SYSYSep 29, 2017

Small Satellite Constellation Separation using Linear Programming based Differential Drag Commands

arXiv:1710.001046 citationsh-index: 55
AI Analysis

For satellite operators, this provides a propellant-free approach to constellation formation that balances convergence time and operational lifetime.

This paper presents a linear programming-based method for controlling large satellite constellations using differential drag, achieving separation of 100+ satellites into an equally spaced constellation in 71 days with a relative angular error tolerance of 0.1 degrees.

We study the optimal control of an arbitrarily large constellation of small satellites operating in low Earth orbit. Simulating the lack of on-board propulsion, we limit our actuation to the use of differential drag maneuvers to make in-plane changes to the satellite orbits. We propose an efficient method to separate a cluster of satellites into a desired constellation shape while respecting actuation constraints and maximizing the operational lifetime of the constellation. By posing the problem as a linear program, we solve for the optimal drag commands for each of the satellites on a daily basis with a shrinking-horizon model predictive control approach. We then apply this control strategy in a nonlinear orbital dynamics simulation with a simple, varying atmospheric density model. We demonstrate the ability to control a cluster of 100+ satellites starting at the same initial conditions in a circular low Earth orbit to form an equally spaced constellation (with a relative angular separation error tolerance of one-tenth a degree). The constellation separation task can be executed in 71 days, a time frame that is competitive for the state-of-the-practice. This method allows us to trade the time required to converge to the desired constellation with a sacrifice in the overall constellation lifetime, measured as the maximum altitude loss experienced by one of the satellites in the group after the separation maneuvers.

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