SlideShare uma empresa Scribd logo
1 de 17
VARIOGRAM-DERIVED MEASURES FOR
QC PURPOSES
Markku Ohenoja
Control Engineering group
University of Oulu
1
10/15/2015Faculty of Technology / Control Engineering / Markku Ohenoja
15.10.2015
2
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
Petersen, L., Minkkinen, P. & Esbensen, K.H. 2005, "Representative sampling for reliable data analysis: Theory
of Sampling", Chemometrics and Intelligent Laboratory Systems, vol. 77, no. 1–2, pp. 261-277.
Time
Meas.
https://s-media-cache-
ak0.pinimg.com/236x/64/46/7f/
64467fa3382ac08d567d36b6aef05
13b.jpg
BACKGROUND
• All measurements retain some amount of uncertainty, but also
sampling errors may affect on the result
• Utilization of different measurements collected with very
different sampling rates requires evaluation of their
information content
• Environmental measurements are often periodic, sparsely
collected and from various sources
• Variographical analysis used for evaluating sampling errors and
information content of the measurement
15.10.2015
3
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
OUTLINE
• What is Variogram and how it is calculated?
• Variogram-derived measures
• Examples within MMEA
15.10.2015
4
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
VARIOGRAM
• Tool for empirical estimation of sampling errors incl. analytical
error
• Enables optimizing the sampling strategy with respect to
variance of the sampling error and number of samples takes
• Provides an estimate of the standard error of the lot mean and
the minimum possible error (MPE) of sampling
15.10.2015
5
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
Semi-variogram
Chrono-variogram
Variographical
analysis
Geostatistics
Kriging
Variography Chronostatistics
VARIOGRAM
• Collection of the data
• At least 30 samples with systematic sampling
• 1/5 smaller sampling interval than routine samples
• Flowrate/sample weight should be included
• Calculation of the heterogeneity of the data
• Calculation of the experimental variogram v(j)
• Relationship between the samples and the lag distance j
• Estimation of the intercept v(0) (=MPE)
• Graphically, separate experiment…
• Auxiliary functions for comparing sampling strategies
• Point-to-point calculation, algebraic modeling…
15.10.2015
6
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
ℎ 𝑛 =
𝑎 𝑛 − 𝑎 𝐿
𝑎 𝐿
∙
𝑀 𝑛
𝑀 𝑛
𝑣 𝑗 =
1
2(𝑁 − 𝑗)
ℎ 𝑛+𝑗 − ℎ𝑗
2
𝑁/2
𝑛=1
≈
VARIOGRAM
15.10.2015
7
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
0 10 20 30
0
5
10
15
20
25
30
Variogram of 24h averaged online data
Sampling interval (days)
Relativestandarddeviationofthesamplingerror(%)
0 10 20 30
0
5
10
15
20
25
30
Variogram of daily sample
Sampling interval (days)
Relativestandarddeviationofthesamplingerror(%)
Variogram
Systematic sampling
Random sampling
Variogram
Systematic sampling
Random sampling
σ2,σ,2σ,...
VARIOGRAM
15.10.2015
8
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
0 10 20 30
0
5
10
15
20
25
30
Variogram of 24h averaged online data
Sampling interval (days)
Relativestandarddeviationofthesamplingerror(%)
0 10 20 30
0
5
10
15
20
25
30
Variogram of daily sample
Sampling interval (days)
Relativestandarddeviationofthesamplingerror(%)
Variogram
Systematic sampling
Random sampling
Variogram
Systematic sampling
Random sampling
3x
INDICES
15.10.2015
9
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
• Variogram-based indices applied for QC and PAT purposes
• Standard error of the mean
• MPE/σProcess
• v(1)/σProcess
INDICES
15.10.2015
10
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
• Variogram-based indices applied for QC and PAT purposes
• Standard error of the mean
• MPE/σProcess
• v(1)/σProcess
Process stability
