Title: Summary of Experimental Uncertainty Assessment Methodology
1Summary of Experimental Uncertainty Assessment
Methodology
- F. Stern, M. Muste, M-L. Beninati, W.E. Eichinger
2Table of Contents
- Introduction
- Test Design Philosophy
- Definitions
- Measurement Systems, Data-Reduction Equations,
and Error Sources - Uncertainty Propagation Equation
- Uncertainty Equations for Single and Multiple
Tests - Implementation Recommendations
3Introduction
- Experiments are an essential and integral tool
for engineering and science - Experimentation procedure for testing or
determination of a truth, principle, or effect - True values are seldom known and experiments have
errors due to instruments, data acquisition, data
reduction, and environmental effects - Therefore, determination of truth requires
estimates for experimental errors, i.e.,
uncertainties - Uncertainty estimates are imperative for risk
assessments in design both when using data
directly or in calibrating and/or validating
simulation methods
4Introduction
- Uncertainty analysis (UA) rigorous methodology
for uncertainty assessment using statistical and
engineering concepts - ASME (1998) and AIAA (1999) standards are the
most recent updates of UA methodologies, which
are internationally recognized - Presentation purpose to provide summary of EFD
UA methodology accessible and suitable for
student and faculty use both in classroom and
research laboratories
5Test design philosophy
- Purposes for experiments
- Science technology
- Research development
- Design, test, and product liability and
acceptance - Instruction
- Type of tests
- Small- scale laboratory
- Large-scale TT, WT
- In-situ experiments
- Examples of fluids engineering tests
- Theoretical model formulation
- Benchmark data for standardized testing and
evaluation of facility biases - Simulation validation
- Instrumentation calibration
- Design optimization and analysis
- Product liability and acceptance
6Test design philosophy
- Decisions on conducting experiments governed by
the ability of the expected test outcome to
achieve the test objectives within allowable
uncertainties - Integration of UA into all test phases should be
a key part of entire experimental program - Test description
- Determination of error sources
- Estimation of uncertainty
- Documentation of the results
7Test design philosophy
8Definitions
- Accuracy closeness of agreement between measured
and true value - Error difference between measured and true value
- Uncertainties (U) estimate of errors in
measurements of individual variables Xi (Uxi) or
results (Ur) obtained by combining Uxi - Estimates of U made at 95 confidence level
9Definitions
- Bias error b fixed, systematic
- Bias limit B estimate of b
- Precision error e random
- Precision limit P estimate of e
- Total error d b e
10Measurement systems, data reduction equations,
error sources
- Measurement systems for individual variables Xi
instrumentation, data acquisition and reduction
procedures, and operational environment
(laboratory, large-scale facility, in situ) often
including scale models - Results expressed through data-reduction
equations - r r(X1, X2, X3,, Xj)
- Estimates of errors are meaningful only when
considered in the context of the process leading
to the value of the quantity under consideration - Identification and quantification of error
sources require considerations of - Steps used in the process to obtain the
measurement of the quantity - The environment in which the steps were
accomplished
11Measurement systems and data reduction equations
- Block diagram showing elemental error sources,
individual measurement systems, measurement of
individual variables, data reduction equations,
and experimental results
12Error sources
- Estimation assumptions 95 confidence level,
large-sample, statistical parent distribution
13Uncertainty propagation equation
- Bias and precision errors in the measurement of
Xi propagate through the data reduction equation
r r(X1, X2, X3,, Xj) resulting in bias and
precision errors in the experimental result r - A small error (?Xi) in the measured variable
leads to a small error in the result (?r) that
can be approximated using Taylor series expansion
of r(Xi) about rtrue(Xi) as - The derivative is referred to as sensitivity
coefficient. The larger the derivative/slope,
the more sensitive the value of the result is to
a small error in a measured variable
14Uncertainty propagation equation
- Overview given for derivation of equation
describing the error propagation with attention
to assumptions and approximations used to obtain
final uncertainty equation applicable for single
and multiple tests - Two variables, kth set of measurements (xk, yk)
The total error in the kth determination of r
(1)
sensitivity coefficients
15Uncertainty propagation equation
- We would like to know the distribution of dr
(called the parent distribution) for a large
number of determinations of the result r - A measure of the parent distribution is its
variance defined as
(2)
- Substituting (1) into (2), taking the limit
for N approaching infinity, using definitions of
variances similar to equation (2) for b s and e
s and their correlation, and assuming no
correlated bias/precision errors
(3)
- ss in equation (3) are not known estimates for
them must be made
16Uncertainty propagation equation
- Defining
- estimate for
- estimates for the
variances and covariances (correlated bias
errors) of
the bias error distributions - estimates for the
variances and covariances ( correlated precision
errors) of the
precision error distributions
equation (3) can be written as
Valid for any type of error distribution
- To obtain uncertainty Ur at a specified
confidence level (C), a coverage factor (K) must
be used for uc
- For normal distribution, K is the t value from
the Student t distribution. - For N ? 10, t 2 for 95 confidence level
17Uncertainty propagation equation
- Generalization for J variables in a result r
r(X1, X2, X3,, Xj)
sensitivity coefficients
Example
18Uncertainty equations for single and multiple
tests
- Measurements can be made in several ways
- Single test (for complex or expensive
experiments) one set of measurements (X1, X2,
, Xj) for r - According to the present methodology, a test is
considered a single test if the entire test is
performed only once, even if the measurements of
one or more variables are made from many samples
(e.g., LDV velocity measurements) - Multiple tests (ideal situations) many sets of
measurements (X1, X2, , Xj) for r at a fixed
test condition with the same measurement system
19Uncertainty equations for single and multiple
tests
- The total uncertainty of the result
(4)
- Br same estimation procedure for single and
multiple tests - Pr determined differently for single and
multiple tests
20Uncertainty equations for single and multiple
tests bias limits
- Bi estimate of calibration, data acquisition,
data reduction, conceptual bias errors for Xi..
