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Full Description
Montgomery, Runger, and Hubele's Engineering Statistics, 5th Edition provides modern coverage of engineering statistics by focusing on how statistical tools are integrated into the engineering problem-solving process. All major aspects of engineering statistics are covered, including descriptive statistics, probability and probability distributions, statistical test and confidence intervals for one and two samples, building regression models, designing and analyzing engineering experiments, and statistical process control. This edition features new introductions, revised content to help students better understand ANOVA, new examples to help calculate probability and approximately 80 new exercises.
Contents
CHAPTER 1 The Role of Statistics in Engineering 1
1-1 The Engineering Method and Statistical Thinking 2
1-2 Collecting Engineering Data 6
1-3 Mechanistic and Empirical Models 15
1-4 Observing Processes Over Time 17
CHAPTER 2 Data Summary and Presentation 23
2-1 Data Summary and Display 24
2-2 Stem-and-Leaf Diagram 29
2-3 Histograms 34
2-4 Box Plot 39
2-5 Time Series Plots 41
2-6 Multivariate Data 46
CHAPTER 3 Random Variables and Probability Distributions 57
3-1 Introduction 58
3-2 Random Variables 60
3-3 Probability 62
3-4 Continuous Random Variables 66
3-5 Important Continuous Distributions 74
3-6 Probability Plots 92
3-7 Discrete Random Variables 97
3-8 Binomial Distribution 102
3-9 Poisson Process 109
3-10 Normal Approximation to the Binomial and Poisson Distributions 119
3-11 More than One Random Variable and Independence 123
3-12 Functions of Random Variables 129
3-13 Random Samples, Statistics, and the Central Limit Theorem 136
CHAPTER 4 Decision Making for a Single Sample 148
4-1 Statistical Inference 149
4-2 Point Estimation 150
4-3 Hypothesis Testing 156
4-4 Inference on the Mean of a Population, Variance Known 169
4-5 Inference on the Mean of a Population, Variance Unknown 186
4-6 Inference on the Variance of a Normal Population 199
4-7 Inference on a Population Proportion 205
4-8 Other Interval Estimates for a Single Sample 216
4-9 Summary Tables of Inference Procedures for a Single Sample 219
4-10 Testing for Goodness of Fit 219
CHAPTER 5 Decision Making for Two Samples 230
5-1 Introduction 231
5-2 Inference on the Means of Two Populations, Variances Known 232
5-3 Inference on the Means of Two Populations, Variances Unknown 239
5-4 The Paired t-Test 252
5-5 Inference on the Ratio of Variances of Two Normal Populations 259
5-6 Inference on Two Population Proportions 265
5-7 Summary Tables for Inference Procedures for Two Samples 271
5-8 What if We Have More than Two Samples? 272
CHAPTER 6 Building Empirical Models 298
6-1 Introduction to Empirical Models 299
6-2 Simple Linear Regression 304
6-3 Multiple Regression 326
6-4 Other Aspects of Regression 344
CHAPTER 7 Design of Engineering Experiments 360
7-1 The Strategy of Experimentation 361
7-2 Factorial Experiments 362
7-3 2k Factorial Design 365
7-4 Center Points and Blocking in 2k Designs 390
7-5 Fractional Replication of a 2k Design 398
7-6 Response Surface Methods and Designs 414
7-7 Factorial Experiments With More Than Two Levels 424
CHAPTER 8 Statistical Process Control 438
8-1 Quality Improvement and Statistical Process Control 439
8-2 Introduction to Control Charts 440
8-3 and R Control Charts 449
8-4 Control Charts For Individual Measurements 456
8-5 Process Capability 461
8-6 Attribute Control Charts 465
8-7 Control Chart Performance 470
8-8 Measurement Systems Capability 473
APPENDICES 483
APPENDIX A Statistical Tables and Charts 485
APPENDIX B Bibliography 500
APPENDIX C Answers to Selected Exercises 502
INDEX 511