Spatiotemporal prediction of wildfire size extremes with Bayesian finite sample maxima
暂无分享,去创建一个
Adam L. Mahood | Nathan P. Mietkiewicz | Lise A. St. Denis | Maxwell B. Joseph | J. Abatzoglou | J. Balch | R. C. Nagy | M. Cattau | M. Joseph | M. Rossi | Megan E Cattau | Virginia Iglesias | V. Iglesias | R Chelsea Nagy | Maxwell B Joseph | Matthew W Rossi | Nathan P Mietkiewicz | Adam L Mahood | Lise Ann St Denis | John T Abatzoglou | Jennifer K Balch | L. Denis | L. S. St. Denis | Maxwell B. Joseph | Matthew W. Rossi | Megan | E. Cattau
[1] B. Quayle,et al. A Project for Monitoring Trends in Burn Severity , 2007 .
[2] Jiqiang Guo,et al. Stan: A Probabilistic Programming Language. , 2017, Journal of statistical software.
[3] Marc R. Wiitala,et al. Assessing the Risk of Cumulative Burned Acreage Using the Poisson Probability Model 1 , 1999 .
[4] Pablo Juan,et al. Modeling fire size of wildfires in Castellon (Spain), using spatiotemporal marked point processes , 2016 .
[5] A. Syphard,et al. Human presence diminishes the importance of climate in driving fire activity across the United States , 2017, Proceedings of the National Academy of Sciences.
[6] Carl Boettiger,et al. An introduction to Docker for reproducible research , 2014, OPSR.
[7] Aki Vehtari,et al. Sparsity information and regularization in the horseshoe and other shrinkage priors , 2017, 1707.01694.
[8] W. Hargrove,et al. Simulating fire patterns in heterogeneous landscapes , 2000 .
[9] Alessandro Sorichetta,et al. High resolution global gridded data for use in population studies , 2017, Scientific Data.
[10] R. Neilson,et al. Impacts of climate change on fire regimes and carbon stocks of the U.S. Pacific Northwest , 2011 .
[11] Andrew Gelman,et al. General methods for monitoring convergence of iterative simulations , 1998 .
[12] Andreas Brezger,et al. Generalized structured additive regression based on Bayesian P-splines , 2006, Comput. Stat. Data Anal..
[13] Douglas G. Woolford,et al. A model for predicting human-caused wildfire occurrence in the region of Madrid, Spain , 2010 .
[14] J. Abatzoglou,et al. Modeling very large-fire occurrences over the continental United States from weather and climate forcing , 2014 .
[15] Jiguo Cao,et al. Lightning‐caused forest fire risk in Northwestern Ontario, Canada, is increasing and associated with anomalies in fire weather , 2014 .
[16] J. Besag,et al. On conditional and intrinsic autoregressions , 1995 .
[17] J. Abatzoglou,et al. Human-Related Ignitions Increase the Number of Large Wildfires across U.S. Ecoregions , 2018 .
[18] Jorge Mateu,et al. A spatio-temporal Poisson hurdle point process to model wildfires , 2014, Stochastic Environmental Research and Risk Assessment.
[19] E. Natasha Stavros,et al. Regional projections of the likelihood of very large wildland fires under a changing climate in the contiguous Western United States , 2014, Climatic Change.
[20] P. Bermudez,et al. Spatial and temporal extremes of wildfire sizes in Portugal (1984–2004) , 2009 .
[21] Scott L. Goodrick. Modification of the Fosberg fire weather index to include drought , 2002 .
[22] M. Moritz,et al. Global Pyrogeography: the Current and Future Distribution of Wildfire , 2009, PloS one.
[23] A. P. Williams,et al. Impact of anthropogenic climate change on wildfire across western US forests , 2016, Proceedings of the National Academy of Sciences.
[24] S. P. Mclaughlin,et al. Effects of Wildfire on A Sonoran Desert Plant Community , 1982 .
[25] P. Pernin. The Great Peshtigo Fire: An Eyewitness Account , 1971 .
