\ifthenelse {\boolean{paper}} { \abstract{ This paper defines %what is meant by the terms components, derived~components, functional~groups, component fault modes and `unitary~state' component fault modes. %The application of Bayes theorem in current methodologies, and %the suitability of the `null hypothesis' or `P' value statistical approach %are discussed. The general concept of the cardinality constrained powerset is introduced and calculations for it described, and then for calculations under `unitary state' fault mode conditions. Data types and their relationships are described using UML. Mathematical constraints and definitions are made using set theory.} } { \section{Overview} This chapter defines %what is meant by the terms components, derived~components, functional~groups, component fault modes and `unitary~state' component fault modes. The general concept of the cardinality constrained powerset is introduced and calculations for it described, and then for calculations under `unitary state' fault mode conditions. Data types and their relationships are described using UML. Mathematical constraints and definitions are made using set theory. } \section{Introduction} This \ifthenelse {\boolean{paper}} { paper } { chapter } describes the data types and concepts for the Failure Mode Modular De-composition (FMMD) method. When analysing a safety critical system using this methodology, we need clearly defined failure modes for all the components that are used to model the system. In our model, we have a constraint that the component failure modes must be mutually exclusive. When this constraint is complied with, we can use the FMMD method to build hierarchical bottom-up models of failure mode behaviour. %This and the definition of a component are %described in this chapter. %When building a system from components, %we should be able to find all known failure modes for each component. %For most common electrical and mechanical components, the failure modes %for a given type of part can be obtained from standard literature~\cite{mil1991} %\cite{mech}. %The failure modes for a given component $K$ form a set $F$. \label{defs} %% %% Paragraph component and its relationship to its failure modes %% \section{ Defining the term Component } \begin{figure}[h] \centering \includegraphics[width=300pt,bb=0 0 437 141,keepaspectratio=true]{component_failure_modes_definition/component.jpg} % component.jpg: 437x141 pixel, 72dpi, 15.42x4.97 cm, bb=0 0 437 141 \caption{A Component and its Failure Modes} \label{fig:component} \end{figure} Let us first define a component. %This is anything with which we use to build a product or system. This is anything we use to build a product or system. It could be something quite complicated like an integrated microcontroller, or quite simple like the humble resistor. We can define a component by its name, a manufacturers' part number and perhaps a vendors' reference number. What these components all have in common is that they can fail, and fail in a number of well defined ways. For common components there is established literature for the failure modes for the system designer to consider (often with accompanying statistical failure rates)~\cite{mil1991}. For instance, a simple resistor is generally considered to fail in two ways, it can go open circuit or it can short. Thus we can associate a set of faults to this component $ResistorFaultModes=\{OPEN, SHORT\}$. The UML diagram in figure \ref{fig:component} shows a component as a data structure with its associated failure modes. From this diagram we see that each component must have at least one failure mode. To clearly show that the failure modes are mutually exclusive states, or unitary states associated with one component, each failure mode is referenced back to only one component. %%-%% MTTF STATS CHAPTER MAYBE ?? %%-%% %%-%% This modelling constraint is due to the fact that even generic components with the same %%-%% failure mode types, may have different statistical MTTF properties within the same %%-%% circuitry\footnote{For example, consider resistors one of high resistance and one low. %%-%% The generic failure modes for a resistor will be the same for both. %%-%% The lower resistance part will draw more current and therefore have a statistically higher chance of failure.