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1 of 49 Key Concepts Underlying DQOs and VSP DQO Training Course Day 1 Module 3 120 minutes (75 minute lunch break) Presenter: Sebastian Tindall.

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Presentation on theme: "1 of 49 Key Concepts Underlying DQOs and VSP DQO Training Course Day 1 Module 3 120 minutes (75 minute lunch break) Presenter: Sebastian Tindall."— Presentation transcript:

1 1 of 49 Key Concepts Underlying DQOs and VSP DQO Training Course Day 1 Module 3 120 minutes (75 minute lunch break) Presenter: Sebastian Tindall

2 2 of 49 Key Points n Have fun while learning key statistical concepts using hands-on illustrations n This module prepares the way for a more in- depth look at the DQO Process and the use of VSP

3 3 of 49 The Big Picture Decision Error Sampling Cost Remediation Cost Health Risk Waste Disposal Cost Compliance Schedule

4 4 of 49 Sampling and Analyses Cost Unnecessary Disposal and/or Cleanup Cost $$ Sampling and Analyses Cost Threat to Public Health and Environment $$ PRP 1  FocusRegulatory 1  Focus Managing Uncertainty is a Balancing Act

5 5 of 49 Balance in Sampling Design The statistician’s aim in designing surveys and experiments is to meet a desired degree of reliability at the lowest possible cost under the existing budgetary, administrative, and physical limitations within which the work must be conducted. In other words, the aim is efficiency-- the most information (smallest error) for the money. Some Theory of Sampling, Deming, W.E., 1950

6 6 of 49 Our Methodology: Use Hands-On Illustrations of... n Basic statistical concepts needed for VSP and the DQO Process n Using... Visual Sample Plan

7 7 of 49 Our Methodology: Use Hands-On Illustrations of... n Basic statistical concepts needed for VSP and the DQO Process n Using Coin flips – Pennies n Demo #1 n Demo #2 – Quarter

8 8 of 49 How Many Samples Should We Take? 5? 50?

9 9 of 49 How Many Times Should I Flip a Coin Before I Decide it is Contaminated (Biased Tails)? One tail, 50%Six tails, 1.6% Two tails, 25%Seven tails, 0.8% Three tails, 12.5%Eight tails, 0.4% Four tails, 6%Nine tails, 0.2% Five tails, 3%Ten tails, 0.1%

10 10 of 49 Football Field One-Acre Football Field 30'0"

11 11 of 49 Example Problem n A 1-acre field was contaminated with mill tailings in the 1960s n Cleanup standard: –“The true mean 226 Ra concentration in the upper 6” of soil must be less than 6.0 pCi/g.” n There is a good chance that actual true mean 226 Ra concentration is between 4.0 and 6.0 pCi/g

12 12 of 49 Example Problem (cont.) n Historical data suggest a standard deviation of 1.6 pCi/g n It costs $1000 to collect, process, and analyze one sample n The maximum sampling budget is $5,000

13 13 of 49 Simplified Decision Process n Take some number of samples n Find the sample average 226 Ra concentration in our samples n If we pass the appropriate QA/G-9 test, decide the site is clean n If we fail the appropriate QA/G-9 test, decide the site is dirty

14 14 of 49 Marbles 9Black 8Blue 7Dark Yellow 6Red 5Green 4White 3Clear Ra-226, pCi/gColor

15 15 of 49 Example of Ad Hoc Sampling Design and the Results n Suppose we choose to take 5 samples for various reasons: low cost, tradition, convenience, etc. n Need volunteer to do the sampling n Need volunteer to record results n We will follow QA/G-9 One-Sample t-Test directions using an Excel spreadsheet

16 16 of 49 One-Sample t-Test Equation from EPA’s Practical Methods for Data Analysis, QA/G-9 Calculated t = (sample mean - AL) ------------------------ std. dev/sqrt(n) If calculated t is less than table value, decide site is clean

17 17 of 49

18 18 of 49 True Mean 226 Ra Concentration Action Level X 2 3 4 5 6 7 8 X X X 4 - 6 = -2 5 - 6 = -1 Comparing UCL to Action Level is Like Student’s t-Test 7 - 6 = 1 8 - 6 = 2 UCL = 4 UCL = 5 UCL = 7 UCL = 8

19 19 of 49 Learn the Jargon t-test UCL - upper confidence limit AL - action level N - target population n - population units sampled  - population mean x - sample mean  - population standard deviation s - sample standard deviation Frequency distribution Histograms H 0 - null hypothesis  - Alpha error rate  - Beta error rate Gray Region LBGR  - width of Gray Region Coefficient of Variation Relative Standard Deviation

20 20 of 49 t-test Calculated t = (sample mean - AL) ------------------------ If calculated t is less than table value, decide site is clean

21 21 of 49 Upper Confidence Limit, UCL For a 95% UCL and assuming sufficient n: If you repeatedly calculate sample means for many independent random sampling events from a population, in the long run, you would be correct 95% of the time in claiming that the true mean is less than or equal to the 95% UCL of all those sampling events. Note: Different s will produce different UCLs

22 22 of 49 Upper Confidence Limit, UCL More commonly, but some experts dislike: For a single, one-sided UCL, you are 95% confident that the true mean is less than or equal to your calculated UCL. (The true mean is bracketed by, in our case, is usually zero) and the UCL.) (See Hahn and Meeker in Statistical Intervals A Guide for Practitioners, p. 31).

23 23 of 49 Action Level A measurement threshold value of the Population Parameter (e.g., true mean) that provides the criterion for choosing among alternative actions.

