Chatterjee Sourov, Santra Priyabrata, Majumdar Kaushik, Ghosh Debjani, Das Indranil, Sanyal S K
Department of Agricultural Chemistry and Soil Science, Bidhan Chandra Krishi Viswavidyalaya, Mohanpur Nadia, West Bengal, 741252, India,
Environ Monit Assess. 2015 Apr;187(4):183. doi: 10.1007/s10661-015-4414-9. Epub 2015 Mar 15.
A large part of precision agriculture research in the developing countries is devoted towards precision nutrient management aspects. This has led to better economics and efficiency of nutrient use with off-farm advantages of environmental security. The keystone of precision nutrient management is analysis and interpretation of spatial variability of soils by establishing management zones. In this study, spatial variability of major soil nutrient contents was evaluated in the Ghoragacha village of North 24 Parganas district of West Bengal, India. Surface soil samples from 100 locations, covering different cropping systems of the village, was collected from 0 to 15 cm depth using 100×100 m grid system and analyzed in the laboratory to determine organic carbon (OC), available nitrogen (N), phosphorus (P), and potassium (K) contents of the soil as well as its water-soluble K (KWS), exchangeable K (KEX), and non-exchangeable forms of K (KNEX). Geostatistical analyses were performed to determine the spatial variation structure of each nutrient content within the village, followed by the generation of surface maps through kriging. Four commonly used semivariogram models, i.e., spherical, exponential, Gaussian, and linear models were fitted to each soil property, and the best one was used to prepare surface maps through krigging. Spherical model was found the best for available N and P contents, while linear and exponential model was the best for OC and available K, and for KWS and KNEK, Gausian model was the best. Surface maps of nutrient contents showed that N content (129-195 kg ha(-1)) was the most limiting factor throughout the village, while P status was generally very high ( 10-678 kg ha(-1)) in the soils of the present village. Among the different soil K fractions, KWS registered the maximum variability (CV 75%), while the remaining soil K fractions showed moderate to high variation. Interestingly, KNEX content also showed high variability, which essentially indicates reserve native K exploitation under intensive cultivation. These maps highlight the necessity of estimating the other soil K fractions as well for better understanding of soil K supplying capacity and K fertilization strategy rather than the current recommendations, based on the plant-available K alone. In conclusion, the present study revealed that the variability of nutrient distribution was a consequence of complex interactions between the cropping system, nutrient application rates, and the native soil characteristics, and such interactions could be utilized to develop the nutrient management strategies for intensive small-holder system.
发展中国家精准农业研究的很大一部分致力于精准养分管理方面。这带来了更好的经济效益和养分利用效率,并具有保障环境安全的非农业优势。精准养分管理的关键在于通过建立管理区来分析和解释土壤的空间变异性。在本研究中,对印度西孟加拉邦北24帕根那斯区戈拉加查村主要土壤养分含量的空间变异性进行了评估。使用100×100米的网格系统,从覆盖该村不同种植系统的100个地点采集了0至15厘米深度的表层土壤样本,并在实验室进行分析,以测定土壤的有机碳(OC)、速效氮(N)、磷(P)和钾(K)含量,以及其水溶性钾(KWS)、交换性钾(KEX)和非交换性钾形态(KNEX)。进行了地统计分析以确定村内各养分含量的空间变异结构,随后通过克里金法生成表面图。将四种常用的半变异函数模型,即球状模型、指数模型、高斯模型和线性模型,分别拟合到每种土壤性质上,并使用最佳模型通过克里金法绘制表面图。发现球状模型对速效氮和磷含量最适用,而线性和指数模型对有机碳和速效钾最适用,对于水溶性钾和非交换性钾,高斯模型最适用。养分含量的表面图显示,氮含量(129 - 195千克/公顷)是全村最具限制作用的因素,而该村土壤中的磷含量总体上非常高(10 - 678千克/公顷)。在不同的土壤钾组分中,水溶性钾的变异性最大(变异系数75%),而其余土壤钾组分表现出中等至高变异性。有趣的是,非交换性钾含量也表现出高变异性,这基本上表明在集约种植下对土壤中储备原生钾的利用。这些图突出了除了目前仅基于植物有效钾的建议外,还需估算其他土壤钾组分,以便更好地了解土壤钾供应能力和钾肥施用策略的必要性。总之,本研究表明,养分分布的变异性是种植系统、养分施用量和原生土壤特性之间复杂相互作用的结果,这种相互作用可用于制定集约化小农户系统的养分管理策略。