Six sigma very basic concise explanation and use of it Skorkovský KPH_ESF_MU BRNO_Czech Republic.

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Presentation transcript:

Six sigma very basic concise explanation and use of it Skorkovský KPH_ESF_MU BRNO_Czech Republic

Six Sigma method Motorola 1985 Use in order to produce better products nad less problem processes PPM- parts per million ->4,4 defects /million opportunities Six-Sigma-DMAIC methodology

Where Six Sigma method can be applied

Normal distribution Normal distribution curve that illustrates standard deviations. Each band has 1 standard deviation, and the labels indicate the approximate proportion of area (note: these add up to 99.8%, and not 100% due to rounding for presentation.)Normal distributionstandard deviations

  SIX SIGMA Statistical background Target =  Some Key measure Resource : Pro-Enbis

  Statistical background Target =  ‘Control’ limits

  LSL USL Statistical background Required Tolerance Target =  Lower specification level Upper specification level

  LSL USL Statistical background Tolerance Target =  Six-Sigma

  LSL USL ppm 1350 ppm 1350 Statistical background Tolerance Target =  Ppm= parts per million

  LSL USL ppm ppm 1350 ppm 1350 ppm Statistical background Tolerance Target = 

Statistical background Six-Sigma allows for un-foreseen ‘problems’ and longer term issues when calculating failure error or re-work rates Allows for a process ‘shift’ (1,5 σ )

LSL 0 ppm ppm 3.4  USL ppm 3.4 ppm   Statistical background Tolerance

Performance Standards  PPM 69.1% 93.3% 99.38% % % Yield Process performance Process performance Defects per million Defects per million Long term yield Long term yield Current standard World Class