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Monte Carlo Schedule Analysis

Monte Carlo Schedule Analysis. The Concept, Benefits and Limitations. Intaver Institute Inc. 303, 6707, Elbow Drive S.W, Calgary, AB, Canada Tel: +1(403)692-2252 Fax: +1(403)459-4533 www.intaver.com. What is Monte Carlo Analysis?.

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Monte Carlo Schedule Analysis

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  1. Monte Carlo Schedule Analysis The Concept, Benefits and Limitations Intaver Institute Inc. 303, 6707, Elbow Drive S.W, Calgary, AB, Canada Tel: +1(403)692-2252 Fax: +1(403)459-4533 www.intaver.com

  2. What is Monte Carlo Analysis? Monte Carlo simulations is a mathematical method used in risk analysis. Monte Carlo simulations are used to approximate the distribution of potential results based on probabilistic inputs.

  3. Monte Carlo Simulations Monte Carlo simulations use distributions as inputs, which are also the results

  4. Monte Carlo Schedule Analysis Monte Carlo simulations take multiple distributions and create histograms to depict the results of the analysis

  5. Two Approaches to Estimating Probabilities • The relative frequency approach, where probability equals the number of occurrences of specific outcome (or event) divided by the total number of possible outcomes. • The subjective approach represents an expert’s degree of belief that a particular outcome will occur.

  6. Two of Approaches for Defining Uncertainties • Distribution-based approach • Event-based approach • Monte Carlo can be used to simulate the results of discrete risk events with probability and impact on multiple activities

  7. What Distribution Should Be Used? • Also useful for Monte Carlo simulations: • Lognornal • Beta

  8. Ignoring Base-Rate Frequencies • Historically, the probability that a particular component will be defective is 1%. • The component is tested before installation. • The test showed that the component is defective. • The test usually successfully identifies defective components 80% of the time. • What is the probability that a component is defective? The correct answer is close to 4%, however, most people would think that answer is a little bit lower than 80%.

  9. Role of Emotions Emotions can affect our judgment

  10. Eliciting Judgment About Probabilities of Single Events • Pose a direct question: “What is the probability that the project will be canceled due to budgetary problems?” • Ask the experts two opposing questions: (1) “What is the probability that the project will be canceled?” and (2) “What is the probability the project will be completed?” The sum of these two assessments should be 100%. • Break compound events into simple events and review them separately.

  11. Probability Wheel Use of visual aids like a probability wheel can aid in the increasing validity of estimates

  12. Eliciting Judgment: Probability Method

  13. Eliciting Judgment: Method of Relative Heights Plotting possible estimates on a histogram can help improve estimatesc

  14. How Many Trials Are Required? Huge number of trials (> 1000) usually does not increase accuracy of analysis • Incorporate rare events • Use convergence monitoring

  15. What Is The Chance That a Project Will Be on Time And Within Budget?

  16. Analysis of Monte Carlo Results • Sensitivity and Correlations • Critical Indices • Crucial tasks • Critical Risks • Probabilistic Calendars • Deadlines • Conditional Branching • Probabilistic Branching • Chance of Task Existence

  17. Crucial Tasks Crucial tasks for project duration Monte Carlo analysis identifies task cruciality, how often tasks are on the critical path.

  18. Critical Risks

  19. Conditional Branching

  20. Monte Carlo and Critical Chain Monitoring Project Buffer

  21. Tracking Chance of Project Meeting a Deadline

  22. When Monte Carlo Is Useful • You have reliable historical data • You have tools to track actual data for each phase of the project • You have a group of experts who understand the project, have experience in similar projects, and are trained to avoid cognitive and motivational biases

  23. Future Reading Lev Virine and Michael Trumper Project Decisions: The Art and Science Management Concepts, Vienna, VA, 2007 Project Think: Why Good Managers Make Poor Project Choices Gower, 2013

  24. Questions?

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