1. Introduction
The exponential growth of e-commerce and the rise of on-demand services have placed increasing pressure on urban logistics systems, particularly in the last-mile segment [
1,
2]. Traditional delivery vehicles contribute significantly to road congestion, noise, and environmental pollution [
3,
4], prompting a growing interest in alternative delivery solutions. In this context, unmanned aerial vehicles (UAVs) have emerged as a promising approach to reduce delivery times, bypass road traffic, and lower the carbon footprint of parcel distribution in dense urban areas [
5,
6].
Despite their advantages, UAV-based delivery systems face major challenges, especially regarding their limited energy autonomy, which restricts their delivery range and operational flexibility [
7,
8]. In response, hybrid approaches have been explored that couple UAVs with ground vehicles to extend their effective range. A particularly promising concept involves integrating drones with public transportation systems (PTSs) such as buses or trains [
9,
10] enabling drones to “ride” on these vehicles and deploy near delivery locations, thereby reducing the need for long-range flights and eliminating frequent returns to depots.
However, existing works on UAV–PTS integration tend to focus primarily on routing strategies or high-level delivery schemes [
10,
11,
12] while neglecting the accurate modeling of energy consumption. Most rely on idealized assumptions such as constant power draw, negligible drag forces, or perfect flight trajectories [
8,
13]. These simplifications lead to significant errors in battery sizing and mission feasibility assessment, especially in dynamic and constrained urban environments.
This leads to the core scientific challenge addressed in this paper: “How can we accurately predict the energy consumption of UAVs operating in realistic multimodal delivery systems, accounting for physical constraints and environmental disturbances, to enable robust battery sizing and mission planning?” [
7].
To address this gap, we propose a physically-grounded, scenario-aware energy modeling framework tailored for UAVs operating in conjunction with public transport networks [
12,
14]. Our model combines Newtonian dynamics, aerodynamic forces, and mission constraints with computational fluid dynamics (CFD) simulations to correct for the influence of surrounding structures and moving vehicles on drone thrust [
7,
15]. We define four delivery scenarios of increasing complexity, including ideal flight, delivery time pressure, thrust disturbances due to urban obstacles, and early return maneuvers to synchronize with PTS schedules.
Our method is applied to a real-world case study using a graph-based digital twin of the bus network of Belfort, France, with UAV and bus data provided by the public transport operator. Results show that failing to consider delivery constraints and aerodynamic disturbances can lead to energy underestimation of up to 16%, which is critical for energy-aware mission planning and fleet reliability.
The contributions of this work are as follows:
We develop a complete and transferable energy estimation methodology for UAV-based parcel delivery systems integrated with public transport networks.
We integrate CFD-derived corrections into the physical model to account for real-world aerodynamic effects.
We define and analyze four mission scenarios, each reflecting common operational constraints in urban delivery.
We validate the approach on a real urban network, showing its applicability for battery sizing and sustainable aerial delivery planning.
The rest of this paper is organized as follows.
Section 2 reviews the related literature on last-mile delivery, UAV–vehicle integration, and energy consumption modeling.
Section 3 describes the system architecture and modeling assumptions.
Section 4 presents the energy estimation framework, including dynamic modeling and CFD integration.
Section 5 introduces the experimental setup and simulation parameters.
Section 4 discusses the results and energy trends under different scenarios.
Section 5 concludes and outlines directions for future research.
3. Modeling Framework
This section presents the modeling framework developed to estimate the energy consumption of a UAV-based delivery system integrated with a public transport network. We first describe the proposed delivery architecture and operational assumptions. Then, we introduce the physical energy model based on the Fundamental Principle of Dynamics (FPD), followed by the definition of four mission scenarios. Finally, we detail the aerodynamic correction method based on computational fluid dynamics (CFD) analysis.
3.1. System Description and Operational Assumptions
The proposed delivery architecture is based on a multimodal system that couples UAVs with a public transportation network, specifically the bus system of the city of Belfort, France. This system, illustrated in
Figure 1, enables drones to perform last-mile deliveries by leveraging the existing circulation of public buses, thereby avoiding the need for dedicated delivery vehicles.
Each drone is initially loaded onto the roof of a bus at a central logistics hub located near the train station, which acts as a depot and sorting point. Parcels are pre-loaded on the drone prior to departure. As the bus moves along its line, the drone monitors its GPS position. When approaching a delivery point (i.e., a bus stop with an associated delivery), the drone autonomously takes off from the bus roof, ascends vertically, performs a short horizontal flight to the customer’s location (within a 15 m radius from the stop), and completes the delivery by lowering the parcel and notifying the recipient.