}. A product naturally consists of many components and these are traditionally kept in a `parts list'. For a safety critical product this is usually a formal document and is used by quality inspectors to ensure the correct parts are being fitted. The parts list is shown for completeness here, as people involved with Printed Circuit Board (PCB) and electronics production, verification and testing would want to know where it lies in the model. The parts list is not actively used in the FMMD method. For the UML diagram in figure \ref{fig:componentpl} the parts list is simply a collection of components. \begin{figure}[h] \centering \includegraphics[width=400pt,bb=0 0 712 68,keepaspectratio=true]{component_failure_modes_definition/componentpl.jpg} % componentpl.jpg: 712x68 pixel, 72dpi, 25.12x2.40 cm, bb=0 0 712 68 \caption{Parts List of Components} \label{fig:componentpl} \end{figure} Components in the parts list % (bought in parts) will be termed `base~components'. Components derived from base~components will not always require parts~numbers\footnote{It is common practise for sub assemblies, PCB's, mechanical parts, software modules and some collections of components to have part numbers. This is a production/configuration~control issue and linked to Bill of Material (BOM) database structures etc. Parts numbers for derived components are not directly related to the analysis process we are concerned with here.}, and will not require a vendor reference, but must be named locally in the FMMD model. We can term `modularising a system', to mean recursively breaking it into smaller sections for analysis. When modularising a system from the top~down, as in Fault Tree Analysis~\cite{nasafta}\cite{nucfta} (FTA), it is common to term the modules identified as sub-systems. When building from the bottom up, it is more meaningful to call them `derived~components'. %% %% Paragraph using failure modes to build from bottom up %% \section{Fault Mode Analysis, top down or bottom up?} Traditional static fault analysis methods work from the top down. They identify faults that can occur in a system, and then work down to see how they could be caused. Some apply statistical techniques to determine the likelihood of component failures causing specific system level errors. For example, Bayes theorem \ref{bayes}, the relation between a conditional probability and its reverse, can be applied to specific failure modes in components and the probability of them causing given system level errors. Another top down methodology is to apply cost benefit analysis to determine which faults are the highest priority to fix~\cite{bfmea}. The aim of FMMD analysis is to produce complete failure models of safety critical systems from the bottom-up, starting, where possible with known base~component failure~modes. An advantage of working from the bottom up is that we can ensure that all component failure modes must be considered. A top down approach can miss individual failure modes of components~\cite{faa}[Ch.~9], especially where they are non obvious top-level faults. In order to analyse from the bottom-up, we need to take small groups of components from the parts~list that naturally work together to perform a simple function. The components to include in a {\fg} are chosen by a human, the analyst. %We can represent the `Functional~Group' as a class. When we have a `{\fg}' we can look at the components it contains, and from this determine the failure modes of all the components that belong to it. % % and determine a failure mode model for that group. % % expand 21sep2010 %The `{\fg}' as used by the analyst is a collection of component failures modes. The analysts interest is the ways in which the components within the {\fg} can fail. All the failure modes of all the components within an {\fg} are collected. As each component mode holds a set of failure modes, these set of sets of failure modes is converted into into a flat set of failure modes (i.e. a set containg just containg failure modes not sets of failure mosdes). % Each of these failure modes, and optionally combinations of them, are formed into `test cases' which are analysed for their effect on the failure mode behaviour of the `{\fg}'. % Once we have the failure mode behaviour of the {\fg}, we can determine a new set of failure modes, the derived failure modes of the `{\fg}'. % Or in other words we can determine how the `{\fg}' can fail. We can now consider the {\fg} as a sort of super component with its own set of failure modes. \subsection{From functional group to newly derived component} \label{fg} The process for taking a {\fg}, considering all the failure modes of all the components in the group, and analysing it is called `symptom abstraction'. \ifthenelse {\boolean{paper}} { } { This is dealt with in detail in chapter \ref{symptom_abstraction}. } % define difference between a \fg and a \dc A {\fg} is a collection of components, a {\dc} is a new `theorectical' component which has a set of failure modes, which correspond to the failure modes of