measure
Bisgaard & Kulahci, Quality
Engineering, 17(2), 2005
Drift estimation
Paakkunainen et al.,
Chemometrics and Intelligent
Laboratory Systems, 88(1), 2007
Fault diagnosis
Kouadri et al., ISA Transactions,
51(3), 2012 Temporal uncertainty
propagation
Jalbert et al., Journal of
Hydrology, 397(1-2), 2011
DQOs for control
charts
Minnit & Pitard, Journal of SAIMM,
108(2), 2008
STANDARD ERROR OF THE MEAN
• Variance estimate of the sampling attained from variogram
• Standard error of the mean calculated based on variance
estimate and number of samples collected during a selected
time frame
• Recursive calculation possible for online measurements 
moving average and its confidence intervals from the selected
time frame
15.10.2015
11
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
STANDARD ERROR OF THE MEAN
15.10.2015
12
Month 2M 3M 4M 5M HalfYear Year All
0
0.5
1
1.5
2
2.5
3
2M
,%
Time frame for the lot mean
Online 17h average
Online 12h average
Online 8h average
Online 6h average
Online 4h average
Online data
Month 2M 3M 4M 5M HalfYear Year All
0
5
10
15
20
25
30
35
40
2M
,%
Time frame for the lot mean
Laboratory
Calibrated online
Raw online x 10
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
STANDARD ERROR OF THE MEAN
15.10.2015TIEDEKUNTA TIEDEKUNTA / osasto osasto osaston osasto / Etuniminen
Sukuniminen-Sukuniminen
13
23-Nov-2009 12-Jan-2010 03-Mar-2010 22-Apr-2010 11-Jun-2010 31-Jul-2010 19-Sep-2010 08-Nov-2010 28-Dec-2010 16-Feb-2011
0
20
40
60
31-Dec-2010
7.341 7.3415 7.342 7.3425 7.343 7.3435 7.344 7.3445 7.345 7.3455
x 10
5
10
15
20
25
Lot mean and 2
M
(%) for Three day average
7.341 7.3415 7.342 7.3425 7.343 7.3435 7.344 7.3445 7.345 7.3455
x 10
5
0
10
20
30
23-Nov-2009 12-Jan-2010 03-Mar-2010 22-Apr-2010 11-Jun-2010 31-Jul-2010 19-Sep-2010 08-Nov-2010 28-Dec-2010 16-Feb-2011
5
10
15
20
25
30
Lot mean and confidence intervals for Three day average
DATA COMPARISON
• Multiple measurement sources with different sampling rates
• Data harmonization and comparison
• Based on MPE
• Comparable averaging of the dense data around sparse samples,
• Variographical analysis for whole averaged dense data mimicking
more densely collected laboratory measurements
• Information content evaluation based on v(1)/σProcess
15.10.2015
14
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
WHAT SPARSE CANNOT SEE?
15.10.2015
15
0 5 10 15 20 25
0.02
0.04
0.06
0.08
0.1
0.12
0.14
0.16
Variograms for collective samples
Sampling interval
Variance
Variogram, Sparse meas.
Variogram, Av. dense meas.
0 5 10 15 20 25
0
0.1
0.2
Variogram of sparse measurement
Variance
Sampling interval
0 200 400 600 800 1000
0
0.1
0.2
Variogram of averaged dense measurement
Sampling interval
Variance
Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
WHEN DENSE IS NOT REPRESENTATIVE?
15.10.2015TIEDEKUNTA TIEDEKUNTA / osasto osasto osaston osasto / Etuniminen
Sukuniminen-Sukuniminen
16
26-May-2013 05-Jul-2013 14-Aug-2013 23-Sep-2013 02-Nov-2013 12-Dec-2013
0
10
20
30
40
Meas.
Time series
Dense meas.
Sparse meas.
26-May-2013 05-Jul-2013 14-Aug-2013 23-Sep-2013 02-Nov-2013 12-Dec-2013
0
0.5
1
1.5
es
/
P
Index
Dense meas.
Sparse meas.
26-May-2013 05-Jul-2013 14-Aug-2013 23-Sep-2013 02-Nov-2013 12-Dec-2013
-1
-0.5
0
0.5
1
Substracted index
Index
SUMMARY
15.10.2015Faculty of Technology / Control Engineering / Markku Ohenoja
markku.ohenoja@oulu.fi
17
• Variogram can be utilized for
1. Sampling error estimation
2. Sampling optimization
3. Moving average and confidence interval calculation
4. Information content evaluation
• Recursive calculation enables e.g. monitoring, filtering,
decision making
• Information content evaluation allows comparison of
measurement sources

