利用空间聚类数据挖掘技术分析农业土壤数据

Hongju Gao
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引用次数: 4

摘要

空间聚类作为一种无监督学习方法,已成为农业土壤数据分析的重要技术之一。土壤数据分析通常涉及农业生产管理实践或农业生态系统过程中的发现,不易获得需要人为干预的标记数据,提前设定特定模式也不现实。本文以农业为研究对象,对空间聚类技术在土壤数据分析方面的研究进展进行了综述。首先介绍了土壤特性(包括物理、化学和生物特性)和空间土壤数据的特征。然后将空间聚类技术归纳为五个不同的类别。本文从农业生产经营区划、土壤与土地综合评价、土壤与土地分类、农业生态系统相关性研究等四个方面综述了空间聚类在土壤数据分析中的应用。传统的聚类算法通常效果良好,而基于原型的聚类方法在实践中更受青睐。为了更好地适应土壤数据集的各种特征,可以在空间聚类算法中进一步引入一些机器学习模型。
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Agricultural Soil Data Analysis Using Spatial Clustering Data Mining Techniques
As an unsupervised learning method, spatial clustering has emerged to be one of the most important techniques in the field of agriculture for soil data analysis. Soil data analysis is usually related to practice in agricultural production management or discovery in agro-ecosystem process, so it is not easy to obtain labeled data that requires human intervention, and it is also not realistic to set specified pattern in advance. It is desirable to review the research work on soil data analysis using spatial clustering techniques in context of agricultural applications, which is the object of this survey. Soil properties (including physical, chemical, and biological properties) and the characteristics of the spatial soil data are first introduced. Spatial clustering techniques are then summarized in five different categories. Soil data analysis using spatial clustering is reviewed in four categories of agricultural applications: agricultural production management zoning, comprehensive assessment of soil and land, soil and land classification, and correlation study for agro-ecosystem. The traditional clustering algorithms generally work well, and prototype-based clustering methods are more preferred in practice. Some machine learning models can be further introduced into the spatial clustering algorithms for better accommodation to various characteristics of soil dataset.
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