the {\fg} it was derived from. We could consider a {\fg} as a black box, or component to use, and in this case it would have a set of failure modes. Looking at the {\fg} in this way is seeing it as a {\dc}. In terms of our UML model, the symptom abstraction process takes a {\fg} and creates a new {\dc} from it. %To do this it first creates %a new set of failure modes, representing the fault behaviour %of the functional group. This is a human process and to do this the analyst %must consider all the failure modes of the components in the functional %group. The newly created {\dc} requires a set of failure modes of its own. These failure modes are the failure mode behaviour of the {\fg} from which it was derived. % Because these new failure modes were derived from a {\fg}, we can call these `derived~failure~modes'. %It then creates a new derived~component object, and associates it to this new set of derived~failure~modes. We thus have a `new' component, or system building block, but with a known and traceable fault behaviour. The UML representation (in figure \ref{fig:cfg}) shows a `functional group' having a one to one relationship with a derived~component. The symbol $\bowtie$ is used to indicate the analysis process that takes a functional group and converts it into a new component. with $\mathcal{FG}$ represeting the set of all functional groups, and $\mathcal{DC}$ the set of all derived components, this can be expresed as $ \bowtie : \mathcal{FG} \rightarrow \mathcal{DC} $ . \begin{figure}[h] \centering \includegraphics[width=400pt,bb=0 0 712 286,keepaspectratio=true]{./component_failure_modes_definition/cfg.jpg} % cfg.jpg: 712x286 pixel, 72dpi, 25.12x10.09 cm, bb=0 0 712 286 \caption{UML Meta model for FMMD hierarchy} \label{fig:cfg} \end{figure} \subsection{Keeping track of the derived components position in the hierarchy} \label{alpha} The UML meta model in figure \ref{fig:cfg}, shows the relationships between the classes and sub-classes. Note that because we can use derived components to build functional groups, this model intrinsically supports building a hierarchy. % In use we will build a hierarchy of objects, with derived~components forming functional~groups, and creating derived components higher up in the structure. % To keep track of the level in the hierarchy (i.e. how many stages of component derivation `$\bowtie$' have lead to the current derived component) we can add an attribute to the component data type. This can be a natural number called the level variable $\alpha \in \mathbb{N}$. % J. Howse says zero is a given in comp sci. This can be a natural number called the level variable $\alpha \in \mathbb{N}_0$. The $\alpha$ level variable in each component, indicates the position in the hierarchy. Base or parts~list components have a `level' of $\alpha=0$. % I do not know how to make this simpler Derived~components take a level based on the highest level component used to build the functional group it was derived from plus 1. So a derived component built from base level or parts list components would have an $\alpha$ value of 1. %\clearpage % \section{Set Theory Description} % % $$ System \stackrel{has}{\longrightarrow} PartsList $$ % % $$ PartsList \stackrel{has}{\longrightarrow} Components $$ % % $$ Component \stackrel{has}{\longrightarrow} FailureModes $$ % % $$ FunctionalGroup \stackrel{has}{\longrightarrow} Components $$ % % Using the symbol $\bowtie$ to indicate an analysis process that takes a % functional group and converts it into a new component. % % $$ \bowtie ( FG ) \rightarrow DerivedComponent $$ % \subsection{Relationships between functional~groups and failure modes} Let the set of all possible components be $\mathcal{C}$ and let the set of all possible failure modes be $\mathcal{F}$ and $\mathcal{PF}$ is the powerset of all $\mathcal{F}$. We can define a function $fm$ as equation \ref{eqn:fmset}. \label{fmdef} \begin{equation} fm : \mathcal{C} \rightarrow \mathcal{P}\mathcal{F} \label{eqn:fmset} \end{equation} %% % Above def gives below anyway % %The is defined by equation \ref{eqn:fminstance}, where C is a component and F is a set of failure modes. % %\begin{equation} % fm ( C ) = F % \label{eqn:fminstance} %\end{equation} \paragraph{Finding all failure modes within the functional group} For FMMD failure mode analysis we need to consider the failure modes from all the components in a functional~group. In a functional group we have a collection of Components that hold failure mode sets. We need to collect these failure mode sets and place all the failure modes into a single set; this can be termed flattening the set of sets. %%Consider the components in a functional group to be $C_1...C_N$. The flat set of failure modes $FSF$ we are after can be found by applying function $fm$ to all the components in the functional~group and taking the union of them thus: %%$$ FSF = \bigcup_{j=1}^{N} fm(C_j) $$ $$ FSF = \bigcup_{c \in FG} fm(c) $$ We can actually overload the notation for the function $fm$ % FM and define it for the set components within a functional group $\mathcal{FG}$ (i.e. where $\mathcal{FG} \subset \mathcal{C} $) in equation \ref{eqn:fmoverload}. \begin{equation} fm : \mathcal{FG} \rightarrow \mathcal{F} \label{eqn:fmoverload} \end{equation} \section{Unitary State Component Failure Mode sets} \paragraph{Design Descision/Constraint} An important factor in defining a set of failure modes is that they should represent the failure modes as simply and minimally as possible. It should not be possible, for instance, for a component to have two or more failure modes active at once. Were this to be the case, we would have to consider additional combinations of failure modes within the component. Having a set of failure modes where $N$ modes could be active simultaneously would mean having to consider an additional $2^N-1$ failure mode scenarios. Should a component be analysed and simultaneous failure mode cases exist, the combinations could be represented by new failure modes, or the component should be considered from a fresh perspective, perhaps considering it as several smaller components within one package. This property, failure modes being mutually exclusive, is termed `unitary state failure modes' in this study. This corresponds to the `mutually exclusive' definition in probability theory~\cite{probstat}. \begin{definition} A set of failure modes where only one failure mode can be active at one time is termed a {\textbf{unitary~state}} failure mode set. \end{definition} Let the set of all possible components be $ \mathcal{C}$ and let the set of all possible failure modes be $ \mathcal{F}$. The set of failure modes of a particular component are of interest here. What is required is to define a property for a set of failure modes where only one failure mode can be active at a time; or borrowing from the terms of statistics, the failure mode being an event that is mutually exclusive with a set $F$. We can define a set of failure mode sets called $\mathcal{U}$ to represent this property for a set of failure modes.. \begin{definition} We can define a set $\mathcal{U}$ which is a set of sets of failure modes, where the component failure modes in each of its members are unitary~state. Thus if the failure modes of a component $F$ are unitary~state, we can say $F \in \mathcal{U}$ is true. \end{definition} \section{Component failure modes: Unitary State example} An example of a component with an obvious set of ``unitary~state'' failure modes is the electrical resistor. Electrical resistors can fail by going OPEN or SHORTED. For a given resistor R we can apply the function $fm$ to find its set of failure modes thus $ fm(R) = \{R_{SHORTED}, R_{OPEN}\} $. A resistor cannot fail with the conditions open and short active at the same time! The conditions OPEN and SHORT are thus mutually exclusive. Because of this, the failure mode set $F=fm(R)$ is `unitary~state'. Thus because both fault modes cannot be active at the same time, the intersection of $ R_{SHORTED} $ and $ R_{OPEN} $ cannot exist. The intersection of these is therefore the empty set, $ R_{SHORTED} \cap R_{OPEN} = \emptyset $, therefore $ fm(R) \in \mathcal{U} $. We can make this a general case by taking a set $F$ (with $f_1, f_2 \in F$) representing a collection of component failure modes. We can define a boolean function {\ensuremath{\mathcal{ACTIVE}}} that returns whether a fault mode is active (true) or dormant (false). We can say that if any pair of fault modes is active at the same time, then the failure mode set is not unitary state: we state this formally \begin{equation} \exists f_1,f_2 \in F \dot ( f_1 \neq f_2 \wedge \mathcal{ACTIVE}({f_1}) \wedge \mathcal{ACTIVE}({f_2}) ) \implies F \not\in \mathcal{U} \end{equation} % % \begin{equation} % c1 \cap c2 \neq \emptyset | c1 \neq c2 \wedge c1,c2 \in C \wedge C \not\in U % \end{equation} That is to say that it is impossible that any pair of failure modes can be active at the same time for the failure mode set $F$ to exist in the family of sets $\mathcal{U}$. Note where there are more than two failure~modes, by banning any pairs from being active at the same time, we have banned larger combinations as well. \subsection{Design Rule: Unitary State} All components must have unitary state failure modes to be used with the FMMD methodology, for base~components, this is usually