10 Quality Control.

Slides:



Advertisements
Similar presentations
Operations Management Statistical Process Control Supplement 6
Advertisements

Chapter 10 Quality Control.
Chapter 9A Process Capability and Statistical Quality Control
Quality Assurance (Quality Control)
Statistical Process Control Used to determine whether the output of a process conforms to product or service specifications. We use control charts to detect.
BMM 3633 Industrial Engineering
1 Manufacturing Process A sequence of activities that is intended to achieve a result (Juran). Quality of Manufacturing Process depends on Entry Criteria.
Quality Control Pertemuan 12 Mata kuliah: J Manajemen Operasional Tahun: 2010.
Quality Control Chapter 10 Additional content from Jeff Heyl
Adeyl Khan, Faculty, BBA, NSU Quality Control Adeyl Khan, Faculty, BBA, NSU Phases of Quality Assurance 10-2 Figure 10.1 Acceptance sampling Process.
SJSU Bus David Bentley1 Week 03B – Statistical Process Control (Ch 6S) Control process, statistical process control (SPC): X-bar, R, p, c, process.
Chapter 10 Quality Control McGraw-Hill/Irwin
J0444 OPERATION MANAGEMENT SPC Pert 11 Universitas Bina Nusantara.
Operations Management
CHAPTER 8TN Process Capability and Statistical Quality Control
McGraw-Hill/Irwin Copyright © 2007 by The McGraw-Hill Companies, Inc. All rights reserved. 10 Quality Control.
Chapter 10 Quality Control McGraw-Hill/Irwin Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
10 Quality Control CHAPTER
Rev. 09/06/01SJSU Bus David Bentley1 Chapter 10 – Quality Control Control process, statistical process control (SPC): X-bar, R, p, c, process capability.
10-1 McGraw-Hill Ryerson Operations Management, 2 nd Canadian Edition, by Stevenson & Hojati Copyright © 2004 by The McGraw-Hill Companies, Inc. All rights.
Quality Control Copyright © 2015 McGraw-Hill Education. All rights reserved. No reproduction or distribution without the prior written consent of McGraw-Hill.
Statistical Process Control (SPC)
Chapter 10 Quality Control McGraw-Hill/Irwin
10-1 McGraw-Hill/Irwin Operations Management, Seventh Edition, by William J. Stevenson Copyright © 2002 by The McGraw-Hill Companies, Inc. All rights reserved.
CHAPTER 10 Quality Control/ Acceptance Sampling McGraw-Hill/Irwin Operations Management, Eighth Edition, by William J. Stevenson Copyright © 2005 by The.
Quality Control McGraw-Hill/Irwin Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
Statistical Quality Control/Statistical Process Control
10-1Quality Control William J. Stevenson Operations Management 8 th edition.
Quality Control McGraw-Hill/Irwin Copyright © 2012 by The McGraw-Hill Companies, Inc. All rights reserved.
Monitoring and Controlling
Statistical Process Control (SPC) Chapter 6. MGMT 326 Foundations of Operations Introduction Strategy Quality Assurance Capacity, Facilities, & Work Design.
Chapter 10 Quality Control.
Chapter 13 Statistical Quality Control Method
© 2006 Prentice Hall, Inc.S6 – 1 Operations Management Supplement 6 – Statistical Process Control © 2006 Prentice Hall, Inc. PowerPoint presentation to.
Statistical Process Control (SPC)
Operations Management
Statistical Process Control
Statistical Quality Control/Statistical Process Control
Statistical Quality Control
2 How to use the seven tools of quality Tools for identifying problems / collecting data Check sheets Scatter diagrams Statistical process control (SPC)
1 Slides used in class may be different from slides in student pack Technical Note 8 Process Capability and Statistical Quality Control  Process Variation.
Statistical Process Control Production and Process Management.
CHAPTER 7 STATISTICAL PROCESS CONTROL. THE CONCEPT The application of statistical techniques to determine whether the output of a process conforms to.
Inspection- “back-end quality control” BUT, Start by designing quality into the front end of the process- the design QFD (Quality Function Deployment)
1 SMU EMIS 7364 NTU TO-570-N Control Charts Basic Concepts and Mathematical Basis Updated: 3/2/04 Statistical Quality Control Dr. Jerrell T. Stracener,
Quality Control Copyright © 2015 McGraw-Hill Education. All rights reserved. No reproduction or distribution without the prior written consent of McGraw-Hill.
LSM733-PRODUCTION OPERATIONS MANAGEMENT By: OSMAN BIN SAIF LECTURE 30 1.
Quality Control Chapter 6. Transformation Process Inputs Facilities Equipment Materials Energy Outputs Goods & Services Variation in inputs create variation.
MOS 3330 Operations Management Professor Burjaw Fall/Winter
OPSM301 Operations Management Spring 2012
Statistical Quality Control
36.3 Inspection to Control Quality
Tech 31: Unit 3 Control Charts for Variables
COMPLETE BUSINESS STATISTICS
Process Capability and Capability Index
QUALITY CONTROL AND QUALITY ASSURANCE
36.1 Introduction Objective of Quality Engineering:
McGraw-Hill/Irwin ©2009 The McGraw-Hill Companies, All Rights Reserved
Stevenson 9 Management of Quality.
Statistical Process Control
Statistical Process Control (SPC)
10 Quality Control.
Stevenson 9 Management of Quality.
What is the point of these sports?
QUALITY CONTROL AND QUALITY ASSURANCE (Contd.)
Statistical Process Control
Process Capability.
BENEFITS OF AUTOMATED SPC
Statistical Quality Control
Presentation transcript:

10 Quality Control

Learning Objectives List and briefly explain the elements of the control process. Explain how control charts are used to monitor a process, and the concepts that underlie their use. Use and interpret control charts. Use run tests to check for nonrandomness in process output. Assess process capability.

