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Predicting Oil Production Sites for Planning Road Infrastructure: Trip Generation Using SIR Epidemic Model

机译:预测规划道路基础设施的石油生产站点:使用SIR流行模式的行程

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Drilling activity produces a significant amount of road traffic through unpaved and paved local roads. Because oil production is an important contributor to the local economy in the state of North Dakota, the state and local transportation agencies make efforts to support local energy logistics through the expansion and good repair and maintenance of transportation infrastructure. As part of this effort, it is important to build new roads and bridges, maintain existing road pavement and non-marked road surface conditions, and improve bridge and other transportation infrastructure. Therefore, the purpose of this study is to review previous oil location prediction models and propose a novel geospatial model to predict drilling locations which have a significant impact on local roads, to verify and provide a better prediction model. Then, this study proposes a SIR (susceptible–infected–recovered) epidemic model to predict oil drilling locations which are traffic generators. The simulation has been done on the historical data from 1980 to 2015. The study found that the best fit parameters of β (contact rate) and μ (recovery rate) were estimated by using a dataset of historical oil wells. The study found that the SIR epidemic model can be applied to predict the locations of oil wells. The proposed model can be used to predict other drilling locations and can assist with traffic, road conditions, and other related issues, which is a much needed predictive model that is key in transportation planning and pavement design and maintenance.
机译:钻井活动通过未铺砌和铺设的当地道路产生大量的道路交通。由于石油产量是北达科他州地区当地经济的重要贡献者,国家和当地的交通机构通过扩大和良好的运输基础设施的修理和维护,努力支持当地能源物流。作为这项努力的一部分,建造新的道路和桥梁,保持现有的道路路面和非标线表面状况,以及改善桥梁等交通基础设施。因此,本研究的目的是审查以前的油位置预测模型,并提出了一种新的地理空间模型,以预测对当地道路产生显着影响的钻井位置,以验证和提供更好的预测模型。然后,本研究提出了先生(易感感染的)疫情模型,以预测是交通发电机的石油钻井位置。该研究已经从1980年到2015年完成了历史数据。研究发现,通过使用历史油井的数据集来估计β(接触率)和μ(回收率)的最佳拟合参数。该研究发现,SIR疫情模型可以应用于预测油井的位置。所提出的模型可用于预测其他钻井位置,可以帮助交通,道路状况和其他相关问题,这是一种需要的预测模型,是运输规划和路面设计和维护的关键。

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