Abstract

Early prediction of sugarcane crop yield at the commercial block level (unit area of a single crop of the same variety, ratoon or planting date) offers significant benefit to growers, consultants, millers, policy makers, crop insurance companies and researchers. This current study explored a remote sensing based approach for predicting sugarcane yield at the block level by further developing a regionally specific Landsat time series model and including individual crop sowing (or previous seasons’ harvest) date. For the Bundaberg growing region of Australia this extends over a five months period, from July to November. For this analysis, the sugarcane blocks were clustered into 10 groups based on their specific planting or ratoon commencement date within the specified five months period. These clustered or groups of blocks were named ‘bins’. Cloud free (<20%) satellite data from the polar-orbiting Landsat-8 (launched 2013), Sentinel-2A (launched 2015) and Sentinel-2B (launched 2017) sensors were acquired over the cane growing region in Bundaberg (area of 32,983 ha), from the growing season starting in July 2014, with the average green normalised difference vegetation index (GNDVI) derived for each block. The number of images acquired for each season was defined by the number of cloud free acquisitions. Using the Simple Linear Machine Learning (ML) algorithm, the extracted Landsat derived GNDVI values for each of the blocks were converted to Sentinel GNDVI. The average GNDVI of each ‘bin’ was plotted and a quadratic model was fitted through the time series to identify the peak growth stage defined as the maximum GNDVI value. The model derived maximum GNDVI values for each of the bins were then regressed against the average actual yield (t·ha-1) achieved for the respective bin over the five growing years, producing strong correlations (R2 = 0.92 to 0.99). The quadratic curves developed for the different bins were shifted according to the specific planting or ratoon date of an individual block allowing for the peak GNDVI value of the block to be calculated, regressed against the actual block yield (t·ha-1) and the prediction of yield to be made. To validate the accuracies of the 10 time series algorithms representing each of the 10 bins, 592 individual blocks were selected from the Bundaberg region during the 2019 harvest season. The crops were clustered into the appropriate bins with the respective algorithm applied. From a Sentinel image acquired on the 5 May 2019, the prediction accuracies were encouraging (R2 = 0.87 and RMSE = 11.33 (t·ha-1)) when compared to actual harvested yield, as reported by the mill. The results presented in this paper demonstrate significant progress in the accurate prediction of sugarcane yield at the individual sugarcane block level using a remote sensing, time-series based approach.

Highlights

  • The comparison of green normalised difference vegetation index (GNDVI) between the two sensors showed a certain amount of scatter, which could be due to a number of possible causes, such as image misregistration, and viewing geometry effects i.e., Bi-Directional Reflectance Distribution Function (BRDF) and atmospheric path length, which might not be fully accounted for in the conversion to surface reflectance

  • The algorithm developed between Landsat-8 and Sentinel-2 derived GNDVI for the Bundaberg sugar growing region shows that both sensing constellations can be combined when developing a time series based yield model

  • The Landsat-8 and Sentinel-2 derived GNDVI time series model shows the progression of sugarcane crop growth at different planting or ratoon dates

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Summary

Introduction

In Australia, the growers or mill funded productivity officers estimate in-season yield at the regional level using visual or destructive sampling techniques coupled with their experience of regional weather conditions, cultivar performance, land type and the occurrences of pests and diseases. This method is time consuming, labour intensive and the accuracies can be influenced by varied seasonal climatic conditions, limited sample size, variability in growing cycle and human error. Satellite based remote sensing techniques with high spatial and temporal resolution have gained considerable attention as an accurate and cost effective method for forecasting sugarcane yield and for crop loss assessment [4,5,6,7]

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