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Title: Spatio-Temporal%20Variability%20of%20the%20North%20American%20Monsoon


1
Spatio-Temporal Variability of the North American
Monsoon
  • Balaji Rajagopalan
  • Department of Civil, Env. And Arch. Engineering
    (CEAE) and CIRES
  • Katrina Grantz, Edie Zagona
  • CEAE/CADSWES
  • Martyn Clark (CIRES)

2
Introduction
  • North American Monsoon
  • Dramatic increase in rainfall from an extremely
    dry June to a rainy July, August and September
  • SW United States and NW Mexico
  • Shift in winds (from westerlies to southerlies)
    brings moisture over the land
  • Warm land moisture monsoonal precipitation
  • Afternoon thunderstorms

3
Introduction
  • Significant portion (30-50) of annual
    precipitation falls in the summer months in
    Arizona and New Mexico
  • Water management perspective important to
    predict the strength of the monsoon
  • for water supply and environmental planning
  • Few studies on timing, streamflow, and
    implications for water management
  • important to local communities in the monsoon
    region

4
North American Monsoon Experiment Schematic
Schematic Illustrating the multi-tiered
approach of the North American Monsoon Experiment
(NAME). The schematic also shows mean
(July-September 1979-1995) 925-hPa vector wind
and merged satellite estimates and raingauge
observations of precipitation (shading) in
millimeters.
5
North American Monsoon Schematic
6
Past Studies
  • Spatial and temporal variability depends on
  • Location of subtropical jet, topography, SSTs
  • Moisture comes from Gulf of California and Gulf
    of Mexico
  • Wet winter ? Early monsoon onset and vice-versa
    (Higgins Shi, 2000)
  • General negative correlation with previous
    winters precipitation (Gutzler, 2002 Higgins
    Shi, 2000) related to North Pacific SSTs
  • El Nino ? weaker/southward monsoon ridge (Castro,
    2000)
  • Increased monsoonal precipitation with increased
    soil moisture
  • (Toshi, et al. 2003 Small,2000)

7
Past StudiesHiggins et al. 1998
Composite evolution of the 30-day running mean
area average precipitation (units mm/day) over
Arizona and New Mexico for wet monsoons (dotted
line), dry monsoons (dot-dashed line) and all
(1963-94) monsoons (solid line). The average
date of monsoon onset is July 1 for wet monsoons,
July 11 for dry monsoons and July 7 for all
monsoons (defined as day 0 in each case).
8
MotivationSeasonal cycle shifts in Western US
hydroclimatology (Regonda et al. 2005)
9
Contd
10
Motivation
  • What are the large-scale Ocean/Atmospheric/Land
    drivers of space-time (timing and amount)
    variability of N. American Monsoon (interannual /
    decadal)?
  • Potential Long-lead Precitability?
  • Implications for water management.
  • Need a systematic investigation of the monsoon
    rainfall attributes and also the streamflows.

11
Outline
  • Study area, data
  • The research project
  • Precipitation diagnostics
  • Streamflow diagnostics (preliminary results)
  • Water management issues
  • Incorporating forecasts into water management

12
Study Area
  • Monsoon Region (NAME II) Arizona and New Mexico
  • Water Management Gila River
  • Flows from New Mexico through Arizona, joins
    Colorado River at Yuma, Arizona

AZ
NM

13
Data
  • Precipitation
  • Monthly climate division data (1948-2004)
  • NM (8 divisions), AZ (7 divisions)
  • Daily NWS co-op data (1948-1999)
  • 219 stations across AZ and NM
  • Temperature, PDSI
  • Monthly climate division data (1948-2004)
  • Large-scale climate variables
  • Monthly NOAA NCEP-NCAR reanalysis data
    (1948-2004)
  • SST, precipitable water, geopotential heights,
    vector winds
  • Streamflow
  • Daily HCDN streamflow (1948-1999)
  • USGS daily/monthly values (1948-2005)

Co-op Stations
14
The Research Project
  • Precipitation diagnostics
  • Streamflow diagnostics
  • Water management issues
  • Incorporating forecasts into water management

15
Precipitation Diagnostics
  • Monsoon cycle
  • Monsoon rainfall
  • Plausible hypothesis
  • Antecedent land conditions
  • Antecedent ocean Atmospheric conditions