[26] Andreas Brezger,et al. Monotonic Regression Based on Bayesian P–Splines , 2008 .
[27] Jennifer K. Balch,et al. Human-started wildfires expand the fire niche across the United States , 2017, Proceedings of the National Academy of Sciences.
[28] Robert E. Keane,et al. A conceptual framework for predicting temperate ecosystem sensitivity to human impacts on fire regimes , 2013 .
[29] Alexandra D. Syphard,et al. Rapid growth of the US wildland-urban interface raises wildfire risk , 2018, Proceedings of the National Academy of Sciences.
[30] James M. Omernik,et al. Ecoregions of the Conterminous United States: Evolution of a Hierarchical Spatial Framework , 2014, Environmental Management.
[31] Michael Brauer,et al. Critical Review of Health Impacts of Wildfire Smoke Exposure , 2016, Environmental health perspectives.
[32] S. Turquety,et al. Statistical modelling of wildfire size and intensity: a step toward meteorological forecasting of summer extreme fire risk , 2015 .
[33] Roger Bivand,et al. Comparing Implementations of Estimation Methods for Spatial Econometrics , 2015 .
[34] J. Abatzoglou. Development of gridded surface meteorological data for ecological applications and modelling , 2013 .
[35] Hadley Wickham,et al. Dates and Times Made Easy with lubridate , 2011 .
[36] Sataya D. Dubey,et al. Compound gamma, beta and F distributions , 1970 .
[37] T. Swetnam,et al. Landscape-scale controls over 20th century fire occurrence in two large Rocky Mountain (USA) wilderness areas , 2002, Landscape Ecology.
[38] S. Wood. Generalized Additive Models: An Introduction with R, Second Edition , 2017 .
[39] Gerhard Tutz,et al. Variable Selection and Model Choice in Geoadditive Regression Models , 2009, Biometrics.
[40] David J. Ganz,et al. Climate change and disruptions to global fire activity , 2012 .
[41] R. Guyette,et al. Dynamics of an Anthropogenic Fire Regime , 2003, Ecosystems.
[42] M. Moritz,et al. Constraints on global fire activity vary across a resource gradient. , 2011, Ecology.
[43] J. Ramsay. Monotone Regression Splines in Action , 1988 .
[44] Curtis H. Flather,et al. Housing growth in and near United States protected areas limits their conservation value , 2009, Proceedings of the National Academy of Sciences.
[45] Jerry Williams,et al. Exploring the onset of high-impact mega-fires through a forest land management prism , 2013 .
[46] David R. Brillinger,et al. Probability based models for estimation of wildfire risk , 2004 .
[47] D. Brillinger,et al. Risk assessment: a forest fire example , 2003 .
[48] Richard L. Smith,et al. Models for exceedances over high thresholds , 1990 .
[49] H. Preisler,et al. Climate change and growth scenarios for California wildfire , 2011 .
[50] Susan I. Stewart,et al. Human influence on California fire regimes. , 2007, Ecological applications : a publication of the Ecological Society of America.
[51] J. Hosking,et al. Parameter and quantile estimation for the generalized pareto distribution , 1987 .
[52] Roger D. Peng,et al. On the distribution of wildfire sizes , 2003 .
[53] Anthony L. Westerling,et al. Statistical Model for Forecasting Monthly Large Wildfire Events in Western United States , 2007 .
[54] Jorge Mateu,et al. Spatio-temporal log-Gaussian Cox processes for modelling wildfire occurrence: the case of Catalonia, 1994–2008 , 2014, Environmental and Ecological Statistics.
[55] Eric P. Smith,et al. An Introduction to Statistical Modeling of Extreme Values , 2002, Technometrics.
[56] J. Omernik. Ecoregions of the Conterminous United States , 1987 .
[57] Dae-Jin Lee,et al. P-spline ANOVA-type interaction models for spatio-temporal smoothing , 2011 .
