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首页> 外文期刊>Precision Agriculture >Combining target sampling with within field route-optimization to optimise on field yield estimation in viticulture
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Combining target sampling with within field route-optimization to optimise on field yield estimation in viticulture

机译:将目标采样与现场路径优化结合,优化葡萄栽培现场产量估计

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摘要

This paper describes a new approach for yield sampling in viticulture. It combines approaches based on auxiliary information and path optimization to offer more consistent sampling strategies, integrating statistical approaches with computer methods. To achieve this, groups of potential sampling points, comparable according to their auxiliary data values are created. Then, an optimal path is constituted that passes through one point of each group of potential sampling points and minimizes the route distance. This part is performed using constraint programming, a programming paradigm offering tools to deal efficiently with combinatorial problems. The paper presents the formalization of the problem, as well as the tests performed on nine real fields were high resolution NDVI data and medium resolution yield data were available. In addition, tests on simulated data were performed to examine the sensitivity of the approach to field data characteristics such as the correlation between auxiliary data and yield, the spatial auto-correlation of the data among others. The approach does not alter much the results when compared to conventional approaches but greatly reduces sampling time. Results show that, for a given amount of time, combining model sampling and path optimization can give estimation error up to 30% lower for a given amount of time compared to previous methods.
机译:本文介绍了一种葡萄栽培产量抽样的新方法。它将基于辅助信息的方法与路径优化相结合,提供更一致的采样策略,将统计方法与计算机方法相结合。为了实现这一点,创建了根据辅助数据值进行比较的潜在采样点组。然后,构造一条通过每组潜在采样点中的一个点并使路径距离最小的最优路径。这一部分是使用约束编程来完成的,约束编程是一种编程范式,提供了有效处理组合问题的工具。该文给出了问题的形式化描述,并在9个实际农田上进行了测试,获得了高分辨率NDVI数据和中分辨率产量数据。此外,还对模拟数据进行了测试,以检验该方法对田间数据特征的敏感性,如辅助数据与产量之间的相关性、数据的空间自相关等。与传统方法相比,该方法不会对结果造成太大改变,但会大大缩短采样时间。结果表明,在给定的时间内,与以前的方法相比,模型采样和路径优化相结合可以使给定时间内的估计误差降低30%。

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