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A Bayesian Regression Model for Estimating Average Daily Traffic Volumes for Low Volume Roadways

机译:贝叶斯回归模型,用于估算低批量道路的平均每日交通量

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Common Average Daily Traffic (ADT) estimation models use Linear Regression and a collection of socio-economic and roadway variables. While linear regression is widely understood, it is not always optimal for developing prediction models as the regression techniques don't have the ability to account for data distributions, or variability of the point estimates. To overcome this limitation, this paper presents a study that utilizes a Bayesian Regression model to develop a model to estimate ADT values for low volume roadways. The need for ADT estimates is critical as roadway traffic counts are the backbone of maintenance, safety and construction designs. While significant investment is made in collecting ADT values for higher functionally classified and high volume roadways, low volume roadways are often neglected in the traffic count program due to budget limitations and the misguided notion that there is limited return on investment in counting these facilities. This research developed a technique to estimate ADT for local roads in Alabama incorporating variables used in previous studies and a Bayesian Regression model. The final Bayesian Regression model relies on four independent variables: number of households in the area, employment in the area, population to job ratio and access to major roads. The model was used to generate ADT estimates on low-volume rural, local roads for 12 counties in Alabama. The paper concludes that the model can be used to predict the ADT for low-volumes roadways in Alabama for future applications.
机译:常见的平均每日交通(ADT)估计模型使用线性回归和社会经济和道路变量的集合。虽然广泛理解线性回归,但是对于开发预测模型并不总是最佳的,因为回归技术没有考虑数据分布的能力,或者点估计的可变性。为了克服这种限制,本文提出了一种利用贝叶斯回归模型来开发模型来估算低批量道路的ADT值。 ADT估计的需求至关重要,因为道路交通计数是维护,安全和施工设计的骨干。虽然在收集更高功能分类和高批量道路的ADT价值方面进行了大量投资,但由于预算限制和误导的概念,在交通计数方案中往往忽略了低批量的道路,以及计数投资回报这些设施的投资回报率。该研究开发了一种技术来估算阿拉巴马州的当地道路的ADT,该研究包括以前研究和贝叶斯回归模型的变量。最终的贝叶斯回归模型依赖于四个独立变量:该地区的家庭数量,该地区的就业,人口与工作率和主要道路。该模型用于在阿拉巴马州12个县的低批量农村,当地道路上产生ADT估计。本文的结论是,该模型可用于预测阿拉巴马州的低卷道路的ADT,以供未来的应用。

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