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Book Improving Tropical Cyclone Forecasts from Formation to Maturity Using Ensemble Based Data Assimilation

Download or read book Improving Tropical Cyclone Forecasts from Formation to Maturity Using Ensemble Based Data Assimilation written by Christopher Hartman and published by . This book was released on 2024 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: The studies comprising this dissertation use a state-of-the-art ensemble-based data assimilation (DA) system developed at The Pennsylvania State University to improve forecasts of tropical cyclones (TCs) during two of the least predictable stages of their lifecycle: formation (i.e., tropical cyclogenesis; hereafter TCG) and rapid intensification (RI). These improvements are realized by assimilating infrared (IR) brightness temperatures (BTs) observed by geostationary satellites under both clear and cloudy conditions. The all-sky IR BTs assimilated by the DA system help to constrain the initial moisture estimates within the core of the developing system in analyses via the strong ensemble correlations that exist between moisture content and simulated BTs. It is shown that forecasts initialized from these analyses exhibit a more realistic convective evolution, which translates to improved prediction of TCG and RI. For the case of TCG, the assimilation of upper-tropospheric water vapor channel BTs observed by the Meteosat-10 Spinning Enhanced Visible and InfraRed Imager (SEVIRI) instrument improves the timing of TCG in forecasts of Hurricane Irma (2017). In an experiment that withheld the BTs, TCG was premature by at least 24 hours due to an overestimation of the spatial coverage of deep convection within the African Easterly Wave (AEW) that Irma formed from. Spurious convection led to stronger low-level convergence and the earlier spin-up of a low-level meso-[beta]-scale (i.e., 20 -- 200 km) vortex. This was ameliorated by assimilating all-sky IR BTs. Furthermore, the substantial impact of initial moisture uncertainty within the incipient disturbance is revealed by initializing ensemble forecasts with only the initial moisture perturbations retained. Relative to an ensemble with initial perturbations to all variables, at least half of the intensity forecast uncertainty is attributed to initial moisture uncertainty within the AEW. These results show the importance of targeting the incipient disturbance with high spatio-temporal water vapor observations for ingestion into DA systems. For the case of RI, the assimilation of upper-tropospheric water vapor channel BTs observed by the GOES-16 Advanced Baseline Imager (ABI) led to significant improvements in the intensity forecasts of Hurricane Dorian (2019) at lead times of 48 hours and longer. These improvements are shown to be a result of better analyzed cloud fields as well as more intense initial primary and secondary circulations. Despite these improvements, the vortex exhibited an unrealistically broad structure that was fine-tuned by the additional assimilation of tail Doppler radar (TDR) radial velocities collected by NOAA P-3 aircraft. The simultaneous assimilation of all-sky IR BTs and radar observations therefore resulted in realistic forecasts of the track, structure, and RI of Dorian. These results underscore the potential of TDR observations to complement the benefits gained by assimilating all-sky IR BTs.

Book Advanced Numerical Modeling and Data Assimilation Techniques for Tropical Cyclone Predictions

Download or read book Advanced Numerical Modeling and Data Assimilation Techniques for Tropical Cyclone Predictions written by U.C. Mohanty and published by Springer. This book was released on 2016-11-21 with total page 762 pages. Available in PDF, EPUB and Kindle. Book excerpt: This book deals primarily with monitoring, prediction and understanding of Tropical Cyclones (TCs). It was envisioned to serve as a teaching and reference resource at universities and academic institutions for researchers and post-graduate students. It has been designed to provide a broad outlook on recent advances in observations, assimilation and modeling of TCs with detailed and advanced information on genesis, intensification, movement and storm surge prediction. Specifically, it focuses on (i) state-of-the-art observations for advancing TC research, (ii) advances in numerical weather prediction for TCs, (iii) advanced assimilation and vortex initialization techniques, (iv) ocean coupling, (v) current capabilities to predict TCs, and (vi) advanced research in physical and dynamical processes in TCs. The chapters in the book are authored by leading international experts from academic, research and operational environments. The book is also expected to stimulate critical thinking for cyclone forecasters and researchers, managers, policy makers, and graduate and post-graduate students to carry out future research in the field of TCs.

