dorsal/arxiv
View SchemaExtreme Value Statistics of the Total Energy in an Intermediate Complexity Model of the Mid-latitude Atmospheric Jet. Part II: trend detection and assessment
| Authors | Mara Felici, Valerio Lucarini, Antonio Speranza, Renato Vitolo |
|---|---|
| Categories | |
| ArXiv ID | physics/0612042 |
| URL | https://arxiv.org/abs/physics/0612042 |
| DOI | 10.1175/JAS4043.1 |
Abstract
A baroclinic model for the atmospheric jet at middle-latitudes is used as stochastic generator of non-stationary time series of the total energy of the system. A linear time trend is imposed on the parameter $T_E$, descriptive of the forced equator-to-pole temperature gradient and responsible for setting the average baroclinicity in the model. The focus lies on establishing a theoretically sound framework for the detection and assessment of trend at extreme values of the generated time series. This problem is dealt with by fitting time-dependent Generalized Extreme Value (GEV) models to sequences of yearly maxima of the total energy. A family of GEV models is used in which the location $\mu$ and scale parameters $\sigma$ depend quadratically and linearly on time, respectively, while the shape parameter $\xi$ is kept constant. From this family, a model is selected by using diagnostic graphical tools, such as probability and quantile plots, and by means of the likelihood ratio test. The inferred location and scale parameters are found to depend in a rather smooth way on time and, therefore, on $T_E$. In particular, power-law dependences of $\mu$ and $\sigma$ on $T_E$ are obtained, in analogy with the results of a previous work where the same baroclinic model was run with fixed values of $T_E$ spanning the same range as in this case. It is emphasized under which conditions the adopted approach is valid.
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"abstract": "A baroclinic model for the atmospheric jet at middle-latitudes is used as\nstochastic generator of non-stationary time series of the total energy of the\nsystem. A linear time trend is imposed on the parameter $T_E$, descriptive of\nthe forced equator-to-pole temperature gradient and responsible for setting the\naverage baroclinicity in the model. The focus lies on establishing a\ntheoretically sound framework for the detection and assessment of trend at\nextreme values of the generated time series. This problem is dealt with by\nfitting time-dependent Generalized Extreme Value (GEV) models to sequences of\nyearly maxima of the total energy. A family of GEV models is used in which the\nlocation $\\mu$ and scale parameters $\\sigma$ depend quadratically and linearly\non time, respectively, while the shape parameter $\\xi$ is kept constant. From\nthis family, a model is selected by using diagnostic graphical tools, such as\nprobability and quantile plots, and by means of the likelihood ratio test. The\ninferred location and scale parameters are found to depend in a rather smooth\nway on time and, therefore, on $T_E$. In particular, power-law dependences of\n$\\mu$ and $\\sigma$ on $T_E$ are obtained, in analogy with the results of a\nprevious work where the same baroclinic model was run with fixed values of\n$T_E$ spanning the same range as in this case. It is emphasized under which\nconditions the adopted approach is valid.",
"arxiv_id": "physics/0612042",
"authors": [
"Mara Felici",
"Valerio Lucarini",
"Antonio Speranza",
"Renato Vitolo"
],
"categories": [
"physics.ao-ph",
"physics.data-an",
"physics.flu-dyn",
"physics.geo-ph"
],
"doi": "10.1175/JAS4043.1",
"title": "Extreme Value Statistics of the Total Energy in an Intermediate Complexity Model of the Mid-latitude Atmospheric Jet. Part II: trend detection and assessment",
"url": "https://arxiv.org/abs/physics/0612042"
},
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