75 research outputs found
The joint projected normal and skew-normal: a distribution for poly-cylindrical data
The contribution of this work is the introduction of a multivariate
circular-linear (or poly- cylindrical) distribution obtained by combining the
projected and the skew-normal. We show the flexibility of our proposal, its
property of closure under marginalization and how to quantify multivariate
dependence. Due to a non-identifiability issue that our proposal inherits from
the projected normal, a compu- tational problem arises. We overcome it in a
Bayesian framework, adding suitable latent variables and showing that posterior
samples can be obtained with a post-processing of the estimation algo- rithm
output. Under specific prior choices, this approach enables us to implement a
Markov chain Monte Carlo algorithm relying only on Gibbs steps, where the
updates of the parameters are done as if we were working with a multivariate
normal likelihood. The proposed approach can be also used with the projected
normal. As a proof of concept, on simulated examples we show the ability of our
algorithm in recovering the parameters values and to solve the identification
problem. Then the proposal is used in a real data example, where the
turning-angles (circular variables) and the logarithm of the step-lengths
(linear variables) of four zebras are jointly modelled
Modeling animal movement with directional persistence and attractive points
GPS technology is currently easily accessible to researchers, and many animal
movement datasets are available. Two of the main features that a model which
describes an animal's path can possess are directional persistence and
attraction to a point in space. In this work, we propose a new approach that
can have both characteristics. Our proposal is a hidden Markov model with a new
emission distribution. The emission distribution models the two aforementioned
characteristics, while the latent state of the hidden Markov model is needed to
account for the behavioral modes. We show that the model is easy to implement
in a Bayesian framework. We estimate our proposal on the motivating data that
represent GPS locations of a Maremma Sheepdog recorded in Australia. The
obtained results are easily interpretable and we show that our proposal
outperforms the main competitive model
A multivariate circular-linear hidden Markov model for distributions-oriented wind forecast verication
Winds from the North-West quadrant and lack of precipitation are known to lead to an increase of PM10
concentrations in a residential neighborhood of the city of Taranto (Apulia, Italy). In 2012 the local government
prescribed a reduction of industrial emissions by 10% every time such meteorological conditions are
forecasted 72 hours in advance. Wind prediction is addressed using the Weather Research and Forecasting
(WRF) atmospheric simulation system by the Regional Environmental Protection Agency (ARPA Puglia).
In the framework of distributions-oriented forecast verication, we investigate the ability of the WRF system
to properly predict the local wind speed and direction allowing dierent performances for unknown
wind regimes. Ground-observed and WRF-predicted wind speed and direction at a relevant location are
jointly modeled as a 4-dimensional time series with a nite number of states (wind regimes) characterized by
homogeneous distributional behavior. Observed and simulated wind data are made of two circular (direction)
and two linear (speed) variables, then the 4-dimensional time series is jointly modeled by a mixture of
projected-skew normal distributions with time-independent states, where the temporal evolution of the state
membership follows a rst order Markov process. Parameter estimates are obtained by a Bayesian MCMCbased
method and results provide useful insights on wind regimes corresponding to dierent performances
of WRF predictions
Circadian activity of small brown bear populations living in human-dominated landscapes
Whereas numerous studies on large carnivores have focused on analyzing spatial patterns and habitat use, the temporal dimension of their activity has been relatively little investigated, making this a topic of growing interest, especially in human-dominated landscapes. Relict and isolated Apennine brown bears (Ursus arctos marsicanus) have been living in a human-modified landscape since millennia, but no information is available on their activity patterns. By means of GPS telemetry (26,880 GPS locations collected from 18 adult Apennine brown bears) we investigated their circadian rhythms, using hourly movement rates as an index of bear activity. Based on a Bayesian modeling approach, circadian activity of Apennine brown bears was described by a bimodal curve, with peaks of activity around sunrise and sunset. We revealed seasonal effects, with bears exhibiting higher movement rates throughout the mating season, but no relevant influence of sex. In addition, bears increased their movement rate at distances < 100–500 m to roads and settlements exclusively during spring and late summer, suggesting a trade-off between foraging opportunities and risk avoidance. The absence of a marked nocturnality in Apennine brown bears suggests a relatively low degree of habitat encroachment and disturbance by humans. Yet, the occurrence of crepuscular activity patterns and the responses in proximity of anthropogenic landscape features likely indicate a coadaptation by bears to human presence through a shift in their temporal niche. Further studies should aim to unveil fitness implications of such modifications in activity patterns
EURECOM:Monthly Bulletin of European Community Economic and Financial News. July/August 1991 Vol. 3, No. 7
Winds from the North-West quadrant and lack of precipitation are
known to lead to an increase of PM10 concentrations over a residential neighborhood
in the city of Taranto (Italy). In 2012 the local government prescribed
a reduction of industrial emissions by 10% every time such meteorological
conditions are forecasted 72 hours in advance. Wind forecasting is addressed
using the Weather Research and Forecasting (WRF) atmospheric simulation
system by the Regional Environmental Protection Agency. In the context of
distributions-oriented forecast verification, we propose a comprehensive modelbased
inferential approach to investigate the ability of the WRF system to
forecast the local wind speed and direction allowing different performances for
unknown weather regimes. Ground-observed and WRF-forecasted wind speed
and direction at a relevant location are jointly modeled as a 4-dimensional
time series with an unknown finite number of states characterized by homogeneous
distributional behavior. The proposed model relies on a mixture of joint
projected and skew normal distributions with time-dependent states, where
the temporal evolution of the state membership follows a first order Markov
process. Parameter estimates, including the number of states, are obtained
by a Bayesian MCMC-based method. Results provide useful insights on the
performance of WRF forecasts in relation to different combinations of wind
speed and direction
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