基于优化的仿真模型开发:解决鲁棒性问题

J. Debuse, S. Miah
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引用次数: 1

摘要

用数学模型来表示生物系统正变得越来越流行。数学模型可以基于来自科学文献、专家意见、实地和实验室研究的现有知识。然而,在模型开发中存在包括鲁棒性在内的重要问题。因此,本研究探讨了如何使用优化方法自动提高模型质量。具体而言,我们研究了最近开发的森林害虫物种鲁棒模型如何通过优化进一步提高其鲁棒性,该模型在风险预测[3]等领域具有潜在的应用前景。数字生态系统通过应用设计科学方法为实现优化提供了强大而广泛的方法基础和支持。
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Optimization based simulation model development: Solving robustness issues
Mathematical models are becoming popular to represent biological systems. A mathematical model can be based upon existing knowledge from scientific literature, expert opinion, and field and laboratory studies. However, there are significant issues in model development including robustness. This study therefore examines how model quality can be improved automatically using optimization approaches. Specifically, we examine how a recently developed robust model of a forest pest species, with potential application in areas such as risk prediction [3], may have its robustness further increased using optimization. Digital eco-systems provide a powerful and broader methodological foundation and support for the implementation of optimization through application of the design science method1.
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