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Hierarchical Bayesian MCMC Estimation of Airport Operations Counts

机译:机场运行次数的分级贝叶斯MCMC估计

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Accurate counts of aircraft operations at unmonitored or partially-monitored general aviation airports are important due to their role in the allocation of funds for airport development and improvement. While the Federal Aviation Administration annually invests approximately $1B in small commercial and general aviation airports in the United States, fewer than 270 of these 2,950 airports have either full- or part-time air traffic personnel available to register operations counts. Aircraft operations at airports with limited personnel may be counted using temporary acoustic, pneumatic, or video devices, and observations from contract staff. The related sample sizes are inherently small, leading to inaccuracies in the extrapolation of long-term totals. The authors have developed an estimation procedure for use with small sample sizes that employs a Bayesian hierarchical model with a Poisson likelihood function. This procedure is used in conjunction with a counting device that registers operations counts based on aircraft transponder signals (also developed by the authors), and is shown to achieve an accuracy of 2.88% at a general aviation airport staffed with an FAA control tower over a one-month period.
机译:由于无人驾驶飞机在分配用于机场发展和改善的资金中的作用,因此对无人驾驶或部分受监视的通用航空机场的飞机运行进行准确计数非常重要。尽管美国联邦航空管理局每年在美国的小型商业和通用航空机场中投资约10亿美元,但在这2950个机场中,只有不到270个拥有专职或兼职空中交通人员来注册运营计数。可以使用临时的声学,气动或视频设备,以及合同工作人员的观察,来对人员有限的机场的飞机运行进行计数。相关的样本量本来就很小,导致长期总数的外推法不准确。作者已经开发出一种用于小样本量的估计程序,该程序采用具有Poisson似然函数的贝叶斯层次模型。该程序与计数设备结合使用,该计数设备根据飞机应答器信号记录运行计数(也由作者开发),并且在配备了FAA控制塔的通用航空机场上显示出达到2.88%的精度。一个月的时间。

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