Book Storm centered Ensemble Data Assimilation for Tropical Cyclones

Download or read book Storm centered Ensemble Data Assimilation for Tropical Cyclones written by Erika L. Navarro and published by . This book was released on 2013 with total page 31 pages. Available in PDF, EPUB and Kindle. Book excerpt: A significant challenge for tropical cyclone ensemble data assimilation is that storm-scale observations tend to make analyses that are more asymmetric than the prior forecasts. Compromised structure and intensity, such as an increase of amplitude across the azimuthal Fourier spectrum, are a routine property of ensemble-based analyses, even with accurate position observations and frequent assimilation. Storm dynamics in subsequent forecasts evolve these states toward axisymmetry, creating difficulty in distinguishing between model-induced and actual storm asymmetries for predictability studies and forecasting. To address this issue, we propose here a novel algorithm using a storm-centered approach. The method is designed for use with existing ensemble filters with little or no modification, facilitating its adoption and maintenance. The algorithm consists of: (1) an analysis of the environment using conventional coordinates, (2) a storm-centered analysis using storm-relative coordinates, and (3) a merged analysis that combines the large-scale and storm-scale fields together at an updated storm location. The storm-centered method is evaluated for two sets of experiments: no-cycling tests of the update step for idealized, three-dimensional storms in radiative--convective equilibrium, and full cycling tests of data assimilation applied shallow-water model for a field of interacting vortices. In both cases results are compared against a control based on a conventional ensemble Kalman filter scheme. Results show that storm-relative assimilation yields vortices that are more symmetric and exhibit finer inner-core structure than for the control, with errors reduced by an order of magnitude as compared to a control with prior spread similar to the National Hurricane Center's 12~h mean track error in 12~h forecasts. Azimuthal Fourier error spectra exhibit much-reduced noise associated with data assimilation as compared to the conventional EnKF scheme. An assessment of the affect of the merge step on balance reveals a similar, balanced trend in free-surface height tendency between the storm-centered and conventional EnKF approaches, with storm-centered values more closely resembling the reference state.

Book Ensemble Data Assimilation and Predictability of Tropical Cyclones

Download or read book Ensemble Data Assimilation and Predictability of Tropical Cyclones written by and published by . This book was released on 2009 with total page 7 pages. Available in PDF, EPUB and Kindle. Book excerpt: The ultimate goals is to improve tropical cyclone track and intensity prediction through further development of the regional-scale, cloud-resolving ensemble-based data assimilation and prediction system capable of efficiently assimilating in-situ and remotely sensed observations.

Book Improving High resolution Tropical Cyclone Prediction Using a Cycled  GSI based Hybrid Ensemble variational Data Assimilation System for HWRF with Vortex Scale Observations

Download or read book Improving High resolution Tropical Cyclone Prediction Using a Cycled GSI based Hybrid Ensemble variational Data Assimilation System for HWRF with Vortex Scale Observations written by Xu Lu and published by . This book was released on 2019 with total page 147 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Book Tropical Cyclone Data Assimilation

