Human–Machine Interface Design for Monitoring Safety Risks Associated with Operating Small Unmanned Aircraft Systems in Urban Areas
Abstract
:1. Introduction
2. Related Work
2.1. Autonomous Flight Operation in Urban Airspace
2.2. Human–System Integration Challenges
2.3. Guidance of Visual Attention
2.4. Ecological Interface Design
2.5. Contribution of This Paper
- Derivation of specific display design principles that aim to adapt EID to reduce display complexity;
- implementation of design properties that support parallel visual search for detecting safety critical system states, while keeping the advantages of EID;
- application of the proposed display design principles to the design of an HMI enabling a UAS operator to deal with the unique safety challenges that arise from operating multiple autonomous sUAS simultaneously in low-altitude urban airspace; and
- mock-up evaluation of the display design concept and the designed HMI.
2.6. Structure of This Paper
3. Proposed Display Design Concept and Principles
3.1. Design Principle 1: Hiding Information Depending on Levels of System Resolution and Functional Abstraction
3.2. Design Principle 2: Support Parallel Visual Search Using Simple Icons and Well-Differentiable Hues
3.3. Design Principle 3: Arrange Icons in a Semantically Meaningful Pattern
3.4. Design Principle 4: Use Unambiguous and Meaningful Icons
3.5. Design Principle 5: Define Adequate System States
4. Application of Display Design Principles
4.1. Assumed System Capabilities
4.1.1. Geo-Fencing System
4.1.2. Autonomous Collision Avoidance System
4.1.3. Casualty Risk Assessment System
4.1.4. Flying Time Prediction System
4.1.5. Real Time Sensor and Software Health Management
4.2. Definition of System Resolution Levels through System Decomposition (Design Principle 1)
4.3. Functional Abstraction—The Abstraction Hierarchy (Design Principle 1)
4.3.1. Loss of Control—Aviation of Aircraft
4.3.2. Air Traffic-Related Risks—Separation to Hazards and Prohibited Areas
4.3.3. Flight Outside of Approved Airspace-UTM Airspace Conformance
4.3.4. Critical System Failures—Vehicle Health
4.3.5. Unsafe Proximity to People and Property—Minimization of Risk to the Public
4.4. Design of Unambiguous and Meaningful Icons (Design Principles 2, 3 and 4)
4.5. Definition of System States and Hues (Design Principles 2 and 5)
5. Final Display Layout
6. HMI Evaluation
6.1. Scenarios and Tasks
6.2. Dependent Variables
6.2.1. Performance
6.2.2. Display Complexity
6.2.3. Situation Awareness
6.2.4. Perceived Effort
6.3. Procedure
6.4. Participants
6.5. Results
6.5.1. Performance
6.5.2. Display Complexity
6.5.3. Situation Awareness & Perceived Effort
7. Discussion
7.1. Visualization Approach
7.2. Functional Decomposition Approach
7.3. Future Work
7.3.1. Further Evaluation Studies
7.3.2. Embedding the HMI into a Simulation Environment
7.3.3. Application to Other Use Cases
8. Conclusions
Author Contributions
Funding
Informed Consent Statement
Acknowledgments
Conflicts of Interest
Abbreviations
ALT | Altitude |
EID | Ecological Interface Design |
DEV | Deviation |
DGPS | Differential Global Positioning System |
FAA | Federal Aviation Authority |
HDG | Heading |
GPS | Global Positioning System |
GS | Ground Speed |
HMI | Human–Machine Interface |
MALE | Medium Altitude Long Endurance |
NASA | National Aeronautics and Space Administration |
RTL | Return to Launch |
SASHA | Situation Awareness for Solutions for Human Automation Partnerships in European Air Traffic Management |
SME | Subject Matter Expert |
UAS | Unmanned Aircraft System |
sUAS | Small Unmanned Aircraft System |
UTM | Unmanned Aircraft Systems Traffic Management |
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System Decomposition Level | Functional Abstraction Level |
---|---|
Whole system | Generalized functions |
Subsystem and components | Physical functions |
