Title: Developing the Self-Calibrating Palmer Drought Severity Index
1Developing the Self-Calibrating Palmer Drought
Severity Index
- Is this computer science or climatology?
Steve Goddard
Computer Science Engineering, UNL
2Outline
1. What is Drought?
2. The PDSI
3. Self-Calibrating the PDSI
4. Summary
3What is Drought?
4What is the PDSI?
- The PDSI is a drought index that models the
moisture content in the soil using a supply and
demand model. - Is an accumulating index
- Developed during the early 1960s by W. C.
Palmer, published in 1965. - Designed to allow for comparisons over time and
space.
5Where is it used?
6How is it calculated?
Latitude
Temperature
Average Temp
Estimate Potential Evapotranspiration
Available Water Holding Capacity
Estimate Moisture Demand
Precipitation
Subtract
7How is it calculated?
Weighting process
Climatic Characteristic
Previous PDSI
Weighted Combination
Duration Factors
8Problems with the PDSI
9More Detail on PDSI Calculations
10Moisture Departure d
- The moisture departure represents the excess or
shortage of moisture. - The same value of d may have a different effect
at different places, as well as at different
times. - Examples
- A shortage of 1 will matter more during the
growing season than during winter. - An excess of 1 will be more important in a
desert region than in a region that historically
receives several inches of rain each month.
11Step 2 Adjustment
- The moisture departure, d, is adjusted according
to the climate and time of year to produce what
is called the Moisture Anomaly, which is
symbolized as Z. - Z is the significance of d relative to the
climate of the location and time of year. - Z is calculated by multiplying d by K, which is
called the Climatic Characteristic.
12Climatic Characteristic K
- K is calculated as follows
where
13Step 3 Combine with Existing Trend
- The PDSI is calculated using the moisture anomaly
as follows
The values of 0.897 and 1/3 are empirical
constants derived by Palmer, and are called the
Duration Factors. They affect the sensitivity of
the index to precipitation events.
14Self-Calibration
- Improving the spatial and temporal resolution of
the index requires automatic calibration of
- Duration Factors
- Climatic Characteristic
15Duration Factors
- The Duration Factors are the values of 0.897 and
1/3 that are used to calculate the PDSI. - They affect the sensitivity of the index to
precipitation as well as the lack of
precipitation.
16Duration Factors - from Palmer
Palmer calculated his duration factors by
examining the relationship between the driest
periods of time and the SZ over those periods.
17Duration Factors - from Palmer
- The equation for this linear relationship is
Let b -10.764 and m -1.236. Then the
duration factors can be found as follows
18Duration Factors - Wet and Dry
- Most locations respond differently to a
deficiency of moisture and an excess of moisture.
- Calculate separate duration factors for wet and
dry periods by repeating Palmers process and
examining extremely wet periods.
19Duration Factors - Automated
Example from Madrid, NE
20Climatic Characteristic
- The climatic characteristic adjusts d so that it
is comparable between different time periods and
different locations. - The resulting value is the Moisture Anomaly, or
the Z-index. - This process can be broken up into two steps.
21Climatic Characteristic - Step 1
- The first step adjusts the moisture departure for
comparisons between different time periods.
22Climatic Characteristic - Step 2
- The second step adjusts for comparisons between
different regions.
23Climatic Characteristic - Redefinition
- All of the problems with the Climatic
Characteristic come from Step 2.
What does this ratio really represent?
24Climatic Characteristic - Redefinition
Now what?
25Climatic Characteristic - Redefinition
Answer use the relationship between the ?Z and
the PDSI
26Climatic Characteristic - Redefinition
What is the expected average PDSI?
If there is one, it would be zero.
Now what?
27Climatic Characteristic - Redefinition
- From a users point of view, what are the
expected characteristics of the PDSI?
- Besides zero, what other benchmarks does the PDSI
have?
Answer A user would expect extreme values to
be extremely rare. The only other benchmarks
are the maximum and minimum of the range.
28Climatic Characteristic - Redefinition
- If extreme values are truly going to be
considered extreme, they should occur at the same
low frequency everywhere. - What should this frequency be?
- There should be one extreme drought per
generation. - Frequency of extreme droughts about 2
- 12 months of extreme drought every 50 years.
29Climatic Characteristic - Redefinition
- Consider both extremely wet and dry periods
- To make the lowest 2 of the PDSI values fall
below -4.00, map the 2nd percentile to -4.00. - To make the highest 2 of the PDSI values fall
above 4.00, map the 98th percentile to 4.00.
30Climatic Characteristic - Final Redefinition
Wait a second. Isnt K used to calculate the
PDSI? How can the PDSI be used to calculate K?
31Calibration Technique
32Calibration Technique - Summary
- Dynamically calculate the duration factors,
following Palmers method and adjusting for poor
correlation and abnormal precipitation. - Redefine the climatic characteristic to achieve a
regular frequency of extremely wet and dry
readings by mapping the 2nd percentile to -4.00
and the 98th to 4.00
33Calibration Technique
- Effects
- The index is now calibrated for both wet and dry
periods. - Almost all stations have about the same frequency
of extreme values. - The same basic algorithm can be used to calculate
a PDSI over multiple time periods.
34Multiple Time Periods
- Why?
- To more easily correlate the PDSI with another
type of climate data such as tree rings, or
satellite data. - Valid monthly periods are divisors of 12
- Single month, 2-month, 3-month, 4-month, 6-month.
- Valid weekly periods are divisors of 52
- Single week, 2-week, 4-week, 13-week, 26-week.
35Analysis
- How do we evaluate the Self-Calibrated PDSI?
- Best way
- Try to correlate the Self-Calibrated PDSI to
actual conditions. - Easy way
- Simply compare the Self-Calibrated PDSI to the
original PDSI. - Computer Science way
- Write a few number-crunching scripts to do the
work performing any number of statistical
examinations of the Self-Calibrated PDSI.
36Statistical Analysis
- What to look for in the statistical analysis.
- Frequency of extreme values
- Stations that are wet more often than dry and
vice versa. - Average range of PDSI values
37Statistical Analysis
Original Monthly Self-Calibrating Monthly Self-Calibrating Weekly
(max min) gt 1.0 The maximum PDSI value was significantly higher than the minimum was low. 35.90 16.03 16.67
(max min) lt -1.0 The minimum PDSI value was significantly lower than the maximum was high. 16.67 1.92 4.49
The frequency with which extremely wet PDSI values (above 4.00) was between 1 and 3 13.46 91.03 91.03
The frequency with which extremely dry PDSI values (below -4.00) was between 1 and 3 2.56 87.82 87.82
Range was greater than 16 17.31 0.00 0.00
Range was greater than 12 92.31 1.92 3.28
Range was greater than 10 100.00 52.56 65.38
Range was greater than 8 100.00 99.36 100.00
38Spatial Analysis
Percent of time the PDSI and SC-PDSI are at or
above 4.0
39Spatial Analysis
Percent of time the PDSI and SC-PDSI are at or
below -4.0
40Conclusion
- The SC-PDSI is now used throughout the world.
- Increased spatial and temporal resolution than
feasible with PDSI. - It is more spatially comparable than PDSI
- Performs the way we believe Palmer meant his
drought index to perform, and the way he would
have implemented it if computers were as readily
available as they are today. - Well, that is what we tell the climatologist
anyway
41Questions