Download or read book Tropical Cyclone Data Assimilation written by Christina R. Holt and published by . This book was released on 2015 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: This study investigates the benefits of employing a limited-area data assimilation (DA) system to enhance lower-resolution global analyses in the Northwest Pacific tropical cyclone (TC) basin. Numerical experiments are carried out with a global analysis system at horizontal resolution T62 and a limited-area analysis system at resolutions from 200 km to 36 km. The global and limited-area DA systems, which are both based on the Local Ensemble Transform Kalman Filter algorithm, are implemented using a unique configuration, in which the global DA system provides information about the large-scale analysis and background uncertainty to the limited-area DA system. In experiments that address the global-to-limited-area resolution ratio, the limited-area analyses of the storm locations for experiments in which the ratio is 1:2 are, on average, more accurate than those from the global analyses. Increasing the resolution of the limited-area system beyond 100 km adds little direct benefit to the analysis of position or intensity, although 48 km analyses reduce boundary effects of coupling the models and may benefit analyses in which observations with larger representativeness error are assimilated. Two factors contribute to the higher accuracy of the limited-area analyses. First, the limited-area system improves the accuracy of the location estimates for strong storms, which is introduced when the background is updated by the global assimilation. Second, it improves the accuracy of the background estimate of the storm locations for moderate and weak storms. Improvements in the steering flow analysis due to increased resolution are modest and short-lived in the forecasts. Limited-area track forecasts are more accurate, on average, than global forecasts, independently of the strength of the storms up to five days. This forecast improvement is due to the more accurate analysis of the initial position of storms and the better representation of the interactions between the storms and their immediate environment. Experiments that test the treatment and quality control (QC) methods of TC observations show that significant gainful improvements can be achieved in the analyses and forecasts of TCs when observations with large representativeness error are not discarded in the online QC procedure. These experiments examine the impact of assimilating TCVitals SLP, QuikSCAT 10 m wind components, and reconnaissance dropsondes alongside the conventional observations assimilated by NCEP in real time. Implementing a Combined method that clips the special TC observations via Huberization when multiple observation types are unavailable, and keeping the TCVital observation when other special observations are present, showed significant systematic improvements for strong and moderate storm analyses and forecasts. The electronic version of this dissertation is accessible from http://hdl.handle.net/1969.1/152556

Book Ensemble and Hybrid Four dimensional Data Assimilation for Tropical Cyclone Analysis and Prediction

Download or read book Ensemble and Hybrid Four dimensional Data Assimilation for Tropical Cyclone Analysis and Prediction written by Jonathan Poterjoy and published by . This book was released on 2014 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Numerical models and observations contain critical information regarding the earth-atmosphere system: they present a means of quantifying the system dynamics and provide evidence of the true system state, respectively. These two sources of information, however, are more valuable when combined into a single, dynamically consistent dataset. The objective of data assimilation in geosciences is to find an estimate of the model state that is statistically optimal, given all information known about the system, while preserving physical balances in the system dynamics. Another objective is to quantify the uncertainty in the resulting state estimate, which can be used for designing future observing networks, examining predictability limits, and initializing probabilistic model forecasts.This dissertation provides an introduction to atmospheric data assimilation in the context of tropical cyclone modeling efforts at Penn State University using the Weather Research and Forecasting (WRF) model. The first chapter focuses on the role of forecast error covariance, and the necessity of using flow-dependent statistics from ensembles to initialize tropical cyclones with consistent inner-core structure. Chapter two presents an investigation on sampling errors in ensemble data assimilation systems, and discusses some of the major challenges for applying the Ensemble Kalman filter (EnKF) for mesoscale applications. An EnKF is applied in chapter three to explore the predictability and genesis of Hurricane Karl (2010), and study the impact of field observations in forecasting its track and intensity. The Hurricane Karl case study is revisited in chapter four to examine the impact of applying four-dimensional variational (4DVar) and hybrid ensemble-4DVar (E4DVar) data assimilation methods for analyzing and forecasting genesis. The last chapter provides a more theoretical perspective on hybrid four-dimensional data assimilation. It compares the E4DVar approach used for the WRF model in chapter 4, with an alternative method that is being considered for operational use at several national forecast centers. This comparison is performed using a low-dimensional dynamical system to investigate several aspects of these methods in detail.