Phases of Quality Assurance Figure 10.1 Inspection and corrective action during production Inspection of lots before/after production Quality built into the process Acceptance sampling Process control Continuous improvement The least progressive The most progressive

Inspection How Much/How Often Where/When Centralized vs. On-site Figure 10.2 How Much/How Often Where/When Centralized vs. On-site Inputs Transformation Outputs Acceptance sampling Process control Acceptance sampling

Inspection Costs Figure 10.3 Cost Optimal Amount of Inspection Total Cost Cost of inspection Cost of passing defectives

Where to Inspect in the Process Raw materials and purchased parts Finished products Before a costly operation Before an irreversible process Before a covering process

Examples of Inspection Points Table 10.1

Statistical Control Statistical Process Control: Statistical evaluation of the output of a process during production Quality of Conformance: A product or service conforms to specifications

Control Chart Control Chart Purpose: to monitor process output to see if it is random A time ordered plot representative sample statistics obtained from an on going process (e.g. sample means) Upper and lower control limits define the range of acceptable variation

Control Chart Figure 10.4 UCL LCL 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 UCL LCL Sample number Mean Out of control Normal variation due to chance Abnormal variation due to assignable sources

Statistical Process Control The essence of statistical process control is to assure that the output of a process is random so that future output will be random.

Statistical Process Control The Control Process Define Measure Compare Evaluate Correct Monitor results

Statistical Process Control Variations and Control Random variation: Natural variations in the output of a process, created by countless minor factors Assignable variation: A variation whose source can be identified

Sampling Distribution Figure 10.5 Sampling distribution Process distribution Mean

Normal Distribution Figure 10.6 Mean     95.44% 99.74% Standard deviation

Control Limits Figure 10.7 Sampling distribution Process distribution Mean Lower control limit Upper control limit

SPC Errors Type I error Type II error Concluding a process is not in control when it actually is. Type II error Concluding a process is in control when it is not.

Type I and Type II Errors Table 10.2 In control Out of control No Error Type I error (producers risk) Type II Error (consumers risk) No error

Type I Error Figure 10.8 Mean LCL UCL /2 Probability of Type I error

Observations from Sample Distribution Figure 10.9 Sample number UCL LCL 1 2 3 4

Control Charts for Variables Variables generate data that are measured. Mean control charts Used to monitor the central tendency of a process. X bar charts Range control charts Used to monitor the process dispersion R charts

Mean and Range Charts Figure 10.10A Detects shift x-Chart (process mean is shifting upward) Sampling Distribution UCL x-Chart Detects shift LCL UCL Does not detect shift R-chart LCL

Mean and Range Charts Figure 10.10B Does not reveal increase x-Chart Sampling Distribution (process variability is increasing) UCL Does not reveal increase x-Chart LCL UCL R-chart Reveals increase LCL

Control Chart for Attributes p-Chart - Control chart used to monitor the proportion of defectives in a process c-Chart - Control chart used to monitor the number of defects per unit Attributes generate data that are counted.

Use of p-Charts When observations can be placed into two categories. Table 10.4 When observations can be placed into two categories. Good or bad Pass or fail Operate or don’t operate When the data consists of multiple samples of several observations each

Use of c-Charts Table 10.4 Use only when the number of occurrences per unit of measure can be counted; non-occurrences cannot be counted. Scratches, chips, dents, or errors per item Cracks or faults per unit of distance Breaks or Tears per unit of area Bacteria or pollutants per unit of volume Calls, complaints, failures per unit of time

Use of Control Charts At what point in the process to use control charts What size samples to take What type of control chart to use Variables Attributes

Run Tests Run test – a test for randomness Any sort of pattern in the data would suggest a non-random process All points are within the control limits - the process may not be random

Nonrandom Patterns in Control charts Trend Cycles Bias Mean shift Too much dispersion

Counting Runs Figure 10.12 Figure 10.13 Counting Above/Below Median Runs (7 runs) Counting Up/Down Runs (8 runs) U U D U D U D U U D B A A B A B B B A A B Figure 10.12 Figure 10.13

NonRandom Variation Managers should have response plans to investigate cause May be false alarm (Type I error) May be assignable variation

Process Capability Tolerances or specifications Process variability Range of acceptable values established by engineering design or customer requirements Process variability Natural variability in a process Process capability Process variability relative to specification

Process Capability Figure 10.15 Lower Specification Upper Specification A. Process variability matches specifications B. Process variability well within specifications C. Process variability exceeds specifications

Process Capability Ratio If the process is centered use Cp Process capability ratio, Cp = specification width process width Upper specification – lower specification 6 Cp = If the process is not centered use Cpk

Limitations of Capability Indexes Process may not be stable Process output may not be normally distributed Process not centered but Cp is used

Example 8 Machine Standard Deviation Machine Capability Cp A 0.13 0.78 0.80/0.78 = 1.03 B 0.08 0.48 0.80/0.48 = 1.67 C 0.16 0.96 0.80/0.96 = 0.83 Cp > 1.33 is desirable Cp = 1.00 process is barely capable Cp < 1.00 process is not capable

3 Sigma and 6 Sigma Quality Process mean Lower specification Upper specification 1350 ppm 1.7 ppm +/- 3 Sigma +/- 6 Sigma

Improving Process Capability Simplify Standardize Mistake-proof Upgrade equipment Automate

Traditional cost function Taguchi Loss Function Figure 10.17 Cost Target Lower spec Upper spec Traditional cost function Taguchi cost function

Video: Defect Prev.