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Cloud-based large-scale air traffic flow optimization.

机译:基于云的大规模空中交通流量优化。

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摘要

The ever-increasing traffic demand makes the efficient use of airspace an imperative mission, and this paper presents an effort in response to this call.;Firstly, a new aggregate model, called Link Transmission Model (LTM), is proposed, which models the nationwide traffic as a network of flight routes identified by origin-destination pairs. The traversal time of a flight route is assumed to be the mode of distribution of historical flight records, and the mode is estimated by using Kernel Density Estimation. As this simplification abstracts away physical trajectory details, the complexity of modeling is drastically decreased, resulting in efficient traffic forecasting. The predicative capability of LTM is validated against recorded traffic data.;Secondly, a nationwide traffic flow optimization problem with airport and en route capacity constraints is formulated based on LTM. The optimization problem aims at alleviating traffic congestions with minimal global delays. This problem is intractable due to millions of variables. A dual decomposition method is applied to decompose the large-scale problem such that the subproblems are solvable. However, the whole problem is still computational expensive to solve since each subproblem is an smaller integer programming problem that pursues integer solutions. Solving an integer programing problem is known to be far more time-consuming than solving its linear relaxation. In addition, sequential execution on a standalone computer leads to linear runtime increase when the problem size increases. To address the computational efficiency problem, a parallel computing framework is designed which accommodates concurrent executions via multithreading programming. The multithreaded version is compared with its monolithic version to show decreased runtime.;Finally, an open-source cloud computing framework, Hadoop MapReduce, is employed for better scalability and reliability. This framework is an "off-the-shelf" parallel computing model that can be used for both offline historical traffic data analysis and online traffic flow optimization. It provides an efficient and robust platform for easy deployment and implementation. A small cloud consisting of five workstations was configured and used to demonstrate the advantages of cloud computing in dealing with large-scale parallelizable traffic problems.
机译:不断增长的交通需求使有效利用空域成为当务之急,因此,本文为响应这一要求做出了努力。首先,提出了一种新的聚合模型,称为链路传输模型(LTM),该模型用于全国交通量,是由始发地-目的地对确定的飞行路线网络。假定飞行路线的穿越时间为历史飞行记录的分发方式,并且使用内核密度估计来估计该方式。由于这种简化将物理轨迹的细节抽象化了,因此大大降低了建模的复杂性,从而实现了有效的流量预测。根据记录的交通数据验证了LTM的预测能力。其次,基于LTM提出了具有机场和航路容量约束的全国交通流量优化问题。优化问题旨在以最小的全局延迟缓解流量拥塞。由于数百万个变量,这个问题很难解决。应用对偶分解方法分解大规模问题,使子问题可解决。但是,由于每个子问题都是追求整数解的较小的整数编程问题,因此解决整个问题仍然是计算上昂贵的。解决整数编程问题比解决线性松弛问题要耗费更多时间。此外,问题大小增加时,在独立计算机上顺序执行将导致线性运行时间增加。为了解决计算效率问题,设计了一种并行计算框架,该框架可通过多线程编程来容纳并发执行。将多线程版本与其整体版本进行比较,以显示运行时间有所减少。最后,采用了开源云计算框架Hadoop MapReduce,以实现更好的可伸缩性和可靠性。该框架是一个“现成的”并行计算模型,可用于离线历史流量数据分析和在线流量优化。它提供了一个高效且强大的平台,可轻松进行部署和实施。配置了一个由五个工作站组成的小型云,用于演示云计算在处理大规模可并行化流量问题方面的优势。

著录项

  • 作者

    Cao, Yi.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Engineering Aerospace.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 132 p.
  • 总页数 132
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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