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Deterministic Network Calculus p.2
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DNC arrival results Accumulated arrival functions R(t): traffic recieved in [0,t] Arrival function may be constrained: R(t)-R(s) <= (t-s) (t-s) is typically either affine or staircase Packet spacing with period T and tolerance is constrained by staircase arrival curve. For fixed length packets affine and staircase constraints are equivalent. Leaky buckets and GCRAs are euqivalent and are affine and staircase constrained.
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DNC arrival results Arrival curves and their left limits L are equivalent. Good functions have (0)=0 and are subadditive: (t+s) <= (t) + (s) Arrival curves and their subadditive closures are equivalent. Good functions are sufficient as arrival functions. Affine and staircase functions are good. R R (t) = sup {R(t+v)-R(v)} (for all positive v) is the smallest arrival curve for R
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Service curves (definition) Service curves specify in the worst service to be experienced by some service element in a network. Service curves play the role of transfer functions (system impulse responses in our network calculus) Definition (of service curve) An input flow R is guaranteed a service from som network element iff: R >= R* >= R = inf { (t-s)+R(s)} (for all s <= t) Where R* is the output flow from the network element.
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Service curves (motivation) Consider a service element where the output rate is constantly r within busy periods. Input flow is R and output flow is R* We have directly for t0 < t R*(t)-R*(t0) = r(t-t0) when t and t0 are in the same busy period. If t0 is the beginning of the busy period: R(t0)=R*(t0) so that R*(t)-R(t0) = r(t-t0) R*(t)=R(t0)+r(t-t0) R*(t) >= inf {r(t-s)+R(s)} (for all s <= t)
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Service Curves (motivation) Consider a service element where every bit is delayed constantly d. We have directly for t0 < t R*(t)=R(t-d) Consider the funtion d defined by d (t)=0 for t <=d d (t)=infinity for t > d Then R*(t) =R(t-d) = inf { d (t-s)+R(s)} (for all s <= t) (s must be the smallest value for which t-s <= d i.e. s = t-d) d infinity
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Service curves (motivation) (strict service curves) Consider a network element where the output from the beginning of the present busy period is above (t-t0) (t0 – beginning of busy period) when t is in busy period. Then for some t in a busy period: R*(t)-R*(t0) >= (t-t0) R*(t) >= R*(t0) + (t-t0) R*(t) >= R(t0) + (t-t0) >= inf { (t-s)+R(s)} (for all s <= t) Then for some t in an idle period: R*(t) = R(t) >= inf { (t-s)+R(s)} (for all s <= t)
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Service Curves (Concatenation) Consider the following tandem configuration of network elements R(t)R**(t)R*(t) Then the tandem guarantees a service curve What we need to prove is that is monotone and associative, i.e. R** >= R* R R (
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Concatenation (associativity) R inf s t { (t-s) + inf <= s { (s R( inf s t {inf <= s { (t-s) + (s R( inf s t, <= s { (t-s) + (s R( R ( inf s t { inf <= t-s { (t-s- )+ ( R(s) }} = inf s t { inf <= t-s { (t-s- ) + ( R(s) }} inf s t, <= t-s { (t-s- ) + ( R(s) } (t- = = t- = inf t, s<= { -s) + (t R(s) } = inf t, s<= { (t ( -s R(s) } ( -> s, s -> = inf s t, <= s { (t-s (s R }= R
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Concatenating Constant Rates = inf s <= t { (t-s 1 s)} = inf s <= t {r2(t-s) + r1(s)} r2 t for r1>r2 (s=0) r1 t for r2>r1 (s=t) = min{r1,r2} t CONSITENT WITH BOTTLENECK INTUITION
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Concatenating with max. Delay d = inf s <= t { (t-s d s)} = min{inf s <= d { (t-s)},inf} = inf s <= d { (t-s)}= (t-d) or in fact [ (t-d)]+ d
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Prioritizing Servers (preemptive) H = c t L = [c t – H ]+ HH H = c t LL
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Queue Lengths R t R* time q(t) q
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Queue Lengths from Specifications q max
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Proof R(t)-R*(t) <= R(t)-inf s<=t { (t-s)+R(s)} = sup s<=t {R(t) - (t-s) - R(s)} = sup s<=t {R(t) – R(s) - (t-s)} <= sup s<=t { (t-s) - (t-s)} = sup 0<=t-s { (t-s) - (t-s)}
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Waiting Times R t R* time w(t)
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Waiting Times from Specifications w max
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Output Flow Let the inflow R to some service element be constrained by and the service element guarantee a service curve Then The output flow R* is constrained by sup u>=0 { (t+u) – (u)}
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Output Flow (example) sup u>=0 { (t+u) – (u)}= sup u>=0 {r(t+u)+b – [s u – p]+}= max{sup 0 =d {r(t+u)+b – s u + p}}= max{{r(t+d)+b},{r (t+d) – (s d – p)}}= r(t+d) + b = rt + rd + b = rt + r (p/s) + b d rd
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Converging Flows n+x <= n + x
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Loops (example) RR LL c c L low R low L high R high L high = R high =c t, L low = [c t- R low ]+, R low = [c t- L low ]+,
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Loops (example) L high = R high =c t, L low = [c t- R low ]+, R low = [c t- L low ]+ L = rL t + bL, R = rR t + bR R low = rR low t + bR low, L low = rL low t + bL low rR low = rR, rL low = rL bR low = bR + rR bL low /(c- rL low ) = bR + bL low rR /(c- rL low ) bL low = bL + rL bR low /(c- rR low ) = bL + bR low rL /(c- rR low )
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