评估利用遥感数据和马尔可夫链预测植被覆盖发展的可能性

IF 0.2 Q4 AGRICULTURE, MULTIDISCIPLINARY
T. Myslyva, V. Bushueva, V. Volyntseva
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引用次数: 0

摘要

在全球气候变化的条件下,建立基于地球遥感数据和统计建模相结合的可靠模型,从而可靠地预测植物的生长发育是非常重要的。利用马尔可夫链进行建模是一种有效而简单的随机事件预测方法,包括对农作物生物量性能的预测。利用Sentinel-2卫星10 m空间分辨率的地球遥感数据,计算植被指数NDVI值,得到不同植被覆盖发展程度的不同时间栅格(2017-2019)。利用地理信息系统(GIS)的功能,对栅格图像进行分类、转换为矢量层并建立交点区域,构建不同植被覆盖发展水平从一种状态过渡到另一种状态的概率矩阵。概率矩阵后来被用来预测植被覆盖的发展,使用马尔可夫模型作为预测器。对建立的预测模型进行χ2检验。结果表明,利用2019年栅格图像确定的不同发育程度植被分布的模型值与实际面积具有较好的相关性。研究结果可用于开发预测方法和直接预测主要稠密覆盖作物的作物产量,以及估计牧场的绩效和建立有效的牧场轮作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of possibility for using remote sensing data and Markov chains for prediction of vegetation cover development
In conditions of global climate change, it is important to develop reliable models allowing to reliably predict plant development based on combination of the Earth remote sensing data and statistical modeling. Modeling by means of Markov chains is an efficient and at the same time simple way to predict random events, which include prediction of performance of phytomass of agricultural crops. The Earth remote sensing data obtained from the Sentinel-2 satellite with spatial resolution of 10 m were used to calculate the value of vegetation index NDVI and obtain different time rasters (2017-2019) with different degrees of vegetation cover development. To construct the matrix of probability of transition from one state to another for different levels of vegetation cover development, functionality of geoinformation systems (GIS) were used allowing to classify raster images, transform them into vector layers, and establish intersection areas. The probability matrix was later used to predict vegetation cover development using the Markov model as a predictor. The developed prediction model was tested for feasibility of the χ2 test. The results obtained showed that both the modeled values and the actual area of vegetation distribution with different degrees of development, determined from the available raster image of 2019, correlated well with each other. The research results can be useful both in developing forecasting methods and in directly predicting the crop yield of primarily dense-cover agricultural crops, as well as for estimating performance of pastures and creating efficient pasture rotations.
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