Peter Hammersberg, Gert Persson, Håkan Wirdelius

Slides:



Advertisements
Similar presentations
Simulation - An Introduction Simulation:- The technique of imitating the behaviour of some situation or system (economic, military, mechanical, etc.) by.
Advertisements

Design of Experiments Lecture I
Uncertainty Quantification & the PSUADE Software
Design of Machine Elements
EPOCH 1000 Series Procedure Phased Array DGS/AVG
FIN 685: Risk Management Topic 5: Simulation Larry Schrenk, Instructor.
Quantifying Uncertainties in Radiative Shock Experiments Carolyn C. Kuranz CRASH Annual Review Fall 2010.
Steps of a sound simulation study
High Frequency Ultrasonic Characterization of Carrot Tissue Christopher Vick Advisor: Dr. Navalgund Rao Center for Imaging Science Rochester Institute.
Development of Empirical Models From Process Data
S. Mandayam/ NDE/ Fall 99 Principles of Nondestructive Evaluation Shreekanth Mandayam Graduate / Senior Elective / Fall 1999
1 Validation and Verification of Simulation Models.
Ultrasonic Testing This technique is used for the detection of internal surface (particularly distant surface) defects in sound conducting.
Decision analysis and Risk Management course in Kuopio
Computer Simulation A Laboratory to Evaluate “What-if” Questions.
Sensitivity Evaluation of Subspace-based Damage Detection Technique Saeid Allahdadian Dr. Carlos Ventura PhD Student, The University of British Columbia,
Objective To study the effect of sub surface defects in surface roughness monitoring through ultrasonic flaw detector. To study the sizing of defects.
ElectroScience Lab IGARSS 2011 Vancouver Jul 26th, 2011 Chun-Sik Chae and Joel T. Johnson ElectroScience Laboratory Department of Electrical and Computer.
Annex I: Methods & Tools prepared by some members of the ICH Q9 EWG for example only; not an official policy/guidance July 2006, slide 1 ICH Q9 QUALITY.
Engineering NDT Advanced NDE Pressure Equipment Integrity Management Lab Analysis Development of NDT Inspection Techniques For Heavy Wall Stainless Steel.
CRESCENDO Full virtuality in design and product development within the extended enterprise Naples, 28 Nov
GOLD Guaranteed Operation and Low DMC SEAMLESS AIRCRAFT HEALTH MANAGEMENT FOR A PERMANENT SERVICEABLE FLEET Birmingham (UK) December 05, 2007.
Simulation Prepared by Amani Salah AL-Saigaly Supervised by Dr. Sana’a Wafa Al-Sayegh University of Palestine.
Application of the Direct Optimized Probabilistic Calculation Martin Krejsa Department of Structural Mechanics Faculty of Civil Engineering VSB - Technical.
Generic Approaches to Model Validation Presented at Growth Model User’s Group August 10, 2005 David K. Walters.
Brian Macpherson Ph.D, Professor of Statistics, University of Manitoba Tom Bingham Statistician, The Boeing Company.
Effects of a Suspended Bottom Boundary Layer on Sonar Propagation Michael Cornelius June 2004.
A Passive Approach to Sensor Network Localization Rahul Biswas and Sebastian Thrun International Conference on Intelligent Robots and Systems 2004 Presented.
Machine Design Under Uncertainty. Outline Uncertainty in mechanical components Why consider uncertainty Basics of uncertainty Uncertainty analysis for.
Reservoir Uncertainty Assessment Using Machine Learning Techniques Authors: Jincong He Department of Energy Resources Engineering AbstractIntroduction.
Examples of Current Research in “State Awareness” for Digital Models: ICME and NDE Links to Structural Analysis Michael Enright Craig McClung Southwest.
Monte-Carlo based Expertise A powerful Tool for System Evaluation & Optimization  Introduction  Features  System Performance.
BME 353 – BIOMEDICAL MEASUREMENTS AND INSTRUMENTATION MEASUREMENT PRINCIPLES.
1/22 R. Long 1, P. Cawley 1, J. Russell 1,2 1. UK Research Centre in NDE, Imperial College 2. Rolls-Royce Marine, Derby.
1 Design of experiment for computer simulations Let X = (X 1,…,X p )  R p denote the vector of input values chosen for the computer program Each X j is.
Rick Walker Evaluation of Out-of-Tolerance Risk 1 Evaluation of Out-of-Tolerance Risk in Measuring and Test Equipment Rick Walker Fluke - Hart Scientific.
William Prosser April 15, Introduction to Probability of Detection (POD) for Nondestructive Evaluation (NDE) This briefing is for status only and.
Introduction to emulators Tony O’Hagan University of Sheffield.
Chalmers University of Technology Advanced NDT Mathematical modelling of the ultrasonic phased array technique within the project Quantification of the.
4/28/2017 Stress Corrosion Cracking Assessment in Pipeline Mohammed Abu Four October 11, 2010.
Quantification of the reliability of flaw detection (NDT) using probability of detection (POD) based on synthetic data - Validation of the ultrasonic.
Use of Ultrasonic Phased Arrays for Examination of Austenitic Steel Welds Santanu Saha Technical Manager, Non-Destructive Testing Intertek INSPEC.
L Berkley Davis Copyright 2009 MER301: Engineering Reliability Lecture 8 1 MER301: Engineering Reliability LECTURE 8: Chapter 4: Statistical Inference,
Uncertainty quantification in generic Monte Carlo Simulation: a mathematical framework How to do it? Abstract: Uncertainty Quantification (UQ) is the capability.
Simulation Modeling.
Pressure Vessel Inspection Techniques
By ASST. Prof. DR. ASEEL BASIM
Computer Simulation Henry C. Co Technology and Operations Management,
OPERATING SYSTEMS CS 3502 Fall 2017
MECH 373 Instrumentation and Measurement
National Mathematics Day
JCSS Model Code Fatigue, inspection and reliability
Turbo Power Life Prediction- Overview
Time Domain and Frequency Domain Analysis
OVERVIEW Impact of Modelling and simulation in Mechatronics system
Radio Coverage Prediction in Picocell Indoor Networks
Extreme Value Prediction in Sloshing Response Analysis
Unit 5 The Fourier Transform.
The break signal in climate records: Random walk or random deviations
Digital Signal Processing for ultrasonic Testing
Melissa Jablonski, John Geaney
Professor S K Dubey,VSM Amity School of Business
Updating the failure probability of miter
Monte Carlo Simulation of Neutrino Mass Measurements
Use of Barkhausen noise in inspection of the surface condition of steel components Aki Sorsa
ENM 310 Design of Experiments and Regression Analysis Chapter 3
DESIGN OF EXPERIMENTS by R. C. Baker
What to look at in fire engineering analysis
Real-time Uncertainty Output for MBES Systems
Srinivas Neginhal Anantharaman Kalyanaraman CprE 585: Survey Project
Presentation transcript:

