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Ground Delay Program Analytics with Behavioral Cloning and Inverse Reinforcement Learning

机译:具有行为克隆与逆钢筋学习的地面延迟计划分析

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We used historical data to build two types of model that predict Ground Delay Program implementation decisions and also produce insights into how and why those decisions are made. More specifically, we built behavioral cloning and inverse reinforcement learning models that predict hourly Ground Delay Program implementation at Newark Liberty International and San Francisco International airports. Data available to the models include actual and schedule4 air traffic metrics and observed and forecasted weather conditions. We found that the random forest behavioral cloning models we developed are substantially better at predicting hourly Ground Delay Program implementation for these airports than the inverse reinforcement learning models we developed. However, all of the models struggle to predict the initialization and cancellation of Ground Delay Programs. We also investigated the structure of the models in order to gain insights into Ground Delay Program implementation decision making. Notably, characteristics of both types of model suggest that GDP implementation decisions are more tactical than strategic: they are made primarily based on conditions now or conditions anticipated in only the next couple of hours.
机译:我们用历史数据来建立两种类型的模型来预测地面延误计划实施决策也产生深入了解如何以及为什么这些决策。更具体地讲,我们建立了行为的克隆和逆强化学习模型,在纽瓦克自由国际和旧金山国际机场每小时预测地面延误计划的执行。数据提供给模型包括实际和schedule4空中交通指标和观测和预测的天气状况。我们发现,我们开发了随机森林行为的克隆模型在预测时薪为这些机场比我们发达逆强化学习模型地面延误计划的实施大大改善。然而,所有的车型很难预测地面延误程序的初始化和取消。我们还调查为了深入了解地面延误计划的执行决策模型的结构。值得注意的是,这两种模式的特点表明,国内生产总值实现决策比战略更战术:他们主要是由基于仅在接下来的几个小时,现在预期的条件或条件。

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