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© 2009 SAP AG 1
Dependent Multiple Samples In
Sampling Management
Applies to:
SAP QM Consultants, SAP ECC 6.0. For more information, visit the Supply Chain Management homepage.
For more information, visit the Supply Chain Management homepage.
Summary
The user wants to create multiple samples one by one manually in Result Recording Screen, when the Non
Conformity (NC) of the samples is in between allowable level and rejection level.
Each sample is interdependent and non conformities are cumulated till 7th
Sample. Once the sample is rejected,
the new sample can not be created.
Total cumulated NCs of all the seven samples are less than the rejection level, the Inspection Lot is accepted.
Total cumulated NCs of all the seven samples are equal or more than the rejection level, the Inspection Lot is
rejected.
The rejection level is indicated by  d7.
Author: Raguthama Sharma
Company: Intelligroup Asia Private Limited
Created on: 25 November 2009
Author Bio
Raguthama Sharma has thirty seven years of work experience including eight years of experience
with SAP-PP / QM Modules. He has been working as a senior consultant for PP and QM Module, in
SAP SCM department of Intelligroup Asia Private Limited since December 2003.
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 2
Table of Contents
Introduction .........................................................................................................................................................3
Define the Requirements....................................................................................................................................3
Sampling Scheme...........................................................................................................................................3
Process Flow ......................................................................................................................................................4
Master Data ......................................................................................................................................................13
Create the Sampling Scheme.......................................................................................................................13
Create Sampling Procedure  QDV1 ..........................................................................................................14
Create Inspection Plan for the Material  QS8X20 .....................................................................................15
Assign the MIC  MULTIPLE to the Operation............................................................................................15
Assign the Sampling Procedure to the MIC in Inspection Plan ....................................................................16
Assign the Inspection Type to the Material  QS8X20................................................................................16
Related Content................................................................................................................................................17
Disclaimer and Liability Notice..........................................................................................................................18
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 3
Introduction
Acceptance Number  denoted by c.
For an attributive inspection, the highest number of nonconforming units or the highest number of defects in a
sample that leads to an acceptance of the inspection lot.
Rejection Number  denoted by d.
For an attributive inspection, the lowest number of nonconforming units and/or the lowest number of defects in a
sample that result in a rejection.
Number of Non Conformity allowed in sample Number 1  c1
Number of Non conformity for rejection criteria in Sample Number 1  d1
System allows a Maximum of seven samples for any Inspection Lot.
 c1, c2, c3, c4, c5, c6 and c7 are acceptable level of seven samples.
 d1, d2, d3, d4, d5, d6 and d7 are rejection level of seven samples. Ex: Dependent multiple sample procedure
is used in Lamp Industries, for specific customer where stringent quality measures are to be adhered
In Lamp Industry, every hour 1500 to 2600 incandescent lamps are manufactured.
Similar industries, where huge quantity is produced, the dependent multiple sample procedures can be used.
Once the lot is rejected, 100 % inspection is carried out to eliminate the non conformities
Define the Requirements
Sampling Scheme
Sampling Scheme is system defined / user defined table.
This table defines the sample size for various inspection lot quantities.
For the combination of Inspection Lot quantity and Sample size, c1,d1;c2,d2;c3,d3:c4,d4;c5,d5;c6,d6; and c7,d7
are defined.
Sampling scheme  DEP  Samp.Sche. For Dependent Multiple Sample is created.
Existing sampling procedure is copied and c values and d values are modified as per requirement.
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 4
 This sampling scheme is assigned to the Sampling procedure  MULSAMPL.
 This procedure is assigned to the MIC  MULTIPLE.
 MIC is assigned to the Inspection Plan Group  241 and Counter 1.
 Material  QS8X20 is assigned to the Inspection Plan Group  241.
 QM view is created for the Material  QS8X20 and Inspection Type 01 is assigned.
Process Flow
The process flow of “Independent Multiple Samples” is given below.
In bound process is selected.
a. Sampling Scheme – DEF is created and assigned to the Sampling ProcedureMULSAMPL.
b. Material No. - QS8X20
c. Create Purchase order for the material  QS8X20  4500017450 and Vendor 1234.
d. Goods Receipt is carried out  5000002773
e. System creates Inspection Lot automatically.  Insp. Lot No.  3737
f. Sample size is 5 as the Inspection Lot Quantity is 130.
 As per sampling scheme  DEF, the sample size is 5 for the Inspection Lot quantity --. 130.
g. As per sampling scheme  DEF, seven samples are allowed.
Hence the sample quantity is 5 X 7  35.
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 5
We have selected the Inspection Lot Size as 130.
From Inspection Lot Size 91 to 150, system calculates the sample size 5 and there are 7 samples are eligible.
Hence the Sample Size is 7 X 5  35 Samples.
