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Analysis of Airport Ground Delay Program Decisions Using Data Mining Techniques

机译:使用数据挖掘技术分析机场地面延误计划决策

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Air traffic service providers have to make decisions regarding changes to air traffic flow in the event of major weather disturbances and traffic congestions to maintain safety of the system. The behavior of the air traffic management system will be more predictable if consistent decisions are made under similar traffic and weather conditions. Consistency of deciding on control action depends on the weather and traffic conditions as well as accuracy in predicting these conditions. Weather parameters (defined in terms of forecast and actual weather and traffic conditions) on different days can be used to categorize these into days with little decision consistency, days with moderate decision consistency and days with high decision consistency. Five years of traffic, weather and ground delay program decisions data at major airports in the United States are used in the analysis. This paper examines performance of different data mining methods in the three regions of decision consistency. Not surprisingly, data mining methods have the best performance in the region of most decision consistency and have the poorest performance in the region of little decision consistency. In applications where data mining methods have differing performance in differing regions, it would be more useful to characterize region specific performance instead of characterizing performance by a single parameter. Finally, the results show no significant variation in the performance of different data mining methods for this particular problem. The fact that different mining methods show no significant variation also provides further confidence in the results of data mining methods. This paper also discusses how prediction errors impact regions of decision consistency.
机译:空中交通服务提供商必须在发生重大天气干扰和交通拥堵的情况下,就空中交通流量的变化做出决策,以维护系统的安全性。如果在类似的交通和天气条件下做出一致的决定,空中交通管理系统的行为将更加可预测。决定控制措施的一致性取决于天气和交通状况以及预测这些状况的准确性。可以使用不同日期的天气参数(根据预测以及实际天气和交通状况来定义)将其分类为决策一致性差的日子,决策一致性差的日子和决策一致性高的日子。分析中使用了美国主要机场的五年交通,天气和地面延误计划决策数据。本文研究了在决策一致性的三个区域中不同数据挖掘方法的性能。毫不奇怪,数据挖掘方法在大多数决策一致性的区域中具有最佳性能,而在几乎没有决策一致性的区域中具有最差的性能。在数据挖掘方法在不同区域具有不同性能的应用程序中,表征区域特定性能而不是通过单个参数表征性能将更为有用。最后,结果表明,针对此特定问题,不同数据挖掘方法的性能没有显着差异。不同的挖掘方法没有显着变化的事实也为数据挖掘方法的结果提供了更多的信心。本文还讨论了预测误差如何影响决策一致性区域。

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