Peter Hammersberg, Gert Persson, Håkan Wirdelius Emulation of POD curves from synthetic data of phased array ultrasound testing Peter Hammersberg, Gert Persson, Håkan Wirdelius

Variations in NDT responses is the sum of variations from many sources Dominates and difficult to estimate makes general modeling difficult

…makes NDT modeling lag Design Evolution Trial & Error Empirical Mathematical Statistical Deterministic (Factors of Safety) Stochastic (Risk Quantified) Random Experimentation Experience-based Systematic Experimentation Graphical Approaches Physics-based Analytical Models Nominal Solutions Physics-based System Simulations Robust Solutions Provided by GE Aircraft Engine Division

NDE capability by POD Response Defect size Signal magnitude Probability of detection (POD) a â Experiments or simulation

Mathematical modelling of UT simSUNDT The simSUNDT program (freeware) consists of a Windows®-based pre-processor and postprocessor The simSUNDT enables simulations of the entire ultrasonic testing situation. The model is completely three-dimensional though the simulated component is two-dimensional simSUNDT uses as a mathematical kernel, UTDefect, that employs various integral transforms and integral equation techniques Model of ultrasonic backscattering due to grain growth in a welded region The result can be read by a number of commercial analysis software Reduce number of test pieces and synthetic defects

Development of simulation model Phased array UT E.A. Ginzel1 and D. Stewart2 , PHOTO-ELASTIC VISUALISATION OF PHASED ARRAY ULTRASONIC PULSES IN SOLIDS, Proc WCNDT 2004

Development of simulation model gj =g0+jDg p(r) g0 A0 A1 A2 A-1 A-2 xl Figur 2 Phased array UT Simulation time 5-15 minutes per run