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 6
First Sample
C1  1 & d1  4.
c1  Allowable NC and d1  Rejection Criteria
When the NC is 1 or 2 or 3  Less than 4, the system allows to select the second sample.
FIRST SAMPLE  SAMPLE SIZE  5 AND NC  2 WHICH IS LESS THAN d1  4
Hence System allows for the second sample.
System allows to take the consecutive sample, if the non conformity does not exceed rejection criteria.
Click this  Valuate icon or F7
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 7
We get the  Valuation of Dependent Multiple Samples POPUP WINDOW.
Click this icon  Extend Sample
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 8
We get the new screen, where we can enter the second sample results.
Second Sample
C2  2 & d2  5.
C2  Allowable NC and d2  Rejection Criteria
When cumulated NC is less than 5, System allows for the Third Sample.
If the cumulated NC is 5 or above, then System does not allow the Third sample.
Case A  Cumulated NC of First and Second Samples is less than d2,
then  System creates the Third Sample.
NC of First Sample  2
NC of Second Sample  1
Cumulating the NCs of First and Second Samples  2 + 1 = 3
 d2 = 5  3<5,
System allows to create a new sample  Third Sample is created.
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 9
After entering the results, hit the Enter Key.
We get the popup window to create the third sample.
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 10
Similarly we can proceed till 7 samples.
If total accumulated NC is less than  d7  23, the Inspection Lot is accepted.
If total accumulated NC is 23 or more than 23, the lot is rejected.
Click this icon  Extend Sample
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 11
Case B  Cumulated NC of First and Second Samples is equal or
more than d2, then  System does not allow to create the Third
Sample.
Let the NC of first sample  2
Let the NC of second sample is also  3
Cumulated NC of First and second Sample  2 + 3  5
System prevents to create a new sample.
We get the following message.
System does not create the new sample and the following message has come.
We get the following message.
 Hence the Inspection Lot is rejected.
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 12
The following table gives more clarity of this scenario.
For this Inspection Lot of lot size  130, Total Sample Size  5 X7  35.
Sample
Size
SAMPLE
NO.
c1 d1 NC
CUMULATED
NC
SYSTEM ALLOWS TO CREATE NEXT
SAMPLE
5 SAMPLE 1 1 4 2 2
Cumulated NC is Less than d1 --> 2 < 4
 New Sample is created.
5 SAMPLE 2 2 5 1 3
Cumulated NC is Less than d2 --> 3 < 5
 New Sample is created.
5 SAMPLE 3 6 10 5 8
Cumulated NC is Less than d3 --> 8 < 10
 New Sample is created.
5 SAMPLE 4 7 15 5 13
Cumulated NC is Less than d4 --> 13 <
15  New Sample is created.
5 SAMPLE 5 8 16 1 14
Cumulated NC is Less than d5 --> 14 < 16
 New Sample is created.
5 SAMPLE 6 9 19 4 18
Cumulated NC is Less than d6 --> 18 < 19
 New Sample is created.
5 SAMPLE 7 10 23 4 22
Cumulated NC is Less than d4 --> 22 <
23 The Inspection Lot is ACCEPTED.
So in the 7th sample NC is 4  Cumulative  22, the lot is accepted.
If the 7th sample, NC is 5  Cumulative  23, the lot is rejected.
5 SAMPLE 7 10 23 5 23
Cumulated NC is Equal or More
than d4 --> 23 = 23 The
Inspection Lot is REJECTED.
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 13
Master Data
Create the Sampling Scheme
TC: QDP1.
Sampling Scheme  DEP is created.
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 14
Create Sampling Procedure  QDV1
System automatically selects the  Valuation Rule 66.
Dependent Multiple Samples In Sampling Management
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© 2009 SAP AG 15
Create Inspection Plan for the Material  QS8X20
Assign the MIC  MULTIPLE to the Operation
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 16
Assign the Sampling Procedure to the MIC in Inspection Plan
Assign the Inspection Type to the Material  QS8X20
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 17
Related Content
SAP help on QM
SAP help on Inspection Lot Completion
For more information, visit the Supply Chain Management homepage.
Dependent Multiple Samples In Sampling Management
SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com
© 2009 SAP AG 18
Disclaimer and Liability Notice
This document may discuss sample coding or other information that does not include SAP official interfaces and therefore is not supported by
SAP. Changes made based on this information are not supported and can be overwritten during an upgrade.
SAP will not be held liable for any damages caused by using or misusing the information, code or methods suggested in this document, and
anyone using these methods does so at his/her own risk.
SAP offers no guarantees and assumes no responsibility or liability of any type with respect to the content of this technical article or code
sample, including any liability resulting from incompatibility between the content within this document and the materials and services offered
by SAP. You agree that you will not hold, or seek to hold, SAP responsible or liable with respect to the content of this document.