the case. Most simple components fail in one clearly defined way and generally stay in that state. However, where a complex component is used, for instance a microcontroller with several modules that could all fail simultaneously, a process of reduction into smaller theoretical components will have to be made. This is sometimes termed `heuristic~de-composition'. A modern microcontroller will typically have several modules, which are configured to operate on pre-assigned pins on the device. Typically voltage inputs (\adcten / \adctw), digital input and outputs, PWM (pulse width modulation), UARTs and other modules will be found on simple cheap microcontrollers~\cite{pic18f2523}. For instance the voltage reading functions which consist of an ADC multiplexer and ADC can be considered to be components inside the microcontroller package. The microcontroller thus becomes a collection of smaller components that can be analysed separately~\footnote{It is common for the signal paths in a safety critical product to be traced, and when entering a complex component like a micro controller, the process of heuristic de-compostion applied to it}. \paragraph{Reason for Constraint} Were this constraint to not be applied each component could not have $N$ failure modes to consider but potentially $2^N$. This would make the job of analysing the failure modes in a {\fg} impractical due to the sheer size of the task. %%- Need some refs here because that is the way gastec treat the ADC on microcontroller on the servos \section{Handling Simultaneous Component Faults} For some integrity levels of static analysis, there is a need to consider not only single failure modes in isolation, but cases where more then one failure mode may occur simultaneously. Note that the `unitary state' conditions apply to failure modes within a component. The scenarios presented here are where two or more components fail simultaneously. It is an implied requirement of EN298~\cite{en298} for instance to consider double simultaneous faults\footnote{This is under the conditions of LOCKOUT in an industrial burner controller that has detected one fault already. However, from the perspective of static failure mode analysis, this amounts to dealing with double simultaneous failure modes.}. To generalise, we may need to consider $N$ simultaneous failure modes when analysing a functional group. This involves finding all combinations of failures modes of size $N$ and less. %The Powerset concept from Set theory is useful to model this. The powerset, when applied to a set S is the set of all subsets of S, including the empty set \footnote{The empty set ( $\emptyset$ ) is a special case for FMMD analysis, it simply means there is no fault active in the functional~group under analysis.} and S itself. In order to consider combinations for the set S where the number of elements in each subset of S is $N$ or less, a concept of the `cardinality constrained powerset' is proposed and described in the next section. %\pagebreak[1] \subsection{Cardinality Constrained Powerset } \label{ccp} A Cardinality Constrained powerset is one where subsets of a cardinality greater than a threshold are not included. This threshold is called the cardinality constraint. To indicate this, the cardinality constraint $cc$ is subscripted to the powerset symbol thus $\mathcal{P}_{cc}$. Consider the set $S = \{a,b,c\}$. The powerset of S: $$ \mathcal{P} S = \{ \emptyset, \{a,b,c\}, \{a,b\},\{b,c\},\{c,a\},\{a\},\{b\},\{c\} \} .$$ $\mathcal{P}_{\le 2} S $ means all non-empty subsets of S where the cardinality of the subsets is less than or equal to 2 or less. $$ \mathcal{P}_{\le 2} S = \{ \{a,b\},\{b,c\},\{c,a\},\{a\},\{b\},\{c\} \} . $$ Note that $\mathcal{P}_{1} S $ (non-empty subsets where cardinality $\leq 1$) for this example is: $$ \mathcal{P}_{1} S = \{ \{a\},\{b\},\{c\} \} $$. \paragraph{Calculating the number of elements in a cardinality constrained powerset} A $k$ combination is a subset with $k$ elements. The number of $k$ combinations (each of size $k$) from a set $S$ with $n$ elements (size $n$) is the binomial coefficient~\cite{probstat} shown in equation \ref{bico}. \begin{equation} C^n_k = {n \choose k} = \frac{n!}{k!(n-k)!} . \label{bico} \end{equation} To find the number of elements in a cardinality constrained subset S with up to $cc$ elements in each combination sub-set, we need to sum the combinations, %subtracting $cc$ from the final result %(repeated empty set counts) from $1$ to $cc$ thus % % $$ {\sum}_{k = 1..cc} {\#S \choose k} = \frac{\#S!}{k!(\#S-k)!} $$ % \begin{equation} |{\mathcal{P}_{cc}S}| = \sum^{cc}_{k=1} \frac{|{S}|!}{ k! ( |{S}| - k)!