A System to Evaluate Prime Farmland Reclamation Success Based on Spatial Soil Properties

Dustin L. Corr
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Abstract

Abstract. Scholars, governmental agencies, and concerned citizens are interested in developing empirical predictive models to quantitatively assess the vegetative productivity potentials of reconstructed soils (neo- sols). This research presents equations for a northern Michigan mining region in the Upper Peninsula of Michigan, based on data derived from the National Resources Conservation Service. We employed principal component analysis to develop models to predict the vegetative productivity of corn, corn silage, oats, alfalfa/hay, Irish potatoes, red maple (Acer rubrum L.), white spruce (Picea glauca [Moench] Voss), red pine (Pinus resinosa Aniton), eastern white pine (Pinus strobus L.), jack pine (Pinus banksiana Lamb.), and lilac (Syringa vulgaris L.). Soil attributes that were examined in this research include: available water holding capacity, moist bulk density, % clay, % rock fragments, hydraulic conductivity, % organic matter, soil reactivity, % slope, and topographic position. Four predictive equations based on landscape topography have been developed and are described as an all-mesic woody plant and crop equation, a xeric equation, an equation specific to jack pine, and a wet environment equation. The models were highly significant (p<0.0001) and explained 87.93%, 74.52%, 65.33%, and 87.68% of the variation in site productivity of the respective landscape setting. These equations are intended to assist in efforts to assess the vegetative productivity potentials of reconstructed soils on post-mined landscapes and other disturbed landscapes.
基于空间土壤特性的基本农田复垦成功评价系统
摘要学者、政府机构和相关公民都对开发经验预测模型来定量评估重建土壤(新土壤)的植被生产力潜力感兴趣。本研究根据美国国家资源保护局的数据,提出了密歇根上半岛北密歇根矿区的方程。采用主成分分析法建立了玉米、青贮玉米、燕麦、苜蓿/干草、爱尔兰马铃薯、红枫(Acer rubrum L.)、白云杉(Picea glauca [Moench] Voss)、红松(Pinus resinosa Aniton)、东部白松(Pinus strobus L.)、短叶松(Pinus banksiana Lamb.)和丁香(Syringa vulgaris L.)的营养生产力预测模型。本研究中考察的土壤属性包括:有效持水量、湿容重、粘土、岩石碎片、水力导电性、有机质、土壤反应性、坡度和地形位置。以景观地形为基础,建立了4个预测方程,分别为全域木本植物和作物方程、干旱方程、短叶松方程和湿润环境方程。这些模型都非常显著(p<0.0001),分别解释了87.93%、74.52%、65.33%和87.68%的景观环境下的场地生产力变化。这些方程旨在帮助评估开采后景观和其他受干扰景观上重建土壤的植被生产力潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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