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Simulation to support local search in trajectory optimization planning

Big Sky, MT(2012)

Cited 4|Views2
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Abstract
NASA and the international community are investing in the development of a commercial transportation infrastructure that includes the increased use of rotorcraft, specifically helicopters and civil tilt rotors. However, there is significant concern over the impact of noise on the communities surrounding the transportation facilities. One way to address the rotorcraft noise problem is by exploiting powerful search techniques coming from artificial intelligence coupled with simulation and field tests to design low-noise flight profiles which can be tested in simulation or through field tests. This paper investigates the use of simulation based on predictive physical models to facilitate the search for low-noise trajectories using a class of automated search algorithms called local search. A novel feature of this approach is the ability to incorporate constraints directly into the problem formulation that addresses passenger safety and comfort.
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Key words
aerospace safety,aerospace simulation,aerospace testing,helicopters,optimisation,search problems,nasa,artificial intelligence,automated search algorithm,civil tilt rotors,commercial transportation infrastructure,field tests,local search,low-noise flight profiles,low-noise trajectories,passenger safety,predictive physical models,rotorcraft noise problem,simulation,trajectory optimization planning,transportation facilities,noise reduction,artificial intelligent,atmospheric modeling,cost function,trajectory optimization,algorithms,computational modeling,trajectory,aircraft noise,physical model,search algorithm,noise,data acquisition
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