Mais conteúdo relacionado

Semelhante a Variogram-derived measures for QC purposes

Amovision EMC REPORT
Amovision EMC REPORTAmovision EMC REPORT
Amovision EMC REPORT
Lan Zhou
 
Jeremy_Hallauer_s_resume
Jeremy_Hallauer_s_resumeJeremy_Hallauer_s_resume
Jeremy_Hallauer_s_resume
Jeremy Hallauer
 

Semelhante a Variogram-derived measures for QC purposes (20)

Syllabus bca
Syllabus bcaSyllabus bca
Syllabus bca
 
El441 6081 course_ outline_w2012-2013
El441 6081 course_ outline_w2012-2013El441 6081 course_ outline_w2012-2013
El441 6081 course_ outline_w2012-2013
 
Amovision EMC REPORT
Amovision EMC REPORTAmovision EMC REPORT
Amovision EMC REPORT
 
Monitoring And Analysis Of Aquatic Intake In Instructive Bodies
Monitoring And Analysis Of Aquatic Intake In Instructive BodiesMonitoring And Analysis Of Aquatic Intake In Instructive Bodies
Monitoring And Analysis Of Aquatic Intake In Instructive Bodies
 
Electronics communication(4)
Electronics communication(4)Electronics communication(4)
Electronics communication(4)
 
COMPARE THE LEVEL OF SECURITY RISK BETWEEN IT USER/EMPLOYEE & NON-IT USER/EMP...
COMPARE THE LEVEL OF SECURITY RISK BETWEEN IT USER/EMPLOYEE & NON-IT USER/EMP...COMPARE THE LEVEL OF SECURITY RISK BETWEEN IT USER/EMPLOYEE & NON-IT USER/EMP...
COMPARE THE LEVEL OF SECURITY RISK BETWEEN IT USER/EMPLOYEE & NON-IT USER/EMP...
 
Story behind Microelectronic Circuits
Story behind Microelectronic CircuitsStory behind Microelectronic Circuits
Story behind Microelectronic Circuits
 
Improving continuous process operation using data analytics delta v applicati...
Improving continuous process operation using data analytics delta v applicati...Improving continuous process operation using data analytics delta v applicati...
Improving continuous process operation using data analytics delta v applicati...
 
Jeremy_Hallauer_s_resume
Jeremy_Hallauer_s_resumeJeremy_Hallauer_s_resume
Jeremy_Hallauer_s_resume
 
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
Mining System Logs to Learn Error Predictors, Universität Stuttgart, Stuttgar...
 
Micro Benchmarking WfMS with Workflow Patterns
Micro Benchmarking WfMS with Workflow PatternsMicro Benchmarking WfMS with Workflow Patterns
Micro Benchmarking WfMS with Workflow Patterns
 
Alfred CV
Alfred CVAlfred CV
Alfred CV
 
Resume - Christopher Gust
Resume - Christopher GustResume - Christopher Gust
Resume - Christopher Gust
 
Scheme2015.pdf
Scheme2015.pdfScheme2015.pdf
Scheme2015.pdf
 
Determination of Optimum Parameters Affecting the Properties of O Rings
Determination of Optimum Parameters Affecting the Properties of O RingsDetermination of Optimum Parameters Affecting the Properties of O Rings
Determination of Optimum Parameters Affecting the Properties of O Rings
 
