投稿日:2025年1月13日

Fundamentals of Weibull analysis and practical application of reliability prediction and verification

Understanding Weibull Analysis

Weibull analysis is a vital statistical tool used to assess product reliability and life data analysis.
Named after the Swedish engineer Waloddi Weibull, this analysis helps predict the time until failure for various products and processes.
It plays a crucial role in industries such as manufacturing, aerospace, automotive, and electronics, where understanding reliability is key to improving product designs and ensuring customer satisfaction.

Weibull analysis uses the Weibull distribution, a versatile probability distribution commonly used for modeling life data.
This distribution can take different shapes, allowing it to represent a wide range of life behaviors such as decreasing, constant, and increasing failure rates.
In essence, Weibull analysis provides insights into how and when items will fail in a predictable manner.

Components of Weibull Analysis

To effectively use Weibull analysis, it is important to understand its essential components:

Shape Parameter (Beta, β)

The shape parameter, often denoted as β, determines the failure rate behavior of a product.
When β is less than 1, it indicates a decreasing failure rate, typically representing wear-out failures.
If β equals 1, it implies a constant failure rate, commonly seen in randomly occurring failures such as electronic component malfunctions.
When β is greater than 1, it represents an increasing failure rate, which is typical in fatigue-related failures.

Scale Parameter (Eta, η)

The scale parameter, denoted as η, provides a measure of the expected life of a product.
It is essentially the point at which 63.2% of items will have failed, offering a time scale for the distribution.
The higher the η value, the more reliable the product is expected to be.

Location Parameter (Gamma, γ)

Although less frequently used, the location parameter, γ, shifts the Weibull distribution along the time axis.
It is employed when failure does not begin immediately and there is a period where the product reliably operates without failures.
In many practical applications, the location parameter is set to zero, simplifying the analysis.

Conducting Weibull Analysis

Performing a Weibull analysis involves several steps to ensure accurate reliability predictions.

Data Collection

The process begins with collecting relevant life data from product testing or field data.
This includes the time-to-failure for each component or system being analyzed.
Reliable data sources improve the accuracy of the analysis, giving a more precise reliability prediction.

Data Plotting

Once data is collected, it is plotted on a Weibull probability plot.
This is a specific type of plot that linearizes the Weibull distribution, making it easier to assess whether the data follows a Weibull distribution.
If the data points form a straight line, it confirms that the Weibull model is appropriate.

Parameter Estimation

Estimating the Weibull parameters (β, η, and optionally γ) is the next crucial step.
There are several methods to determine these parameters, including graphical estimation through a Weibull plot, maximum likelihood estimation (MLE), and least squares estimation.
Each method has its own advantages and is selected based on the specific requirements of the analysis.

Model Validation

After estimating the parameters, it’s essential to validate the Weibull model to ensure its accuracy.
This can be done through goodness-of-fit tests or by comparing the model’s predictions with additional data or known benchmarks.
Validation helps confirm that the model provides a realistic representation of failure behavior.

Applications of Weibull Analysis

Weibull analysis finds applications across various industries:

Product Development

During product development, Weibull analysis helps identify weaknesses in design and materials.
By understanding potential failure modes, engineers can make informed decisions to enhance product reliability before it reaches the market.

Maintenance Planning

Maintenance strategies greatly benefit from Weibull analysis by predicting when equipment is likely to fail.
This allows for proactive maintenance scheduling, reducing downtime and maintenance costs.

Warranty Analysis

Manufacturers utilize Weibull analysis to establish warranty periods that align with expected product lifespan.
By aligning warranty terms with predicted failure rates, companies can minimize costs associated with warranty claims.

Quality Control

Weibull analysis aids in assessing the quality of manufacturing processes.
It helps detect deviations from expected failure rates, highlighting areas where improvements in production may be needed.

Conclusion

Weibull analysis is an indispensable tool for understanding and predicting reliability in products and processes.
With its flexibility and the insights it provides into failure rates, it supports industries in enhancing product quality, reducing maintenance costs, and managing warranties effectively.
Whether it’s in design, manufacturing, or field operations, the strategic application of Weibull analysis leads to informed decisions that optimize reliability and achieve customer satisfaction.

資料ダウンロード

QCD調達購買管理クラウド「newji」は、調達購買部門で必要なQCD管理全てを備えた、現場特化型兼クラウド型の今世紀最高の購買管理システムとなります。

ユーザー登録

調達購買業務の効率化だけでなく、システムを導入することで、コスト削減や製品・資材のステータス可視化のほか、属人化していた購買情報の共有化による内部不正防止や統制にも役立ちます。

NEWJI DX

製造業に特化したデジタルトランスフォーメーション(DX)の実現を目指す請負開発型のコンサルティングサービスです。AI、iPaaS、および先端の技術を駆使して、製造プロセスの効率化、業務効率化、チームワーク強化、コスト削減、品質向上を実現します。このサービスは、製造業の課題を深く理解し、それに対する最適なデジタルソリューションを提供することで、企業が持続的な成長とイノベーションを達成できるようサポートします。

オンライン講座

製造業、主に購買・調達部門にお勤めの方々に向けた情報を配信しております。
新任の方やベテランの方、管理職を対象とした幅広いコンテンツをご用意しております。

お問い合わせ

コストダウンが利益に直結する術だと理解していても、なかなか前に進めることができない状況。そんな時は、newjiのコストダウン自動化機能で大きく利益貢献しよう!
(Β版非公開)

You cannot copy content of this page