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MEASUREMENT AND INSTRUMENTATION BMCC 3743 LECTURE 4: EXPERIMENTAL UNCERTAINTY ANALYSIS Mochamad Safarudin Faculty of Mechanical Engineering, UTeM – PowerPoint PPT presentation

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Title: MEASUREMENT AND INSTRUMENTATION BMCC 3743


1
MEASUREMENT AND INSTRUMENTATIONBMCC 3743
  • LECTURE 4 EXPERIMENTAL UNCERTAINTY ANALYSIS

Mochamad Safarudin Faculty of Mechanical
Engineering, UTeM 2010
2
Contents
  • Propagation of uncertainties
  • Consideration of systematic and random components
    of uncertainty
  • Sources of elemental error
  • Uncertainty of the final result
  • Design-stage uncertainty analysis
  • Applying uncertainty-analysis in digital data
    acquisition system

3
Propagation of uncertainties
  • Uncertainty analysis is important to identify
    corrective measures while validating and
    performing experiments.
  • Propagation of uncertainties gt total
    uncertainties, e.g. P VI n
  • Two important factors in uncertainty
  • Random uncertainty (or precision uncertainty)
    imprecision in measurements
  • Systematic uncertainty (or bias uncertainty)
    estimated maximum fixed error

4
General consideration
  • If R is a function of n measured variables x1,
    x2, . xn, i.e.
  • Then a small change in is due to small
    changes in s in xis via the differential
    equations

(1)
Sensitivity coefficient
(2)
5
General consideration
  • For calculated result based on measured xis, Eq.
    (2) can be rewritten as
  • where is to make sure we dont get zero
    uncertainty in R.
  • However, this can produce high estimate for wR.

Uncertainty in variables
(3)
Uncertainty in result
6
General consideration
  • Hence Eq. (3) is better represented by
  • gtroot of the sum of the squares (RSS)
  • In this case, the confidence level must be the
    same for all uncertainties (typically 95).
  • Assumption is made that each measured variables
    (hence, error) are independent of each other.

(4)
7
Exercise
  • To calculate the power consumption of an electric
    circuit, we have P VI where
  • V 100 2 V and I 10 0.2 A
  • Calculate the maximum possible error
    (uncertainty) and best-estimate uncertainty
    (RSS). Hint Use Eq. (3) and Eq. (4) respectively.

8
Answer to Exercise
Because PVI dP/dVI10.0 A , dP/diV100.V then
9
Contents
  • Propagation of uncertainties
  • Consideration of systematic and random components
    of uncertainty
  • Sources of elemental error
  • Uncertainty of the final result
  • Design-stage uncertainty analysis
  • Applying uncertainty-analysis in digital data
    acquisition system

10
Consideration of systematic and random components
of uncertainty
  • Random uncertainty depends on sample size
    (usually large, ngt30)
  • Systematic uncertainty is independent of sample
    size does not vary during repeated reading
  • Need to separate for detailed uncertainty analysis

11
Random uncertainty
  • Using t-distribution, the random uncertainty for
    all measurements is given by
  • where Sx is the standard deviation of the sample
  • For a single measurement (also for each
    individual measurement), the random uncertainty is

(5)
(6)
12
Systematic uncertainty
  • Sometimes assumed as level of accuracy
  • Depends on manufacturers specification,
    calibration tests, mathematical modelling,
    considerable judgement as well as comparisons
    between independent measurements.

13
Systematic uncertainty some examples
  • Radiation heat transfer gt lower measured value
  • Instrument location gt spatial error, e.g. a
    single thermometer measures temperature in a box
    oven
  • Dynamic errors

14
Combining random systematic uncertainties
  • Total uncertainty is obtained, using RSS (Eq. 4)
    for all measurements, is given by
  • For a single measurement of x,

(7)
(8)
15
Contents
  • Propagation of uncertainties
  • Consideration of systematic and random components
    of uncertainty
  • Sources of elemental error
  • Uncertainty of the final result
  • Design-stage uncertainty analysis
  • Applying uncertainty-analysis in digital data
    acquisition system

16
Sources of elemental error
  • Chain of uncertainties, e.g. A/D converter
    would have quantisation errors, sensitivity
    errors and linearity errors. Each of these
    components contribute to further errors.
  • Can be random or systematic error.

