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GeostatisticalGeostatistical Temporal- Temporal-Spatial Algorithm (GTS)Spatial Algorithm (GTS)

Kirk Cameron, Ph.D.MacStat Consulting, Ltd.kcmacstat@qwest.net

2

IntroductionIntroduction

• First seeds of GTS planted in 1997– AFCEE interested in new optimization strategy

• Phil Hunter, AFCEE project lead

– Decision-logic trees, Fortran routines• Development of GTS software begun in 2004

– Current 1.0 prototype only covers 2D scenarios– Future versions to handle 2.5D, 3D analyses

3

What is GTS?What is GTS?

• Geostatistical & statistical LTMoptimization program– Data-driven, empirical– Identifies statistical redundancies– Separate temporal, spatial optimization

modules• More details located at AFCEE website

– http://www.afcee.brooks.af.mil/products/rpo/

4

GTS Version 1.0GTS Version 1.0

• Windows-based freeware– Will be available from AFCEE website– Detailed decision-logic diagrams also

available• Stitches together components in 3 areas:

– Exploratory analysis– Temporal optimization– Spatial optimization

5

GTS UnderpinningsGTS Underpinnings

• Focus on statistical redundancy– Assumptions

• Semi-stable LTM program in place• Monitoring data used to make maps, estimate

trends• Too much data might exist• Institutional willingness to ‘pare down’ sampling

program if loss of information minimized– Redundancy identified when:

• Maps, trends accurately estimated with less data

6

GTS GTS FlowpathFlowpath

• Pre-GTS Data Preparation• Exploratory analysis• Temporal Optimization• Spatial Optimization

7

Minimal RequirementsMinimal Requirements

• 20-30 distinct well locations• Well-defined site boundaries• 8-10 samples per well for iterative thinning

– OK to have less with temporal variogram– Seasonality not a problem

8

Before Using GTSBefore Using GTS• Data gathering, processing

– Building electronic files– Historical data– Normalizing formats, units– Eliminating duplicates; reconciling discrepancies

• Preparing data for analysis– Narrow down to potentially useful COCs– Site boundary file– Identifying each well screen in 3-dimensions

• Easting (X), Northing (Y), Depth (Z)• Surface elevation• Aquifer zones

9

Before GTS (cont.)Before GTS (cont.)

• Handling non-detects– Every sample record must have qualifier flag

• PARVQ: =, TR, ND• Set PARVAL = RL/2 or MDL/2 if ND• Set PARVAL to measured/estimated value

otherwise

• MCLs, regulatory limits– Each COC should have a limit

• Can use secondary MCLs, other limits

10

GTS OverviewGTS Overview

11

Exploratory AnalysisExploratory Analysis

• Examine site documentation– Site maps– GW reports– Post-plots of well network

• COC analysis– Goal: narrow analysis to 2-3 promising parameters– Important factors:

• Known and/or politically sensitive contaminants• Frequent, widespread occurrence• High spatial intensity & spread

12

COC AnalysisCOC Analysis• Summary statistics

– Detection rates– MCL exceedances

• Spatial intensity,spread– Screening tool– Compare baseline configuration vs. detected wells,

“above-limit” wells• Concentration maps

– Well medians, maximums– Decile plots

13

Tinker AFB: Metals IntensityTinker AFB: Metals Intensity

14

Tinker AFB: Max Post PlotTinker AFB: Max Post Plot

15

Tinker AFB: Median DecilesTinker AFB: Median Deciles

16

Temporal AnalysisTemporal Analysis

17

Guided ExampleGuided Example

• Hanford nuclear facility (DOE)– Site 300-FF-5– 38 wells located near Columbia river– Elevated uranium concentrations in ground

water

18

19

Key Temporal ComponentsKey Temporal Components

• Temporal variograms– Optimizes by determining sampling frequency

associated with no average inter-event correlation• Iterative fitting

– Optimizes frequency at individual wells– Drops data until trends cannot be reconstructed

• Trend maps– By-product of iterative fitting– Provides spatial overview of site trends

20

Temporal Temporal VariogramVariogram

• Useful with– Irregularly sampled data– Fewer samples ( 2 per well)

• Limitations– Must exclude wells with high ND rates (>70%)– Averages correlation across wells

• Complex trends, seasonal effects may impact overallperformance

• Provides common sampling frequency for entireset of wells

21

VariogramVariogram Nuts & Bolts Nuts & Bolts• All possible pairs of squared differences formed

at each well– Pairs pooled across wells– Differences unit-scaled to adjust for wells with much

higher concentrations• Local quadratic regression used to ‘smooth’

scatter cloud of differences– Confidence bands also computed

• Variogram range estimates point of no temporalcorrelation

22

Uranium Uranium VariogramVariogram

0 50 100 150 200 250 300 350 400

0.4

0.6

0.8

1.0

Sampling Lag (in weeks)

Med

ian

Var

iogr

am

Median Temporal Variograms for Uranium at 300-FF-5

FIT (BW=50%)

FIT (BW=70%)

Lower 90% Conf Bnd

Upper 90% Conf Bnd

23

Iterative FittingIterative Fitting

• Unique trend fit at each well– Confidence bands too

• Data removed until new trends fall outsideconfidence bands

• Optimized sampling interval computedfrom average remaining inter-event time– Median value across set of wells used to set

common frequency

24

Data RequirementsData Requirements

• Minimum of 8-10 sample events per well• Must have some detects

– GTS weeds out wells with no variation– Extreme outliers, data gaps are screened

• Seasonal trends no problem– GTS fits complex temporal patterns– Seasonal patterns should be evident in time

series plots

25

Uranium Fitting Example 1Uranium Fitting Example 1

11/22/96 3/25/030

20

40

60

80

Sampling Date

Con

cent

ratio

n (p

pb)

MN: Well 399-1-2

Upper 90% Conf. Bnd.

Lower 90% Conf. Bnd.

Initial Fit

Med. Fit (0.25)

Med. Fit (0.30)

UQ Fit (0.30)

LQ Fit (0.30)

Sample Conc.

26

Uranium Fitting Example 2Uranium Fitting Example 2

7/23/90 11/23/96 3/26/030

50

100

150

200

250

Sampling Date

Con

cent

ratio

n (p

pb)

MN: Well 399-1-10A

Upper 90% Conf. Bnd.

Lower 90% Conf. Bnd.

Initial Fit

Med. Fit (0.45)

Med. Fit (0.50)

UQ Fit (0.50)

LQ Fit (0.50)

Sample Conc.

27

Iterative Fitting SummaryIterative Fitting Summary

0

10

20

30

40

50

60

70

80

90

67 wksUQ

47 wksMedian

24 wksLQ

25N Wells

28

Trend MappingTrend Mapping

• Post-plot of iterative fitting slopes– Historical (average) or recent trends plotted

by GTS– Slopes ranked by relative magnitude,

statistical confidence• Indicates what areas of site are rising or

falling

29

Uranium Historical Trend MapUranium Historical Trend Map

30

Uranium Recent Trend MapUranium Recent Trend Map

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