首页> 外文会议>International Union for Soil Sciences Inaugural Global Workshop on Digital Soil Morphometrics >Numerical Clustering of Soil Series Using Profile Morphological Attributes for Potato
【24h】

Numerical Clustering of Soil Series Using Profile Morphological Attributes for Potato

机译:土壤系列用土豆型形态属性的数值聚类

获取原文

摘要

Potato fertilization response models have been developed for 46 soil series in the province of Quebec, Canada. This study aimed to create a set of representative soil classes based on morphological data so that they reflect suitable soil properties for growing potato. Data of modal soil profiles of soil series contain morphological attributes from master horizons (including bedrock) with diagnoses indicating the absence (0), weak expression (0.5) or presence (1) of specific properties (pedogenetic features), and particle-size distribution. A distance matrix was calculated to represent the aUssimilarity between the soil profiles. Using multidimensional scaling technique, soil profiles distributed in a feature space were clustered using the fuzzy k-means with extragrades algorithm to allow expressing soil groups as continuous variables, hence facilitating modeling. The dissimilarity measure between soil profiles computed using soil descriptions (e.g., color, pH, and C content) at experimental sites showed that genetic horizon indices can be used as a basis to compare and allocate soil profiles to existing classes. In conclusion, numerical clustering provided a quantitative basis to integrate soil profile descriptions into crop response models.
机译:加拿大魁北克省的46个土壤系列已经开发了马铃薯施肥响应模型。本研究旨在根据形态学数据创建一组代表性的土壤类别,以便它们反映了种植马铃薯的合适土壤性能。土壤系列的模态土壤剖面数据含有来自主视野(包括基岩)的形态学属性,所述诊断表明特定性质(基础特征)和粒度分布的缺失(0),弱表达(0.5)或存在(1)和粒度分布。计算距离矩阵以表示土壤分布之间的助误性。利用多维缩放技术,使用具有以外分算法的模糊k算法分布在特征空间中的土壤分布,以允许将土壤组作为连续变量表达,因此促进了建模。在实验网站上使用土壤描述(例如,颜色,pH和C含量)计算的土壤曲线之间的异化测量表明,遗传范围指数可用作比较和将土壤概况分配给现有课程的基础。总之,数值聚类提供了定量基础,以将土壤剖面描述整合到作物响应模型中。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号