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Dealing with Uncertainty in Agent-Based Simulation: Farm-Level Modeling of Adaptation to Climate Change in Southwest Germany

机译:在基于Agent的仿真中处理不确定性:德国西南部针对气候变化的农场级建模

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Climate change will most likely confront agricultural producers with natural, economic, and political conditions that have not previously been observed and are largely uncertain. As a consequence, extrapolation from past data reaches its limits, and a process-based analysis of farmer adaptation is required. Simulation of changes in crop yields using crop growth models is a first step in that direction. However, changes in crop yields are only one pathway through which climate change affects agricultural production. A meaningful process-based analysis of farmer adaptation requires a whole-farm analysis at the farm level. We use a highly disaggregated mathematical programming model to analyze farm-level climate change adaptation for a mountainous area in southwest Germany. Regional-level results are obtained by simulating each full-time farm holding in the study area. We address parameter uncertainty and model underdetermination using a cautious calibration approach and a comprehensive uncertainty analysis. We deal with the resulting computational burden using efficient experimental designs and high-performance computing. We show that in our study area, shifted crop management time slots can have potentially significant effects on agricultural supply, incomes, and various policy objectives promoted under German and European environmental policy schemes. The simulated effects are robust against model uncertainty and underline the importance of a comprehensive assessment of climate change impacts beyond merely looking at crop yield changes. Our simulations demonstrate how farm-level models can contribute to a process-based analysis of climate change adaptation if they are embedded into a systematic framework for treating inherent model uncertainty.
机译:气候变化极有可能使农业生产者面临自然,经济和政治条件,这些条件以前从未被观察到,并且在很大程度上不确定。结果,从过去的数据推断就达到了极限,因此需要对农民的适应性进行基于过程的分析。使用作物生长模型模拟作物产量的变化是该方向的第一步。但是,作物单产的变化只是气候变化影响农业生产的一种途径。对农民适应性进行基于过程的有意义的分析需要在农场一级进行全农场分析。我们使用高度分解的数学规划模型来分析德国西南山区的农场级气候变化适应。通过模拟研究区域中的每个全日制农场所获得的区域级结果。我们使用谨慎的校准方法和全面的不确定性分析解决参数不确定性和模型不确定性问题。我们使用高效的实验设计和高性能计算来应对由此产生的计算负担。我们表明,在我们的研究区域中,轮换的作物管理时间段可能会对农业供应,收入以及德国和欧洲环境政策计划所提倡的各种政策目标产生重大影响。模拟效果对于模型不确定性具有鲁棒性,并强调了对气候变化影响进行全面评估的重要性,而不仅仅是查看作物产量的变化。我们的仿真表明,如果将农场级模型嵌入到用于处理固有模型不确定性的系统框架中,它们将如何有助于基于过程的气候变化适应性分析。

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