After delivery, the drone climbs to a cruising altitude, navigates horizontally to intercept the same or a following bus on the same line, and lands back on its roof. If necessary, the drone may change carriers (i.e., switch to another bus on the same line) to maintain operational continuity. Wireless recharging through inductive systems located on the bus roof is also envisioned to extend mission range and reduce dependency on full battery swaps.
The bus lines operate on a fixed schedule, with a bus dispatched every 10 to 15 min depending on the line. This dense cadence enables sustained parcel throughput without introducing new traffic on the urban road network.
The key assumptions of the system are summarized below:
Deliveries are made sequentially at bus stops along a single line.
The drone performs short point-to-point deliveries within a fixed radius from the bus stop.
UAV takeoff and landing occur vertically from/to the moving bus roof.
The drone does not return to a depot; it remains in operation along the bus line.
Each drone mission includes takeoff, ascent, cruise, delivery, return cruise, and landing.
Drone speed is assumed constant during horizontal segments; vertical ascent/descent durations are computed.
No wind or weather effects are modeled at this stage.
Payload mass varies from 1 to 10 kg depending on the scenario.
This architecture allows for continuous and energy-efficient delivery in urban areas while reducing the number of ground vehicles required and minimizing road congestion.
3.2. Energy Modeling Based on the Fundamental Principle of Dynamics
The energy consumption of a UAV during a delivery mission is computed using a physics-based model derived from the Fundamental Principle of Dynamics (FPD). The model considers the forces acting on the drone during its vertical and horizontal flight phases, and estimates the power and energy required to execute a complete delivery task, including takeoff, cruise, delivery, and return.
3.2.1. Forces Acting on the UAV
The UAV is subjected to three main forces during flight:
Gravitational force
, due to the total weight of the drone and payload:
where
is the drone mass,
is the payload mass, and
g is the gravitational acceleration.
Aerodynamic drag force
, which includes both vertical and horizontal components. For a constant-speed flight, it is expressed as:
where
is the air density,
the drag coefficient,
S the reference surface area, and
v the UAV speed.
Thrust force
, required to counteract both weight and drag:
Power and Energy Computation
The power required by the propulsion system is calculated as:
where
accounts for the constant power drawn by onboard electronics.
The total energy consumed during a flight segment of duration
t is given by:
where
is the efficiency of the powertrain.
3.2.2. Mission Profile and Total Energy
A delivery mission is composed of several sequential segments:
Takeoff from the bus and vertical ascent;
Horizontal cruise toward the delivery zone;
Hovering and parcel drop-off;
Return flight (cruise and descent);
Landing back on the bus.
Each of these phases is modeled individually with its respective speed and direction. The overall profile is illustrated in
Figure 2, which shows a typical mission from takeoff to return.
The total mission energy
is computed by summing the energy consumption of each segment:
This formulation provides a fine-grained and realistic estimation of the energy required for each complete delivery loop.
3.3. Delivery Mission Scenarios
To assess how real-world constraints impact UAV energy consumption, we define four mission scenarios of increasing complexity. Each scenario corresponds to a modification of one or more parameters in the physical model described in
Section 3.2.
Table 1 summarizes the characteristics of each configuration.
Scenario 1—Ideal Mission: Baseline configuration with constant speed, no external disturbances, and maximum time available for delivery. The UAV consumes energy based solely on the physical flight profile (Equation (
6)), without any additional constraints or corrections.
Scenario 2—Delivery Time Constraint: A delivery time is enforced based on the bus’s travel time between two stops. The UAV must complete its delivery and return to the bus within this fixed time window, potentially requiring an increase in horizontal speed on the return phase. This leads to increased drag and power, hence higher energy consumption.
Scenario 3—Aerodynamic Disturbance: This scenario includes thrust variations due to proximity effects, such as urban obstacles and bus motion. Correction factors derived from CFD simulations (
Section 3.4) are applied to the thrust computation, altering
and thereby modifying
P and
E.
Scenario 4—Early Return Strategy: In order to avoid impacting the bus schedule, the UAV is required to return before the bus reaches the next stop. This constraint reduces the available time for delivery and return, requiring higher cruise speed, which further increases power and energy consumption.
This scenario-based structure enables a controlled and progressive evaluation of energy overconsumption factors. Each configuration is simulated with varying payloads, as detailed in
Section 4.2, to assess the system’s sensitivity to operational constraints.