Book Testing a Coupled Global limited area Data Assimilation System Using Observations from the 2004 Pacific Typhoon Season

Download or read book Testing a Coupled Global limited area Data Assimilation System Using Observations from the 2004 Pacific Typhoon Season written by Christina Holt and published by . This book was released on 2012 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: Tropical cyclone (TC) track and intensity forecasts have improved in recent years due to increased model resolution, improved data assimilation, and the rapid increase in the number of routinely assimilated observations over oceans. The data assimilation approach that has received the most attention in recent years is Ensemble Kalman Filtering (EnKF). The most attractive feature of the EnKF is that it uses a fully flow-dependent estimate of the error statistics, which can have important benefits for the analysis of rapidly developing TCs. We implement the Local Ensemble Transform Kalman Filter algorithm, a variation of the EnKF, on a reduced-resolution version of the National Centers for Environmental Prediction (NCEP) Global Forecast System (GFS) model and the NCEP Regional Spectral Model (RSM) to build a coupled global-limited area analysis/forecast system. This is the first time, to our knowledge, that such a system is used for the analysis and forecast of tropical cyclones. We use data from summer 2004 to study eight tropical cyclones in the Northwest Pacific. The benchmark data sets that we use to assess the performance of our system are the NCEP Reanalysis and the NCEP Operational GFS analyses from 2004. These benchmark analyses were both obtained by the Statistical Spectral Interpolation, which was the operational data assimilation system of NCEP in 2004. The GFS Operational analysis assimilated a large number of satellite radiance observations in addition to the observations assimilated in our system. All analyses are verified against the Joint Typhoon Warning Center Best Track data set. The errors are calculated for the position and intensity of the TCs. The global component of the ensemble-based system shows improvement in position analysis over the NCEP Reanalysis, but shows no significant difference from the NCEP operational analysis for most of the storm tracks. The regional component of our system improves position analysis over all the global analyses. The intensity analyses, measured by the minimum sea level pressure, are of similar quality in all of the analyses. Regional deterministic forecasts started from our analyses are generally not significantly different from those started from the GFS operational analysis. On average, the regional experiments performed better for longer than 48 h sea level pressure forecasts, while the global forecast performed better in predicting the position for longer than 48 h.

Book Improving Hurricane Intensity Forecasting Through Data Assimilation  Environmental Conditions Versus the Vortex Initialization

Download or read book Improving Hurricane Intensity Forecasting Through Data Assimilation Environmental Conditions Versus the Vortex Initialization written by Zhaoxia Pu and published by . This book was released on 2011 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt:

Book Advances in Ocean Data Assimilation  Methodologies  Forecasting and Reanalysis

Download or read book Advances in Ocean Data Assimilation Methodologies Forecasting and Reanalysis written by Shiqiu Peng and published by Frontiers Media SA. This book was released on 2023-12-01 with total page 295 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Book Application of Kalman Filter and Breeding Ensemble Technique to Forecast the Tropical Cyclone Activity

Download or read book Application of Kalman Filter and Breeding Ensemble Technique to Forecast the Tropical Cyclone Activity written by Tran Tan Tien and published by . This book was released on 2022 with total page 0 pages. Available in PDF, EPUB and Kindle. Book excerpt: Tropical cyclone (TC) is one of the major meteorology disasters, as they lead to deaths, destroy the infrastructure and the environment. Therefore, how to improve the predictability of TC,Äôs activities, such as formation, track, and intensity, is very important and is considered an important task for current operational predicting TC centers in many countries. However, predicting TC,Äôs activities has remained a big challenge for meteorologists due to our incomplete understanding of the multiscale interaction of TCs with the ambient environment and the limitation of numerical weather forecast tools. Hence, this chapter will exhibit some techniques to improve the ability to predict the formation and track of TCs using an ensemble prediction system. Particularly, the Local Ensemble Transform Kalman Filter (LETKF) scheme and its implementation in the WRF Model, as well as the Vortex tracking method that has been applied for the forecast of TCs formation, will be presented in subSection 1. Application of Breeding Ensemble to Tropical Cyclone Track Forecasts using the Regional Atmospheric Modeling System (RAMS) model will be introduced in subSection 2.