Experimental verification of the model Dimensions of used test specimen (12%Cr Steel) 20 40 60 10 80 300 5 Side-Drilled Holes 6 Flat- Bottom Holes all f = 2.4 mm 35 5 Depth 20, 40 and 60 Depth 10, 30 and 50

Experimental verification of the model

Procedure for synthetic data based POD The inspection objectives Nondestructive Testing (NDT). UT, ET, RT UT, ET, RT (technique, method) Nondestructive Evaluation (NDE). UT, ET, RT Hit/Miss (procedure, calibration) The NDT procedure Essential parameters: x0 = a x1 x2 ... xn Technical Justification: x1 ±D x1 and x2 ±D x2 and ... xn ±D xn and

Problem POD curves need to capture experimental variation from many sources: Many variables > 10 Many simulations amount of simulation runs grow very quickly Emulation of model simulators by computer experiments using experimental design Simulator Real world Emulator

Calibration of simulation model to experimental data collection Simulation Control factors, Ci Responses: Input Signal M SimsuNDT Y = f(x)= f(M,Ci,Ni) Measured phased array signal amplitude (dB) Diameter: 3mm Depth: 15-75mm Ref depth: cali. 55mm (0db) Intended Output Signal Y Delta= 0 [5,75mm] Calibrate simulation to follow measurements for defect size 3mm for all defect depth Noise Parameters Ni (Uncontrollable Sources of Variation) Variation in settings and input mtrl Measurement variations Piece-to-Piece variation Side hole variations Equipment between & over time Simulation model Operator usage Environment System interaction Unintended Output (Error State) Deviation between measurements and simulations

Work path – predictive modeling Simulation control factors Locked at Reason for locking Computer experimental stage Factor unit low high Focal plane mm 20 500 Change scenario Screening in three steps with fractional design of experiements Focal adjustment % -20 minor impact on both responses Couple ant 0,05 0,4 0,2 Sound velocity tranvers (T) mm/s 5404 6604 6004 Sound velocity tranvers (S) 2979 3641 3310 Frequence MHz 4 6 5,75 Set to minimise difference between measure and simulated signal amplitude (delta=0) for the defect depth range tested - calibration of simulation Full factorial design of experiments Band width 3 5 Sensor length 11 22 Defect depth 15 75 Control factors for emulation of the simulation by predictive modelling: meta-modelling Amplitude damping Angle ° 41 49 Sensor elements # 2

Make simulator follow real world variations with simulation factors with limited physical meaning Keep flat

Emulation of simulator by experimental design - 2 order model 47 simulations Adding defect characteristic: Defect Diameter

Emulation of simulated signal amplitude (meta-model)

Response surface Sim signal vs defect size and depth

Emulation of signal response variation Monte-Carlo estimation of 5000 points per setting (<1sec) (compared to simulation 5-15 minutes per point)

Example of Probability of detection Detectability limit -6 [dB] Defect depth: 65 mm Defect diameter: 1,5 mm POD: 17,58 %

POD Example of emulated POD curves from synthetic data of phased array ultrasound testing Detection threshold: -6dB from reference defect

Conclusion simSUNDT has the possibility to simulate Phase Array, and is experimentally verified for the current setup Emulation of the simulation model by meta-modeling allow parameter studies of variability such as POD Calculation time ~1:10000 Complicated physical simulation models may need emulation by computer experiments, including Gaussian Process emulators, for example: Signal amplitude – multi-parameter regression sufficient (shown) Signal response angle – require higher level stochastic modeling (not shown since no POD relevance)

Deliverables Publication: G. Persson and H. Wirdelius, “Recent survey and application of the simSUNDT software”, Proc. Review of Progress in Quantitative Nondestructive Evaluation, Kingston, 2009. H. Wirdelius and G. Persson, ”Simulation based validation of the detection capacity of an ultrasonic inspection procedure”, accepted abstract, International Symposium On Fatigue Design & Material Defects, Trondheim, 2011. H. Wirdelius, P. Hammersberg and G. Persson, ”Predictive modeling of POD curves”. Integrity and quality assessment by NDE (IqNDE). The PICASSO project (EU) - imProved reliabIlity inspeCtion of Aeronautic structure through Simulation Supported POD (6M€)

Future plans Experimental validation of a more realistic situation with artificial fatigue cracks (EDM notches). Compare experimentally based POD curves with corresponding emulated from synthetic data. Include higher level stochastic modeling into the emulator.