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ACCEPTANCE
 SAMPLING
      PRESENTED BY
      SREEDEVI K.N
      M.Sc INDUSTRIAL FISHERIES
      III SEMESTER
INTRODUCTION
   Quality control is an activity in which measures are
    taken to control quality of future output.
   Sampling refers to observation of a population or
    lot for the purpose of obtaining some information
    about it.
   Acceptance sampling is a quality control technique.
DEFINITION
   Acceptance sampling is defined as sampling
    inspection in which decisions are made to accept
    or reject products or services.
   It is a decision making tool by which a
    conclusion is reached regarding the acceptability
    of lot.
ADVANTAGES
   Acceptance sampling eliminates or rectifies poor lots &
    improve overall quality of product.
   Reduces inspection costs & risk.
   In inspection of sample greater care will be taken so
    that results may be more accurate.
   A rejected lot is frequently a signal to the manufacturer
    that the process should be improved.
   It provides a no of alternative plans in which a single
    sample is taken, two or indefinite no of samples may be
    taken from a single lot.
SAMPLING PLANS



ATTRIBUTES SAMPLING        VARIABLE SAMPLING



1. SINGLE SAMPLING
2. DOUBLE SAMPLING
3. MULTIPLE SAMPLING
4. SEQUENTIAL
   SAMPLING
ATTRIBUTES SAMPLING PLAN
   Attributes sampling is most commonly used,
    more than 1 type of quality characteristics can be
    considered for each sample.
   Measurements are simpler to make.
   It requires a larger sample size than variables
    sampling plan.
SINGLE SAMPLING
   A plan in which inspector is forced to make a
    decision concerning acceptability of a lot or batch
    on the basis of inspection of units in one sample
    taken from that lot.
   It can be described in terms of 3 constants.
         N,the lot size
        n,the sample size
        c,the acceptance number
        c is the maximum allowable defects in sample
        If sample contains c or fewer defectives, lot will be
         accepted & if it contains more than c lot will be
         rejected.
DOUBLE SAMPLING
   These are characterized by two sample size along with
    two sets of acceptance rejection numbers.
   The two sample sizes may or may not be equal.
   It can be described in terms of c1,c2,n1,n2


               MULTIPLE SAMPLING
• In this 3 or more samples might be taken
  before a decision is reached regarding the
  acceptability of a lot.
• It results in smaller average sample size.
SEQUENTIAL SAMPLING
   An extreme case of multiple sampling in which
    sampling might continues until the lot is exhausted.
   It calls for inspection on an item by item basis.
   Decision is made after each item is inspected
    concerning whether lot should be accepted or rejected
    or sampling continued.
   Sampling & decision making continues until a clear cut
    decision is obtained either to accept or reject.
VARIABLE SAMPLING
   Variables plan need measurement type data &
    decision must be based only on one such
    measurement characteristics.
   It is efficient because variables carry more
    information than attributes.
   Based on mean & standard deviation
    characteristics.
   They are difficult to use.
OPERATING CHARACTERISTIC
            CURVE (oc)
   A curve which serves to describe an acceptance
    plan in terms of probability of accepting lots of
    various quality levels with the plan.

                           Pa =probability of accepting a lot
                           P` =actual proportion of defectives

    pa



           p`
SAMPLING RISKS
   Both producer & consumer will agree on two
    proportions to represent the acceptable
    proportion of defectives in the lot.
     AQL(accaptable quality level) : it represents the maxi
      proportion of defectives acceptable by consumer.
     LTPD(lot tolerance percent defective): it represents
      the mini proportion of defectives which consumer
      finds unacceptable.
AVERAGE OUTGOING QUALITY
   AOQ is the average quality in terms of fraction or %
    defectives for inspection operations.
   These are done under 2 conditions such as rejected lots
    be screened &all defectives that contain be replaced by
    good articles, lot sizes of product be constant.
   The maxi value of AOQ is average outgoing quality
    limit(AOQL).
   Each acceptance sampling plan can be described in
    terms of AOQL it will generate.
ACCEPTANCE SAMPLING SYSTEMS
   American national standard, sampling procedures and
    tables for inspection by attributes is a sampling system
    indexed by lot size ranges, inspection levels AQLs.
   The use of sampling schemes defined in this system will
    constrain the producer to provide product of quality at
    or better than selected AQL.
   Dodge Romig system, Dodge Romig sampling
    inspection tables are designed to minimize average total
    inspection for a given AOQL.
CONCLUSION
   Acceptance sampling is a statistical procedure used to
    determine whether to accept or reject a production lot of
    material.
   A wide variety of sampling plans are available.plans have
    an accepted AQL & a rejected LTPD & an AOQL.
   Acceptance sampling tables are there to supply a set of
    accepted procedures with known properties &verified
    results.
   Sampling provides rational means of verification that a
    production lot confirms with requirements of technical
    specifications.
3.... acceptance sampling

