Shortened the FMEDA entry in fmmd_concept and
placed full version in survey.tex Put bayes theorem into survey.tex Need better refs for it
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@ -317,7 +317,7 @@ FMEA described in this section (\ref{pfmea}) is sometimes called `production FME
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\subsection{FMECA}
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\subsection{FMECA}
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Failure mode, effects, and criticality analysis (FMECA) extends FMEA.
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Failure mode, effects, and criticality analysis (FMECA) extends FMEA adding a criticallity factor.
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This is a bottom up methodology, which takes component failure modes
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This is a bottom up methodology, which takes component failure modes
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and traces them to the SYSTEM level failures.
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and traces them to the SYSTEM level failures.
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%
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%
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@ -359,12 +359,13 @@ Again this essentially produces a prioritised `todo' list.
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\begin{itemize}
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\begin{itemize}
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\item Possibility to miss the effects of failure modes at SYSTEM level.
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\item Possibility to miss the effects of failure modes at SYSTEM level.
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\item Possibility to miss environmental affects.
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\item Possibility to miss environmental affects.
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\item The $\beta$ factor is based on heuristics and does not reflect any rigourous calculations.
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\item Complex component interaction effects can be missed.
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\item Complex component interaction effects can be missed.
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\item No possibility to model base component level double failure modes.
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\item No possibility to model base component level double failure modes.
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\end{itemize}
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\end{itemize}
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\subsection { FMEDA or Statistical Analyis }
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\subsection { FMEDA }
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Failure Modes, Effects, and Diagnostic Analysis (FMEDA)
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Failure Modes, Effects, and Diagnostic Analysis (FMEDA)
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% This
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% This
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@ -34,6 +34,99 @@ presents the design considerations that motivated and provided the specification
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the FMMD methodology.
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the FMMD methodology.
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%
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%
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\section{Introduction}
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\subsection{Failure Modes and System Failure Symptoms}
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describe briefly what a base component failure mode is and what a system level failure mode is.
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\subsection{Bayes Theorm in Relation to Failure Modes}
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\paragraph{Conditional Probability}
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Bayes theorem describes the probability of causes.
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In the context of failure modes in components
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we are interested in how they may affect a SYSTEM.
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The SYSTEM failure modes can be seen as symptoms of the failure modes of base
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components.
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For example, let $B$ be a base component failure mode
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abd let $S$ be a system level failure mode.
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We can say that the conditional probability of $S$ given $B$ is denoted as
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\begin{equation}
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\label{eqn:bayes1}
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P(S|B) = P(S \cap B) / P(S)
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\end{equation}
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Or in other words we can say that the probability of $B$ and $S$ occurring
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divided by the probability of $S$ occurring due to any cause, is the probability
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the $B$ caused $S$. We can call this the {\em conditional probability} of $S$ given $B$.
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Re-arranging \ref{eqn:bayes1}
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$$ P(S|B) P(S) = P(S \cap B) $$
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\paragraph{Multiple Events and conditional Probability}
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\paragraph{Bayes Theorem}
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Consider a SYSTEM error that has several potential base component causes.
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Because a SYSTEM typically has a number of high level errors let us consider
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a specific one and label it $S_k$.
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We can call $P(S_k)$ the prior probability of the SYSTEM error. That is to
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say the iprobability od $S_k$ occuring with no information about possible causes for it.
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Consider a number of possible
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base component `potential cause' events as $B_n$ where $n$ is an index.
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Our sample space $SS$, for investigating the system failure mode/symptom
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$S_k$ is thus $ SS = \{B_1 ... B_n\} $.
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Thus if B is any event, we can apply bayes theorem
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to determine the statistical likelihood that a given failure mode $B_n$
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will cause the system level error $S_k$
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IN ENGLEEEESH Inverse causality.....
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Prob $B_n$ caused $S_k$ is the prob $S_k$ caused by $B_n$ divided by prob of $B_n$
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$$
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P(S_k|B_n) = \frac{P(S_k) \; P(B_n | S_k) }{P(B_n)}
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%P(B|S_k) = \frac{P(S_k | B)\, P(B)}{P(S_k)}
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$$
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%%% because the probability of $B_n$ in the sample space SS
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%%%is the sum of all probabilities off all failure modes in the indexed set $SS$
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%%%multiplied by the probability of each failure mode causing
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%%%the system failure mode $S_k$.
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%%%
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%%%$$
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%%%P(B_n) = {\sum_j^n P(B_j \cap S_k)} = {\sum_j^n P(B_n|A_i) P(A_i)}
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%%%$$
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%%%
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%%%we can express this as
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%%%\begin{equation}
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%%%\label{eqn:bayes2}
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%%% P(S_k|B) = \frac{P(S_k) \; P(B_n|S_k)}{ \sum__{j=1}^{n} P(B_j)P(S_k | B_j). }
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%%%\end{equation}
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RESTRICTIONS:
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Because this uses conditional probability for multiple independent events
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complications such as operational states or environmental conditions
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cannot be represented by the Bayesian model.
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% consider 747 engines and a volcanic ash cloud....
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\subsubsection{Proportional area Euler diagram example}
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show using area propostional Euler Diagrams the failure modes and their
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possible sdystem level failure outcomes.
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Discuss unused sections of hardware in a product.
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Discuss protection devices like VDR's and capacitors for smoothing
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Discuss microprocessor watchdog and CRC ROM schemes
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Discuss hardware failsafes (good example over pressure saefty values).
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Keep relating these back to bayes theorem.
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\section {Four Current Failure Mode Analysis Methodologies}
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\subsection { FTA }
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\subsection { FTA }
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This, like all top~down methodologies introduces the very serious problem
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This, like all top~down methodologies introduces the very serious problem
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@ -98,7 +191,7 @@ FMEA described in this section (\ref{pfmea}) is sometimes called `production FME
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\subsection{FMECA}
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\subsection{FMECA}
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Failure mode, effects, and criticality analysis (FMECA) extends FMEA.
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Failure mode, effects, and criticality analysis (FMECA) extends FMEA and adds a failure outcome criticallity factor.
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This is a bottom up methodology, which takes component failure modes
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This is a bottom up methodology, which takes component failure modes
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and traces them to the SYSTEM level failures.
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and traces them to the SYSTEM level failures.
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%
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%
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@ -139,6 +232,7 @@ Again this essentially produces a prioritised `todo' list.
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\subsubsection{ FMECA weaknesses }
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\subsubsection{ FMECA weaknesses }
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\begin{itemize}
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\begin{itemize}
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\item Possibility to miss the effects of failure modes at SYSTEM level.
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\item Possibility to miss the effects of failure modes at SYSTEM level.
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\item The $\beta$ factor is based on heuristics and does not reflect any rigourous calculations.
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\item Possibility to miss environmental affects.
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\item Possibility to miss environmental affects.
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\item No possibility to model base component level double failure modes.
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\item No possibility to model base component level double failure modes.
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\end{itemize}
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\end{itemize}
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