} . \label{eqn:ccps} \end{equation} \subsection{Actual Number of combinations to check with Unitary State Fault mode sets} If all of the fault modes in $S$ were independent, the cardinality constrained powerset calculation (in equation \ref {eqn:ccps}) would give the correct number of test case combinations to check. Because sets of failure modes in FMMD analysis are constrained to be unitary state, the actual number of test cases to check will usually be less than this. This is because combinations of faults within a components failure mode set, are impossible under the conditions of unitary state failure mode. To modify equation \ref{eqn:ccps} for unitary state conditions, we must subtract the number of component `internal combinations' for each component in the functional group under analysis. Note we must sequentially subtract using combinations above 1 up to the cardinality constraint. For example, say the cardinality constraint was 3, we would need to subtract both $|{n \choose 2}|$ and $|{n \choose 3}|$ for each component in the functional~group. \subsubsection{Example: Two Component functional group cardinality Constraint of 2} For example: suppose we have a simple functional group with two components R and T, of which $$fm(R) = \{R_o, R_s\}$$ and $$fm(T) = \{T_o, T_s, T_h\}.$$ This means that the functional~group $FG=\{R,T\}$ will have a component failure mode set of $fm(FG) = \{R_o, R_s, T_o, T_s, T_h\}$ For a cardinality constrained powerset of 2, because there are 5 error modes ( $|fm(FG)|=5$), applying equation \ref{eqn:ccps} gives :- $$ | P_2 (fm(FG)) | = \frac{5!}{1!(5-1)!} + \frac{5!}{2!(5-2)!} = 15.$$ This is composed of ${5 \choose 1}$ five single fault modes, and ${5 \choose 2}$ ten double fault modes. However we know that the faults are mutually exclusive within a component. We must then subtract the number of `internal' component fault combinations for each component in the functional~group. For component R there is only one internal component fault that cannot exist $R_o \wedge R_s$. As a combination ${2 \choose 2} = 1$. For the component $T$ which has three fault modes ${3 \choose 2} = 3$. Thus for $cc == 2$, under the conditions of unitary state failure modes in the components $R$ and $T$, we must subtract $(3+1)$. The number of combinations to check is thus 11, $|\mathcal{P}_{2}(fm(FG))| = 11$, for this example and this can be verified by listing all the required combinations: $$ \mathcal{P}_{2}(fm(FG)) = \{ \{R_o T_o\}, \{R_o T_s\}, \{R_o T_h\}, \{R_s T_o\}, \{R_s T_s\}, \{R_s T_h\}, \{R_o \}, \{R_s \}, \{T_o \}, \{T_s \}, \{T_h \} \} $$ and whose cardinality is 11. % by inspection %$$ %| %\{ % \{R_o T_o\}, \{R_o T_s\}, \{R_o T_h\}, \{R_s T_o\}, \{R_s T_s\}, \{R_s T_h\}, \{R_o \}, \{R_s \}, \{T_o \}, \{T_s \}, \{T_h \} %\} %| = 11 %$$ \pagebreak[1] \subsubsection{Establishing Formulae for unitary state failure mode cardinality calculation} The cardinality constrained powerset in equation \ref{eqn:ccps}, can be modified for % corrected for unitary state failure modes. %This is written as a general formula in equation \ref{eqn:correctedccps}. %\indent{ %To define terms : %\begin{itemize} %\item Let $C$ be a set of components (indexed by $j \in J$) that are members of the functional group $FG$ i.e. $ \forall j \in J | C_j \in FG $. %\item Let $|fm({C}_{j})|$ indicate the number of mutually exclusive fault modes of component $C_j$. %\item Let $fm(FG)$ be the collection of all failure modes from all the components in the functional group. %\item Let $SU$ be the set of failure modes from the {\fg} where all $FG$ is such that components $C_j$ are in `unitary state' i.e. $(SU = fm(FG)) \wedge (\forall j \in J | fm(C_j) \in \mathcal{U}) $, then %\end{itemize} %} \begin{equation} |{\mathcal{P}_{cc}SU}| = {\sum^{cc}_{k=1} \frac{|{SU}|!}{k!(|{SU}| - k)!}} - {\sum_{j \in J} {|FM({C_{j})}| \choose 2}} . \label{eqn:correctedccps} \end{equation} Expanding the combination in equation \ref{eqn:correctedccps} \begin{equation} |{\mathcal{P}_{cc}SU}| = {\sum^{cc}_{k=1} \frac{|{SU}|!}{k!(|{SU}| - k)!}} - {{\sum_{j \in J} \frac{|FM({C_j})|!}{2!(|FM({C_j})| - 2)!