ARA Module 8 – Accelerated Life Testing
of the Applied Reliability Analysis Course
Using Reliasoft Weibull++
This module covers the planning and analysis of Accelerated Life Tests (ALT). ALT is a useful methodology for obtaining failure information in less time than it takes for tests performed at normal use conditions. Quantitative ALTs allow the estimation of reliability statistics at normal use conditions based on failures observes at various stress conditions. While more complex than regular reliability tests, they can yield useful information is significantly less time.
A little background, motivation, full course overview, and a welcome from the instructor, Steven Wachs
Training Objectives
The key training full course objectives are summarized below (highlighted objectives relate to this module)
- Understand reliability concepts and unique aspects of reliability data
- Understand underlying probability and statistical concepts for reliability analysis
- Develop competency in the modeling and analysis of time-to-failure data
- Use and interpret probability plots for distribution fitting
- Understand reliability metrics and how to estimate and report them
- Handle multiple failure modes in reliability estimation
- Utilize degradation Data and models to predict failure times for life data analysis
- Use nonparametric estimation methods when appropriate
- Determine if reliability specifications are met (at specified confidence level) or whether design improvements are required
- Estimate estimate uncertainty using confidence intervals and bounds
- Estimate reliability of subsystems and systems
- Handle basic series and parallel systems
- Become aware of system reliability activities such as Reliability Block diagramming, Reliability importance, and Reliability allocation
- Develop competency in the planning of reliability tests (sample sizes)
- Use simulation to support estimation test planning
- Develop reliability demonstration test plans (testing time vs. number of units tradeoffs)
- Analyze existing warranty data to predict future returns
- Analyze data from Accelerated Life Tests to estimate reliability at normal use conditions (single stress, multiple stress, time-varying stress models)
- Plan Accelerated Life tests (sample sizes, determination of test stress combinations, allocation of units to stress levels)
- Incorporate degradation data modeling into Accelerated Life Test analysis
- Perform stress-strength analysis using analytical methods, software, and simulation
- Model reliability from binary response data (i.e. pass/fail)
- Analyze repair data from repairable systems to predict the number of failures over time, conditional reliability, and failure rates
- Develop proficiency in the use of Reliasoft Weibull++ for Reliability analyses
Leave a Reply