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Risk-based vulnerability assessment for transportation infrastructure performance

机译:基于风险的脆弱性评估,以提高运输基础设施的绩效

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In recent years, several high profile weather events, earthquakes, man-made incidents, and other disruptive events have caused significant disruption to the flow of goods and services across large-scale transportation networks. Resulting economic and safety repercussions of these events are associated with reduced efficiency of movement, cost-overruns, and supply disruptions for freight movement. As transportation infrastructure is vulnerable to a variety of uncertain future conditions, transportation management in coordination with industry must recognise uncertainties in future events during stages of distribution planning. This paper describes a scenario-based Bayesian approach to evaluate evidence from big-data resources, such as geographic landscape and demographic data, to identify vulnerable sections of the transportation network. This method contributes to organisational priority setting by considering the influence of a variety of scenarios on priorities, thereby identifying robust risk-informed investments for the protection of geographically diverse large-scale infrastructure systems. The approach will allow decision-makers to utilise a data-driven graphical model for network operations, with updated beliefs as new evidence emerges. The methods are demonstrated on a critical transportation network in the Commonwealth of Virginia. The results are useful to stakeholders responsible for promoting efficiency across transportation networks, such as infrastructure managers, supply chain managers, disaster relief organisations.
机译:近年来,几起备受瞩目的天气事件,地震,人为事件和其他破坏性事件已导致大规模运输网络中货物和服务的流动受到严重破坏。这些事件在经济和安全方面造成的影响与运输效率降低,成本超支以及货运中断供应有关。由于运输基础设施容易受到各种不确定的未来状况的影响,因此与运输业协调的运输管理必须在配电计划阶段认识到未来事件的不确定性。本文介绍了一种基于场景的贝叶斯方法,用于评估来自大数据资源(例如地理景观和人口统计数据)的证据,以识别交通网络中的脆弱区域。通过考虑各种场景对优先级的影响,此方法有助于确定组织的优先级,从而确定可靠的风险相关投资来保护地理上各不相同的大型基础架构系统。该方法将使决策者能够利用数据驱动的图形模型进行网络运营,并随着新证据的出现而更新观念。该方法已在弗吉尼亚联邦的关键交通网络上得到证明。结果对于负责在整个运输网络中提高效率的利益相关者(例如基础架构经理,供应链经理,救灾组织)很有用。

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