Optimization of a soil type prediction method based on the deep learning model and vegetation characteristics

IF 0.7 Q4 PLANT SCIENCES
Sutiarso L Suwardi, Suwardi, L. Sutiarso, Herry Wirianata, A. P. Nugroho, Sukarman, S. Primananda, Moch. Dasrial, Badi Hariadi
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引用次数: 0

Abstract

The structure and composition of forest vegetation plays an important role in different ecosystem functions and services. This study aimed to identifying soil types based on vegetation characteristics using a deep learning model in the High Conservation Value (HCV) area of Central Kalimantan, spanning 632.04 hectares. The data on vegetation were collected using a combination method between line transect and quadratic plots were placed. The development of a deep learning model was based on the results of a vegetation survey and the processing of aerial photos using the Feature Classifier method. The results of applying a deep learning model could provide a relatively accurate and consistent prediction in identifying soil types (Entisols 62%, Spodosols 90%, Ultisols 90% accuracy). The composition of vegetation community in Ultisols was dominated of seedling and tree (closed canopy), meanwhile in Entisols and Spodosols was dominated of seedling and sapling (dominantly open canopy). Ultisols exhibited the highest species richness (57 species), followed by Spodosols (31 species) and Entisols (14 species). Ultisols, Entisols, and Spodosols displayed even species distribution(J' close to 1) without dominance of certain species(D < 0.5). The species diversity index was at a low to moderate level(H' < 3), while the species richness index remained at a very low level(D_mg > 3.5).
基于深度学习模型和植被特征的土壤类型预测方法优化
森林植被的结构和组成在不同的生态系统功能和服务中发挥着重要作用。本研究旨在利用深度学习模型,根据中加里曼丹高保护价值(HCV)地区 632.04 公顷的植被特征识别土壤类型。植被数据的收集采用了线状横断面和四边形地块相结合的方法。深度学习模型的开发基于植被调查的结果和使用特征分类器方法处理航空照片的结果。应用深度学习模型的结果可以在识别土壤类型方面提供相对准确和一致的预测(Entisols 62%、Spodosols 90%、Ultisols 90%)。Ultisols的植被群落组成以幼苗和乔木(封闭冠层)为主,而Entisols和Spodosols的植被群落组成以幼苗和树苗(开放冠层为主)为主。多元醇的物种丰富度最高(57 种),其次是硅质土(31 种)和 Entisols(14 种)。超微土壤、中微土壤和黑土土壤的物种分布均匀(J'接近 1),没有某些物种占优势(D < 0.5)。物种多样性指数处于中低水平(H' < 3),而物种丰富度指数仍处于极低水平(D_mg > 3.5)。
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来源期刊
Plant Science Today
Plant Science Today PLANT SCIENCES-
CiteScore
1.50
自引率
11.10%
发文量
177
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