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Qm sampling scheme

  • 1. SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 1 Dependent Multiple Samples In Sampling Management Applies to: SAP QM Consultants, SAP ECC 6.0. For more information, visit the Supply Chain Management homepage. For more information, visit the Supply Chain Management homepage. Summary The user wants to create multiple samples one by one manually in Result Recording Screen, when the Non Conformity (NC) of the samples is in between allowable level and rejection level. Each sample is interdependent and non conformities are cumulated till 7th Sample. Once the sample is rejected, the new sample can not be created. Total cumulated NCs of all the seven samples are less than the rejection level, the Inspection Lot is accepted. Total cumulated NCs of all the seven samples are equal or more than the rejection level, the Inspection Lot is rejected. The rejection level is indicated by  d7. Author: Raguthama Sharma Company: Intelligroup Asia Private Limited Created on: 25 November 2009 Author Bio Raguthama Sharma has thirty seven years of work experience including eight years of experience with SAP-PP / QM Modules. He has been working as a senior consultant for PP and QM Module, in SAP SCM department of Intelligroup Asia Private Limited since December 2003.
  • 2. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 2 Table of Contents Introduction .........................................................................................................................................................3 Define the Requirements....................................................................................................................................3 Sampling Scheme...........................................................................................................................................3 Process Flow ......................................................................................................................................................4 Master Data ......................................................................................................................................................13 Create the Sampling Scheme.......................................................................................................................13 Create Sampling Procedure  QDV1 ..........................................................................................................14 Create Inspection Plan for the Material  QS8X20 .....................................................................................15 Assign the MIC  MULTIPLE to the Operation............................................................................................15 Assign the Sampling Procedure to the MIC in Inspection Plan ....................................................................16 Assign the Inspection Type to the Material  QS8X20................................................................................16 Related Content................................................................................................................................................17 Disclaimer and Liability Notice..........................................................................................................................18
  • 3. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 3 Introduction Acceptance Number  denoted by c. For an attributive inspection, the highest number of nonconforming units or the highest number of defects in a sample that leads to an acceptance of the inspection lot. Rejection Number  denoted by d. For an attributive inspection, the lowest number of nonconforming units and/or the lowest number of defects in a sample that result in a rejection. Number of Non Conformity allowed in sample Number 1  c1 Number of Non conformity for rejection criteria in Sample Number 1  d1 System allows a Maximum of seven samples for any Inspection Lot.  c1, c2, c3, c4, c5, c6 and c7 are acceptable level of seven samples.  d1, d2, d3, d4, d5, d6 and d7 are rejection level of seven samples. Ex: Dependent multiple sample procedure is used in Lamp Industries, for specific customer where stringent quality measures are to be adhered In Lamp Industry, every hour 1500 to 2600 incandescent lamps are manufactured. Similar industries, where huge quantity is produced, the dependent multiple sample procedures can be used. Once the lot is rejected, 100 % inspection is carried out to eliminate the non conformities Define the Requirements Sampling Scheme Sampling Scheme is system defined / user defined table. This table defines the sample size for various inspection lot quantities. For the combination of Inspection Lot quantity and Sample size, c1,d1;c2,d2;c3,d3:c4,d4;c5,d5;c6,d6; and c7,d7 are defined. Sampling scheme  DEP  Samp.Sche. For Dependent Multiple Sample is created. Existing sampling procedure is copied and c values and d values are modified as per requirement.
  • 4. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 4  This sampling scheme is assigned to the Sampling procedure  MULSAMPL.  This procedure is assigned to the MIC  MULTIPLE.  MIC is assigned to the Inspection Plan Group  241 and Counter 1.  Material  QS8X20 is assigned to the Inspection Plan Group  241.  QM view is created for the Material  QS8X20 and Inspection Type 01 is assigned. Process Flow The process flow of “Independent Multiple Samples” is given below. In bound process is selected. a. Sampling Scheme – DEF is created and assigned to the Sampling ProcedureMULSAMPL. b. Material No. - QS8X20 c. Create Purchase order for the material  QS8X20  4500017450 and Vendor 1234. d. Goods Receipt is carried out  5000002773 e. System creates Inspection Lot automatically.  Insp. Lot No.  3737 f. Sample size is 5 as the Inspection Lot Quantity is 130.  As per sampling scheme  DEF, the sample size is 5 for the Inspection Lot quantity --. 130. g. As per sampling scheme  DEF, seven samples are allowed. Hence the sample quantity is 5 X 7  35.
  • 5. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 5 We have selected the Inspection Lot Size as 130. From Inspection Lot Size 91 to 150, system calculates the sample size 5 and there are 7 samples are eligible. Hence the Sample Size is 7 X 5  35 Samples.
