Optimization and Control of Agent-Based Models in Biology: A Perspective

被引:0
作者
G. An
B. G. Fitzpatrick
S. Christley
P. Federico
A. Kanarek
R. Miller Neilan
M. Oremland
R. Salinas
R. Laubenbacher
S. Lenhart
机构
[1] University of Chicago,Department of Surgery
[2] Loyola Marymount University,Department of Mathematics
[3] and Tempest Technologies,Department of Clinical Science
[4] University of Texas,Department of Mathematics, Computer Science, and Physics
[5] Southwestern Medical Center,Department of Mathematics and Computer Science
[6] Capital University,Mathematical Biosciences Institute
[7] U.S. Environmental Protection Agency,Department of Mathematical Sciences
[8] Duquesne University,Center for Quantitative Medicine
[9] Ohio State University,Department of Mathematics and NIMBioS
[10] Appalachian State University,undefined
[11] UConn Health,undefined
[12] and Jackson Laboratory for Genomic Medicine,undefined
[13] University of Tennessee,undefined
来源
Bulletin of Mathematical Biology | 2017年 / 79卷
关键词
Agent-based modeling; Systems theory; Optimization; Optimal control;
D O I
暂无
中图分类号
学科分类号
摘要
Agent-based models (ABMs) have become an increasingly important mode of inquiry for the life sciences. They are particularly valuable for systems that are not understood well enough to build an equation-based model. These advantages, however, are counterbalanced by the difficulty of analyzing and using ABMs, due to the lack of the type of mathematical tools available for more traditional models, which leaves simulation as the primary approach. As models become large, simulation becomes challenging. This paper proposes a novel approach to two mathematical aspects of ABMs, optimization and control, and it presents a few first steps outlining how one might carry out this approach. Rather than viewing the ABM as a model, it is to be viewed as a surrogate for the actual system. For a given optimization or control problem (which may change over time), the surrogate system is modeled instead, using data from the ABM and a modeling framework for which ready-made mathematical tools exist, such as differential equations, or for which control strategies can explored more easily. Once the optimization problem is solved for the model of the surrogate, it is then lifted to the surrogate and tested. The final step is to lift the optimization solution from the surrogate system to the actual system. This program is illustrated with published work, using two relatively simple ABMs as a demonstration, Sugarscape and a consumer-resource ABM. Specific techniques discussed include dimension reduction and approximation of an ABM by difference equations as well systems of PDEs, related to certain specific control objectives. This demonstration illustrates the very challenging mathematical problems that need to be solved before this approach can be realistically applied to complex and large ABMs, current and future. The paper outlines a research program to address them.
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页码:63 / 87
页数:24
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