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Journal of Climate | 2006

Toward a Unified View of the American Monsoon Systems

Carolina S. Vera; Wayne Higgins; Jorge A. Amador; Tércio Ambrizzi; René D. Garreaud; David J. Gochis; David S. Gutzler; Dennis P. Lettenmaier; Jose A. Marengo; Carlos R. Mechoso; J. Nogues-Paegle; P. L. Silva Dias; Chidong Zhang

An important goal of the Climate Variability and Predictability (CLIVAR) research on the American monsoon systems is to determine the sources and limits of predictability of warm season precipitation, with emphasis on weekly to interannual time scales. This paper reviews recent progress in the understanding of the American monsoon systems and identifies some of the future challenges that remain to improve warm season climate prediction. Much of the recent progress is derived from complementary international programs in North and South America, namely, the North American Monsoon Experiment (NAME) and the Monsoon Experiment South America (MESA), with the following common objectives: 1) to understand the key components of the American monsoon systems and their variability, 2) to determine the role of these systems in the global water cycle, 3) to improve observational datasets, and 4) to improve simulation and monthly-to-seasonal prediction of the monsoons and regional water resources. Among the recent observational advances highlighted in this paper are new insights into moisture transport processes, description of the structure and variability of the South American low-level jet, and resolution of the diurnal cycle of precipitation in the core monsoon regions. NAME and MESA are also driving major efforts in model development and hydrologic applications. Incorporated into the postfield phases of these projects are assessments of atmosphere–land surface interactions and model-based climate predictability experiments. As CLIVAR research on American monsoon systems evolves, a unified view of the climatic processes modulating continental warm season precipitation is beginning to emerge.


Water Resources Research | 2011

Hyperresolution global land surface modeling: Meeting a grand challenge for monitoring Earth's terrestrial water

Eric F. Wood; Joshua K. Roundy; Tara J. Troy; L.P.H. van Beek; Marc F. P. Bierkens; Eleanor Blyth; Ad de Roo; Petra Döll; Michael B. Ek; James S. Famiglietti; David J. Gochis; Nick van de Giesen; Paul R. Houser; Stefan Kollet; Bernhard Lehner; Dennis P. Lettenmaier; Christa D. Peters-Lidard; Murugesu Sivapalan; Justin Sheffield; Andrew J. Wade; Paul Whitehead

Monitoring Earths terrestrial water conditions is critically important to many hydrological applications such as global food production; assessing water resources sustainability; and flood, drought, and climate change prediction. These needs have motivated the development of pilot monitoring and prediction systems for terrestrial hydrologic and vegetative states, but to date only at the rather coarse spatial resolutions (∼10–100 km) over continental to global domains. Adequately addressing critical water cycle science questions and applications requires systems that are implemented globally at much higher resolutions, on the order of 1 km, resolutions referred to as hyperresolution in the context of global land surface models. This opinion paper sets forth the needs and benefits for a system that would monitor and predict the Earths terrestrial water, energy, and biogeochemical cycles. We discuss six major challenges in developing a system: improved representation of surface-subsurface interactions due to fine-scale topography and vegetation; improved representation of land-atmospheric interactions and resulting spatial information on soil moisture and evapotranspiration; inclusion of water quality as part of the biogeochemical cycle; representation of human impacts from water management; utilizing massively parallel computer systems and recent computational advances in solving hyperresolution models that will have up to 109 unknowns; and developing the required in situ and remote sensing global data sets. We deem the development of a global hyperresolution model for monitoring the terrestrial water, energy, and biogeochemical cycles a “grand challenge” to the community, and we call upon the international hydrologic community and the hydrological science support infrastructure to endorse the effort.


Bulletin of the American Meteorological Society | 2012

How Well Are We Measuring Snow: The NOAA/FAA/NCAR Winter Precipitation Test Bed

Roy Rasmussen; Bruce Baker; John Kochendorfer; Tilden P. Meyers; Scott Landolt; Alexandre P. Fischer; Jenny Black; Julie M. Thériault; Paul A. Kucera; David J. Gochis; Craig D. Smith; Rodica Nitu; Mark E. Hall; Kyoko Ikeda; Ethan D. Gutmann

This paper presents recent efforts to understand the relative accuracies of different instrumentation and gauges with various windshield configurations to measure snowfall. Results from the National Center for Atmospheric Research (NCAR) Marshall Field Site will be highlighted. This site hosts a test bed to assess various solid precipitation measurement techniques and is a joint collaboration between the National Oceanic and Atmospheric Administration (NOAA), NCAR, the National Weather Service (NWS), and Federal Aviation Administration (FAA). The collaboration involves testing new gauges and other solid precipitation measurement techniques in comparison with World Meteorological Organization (WMO) reference snowfall measurements. This assessment is critical for any ongoing studies and applications, such as climate monitoring and aircraft deicing, that rely on accurate and consistent precipitation measurements.


