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Taking account of uncertainties in digital land suitability assessment

机译:在数字土地适宜性评估中考虑不确定性

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摘要

Simulations are used to generate plausible realisations of soil and climatic variables for input into an enterprise land suitability assessment (LSA). Subsequently we present a case study demonstrating a LSA (for hazelnuts) which takes into account the quantified uncertainties of the biophysical model input variables. This study is carried out in the Meander Valley Irrigation District, Tasmania, Australia. It is found that when comparing to a LSA that assumes inputs to be error free, there is a significant difference in the assessment of suitability. Using an approach that assumes inputs to be error free, 56% of the study area was predicted to be suitable for hazelnuts. Using the simulation approach it is revealed that there is considerable uncertainty about the ‘error free’ assessment, where a prediction of ‘unsuitable’ was made 66% of the time (on average) at each grid cell of the study area. The cause of this difference is that digital soil mapping of both soil pH and conductivity have a high quantified uncertainty in this study area. Despite differences between the comparative methods, taking account of the prediction uncertainties provide a realistic appraisal of enterprise suitability. It is advantageous also because suitability assessments are provided as continuous variables as opposed to discrete classifications. We would recommend for other studies that consider similar FAO (Food and Agriculture Organisation of the United Nations) land evaluation framework type suitability assessments, that parameter membership functions (as opposed to discrete threshold cutoffs) together with the simulation approach are used in concert.
机译:模拟用于生成土壤和气候变量的合理实现,以输入企业土地适宜性评估(LSA)。随后,我们提出了一个案例研究,展示了LSA(用于榛子),其中考虑了生物物理模型输入变量的量化不确定性。这项研究是在澳大利亚塔斯马尼亚州的河谷灌溉区进行的。发现与假设输入无错误的LSA进行比较时,适用性评估存在显着差异。使用一种假设输入没有错误的方法,预测研究区域的56%适用于榛子。使用模拟方法表明,“无错误”评估存在相当大的不确定性,在研究区域的每个网格单元中,平均有66%的时间(平均)做出“不合适”的预测。造成这种差异的原因是,在此研究区域中,土壤pH和电导率的数字土壤制图具有很高的量化不确定性。尽管比较方法之间存在差异,但考虑到预测的不确定性仍可对企业的适用性进行实际评估。也是有利的,因为与离散分类相反,适合性评估被提供为连续变量。对于其他考虑类似粮农组织(联合国粮食及农业组织)土地评估框架类型适宜性评估的研究,我们建议将参数隶属函数(与离散阈值截断相反)与模拟方法一起使用。

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