16
Precipitation DiagnosticsMonsoon Cycle
  • Monsoon timing at each co-op station
  • Calculate Julian day when 10, 25, 50, 75, and
    90th percentile of the monsoon season (July-Sept)
    precipitation has fallen (each station, each
    year)
  • -- Julian day time series for each threshold
    for each station
  • Perform trend analysis on the Julian day time
    series
  • 10th, 25th, 50th, 75th, and 90th percentiles
    capture the entire monsoon cycle onset, peak
    and recedence

                          
17
Precipitation DiagnosticsMonsoon Cycle
  • Use Spearman rank correlation to detect trends
  • A nonparametric (distribution-free) correlation
    statistic
  • doesnt require that data be normally distributed
  • similar to Pearsons R, except that the values
    are converted to ranks before computing the
    correlation coefficient.
  • where D is the difference of the rank numbers.
    (Spearman, 1904)
  • gives p-value and slope
  • Correlatate value with time to get trend
  • Results similar for Pearsons R

                          
18
Figures
Climatological Julian day
Trends
5th Percentile
  • Largest circle gt 21 days
  • Second largest 15-21 days
  • Second smallest 10-15 days
  • Smallest circle lt 10 days
  • Filled circles significant at 90

25th Percentile
50th Percentile
  • lt July 19th
  • Jul 20th 29th
  • Jul 20th Aug 8th
  • Aug 9th Aug 18th
  • Aug 19th 28th
  • gt Aug 29th

75th Percentile
  • Entire Monsoon Cycle Shifted Later
  • Approx. 1015 days shift

95th Percentile
19
(No Transcript)
20
Precipitation DiagnosticsMonsoon Rainfall Amount
  • Monsoon rainfall amount at each station and
    climate division
  • July, August, September, July - September
  • Spearman rank correlation to compute the trends

                          
21
Precipitation DiagnosticsMonsoon Rainfall
  • Decrease in July
  • Increase in August and September (esp in NM)
  • July- September NM increase, AZ mixed/decrease
  • Consistent with the monsoon timing results

                          
22
Precipitation DiagnosticsRainfall Amount
Co-op station trends similar to climate division
trends
Relative circle size indicates the magnitude of
the trend (slope) 0.4 (largest circle),
0.3-0.4 (second largest), 0.2-0.3 (second
smallest), less than 0.2 (smallest circle).
23
Precipitation DiagnosticsMonsoon Rainfall
  • Is the trend a steady increase, or jump, or ?
  • August precipitation over AZ and NM 5 year
    moving window
  • Eastern region (NM) gets wetter in the later
    period
  • Western region (Arizona) trend not as distinct
  • Shift most apparent after a dry spell in the late
    1970s

24
Precipitation DiagnosticsMonsoon Moisture
  • Trends in Palmer drought severity index (PDSI)
    and 850mb precipitable water
  • Corroborate results seen in precipitation (more
    so with precipitable water)

                          
25
Precipitation DiagnosticsPlausible Hypothesis
  • What is driving the delay in the monsoon cycle?
  • Hypothesis
  • Increased pre-monsoon (antecedent winter/spring)
    soil moisture ? longer summer heating to set up
    the land-ocean gradient ? delaying the monsoon
    cycle
  • Wetter antecedent winter / spring conditions in
    southwest driven by increased El Nino Southern
    Oscillation (ENSO) activity in recent decades

                          
26
Precipitation DiagnosticsAntecedent Land
Conditions
  • December- May precipitation and PDSI trends
  • Increasing trend in southwest, decreasing trend
    in northwest classic ENSO teleconnection pattern

                          
27
Precipitation DiagnosticsAntecedent Land
Conditions
  • Relate winter/spring hydroclimate to summer
    monsoon attributes
  • Principal Component Analysis (PCA) to find the
    dominant modes of variability in summer timing
    and rainfall
  • Leading modes can be thought of as spatial
    average
  • Timing PC1 28 of variance
  • July precip PC1 45 of variance
  • July-Sep precip PC1 45 of variance
  • Correlate leading modes with antecedent land
    conditions

                          
28
Precipitation DiagnosticsAntecedent Land
Conditions
  • Correlate 50th and 10th percentile timing PC1
    with antecedent precipitation/PDSI across western
    US
  • Significant positive (negative) correlations in
    southwest (northwest)
  • Correlations are stronger for the 10th
    percentile timing PC ? onset of monsoon more
    strongly affected by antecedent soil conditions