Determination of Optimum Parameters Affecting the Properties of O Rings
Determination of Optimum Parameters Affecting the Properties of O RingsDetermination of Optimum Parameters Affecting the Properties of O Rings
Determination of Optimum Parameters Affecting the Properties of O Rings
 
Electrical & Electronic Engineering
Electrical & Electronic EngineeringElectrical & Electronic Engineering
Electrical & Electronic Engineering
 
Amit Nath
Amit NathAmit Nath
Amit Nath
 
Interphase Cells Removal from Metaphase Chromosome Images Based on Meta-Heuri...
Interphase Cells Removal from Metaphase Chromosome Images Based on Meta-Heuri...Interphase Cells Removal from Metaphase Chromosome Images Based on Meta-Heuri...
Interphase Cells Removal from Metaphase Chromosome Images Based on Meta-Heuri...
 
IRJET- Automatic Follicle Detection in Ultrasound Images of Ovaries
IRJET- Automatic Follicle Detection in Ultrasound Images of OvariesIRJET- Automatic Follicle Detection in Ultrasound Images of Ovaries
IRJET- Automatic Follicle Detection in Ultrasound Images of Ovaries
 

Mais de CLEEN_Ltd

Mais de CLEEN_Ltd (20)

Combining Two Datasets into a Single Map Animation
Combining Two Datasets into a Single Map AnimationCombining Two Datasets into a Single Map Animation
Combining Two Datasets into a Single Map Animation
 
MMEA Platform
MMEA PlatformMMEA Platform
MMEA Platform
 
Environmental Big Data: Business Perspective
Environmental Big Data: Business PerspectiveEnvironmental Big Data: Business Perspective
Environmental Big Data: Business Perspective
 
Combining Various Data Sources
Combining Various Data SourcesCombining Various Data Sources
Combining Various Data Sources
 
Engaging Citizens – Participatory Sensing
Engaging Citizens – Participatory SensingEngaging Citizens – Participatory Sensing
Engaging Citizens – Participatory Sensing
 
Controlling Environment Monitoring Networks
Controlling Environment Monitoring NetworksControlling Environment Monitoring Networks
Controlling Environment Monitoring Networks
 
Available data sources & Real-time data collection
Available data sources & Real-time data collectionAvailable data sources & Real-time data collection
Available data sources & Real-time data collection
 
Introduction to data interoperability
Introduction to data interoperabilityIntroduction to data interoperability
Introduction to data interoperability
 
Water spray geoengineering to clean air pollution for mitigating severe haze ...
Water spray geoengineering to clean air pollution for mitigating severe haze ...Water spray geoengineering to clean air pollution for mitigating severe haze ...
Water spray geoengineering to clean air pollution for mitigating severe haze ...
 
Solutions for vehicular emission control and evaluation for urban aq attainme...
Solutions for vehicular emission control and evaluation for urban aq attainme...Solutions for vehicular emission control and evaluation for urban aq attainme...
Solutions for vehicular emission control and evaluation for urban aq attainme...
 
Mmea program - from sensors to services. Keynote from Dr. Tero Eklin
Mmea program - from sensors to services. Keynote from Dr. Tero Eklin Mmea program - from sensors to services. Keynote from Dr. Tero Eklin
Mmea program - from sensors to services. Keynote from Dr. Tero Eklin
 
Keynote from Insigma group by Dr. Ying Lin
Keynote from Insigma group by Dr. Ying LinKeynote from Insigma group by Dr. Ying Lin
Keynote from Insigma group by Dr. Ying Lin
 
Analytical model to determine the influence of building area size on subslab ...
Analytical model to determine the influence of building area size on subslab ...Analytical model to determine the influence of building area size on subslab ...
Analytical model to determine the influence of building area size on subslab ...
 
