论文标题
模拟复杂农作物产量模拟器的贝叶斯分层框架
A Bayesian hierarchical framework for emulating a complex crop yield simulator
论文作者
论文摘要
复杂的计算机模拟的仿真已成为探索模拟过程行为的有效工具。农业是一个这样的领域,在任何土地管理决策中,模拟农作物生长,营养,土壤状况和污染都可能是无价的。在本文中,我们研究了史诗模拟模型的输出,以研究作物产量的行为,以应对肥料水平,土壤,陡度和其他环境协变量等投入的变化。我们建立了一个围绕非线性三藻黄色生长模型的农作物产量的模型,以推断作物产量对变化的反应连续输入变量(肥料水平),并探索分类因子输入(例如土地陡度和土壤类型)的影响。贝叶斯分层的模型方法正在采用混合输入,要求马尔可夫链蒙特卡洛模拟从后分布中获取样品,以验证和说明结果并进行模型选择。我们的结果突出了对氮的产量的强烈反应,但令人惊讶的是,对磷的反应较弱,还显示了该模型对此特定模拟器构型和流域的最大产量的响应后的大幅改进。
Emulation of complex computer simulations have become an effective tool in the exploration of the behaviour of the simulated processes. Agriculture is one such area where the simulation of crop growth, nutrition, soil condition and pollution could be invaluable in any land management decisions. In this paper, we study output from the EPIC simulation model to investigate the behaviour of crop yield in response to changes in inputs such as fertilizer levels, soil, steepness, and other environmental covariates. We build a model for crop yield around a non-linear Mitscherlich Baule growth model to make inferences about the response of crop yield to changes continuous input variables (fertiliser levels), as well as exploring the impact of categorical factor inputs such as land steepness and soil type. A Bayesian hierarchical approach to the modelling was taking for mixed inputs, requiring Markov Chain Monte Carlo simulations to obtain samples from the posterior distributions, to validate and illustrate the results, and to carry out model selection. Our results highlight a strong response of yield to nitrogen, but surprisingly a weak response to phosphorus and also shows the substantial improvement of the model after adding factor effects response to maximum yield for this particular simulator configuration and catchment.