}} } . \label{eqn:correctedccps2} \end{equation} \paragraph{Use of Equation \ref{eqn:correctedccps2} } Equation \ref{eqn:correctedccps2} is useful for an automated tool that would verify that a single or double simultaneous failures model has complete failure mode coverage. By knowing how many test cases should be covered, and checking the cardinality associated with the test cases, complete coverage would be verified. %\paragraph{Multiple simultaneous failure modes disallowed combinations} %The general case of equation \ref{eqn:correctedccps2}, involves not just dis-allowing pairs %of failure modes within components, but also ensuring that combinations across components %do not involve any pairs of failure modes within the same component. %%%%- NOT SURE ABOUT THAT !!!!! %%%- A recursive algorithm and proof is described in appendix \ref{chap:vennccps}. %%\paragraph{Practicality} %%Functional Group may consist, typically of four or five components, which typically %%have two or three failure modes each. Taking a worst case of mutiplying these %%by a factor of five (the number of failure modes and components) would give %%$25 \times 15 = 375$ %% %% %% %%\begin{verbatim} %% %%# define a factorial function %%# gives 1 for negative values as well %%define f(x) { %% if (x>1) { %% return (x * f (x-1)) %% } %% return (1) %% %%} %%define u1(c,x) { %% return f(c*x)/(f(1)*f(c*x-1)) %%} %%define u2(c,x) { %% return f(c*x)/(f(2)*f(c*x-2)) %%} %% %%define uc(c,x) { %% return c * f(x)/(f(2)*f(x-2)) %%} %% %%# where c is number of components, and x is number of failure modes %%# define function u to calculate combinations to check for double sim failure modes %%define u(c,x) { %%f(c*x)/(f(1)*f(c*x-1)) + f(c*x)/(f(2)*f(c*x-2)) - c * f(c)/(f(2)*f(c-2)) %%} %% %% %%\end{verbatim} %% \pagebreak[1] \section{Component Failure Modes and Statistical Sample Space} %\paragraph{NOT WRITTEN YET PLEASE IGNORE} A sample space is defined as the set of all possible outcomes. For a component in FMMD analysis, this set of all possible outcomes is its normal correct operating state and all its failure modes. When dealing with failure modes, we are not interested in the state where the component is working perfectly or `OK' (i.e. operating with no error). We are interested only in ways in which it can fail. By definition while all components in a system are `working perfectly' that system will not exhibit faulty behaviour. Thus the statistical sample space $\Omega$ for a component or derived~component $C$ is %$$ \Omega = {OK, failure\_mode_{1},failure\_mode_{2},failure\_mode_{3} ... failure\_mode_{N} $$ $$ \Omega(C) = \{OK, failure\_mode_{1},failure\_mode_{2},failure\_mode_{3}, \ldots ,failure\_mode_{N}\} . $$ The failure mode set $F$ for a given component or derived~component $C$ is therefore $ fm(C) = \Omega(C) \backslash \{OK\} $ (or expressed as $ \Omega(C) = fm(C) \cup \{OK\} $). The $OK$ statistical case is the largest in probability, and is therefore of interest when analysing systems from a statistical perspective. This is of interest for the application of conditional probability calculations such as Bayes theorem~\cite{probstat}. Another way to view this is to consider the failure modes of component, with the $OK$ state, as a universal set $\Omega$, where all sets within $\Omega$ are partitioned. Figure \ref{fig:partitioncfm} shows a partitioned set representing component failure modes $\{ B_1 ... B_8, OK \}$ obeying unitary state conditions. Because the subsets of $\Omega$ are partitionned we can say these failure modes are unitary state. \begin{figure}[h] \centering \includegraphics[width=350pt,keepaspectratio=true]{./component_failure_modes_definition/partitioncfm.jpg} % partition.jpg: 510x264 pixel, 72dpi, 17.99x9.31 cm, bb=0 0 510 264 \caption{Base Component Failure Modes with OK mode as partitioned set} \label{fig:partitioncfm} \end{figure} \section{Components with Independent failure modes} Suppose that we have a component that can fail simultaneously with more than one failure mode. This would make it seemingly impossible to model as `unitary state'. \paragraph{De-composition of complex component.} There are two ways in which we can deal with this. We could consider the component a composite of two simpler components, and model their interaction to create a derived component. \ifthenelse {\boolean{paper}} { This technique is outside the scope of this paper. } { This technique is dealt in chapter \ref{fmmd_complex_comp} which shows how derived components may be assembled. } \begin{figure}[h] \centering \includegraphics[width=200pt,bb=0 0 353 247,keepaspectratio=true]{./component_failure_modes_definition/compco.jpg} % compco.jpg: 353x247 pixel, 72dpi, 12.45x8.71 cm, bb=0 0 353 247 \caption{Component with three failure modes as partitioned sets} \label{fig:combco} \end{figure} \paragraph{Combinations become new failure modes.