Progress Toward a New Weather Generator Eric Schmidt, Colorado State University - Pueblo Dr. James O’Brien, Florida State University Anthony Arguez, Florida.

Slides:



Advertisements
Similar presentations
Uganda’s climate: change and variability Prof Chris Reason, UCT & Lead Author, WG1 AR5 Regional circulation and climate Climate variability Long-term projections.
Advertisements

Climate Recap and Seasonal Outlook Dr. John Abatzoglou Assistant Prof, Department of Geography University of Idaho Many Thanks to Eric.
The Effects of El Niño-Southern Oscillation on Lightning Variability over the United States McArthur “Mack” Jones Jr. 1, Jeffrey M. Forbes 1, Ronald L.
EVSC 495/EVAT 795 Data Analysis & Climate Change Class hours: TuTh 2:00-3:15 pm Instructor: Michael E. Mann.
Climatology Climatology is the study of Earth’s climate and the factors that affect past, present, and future climatic changes. Climate describes the long-term.
STAT 497 APPLIED TIME SERIES ANALYSIS
Long Term Temperature Variability of Santa Barbara Coutny By Courtney Keeney and Leila M.V. Carvalho.
El Niño Effects on Goleta Coast Wave Climate
SSH anomalies from satellite. Observed annual mean state Circulation creates equatorial cold tongues eastern Pacific Trades -> Ocean upwelling along Equator.
HDD and CDD Option Pricing with Market Price of Weather Risk for Taiwan Hung-Hsi Huang Yung-Ming Shiu Pei-Syun Lin The Journal of Futures Markets Vol.
INTERDECADAL OSCILLATIONS OF THE SOUTH AMERICAN MONSOON AND THEIR RELATIONSHIP WITH SEA SURFACE TEMPERATURE João Paulo Jankowski Saboia Alice Marlene Grimm.
Climate and Food Security Thank you to the Yaqui Valley and Indonesian Food Security Teams at Stanford 1.Seasonal Climate Forecasts 2.Natural cycles of.
Extreme Events and Climate Variability. Issues: Scientists are telling us that global warming means more extreme weather. Every year we seem to experience.
El Niño is characterized by unusually warm temperatures that move eastward toward Peru’s coast La Niña is characterized by unusually cool temperatures.
Climate Variability and Forecasting in the Southeast U.S. David F. Zierden Center for Ocean-Atmospheric Prediction Studies The Florida State University.
Climate and Climate Change. Climate Climate is the average weather conditions in an area over a long period of time. Climate is determined by a variety.
Review of Probability.
School of Information Technologies The University of Sydney Australia Spatio-Temporal Analysis of the relationship between South American Precipitation.
December 2002 Section 2 Past Changes in Climate. Global surface temperatures are rising Relative to average temperature.
What is the Difference Between Weather and Climate?
The Effect of ENSO on Precipitation in San Diego, California Andrew Horan.
Dynamic Climate An overview of Climate Oscillations.
Sea Level Change in Hong Kong and ENSO DW Zheng 1,2, XL Ding 1, YQ Chen 1, C Huang 2 1 Department of Land Surveying and Geo-Informatics Hong Kong Polytechnic.
Climate: Outlook and Operational Planning Jayantha Obeysekera (’Obey’), Ph.D.,P.E.,D.WRE Department Director Hydrologic & Environmental Systems Modeling.
The La Niña Influence on Central Alabama Rainfall Patterns.
Ocean Circulation: El Niño
Water Year Outlook. Long Range Weather Forecast Use a combination of long term predictors –Phase of Pacific Decadal Oscillation (PDO) –Phase of Atlantic.
An Orbitally Driven Tropical Source for Abrupt Climate Change Amy C. Clement, Mark A. Cane and Richard Seager by Jasmine Rémillard November 8, 2006.
The Climate Chapter 25.
Talking Points 9/6/2005. Background  In our continuing efforts to make sound water management decisions, the scientists and engineers at SFWMD have been.
“Effects of Pacific Sea Surface Temperature (SST) Anomalies on the Climate of Southern South Carolina and Northern Coastal Georgia ” Whitney Albright Joseph.