[58] A. Zeileis,et al. zoo: S3 Infrastructure for Regular and Irregular Time Series , 2005, math/0505527.
[59] D. Shindell,et al. Driving forces of global wildfires over the past millennium and the forthcoming century , 2010, Proceedings of the National Academy of Sciences.
[60] M. Ignaccolo,et al. A metastatistical approach to rainfall extremes , 2015 .
[61] Qianlai Zhuang,et al. Extreme value analysis of wildfires in Canadian boreal forest ecosystems , 2011 .
[62] M. Krawchuk,et al. Implications of changing climate for global wildland fire , 2009 .
[63] José Pereira,et al. Spatial extremes of wildfire sizes: Bayesian hierarchical models for extremes , 2010, Environmental and Ecological Statistics.
[64] J. Pereira,et al. Relationships between Human Population Density and Burned Area at Continental and Global Scales , 2013, PloS one.
[65] Scott A. Sisson,et al. A fully probabilistic approach to extreme rainfall modeling , 2003 .
[66] Drew T. Shindell,et al. Fire parameterization on a global scale , 2009 .
[67] Sarah McCaffrey,et al. Defining Extreme Wildfire Events: Difficulties, Challenges, and Impacts , 2018 .
[68] Andrew Gelman,et al. The No-U-turn sampler: adaptively setting path lengths in Hamiltonian Monte Carlo , 2011, J. Mach. Learn. Res..
[69] G. Botter,et al. On the emergence of rainfall extremes from ordinary events , 2016 .
[70] F. Joos,et al. Climate and human influences on global biomass burning over the past two millennia , 2008 .
[71] Geoffrey H. Donovan,et al. The economic cost of adverse health effects from wildfire-smoke exposure: a review , 2010 .
[72] A. Arneth,et al. Impact of human population density on fire frequency at the global scale , 2013 .
[73] Diane Lambert,et al. Zero-inflacted Poisson regression, with an application to defects in manufacturing , 1992 .
[74] Christopher I. Roos,et al. The human dimension of fire regimes on Earth , 2011, Journal of biogeography.
[75] P. Mair,et al. Extended Rasch Modeling: The eRm Package for the Application of IRT Models in R , 2007 .
[76] William J. Reed,et al. Power-law behaviour and parametric models for the size-distribution of forest fires , 2002 .
[77] C. Daly,et al. Physiographically sensitive mapping of climatological temperature and precipitation across the conterminous United States , 2008 .
[78] John E. Walsh,et al. Assessing the response of area burned to changing climate in western boreal North America using a Multivariate Adaptive Regression Splines (MARS) approach , 2009 .
[79] Aki Vehtari,et al. Hierarchical Bayesian Survival Analysis and Projective Covariate Selection in Cardiovascular Event Risk Prediction , 2014, BMA@UAI.
[80] Nicholas J. Nauslar,et al. The 2017 North Bay and Southern California Fires: A Case Study , 2018, Fire.
[81] A. Westerling. Increasing western US forest wildfire activity: sensitivity to changes in the timing of spring , 2016, Philosophical Transactions of the Royal Society B: Biological Sciences.
[82] M. Fromm,et al. The 2013 Rim Fire: Implications for Predicting Extreme Fire Spread, Pyroconvection, and Smoke Emissions , 2015 .
[83] Weiguo Song,et al. Artificial neural network approach for modeling the impact of population density and weather parameters on forest fire risk , 2009 .
[84] David B. Dunson,et al. Bayesian data analysis, third edition , 2013 .
[85] Z. Qiu,et al. A Prospective Study of Iodine Status, Thyroid Function, and Prostate Cancer Risk: Follow-up of the First National Health and Nutrition Examination Survey , 2007, Nutrition and cancer.
[86] Xiao-Li Meng,et al. POSTERIOR PREDICTIVE ASSESSMENT OF MODEL FITNESS VIA REALIZED DISCREPANCIES , 1996 .
[87] M. Moritz,et al. Large wildfire trends in the western United States, 1984–2011 , 2014 .