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A MODIS-based scalable remote sensing method to estimate sowing and harvest dates of soybean crops in Mato Grosso Brazil

机译:基于MODIS的可扩展遥感方法以估算巴西Mato Grosso大豆作物的播种和收获日期

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摘要

Large-scale agriculture in the state of Mato Grosso, Brazil is a major contributor to global food supplies, but its continued productivity is vulnerable to contracting wet seasons and increased exposure to extreme temperatures. Sowing dates serve as an effective adaptation strategy to these climate perturbations. By controlling the weather experienced by crops and influencing the number of successive crops that can be grown in a year, sowing dates can impact both individual crop yields and cropping intensities. Unfortunately, the spatiotemporally resolved crop phenology data necessary to understand sowing dates and their relationship to crop yield are only available over limited years and regions. To fill this data gap, we produce a 500 m rainfed soy (Glycine max) sowing and harvest date dataset for Mato Grosso from 2004 to 2014 using a novel time series analysis method for Moderate Resolution Imaging Spectroradiometer (MODIS) satellite imagery, adapted for implementation in Google Earth Engine (GEE). Our estimates reveal that soy sowing and harvest dates varied widely (about 2 months) from field to field, confirming the need for spatially resolved crop timing information. An interannual trend toward earlier sowing dates occurred independently of variations in wet season onset, and may be attributed to an improvement in logistic or economic constraints that previously hampered early sowing. As anticipated, double cropped fields in which two crops are grown in succession are planted earlier than single cropped fields. This difference shrank, however, as sowing of single cropped fields occurred closer to the wet season onset in more recent years. The analysis offers insights about sowing behavior in response to historical climate variations which could be extended to understand sowing response under climate change in Mato Grosso.
机译:马托格罗索州大型农业,巴西是主要贡献者全球粮食供应,但其持续的生产率是容易感染丰水期和暴露提高到极端温度。播种日期作为有效的适应战略对这些气候扰动。通过控制作物所经历的天气影响,可以在一年内连续种植农作物的数量,播期可能会影响这两个个体作物产量和种植强度。不幸的是,必须要了解的播期及作物产量的关系时空分辨作物物候资料只可多年来和地区有限。为了填补该数据间隙,我们生产500μm的旱地大豆(大豆)播种和收获日期数据集马托格罗索2004年至2014年使用一种新的时间序列分析方法为中分辨率成像光谱仪(MODIS)卫星图像,其适用于实施在谷歌地球引擎(GEE)。我们的估算显示,大豆播种和收割日期相差很大(约2个月),从田间到现场,确认为空间分辨的农作物时序信息的需要。对早期播种日期的年际走势独立于雨季开始变化的发生,并且可能是由于在先前阻碍早播后勤或经济拮据的改善。正如预期的那样,在这两种作物在种植连续双裁剪领域的种植比单裁剪领域较早。这种差异缩小,但是,由于单裁剪领域的播种出现接近雨季发生在最近几年。关于应对其可以扩展到了解马托格罗索气候变化条件下播种响应历史气候变化播种行为分析提供了见解。

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