Clas-Göran Persson Sweden Q-KEN, Riga 25th of October, 2011

Slides:



Advertisements
Similar presentations
Design of Experiments Lecture I
Advertisements

CmpE 104 SOFTWARE STATISTICAL TOOLS & METHODS MEASURING & ESTIMATING SOFTWARE SIZE AND RESOURCE & SCHEDULE ESTIMATING.
Estimation in Sampling
Sampling: Final and Initial Sample Size Determination
Measurements and Errors Introductory Lecture Prof Richard Thompson 4 th October 2007.
Model Adequacy Checking in the ANOVA Text reference, Section 3-4, pg
Errors & Uncertainties Confidence Interval. Random – Statistical Error From:
1 Introduction to the GUM ( International Guidelines for calculating and expressing uncertainty in measurement) Prepared by Les Kirkup and Bob Frenkel.
Guide to the Expression of Uncertainty in Measurement Keith D. McCroan MARLAP Uncertainty Workshop October 24, 2005 Stateline, Nevada.
EVALUATING BIOASSAY UNCERTANITY USING GUM WORKBENCH ® HPS TECHNICAL SEMINAR April 15, 2011 Brian K. Culligan Fellow Scientist Bioassay Laboratory Savannah.
MARLAP Measurement Uncertainty
C. Ehrlich and R. Dybkær Uncertainty of Error: The Error Dilemma Charles D. Ehrlich NIST Weights and Measures Division Physical Measurements Laboratory.
EPIDEMIOLOGY AND BIOSTATISTICS DEPT Esimating Population Value with Hypothesis Testing.
The Islamic University of Gaza Faculty of Engineering Civil Engineering Department Numerical Analysis ECIV 3306 Chapter 3 Approximations and Errors.
Evaluating Hypotheses
Chapter 9 Audit Sampling: An Application to Substantive Tests of Account Balances McGraw-Hill/Irwin ©2008 The McGraw-Hill Companies, All Rights Reserved.
Types of Errors Difference between measured result and true value. u Illegitimate errors u Blunders resulting from mistakes in procedure. You must be careful.
Inference.ppt - © Aki Taanila1 Sampling Probability sample Non probability sample Statistical inference Sampling error.
Lecture 10 Comparison and Evaluation of Alternative System Designs.
Uncertainties of measurement in EXCEL
Inferences About Process Quality
Lehrstuhl für Informatik 2 Gabriella Kókai: Maschine Learning 1 Evaluating Hypotheses.
Lecture 2 Data Processing, Errors, Propagation of Uncertainty.
1 Seventh Lecture Error Analysis Instrumentation and Product Testing.
Formalizing the Concepts: Simple Random Sampling.
DQOs and the Development of MQOs Carl V. Gogolak USDOE Environmental Measurements Lab.
Inferential Statistics
Decision analysis and Risk Management course in Kuopio
University of Florida Mechanical and Aerospace Engineering 1 Useful Tips for Presenting Data and Measurement Uncertainty Analysis Ben Smarslok.
1 D r a f t Life Cycle Assessment A product-oriented method for sustainability analysis UNEP LCA Training Kit Module k – Uncertainty in LCA.
Chapter 6 Random Error The Nature of Random Errors
Lecture 11 Implementation Issues – Part 2. Monte Carlo Simulation An alternative approach to valuing embedded options is simulation Underlying model “simulates”
Copyright 2008 © Silliker, All Rights Reserved Interpretation of Lab Results What am I buying? What does it mean? What do I do with it?
Development of An ERROR ESTIMATE P M V Subbarao Professor Mechanical Engineering Department A Tolerance to Error Generates New Information….
An Introduction to the Statistics of Uncertainty
Copyright © 2013, 2010 and 2007 Pearson Education, Inc. Chapter Inference on the Least-Squares Regression Model and Multiple Regression 14.