3.4. Aerodynamic Corrections via CFD
The physical model described in
Section 3.2 assumes steady-state aerodynamic conditions during UAV flight. However, in dense urban environments, UAVs are subjected to significant airflow perturbations due to the presence of nearby obstacles, such as buildings, road infrastructure, or even the buses themselves. These perturbations affect the aerodynamic efficiency of the UAV and induce **variations in thrust**, which directly impact energy consumption.
To quantify these effects, computational fluid dynamics (CFD) simulations were conducted using ANSYS 2022. The simulations aimed to characterize the thrust variation experienced by a quadcopter-type UAV (specifically a DJI Phantom 3 (from DJI company, France)) in different flight conditions relevant to the delivery mission profile described in
Figure 2.
3.4.1. CFD Setup and Configuration
The fluid domain was meshed using a tetrahedral grid composed of approximately 5.2 million elements, with refined layers near the propeller to capture boundary layer effects. The turbulence model used was the SST k- model, which is well-suited for capturing near-wall turbulence and wake effects. The UAV propeller was modeled in hovering conditions with steady-state airflow. Three types of environmental interactions were simulated:
Proximity to a static obstacle: The UAV hovers at a vertical distance of 0.1 m and 0.2 m above a fixed horizontal surface (e.g., building or stationary bus roof).
Hovering near a moving object: The UAV hovers 0.2 m above a surface moving horizontally at 15 m/s and 20 m/s, mimicking the aerodynamic effect of a moving bus during reboarding.
Free-flight cruise at altitude: The UAV cruises at 10 m/s in undisturbed air (used as a reference condition).
3.4.2. Thrust Variation Results
The CFD analysis yielded average thrust variation values relative to the reference condition (free-flight hover), summarized in
Table 2.
To simplify integration into the energy model, “average correction coefficients” were derived for each flight segment of the delivery mission:
+5.14% for takeoff and landing phases near static structures (used in phases A-1, 2-B, B-3, and 4-C).
−12.55% for hovering over moving vehicles (used in segments 1–2 and 3–4).
−7.00% for undisturbed horizontal cruise (nominal condition).
Note that during segments 1–2 and 3–4, the drone is assumed to be affected 20% of the time by moving vehicle wake (scenario 2) and 80% by open-air cruise conditions. The weighted average thrust variation for these segments is thus:
3.4.3. Integration into Energy Model
The thrust corrections are integrated into the energy model of each scenario by modifying the thrust term
accordingly, which then propagates to the power and energy consumption through Equation (
6). These corrections are applied in Scenarios 3 and 4 (see
Table 1), which include environmental disturbances.
This CFD-based enhancement increases the accuracy of energy estimation and reflects the operational cost of flying in disturbed airspace—especially relevant in urban missions near buildings and large moving vehicles such as buses.
5. Conclusions and Future Work
This paper proposed a comprehensive and physically grounded modeling framework for estimating the energy consumption of UAV-based last-mile delivery missions integrated with a public transportation system. Unlike traditional models based solely on empirical correlations or geometric approximations, the proposed approach leverages a force-based energy formulation derived from the Fundamental Principle of Dynamics, corrected by aerodynamic factors obtained via CFD simulations.
The methodology was applied to a real-world case study in the city of Belfort (France), involving five bus lines, four operational scenarios, and ten payload configurations. Results confirm the model’s ability to capture the linear dependency between payload mass and energy consumption, while also highlighting the significant impact of realistic constraints such as delivery time windows, bus schedule synchronization, and environmental disturbances. Notably, the most constrained scenario (early return strategy) can lead to up to 26% more energy consumption than the ideal baseline.
The modular structure of the model enables scenario-aware planning, accurate energy budgeting, and battery dimensioning for urban drone logistics. It also paves the way for integration into real-time mission feasibility tools or embedded estimation modules.
5.1. Limitations
While the model covers the physical and environmental aspects of drone energy consumption in detail, several simplifications were made:
Wind, rain, and temperature effects were not modeled;
Drone-bus synchronization was treated deterministically;
Energy recovery, battery aging, and real powertrain losses were considered via average efficiency.
5.2. Future Work
Future extensions of this work will focus on the following:
Integrating stochastic elements such as wind fields or traffic-based bus delays;
Coupling with optimization modules for drone–bus routing or fleet sizing;
Extending the model to multiple UAVs operating in coordinated swarms;
Validating the framework with experimental energy data from onboard telemetry and field tests.
The framework established here offers a solid foundation for future drone–infrastructure co-design approaches, and supports the broader deployment of energy-efficient urban aerial logistics within multimodal transport systems.