LEC # | TOPICS | LECTURE NOTES |
---|---|---|
I. The Logic of Certainty | ||
1-2 | I.1 Events and Boolean Operations I.2 Event Sequence Identification (Failure Modes and Effects Analysis; Hazard and Operability Analysis; Fault Tree Analysis; Event Tree Analysis) I.3 Coherent Structure Functions I.4 Minimal Cut (Path) Sets | Risk-Informed Operational Decision Management (RIODM): 1. Risk, Event Trees and Fault Trees (PDF)# 2. Reliability and Availability (PDF)# Structure Functions (PDF) Valve Test Example (PDF) |
II. Probability | ||
3-4 | II.1 Definitions and Interpretations (Axiomatic; Subjectivistic; Frequentistic) II.2 Basic Rules II.3 Theorem of Total Probability II.4 Bayes' Theorem | |
III. Random Variables and Distribution Functions | ||
5-6 | III.1 Discrete and Continuous Random Variables III.2 Cumulative Distribution Functions III.3 Probability Mass and Density Functions III.4 Moments III.5 Failure Models and Reliability III.6 Failure Rates | |
IV. Useful Probability Distributions | ||
7-8 | IV.1 Bernoulli Trials and the Binomial Distribution IV.2 The Poisson Distribution IV.3 The Exponential Distribution IV.4 The Normal and Lognormal Distributions IV.5 The Concept of Correlation | Basic Probabilistic Concepts (PDF) Convergence of Binomial and Normal Distributions for Large Numbers of Trials (PDF) Convergence of Binomial and Poisson Distributions in Limiting Case of n Large, p<<1 (PDF) Plane Crash Example (PDF) |
V. Multivariate Distributions | ||
9-10 | V.1 Joint and Conditional Distribution Functions V.2 Moments V.3 The Multivariate Normal and Lognormal Distributions | |
VI. Functions of Random Variables | ||
11-12 | VI.1 Single Random Variable VI.2 Multiple Random Variables VI.3 Moments of Functions of Random Variables VI.4 Approximate Evaluation of the Mean and Variance of a Function VI.5 Analytical Results for the Normal and Lognormal Distributions | |
VII. Statistical Methods | ||
13-14 | VII.1 Student's t-distribution VII.2 Chi-Squared Distribution VII.3 Hypothesis Testing | |
VIII. Elements of Statistics | ||
15 | VIII.1 Random Samples VIII.2 Method of Moments VIII.3 Method of Maximum Likelihood VIII.4 Probability Plotting | |
IX. Applications to Reliability | ||
16 | IX.1 Simple Logical Configurations (Series; Parallel; Standby Redundancy) IX.2 Complex Systems IX.3 Stress-Strength Interference Theory IX.4 Modeling of Loads and Strength IX.5 Reliability-Based Design IX.6 Elementary Markov Models | Failure, Repair, Maintenance (PDF)# Reliability and Availability (PDF) Operational Availability (PDF) |
X. Bayesian Statistics | ||
17 | X.1 Bayes' Theorem and Inference X.2 Conjugate Families of Distributions X.3 Comparison with Frequentist Statistics X.4 Elicitation and Utilization of Expert Opinions | Bayes' Theorem (PDF)# Bayesian Inference (PDF) |
XI. Monte Carlo Simulation | ||
18 | XI.1 The Concept of Simulation XI.2 Generation of Random Numbers XI.3 Generation of Jointly Distributed Random Numbers XI.4 Latin Hypercube Sampling XI.5 Examples from Risk and Reliability Assessment | |
XII. Probabilistic Risk Assessment of Complex Systems | ||
19-23 | XII.1 Risk Curves and Accident Scenario Identification XII.2 Event-Tree and Fault-Tree Analysis XII.3 Unavailability Theory of Repairable and Periodically Tested Systems XII.4 Dependent (Common-Cause) Failures XII.5 Human Reliability Models XII.6 Component Importance XII.7 Examples from Risk Assessments for Nuclear Reactors, Chemical Process Systems, and Waste Repositories | PRA: An Historical Perspective (PDF - 1.8 MB) (Courtesy of Prof. George Apostolakis. Used with permission.) PRA Structure and Results (PDF - 1.1 MB) Uncertainty (PDF)# Types of Uncertainty (PDF) Common Cause Failures 1 (PDF)# Common Cause Failures 2 (PDF) PRA in Managing Operations (PDF)# Engineered Safety Features (PDF)# Containment (PDF)# |