激光云高仪在空气质量监测的应用
激光云高仪在空气质量监测的应用激光云高仪在空气质量监测的应用
激光云高仪在空气质量监测的应用
 
Why ultrafines? Dr. Lei Dong presented by Markku Rajala
Why ultrafines? Dr. Lei Dong presented by Markku RajalaWhy ultrafines? Dr. Lei Dong presented by Markku Rajala
Why ultrafines? Dr. Lei Dong presented by Markku Rajala
 
Shenzhen demo Mr. Heikki Pentikäinen
Shenzhen demo Mr. Heikki Pentikäinen Shenzhen demo Mr. Heikki Pentikäinen
Shenzhen demo Mr. Heikki Pentikäinen
 
Measuring the filtration efficiency and particle indoor outdoor concentration...
Measuring the filtration efficiency and particle indoor outdoor concentration...Measuring the filtration efficiency and particle indoor outdoor concentration...
Measuring the filtration efficiency and particle indoor outdoor concentration...
 
Measuring megacity air by Miikka Dal Maso and Craes
Measuring megacity air by Miikka Dal Maso and CraesMeasuring megacity air by Miikka Dal Maso and Craes
Measuring megacity air by Miikka Dal Maso and Craes
 
Hexachlorocyclohexanes in tree bark across chinese agricultural regions spati...
Hexachlorocyclohexanes in tree bark across chinese agricultural regions spati...Hexachlorocyclohexanes in tree bark across chinese agricultural regions spati...
Hexachlorocyclohexanes in tree bark across chinese agricultural regions spati...
 
Haier open partnership ecosystem & air tech needs by Jerry Jiang
Haier open partnership ecosystem & air tech needs by Jerry Jiang Haier open partnership ecosystem & air tech needs by Jerry Jiang
Haier open partnership ecosystem & air tech needs by Jerry Jiang
 

Último

9953056974 ,Low Rate Call Girls In Adarsh Nagar Delhi 24hrs Available
9953056974 ,Low Rate Call Girls In Adarsh Nagar  Delhi 24hrs Available9953056974 ,Low Rate Call Girls In Adarsh Nagar  Delhi 24hrs Available
9953056974 ,Low Rate Call Girls In Adarsh Nagar Delhi 24hrs Available
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
Call Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCe
Call Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCeCall Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCe
Call Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCe
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 

Último (20)

9953056974 ,Low Rate Call Girls In Adarsh Nagar Delhi 24hrs Available
9953056974 ,Low Rate Call Girls In Adarsh Nagar  Delhi 24hrs Available9953056974 ,Low Rate Call Girls In Adarsh Nagar  Delhi 24hrs Available
9953056974 ,Low Rate Call Girls In Adarsh Nagar Delhi 24hrs Available
 
VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
VIP Model Call Girls Viman Nagar ( Pune ) Call ON 8005736733 Starting From 5K...
 
Hot Call Girls |Delhi |Preet Vihar ☎ 9711199171 Book Your One night Stand
Hot Call Girls |Delhi |Preet Vihar ☎ 9711199171 Book Your One night StandHot Call Girls |Delhi |Preet Vihar ☎ 9711199171 Book Your One night Stand
Hot Call Girls |Delhi |Preet Vihar ☎ 9711199171 Book Your One night Stand
 
Types of Pollution Powerpoint presentation
Types of Pollution Powerpoint presentationTypes of Pollution Powerpoint presentation
Types of Pollution Powerpoint presentation
 
$ Love Spells 💎 (310) 882-6330 in Pennsylvania, PA | Psychic Reading Best Bla...
$ Love Spells 💎 (310) 882-6330 in Pennsylvania, PA | Psychic Reading Best Bla...$ Love Spells 💎 (310) 882-6330 in Pennsylvania, PA | Psychic Reading Best Bla...
$ Love Spells 💎 (310) 882-6330 in Pennsylvania, PA | Psychic Reading Best Bla...
 
