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Three-dimensional Energy-Aware Path Planning for Quadcopter UAV

쿼드콥터 소모 에너지를 비용함수로 하는 3차원 경로계획

  • Received : 2019.10.08
  • Accepted : 2020.09.05
  • Published : 2020.10.31

Abstract

Mobile robots, including UAVs perform missions with limited fuel. Therefore, the energy-aware path planning is required to maximize efficiency when the robot is operated for a long time. In this study, we estimated the power consumption for each maneuver of a quadcopter UAV in the 3D environment and applied to the cost functions of D Lite. The simulations were performed in a 3D environment that is similar to the industrial sites. The efficiency of path generation was high when the energy-aware path planning with simplified heuristic was applied. In addition, the energy-aware path was generated 19.3 times faster than the shortest path with a difference within 3.2%.

무인항공기를 비롯한 다수의 이동로봇은 제한된 연료로 임무를 수행하므로 장시간 운용시 효율을 극대화 하기위해 에너지를 고려한 경로계획이 요구된다. 본 연구에서는 3차원 환경에서 쿼드콥터 무인항공기 비행에 따른 소모 에너지를 근사화하여 기존 D Lite 알고리즘의 비용함수에 적용하였다. 산업현장과 유사한 3차원 환경에서 시뮬레이션을 수행한 결과 에너지를 비용함수로 하고 휴리스틱 계산을 3 단순화 하였을 때 경로 생성 효율이 높았으며, 최단경로와 약 3.2% 이내의 차이를 갖는 경로를 최대 19.3배 빠르게 도출했다.

Keywords

References

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