Book Next Generation Earth System Prediction

Download or read book Next Generation Earth System Prediction written by National Academies of Sciences, Engineering, and Medicine and published by National Academies Press. This book was released on 2016-08-22 with total page 351 pages. Available in PDF, EPUB and Kindle. Book excerpt: As the nation's economic activities, security concerns, and stewardship of natural resources become increasingly complex and globally interrelated, they become ever more sensitive to adverse impacts from weather, climate, and other natural phenomena. For several decades, forecasts with lead times of a few days for weather and other environmental phenomena have yielded valuable information to improve decision-making across all sectors of society. Developing the capability to forecast environmental conditions and disruptive events several weeks and months in advance could dramatically increase the value and benefit of environmental predictions, saving lives, protecting property, increasing economic vitality, protecting the environment, and informing policy choices. Over the past decade, the ability to forecast weather and climate conditions on subseasonal to seasonal (S2S) timescales, i.e., two to fifty-two weeks in advance, has improved substantially. Although significant progress has been made, much work remains to make S2S predictions skillful enough, as well as optimally tailored and communicated, to enable widespread use. Next Generation Earth System Predictions presents a ten-year U.S. research agenda that increases the nation's S2S research and modeling capability, advances S2S forecasting, and aids in decision making at medium and extended lead times.

Book The National Meteorological Center

Download or read book The National Meteorological Center written by National Meteorological Center (U.S.) and published by . This book was released on 1963 with total page 32 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Book Dynamics and Predictability of Tropical Cyclones Evaluated Through Convection permitting Ensemble Analyses and Forecasts with Airborne Radar and Sounding Observations

Download or read book Dynamics and Predictability of Tropical Cyclones Evaluated Through Convection permitting Ensemble Analyses and Forecasts with Airborne Radar and Sounding Observations written by Erin Munsell and published by . This book was released on 2016 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: The dynamics and predictability of various aspects of tropical cyclone track and intensity forecasting are explored through the use of real-time convection-permitting ensemble forecasts generated by a regional-scale model that employs advanced data assimilation techniques. Airborne Doppler radar observations, as well as sounding observations gathered during NASAs Hurricane and Severe Storm Sentinel (HS3) are assimilated and the resulting sensitivity and uncertainty of divergent track and intensity forecasts for three Atlantic tropical cyclones (TCs; Hurricane Sandy (2012), Hurricane Nadine (2012), and Hurricane Edouard (2014)) are explored. Ensemble members are separated into groups according to their performance and composite analyses and ensemble sensitivity techniques are employed to diagnose the sources of greatest sensitivity and uncertainty, as well as to dynamically explain the divergent behavior observed in the forecasts.The analysis of the Hurricane Sandy (2012) ensemble reveals that the divergent track forecasts result from differences in the location of Sandy that develop over the first 48-h of the simulation as a result of variance in the strength of the environmental winds that Sandy is embedded in throughout this period. Disparities in the strength and position of an approaching mid-latitude trough yield divergence in track forecasts of Hurricane Nadine (2012); an increased interaction between the mid-latitude system and the TC steers Nadine eastward, while a reduced interaction allows the TC to be steered westward ahead of the approaching trough. In addition, the inclusion of 6-h sea surface temperature (SST) updates considerably improves Nadines intensity forecasts, highlighting the importance of accurate SST fields when simulating TCs embedded in marginally favorable environmental conditions. Finally, considerable variance in the rapid intensification (RI) onset time in the Hurricane Edouard (2014) ensemble results from small distinctions in the magnitude of deep-layer shear prior to RI, which contributes to differences in the vortex tilt magnitude, the strength and location of the inner-core convection associated with the developing vortex, and the subsequent precession process.

