利用遗传算法和基于神经网络的代用模型优化桥梁加固选择以管理地震风险

IF 2 3区 工程技术 Q2 ENGINEERING, CIVIL
Rodrigo Silva-Lopez, Jack W. Baker
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引用次数: 0

摘要

本研究使用遗传算法作为优化框架的一部分,直接最小化地震事件引发的道路网络中断的预期影响。这种最小化是通过选择一组最优的桥梁进行改造来实现的,以减少它们在地震后不可用的可能性。我们提出了一种优于其他改造技术的遗传算法,例如根据脆弱性或交通重要性对桥梁进行排名。以旧金山公路网为试验平台,对提出的框架进行了论证。这个例子表明,由遗传算法选择的桥梁是结构上脆弱的桥梁群体,在网络中充当走廊。此外,本研究评估并推荐了可以减少该方法计算成本的域约简技术和超参数校准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Bridge Retrofitting Selection for Seismic Risk Management Using Genetic Algorithms and Neural Network–Based Surrogate Models
This study uses genetic algorithms as part of an optimization framework to directly minimize the expected impacts of road network disruption triggered by seismic events. This minimization is achieved by selecting an optimal set of bridges to retrofit to decrease their probability of being unavailable after an earthquake. We propose a genetic algorithm that outstrips other retrofitting techniques, such as ranking bridges by vulnerability or traffic importance. The proposed framework is demonstrated using the San Francisco Road Network as a testbed. This example shows that bridges selected by genetic algorithms are structurally vulnerable groups of bridges that act as corridors in the network. Additionally, this study evaluates and recommends domain reduction techniques and hyperparameter calibrations that can decrease the computational costs of this approach.
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来源期刊
Journal of Infrastructure Systems
Journal of Infrastructure Systems ENGINEERING, CIVIL-
CiteScore
6.10
自引率
6.10%
发文量
68
审稿时长
6 months
期刊介绍: The Journal of Infrastructure Systems publishes cross-disciplinary papers about managing, sustaining, enhancing, and transforming civil infrastructure systems. Papers are expected to contribute new knowledge through development, application, or implementation of innovative methodologies or technologies. Civil infrastructure systems enable thriving societies and healthy ecosystems. Civil infrastructure systems support transportation; energy production and distribution; water resources management; waste management; civic facilities in urban and rural communities; communications; sustainable resources development; and environmental protection. These physical, social, ecological, economic, and technological systems are complex and interrelated. Increasingly, inter- and multidisciplinary expertise is needed not only to design and build these systems, but to manage, sustain, enhance, and transform them as well. Typical management problems are fraught with uncertain information, multiple and conflicting objectives, and sometimes numerous and conflicting constituencies. Solutions are both complex and cross-disciplinary in nature and require the thoughtful integration of sound engineering judgment, economic flexibility, social equity, and institutional forbearance. Papers considered for publication must contain a well-defined engineering component and articulate a clear contribution to the art and science related to infrastructure systems. Potential authors should consult the ASCE Author Guide for acceptable paper formats and article types.
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