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Integrating Landsat-8 and Sentinel-2 Time Series Data for Yield Prediction of Sugarcane Crops at the Block Level

机译:整合LANDSAT-8和Sentinel-2时间序列数据,用于块级甘蔗作物的产量预测

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摘要

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.
机译:在商业街区的水平甘蔗作物产量的早期预测(同一品种,宿根或种植日期的单一作物的单位面积)提供显著的好处种植者,顾问,铣床,政策制定者,农作物保险公司和研究人员。目前的研究探讨了通过进一步发展一个区域的具体陆地卫星时间序列模型和包括个体作物播种(或先前季节收获)日期在块级预测甘蔗收率遥感为基础的方法。对于澳大利亚班达伯格产区这个延伸跨越5个月期,7〜11月。对于这种分析,甘蔗块聚成基于指定5个月期限内其特定的种植宿根或生效日期10组。这些集群或块组被命名为“垃圾桶”。云免费(<20%)从极地轨道大地卫星8(推出2013),哨兵-2A卫星数据(已启动的2015)和Sentinel-2B(推出2017)传感器被获取在甘蔗种植区邦德堡(面积32983公顷),从生长季节中2014年7月开始,用衍生每个块的平均绿色归一化植被指数(GNDVI)。每个季节所获取的图像的数量是由云免费获取的数量来定义。使用简单的线性机器学习(ML)算法,将所提取陆地卫星导出GNDVI值每个块的转换为哨兵GNDVI。每个“箱”的平均GNDVI作图和二次模型是通过时间序列装配到识别定义为最大GNDVI值峰值生长阶段。模型导出最大GNDVI值每个仓的随后针对平均实际产量消退(T·HA-1)用于在五个生长年各个贮藏实现,产生很强的相关性(R2 = 0.92〜0.99)。对于不同的仓开发的二次曲线根据具体种植或单个块允许所述块的峰值GNDVI值的宿根日期转移到被计算,回归针对实际的块产率(吨·HA-1)和要由产率预测。为了验证的代表每10个仓的10时间序列算法的精度,从该邦德区域2019收获季节期间选择592个的各个块。作物聚为相应的二进制位与所施加的相应的算法。从2019年5月5日取得的哨兵图像,预测精度是令人鼓舞的(R 2 = 0.87和RMSE = 11.33(T·HA-1))时相比,实际收获产量,如通过研磨机的报道。本文提出的结果表明使用遥感,时间序列为基础的方法在甘蔗产量在个人甘蔗块级别的准确预测显著进展。

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