Book Cloud Resolving Hurricane Initialization and Prediction Through Assimilation of Doppler Radar Observations with an Ensemble Kalman Filter

Download or read book Cloud Resolving Hurricane Initialization and Prediction Through Assimilation of Doppler Radar Observations with an Ensemble Kalman Filter written by and published by . This book was released on 2009 with total page 23 pages. Available in PDF, EPUB and Kindle. Book excerpt: This study explores the assimilation of Doppler radar radial velocity observations for cloud-resolving hurricane analysis, initialization, and prediction with an ensemble Kalman filter (EnKF). The case studied is Hurricane Humberto (2007), the first landfalling hurricane in the United States since the end of the 2005 hurricane season and the most rapidly intensifying near-landfall storm in U.S. history. The storm caused extensive damage along the southeast Texas coast but was poorly predicted by operational models and forecasters. It is found that the EnKF analysis, after assimilating radial velocity observations from three Weather Surveillance Radars-1988 Doppler (WSR-88Ds) along theGulf coast, closely represents the best-track position and intensity of Humberto. Deterministic forecasts initialized from the EnKF analysis, despite displaying considerable variability with different lead times, are also capable of predicting the rapid formation and intensification of the hurricane. These forecasts are also superior to simulations without radar data assimilation or with a threedimensional variational scheme assimilating the same radar observations. Moreover, nearly all members from the ensemble forecasts initialized with EnKF analysis perturbations predict rapid formation and intensification of the storm. However, the large ensemble spread of peak intensity, which ranges from a tropical storm to a category 2 hurricane, echoes limited predictability in deterministic forecasts of the storm and the potential of using ensembles for probabilistic forecasts of hurricanes.

Book Achieving Superior Tropical Cyclone Intensity Forecasts by Improving the Assimilation of High resolution Satellite Data Into Mesoscale Prediction Models

Download or read book Achieving Superior Tropical Cyclone Intensity Forecasts by Improving the Assimilation of High resolution Satellite Data Into Mesoscale Prediction Models written by Christopher Velden and published by . This book was released on 2010 with total page 11 pages. Available in PDF, EPUB and Kindle. Book excerpt:

Book On the Predictability of Tropical Cyclones Through All sky Infrared Satellite Radiance Assimilation

Download or read book On the Predictability of Tropical Cyclones Through All sky Infrared Satellite Radiance Assimilation written by Masashi Minamide and published by . This book was released on 2018 with total page pages. Available in PDF, EPUB and Kindle. Book excerpt: The impacts of assimilating all-sky infrared satellite radiances, in particular from the new-generation geostationary satellites GOES-R (GOES-16) and Himawari-8, for convection-permitting initialization and prediction of tropical cyclones are explored. Community Radiative Transfer Model (CRTM) is newly connected to the ensemble Kalman filter (EnKF) data assimilation system developed at Penn State University (PSU) and built around the Weather Research and Forecasting model (WRF). Adaptive Observation Error Inflation (AOEI) method and Adaptive Background Error Inflation (ABEI) method are newly proposed to alleviate the large representativeness error in assimilating all-sky satellite radiances that arises from the strong nonlinearity in the observation operator. The impacts of assimilating all-sky satellite radiances for tropical cyclone initializations are investigated through perfect and imperfect Observing System Simulation Experiments (OSSEs) and Observing System Experiments (OSEs) using multiple infrared geostationary satellites including GOES-16, Himawari-8 and GOES-13. It is found that the assimilation of the infrared radiance can accurately constrain the dynamic and thermodynamic state variables. EnKF analyses are able to capture the developing the convective systems and even the individual cells, including the convective activities within the inner-core region of tropical cyclones. Deterministic forecasts initialized from the EnKF analyses exhibit the significant improvement from the forecast without the all-sky satellite radiance assimilation, and become capable of simulating the rapid intensification of tropical cyclones. This dissertation highlights the encouraging prospects of future improvement in tropical cyclone prediction through assimilating all-sky infrared radiance from highly spatiotemporally resolving geostationary satellites.