Physical forms |
Derived Design Principle | Metric |
---|---|
Icons shall resemble the real-world object they are intended to represent. | Concreteness |
Icons shall entail as much detail as necessary, but as little as possible. | Complexity |
Icons shall include features that are familiar to the operator. | Familiarity |
Abstract Function | Generalized Function | Icon | Description |
---|---|---|---|
Aviation of aircraft | Command conformance | sUAS + arrows representing direction of movement. | |
Flight envelope protection | sUAS + scales representing the bank angle. | ||
Range & endurance | Battery capacity + route from origin to destination. | ||
Separation to hazards & prohibited areas | Geo-fence conformance | Fence representing a geo-fence. | |
Obstacles, terrain & traffic | Arrow around a triangle + exclamation mark, representing rerouting around a potentially hazardous object. | ||
Meteorological constraints | Wind sock representative for weather. | ||
Minimization of risk to the public | Casualty risk | Group of people representing the general public that needs to be protected. | |
Vehicle health | Data transfer | Icon for signal reception quality, known from mobile phones, representing data link reception. | |
Positional accuracy | Cross + square + dotted circle, intended to resemble a target for representing accuracy. | ||
Electrical supply | Battery icon, familiar from the automotive domain. | ||
Motor health | Rotors + circle, representing a motor of a multi-copter. | ||
Sensor health | Sensor + radio waves, representing a sensor. | ||
UTM airspace conformance | UTM information | Open envelope, visualizing incoming mail. | |
Airspace conformance | Air vehicle + box with a dotted line, representing approved airspace boundaries. |
State | Specification | Color | Example | |
---|---|---|---|---|
Nominal | All parameters are within nominal limits. | Gray | Range is sufficient. | |
Expected change | One or more parameters are changing in an expected manner. | Cyan | Guided mode engaged due to encounter of rogue traffic. | |
Caution | One or more parameters are approaching critical limits. | Yellow | Battery voltage below threshold value. | |
Warning | One or more parameters are within critical limits. | Red (flash) | Loss of data link. |
Questionnaire | M | SD | MD |
Display complexity | 4.69 | 0.62 | 5.00 |
Situation awareness | 4.97 | 0.62 | 5.00 |
Ease of use | 5.12 | 0.60 | 5.17 |
Questions assessing visual search | M | SD | MD |
I know where to look for the information I need. | 5.29 | 0.76 | 5.00 |
I can see the information I need without searching. | 4.57 | 0.98 | 5.00 |
I have to search through the display to find the information I need. (inverted) | 3.43 | 1.72 | 4.00 |
I can find the information I need with one or a few glances. | 5.14 | 0.90 | 5.00 |
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Friedrich, M.; Vollrath, M. Human–Machine Interface Design for Monitoring Safety Risks Associated with Operating Small Unmanned Aircraft Systems in Urban Areas. Aerospace 2021, 8, 71. https://doi.org/10.3390/aerospace8030071
Friedrich M, Vollrath M. Human–Machine Interface Design for Monitoring Safety Risks Associated with Operating Small Unmanned Aircraft Systems in Urban Areas. Aerospace. 2021; 8(3):71. https://doi.org/10.3390/aerospace8030071
Chicago/Turabian StyleFriedrich, Max, and Mark Vollrath. 2021. "Human–Machine Interface Design for Monitoring Safety Risks Associated with Operating Small Unmanned Aircraft Systems in Urban Areas" Aerospace 8, no. 3: 71. https://doi.org/10.3390/aerospace8030071
APA StyleFriedrich, M., & Vollrath, M. (2021). Human–Machine Interface Design for Monitoring Safety Risks Associated with Operating Small Unmanned Aircraft Systems in Urban Areas. Aerospace, 8(3), 71. https://doi.org/10.3390/aerospace8030071