17
Estimation of uncertainty
  • Systematic uncertainty just combine all
    elemental uncertainties
  • Random uncertainty 3 approaches to determine Sx
  • Run entire test in a sufficient number of times
  • Run auxiliary tests for each measured variable x.
  • Combine elemental random uncertainties
  • gt Based on experiment requirement.

18
5 categories of elemental errors
  • Calibration Uncertainties residual systematic
    errors due to uncertainty in standards,
    uncertainty in calibration process, randomness in
    the process
  • Data-Acquisition Uncertainties during
    measurement due to random variation of
    measurand, A/D conversion uncertainties,
    uncertainties in recording devices
  • Data-Reduction Uncertainties due to
    interpolation, curve fitting and differentiating
    data curves
  • Uncertainties Due to Methods due to
    assumptions/constant in calculation, spatial
    effects and uncertainties due to hysterisis,
    instability, etc.
  • Other Uncertainties

19
Combining elemental systematic random
uncertainties (RSS)
Calibration Uncertainties
Data-Acquisition Uncertainties
Data-Reduction Uncertainties
Uncertainties Due to Methods
Other Uncertainties
Reproduced from Wheelers book ASME 1998
20
Degrees of freedom, vx
  • When sample size is large, vx is simply number of
    sample, n, minus 1.
  • When sample size is small, then vx is given by
  • gt Welch-Satterthwaite formulation (ASME 1998)

(9)
Degrees of freedom of individual elemental error
21
Contents
  • Propagation of uncertainties
  • Consideration of systematic and random components
    of uncertainty
  • Sources of elemental error
  • Uncertainty of the final result
  • Design-stage uncertainty analysis
  • Applying uncertainty-analysis in digital data
    acquisition system

22
Uncertainty of the final result (Multiple
measurement)
  • Referring to Eq. 1, then for multiple
    measurements, M, the mean results is given by
  • Little exercise
  • Derive the standard deviation (SR) and random
    uncertainty ( ) of R.

(10)
23
Uncertainty of the final result (Multiple
measurement)
  • Rearranging Eq. 4 (RSS), we get the systematic
    uncertainty in terms of the combination of
    elemental systematic uncertainties, given by

(11)
24
Uncertainty of the final result (Multiple
measurement)
  • Therefore, the total uncertainty estimate of the
    mean value of R is
  • To estimate random uncertainty for multiple
    measurements, results are more reliable using the
    test results themselves, compared to auxiliary
    tests or combination of elemental uncertainties.
  • Practical applications The life of a light bulb,
    the life span of a certain brand of tyre or car
    engine

(12)
25
Uncertainty of the final result (Single
measurement)
  • To deal with uncertainty of a single test result
    only
  • Practical applications measuring blood pressure/
    heartbeat, speed of car, etc
  • To estimate random uncertainty of the result,
    must use or combine auxiliary tests and elemental
    random uncertainties.

26
Uncertainty of the final result (Single
measurement)
  • Similar to Eq. 11, standard deviation of the
    result is given by
  • Hence, the total uncertainty in the final result
    is given by

(13)
(14)
27
Uncertainty of the final result (Single
measurement)
  • For a large n, then t is independent of v, the
    degree of freedom, (and has a value of 2.0 for a
    95 confidence level).
  • For a small n, again using Welch-Satterthwaite
    formulation, we get

(15)
28
Example
The manufacturer of plastic pipes uses a scale
with an Accuracy of 1.5 of its range of 5 kg to
measure the Mass of each pipe the company
produces in order to Calculate the uncertainty
in mass of the pipe. In one batch Of 10 parts,
the measurements are as follows
1.93, 1.95, 1.96, 1.93, 1.95, 1.94, 1.96, 1.97,
1.92, 1.93 (kg)
  • Calculate
  • The mean mass of the sample
  • The standar deviation of the sample and the
    standar deviation
  • of the mean
  • c. The total uncertainty of the mass of a single
    product at
  • a 95 confidence level
  • The total uncertainty of the average mass of the
    product at a 95
  • confidence level

