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PARAMETER ESTIMATION, RELIABILITY, AND MODEL IMPROVEMENT FOR SPATIALLY EXPLICIT MODELS OF ANIMAL POPULATIONS

机译:动物种群空间显式模型的参数估计,可靠性和模型改进

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摘要

We address model specification, parameter estimation, and model reliability for spatially explicit population models (SEPMs). We assume that these models have the complementary goals of understanding the processes that influence the number and distribution of animals in space and time, and forecasting the effect of management or other human activities on population abundance and distribution. Incorrect model structure, parameter estimates, or both will result in unreliable model output. Spatially explicit models require knowledge of population spatial structure, dispersal, and movement rates, in addition to the usual demographic parameters and structural assumptions such as density-dependence, and are thus potentially very vulnerable to propagation of model uncertainty. Sensitivity analysis and validation can both be used to evaluate the reliability of SEPMs, but the level of spatiotemporal resolution at which the model should be evaluated is often not clear. Many SEPMs are very complex, and validation may only be possible or meaningful on a sub-model basis. Forecasting, that is, prediction under a different set of conditions than that under which the model was built, will provide a stronger test of model reliability. Forecasts from SEPMs can be used to generate hypotheses that can then be tested as parts of large-scale adaptive management experiments. In this way resource management goals can be achieved, while providing enhanced understanding of systems and improved predictability of future scenarios. [References: 16]
机译:我们针对空间明确的人口模型(SEPM)解决模型规范,参数估计和模型可靠性问题。我们假设这些模型的补充目标是理解影响动物在时空上的数量和分布的过程,并预测管理或其他人类活动对种群数量和分布的影响。错误的模型结构,参数估计值或两者都不正确,将导致模型输出不可靠。除了通常的人口统计参数和结构假设(例如密度依赖性)之外,空间显式模型还需要了解种群空间结构,分布和移动速率,因此可能非常容易传播模型不确定性。灵敏度分析和验证都可以用来评估SEPM的可靠性,但是评估模型时空分辨率的水平通常并不明确。许多SEPM非常复杂,验证只能在子模型的基础上进行或有意义。预测,即在与建立模型的条件不同的一组条件下进行的预测,将提供对模型可靠性的更强有力的检验。 SEPM的预测可用于生成假设,然后将其作为大规模自适应管理实验的一部分进行测试。通过这种方式,可以实现资源管理目标,同时增强对系统的了解并提高未来方案的可预测性。 [参考:16]

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