Abstract

To collect data of distributed sensors located at different areas in challenging scenarios through artificial way is obviously inefficient, due to the numerous labor and time. Unmanned Aerial Vehicle (UAV) emerges as a promising solution, which enables multi-UAV collect data automatically with the preassigned path. However, without a well-planned path, the required number and consumed energy of UAVs will increase dramatically. Thus, minimizing the required number and optimizing the path of UAVs, referred as multi-UAV path planning, are essential to achieve the efficient data collection. Therefore, some heuristic algorithms such as Genetic Algorithm (GA) and Ant Colony Algorithm (ACA) which works well for multi-UAV path planning have been proposed. Nevertheless, in challenging scenarios with high requirement for timeliness, the performance of convergence speed of above algorithms is imperfect, which will lead to an inefficient optimization process and delay the data collection. Deep learning (DL), once trained by enough datasets, has high solving speed without worries about convergence problems. Thus, in this paper, we propose an algorithm called Deep Learning Trained by Genetic Algorithm (DL-GA), which combines the advantages of DL and GA. GA will collect states and paths from various scenarios and then use them to train the deep neural network so that while facing the familiar scenarios, it can rapidly give the optimized path, which can satisfy high timeliness requirements. Numerous experiments demonstrate that the solving speed of DL-GA is much faster than GA almost without loss of optimization capacity and even can outperform GA under some specific conditions.

Highlights

  • Deep neural network needs the path planning experiences first. Focus on this problem, we propose a Deep Learning Trained by Genetic Algorithm (DL-GA), which considers GA as the ‘‘instructor’’ to provide the path planning experiences to deep neural network and guide it to learn from the experiences

  • SIMULATION RESULTS We evaluate Deep learning (DL)-GA based on three factors: total distance of unmanned aerial vehicle (UAV), required number of UAVs and solving time

  • Aim to overcome the poor performance of convergence speed of GA, we proposed a DL-GA for multi-UAV data collection in the challenging scenarios in this paper

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Summary

INTRODUCTION

Since not each sensor node has the demand to return data, the algorithm needs to be executed to plan the path every time UAVs collect data. Based on the above challenges, we propose a DL-GA, where GA will obtain the path planning experiences and guide deep neural network to learn from it This algorithm makes path planning do not need any convergence process during optimization and retain the optimization ability from GA, which satisfy the timeliness requirement. Our algorithm can achieve 300 to 2000 times faster than GA and the optimization capacity can outperform GA under some specific conditions, which makes our algorithm more suitable to solve the multi-UAV path planning for data collection in the challenging scenarios.

SELECTION
EXPERIENCES LEARNING
SIMULATION RESULTS
CONCLUSION
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