29
Solution
30
(No Transcript)
31
Contents
  • Propagation of uncertainties
  • Consideration of systematic and random components
    of uncertainty
  • Sources of elemental error
  • Uncertainty of the final result
  • Design-stage uncertainty analysis
  • Applying uncertainty-analysis in digital data
    acquisition system

32
Design-stage uncertainty analysis (Based on ASME
1998)
  • Define the measurement process
  • State test objectives, identify independent
    parameters and their nominal values, etc
  • List all elemental error sources
  • To do a complete list of possible error sources
    for each measured parameter.
  • Estimate the elemental errors
  • Estimate the systematic uncertainties and
    standard deviations. If error is random in nature
    and/or data is available to estimate the std dev.
    of a parameter, then classify it as random
    uncertainties, which must have the same
    confidence level. For small samples, to determine
    degrees of freedom. Refer Table 1.

33
Guideline to assign elemental error (Table 1),
from Wheeler
ERROR ERROR TYPE
Accuracy Common-mode volt Hysterisis Installation Linearity Loading Noise Repeatability Resolution/scale/quantisation Spatial variation Thermal stability (gain, zero, etc.) Systematic Systematic Systematic Systematic Systematic Systematic Random Random Random Systematic Random
assume no. of samples gt 30
34
Design-stage uncertainty analysis (Based on ASME
1998)
  • Calculate the systematic and random uncertainty
    for each measured variable
  • Use the RSS formulation with data procedure in
    Step 3.
  • Propagate the systematic uncertainties and
    standard deviations all the way to the result(s)
  • Use the RSS formulation to find the final test
    results, with the same confidence level in all
    calculations.
  • Calculate the total uncertainty of the results
  • Use the RSS formulation to find the total
    uncertainty of the result(s).

35
Contents
  • Propagation of uncertainties
  • Consideration of systematic and random components
    of uncertainty
  • Sources of elemental error
  • Uncertainty of the final result
  • Design-stage uncertainty analysis
  • Applying uncertainty-analysis in digital data
    acquisition system

36
Applying uncertainty-analysis in digital data
acquisition system
  • A digital DAS typically consists of sensor,
    sensor signal conditioner, amplifier, filter,
    multiplexer, A/D converter, Data reduction and
    analysis
  • Problem may occur due to sequential components
    which may have different range from adjacent
    components.
  • So, adjustment to uncertainty data must be done.

37
Another example
In using a temperature probe, the following
uncertainties were determined Hysteresis 0.10C
Linearization error 0.2 of the
reading Repeatability 0.20C Resolution error
0.050C Zero offset 0.10C
Determine the type of these error (random or
systematic) and the total uncertainty due to
these effects for a temperature reading of 1200C
38
systematic
hysteresis
systematic
Lineariz.error
Resolution error 0.05C random
zero off set 0.1C systematic
repeatability
random
Assuming that the random errors have been
determined with samplesgt30,
So total uncertainty
39
Two resistors, R1100.0 0.2 and R260.0 0.1
are connected (a) in series and (b) in
parallel. Calculate the uncertainty in the
resistance of the resultants circuits. What is
the maximum possible error in each case?
40
(a) In series
(b) In parallel
41
Another example
A mechanical speed control system works on the
basis of centrifugal force, which is related to
angular velocity through the formula Fmrw2 w
here F is the force, m is the mass of the
rotating weights, r is the radius of rotation,
and w is the angular velocity of the system. The
following values are measured to determine w
r20 0.02 mm, m100 0.5 g and F500
0.1N Find the rotational speed in rpm and its
uncertainty. All measured values have a
confidence level of 95.
42
Solution
43
Next Lecture
  • Signal Conditioning
  • End of Lecture 4
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