El Nino and La Nina opposite phases of the El Niño-Southern Oscillation (ENSO) cycle. The ENSO cycle describes the changes in temperature between the ocean.
Climate and Climate Change Environmental Science Spring 2011.
Introduction 1. Climate – Variations in temperature and precipitation are now predictable with a reasonable accuracy with lead times of up to a year (
Ben Kirtman University of Miami-RSMAS Disentangling the Link Between Weather and Climate.
© 2005 Accurate Environmental Forecasting Climate and Hurricane Risk Dr. Dail Rowe Accurate Environmental Forecasting
19.2 Pressure Centers & Wind
Relationship between interannual variations in the Length of Day (LOD) and ENSO C. Endler, P. Névir, G.C. Leckebusch, U. Ulbrich and E. Lehmann Contact:
Coral records of El Niño and Tropical Pacific climate change Kim M. Cobb Harold Nations Symposium October 14, 2005.
Winter/Spring Outlook Derrick Weitlich National Weather Service Melbourne Central Florida Prescribed Fire Council Annual Meeting September 25,
What is the Difference Between Weather and Climate?
El Niño-Southern Oscillation Impact on Nitrogen Leaching in North Florida Dairy Forage Systems Victor E. Cabrera*, Peter E. Hildebrand, and James W. Jones.
Assessing the Influence of Decadal Climate Variability and Climate Change on Snowpacks in the Pacific Northwest JISAO/SMA Climate Impacts Group and the.
STATISTICS OF EXTREME EVENTS AMS Probability and Statistics Committee January 11, 2009 WELCOME! AMS SHORT COURSE.
El Niňo. El Nińo: A significant increase in sea surface temperature over the eastern and central equatorial Pacific that occurs at irregular intervals,
Indo-Pacific Sea Surface Temperature Influences on Failed Consecutive Rainy Seasons over Eastern Africa** Andy Hoell 1 and Chris Funk 1,2 Contact:
Much of the work that follows is straight from (or slightly modified) notes kindly made available by Jenny Pollock NCG and or spk (?)…. Nice to have a.
Climate Variability in the Southeast NIDIS Southeast Pilot, Apalachicola Workshop Apalachicola, FL April 27, 2010 David F. Zierden Florida State Climatologist.
Lecture 9: Air-Sea Interactions EarthsClimate_Web_Chapter.pdfEarthsClimate_Web_Chapter.pdf, p ; Ch. 16, p ; Ch. 17, p
Anomalous Behavior Unit 3 Climate of Change InTeGrate Module Cynthia M. Fadem Earlham College Russian River Valley, CA, USA.
 El Nino is an abnormal warming of surface ocean waters in the Pacific Ocean  This occurs every 3-5 years  Part of what's called the Southern Oscillation.
The ENSO Cycle Naturally occurring phenomenon – El Nino / Southern Oscillation (ENSO) Cycle Equatorial Pacific fluctuates between warmer-than-average.
The impact of lower boundary forcings (sea surface temperature) on inter-annual variability of climate K.-T. Cheng and R.-Y. Tzeng Dept. of Atmos. Sci.
The unpredictability of GW and El Nino events leading to increasing natural hazards.
Ch. 13 Section 1. Objective Compare and contrast weather and climate. List and describe factors that influence them and analyze their impact.
El Niño–Southern Oscillation (ENSO): What is it?
Spatial Modes of Salinity and Temperature Comparison with PDO index
Daylength Local Mesoscale Winds Chinook Winds (Foehn) Loma, MT: January 15, 1972, the temperature rose from -54 to 49°F (-48 to 9°C), a 103°F (58°C)
El Niño and La Niña.
An overview of Climate Oscillations
EL NINO Figure (a) Average sea surface temperature departures from normal as measured by satellite. During El Niño conditions upwelling is greatly.
The Climate System TOPICS ENSO Impacts Seasonal Climate Forecasts
Effects of Temperature and Precipitation Variability on Snowpack Trends in the Western U.S. JISAO/SMA Climate Impacts Group and the Department of Civil.
El Niño-Southern Oscillation
The Data Set.
Global Climate Change.
Role of Statistics in Climate Sciences
Ocean/atmosphere variability related to the development of tropical Pacific sea-surface temperature anomalies in the CCSM2.0 and CCSM3.0 Bruce T. Anderson,
The Data Set.
Presentation transcript:

