies is crucial for advanced decision support systems in site-specific nutrient management. This study investigated the effectiveness of unmanned aerial vehicle (UAV) based hyperspectral imaging in predicting nitrogen (N), phosphorus (P), potassium (K), and sulfur (S) concentrations in potato plants comparing two sampling types such as petiole/leaves and above-ground biomass (AGB) sampling. Furthermore, this study also investigates the prediction of AGB, total, and marketable yield of two potato cultivars, 'Atlantic' (chipping) and 'Red La Soda' (tablestock). Four UAV flights over experimental sites were made, and hyperspectral imaging sensors (393–995 nm, 273 bands) were conducted, which coincided with the in-field sample collection as ground truth. Data were analyzed using the partial least square regression model after preprocessing and extracting spectra from images. The model showed high accuracy in estimating plant N concentration from petiole/leaf samples (external validation R2 = 0.58; [external validation RMSE = 0.31 × 104 mg kg−1]), as well as for P (0.75 [0.05 × 104 mg kg−1]) and S (0.58 [0.03 × 104 mg kg−1]). Potassium estimation accuracy improved with biomass sampling (0.47 [1.19 × 104 mg kg−1]). Above-ground biomass estimation had higher accuracy for 'Atlantic' (0.75 [1.29 Mg ha−1]) than for 'Red La Soda' (0.57 [1.38 Mg ha−1]). The model accurately estimated total and marketable tuber yields for both cultivars, with variations noted based on flight timing related to the crop stage. Cultivar ‘Red La Soda’ achieved the highest total yield accuracy on the first (0.76 [3.31 Mg ha−1]) and fourth flights (0.76 [3.31]), while the ‘Atlantic’ had the highest accuracy on the third flight (0.50 [4.11]). Model outputs, including standardized coefficients and variable importance in prediction, visualizing band contributions to measured parameter predictions are presented. This study concludes that hyperspectral imaging successfully estimates the potato nutrient concentration and predicts the in-season potato yield, which can contribute significantly to the potato management decision support system. However, it underscores the importance of multiyear high temporal data acquisition with variable potato varieties to establish a reliable AGB and yield estimation model to improve performance.

Abstract Image

Abstract Image

优化无人飞行器高光谱成像,对营养浓度、生物量增长和马铃薯产量预测进行预测分析
对马铃薯(Solanum tuberosum L.)树冠中的养分浓度进行准确的实时估算,对于针对具体地点进行养分管理的高级决策支持系统至关重要。本研究调查了基于无人飞行器(UAV)的高光谱成像技术在预测马铃薯植株中氮(N)、磷(P)、钾(K)和硫(S)浓度方面的有效性,并对叶柄/叶片和地上生物量(AGB)采样等两种采样类型进行了比较。此外,本研究还调查了两个马铃薯栽培品种 "大西洋"(削片)和 "Red La Soda"(制表)的 AGB、总产量和可销售产量的预测。在实验地点上空进行了四次无人机飞行,并使用高光谱成像传感器(393-995 nm,273 个波段),这与作为地面实况的田间样本采集相吻合。在对图像进行预处理和提取光谱后,使用偏最小二乘法回归模型对数据进行了分析。该模型在估算叶柄/叶片样本的植物氮浓度(外部验证 R2 = 0.58;[外部验证 RMSE = 0.31 × 104 mg kg-1])以及磷浓度(0.75 [0.05 × 104 mg kg-1])和硒浓度(0.58 [0.03 × 104 mg kg-1])方面显示出较高的准确性。生物量取样提高了钾的估算精度(0.47 [1.19 × 104 mg kg-1])。大西洋"(0.75 [1.29 毫克/公顷-1])的地上生物量估算精度高于 "红拉苏打"(0.57 [1.38 毫克/公顷-1])。该模型准确估算了两种栽培品种的总产量和可销售块茎产量,但根据与作物生长阶段相关的飞行时间,估算结果存在差异。栽培品种 "Red La Soda "在第一次飞行(0.76 [3.31 兆克/公顷-1])和第四次飞行(0.76 [3.31])的总产量准确度最高,而 "大西洋 "在第三次飞行(0.50 [4.11])的准确度最高。模型输出包括标准化系数和变量在预测中的重要性,直观显示了波段对测量参数预测的贡献。本研究的结论是,高光谱成像成功地估算了马铃薯养分浓度并预测了当季马铃薯产量,可为马铃薯管理决策支持系统做出重大贡献。然而,该研究强调了在马铃薯品种多变的情况下获取多年高时间数据的重要性,以便建立可靠的 AGB 和产量估算模型来提高性能。
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来源期刊
American Journal of Potato Research
American Journal of Potato Research 农林科学-农艺学
CiteScore
3.40
自引率
6.70%
发文量
33
审稿时长
18-36 weeks
期刊介绍: The American Journal of Potato Research (AJPR), the journal of the Potato Association of America (PAA), publishes reports of basic and applied research on the potato, Solanum spp. It presents authoritative coverage of new scientific developments in potato science, including biotechnology, breeding and genetics, crop management, disease and pest research, economics and marketing, nutrition, physiology, and post-harvest handling and quality. Recognized internationally by contributors and readership, it promotes the exchange of information on all aspects of this fast-evolving global industry.
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