Journal of Climate | 2011

High resolution coupled climate-runoff simulations of seasonal snowfall over Colorado: A process study of current and warmer climate

Roy Rasmussen; Changhai Liu; Kyoko Ikeda; David J. Gochis; David Yates; Fei Chen; Mukul Tewari; Michael Barlage; Jimy Dudhia; Wei Yu; Kathleen A. Miller; Kristi R. Arsenault; Vanda Grubišić; Greg Thompson; Ethan D. Gutmann

AbstractClimate change is expected to accelerate the hydrologic cycle, increase the fraction of precipitation that is rain, and enhance snowpack melting. The enhanced hydrological cycle is also expected to increase snowfall amounts due to increased moisture availability. These processes are examined in this paper in the Colorado Headwaters region through the use of a coupled high-resolution climate–runoff model. Four high-resolution simulations of annual snowfall over Colorado are conducted. The simulations are verified using Snowpack Telemetry (SNOTEL) data. Results are then presented regarding the grid spacing needed for appropriate simulation of snowfall. Finally, climate sensitivity is explored using a pseudo–global warming approach. The results show that the proper spatial and temporal depiction of snowfall adequate for water resource and climate change purposes can be achieved with the appropriate choice of model grid spacing and parameterizations. The pseudo–global warming simulations indicate enha...


Frontiers in Ecology and the Environment | 2012

Cascading impacts of bark beetle‐caused tree mortality on coupled biogeophysical and biogeochemical processes

Steven L. Edburg; Jeffrey A. Hicke; Paul D. Brooks; Elise Pendall; Brent E. Ewers; Urszula Norton; David J. Gochis; Ethan D. Gutmann; Arjan J. H. Meddens

Recent, large-scale outbreaks of bark beetle infestations have affected millions of hectares of forest in western North America, covering an area similar in size to that impacted by fire. Bark beetles kill host trees in affected areas, thereby altering water supply, carbon storage, and nutrient cycling in forests; for example, the timing and amount of snow melt may be substantially modified following bark beetle infestation, which impacts water resources for many western US states. The quality of water from infested forests may also be diminished as a result of increased nutrient export. Understanding the impacts of bark beetle outbreaks on forest ecosystems is therefore important for resource management. Here, we develop a conceptual framework of the impacts on coupled biogeophysical and biogeochemical processes following a mountain pine beetle (Dendroctonus ponderosae) outbreak in lodgepole pine (Pinus contorta Douglas var latifolia) forests in the weeks to decades after an infestation, and highlight fu...


Water Resources Research | 2015

A unified approach for process-based hydrologic modeling: 1. Modeling concept

Martyn P. Clark; Bart Nijssen; Jessica D. Lundquist; Dmitri Kavetski; David E. Rupp; Ross Woods; Jim E Freer; Ethan D. Gutmann; Andrew W. Wood; Levi D. Brekke; Jeffrey R. Arnold; David J. Gochis; Roy Rasmussen

This work advances a unified approach to process-based hydrologic modeling to enable controlled and systematic evaluation of multiple model representations (hypotheses) of hydrologic processes and scaling behavior. Our approach, which we term the Structure for Unifying Multiple Modeling Alternatives (SUMMA), formulates a general set of conservation equations, providing the flexibility to experiment with different spatial representations, different flux parameterizations, different model parameter values, and different time stepping schemes. In this paper, we introduce the general approach used in SUMMA, detailing the spatial organization and model simplifications, and how different representations of multiple physical processes can be combined within a single modeling framework. We discuss how SUMMA can be used to systematically pursue the method of multiple working hypotheses in hydrology. In particular, we discuss how SUMMA can help tackle major hydrologic modeling challenges, including defining the appropriate complexity of a model, selecting among competing flux parameterizations, representing spatial variability across a hierarchy of scales, identifying potential improvements in computational efficiency and numerical accuracy as part of the numerical solver, and improving understanding of the various sources of model uncertainty.


Journal of Climate | 2012

A comparison of statistical and dynamical downscaling of winter precipitation over complex terrain

Ethan D. Gutmann; Roy Rasmussen; Changhai Liu; Kyoko Ikeda; David J. Gochis; Martyn P. Clark; Jimy Dudhia; Gregory Thompson

AbstractStatistical downscaling is widely used to improve spatial and/or temporal distributions of meteorological variables from regional and global climate models. This downscaling is important because climate models are spatially coarse (50–200 km) and often misrepresent extremes in important meteorological variables, such as temperature and precipitation. However, these downscaling methods rely on current estimates of the spatial distributions of these variables and largely assume that the small-scale spatial distribution will not change significantly in a modified climate. In this study the authors compare data typically used to derive spatial distributions of precipitation [Parameter-Elevation Regressions on Independent Slopes Model (PRISM)] to a high-resolution (2 km) weather model [Weather Research and Forecasting model (WRF)] under the current climate in the mountains of Colorado. It is shown that there are regions of significant difference in November–May precipitation totals (>300 mm) between th...


