48 research outputs found
Optimal transfers from Moon to halo orbit of the Earth-Moon system
In this paper, we seek optimal solutions for a transfer from a parking orbit
around the Moon to a halo orbit around of the Earth-Moon system, by
applying a single maneuver and exploiting the stable invariant manifold of the
hyperbolic parking solution at arrival. For that, we propose an optimization
problem considering as variables both the orbital characteristics of a parking
solution around the Moon, (namely, its Keplerian elements) and the
characteristics of a transfer trajectory guided by the stable manifold of the
arrival Halo orbit. The problem is solved by a nonlinear programming method
(NLP), aiming to minimize the cost of to perform a single maneuver
transfer, within the framework of the Earth-Moon system of the circular
restricted three-body problem. Results with low and suitable time of
flight show the feasibility of this kind of transfer for a Cubesat
Numerical investigations of the orbital dynamics around a synchronous binary system of asteroids
In this article, equilibrium points and families of periodic orbits in the
vicinity of the collinear equilibrium points of a binary asteroid system are
investigated with respect to the angular velocity of the secondary body, the
mass ratio of the system and the size of the secondary. We assume that the
gravitational fields of the bodies are modeled assuming the primary as a mass
point and the secondary as a rotating mass dipole. This model allows to compute
families of planar and halo periodic orbits that emanate from the equilibrium
points and . The stability and bifurcations of these families are
analyzed and the results are compared with the results obtained with the
Restricted Three-Body Problem (RTBP). The results provide an overview of the
dynamical behavior in the vicinity of a binary asteroid system
Theory of Functional Connections and Nelder-Mead optimization methods applied in satellite characterization
The growing population of man-made objects with the build up of
mega-constellations not only increases the potential danger to all space
vehicles and in-space infrastructures (including space observatories), but
above all poses a serious threat to astronomy and dark skies. Monitoring of
this population requires precise satellite characterization, which is is a
challenging task that involves analyzing observational data such as position,
velocity, and light curves using optimization methods. In this study, we
propose and analyze the application of two optimization procedures to determine
the parameters associated with the dynamics of a satellite: one based on the
Theory of Functional Connections (TFC) and another one based on the Nelder-Mead
heuristic optimization algorithm. The TFC performs linear functional
interpolation to embed the constraints of the problem into a functional. In
this paper, we propose to use this functional to analytically embed the
observational data of a satellite into its equations of dynamics. After that,
any solution will always satisfy the observational data. The second procedure
proposed in this research takes advantage of the Nealder-Mead algorithm, that
does not require the gradient of the objective function, as alternative
solution. The accuracy, efficiency, and dependency on the initial guess of each
method is investigated, analyzed, and compared for several dynamical models.
These methods can be used to obtain the physical parameters of a satellite from
available observational data and for space debris characterization contributing
to follow-up monitoring activities in space and astronomical observatories.Comment: Submitted to Acta Astronautic
Statistical Coding and Decoding of Heartbeat Intervals
The heart integrates neuroregulatory messages into specific bands of frequency, such that the overall amplitude spectrum of the cardiac output reflects the variations of the autonomic nervous system. This modulatory mechanism seems to be well adjusted to the unpredictability of the cardiac demand, maintaining a proper cardiac regulation. A longstanding theory holds that biological organisms facing an ever-changing environment are likely to evolve adaptive mechanisms to extract essential features in order to adjust their behavior. The key question, however, has been to understand how the neural circuitry self-organizes these feature detectors to select behaviorally relevant information. Previous studies in computational perception suggest that a neural population enhances information that is important for survival by minimizing the statistical redundancy of the stimuli. Herein we investigate whether the cardiac system makes use of a redundancy reduction strategy to regulate the cardiac rhythm. Based on a network of neural filters optimized to code heartbeat intervals, we learn a population code that maximizes the information across the neural ensemble. The emerging population code displays filter tuning proprieties whose characteristics explain diverse aspects of the autonomic cardiac regulation, such as the compromise between fast and slow cardiac responses. We show that the filters yield responses that are quantitatively similar to observed heart rate responses during direct sympathetic or parasympathetic nerve stimulation. Our findings suggest that the heart decodes autonomic stimuli according to information theory principles analogous to how perceptual cues are encoded by sensory systems