Horizon Net Zero Dawn – keynote slides by Ben Abraham
Horizon Net Zero Dawn – keynote slides by Ben AbrahamHorizon Net Zero Dawn – keynote slides by Ben Abraham
Horizon Net Zero Dawn – keynote slides by Ben Abraham
 
Proposed Amendments to Chapter 15, Article X: Wetland Conservation Areas
Proposed Amendments to Chapter 15, Article X: Wetland Conservation AreasProposed Amendments to Chapter 15, Article X: Wetland Conservation Areas
Proposed Amendments to Chapter 15, Article X: Wetland Conservation Areas
 
The Most Attractive Pune Call Girls Shirwal 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Shirwal 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Shirwal 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Shirwal 8250192130 Will You Miss This Cha...
 
Call Girl Nagpur Roshni Call 7001035870 Meet With Nagpur Escorts
Call Girl Nagpur Roshni Call 7001035870 Meet With Nagpur EscortsCall Girl Nagpur Roshni Call 7001035870 Meet With Nagpur Escorts
Call Girl Nagpur Roshni Call 7001035870 Meet With Nagpur Escorts
 
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
VVIP Pune Call Girls Vishal Nagar WhatSapp Number 8005736733 With Elite Staff...
 
Kondhwa ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For ...
Kondhwa ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For ...Kondhwa ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For ...
Kondhwa ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For ...
 
Call Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Pune Airport Call Me 7737669865 Budget Friendly No Advance Booking
 
VIP Model Call Girls Chakan ( Pune ) Call ON 8005736733 Starting From 5K to 2...
VIP Model Call Girls Chakan ( Pune ) Call ON 8005736733 Starting From 5K to 2...VIP Model Call Girls Chakan ( Pune ) Call ON 8005736733 Starting From 5K to 2...
VIP Model Call Girls Chakan ( Pune ) Call ON 8005736733 Starting From 5K to 2...
 
VIP Model Call Girls Bhosari ( Pune ) Call ON 8005736733 Starting From 5K to ...
VIP Model Call Girls Bhosari ( Pune ) Call ON 8005736733 Starting From 5K to ...VIP Model Call Girls Bhosari ( Pune ) Call ON 8005736733 Starting From 5K to ...
VIP Model Call Girls Bhosari ( Pune ) Call ON 8005736733 Starting From 5K to ...
 
Call On 6297143586 Pimpri Chinchwad Call Girls In All Pune 24/7 Provide Call...
Call On 6297143586  Pimpri Chinchwad Call Girls In All Pune 24/7 Provide Call...Call On 6297143586  Pimpri Chinchwad Call Girls In All Pune 24/7 Provide Call...
Call On 6297143586 Pimpri Chinchwad Call Girls In All Pune 24/7 Provide Call...
 
Call Girls Ramtek Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Ramtek Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Ramtek Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Ramtek Call Me 7737669865 Budget Friendly No Advance Booking
 
NO1 Verified kala jadu karne wale ka contact number kala jadu karne wale baba...
NO1 Verified kala jadu karne wale ka contact number kala jadu karne wale baba...NO1 Verified kala jadu karne wale ka contact number kala jadu karne wale baba...
NO1 Verified kala jadu karne wale ka contact number kala jadu karne wale baba...
 
BOOK Call Girls in (Dwarka) CALL | 8377087607 Delhi Escorts Services
BOOK Call Girls in (Dwarka) CALL | 8377087607 Delhi Escorts ServicesBOOK Call Girls in (Dwarka) CALL | 8377087607 Delhi Escorts Services
BOOK Call Girls in (Dwarka) CALL | 8377087607 Delhi Escorts Services
 
Call Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance BookingCall Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance Booking
Call Girls Magarpatta Call Me 7737669865 Budget Friendly No Advance Booking
 
Call Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCe
Call Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCeCall Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCe
Call Girls In Yamuna Vihar꧁❤ 🔝 9953056974🔝❤꧂ Escort ServiCe
 

