首页> 外文会议>Seventh International Conference on Applications of Advanced Technology in Transportation Aug 5-7, 2002 Cambridge, Massachusetts >Deriving Land Use Limits from Infrastructure Capacity: An Artificial Neural Network Approach
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Deriving Land Use Limits from Infrastructure Capacity: An Artificial Neural Network Approach

机译:从基础设施容量推算土地使用限制:一种人工神经网络方法

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Given that it is extremely unlikely that the coming years will witness major capacity-expansion projects, transportation planners will now need to view the existing infrastructure as fixed, and start thinking about how much development the current system can sustain. This line of thinking, which involves deriving land-use limits from infrastructure capacity, requires solving the inverse of the typical transportation-planning problem. While there have been some reported studies in the literature that examined how to reverse the direction of the transportation planning process, the errors of the developed models were rather significant. In the current paper, we describe our efforts toward building on these earlier attempts in an effort to develop refined tools for solving the inverse of the transportation-planning problem. Specifically, our efforts have focused on developing artificial neural network (ANN) models for determining zonal trip ends from link volumes. The ANN models are developed and tested using real-world data from the Chittenden County region in Northwestern Vermont. Two different types of ANN models are developed, and their performance is compared. The study illustrates that ANNs are quite capable of solving the inverse of the transportation-planning problem.
机译:鉴于未来几年不太可能见证大型扩能项目,因此运输规划师现在需要将现有基础设施视为固定的,并开始考虑当前系统可以维持的发展水平。这种思路涉及从基础设施容量中得出土地使用限制,这需要解决典型的交通规划问题。尽管已有文献报道研究了如何逆转运输计划过程的方向,但已开发模型的误差相当大。在当前的论文中,我们描述了我们在这些较早的尝试的基础上所做的努力,目的是开发完善的工具来解决运输计划问题。具体来说,我们的工作重点放在开发人工神经网络(ANN)模型,以根据链接量确定区域行程终点。 ANN模型是使用来自佛蒙特州西北部奇滕登县地区的真实数据开发和测试的。开发了两种不同类型的ANN模型,并比较了它们的性能。研究表明,人工神经网络完全有能力解决运输计划问题的逆问题。

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