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Generalized coupled Markov chain model for characterizing categorical variables in soil mapping.

机译:用于表征土壤制图分类变量的广义耦合马尔可夫链模型。

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We developed a general formulation of the Markovian transition probability model and the corresponding computational algorithm for characterizing heterogeneity in soil types. The generalized model is based on the previously developed coupled Markov chain (CMC) model in which spatial conditioning is done using transition probabilities that incorporate field observations. The generalized coupled Markov chain (GCMC) model is more flexible with respect to conditioning than the previous CMC model because there are no restrictions on the input data format, and a random sequence calculation algorithm is used. The GCMC model was compared with the sequential indicator simulation (SIS), and the results were quantitatively analysed. When adequate soil sampling data are available, the GCMC model predicts the spatial distribution of soil types as well as or better than the SIS model. The GCMC model has the advantage of simple input variables (because preprocessing is not required) and faster computation time (by about 60%). The models were also tested with sparse data sets, and the GCMC model predicted the presence of soil types better than the SIS model, based on a metric derived from ensemble probabilities. Further studies are in progress to expand applications of the model to stationary and nonstationary soil type distributions, improve algorithm efficiency, address underestimation caused by undersampled lithology, and extend the model to three dimensions..
机译:我们开发了马尔可夫跃迁概率模型的一般公式以及用于表征土壤类型异质性的相应计算算法。广义模型基于先前开发的耦合马尔可夫链(CMC)模型,其中使用合并了野外观测的过渡概率来进行空间调节。通用耦合马尔可夫链(GCMC)模型在条件方面比以前的CMC模型更灵活,因为对输入数据格式没有限制,并且使用了随机序列计算算法。将GCMC模型与顺序指标模拟(SIS)进行了比较,并对结果进行了定量分析。当有足够的土壤采样数据时,GCMC模型可以预测土壤类型的空间分布,甚至比SIS模型更好。 GCMC模型的优点是输入变量简单(因为不需要预处理)和更快的计算时间(大约60%)。还使用稀疏数据集对模型进行了测试,GCMC模型基于从整体概率中得出的指标,比SIS模型更好地预测了土壤类型的存在。进一步的研究正在进行中,以将模型的应用扩展到固定和非固定的土壤类型分布,提高算法效率,解决由欠采样岩性引起的低估,并将模型扩展到三个维度。

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