32 research outputs found
Energy-Constrained Delivery of Goods with Drones Under Varying Wind Conditions
In this paper, we study the feasibility of sending drones to deliver goods
from a depot to a customer by solving what we call the Mission-Feasibility
Problem (MFP). Due to payload constraints, the drone can serve only one
customer at a time. To this end, we propose a novel framework based on
time-dependent cost graphs to properly model the MFP and tackle the delivery
dynamics. When the drone moves in the delivery area, the global wind may change
thereby affecting the drone's energy consumption, which in turn can increase or
decrease. This issue is addressed by designing three algorithms, namely: (i)
compute the route of minimum energy once, at the beginning of the mission, (ii)
dynamically reconsider the most convenient trip towards the destination, and
(iii) dynamically select only the best local choice. We evaluate the
performance of our algorithms on both synthetic and real-world data. The
changes in the drone's energy consumption are reflected by changes in the cost
of the edges of the graphs. The algorithms receive the new costs every time the
drone flies over a new vertex, and they have no full knowledge in advance of
the weights. We compare them in terms of the percentage of missions that are
completed with success (the drone delivers the goods and comes back to the
depot), with delivered (the drone delivers the goods but cannot come back to
the depot), and with failure (the drone neither delivers the goods nor comes
back to the depot).Comment: typo author's nam
Environmentally-Aware and Energy-Efficient Multi-Drone Coordination and Networking for Disaster Response
In a Disaster Response Management (DRM) Scenario, Communication and Coordination Are Limited, and Absence of Related Infrastructure Hinders Situational Awareness. Unmanned Aerial Vehicles (UAVs) or Drones Provide New Capabilities for DRM to Address These Barriers. However, There is a Dearth of Works that Address Multiple Heterogeneous Drones Collaboratively Working Together to Form a Flying Ad-Hoc Network (FANET) with Air-To-Air and Air-To-Ground Links that Are Impacted By: (I) Environmental Obstacles, (Ii) Wind, and (Iii) Limited Battery Capacities. in This Paper, We Present a Novel Environmentally-Aware and Energy-Efficient Multi-Drone Coordination and Networking Scheme that Features a Reinforcement Learning (RL) based Location Prediction Algorithm Coupled with a Packet Forwarding Algorithm for Drone-To-Ground Network Establishment. We Specifically Present Two Novel Drone Location-Based Solutions (I.e., Heuristic Greedy, and Learning-Based) in Our Packet Forwarding Approach to Support Application Requirements. These Requirements Involve Improving Connectivity (I.e., Optimize Packet Delivery Ratio and End-To-End Delay) Despite Environmental Obstacles, and Improving Efficiency (I.e., by Lower Energy Use and Time Consumption) Despite Energy Constraints. We Evaluate Our Scheme with State-Of-The-Art Networking Algorithms in a Trace-Based DRM FANET Simulation Testbed Featuring Rural and Metropolitan Areas. Results Show that Our Strategy overcomes Obstacles and Can Achieve 81-To-90% of Network Connectivity Performance Observed under No Obstacle Conditions. in the Presence of Obstacles, Our Scheme Improves the Network Connectivity Performance by 14-To-38% While Also Providing 23-To-54% of Energy Savings in Rural Areas; the Same in Metropolitan Areas Achieved an Average of 25% Gain When Compared with Baseline Obstacle Awareness Approaches with 15-To-76% of Energy Savings
Optimal Routing Schedules for Robots Operating in Aisle-Structures
In this paper, we consider the Constant-cost Orienteering Problem (COP) where
a robot, constrained by a limited travel budget, aims at selecting a path with
the largest reward in an aisle-graph. The aisle-graph consists of a set of
loosely connected rows where the robot can change lane only at either end, but
not in the middle. Even when considering this special type of graphs, the
orienteering problem is known to be NP-hard. We optimally solve in polynomial
time two special cases, COP-FR where the robot can only traverse full rows, and
COP-SC where the robot can access the rows only from one side. To solve the
general COP, we then apply our special case algorithms as well as a new
heuristic that suitably combines them. Despite its light computational
complexity and being confined into a very limited class of paths, the optimal
solutions for COP-FR turn out to be competitive even for COP in both real and
synthetic scenarios. Furthermore, our new heuristic for the general case
outperforms state-of-art algorithms, especially for input with highly
unbalanced rewards
Dispatching Point Selection For A Drone-based Delivery System Operating In A Mixed Euclidean–Manhattan Grid
In this paper, we present a drone-based delivery system that assumes to deal with a mixed-area, i.e., two areas, one rural and one urban, placed side-by-side. In the mixed-areas, called EM-grids, the distances are measured with two different metrics, and the shortest path between two destinations concatenates the Euclidean and Manhattan metrics. Due to payload constraints, the drone serves a single customer at a time returning back to the dispatching point (DP) after each delivery to load a new parcel for the next customer. In this paper, we present the 1 -Median Euclidean–Manhattan grid Problem (MEMP) for EM-grids, whose goal is to determine the drone\u27s DP position that minimizes the sum of the distances between all the locations to be served and the point itself. We study the MEMP on two different scenarios, i.e., one in which all the customers in the area need to be served (full-grid) and another one where only a subset of these must be served (partial-grid). For the full-grid scenario we devise optimal and approximation algorithms, while for the partial-grid scenario we devise an optimal algorithm
A Drone-Based Application for Scouting Halyomorpha Halys Bugs in Orchards with Multifunctional Nets
In this work, we consider the problem of using a drone to collect information within orchards in order to scout insect pests, i.e., the stink bug Halyomorpha halys. An orchard can be modeled as an aisle-graph, which is a regular and constrained data structure formed by consecutive aisles where trees are arranged in a straight line. For monitoring the presence of bugs, a drone flies close to the trees and takes videos and/or pictures that will be analyzed offline. As the drone\u27s energy is limited, only a subset of locations in the orchard can be visited with a fully charged battery. Those places that are most likely to be infested should be selected to promptly detect the pest. We implemented the proposed approach on a DJI drone and evaluated its performance in the real-world environment