989 research outputs found
Blazar observations above 60 GeV: the Influence of CELESTE's Energy Scale on the Study of Flares and Spectra
The CELESTE atmospheric Cherenkov detector ran until June 2004. It has
observed the blazars Mrk 421, 1ES 1426+428 and Mrk 501. We significantly
improved our understanding of the atmosphere using a LIDAR, and of the optical
throughput of the detector using stellar photometry. The new data analysis
provides better background rejection. We present our light curve for Mrk 421
for the 2002-2004 season and a comparison with X-ray data and the 2004
observation of 1ES 1426+428. The new analysis will allow a more sensitive
search for a signal from Mrk 501.Comment: 7 pages, 7 figures, proc. of the 35th COSPAR Scientific Assembly held
in Paris, France, July 200
Modeling and Predicting Epidemic Spread: A Gaussian Process Regression Approach
Modeling and prediction of epidemic spread are critical to assist in
policy-making for mitigation. Therefore, we present a new method based on
Gaussian Process Regression to model and predict epidemics, and it quantifies
prediction confidence through variance and high probability error bounds.
Gaussian Process Regression excels in using small datasets and providing
uncertainty bounds, and both of these properties are critical in modeling and
predicting epidemic spreading processes with limited data. However, the
derivation of formal uncertainty bounds remains lacking when using Gaussian
Process Regression in the setting of epidemics, which limits its usefulness in
guiding mitigation efforts. Therefore, in this work, we develop a novel bound
on the variance of the prediction that quantifies the impact of the epidemic
data on the predictions we make. Further, we develop a high probability error
bound on the prediction, and we quantify how the epidemic spread, the infection
data, and the length of the prediction horizon all affect this error bound. We
also show that the error stays below a certain threshold based on the length of
the prediction horizon. To illustrate this framework, we leverage Gaussian
Process Regression to model and predict COVID-19 using real-world infection
data from the United Kingdom
Adaptive Identification of SIS Models
Effective containment of spreading processes such as epidemics requires
accurate knowledge of several key parameters that govern their dynamics. In
this work, we first show that the problem of identifying the underlying
parameters of epidemiological spreading processes is often ill-conditioned and
lacks the persistence of excitation required for the convergence of adaptive
learning schemes. To tackle this challenge, we leverage a relaxed property
called initial excitation combined with a recursive least squares algorithm to
design an online adaptive identifier to learn the parameters of the
susceptible-infected-susceptible (SIS) epidemic model from the knowledge of its
states. We prove that the iterates generated by the proposed algorithm minimize
an auxiliary weighted least squares cost function. We illustrate the
convergence of the error of the estimated epidemic parameters via several
numerical case studies and compare it with results obtained using conventional
approaches
Feedback Design for Devising Optimal Epidemic Control Policies
For reliable epidemic monitoring and control, this paper proposes a feedback
mechanism design to effectively cope with data and model uncertainties. Using
past epidemiological data, we describe methods to estimate the parameters of
general epidemic models. Because the data could be noisy, the estimated
parameters may not be accurate. Therefore, under uncertain parameters and noisy
measurements, we provide an observer design method for robust state estimation.
Then, using the estimated model and state, we devise optimal control policies
by minimizing a predicted cost functional. Finally, the effectiveness of the
proposed method is demonstrated through its implementation on a modified SIR
epidemic model
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