} Alternatively, we could consider the combinations of the failure modes as new failure modes. We can model this using an Euler diagram representation of an example component with three failure modes\footnote{OK is really the empty set, but the term OK is more meaningful in the context of component failure modes} $\{ B_1, B_2, B_3, OK \}$ see figure \ref{fig:combco}. For the purpose of example let us consider $\{ B_2, B_3 \}$ to be intrinsically mutually exclusive, but $B_1$ to be independent. This means the we have the possibility of two new combinations $ B_1 \cap B_2$ and $ B_1 \cap B_3$. We can represent these as shaded sections of figure \ref{fig:combco2}. \begin{figure}[h] \centering \includegraphics[width=200pt,bb=0 0 353 247,keepaspectratio=true]{./component_failure_modes_definition/compco2.jpg} % compco.jpg: 353x247 pixel, 72dpi, 12.45x8.71 cm, bb=0 0 353 247 \caption{Component with three failure modes where $B_1$ is independent} \label{fig:combco2} \end{figure} We can calculate the probabilities for the shaded areas assuming the failure modes are statistically independent by multiplying the probabilities of the members of the intersection. We can use the function $P$ to return the probability of a failure mode, or combination thereof. Thus for $P(B_1 \cap B_2) = P(B_1)P(B_2)$ and $P(B_1 \cap B_3) = P(B_1)P(B_3)$. \begin{figure}[h] \centering \includegraphics[width=200pt,bb=0 0 353 247,keepaspectratio=true]{./component_failure_modes_definition/compco3.jpg} % compco.jpg: 353x247 pixel, 72dpi, 12.45x8.71 cm, bb=0 0 353 247 \caption{Component with two new failure modes} \label{fig:combco3} \end{figure} We can now consider the shaded areas as new failure modes of the component (see figure \ref{fig:combco3}). Because of the combinations, the probabilities for the failure modes $B_1, B_2$ and $B_3$ will now reduce. We can use the prime character ($\; \prime \;$), to represent the altered value for a failure mode, i.e. $B_1^\prime$ represents the altered value for $B_1$. Thus $$ P(B_1^\prime) = B_1 - P(B_1 \cap B_2) - P(B_1 \cap B_3)\; , $$ $$ P(B_2^\prime) = B_2 - P(B_1 \cap B_2) \; and $$ $$ P(B_3^\prime) = B_3 - P(B_1 \cap B_3) \; . $$ We now have two new component failure mode $B_4$ and $B_5$, shown in figure \ref{fig:combco3}. We can express their probabilities as $P(B_4) = P(B_1 \cap B_3)$ and $P(B_5) = P(B_1 \cap B_2)$. %%- %%- Need a complete and more complicated UML diagram here %%- the other parts were just fragments to illustrate points %%- %%- \section{Complete UML Diagram} For a complete UML data model we need to consider the System as an object. This holds a parts list, and is the key reference point in the data structure. A real life system will be expected to perform in a given environment. Environment in the context of this study means external influences the System could be expected to work under. A typical data sheet for an electrical component will give a working temperature range for instance. Mechanical components will be specified for stress and loading limits. \paragraph{Environmental Modelling.} The external influences/environment could typically be temperature ranges, levels of electrical interference, high voltage contamination on supply lines, radiation levels etc. Environmental influences will affect specific components in specific ways. Environmental analysis is thus applicable to components. \paragraph{Operational states.} Within the field of safety critical engineering we often encounter sub-system that include test facilities. We also encounter degraded performance (such as only performing functions in an emergency) and lockout conditions. These can be broadly termed operational states, and apply to the functional groups. Consider for instance an electrical circuit that has a TEST line. When the TEST line is activated, it supplies a test signal which will validate the circuit. This circuit will have two operational states, NORMAL and TEST mode. It is natural to apply the operational states to functional groups. Functional groups by definition implement functionality, or purpose of particular sub-systems, and therefore are the best objects to model operational states. \paragraph{Inhibit Conditions} Some failure modes may only be active given specific environmental conditions or when other failures are already active. To model this, an `inhibit' class has been added. This is an optional attribute of a failure mode. This inhibit class can be triggered on a combination of environmental or failure modes. \paragraph{UML Diagram Additional Objects.} The additional objects System, Environment and Operational States are added to UML diagram in figure \ref{fig:cfg} and represented in figure \ref{fig:cfg2}. \label{completeuml} \begin{figure}[h] \centering \includegraphics[width=400pt,keepaspectratio=true]{./master_uml.jpg} % cfg2.jpg: 702x464 pixel, 72dpi, 24.76x16.37 cm, bb=0 0 702 464 \caption{Complete UML diagram} \label{fig:cfg2} \end{figure} %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%% %%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%%