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Using interactive archives in evolutionary multiobjective optimization: A case study for long-term groundwater monitoring design

机译:在交互式多目标优化中使用交互式档案:长期地下水监测设计的案例研究

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摘要

Monitoring complex environmental systems is extremely challenging because it requires environmental professionals to capture impacted systems' governing processes, elucidate human and ecologic risks, limit monitoring costs, and satisfy the interests of multiple stakeholders (e.g., site owners, regulators, and public advocates). Evolutionary multiobjective optimization (EMO) has tremendous potential to help resolve these issues by providing environmental stakeholders with a direct understanding of their monitoring tradeoffs. This paper demonstrates how e-dominance archiving and automatic parameterization techniques can be used to significantly improve the ease-of-use and efficiency of EMO algorithms. Results are presented for a four-objective groundwater monitoring design problem in which the archiving and parameterization techniques are combined to reduce computational demands by more than 90% relative to prior published results. The methods of this paper can be easily generalized to other multiobjective applications to minimize computational times as well as trial-and-error parameter analysis.
机译:监视复杂的环境系统具有极大的挑战性,因为它要求环境专业人员捕获受影响系统的治理流程,阐明人员和生态风险,限制监视成本并满足多个利益相关者(例如站点所有者,监管者和公共倡导者)的利益。进化多目标优化(EMO)具有巨大的潜力,可以通过使环境利益相关者直接了解他们的监控权衡来帮助解决这些问题。本文演示了如何使用电子优势归档和自动参数化技术来显着提高EMO算法的易用性和效率。提出了一个四目标地下水监测设计问题的结果,其中结合了归档和参数化技术,相对于先前发表的结果,将计算需求减少了90%以上。本文的方法可以很容易地推广到其他多目标应用程序,以最大程度地减少计算时间以及反复试验参数分析。

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