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3.... acceptance sampling

  • 1. ACCEPTANCE SAMPLING PRESENTED BY SREEDEVI K.N M.Sc INDUSTRIAL FISHERIES III SEMESTER
  • 2. INTRODUCTION  Quality control is an activity in which measures are taken to control quality of future output.  Sampling refers to observation of a population or lot for the purpose of obtaining some information about it.  Acceptance sampling is a quality control technique.
  • 3. DEFINITION  Acceptance sampling is defined as sampling inspection in which decisions are made to accept or reject products or services.  It is a decision making tool by which a conclusion is reached regarding the acceptability of lot.
  • 4. ADVANTAGES  Acceptance sampling eliminates or rectifies poor lots & improve overall quality of product.  Reduces inspection costs & risk.  In inspection of sample greater care will be taken so that results may be more accurate.  A rejected lot is frequently a signal to the manufacturer that the process should be improved.  It provides a no of alternative plans in which a single sample is taken, two or indefinite no of samples may be taken from a single lot.
  • 5. SAMPLING PLANS ATTRIBUTES SAMPLING VARIABLE SAMPLING 1. SINGLE SAMPLING 2. DOUBLE SAMPLING 3. MULTIPLE SAMPLING 4. SEQUENTIAL SAMPLING
  • 6. ATTRIBUTES SAMPLING PLAN  Attributes sampling is most commonly used, more than 1 type of quality characteristics can be considered for each sample.  Measurements are simpler to make.  It requires a larger sample size than variables sampling plan.
  • 7. SINGLE SAMPLING  A plan in which inspector is forced to make a decision concerning acceptability of a lot or batch on the basis of inspection of units in one sample taken from that lot.  It can be described in terms of 3 constants.  N,the lot size  n,the sample size  c,the acceptance number  c is the maximum allowable defects in sample  If sample contains c or fewer defectives, lot will be accepted & if it contains more than c lot will be rejected.
  • 8. DOUBLE SAMPLING  These are characterized by two sample size along with two sets of acceptance rejection numbers.  The two sample sizes may or may not be equal.  It can be described in terms of c1,c2,n1,n2 MULTIPLE SAMPLING • In this 3 or more samples might be taken before a decision is reached regarding the acceptability of a lot. • It results in smaller average sample size.
  • 9. SEQUENTIAL SAMPLING  An extreme case of multiple sampling in which sampling might continues until the lot is exhausted.  It calls for inspection on an item by item basis.  Decision is made after each item is inspected concerning whether lot should be accepted or rejected or sampling continued.  Sampling & decision making continues until a clear cut decision is obtained either to accept or reject.
  • 10. VARIABLE SAMPLING  Variables plan need measurement type data & decision must be based only on one such measurement characteristics.  It is efficient because variables carry more information than attributes.  Based on mean & standard deviation characteristics.  They are difficult to use.
  • 11. OPERATING CHARACTERISTIC CURVE (oc)  A curve which serves to describe an acceptance plan in terms of probability of accepting lots of various quality levels with the plan. Pa =probability of accepting a lot P` =actual proportion of defectives pa p`
  • 12. SAMPLING RISKS  Both producer & consumer will agree on two proportions to represent the acceptable proportion of defectives in the lot.  AQL(accaptable quality level) : it represents the maxi proportion of defectives acceptable by consumer.  LTPD(lot tolerance percent defective): it represents the mini proportion of defectives which consumer finds unacceptable.
  • 13. AVERAGE OUTGOING QUALITY  AOQ is the average quality in terms of fraction or % defectives for inspection operations.  These are done under 2 conditions such as rejected lots be screened &all defectives that contain be replaced by good articles, lot sizes of product be constant.  The maxi value of AOQ is average outgoing quality limit(AOQL).  Each acceptance sampling plan can be described in terms of AOQL it will generate.
  • 14. ACCEPTANCE SAMPLING SYSTEMS  American national standard, sampling procedures and tables for inspection by attributes is a sampling system indexed by lot size ranges, inspection levels AQLs.  The use of sampling schemes defined in this system will constrain the producer to provide product of quality at or better than selected AQL.  Dodge Romig system, Dodge Romig sampling inspection tables are designed to minimize average total inspection for a given AOQL.
  • 15. CONCLUSION  Acceptance sampling is a statistical procedure used to determine whether to accept or reject a production lot of material.  A wide variety of sampling plans are available.plans have an accepted AQL & a rejected LTPD & an AOQL.  Acceptance sampling tables are there to supply a set of accepted procedures with known properties &verified results.  Sampling provides rational means of verification that a production lot confirms with requirements of technical specifications.