你的内部区域有多大的不同

B. Tisseyre, C. Leroux
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引用次数: 3

摘要

精准农业的经典方法是通过农业信息(AI)在高空间分辨率观测中定义的田间区域内进行验证。区域验证通常包括两个步骤。首先,人工智能是在一个规则的网格上或按照一个目标采样策略在场内获得的。然后,使用统计检验(通常是方差分析)来确定用高空间分辨率辅助数据创建的管理区域是否解释了人工智能值的差异。不幸的是,在精准农业中,许多使用这种方法的工作忽略了实施上述ANOVA检验的必要条件,即观测值需要彼此独立。不幸的是,这个条件很少被满足,因为人工智能通常是空间自相关的。为了突出这一问题,我们使用了具有不同和已知的人工智能空间自相关的模拟数据集。结果表明,随着人工智能在空间上的自相关性越来越强,方差分析几乎总是得出这样的结论:无论分区如何,即使是完全随机的分区,用辅助数据得到的管理分区都是显著的。为了克服这个问题,本文介绍了两种直接从生态学领域发表的作品中获得灵感的方法。我们考虑了两种情况:第一种情况适用于大型AI数据集(n<40),另一种情况适用于小型AI数据集(n<40)。两种方法都在一个实际的精确葡萄栽培实例中实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How significantly different are your within field zones
A classical approach in precision agriculture consists in validating within field zones defined from high spatial resolution observations by agronomic information (AI). Zones validation generally involves a two-step process. First, AI are obtained on a regular grid or following a target sampling strategy inside the field. Then, a statistical test, most often an ANOVA, is used to determine if the management zones created with the high spatial resolution auxiliary data explain differences in the AI values. Unfortunately, in precision agriculture, many of the works using such an approach omit a necessary condition for the implementation of the aforementioned ANOVA test, i.e. the observations need to be independent from each other. This condition is unfortunately seldom satisfied since AI are often spatially auto-correlated. In order to highlight this problem, simulated datasets with different and known AI spatial autocorrelation were used. Results show that as AI are more and more spatially auto-correlated, ANOVA tests almost always conclude that the management zones obtained with auxiliary data are significant whatever the zoning, i.e. even a completely random one. To overcome this problem, the paper introduces two methods directly inspired from published works in the field of ecology. Two cases were considered: the first one applies when large AI dataset (n>40) is available and the other one applies for small AI dataset (n<40). Both methods are implemented on a real precision viticulture example.
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