Within each category, there may be several
elemental sources of bias. If for variable Xi
there are J significant elemental bias errors
estimated as (Bi)1, (Bi)2, (Bi)J, the bias
limit for Xi is calculated as - Bik estimate of correlated bias limits for Xi
and Xk
21 Uncertainty equations for single test precision
limits
- Precision limit of the result (end to end)
t coverage factor (t 2 for N gt 10) Sr the
standard deviation for the N readings of the
result. Sr must be determined from N readings
over an appropriate/sufficient time interval
- Precision limit of the result (individual
variables)
the precision limits for Xi
Often is the case that the time interval is
inappropriate/insufficient and Pis or Prs must
be estimated based on previous readings or best
available information
22Uncertainty equations for multiple tests
precision limits
- Precision limit of the result (end to end)
t coverage factor (t 2 for N gt 10)
standard deviation for M readings of the result
- The total uncertainty for the average result
- Alternatively can be determined by RSS of
the precision limits of the individual variables
23Implementation
- Define purpose of the test
- Determine data reduction equation r r(X1, X2,
, Xj) - Construct the block diagram
- Construct data-stream diagrams from sensor to
result - Identify, prioritize, and estimate bias limits at
individual variable level - Uncertainty sources smaller than 1/4 or 1/5 of
the largest sources are neglected - Estimate precision limits (end-to-end procedure
recommended) - Computed precision limits are only applicable for
the random error sources that were active
during the repeated measurements - Ideally M ? 10, however, often this is no the
case and for M lt 10, a coverage factor t 2 is
still permissible if the bias and precision
limits have similar magnitude. - If unacceptably large Ps are involved, the
elemental error sources contributions must be
examined to see which need to be (or can be)
improved - Calculate total uncertainty using equation (4)
- For each r, report total uncertainty and bias and
precision limits
24Recommendations
- Recognize that uncertainty depends on entire
testing process and that any changes in the
process can significantly affect the uncertainty
of the test results - Integrate uncertainty assessment methodology into
all phases of the testing process (design,
planning, calibration, execution and post-test
analyses) - Simplify analyses by using prior knowledge (e.g.,
data base), concentrate on dominant error sources
and use end-to-end calibrations and/or bias and
precision limit estimation - Document
- test design, measurement systems, and data
streams in block diagrams - equipment and procedures used
- error sources considered
- all estimates for bias and precision limits and
the methods used in their estimation (e.g.,
manufacturers specifications, comparisons against
standards, experience, etc.) - detailed uncertainty assessment methodology and
actual data uncertainty estimates
25References
- AIAA, 1999, Assessment of Wind Tunnel Data
Uncertainty, AIAA S-071A-1999. - ASME, 1998, Test Uncertainty, ASME PTC
19.1-1998. - ANSI/ASME, 1985, Measurement Uncertainty Part
1, Instrument and Apparatus, ANSI/ASME PTC
19.I-1985. - Coleman, H.W. and Steele, W.G., 1999,
Experimentation and Uncertainty Analysis for
Engineers, 2nd Edition, John Wiley Sons, Inc.,
New York, NY. - Coleman, H.W. and Steele, W.G., 1995,
Engineering Application of Experimental
Uncertainty Analysis, AIAA Journal, Vol. 33,
No.10, pp. 1888 1896. - ISO, 1993, Guide to the Expression of
Uncertainty in Measurement,", 1st edition, ISBN
92-67-10188-9. - ITTC, 1999, Proceedings 22nd International Towing
Tank Conference, Resistance Committee Report,
Seoul Korea and Shanghai China.