                          
29
Precipitation DiagnosticsAntecedent Land
Conditions
  • Correlate July and Jul-Sep precipitation PC1 with
    antecedent precipitation/PDSI across western US
  • Significant negative (positive) correlations in
    southwest (northwest)
  • This negative correlation between winter/spring
    precipitation and monsoon precipitation noted by
    Gutzler (2000)
  • Correlations are stronger for July PC ? Early
    monsoon rainfall more strongly affected by
    antecedent soil conditions

                          
30
Precipitation DiagnosticsAntecedent
Ocean-Atmospheric Conditions
  • Large-scale Drivers of summer variability
  • Correlate leading modes (PCs) of monsoon rainfall
    and timing with antecedent Ocean Atmospheric
    variables.

                          
31
TimingAntecedent Ocean Conditions
  • Correlate summer timing PCs with winter/spring
    SST and Z500
  • Positive correlations in equatorial Pacific- ENSO
    pattern
  • increased SSTs in winter/spring go with increased
    Julian day (i.e., delayed monsoon)
  • Correlations slightly stronger for 10th
    percentile (onset of monsoon)

                          
50th percentile Timing PC
10th percentile Timing PC
32
TimingAntecedent Atmospheric Conditions
  • Correlate summer timing PCs with winter/spring
    Z500
  • PNA type pattern consistent with SST correlations

50th percentile Timing PC1
10th percentile Timing PC1
                          
50 Timing PC
10 Timing PC
33
Rainfall amountAntecedent Ocean Conditions
  • Correlate summer rainfall PCs with winter/spring
    SSTs
  • July negative correlations in equatorial Pacific
    La Nina pattern
  • Decreased SSTs in winter/spring go with increased
    July precipitation (La Nina typically goes with
    decreased winter/spring precip -gt increased July
    precipitation
  • Correlations flipped for
  • Aug, almost no pattern
  • for Sep and Jul-Sep
  • Early monsoon precip
  • amount affected by SSTs
  • but later monsoon may
  • have different drivers

                          
34
Rainfall amountAntecedent Ocean Conditions
  • Correlate monsoon rainfall PCs with winter/spring
    Z500
  • Results consistent with SST correlations
  • July PNA type pattern
  • Correlations weaker and
  • reversed sign for Aug,
  • Sep and Jul-Sep.
  • Early monsoon precip
  • amount affected by pre-
  • monsoon Pacific Ocean
  • and Atmospheric features,
  • but later monsoon may
  • have different drivers

July
Aug
                          
Sep
Jul-Sep
35
Rainfall AmountHigh-Low Composites
Winds
Z500
SST
Jul
Aug
Sep
  • Aug and Sep rainfall extremes impacted by the
    surrounding Ocean/Atmospheric status

36
Precipitation DiagnosticsConclusions
  • Entire Monsoon cycle shifted approx 1015 days
    later in recent decades
  • Consequently, decreased rainfall in July and
    increase in Aug and Sept
  • Increased pre-monsoon precip/soil moisture
  • (driven largely by large-scale Pacific
    Ocean/Atmospheric features)
  • Leading modes of Monsoon timing and early (July)
    rainfall strongly related to pre-monsoon
    Ocean/Atmospheric/Land features
  • Aug-Sep rainfall driven by local
    Ocean-Atmospheric conditions
  • Significant implications for long-lead Monsoon
    forecast

                          
37
Proposed Hypothesis
  • Increased winter/spring wetness ? requires longer
    summer heating to set up adequate land-ocean
    gradient ? delayed monsoon cycle? reduced early
    Monsoon rainfall.
  • Large scale Ocean-Atmosphere conditions in Winter
    as main drivers.

38
The Research Project
  • Precipitation diagnostics
  • Streamflow diagnostics
  • Water management issues
  • Incorporating forecasts into water management

39
Water Management IssuesBasin Selection
  • Significant summer streamflow component
  • Affected by large-scale and/or local-scale
    climate drivers (this is important for
    forecasting)
  • Water management issues impacted by summertime
    streamflow (e.g., irrigation, MI, hydropower,
    environmental needs)
  • Policies or operations that rely on or could
    benefit from knowledge of the summer hydroclimate
  • Natural flow data available, either from HCDN
    data set or computed
  • Ideally, decision support tool already built and
    in use