Variogram-derived measures for QC purposes

  • 1. VARIOGRAM-DERIVED MEASURES FOR QC PURPOSES Markku Ohenoja Control Engineering group University of Oulu 1 10/15/2015Faculty of Technology / Control Engineering / Markku Ohenoja
  • 2. 15.10.2015 2 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi Petersen, L., Minkkinen, P. & Esbensen, K.H. 2005, "Representative sampling for reliable data analysis: Theory of Sampling", Chemometrics and Intelligent Laboratory Systems, vol. 77, no. 1–2, pp. 261-277. Time Meas. https://s-media-cache- ak0.pinimg.com/236x/64/46/7f/ 64467fa3382ac08d567d36b6aef05 13b.jpg
  • 3. BACKGROUND • All measurements retain some amount of uncertainty, but also sampling errors may affect on the result • Utilization of different measurements collected with very different sampling rates requires evaluation of their information content • Environmental measurements are often periodic, sparsely collected and from various sources • Variographical analysis used for evaluating sampling errors and information content of the measurement 15.10.2015 3 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi
  • 4. OUTLINE • What is Variogram and how it is calculated? • Variogram-derived measures • Examples within MMEA 15.10.2015 4 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi
  • 5. VARIOGRAM • Tool for empirical estimation of sampling errors incl. analytical error • Enables optimizing the sampling strategy with respect to variance of the sampling error and number of samples takes • Provides an estimate of the standard error of the lot mean and the minimum possible error (MPE) of sampling 15.10.2015 5 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi Semi-variogram Chrono-variogram Variographical analysis Geostatistics Kriging Variography Chronostatistics
  • 6. VARIOGRAM • Collection of the data • At least 30 samples with systematic sampling • 1/5 smaller sampling interval than routine samples • Flowrate/sample weight should be included • Calculation of the heterogeneity of the data • Calculation of the experimental variogram v(j) • Relationship between the samples and the lag distance j • Estimation of the intercept v(0) (=MPE) • Graphically, separate experiment… • Auxiliary functions for comparing sampling strategies • Point-to-point calculation, algebraic modeling… 15.10.2015 6 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi ℎ 𝑛 = 𝑎 𝑛 − 𝑎 𝐿 𝑎 𝐿 ∙ 𝑀 𝑛 𝑀 𝑛 𝑣 𝑗 = 1 2(𝑁 − 𝑗) ℎ 𝑛+𝑗 − ℎ𝑗 2 𝑁/2 𝑛=1 ≈
  • 7. VARIOGRAM 15.10.2015 7 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi 0 10 20 30 0 5 10 15 20 25 30 Variogram of 24h averaged online data Sampling interval (days) Relativestandarddeviationofthesamplingerror(%) 0 10 20 30 0 5 10 15 20 25 30 Variogram of daily sample Sampling interval (days) Relativestandarddeviationofthesamplingerror(%) Variogram Systematic sampling Random sampling Variogram Systematic sampling Random sampling σ2,σ,2σ,...
  • 8. VARIOGRAM 15.10.2015 8 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi 0 10 20 30 0 5 10 15 20 25 30 Variogram of 24h averaged online data Sampling interval (days) Relativestandarddeviationofthesamplingerror(%) 0 10 20 30 0 5 10 15 20 25 30 Variogram of daily sample Sampling interval (days) Relativestandarddeviationofthesamplingerror(%) Variogram Systematic sampling Random sampling Variogram Systematic sampling Random sampling 3x
  • 9. INDICES 15.10.2015 9 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi • Variogram-based indices applied for QC and PAT purposes • Standard error of the mean • MPE/σProcess • v(1)/σProcess
