Monitoring of Chlorophyll Content of Potato in Northern Shaanxi Based on Different Spectral Parameters
Author:
Shi Hongzhao12, Lu Xingxing13, Sun Tao12, Liu Xiaochi12, Huang Xiangyang12, Tang Zijun12ORCID, Li Zhijun12, Xiang Youzhen12ORCID, Zhang Fucang12ORCID, Zhen Jingbo12
Affiliation:
1. Key Laboratory of Agricultural Soil and Water Engineering in Arid and Semiarid Areas of Ministry of Education, Northwest A&F University, Xianyang 712100, China 2. Institute of Water–Saving Agriculture in Arid Areas of China, Northwest A&F University, Xianyang 712100, China 3. Department of Mechanical Engineering, College of Mechanical and Electrical Engineering, Yangling Vocational & Technical College, Xianyang 712100, China
Abstract
Leaf chlorophyll content (LCC) is an important physiological index to evaluate the photosynthetic capacity and growth health of crops. In this investigation, the focus was placed on the chlorophyll content per unit of leaf area (LCCA) and the chlorophyll content per unit of fresh weight (LCCW) during the tuber formation phase of potatoes in Northern Shaanxi. Ground-based hyperspectral data were acquired for this purpose to formulate the vegetation index. The correlation coefficient method was used to obtain the “trilateral” parameters with the best correlation between potato LCCA and LCCW, empirical vegetation index, any two-band vegetation index constructed after 0–2 fractional differential transformation (step size 0.5), and the parameters with the highest correlation among the three spectral parameters, which were divided into four combinations as model inputs. The prediction models of potato LCCA and LCCW were constructed using the support vector machine (SVM), random forest (RF) and back propagation neural network (BPNN) algorithms. The results showed that, compared with the “trilateral” parameter and the empirical vegetation index, the spectral index constructed by the hyperspectral reflectance after differential transformation had a stronger correlation with potato LCCA and LCCW. Compared with no treatment, the correlation between spectral index and potato LCC and the prediction accuracy of the model showed a trend of decreasing after initial growth with the increase in differential order. The highest correlation index after 0–2 order differential treatment is DI, and the maximum correlation coefficients are 0.787, 0.798, 0.792, 0.788 and 0.756, respectively. The maximum value of the spectral index correlation coefficient after each order differential treatment corresponds to the red edge or near-infrared band. A comprehensive comparison shows that in the LCCA and LCCW estimation models, the RF model has the highest accuracy when combination 3 is used as the input variable. Therefore, it is more recommended to use the LCCA to estimate the chlorophyll content of crop leaves in the agricultural practices of the potato industry. The results of this study can enhance the scientific understanding and accurate simulation of potato canopy spectral information, provide a theoretical basis for the remote sensing inversion of crop growth, and promote the development of modern precision agriculture.
Funder
Natural Science Foundation of Basic Research Project of Shaanxi Province
Reference45 articles.
1. Climate Change, Food Security, and Future Scenarios for Potato Production in India to 2030;Scott;Food Secur.,2019 2. Xing, Y., Wang, N., Niu, X., Jiang, W., and Wang, X. (2021). Assessment of Potato Farmland Soil Nutrient Based on MDS-SQI Model in the Loess Plateau. Sustainability, 13. 3. Gitelson, A., Viña, A., Ciganda, V., Rundquist, D., and Arkebauer, T. (2005). Remote estimation of canopy chlorophyll content in crops. Geophys. Res. lett., 32. 4. Leaf chlorophyll content as a proxy for leaf photosynthetic capacity;Croft;Glob. Chang. Biol.,2017 5. Ali, J., Jan, I., Ullah, H., Fahad, S., Saud, S., Adnan, M., Ali, B., Liu, K., Harrison, M.T., and Hassan, S. (2023). Biochemical Response of Okra (Abelmoschus esculentus L.) to Selenium (Se) under Drought Stress. Sustainability, 15.
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