                          
40
Water Management IssuesGila River
Gila River Basin Arizona and New Mexico

                          
41
Water Management IssuesGila Basin
  • Inadequate surface water supplies to meet
    irrigation, grazing, and mining demands
  • Conjunctive use between surface water and
    groundwater resources
  • Water quality problems due to excessive
    turbidity, bacteria, total dissolved solids,
    ammonia and acid mine drainage
  • some stretches of the river not useful for
    irrigation
  • Planning reservoir releases and diversions (4
    major dams) to meet demands
  • Increase/ decrease in demands depending on
    summertime precipitation
  • E.g., more precip ? decreased demand ? lower
    priority water user getting water (this can
    affect planting)

                          
42
Water Management IssuesExpected Outcomes
  • Detailed investigation of the Gila River basin
  • Key management issues (both supply and demand)
  • Operations and policies
  • Decision calendar timeframe of when decisions
    are made about reservoir releases and diversions
  • Identify attributes of the hydroclimate that need
    to be predicted for improved water resources
    management
  • Forecast variable (precipitation or streamflow)
  • timing of the forecasted variable (spring values,
    summer values, or both),
  • the forecast issue date
  • amount to be forecasted (seasonal, monthly, etc.)

                          
43
  • Preliminary Streamflow Analysis

44
Water Management IssuesGila River
  • Significant summer streamflow component
  • 25 of annual flow comes in July-October

                          
45
Streamflow DiagnosticsVolume Analysis (summer)
  • Gila River near Red Rock, NM
  • July decreasing trend
  • Aug, Sep, Oct
  • increasing trend

                          
46
Streamflow DiagnosticsVolume Analysis (summer)
  • San Francisco River at Clifton, AZ
  • July, Aug decreasing trend
  • Sep, Oct increasing trend

                          
47
Streamflow DiagnosticsWinter/Spring Flow
  • Winter/Spring Flows strongly related to
    winter/spring
  • Pacific SST and Z500
  • (ENSO/PNA patterns)

                          
48
Gila River -- Antecedent Flow Relationship
  • High Spring flows ? Low Summer flows
  • Consistent with Precipitation results

49
Streamflow DiagnosticsPrecipitation
Streamflow Relationship
  • Precipitation streamflow relationship is
    non-linear
  • High rainfall ? very little infiltration ? high
    streamflow
  • Streamflow can be forecast from precipitation.

50
Streamflow DiagnosticsMethodology
  • Streamflow stations with significant summer
    component (due to monsoon rains) approx. 40 in
    the region
  • Timing analysis
  • Trends in initiation, peak, and recedence of
    summer streamflow
  • Volume analysis
  • Trends in the summer and spring streamflow volume
  • Determine the dominant modes of timing and volume
    variability
  • Using PCA
  • Identify the land/ocean/atmospheric forcings that
    drive the streamflow variability
  • correlate antecedent conditions with the leading
    modes
  • Determine the relationship between spring and
    summer streamflow precipitation and streamflow
    in the monsoon season and the role of subsurface
    flow
  • See how well the Precipitation Hypothesis
    holds with streamflow
  • Implications to Water Resources Management

                          
51
Summary and Conclusions
  • Antecedent (winter/spring) Pacific
    Ocean-Atmospheric conditions and the continental
    (Western US) land conditions have a substantial
    influence on the following summer monsoon cycle
    and rainfall amount.
  • Streamflows in the region too exhibit similar
    connection
  • Enhanced prospects of long lead forecast of the
    monsoon hydroclimatology (i.e., timing, rainfall
    amount and streamflow)

                          
52
Future Work
  • Further understanding the physical mechanisms of
    the proposed hypothesis via modeling experiments.
  • Develop hydroclimate forecasting framework
    incorporating the large-scale climate
    information.
  • Evaluate the utility in a water management
    context.

                          
53
Acknowledgements
  • Funding provided by NOAA/GAPP (GEWEX Americas
    Prediction Project)
  • Grantz, K., B. Rajagopalan, M. Clark, and E.
    Zagona, Spatio-Temporal Variability of the North
    American Monsoon (submitted), Journal of Climate,
    Special issue on the North American Monsoon,
    2005.
  • http//civil.colorado.edu/balajir/ ?
    publications

54
Questions / Comments ?
55
Precipitation DiagnosticsRainfall Amount PCA
  • Percent of total variance captured by each
    leading PC of monsoonal precipitation in varying
    months and regions
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