Submitted:
28 April 2026
Posted:
29 April 2026
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Abstract

Keywords:
1. Introduction
2. State of the Art and Research Gap
2.1. Aeroacoustic Mechanisms in small UAV Propellers
2.2. CFD, Computational Aeroacoustics and Metric Selection
2.3. Visual Signature Management and Observability
2.4. Systems Engineering Gap
3. Materials and Methods
3.1. Research Design and Dual-Use Boundary
3.2. System Boundary for Maritime ISR-Oriented UAV Research

3.3. Acoustic Metrics and Equations

3.4. Visual Metrics and Equations
3.5. Multi-Domain Trade-Off Analysis
3.6. Verification and Evidence Package
4. Framework Results and Publication-Oriented Outputs
4.1. Requirements-to-Metrics Traceability
4.2. Evidence Mapping from DOI-Based Literature
| Evidence area | Representative DOI-based support | Implication for the present framework |
|---|---|---|
| Aeroacoustic modelling | FW-H theory and rotating-blade acoustic formulations [1,2,3] | Use CFD/FW-H as a prediction and interpretation tool, not as unvalidated proof. |
| Small UAV propeller noise | Experimental and numerical propeller-noise studies [4,5,6,7,8,9,10,11,12] | Report spectra, RPM, geometry and operating conditions for baseline and modified configurations. |
| Human response and psychoacoustics | Drone-noise perception and response metrics [13,14,15] | Use psychoacoustic indicators only when the research question involves human perception. |
| Acoustic drone detection | Acoustic signature identification and classification [16,17,18,19,20] | Recognize that detectability depends on environmental noise, sensor range, classifiers and spectral content. |
| Visual UAV detection | Vision-based drone detection and distance estimation [21,22,23] | Use visual metrics that can be reproduced with camera settings and background conditions. |
| Visual observability and trajectory-coupled studies | Visual camouflage and covert sensing studies [24,25,26] | Frame visual management as measurable observability, avoiding tactical recommendations. |
| UAV systems engineering | Conceptual and systems-based UAV design [29,30,31] | Connect design variables, requirements, constraints and verification in one traceable structure. |
4.3. Evidence Maturity for a Thesis-Derived Manuscript
5. Discussion
6. Scope, Limitations and Validation Pathway
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| BPF | Blade Passing Frequency |
| CFD | Computational Fluid Dynamics |
| DI | Detectability Index |
| FW-H | Ffowcs Williams–Hawkings |
| RPM | Revolutions Per Minute |
| A-SPL | A-weighted Sound Pressure Level |
| OASPL | Overall Sound Pressure Level |
| SNR | Signal-to-Noise Ratio |
| SPL | Sound Pressure Level |
| UAV | Unmanned Aerial Vehicle |
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| Parameter | Baseline configuration | Modified configuration | Measurement or data source | Relevance to the framework |
|---|---|---|---|---|
| Propeller diameter | To be reported | To be reported | Direct measurement or manufacturer datasheet | Defines the geometric scale of the propulsion system |
| Number of blades | To be reported | To be reported | Direct inspection or technical datasheet | Required for blade-passing frequency calculation |
| Propeller pitch or equivalent geometric descriptor | To be reported | To be reported | Manufacturer datasheet or geometric measurement | Supports comparison of aerodynamic and acoustic behavior |
| Rotational speed (RPM) | To be reported | To be reported | Tachometer, ESC log or flight-controller data | Determines BPF and acoustic operating condition |
| Thrust | To be reported | To be reported | Static thrust stand or controlled test | Verifies that acoustic changes do not compromise lift generation |
| Current draw or electrical power | To be reported | To be reported | Power meter, ESC log or battery telemetry | Evaluates energy cost of the modification |
| Microphone distance | To be reported | To be reported | Acoustic measurement protocol | Required for reproducible SPL comparison |
| Sampling frequency | To be reported | To be reported | Audio acquisition system | Determines frequency-resolution capability |
| SPL or OASPL | To be reported | To be reported | Calibrated microphone or sound level meter | Quantifies acoustic signature variation |
| Blade-passing frequency | To be reported | To be reported | Computed from RPM and blade number | Identifies tonal components and harmonics |
| Visual contrast index | To be reported | To be reported | Image-based processing under controlled background | Quantifies visual observability |
| Surface treatment or coating description | To be reported | To be reported | Material description or experimental note | Links visual management to physical modification |
| Environmental conditions | To be reported | To be reported | Laboratory or field-test log | Supports repeatability and interpretation |
| Research requirement | Design variable | Primary metric | Verification method | Minimum evidence before submission |
|---|---|---|---|---|
| Reduce propeller acoustic signature | Blade geometry, RPM, tip design, surface condition | SPL, OASPL, BPF harmonics, broadband spectrum | Microphone measurement; CFD/FW-H if available | Baseline vs. modified spectrum with test conditions |
| Preserve aerodynamic function | Diameter, pitch, blade twist, airfoil, mass | Thrust, power, efficiency, stability margin | Static thrust stand; flight logs; CFD | Thrust and current comparison at matched operating points |
| Reduce visual contrast | Surface reflectance, matte finish, background matching | Luminance contrast, apparent size, detection score | Controlled images; calibrated camera; background classification | Image-based contrast comparison under documented illumination |
| Maintain maritime suitability | Material durability, coating adhesion, corrosion tolerance | Mass change, surface degradation, maintenance interval | Salt exposure screening; inspection; mass measurement | Material and durability notes |
| Ensure reproducibility | Test protocol, processing scripts, data availability | Repeatability, uncertainty, metadata completeness | Open processing code; repeated tests | Methods detailed enough to be reproduced |
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