Accendo Reliability https://fred-schenkelberg-project.prev01.rmkr.net/podcast/the-reliability-fm-network/time-failure-data-analysis-factory-equipment/ Thu, 28 Sep 2023 18:39:35 +0000 en-US hourly 1 https://wordpress.org/?v=6.6.2 © 2025 FMS Reliability Illuminated Reliability Engineering Knowledge Accendo Reliability Illuminated Reliability Engineering Knowledge Accendo Reliability fms@fmsreliability.com No Time to Failure Data Analysis for Your Factory Equipment https://fred-schenkelberg-project.prev01.rmkr.net/podcast/the-reliability-fm-network/time-failure-data-analysis-factory-equipment/ https://fred-schenkelberg-project.prev01.rmkr.net/podcast/the-reliability-fm-network/time-failure-data-analysis-factory-equipment/#respond Wed, 12 Oct 2016 19:45:41 +0000 http://accendoreliability.com/?post_type=podcast&p=57208 Time to Failure Data Analysis for Your Factory Equipment We have data. Often, an abundance of data concerning equipment failures. Failures per month or MTBF-type measures do not reveal sufficient insights to understand the pattern of failures. We need to know if the rate of failures is increasing or not and if the maintenance program […]

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Time to Failure Data Analysis for Your Factory Equipment

We have data. Often, an abundance of data concerning equipment failures. Failures per month or MTBF-type measures do not reveal sufficient insights to understand the pattern of failures.

We need to know if the rate of failures is increasing or not and if the maintenance program is helping or hurting the equipment long term. We must understand the pattern of failures to align our maintenance strategy properly.

Let’s explore two ways to use the time to failure data you already have available (or should have). For repairable items, the mean cumulative function and associated plots provide you with an estimate of the effectiveness of your repairs. Are repairs restoring the system to ‘good-as-new’ condition, ‘bad-as-old’, or somewhere in between?

This Accendo Reliability webinar originally broadcast on 11 October 2016.



To view the recorded webinar and slides, visit the webinar page.

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Collecting and Analyzing Your Field Data

Let’s explore where the data comes from and how to prepare for analysis. Plus, let’s discuss some ways to look at your data initially.

Time to Failure Data Analysis for Your Factory Equipment

For repairable items, the mean cumulative function and associated plots provide you with an estimate of the effectiveness of your repairs.

Reliability Data

We will discuss the pros and cons of various sources. Plus, let’s examine a few ways to use simulations or models.

Fundamentals of Weibull Analysis

The Weibull distribution is a versatile tool to analyze time to failure data. Like any tool, it could be wielded well or not so well.

Fundamentals of Field Data Analysis

The design is done, the assembly process is working, now we can focus on answering the question: is the product hitting reliability targets?

Weibull Probability Plotting

Data is only as useful as the information you derive. So would you like to take your Weibull probability plotting skills to the next level?

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Overview of Life Testing in Minitab

Minitab itself has many reliability functions available; this presentation covers the basics, including distributions, censoring, and fitting.

The Survivorship Bias Principal

This webinar examines an important perspective. Its’ so simple and has made many heroes in the data analysis world since Abraham Ward.

So what is up with this ‘Bayesian’ analysis stuff

Some of you may have heard of ‘Bayesian analysis.’ You may think this is something fancy that only universities do.

Reliability Analysis … now what? Part 2

Let's take a closer look at the concept of likelihood and it's role in an MCMC analysis. A powerful tool for data analysis.

Reliability Analysis … now what? Part 3

This webinar is about how we use this thing called Markov Chain Monte Carlo Simulation (MCMC) to create this ‘posse.’

Reliability Analysis … now what? Part 4

We show you how to get your computer to help you give useful reliability information to your boss, manager, director, or whoever.

Fundamentals of Interpreting Test Results

To create test results that are meaningful, we need to both design and execute the test well, then, interpret the results accurately.

How to Take the Guess Work out of Expert Judgment

there are ways you can suck out information from a group of experts in a quantifiable and remarkably accurate way.

What do you see in a ‘Probability’ Plot?

A Weibull plot is a really useful way of quickly ‘looking’ at data and being able to ‘see’ really useful things.

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What is WeiBayes Analysis?

WeiBayes is useful, and there are quite a few catches. Interested in learning about Weibayes analysis? Join us for this webinar.

Using Monte Carlo Simulation

Sometimes the equations we need to model reliability are just so complicated that we simply avoid them. Let's use Monte Carlo instead.

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