Modeling Uncertainty in Large Natural Resource Allocation Problems

Y. Cai, J. Steinbuks, K. Judd, J. Jägermeyr, T. Hertel
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引用次数: 4

Abstract

The productivity of the world's natural resources is critically dependent on a variety of highly uncertain factors, which obscure individual investors and governments that seek to make long-term, sometimes irreversible investments in their exploration and utilization. These dynamic considerations are poorly represented in disaggregated resource models, as incorporating uncertainty into large-dimensional problems presents a challenging computational task. This study introduces a novel numerical method to solve large-scale dynamic stochastic natural resource allocation problems that cannot be addressed by conventional methods. The method is illustrated with an application focusing on the allocation of global land resource use under stochastic crop yields due to adverse climate impacts and limits on further technological progress. For the same model parameters, the range of land conversion is considerably smaller for the dynamic stochastic model as compared to deterministic scenario analysis. The scenario analysis can thus significantly overstate the magnitude of expected land conversion under uncertain crop yields.
大型自然资源配置问题的不确定性建模
世界自然资源的生产率严重依赖于各种高度不确定的因素,这些因素使寻求在勘探和利用方面进行长期、有时是不可逆转投资的个人投资者和政府感到困惑。这些动态考虑在分解资源模型中表现得很差,因为将不确定性纳入大维度问题是一项具有挑战性的计算任务。本文提出了一种新的数值方法来解决传统方法无法解决的大规模动态随机自然资源配置问题。该方法以一个应用为例进行了说明,该应用侧重于由于不利的气候影响和进一步技术进步的限制而导致的随机作物产量下的全球土地资源利用分配。在相同的模型参数下,动态随机模型的土地转换范围明显小于确定性情景分析。因此,在作物产量不确定的情况下,情景分析可能会大大夸大预期的土地转换率。
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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