Journal of Hydrometeorology | 2007

Evaluation of PERSIANN-CCS Rainfall Measurement Using the NAME Event Rain Gauge Network

Yang Hong; David J. Gochis; Jiang-Tao Cheng; K Uo-Lin Hsu; Soroosh Sorooshian

Abstract Robust validation of the space–time structure of remotely sensed precipitation estimates is critical to improving their quality and confident application in water cycle–related research. In this work, the performance of the Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks-Cloud Classification System (PERSIANN-CCS) precipitation product is evaluated against warm season precipitation observations from the North American Monsoon Experiment (NAME) Event Rain Gauge Network (NERN) in the complex terrain region of northwestern Mexico. Analyses of hourly and daily precipitation estimates show that the PERSIANN-CCS captures well active and break periods in the early and mature phases of the monsoon season. While the PERSIANN-CCS generally captures the spatial distribution and timing of diurnal convective rainfall, elevation-dependent biases exist, which are characterized by an underestimate in the occurrence of light precipitation at high elevations and an overest...


Monthly Weather Review | 2002

Sensitivity of the Modeled North American Monsoon Regional Climate to Convective Parameterization

David J. Gochis; W. James Shuttleworth; Zong-Liang Yang

This paper documents the sensitivity of the modeled evolution of the North American monsoon system (NAMS) to convective parameterization in terms of thermodynamic and circulation characteristics, stability profiles, and precipitation. The convective parameterization schemes (CPSs) of Betts‐Miller‐Janjic, Kain‐Fritsch, and Grell were tested using version 3.4 of the PSU‐NCAR fifth-generation Mesoscale Model (MM5) running in a pseudoclimate mode. Model results for the initial phase of the 1999 NAM are compared with surface climate station observations and seven radiosonde sites in Mexico and the southwestern United States. The results show substantial differences in modeled precipitation, surface climate, and atmospheric stability occuring between the different model simulations, which are attributable to the representation of convection in the model. Moreover, large intersimulation differences in the low-level circulation fields are found. While none of the CPSs tested gave perfect simulation of observations everywhere in the model domain, the Kain‐Fritsch scheme generally gave significantly superior estimates of surface and upper air verification error statistics.


Bulletin of the American Meteorological Society | 2006

The NAME 2004 Field Campaign and Modeling Strategy

Wayne Higgins; Dave Ahijevych; Jorge A. Amador; Ana P. Barros; E. Hugo Berbery; Ernesto Caetano; Richard E. Carbone; Paul E. Ciesielski; Rob Cifelli; Miguel Cortez-Vázquez; Michael W. Douglas; Gus Emmanuel; Christopher W. Fairall; David J. Gochis; David S. Gutzler; Thomas J. Jackson; Richard H. Johnson; C. W. King; Timothy J. Lang; Myong-In Lee; Dennis P. Lettenmaier; René Lobato; Víctor Magaña; Stephen W. Nesbitt; Francisco Ocampo-Torres; Erik Pytlak; Peter J. Rogers; Steven A. Rutledge; Jae Schemm; Siegfried D. Schubert

The North American Monsoon Experiment (NAME) is an internationally coordinated process study aimed at determining the sources and limits of predictability of warm-season precipitation over North America. The scientific objectives of NAME are to promote a better understanding and more realistic simulation of warm-season convective processes in complex terrain, intraseasonal variability of the monsoon, and the response of the warm-season atmospheric circulation and precipitation patterns to slowly varying, potentially predictable surface boundary conditions. During the summer of 2004, the NAME community implemented an international (United States, Mexico, Central America), multiagency (NOAA, NASA, NSF, USDA) field experiment called NAME 2004. This article presents early results from the NAME 2004 campaign and describes how the NAME modeling community will leverage the NAME 2004 data to accelerate improvements in warm-season precipitation forecasts for North America.

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David Yates

National Center for Atmospheric Research

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Ethan D. Gutmann

National Center for Atmospheric Research

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Roy Rasmussen

National Center for Atmospheric Research

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Martyn P. Clark

National Center for Atmospheric Research

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Wei Yu

National Center for Atmospheric Research

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Jimy Dudhia

National Center for Atmospheric Research

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