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Main Authors: Polychronis, Giorgos, Koutsoubelias, Manos, Lalis, Spyros
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.04764
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author Polychronis, Giorgos
Koutsoubelias, Manos
Lalis, Spyros
author_facet Polychronis, Giorgos
Koutsoubelias, Manos
Lalis, Spyros
contents Multicopter drones are becoming a key platform in several application domains, enabling precise on-the-spot sensing and/or actuation. We focus on the case where the drone must process the sensor data in order to decide, depending on the outcome, whether it needs to perform some additional action, e.g., more accurate sensing or some form of actuation. On the one hand, waiting for the computation to complete may waste time, if it turns out that no further action is needed. On the other hand, if the drone starts moving toward the next point of interest before the computation ends, it may need to return back to the previous point, if some action needs to be taken. In this paper, we propose a learning approach that enables the drone to take informed decisions about whether to wait for the result of the computation (or not), based on past experience gathered from previous missions. Through an extensive evaluation, we show that the proposed approach, when properly configured, outperforms several static policies, up to 25.8%, over a wide variety of different scenarios where the probability of some action being required at a given point of interest remains stable as well as for scenarios where this probability varies in time.
format Preprint
id arxiv_https___arxiv_org_abs_2409_04764
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Should I Stay or Should I Go: A Learning Approach for Drone-based Sensing Applications
Polychronis, Giorgos
Koutsoubelias, Manos
Lalis, Spyros
Robotics
Multicopter drones are becoming a key platform in several application domains, enabling precise on-the-spot sensing and/or actuation. We focus on the case where the drone must process the sensor data in order to decide, depending on the outcome, whether it needs to perform some additional action, e.g., more accurate sensing or some form of actuation. On the one hand, waiting for the computation to complete may waste time, if it turns out that no further action is needed. On the other hand, if the drone starts moving toward the next point of interest before the computation ends, it may need to return back to the previous point, if some action needs to be taken. In this paper, we propose a learning approach that enables the drone to take informed decisions about whether to wait for the result of the computation (or not), based on past experience gathered from previous missions. Through an extensive evaluation, we show that the proposed approach, when properly configured, outperforms several static policies, up to 25.8%, over a wide variety of different scenarios where the probability of some action being required at a given point of interest remains stable as well as for scenarios where this probability varies in time.
title Should I Stay or Should I Go: A Learning Approach for Drone-based Sensing Applications
topic Robotics
url https://arxiv.org/abs/2409.04764