...
首页> 外文期刊>Frontiers in Environmental Science >Bayesian inference for stochastic individual-based models of ecological systems: a pest control simulation study
【24h】

Bayesian inference for stochastic individual-based models of ecological systems: a pest control simulation study

机译:基于随机个体的生态系统模型的贝叶斯推断:害虫控制模拟研究

获取原文

摘要

Mathematical models are of fundamental importance in the understanding of complex population dynamics. For instance, they can be used to predict the population evolution starting from different initial conditions or to test how a system responds to external perturbations. For this analysis to be meaningful in real applications, however, it is of paramount importance to choose an appropriate model structure and to infer the model parameters from measured data. While many parameter inference methods are available for models based on deterministic ordinary differential equations, the same does not hold for more detailed individual-based models. Here we consider, in particular, stochastic models in which the time evolution of the species abundances is described by a continuous-time Markov chain. These models are governed by a master equation that is typically difficult to solve. Consequently, traditional inference methods that rely on iterative evaluation of parameter likelihoods are computationally intractable. The aim of this paper is to present recent advances in parameter inference for continuous-time Markov chain models, based on a moment closure approximation of the parameter likelihood, and to investigate how these results can help in understanding, and ultimately controlling, complex systems in ecology. Specifically, we illustrate through an agricultural pest case study how parameters of a stochastic individual-based model can be identified from measured data and how the resulting model can be used to solve an optimal control problem in a stochastic setting. In particular, we show how the matter of determining the optimal combination of two different pest control methods can be formulated as a chance constrained optimization problem where the control action is modeled as a state reset, leading to a hybrid system formulation.
机译:数学模型对于理解复杂的人口动态至关重要。例如,它们可用于预测从不同的初始条件开始的种群演化,或用于测试系统如何响应外部干扰。为了使这种分析在实际应用中有意义,选择合适的模型结构并从测量数据中推断模型参数至关重要。尽管许多参数推断方法可用于基于确定性常微分方程的模型,但对于更详细的基于个体的模型则不适用。在这里,我们特别考虑随机模型,其中通过连续时间马尔可夫链描述物种丰富度的时间演化。这些模型由通常很难求解的主方程控制。因此,依赖于参数似然的迭代评估的传统推理方法在计算上是棘手的。本文的目的是基于参数似然的矩闭合近似,介绍连续时间马尔可夫链模型的参数推断的最新进展,并研究这些结果如何帮助理解和最终控制复杂的系统。生态。具体而言,我们通过农业害虫案例研究说明了如何从测量数据中识别基于随机个体的模型的参数,以及如何将所得模型用于解决随机环境中的最优控制问题。特别是,我们展示了如何将确定两种不同害虫控制方法的最佳组合的问题表达为机会受限的优化问题,其中将控制行为建模为状态重置,从而形成混合系统。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号