Progress Toward a New Weather Generator Eric Schmidt, Colorado State University - Pueblo Dr. James O’Brien, Florida State University Anthony Arguez, Florida State University

Abstract A weather generator is developed using Fourier Analysis on pre-recorded El Niño January data from the Tallahassee Regional AP Weather Station. Spectral methods are then applied to carry through the characteristics of the minimum and maximum temperature. The application of statistical methods is employed to increase confidence of maintaining the physical properties and correlations held by the minimum and maximum temperatures for El Niño Januaries.

Introduction Models of empirical daily weather series are repeatedly used in water engineering design and agricultural, ecosystem or climate change situations due to the limitations of recorded ground-based meteorological data in terms of their length, completeness, or spatial coverage. Using Fourier and spectral analysis, a new method is implemented to produce synthetic weather data, using previously recorded minimum/maximum temperature from the Tallahassee Regional AP Weather Station. This process is new in that it uses the spectral domain to generate this synthetic temperature instead of the norm of creating in the time domain. The El Niño-Southern Oscillation (ENSO) is the leading mode of inter- annual variability over the United States. ENSO is associated with anomalous sea surface temperatures in the equatorial Pacific Ocean. However, ENSO impacts extend far away from this region due to realigning global weather patterns. Over Florida, in particular, the temperature tends to be colder during El Niño events and warmer during La Niña events. The model assumes that both monthly minimum temperature and maximum temperature are Gaussian variables.

Model Construction From the Tallahassee Regional Weather Station, we collected temperature data for 13 El Niño Januaries starting in 1952: knt  Minimum temperature time series, n = 1 (1) 31, t = 1 (1) 13 mnt  Maximum temperature time series, n = 1 (1) 31, t = 1 (1) 13 Prior to Fourier Analysis, the Monthly mean was removed from each of the 13 data sets. Using IDL’s built in FFT function (Eq. 1), the thirteen time series were converted to spectral space. From these spectral estimates, an ensemble average spectral estimate for minimum temperature (Figure 1) and an ensemble average spectral estimate (Eq. 6) for maximum temperature were created. This average Spectrum is symmetric about the Nyquist Frequency, which occurs at position 15/31, thus Figure 1 only depicts frequencies 0-15.

Model Construction (cont.) Hf is created by taking the respective square roots of the average spectral estimates for the recorded minimum and maximum temperatures. From here, a white noise, or random data, series xn was created from a uniform distribution with mean zero, variance one. This white noise has no preference to a particular time scale and it’s spectrum, XfXf* is a constant. From this data set, Xf (Eqs. 2,4,3) is then created from IDL’s FFT function (Eq. 1).

Model Construction (cont.)

Data

Data (cont.)

Results and Conclusions

Future Work Some of the results found throughout this research led to un-anticipated problems. The following is a list of ideas of future work in this project: Add the slope of the recorded temperatures because the synthetic data is lacking spectral energy at the lower frequencies Utilize the difference between maximum temperature and minimum temperature to Redo spectral type analysis on the difference between maximum and minimum temperature to model their co-variation. Then either add this to the generated minimum temperature or subtract this from the generated maximum temperature. Simulate minimum temperature, then use the normality and the difference between maximum and minimum temperature to create a distribution to offset/adjust maximum temperature. Add precipitation to this multivariate weather generator

References Wilks, D.S., and R.L. Wilby, The weather generation game: a review of stochastic weather models. Progress in Physical Geography, 23, Marine Department, Japan Meteorological Agency, 1991: Climate charts of sea surface temperatures of the western North Pacific and the global ocean. 51 pp. Bendat, Julius S., and Allan G. Piersol Random Data: Analysis and Measurement Procedures. Wiley, John & Sons, Incorporated.