MARLAP Chapter 19 Measurement Uncertainty
Today’s lesson Confidence intervals for the expected value of a random variable. Determining the sample size needed to have a specified probability of.
Combined Uncertainty P M V Subbarao Professor Mechanical Engineering Department A Model for Propagation of Uncertainty ….
Statements of uncertainty
Statistical Decision Making. Almost all problems in statistics can be formulated as a problem of making a decision. That is given some data observed from.
Fundamentals of Data Analysis Lecture 10 Management of data sets and improving the precision of measurement pt. 2.
Measurement Uncertainty Information in
Audit Sampling: An Overview and Application to Tests of Controls
MECN 3500 Inter - Bayamon Lecture 3 Numerical Methods for Engineering MECN 3500 Professor: Dr. Omar E. Meza Castillo
1 Review from previous class  Error VS Uncertainty  Definitions of Measurement Errors  Measurement Statement as An Interval Estimate  How to find bias.
MatroVal A Calibration Software With Advanced Uncertainty and Prediction Capabilities Including Complex Numbers Alex Lepek Newton.
Uncertainty of measurement & Technical Specifications SAAMF Roadshow Durban CSIR NML Eddie Tarnow Metrologist: Torque & Automotive 14 June 2006.
Best-Fit, Bundle, & USMN Using SA to understand measurement uncertainty Zach Rogers NRK, EMEAR Application Engineer.
EMIS 7300 SYSTEMS ANALYSIS METHODS FALL 2005 Dr. John Lipp Copyright © Dr. John Lipp.
© Copyright McGraw-Hill Correlation and Regression CHAPTER 10.
5-1 ANSYS, Inc. Proprietary © 2009 ANSYS, Inc. All rights reserved. May 28, 2009 Inventory # Chapter 5 Six Sigma.
Chapter 10 The t Test for Two Independent Samples
1 Module One: Measurements and Uncertainties No measurement can perfectly determine the value of the quantity being measured. The uncertainty of a measurement.
1 Introduction to Statistics − Day 4 Glen Cowan Lecture 1 Probability Random variables, probability densities, etc. Lecture 2 Brief catalogue of probability.
Chapter 6: Random Errors in Chemical Analysis. 6A The nature of random errors Random, or indeterminate, errors can never be totally eliminated and are.
Lecture 13 Dustin Lueker. 2  Inferential statistical methods provide predictions about characteristics of a population, based on information in a sample.
Statistical Concepts Basic Principles An Overview of Today’s Class What: Inductive inference on characterizing a population Why : How will doing this allow.
Statistical Decision Making. Almost all problems in statistics can be formulated as a problem of making a decision. That is given some data observed from.
Home Reading Skoog et al. Fundamental of Analytical Chemistry. Chapters 5 and 6.
Workshop on Providing the traceability of measurements Application practice of provisions GUM in the performance of comparison of national standards Workshop.
1 Life Cycle Assessment A product-oriented method for sustainability analysis UNEP LCA Training Kit Module k – Uncertainty in LCA.
1 Approaches in the Area of Measurement Uncertainties.
Accuracy Significance in Measurement.
Chapter 9 Audit Sampling: An Application to Substantive Tests of Account Balances McGraw-Hill/Irwin ©2008 The McGraw-Hill Companies, All Rights Reserved.
Measurement Uncertainty and Traceability
Correlation and Regression
CONCEPTS OF ESTIMATION
Lecture # 2 MATHEMATICAL STATISTICS
Measurements & Error Analysis
Presentation transcript:

Clas-Göran Persson Sweden Q-KEN, Riga 25th of October, 2011 GUM – Guide to the Expression of Uncertainty in Measurement – and its possible use in geodata quality assessment Clas-Göran Persson Sweden Q-KEN, Riga 25th of October, 2011 Clas-Göran Persson, 2017-04-16

The Lecturer Senior Geodesist at Lantmäteriet (The Swedish Mapping, Cadastral and Land Registration Authority) in Gävle. Adjoint Professor in Applied Geodesy at the Royal Institute of Technology (KTH) in Stockholm – specializing in Mathematical Statistics.

The Objective of this Lecture To give an introduction to GUM. To convince you that this is something we need to know a little about, and make a decision on what attitude we should take to it. To strengthen our own quality assessment concept – regarding accuracy/uncertainty.

Introduction to GUM and JCGM The first embryo to GUM - Guide to the Expression of Uncertainty in Measurement – was published in 1980 on the initiative of BIPM, the Bureau International des Poids et Mesures. The first official GUM document was produced in 1992. In 1997 a Joint Committee for Guides in Metrology (JCGM) was created by seven international research and standardization organizations, including ISO. Since then JCGM has been responsible for GUM. The document can be found at: www.iso.org/sites/JCGM/JCGM-introduction.htm

The Use of the Term “Accuracy” What does statements like “the accuracy is 2 meters” mean? Is it a mean error/standard error (1) Is it a maximum error (3)? Is it a 95 % confidence interval (2)? Who knows, the measure is not defined! GUM is more precise in that aspect.

The Theoretic Fundament of GUM In classical statistics and in geodetic/photogrammetric theory of errors the theoretic platform is built on ”true errors”, which seldom are available. In GUM the “true errors” are not needed because the concept of uncertainty in measurement relates only to the observations themselves. From the GUM document we quote: “Uncertainty (of measurement) is a parameter associated with the result of a measurement, that characterizes the dispersion of the values that could reasonably be attributed to the measurand”.

A Measurement Another quote from GUM: “The objective of a measurement is to determine the value of the measurand, that is, the value of the particular quantity to be measured. A measurement therefore begins with an appropriate specification of the measurand, the method of measurement, and the measurement procedure. In general, the result of a measurement is only an approximation or estimate of the value of the measurand and thus is complete only when accompanied by a statement of the uncertainty of that estimate.”

A Measurement (cont.): The Input-Output Model for Propagation of Uncertainty Output (Y) Input (X)

Type A and Type B Evaluation of Uncertainty Type A: Evaluation of uncertainty by statistical analysis of series of observations. Type B: Evaluation of uncertainty by means other than statistical analysis (previous measurements, hand-books specifications, calibration certificates etc.) NB: The classification refers to the way the uncertainty is determined – neither type is better than the other.

Standard Uncertainty Standard uncertainty is usually expressed in terms of the usual standard deviation; use two significant digits. Is denoted u(y), where y is a result of a measurement; u2(y) is the variance. Examples: ”The standard uncertainty in a single measurement” or “the standard uncertainty of the mean” (of repeated measurements). NB: standard uncertainty is usually determined with the use of the observed data (Type A).

Correlation and Systematic Effects In GUM, by contrast with precision, correlation and systematic effects have to be taken into consideration – and included in the standard uncertainty estimate. So once and for all: Precision is not equal to Uncertainty!

Reporting Standard Uncertainty Alternatives: ”L = 2,499 m with a standard uncertainty of 0,0014 m”. ”L = 2,4990(14) m”, where the numbers in brackets refers to the standard uncertainty in the last digit of the measurement result. ”L = 2,499(0,0014) m”, where the numbers in brackets is the standard uncertainty in meters. NB: Do not use the expression L±u in connection with standard uncertainty; it should be reserved for ex-panded uncertainty.

Combined Standard Uncertainty Combined standard uncertainty is an application of the law of propagation of uncertainty in measure-ment on the function Y = f(X) = f(X1,X2, …). Is denoted uc(y), where c stands for ”combined” and y estimates Y with the use of the estimates x1, x2,… of X. The combined standard uncertainty could be computed analytically, with the use of numerical differentiation or through Monte Carlo simulation. Tends to be of Type B.

