Genetic Algorithm-based Path Planning for an Unmanned Aerial Vehicle Considering Energy Consumption and Payload
Abstract
Abstract: Unmanned Aerial Vehicles (UAVs),
more commonly known as drones, have a wide
range of applications spread across various
industries. Drones are plagued with several
challenges concerning their limited battery life
and payload. Until researchers come up with a
much more advanced and long-lasting battery
solution, drones must use the most optimum
path for delivery, which will increase battery
efficiency and reduce overheads. This study
analyses the battery energy consumption,
velocity, and flight time of the quadcopter for
varying payloads and develops a suitable
mathematical relationship for path planning
problem formulation. This paper proposes a
Genetic algorithm -based path optimization to
obtain the most energy optimal path for the
drone carrying a certain payload for a set of
specified destinations.
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