土壤光谱中养分浓度预测的不确定性对变速率施肥的影响

IF 6.6 1区 农林科学 Q1 SOIL SCIENCE
T.S. Breure , R. Webster , S.M. Haefele , J.A. Hannam , R. Corstanje , A.E. Milne
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引用次数: 0

摘要

土壤中有效磷(P)和钾(K)的浓度可以通过土壤光谱学来估计,并且可以通过充分的采样来绘制地图,以指导农民以不同的速率施用肥料。由于空间变化和根据化学测定的浓度校准光谱而产生制图误差。我们的目标是开发一个损失函数框架,以探索样本集和校准集的大小如何影响P和K肥料可变速率应用的可能盈利能力。我们通过仿真演示了该方法。根据我们之前对英国剑桥郡四个油田的P和K变化的观察,我们使用地质统计学模拟在每个油田生成了100个P和K的实现。我们这样做了各种组合的总样本和校准集的大小。对于每个这样的样品,我们分配了不同的比例进行校准,理论上土壤光谱和化学浓度都是确定的。我们了解了实地取样的劳动力成本、实验室土壤准备成本、光谱学成本、化学分析成本和设备摊销成本,估算了获取数据的成本。与之相对的是误差成本,即由校准误差和空间变化引起的克里格最终预测中的不确定性成本。对于每种组合,我们计算了最小化与预测相关的预期损失所需的肥料,其中预期损失是根据估计的磷和钾浓度施用肥料与它们的真实浓度之间的利润差。校准集的大小超过了总样本量对与预测相关的不确定性的影响。同样,对于相同规模的校准集,总样本量之间的克里格方差也存在较大差异。当不考虑获取数据的成本时,可用P的预期损失受到总样本量的强烈影响。对于可用K,校准样本大小的影响主导了预期损失。预期损失随样本量的增加而递减。所考虑的样本大小都不会带来经济收益:光谱学需要变得更便宜,以便在磷钾肥的可变速率应用中具有成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The effect of uncertainty in predictions of nutrient concentrations from soil spectra on variable-rate fertilizer applications
The concentrations of available phosphorus (P) and potassium (K) in soil can be estimated by soil spectroscopy, and with sufficient sampling can be mapped to guide farmers to apply fertilizer at variable rates. Mapping errors arise from both spatial variation and calibration of the spectra against chemically determined concentrations. We aimed to develop a loss-function framework to explore how sizes of sample sets and calibration sets affect the likely profitability of variable-rate applications of P and K fertilizers. We demonstrate the approach through simulation. Based on our previous observations of variation in P and K from four fields in Cambridgeshire, England, we generated 100 realizations of P and K in each field using geostatistical simulation. We did so with various combinations of sizes of total sample and calibration set. For each such sample we assigned various proportions for calibration on which notionally both soil spectroscopy and chemical concentrations were determined. Knowing the costs for labour in the field for sampling, the preparation of soil in the laboratory, the spectroscopy, chemical analysis and amortization of equipment, we estimated the costs of acquiring data. Set against these were the costs of error, i.e. of uncertainty, in the final predictions by kriging arising from calibration error and spatial variation. For each combination we computed the fertilizer required to minimize the expected loss associated with predictions, where the expected loss is the difference in profit between applying fertilizer for the estimated concentrations of P and K and their true concentrations. The size of the calibration set outweighed the effect of total sample size on the uncertainty associated with predictions. Equally, for the same size of calibration set, there were large differences in the kriging variances between total sample sizes. When the costs of acquiring data were disregarded, the expected loss for available P was strongly affected by the total sample size. For available K, the effect of the size of the calibration sample dominated the expected loss. The expected loss showed diminishing returns with increasing sample size. None of the sample sizes considered would result in a financial gain: spectroscopy needs to become cheaper for it to be cost-effective for variable-rate applications of P and K fertilizer.
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来源期刊
Geoderma
Geoderma 农林科学-土壤科学
CiteScore
11.80
自引率
6.60%
发文量
597
审稿时长
58 days
期刊介绍: Geoderma - the global journal of soil science - welcomes authors, readers and soil research from all parts of the world, encourages worldwide soil studies, and embraces all aspects of soil science and its associated pedagogy. The journal particularly welcomes interdisciplinary work focusing on dynamic soil processes and functions across space and time.
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