Expanded Uncertainty Expanded uncertainty is a quantity defining an interval about the result of a measurement. This confidence interval is expected to encompass a large fraction of the underlying probability distribution This fraction is denoted coverage probability or confidence level. To create the interval, the standard uncertainty (or the combined standard uncertainty) is multiplied by a coverage factor k. The expanded uncertainty is denoted U(y) = k*u(y) or U(y) = k*uc(y)

Reporting Expanded Uncertainty Use, with advantage, the L±U mode of expression. Report the standard uncertainty and the coverage factor as well as the resulting expanded uncertainty. Also report the estimated confidence level (in %), which could be expressed in text or as suffixes: U95(y) = k95*uc(y)

Expanded Uncertainty – Examples of Coverage Factors (k%) Normal distribution, e.g. 95 = 1,96 t-distribution, e.g. t95(10) = 2,23 (10 degrees of freedom) Monte Carlo simulation and computation of percentiles. GUM standard: k = 2 which gives an approximate con-fidence level of 95%; deviations should be reported, that is if k  2 or if k = 2 gives another confidence level than 95%.

Complete Reports of Uncertainty in Measurement (an example) The positions (pi) have been determined with the use of Network RTK with an estimated two-dimensional standard uncertainty u(pi) = 10 mm. RTK observations is known to have a distribution close to normal and, therefore, a coverage factor k = 2 gives a level of confidence of at least 95 %. Thus, the expanded uncertainty of these positions is U95 = 20 mm.

GUM Tools Methods; means, regression analysis, analysis of variance, general least squares adjustments, variance component estimation, Fourier analysis, numerical methods (differentiation etc.), quantitative methods (e.g. Monte Carlo simulation) Software; Excel, MatLab, specially designed software (e.g. @Risk)

Monte Carlo-Simulated Probability Distribution @Risk

Uncertainty ”Cockbook” Define the relation between the output quantity and all input quantities that can influence on it. 2. Estimate the values of the input quantities. 3. Estimate the standard uncertainties of the input quantities – through statistical analysis or by other means. 4. Determine the sensitivity coefficient that belongs to each input quantity. 5. Calculate the combined uncertainty of the output quantity. 6. Determine a coverage factor that corresponds to the chosen coverage level. 7. Calculate the expanded uncertainty of the output quantity. 8. Report the measurement result together with the expanded measurement uncertainty.

GUM – Strengths, News and Weaknesses Good; a strict terminology and standardized reporting, flexible (Type A and Type B), emphasizes common sense, many examples. New; numerical methods and Monte Carlo simulations as standard procedures. Shortcomings; underestimates the impact, and the need for analysis, of correlation. GUM has many users, is close to practice and provides a basis for the comparison of measurement results through standar- dized uncertainty statements. The use of explicit coverage factors makes the quality assess-ments more precise, and 2-intervals (95%) are closer to the intuitive understanding of accuracy/uncertainty than the usual 1-expressions.

GUM vs. Geodesy and Geodata, Today Activities dealing with geographic information (geodata) have had an appropriate concept for data quality state-ments and reports for more than 200 years – through geodesy and the work of C F Gauss and others. So we did not “jump on to the GUM train”, and here we are “alone on the platform”.

Why We Need to Know about GUM We are responsible for a lot of surveying work and capture of geodata, but we speak a different language compared to many of our – existing or potential - users and customers… … and these users and customers are in the majority. There is no real necessity to change the concept, but we need insight and some practical GUM attainments… … together with a translation table – between GUM and our terminology. This is especially important if we want to include data from new applications into our data bases – and combine them with geographic information.

What is natural (I)? StdDev up StdDev down Uncertainty up Accuracy up

What is natural (II)? We define “accuracy”, but then we only talk about “errors”: Mean errors, gross errors, systematic errors …… 2-sigma values can be directly used as tolerances for control measurements.

The Key to Success We should not see GUM as a problem but as a possibility to broaden and improve our own concept regarding quality assessment. The most important action, in the lecturer's opinion, is to express the accuracy/uncertainty part of metadata*) in terms of GUM – in addition to today's mode of expression. ____________________ *) positional accuracy and attribute accuracy

Thank you for listening!