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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Predicting Taxi-Out Time at Congested Airports with Optimization-Based Support Vector Regression Methods
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Predicting Taxi-Out Time at Congested Airports with Optimization-Based Support Vector Regression Methods

机译:基于优化的支持向量回归方法预测拥挤机场的出租车出站时间

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摘要

Accurate prediction of taxi-out time is significant precondition for improving the operationality of the departure process at an airport, as well as reducing the long taxi-out time, congestion, and excessive emission of greenhouse gases. Unfortunately, several of the traditional methods of predicting taxi-out time perform unsatisfactorily at congested airports. This paper describes and tests three of those conventional methods which include Generalized Linear Model, Softmax Regression Model, and Artificial Neural Network method and two improved Support Vector Regression (SVR) approaches based on swarm intelligence algorithm optimization, which include Particle Swarm Optimization (PSO) and Firefly Algorithm. In order to improve the global searching ability of Firefly Algorithm, adaptive step factor and Lévy flight are implemented simultaneously when updating the location function. Six factors are analysed, of which delay is identified as one significant factor in congested airports. Through a series of specific dynamic analyses, a case study of Beijing International Airport (PEK) is tested with historical data. The performance measures show that the proposed two SVR approaches, especially the Improved Firefly Algorithm (IFA) optimization-based SVR method, not only perform as the best modelling measures and accuracy rate compared with the representative forecast models, but also can achieve a better predictive performance when dealing with abnormal taxi-out time states.
机译:准确预测滑行时间是提高机场起飞过程的可操作性,减少长滑行时间,交通拥堵和温室气体过度排放的重要前提。不幸的是,一些传统的预测滑行时间的方法在拥挤的机场表现不佳。本文介绍并测试了三种常规方法,包括广义线性模型,Softmax回归模型和人工神经网络方法,以及基于群体智能算法优化的两种改进的支持向量回归(SVR)方法,其中包括粒子群优化(PSO)。和萤火虫算法。为了提高萤火虫算法的全局搜索能力,在更新定位功能时要同时实现自适应步长因子和Lévy飞行。分析了六个因素,其中延迟被认为是拥挤机场中的一个重要因素。通过一系列具体的动态分析,以历史数据为例对北京国际机场(PEK)进行了案例研究。性能指标表明,所提出的两种SVR方法,特别是基于改进的Firefly算法(IFA)优化的SVR方法,与典型的预测模型相比,不仅可以作为最佳的建模方法和准确率,而且可以实现更好的预测处理异常滑行时间状态时的性能。

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