Generic Architecture for Self-Organized Adaptive Platform System of Systems
Abstract
:1. Introduction
2. Background
3. Methods
4. Generic Architecture Principles for Platform SOS
4.1. Modularity
4.2. Adaptability
4.3. Interoperability
4.4. Redundancy
5. The Generic Architecture Model of a Self-Organized Adaptive Platform SOS
5.1. The Model
5.2. The Main Layers
5.3. Transverse Layers
5.4. Main Components
6. Case Study
6.1. Overview
6.2. Upgrades from the Previous Generation of Fighters to F-35 JSF First Version
- Information sharing between the sensor and the vehicle system is enabled only through the ICP.
- Information sharing between effectors, such as fire control, is enabled only within the ICP.
- Lack of governance unit.
- Lack of cybersecurity and safety layers.
- There are no physical or virtual mediators in the general architecture to allow new information sharing with legacy components.
6.3. Upgrades from the F-35 JSF First Version to the Fusion Architecture
- Information sharing between the sensor and vehicle system/mission system flows via the fusion algorithms and creates a single point of failure.
- Lack of information sharing between effectors and all other components.
- Lack of governance unit.
- Lack of cybersecurity and safety layers.
7. Discussion
8. Conclusions
- Adaptability: by incorporating principles of modularity and standardization, the model enables platforms to adapt to new scenarios and requirements that may not have been foreseen during the initial design phase.
- Simplified system engineering: the generic architecture serves as a valuable tool for system architects, providing a baseline structure that ensures all necessary logical and physical components are considered; this approach can significantly streamline the design process and reduce the likelihood of overlooking critical elements.
- Cost and time efficiency: by embedding the infrastructure for change within the system architecture, the model minimizes the need for extensive redesign and redevelopment when modifications are required; this can lead to substantial savings in both cost and time over the system’s lifecycle.
- Enhanced interoperability: the emphasis on standardized interfaces and modular design facilitates easier integration of new components and payloads, promoting a “plug-and-play” functionality that can extend the platform’s capabilities over time.
- Futureproofing: the architecture’s focus on self-organization and adaptability prepares platforms to handle unforeseen operational scenarios and evolving stakeholder needs, ensuring their continued relevance and effectiveness.
- Explore the application of this generic architecture model to other domains beyond aerial platforms (land or sea platforms). Demonstrate additional test cases and their improvement using additional elements in the generic architecture.
- Deepen the design of the components of the connectivity layer.
- Explore how to identify the need for a change in the system state and the essence of the change in the system. Future research is required to complete the logic that identifies the change and determines the necessary adjustments. This work suggests that the AI and governance components incorporated into the architecture can implement this logic.
- Architecture model quantitative validation.
- Quantitative risk analysis to address the model redundancy and handle single points of failure. Furthermore, quantitative examination of the number of connections in a system when designed according to the model, where the connectivity layer connects all system components.
- Expand the architectural model to collaborative and virtual SOSs.
- Amplify the utility of the generic architecture model by coupling it with existing architecture frameworks, such as DoDAF.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Sitton, M.; Alon, R.; Reich, Y. Generic Architecture for Self-Organized Adaptive Platform System of Systems. Systems 2025, 13, 368. https://doi.org/10.3390/systems13050368
Sitton M, Alon R, Reich Y. Generic Architecture for Self-Organized Adaptive Platform System of Systems. Systems. 2025; 13(5):368. https://doi.org/10.3390/systems13050368
Chicago/Turabian StyleSitton, Miri, Rozi Alon, and Yoram Reich. 2025. "Generic Architecture for Self-Organized Adaptive Platform System of Systems" Systems 13, no. 5: 368. https://doi.org/10.3390/systems13050368
APA StyleSitton, M., Alon, R., & Reich, Y. (2025). Generic Architecture for Self-Organized Adaptive Platform System of Systems. Systems, 13(5), 368. https://doi.org/10.3390/systems13050368