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Integrating discrete event simulation and genetic algorithm optimization for bridge maintenance planning

机译:集成离散事件仿真和遗传算法优化对桥梁维护规划

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摘要

To minimize agency and user costs in a bridge repair project, a bridge maintenance manager should develop an appropriate project schedule considering real-world constraints such as resource limitations (e.g., workspace and crew). This paper presents a new framework called Simulation-based Bridge Maintenance Optimization (SiBMO) by integrating Genetic Algorithm (GA) and Discrete Event Simulation (DES) to identify the optimum maintenance plan taking into account crew limitations. The framework optimizes the sequence of repair-activities in the repair interventions considering workspace limitations and predecessor relationships. SiBMO also develops a high-level schedule of the interventions regarding the project calendar and the Traffic Management Plan (TMP). The Bridge Information Model (BrIM) based user interface developed in this study visualizes the high-level schedule. The results of applying SiBMO on a real case study demonstrates its capability in finding the optimum maintenance plan, its efficiency in optimizing the high-level schedule, and its accuracy in estimating user costs.
机译:为了最大限度地减少桥梁维修项目中的代理和用户成本,桥梁维护经理应考虑到诸如资源限制(例如,工作区和工作人员)的实际限制,制定适当的项目时间表。本文通过集成遗传算法(GA)和离散事件仿真(DES)来介绍基于仿真的桥梁维护优化(SIBMO)的新框架,以确定考虑机组局限的最佳维护计划。框架考虑工作空间限制和前任关系,优化修复干预中的维修活动顺序。 SIBMO还开发了关于项目日历和交通管理计划(TMP)的干预措施的高级计划。在本研究中开发的基于桥信息模型(Brim)的用户界面可视化高级计划。在实际案例研究中应用SIBMO的结果证明了其能力在找到最佳维护计划,其在优化高级计划中的效率及其准确性来估算用户成本。

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