Abstract

Potassium (K) plays a significant role in the formation of crop quality and yield. Accurate estimation of plant potassium content using remote sensing (RS) techniques is therefore of great interest to better manage crop K nutrition. To improve RS of crop K, meteorological information might prove useful, as it is well established that weather conditions affect crop K uptake. We aimed to determine whether including meteorological data into RS-based models can improve K estimation accuracy in rice (Oryza sativa L.). We conducted field experiments throughout three growing seasons (2017–2019). During each year, different treatments (i.e., nitrogen, potassium levels and plant varieties) were applied and spectra were taken at different growth stages throughout the growing season. Firstly, we conducted a correlation analysis between rice plant potassium content and transformed spectra (reflectance spectra (R), first derivative spectra (FD) and reciprocal logarithm-transformed spectra (log [1/R])) to select correlation bands. Then, we performed the genetic algorithms partial least-squares and linear mixed effects model to select important bands (IBs) and important meteorological factors (IFs) from correlation bands and meteorological data (daily average temperature, humidity, etc.), respectively. Finally, we used the spectral index and machine learning methods (partial least-squares regression (PLSR) and random forest (RF)) to construct rice plant potassium content estimation models based on transformed spectra, transformed spectra + IFs and IBs, and IBs + IFs, respectively. Results showed that normalized difference spectral index (NDSI (R1210, R1105)) had a moderate estimation accuracy for rice plant potassium content (R2 = 0.51; RMSE = 0.49%) and PLSR (FD-IBs) (R2 = 0.69; RMSE = 0.37%) and RF (FD-IBs) (R2 = 0.71; RMSE = 0.40%) models based on FD could improve the prediction accuracy. Among the meteorological factors, daily average temperature contributed the most to estimating rice plant potassium content, followed by daily average humidity. The estimation accuracy of the optimal rice plant potassium content models was improved by adding meteorological factors into the three RS models, with model R2 increasing to 0.65, 0.74, and 0.76, and RMSEs decreasing to 0.42%, 0.35%, and 0.37%, respectively, suggesting that including meteorological data can improve our ability to remotely sense plant potassium content in rice.

Highlights

  • Potassium (K) is an essential nutrient for crop growth

  • To show the mean reflectance with six growth stages (Figure 3c); before the booting stage, the spectral reflectance decreased in the visible region and increased in the near-infrared region, after the booting stage, the spectral reflectance decreased in the near-infrared region due to the influence of ears

  • With different accumulated growing degree day (AGDD), in summary, normalized difference spectral index (NDSI) values of R and FD showed a similar variation, they decreased with the growth of rice plant, no K fertilization treatment (K0) had lowest NDSI value, and K2 had the high NDSI value (Figure 3d,e)

Read more

Summary

Introduction

Over the last couple of decades, remote sensing (RS) techniques have been used to monitor crop K nutrition with the goal of improving fertilizer management (Table 1). Many of these studies focus on spectral data collected at the leaf [9,10] and canopy [11,12,13,14,15,16,17,18,19,20,21,22] (in situ) level. Some studies have been relying on spectral indices that use reflectance readings in the near-infrared and shortwave infrared to remotely monitor plant K nutrition [9,12,13,14,15]

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call