  • 10. INDICES 15.10.2015 10 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi • Variogram-based indices applied for QC and PAT purposes • Standard error of the mean • MPE/σProcess • v(1)/σProcess Process stability measure Bisgaard & Kulahci, Quality Engineering, 17(2), 2005 Drift estimation Paakkunainen et al., Chemometrics and Intelligent Laboratory Systems, 88(1), 2007 Fault diagnosis Kouadri et al., ISA Transactions, 51(3), 2012 Temporal uncertainty propagation Jalbert et al., Journal of Hydrology, 397(1-2), 2011 DQOs for control charts Minnit & Pitard, Journal of SAIMM, 108(2), 2008
  • 11. STANDARD ERROR OF THE MEAN • Variance estimate of the sampling attained from variogram • Standard error of the mean calculated based on variance estimate and number of samples collected during a selected time frame • Recursive calculation possible for online measurements  moving average and its confidence intervals from the selected time frame 15.10.2015 11 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi
  • 12. STANDARD ERROR OF THE MEAN 15.10.2015 12 Month 2M 3M 4M 5M HalfYear Year All 0 0.5 1 1.5 2 2.5 3 2M ,% Time frame for the lot mean Online 17h average Online 12h average Online 8h average Online 6h average Online 4h average Online data Month 2M 3M 4M 5M HalfYear Year All 0 5 10 15 20 25 30 35 40 2M ,% Time frame for the lot mean Laboratory Calibrated online Raw online x 10 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi
  • 13. STANDARD ERROR OF THE MEAN 15.10.2015TIEDEKUNTA TIEDEKUNTA / osasto osasto osaston osasto / Etuniminen Sukuniminen-Sukuniminen 13 23-Nov-2009 12-Jan-2010 03-Mar-2010 22-Apr-2010 11-Jun-2010 31-Jul-2010 19-Sep-2010 08-Nov-2010 28-Dec-2010 16-Feb-2011 0 20 40 60 31-Dec-2010 7.341 7.3415 7.342 7.3425 7.343 7.3435 7.344 7.3445 7.345 7.3455 x 10 5 10 15 20 25 Lot mean and 2 M (%) for Three day average 7.341 7.3415 7.342 7.3425 7.343 7.3435 7.344 7.3445 7.345 7.3455 x 10 5 0 10 20 30 23-Nov-2009 12-Jan-2010 03-Mar-2010 22-Apr-2010 11-Jun-2010 31-Jul-2010 19-Sep-2010 08-Nov-2010 28-Dec-2010 16-Feb-2011 5 10 15 20 25 30 Lot mean and confidence intervals for Three day average
  • 14. DATA COMPARISON • Multiple measurement sources with different sampling rates • Data harmonization and comparison • Based on MPE • Comparable averaging of the dense data around sparse samples, • Variographical analysis for whole averaged dense data mimicking more densely collected laboratory measurements • Information content evaluation based on v(1)/σProcess 15.10.2015 14 Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi
  • 15. WHAT SPARSE CANNOT SEE? 15.10.2015 15 0 5 10 15 20 25 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.16 Variograms for collective samples Sampling interval Variance Variogram, Sparse meas. Variogram, Av. dense meas. 0 5 10 15 20 25 0 0.1 0.2 Variogram of sparse measurement Variance Sampling interval 0 200 400 600 800 1000 0 0.1 0.2 Variogram of averaged dense measurement Sampling interval Variance Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi
  • 16. WHEN DENSE IS NOT REPRESENTATIVE? 15.10.2015TIEDEKUNTA TIEDEKUNTA / osasto osasto osaston osasto / Etuniminen Sukuniminen-Sukuniminen 16 26-May-2013 05-Jul-2013 14-Aug-2013 23-Sep-2013 02-Nov-2013 12-Dec-2013 0 10 20 30 40 Meas. Time series Dense meas. Sparse meas. 26-May-2013 05-Jul-2013 14-Aug-2013 23-Sep-2013 02-Nov-2013 12-Dec-2013 0 0.5 1 1.5 es / P Index Dense meas. Sparse meas. 26-May-2013 05-Jul-2013 14-Aug-2013 23-Sep-2013 02-Nov-2013 12-Dec-2013 -1 -0.5 0 0.5 1 Substracted index Index
  • 17. SUMMARY 15.10.2015Faculty of Technology / Control Engineering / Markku Ohenoja markku.ohenoja@oulu.fi 17 • Variogram can be utilized for 1. Sampling error estimation 2. Sampling optimization 3. Moving average and confidence interval calculation 4. Information content evaluation • Recursive calculation enables e.g. monitoring, filtering, decision making • Information content evaluation allows comparison of measurement sources