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Mixed Discrete and Continuous Algorithms for Scheduling Airborne Astronomy Observations

机译:混合离散和连续算法用于调度机载天文观测

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We describe the problem of scheduling astronomy observations for the Stratospheric Observatory for Infrared Astronomy, an airborne telescope. The problem requires maximizing the number of requested observations scheduled subject to a mixture of discrete and continuous constraints relating the feasibility of an astronomical observation to the position and time at which the observation begins, telescope elevation limits, Special Use Airspace limitations, and available fuel. Solving the problem requires making discrete choices (e.g. selection and sequencing of observations) and continuous ones (e.g. takeoff time and setup actions for observations by repositioning the aircraft). Previously, we developed an incomplete algorithm called ForwardPlanner using a combination of AI and OR techniques including progression planning, lookahead heuristics, stochastic sampling and numerical optimization, to solve a simplified version of this problem. While initial results were promising, ForwardPlanner fails to scale when accounting for all relevant constraints. We describe a novel combination of Squeaky Wheel Optimization (SWO), an incomplete algorithm designed to solve scheduling problems, with previously devised numerical optimization methods and stochastic sampling approaches, as well as heuristics based on reformulations of the SFPP to traditional OR scheduling problems. We show that this new algorithm finds as good or better flight plans as the previous approaches, often with less computation time.
机译:我们描述了机载红外天文平流层天文​​台安排天文观测问题的问题。这个问题需要在离散和连续约束的混合条件下最大化计划的请求观测次数,这些约束将天文观测的可行性与观测开始的位置和时间,望远镜的仰角限制,特殊用途空域限制以及可用的燃料联系在一起。解决问题需要进行离散选择(例如观察的选择和排序)和连续的选择(例如通过重新定位飞机来进行观察的起飞时间和准备动作)。以前,我们结合AI和OR技术(包括进度计划,超前启发式,随机抽样和数值优化)开发了一种不完整的算法,称为ForwardPlanner,以解决此问题的简化版本。尽管初步结果令人鼓舞,但在考虑所有相关限制时,ForwardPlanner无法扩展。我们描述了吱吱声轮优化(SWO)(一种旨在解决调度问题的不完整算法)与先前设计的数值优化方法和随机抽样方法以及基于SFPP对传统OR调度问题的重新构造的启发式算法的新颖组合。我们表明,这种新算法可以找到比以前的方法更好或更好的飞行计划,而且计算时间通常更少。

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