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Autonomous Satellite Constellation Fault Monitoring Using Inter-Satellite Links: A Rigidity-Based Approach


Khái niệm cốt lõi
A novel fault detection framework for satellite constellations using inter-satellite ranging (ISR) that leverages vertex redundantly rigid graphs to detect faults without relying on precise ephemeris.
Tóm tắt

The paper proposes a fault detection framework for autonomous satellite constellations using inter-satellite ranging (ISR) measurements. The key highlights are:

  1. The framework leverages vertex redundantly rigid graphs to detect faults without relying on precise ephemeris information. Satellite constellations are modeled as graphs where satellites are vertices and inter-satellite links are edges.

  2. Faults are identified through the singular values of the geometric-centered Euclidean distance matrix (GCEDM) of 2-vertex redundantly rigid sub-graphs. The 4th and 5th singular values increase when a fault is present.

  3. The paper provides mathematical proofs of the sufficient and necessary conditions for the graph topology required to detect faults. It also analyzes the properties of the rank of the EDM and GCEDM under the presence of faults and noise.

  4. The proposed method is validated through simulations of constellations around the Moon, demonstrating its effectiveness in various configurations. The performance is evaluated in terms of true positive rate, false positive rate, and the P4 metric.

  5. The framework contributes to the reliable operation of satellite constellations for future lunar exploration missions by enabling autonomous fault monitoring without relying on ground-based monitoring stations or precise ephemeris.

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Thống kê
The paper presents the following key figures and metrics: The rank of the EDM Dn,d,m satisfies rank(Dn,d,m) ≤ min(d + 2 + 2m, n). The rank of the GCEDM Gn,d,m satisfies rank(Gn,d,m) ≤ min(d + 2m, n-1). The GCEDM ˜Gn,d,m constructed from an EDM with Gaussian noise almost surely has rank rank(˜Gn,d,m) = n-1. The true positive rate (TPR), false positive rate (FPR), and P4 metric are used to evaluate the fault detection performance. The TPR ranges from 0.006 to 0.896, the FPR ranges from 0.000 to 0.002, and the P4 metric ranges from 0.023 to 0.955, depending on the fault magnitude, number of faults, detection threshold, and detection length.
Trích dẫn
"We propose a rigidity-based online fault detection framework for satellite constellations that do not require precise ephemeris or observations at the monitoring stations." "We identify the required graph topology to identify fault satellites from a set of measured inter-satellite ranges. In particular, we show that the graph has to be 2-vertex redundantly rigid to detect fault satellites." "We prove several key properties about the ranks of EDMs and GCEDMs to provide mathematical backing for fault detection using the fourth and fifth singular values of the GCEDM."

Thông tin chi tiết chính được chắt lọc từ

by Keidai Iiyam... lúc arxiv.org 10-01-2024

https://arxiv.org/pdf/2406.09759.pdf
Autonomous Constellation Fault Monitoring with Inter-satellite Links: A Rigidity-Based Approach

Yêu cầu sâu hơn

How could the proposed fault detection framework be extended to handle multiple simultaneous faults more effectively, beyond the greedy approach presented in the paper?

To enhance the proposed fault detection framework for handling multiple simultaneous faults, several strategies could be implemented. One approach is to utilize a more sophisticated statistical model that accounts for the correlation between faults. Instead of a greedy algorithm that removes the most frequently detected fault satellite, a probabilistic model could be employed to assess the likelihood of each satellite being faulty based on the observed test statistics across multiple time steps. This could involve using Bayesian inference to update the fault probabilities as new data is collected, allowing for a more nuanced understanding of the fault landscape. Additionally, implementing a clustering algorithm could help identify groups of satellites that exhibit similar fault characteristics, which may indicate a common underlying issue. By analyzing the relationships and interactions among these satellites, the framework could differentiate between independent faults and those that are interrelated, thus improving fault isolation and identification. Moreover, incorporating machine learning techniques could enhance the framework's ability to learn from historical fault data, allowing it to adaptively refine its detection thresholds and parameters based on the operational environment and fault patterns. This would enable the system to dynamically adjust to varying fault conditions, improving its robustness and reliability in detecting multiple simultaneous faults.

What are the potential challenges and limitations of applying this approach to other types of satellite constellations, such as those in Earth orbit or Mars orbit, and how could the algorithm be adapted to address them?

Applying the proposed rigidity-based fault detection framework to other satellite constellations, such as those in Earth orbit or Mars orbit, presents several challenges and limitations. One significant challenge is the variability in the operational environment. For instance, Earth-based constellations benefit from a more stable and predictable environment, with established ground stations for additional monitoring. In contrast, lunar or Martian environments may have limited visibility and communication constraints, which could affect the availability of inter-satellite links and the quality of range measurements. To adapt the algorithm for these environments, it may be necessary to incorporate additional data sources, such as ground-based observations or auxiliary satellites, to enhance the robustness of fault detection. This could involve developing hybrid models that combine inter-satellite ranging with other positioning techniques, such as GPS or local beacons, to provide a more comprehensive fault monitoring solution. Another limitation is the potential for increased noise and measurement errors in different orbital regimes. For example, satellites in low Earth orbit (LEO) may experience more atmospheric interference, while those in higher orbits may face challenges related to signal delay and multipath effects. The algorithm could be adapted by incorporating advanced filtering techniques, such as Kalman filters or particle filters, to mitigate the impact of noise and improve the accuracy of range measurements. Finally, the algorithm's performance may be influenced by the specific topology and configuration of the satellite constellation. Adapting the clique-finding algorithm to account for varying satellite geometries and link availability will be crucial for maintaining effective fault detection across different constellations.

Could the insights from this work on rigidity-based fault detection be applied to other types of distributed systems beyond satellite constellations, such as sensor networks or robotic swarms, and what would be the key considerations in doing so?

The insights from the rigidity-based fault detection framework can indeed be applied to other types of distributed systems, such as sensor networks or robotic swarms. The fundamental principles of using geometric properties and inter-node relationships to detect faults are applicable across various domains where nodes interact and share information. In sensor networks, for instance, the concept of using inter-sensor measurements to establish a geometric framework can help identify faulty sensors based on inconsistencies in reported data. The rigidity-based approach could be adapted to monitor the spatial relationships between sensors, allowing for the detection of anomalies that indicate sensor malfunctions or communication failures. For robotic swarms, the framework could be utilized to ensure the integrity of the swarm's formation and coordination. By modeling the swarm as a graph where robots are vertices and communication links are edges, the rigidity properties can be leveraged to detect and isolate faulty robots that disrupt the swarm's behavior. Key considerations in this context would include the dynamic nature of robotic movements, the need for real-time processing, and the potential for varying communication ranges and link reliability. In both cases, the algorithm may need to be tailored to account for the specific characteristics of the system, such as the types of measurements available, the communication protocols used, and the operational constraints. Additionally, the scalability of the algorithm will be crucial, as larger networks may introduce computational challenges that require efficient algorithms for fault detection and isolation.
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