  • 6. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 6 First Sample C1  1 & d1  4. c1  Allowable NC and d1  Rejection Criteria When the NC is 1 or 2 or 3  Less than 4, the system allows to select the second sample. FIRST SAMPLE  SAMPLE SIZE  5 AND NC  2 WHICH IS LESS THAN d1  4 Hence System allows for the second sample. System allows to take the consecutive sample, if the non conformity does not exceed rejection criteria. Click this  Valuate icon or F7
  • 7. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 7 We get the  Valuation of Dependent Multiple Samples POPUP WINDOW. Click this icon  Extend Sample
  • 8. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 8 We get the new screen, where we can enter the second sample results. Second Sample C2  2 & d2  5. C2  Allowable NC and d2  Rejection Criteria When cumulated NC is less than 5, System allows for the Third Sample. If the cumulated NC is 5 or above, then System does not allow the Third sample. Case A  Cumulated NC of First and Second Samples is less than d2, then  System creates the Third Sample. NC of First Sample  2 NC of Second Sample  1 Cumulating the NCs of First and Second Samples  2 + 1 = 3  d2 = 5  3<5, System allows to create a new sample  Third Sample is created.
  • 9. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 9 After entering the results, hit the Enter Key. We get the popup window to create the third sample.
  • 10. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 10 Similarly we can proceed till 7 samples. If total accumulated NC is less than  d7  23, the Inspection Lot is accepted. If total accumulated NC is 23 or more than 23, the lot is rejected. Click this icon  Extend Sample
  • 11. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 11 Case B  Cumulated NC of First and Second Samples is equal or more than d2, then  System does not allow to create the Third Sample. Let the NC of first sample  2 Let the NC of second sample is also  3 Cumulated NC of First and second Sample  2 + 3  5 System prevents to create a new sample. We get the following message. System does not create the new sample and the following message has come. We get the following message.  Hence the Inspection Lot is rejected.
  • 12. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 12 The following table gives more clarity of this scenario. For this Inspection Lot of lot size  130, Total Sample Size  5 X7  35. Sample Size SAMPLE NO. c1 d1 NC CUMULATED NC SYSTEM ALLOWS TO CREATE NEXT SAMPLE 5 SAMPLE 1 1 4 2 2 Cumulated NC is Less than d1 --> 2 < 4  New Sample is created. 5 SAMPLE 2 2 5 1 3 Cumulated NC is Less than d2 --> 3 < 5  New Sample is created. 5 SAMPLE 3 6 10 5 8 Cumulated NC is Less than d3 --> 8 < 10  New Sample is created. 5 SAMPLE 4 7 15 5 13 Cumulated NC is Less than d4 --> 13 < 15  New Sample is created. 5 SAMPLE 5 8 16 1 14 Cumulated NC is Less than d5 --> 14 < 16  New Sample is created. 5 SAMPLE 6 9 19 4 18 Cumulated NC is Less than d6 --> 18 < 19  New Sample is created. 5 SAMPLE 7 10 23 4 22 Cumulated NC is Less than d4 --> 22 < 23 The Inspection Lot is ACCEPTED. So in the 7th sample NC is 4  Cumulative  22, the lot is accepted. If the 7th sample, NC is 5  Cumulative  23, the lot is rejected. 5 SAMPLE 7 10 23 5 23 Cumulated NC is Equal or More than d4 --> 23 = 23 The Inspection Lot is REJECTED.
  • 13. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 13 Master Data Create the Sampling Scheme TC: QDP1. Sampling Scheme  DEP is created.
  • 14. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 14 Create Sampling Procedure  QDV1 System automatically selects the  Valuation Rule 66.
  • 15. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 15 Create Inspection Plan for the Material  QS8X20 Assign the MIC  MULTIPLE to the Operation
  • 16. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 16 Assign the Sampling Procedure to the MIC in Inspection Plan Assign the Inspection Type to the Material  QS8X20
  • 17. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 17 Related Content SAP help on QM SAP help on Inspection Lot Completion For more information, visit the Supply Chain Management homepage.
  • 18. Dependent Multiple Samples In Sampling Management SAP COMMUNITY NETWORK SDN - sdn.sap.com | BPX - bpx.sap.com | BOC - boc.sap.com © 2009 SAP AG 18 Disclaimer and Liability Notice This document may discuss sample coding or other information that does not include SAP official interfaces and therefore is not supported by SAP. Changes made based on this information are not supported and can be overwritten during an upgrade. SAP will not be held liable for any damages caused by using or misusing the information, code or methods suggested in this document, and anyone using these methods does so at his/her own risk. SAP offers no guarantees and assumes no responsibility or liability of any type with respect to the content of this technical article or code sample, including any liability resulting from incompatibility between the content within this document and the materials and services offered by SAP. You agree that you will not hold, or seek to hold, SAP responsible or liable with respect to the content of this document.