24 24 of 49 N Target Population: The set of N population units about which inferences will be made Population Units: The N objects (environmental units) that make up the target or sampled population n The number of population units selected and measured is n

25 25 of 49 10 x 10 Field Population = All 100 Population Units

26 26 of 49 10 x 10 Field Population = All 100 Population Units Sample = 5 Population Units 1.5 2.3 1.7 1.9

27 27 of 49 Population Mean  The average of all N population units i = 1 N XiXi Sample Mean The average of the n population units actually measured n i = 1 XiXi

28 28 of 49 Population Standard Deviation  The average deviation of all N population units from the population mean Sample Standard Deviation s The “average” deviation of the n measured units from the sample mean

29 29 of 49 Spatial Distribution - Football Field

30 30 of 49 Probability Density Function

31 31 of 49 SHOW Histogram File

32 32 of 49 SHOW VDT Step by Step Histogram File

33 33 of 49 The Null Hypothesis H 0 The initial assumption about how the true mean relates to the action level Example: The site is dirty. (We’ll assume this for the rest of this discussion)

34 34 of 49 The Alternate Hypothesis H A The alternative hypothesis is accepted only when there is overwhelming proof that the Null condition is false.

35 35 of 49 The Alpha Error Rate (on Type 1 or False + errors)  The chance of deciding that a dirty site is clean when the true mean is greater than or equal to the action level Null Hypothesis = Site is Dirty

36 36 of 49 A false positive decision or Type 1 error occurs when a decision- maker rejects the null hypothesis (calls it false) when H 0 is actually true. The size of the error is expressed as a probability, usually referred to as Alpha (  This error occurs when the data (sample result x-bar or UCL) indicates that the site is clean when the true mean is actually at or above the Action Level. In other words, the Alpha error is the probability that your sample result is below the Action Level when the true means is actually at or above the Action Level. That probability is usually set to between 1-5%. (Null Hypothesis = Site is Dirty) The Alpha Error Rate (on Type 1 or False + Errors) α

37 37 of 49 A false positive decision or Type 1 error occurs when a decision- maker rejects the null hypothesis (calls it false) when H 0 is actually true. The size of the error is expressed as a probability, usually referred to as Alpha (  This error occurs when the data (sample result x-bar or UCL) indicates that the site is dirty when the true mean is actually at or below the Action Level. In other words, the Alpha error is the probability that your sample result is above the Action Level when the true mean is at or below the Action Level. That probability is usually set to between 5-1%. (Null Hypothesis = Site is Clean) The Alpha Error Rate (on Type 1 or False + Errors) α

38 38 of 49 The Beta Error Rate (on Type 2 or False - errors)  The chance of deciding a clean site is dirty when the true mean is equal to the lower bound of the gray region (LBGR) Null Hypothesis = Site is Dirty

39 39 of 49 A false negative decision or Type 2 error occurs when a decision-maker accepts the null hypothesis (calls it true) when H 0 is actually false. The size of the error is expressed as a probability, usually referred to as Beta (β  This error occurs when the data (sample result x-bar or UCL) indicates that the site is dirty when the true mean is actually below the Action Level. In other words, the Beta error is the probability that your sample result is at or above the Action Level when the true mean is actually below the Action Level. That probability is negotiated and set to between 1-50%. (Null Hypothesis = Site is Dirty) The Beta Error Rate (on Type 2 or False – Errors) β

40 40 of 49 A false negative decision or Type 2 error occurs when a decision-maker accepts the null hypothesis (calls it true) when H 0 is actually false. The size of the error is expressed as a probability, usually referred to as Beta (β  This error occurs when the data (sample result x-bar or UCL) indicates that the site is clean when the true mean is actually above the Action Level. In other words, the Beta error is the probability that your sample result is at or below the Action Level when the true mean is actually above the Action Level. That probability is negotiated and set to between 1-20%. (Null Hypothesis = Site is Clean) The Beta Error Rate (on Type 2 or False – Errors) β

41 41 of 49 Evaluate Alpha & Beta Errors True Mean Concentration 0 ∞ 100 Action Level 75 LBGR µ:α Alpha Error Beta Error µ:β

42 42 of 49 A range of values of the population parameter of interest (such as the true mean contaminant concentration,  ) where the consequences of making a decision error are relatively minor. Gray Region Gray Region = AL – LBGR

43 43 of 49 The Gray Region is bounded on one side by the action level, and on the other side by the parameter value where the consequences of decision error begins to be significant. This point is labeled LBGR, which stands for Lower Bound of the Gray Region. Gray Region & LBGR Gray Region = AL – LBGR

44 44 of 49  =  AL –   Width of GR = AL – LBGR The Lower Bound of the Gray Region (   ) is defined as the hypothetical true mean concentration where the site should be declared clean with a reasonably high probability. (Null Hypothesis = Site is Dirty) The Width of Gray Region

45 45 of 49  =   – AL Width of GR = UBGR – AL The Upper Bound of the Gray Region (   ) is defined as the hypothetical true mean concentration where the site should be declared dirty with a reasonably high probability. (Null Hypothesis = Site is Clean) The Width of Gray Region

46 46 of 49 Coefficient of Variation: CV = s / x-bar If CV > 1, not Normal Relative Standard Deviation: RSD (%) = CV * 100 If RSD > 100%, not Normal

47 47 of 49 SHOW VST File for Coefficient of Variation and RSD

48 48 of 49 Decisions about population parameters, such as the true mean, , and the true standard deviation, , are based on statistics such as the sample mean,, and the sample standard deviation, s. Since these decisions are based on incomplete information, they will be in error. Summary

49 49 of 49 End of Module 3 Thank you Questions? We will now take a 75 minute lunch break. Please be back in 1 hour and 15 minutes.


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