Title: CASCADING FAILURE
1CASCADING FAILURE
Ian Dobson ECE dept., University of Wisconsin
USA Ben Carreras Oak Ridge National Lab
USA David Newman Physics dept., University of
Alaska USA
Presentation at University of Liege March 2003
Funding in part from USA DOE CERTS and NSF is
gratefully acknowledged
2 power tail
probability
(log scale)
-1
S
-S
e
blackout size S (log scale)
power tails have huge impact on large blackout
risk.
risk probability x cost
3NERC blackout data15 years, 427 blackouts
1984-1998 (also sandpile data)
power tail in NERC data consistent with power
system operated near criticality
4Cascading failure large blackouts
- dependent rare events many combinations hard
to analyze or simulate - mechanisms hidden failures, overloads,
oscillations, transients, control or operator
error, ... but all depend on loading
5Loading and cascading
- LOW LOAD- weak dependence- events nearly
independent - exponential tails in blackout size
pdf - CRITICAL LOAD- power tails in blackout size pdf
- HIGHER LOAD- strong dependence- total blackout
likely
6Extremes of loading
log-log plot
VERY LOW LOADING independent failures pdf has
exponential tail
PDF
blackout size
TRANSITION ??
VERY HIGH LOADING total blackout with
probability one
PDF
blackout size
7Types of dependency in failure of systems with
many components
- independent
- common mode
- common cause
- cascading failure
8CASCADEA probabilistic loading-dependent model
of cascading failure
9CASCADE model
- n identical components with random initial load
uniform in Lmin, Lmax - initial disturbance D adds load to each component
- component fails when its load exceeds threshold
Lfail and then adds load P to every other
component. Load transfer amount P measures
component coupling, dependency - iterate until no further failures
105 component example
115 component example
12Normalize so that initial load range is 0,1
and failure threshold is 1
- normalized initial disturbance d d
- normalized load transfer p
- p
D - (Lfail - Lmax) Lmax -Lmin
P Lmax -Lmin
13Formulas for probability of r components fail
for 0ltdlt1
r-1
n-r
)
(
d (rpd) (1-rp-d) npdlt1 quasibinomial
distribution Consul 74
n r
- for npd gt1, extended quasibinomial
- quasibinomial for smaller r
- zero for intermediate r
- remaining probability for r n
14average number of failures lt r gt n100 components
d
p
15example of applicationmodeling load increase
-
- Lmax Lfail 1
- increase average load L by increasing Lmin
1
L
-
-
0
16example of application
- n 100 components
- P D 0.005
- p d
0.005 1 - Lmin
17probability distribution asaverage load L
increases
18ltrgt
average failures ltrgt versus load L pd and n100
19example 2 of applicationback off Lmax ( n-1
criterion)
-
Lfail 1
k
-
Lmax
-
Lmin 0
20Increase average load leads to change in d and p
constant
21GPD formulas for probability of r components
fail
r-1
-rl-q
- (rlq) e / r! nlqltnrltn
- remaining probability for r n.
- For rltn agrees with
- generalized Poisson distribution GPD
- for nlqgtn, extended GPD
- GPD for smaller r
- zero for intermediate r
- remaining probability for r n
22probability distribution as average load L
increasesGPD model
23SUMMARY OF CASCADE
- features of loading-dependent cascading failure
are captured in probabilistic model with analytic
solution - extended quasibinomial distribution with n,d,p
approximated by GPD with qnd, lnp. - distributions show exponential or power tails or
high probability of total failure - power tail and total failure regimes show greatly
increased risk of catastrophic failure - power tails when lnp1.
24OPAA power systems blackoutmodel including
cascading failure and self-organizing dynamics
25Why would power systems operate near criticality??
- Near criticality, expected blackout size sharply
increases increased risk of cascading failure.
26Forces shaping power transmission
- Load increase (2 per year) and increase in bulk
power transfers, economics - Engineering
- new controls and equipment
- upgrade weakest parts
these engineering forces are part of the
dynamics!
27Ingredients of SOC in idealized sandpile
- system state local max gradients
- event sand topples (cascade of events is an
avalanche) - addition of sand builds up sandpile
- gravity pulls down sandpile
- Hence dynamic equilibrium with avalanches of all
sizes and long time correlations
28Analogy between power system and sand pile
29OPA model Summary
- transmission system modeled with DC load flow and
LP dispatch - random initial disturbances and probabilistic
cascading line outages and overloads - underlying load growth load variations
- engineering responses to blackouts upgrade lines
involved in blackouts upgrade generation
30DC load flow model(linear, no losses, real power
only)
Power injections at buses P
max
generators have max power P
Line flows F
max
line flow limits F
31Slow and fast timescales
- SLOW load growth and responses to blackouts.
(days to years)slow dynamics indexed by days - FAST cascading events.(minutes to hours)fast
dynamics happen at daily peak load timing
neglected
32Response to blackout by engineers
For lines involved in the blackout,
max
increase line limit F by a fixed
percentage.
Also, when total generation margin drops below
threshold,increase generator power limit P at
selected generators coordinated with line limits.
max
33Fast cascade dynamics
- Start with daily flows and injections
- Outage lines with given probability (initial
disturbance) - Use LP to redispatch
- Outage lines overloaded in step 3 with given
probability - If outage goto 3, else stop
Objective produce list of lines involved in
cascade consistent with system constraints
34Conventional LP redispatch to satisfy limits
Minimize change in generation and loads (load
change weighted x 100) subject to
overall power balance line flow limits load
shedding positive and less than total
load generation positive and less than generator
limit
35Model
Is the total generation margin below critical?
1 day loop
Yes
Secular increase on demand Random fluctuation of
loads Upgrade of lines after blackout Possible
random outage
No
A new generator build after n days
LP calculation
If power shed, it is a blackout
Are any overload lines?
1 minute loop
Yes, test for outage
no
Yes
No outage
Line outage
36Possible Approaches to Modeling Blackout Dynamics
Complexity (nonlinear dynamics, interdependences)
Model detail (increase details in the
models, structure of networks,)
OPA model
By incorporating the complex behavior, the OPA
approach aims to extract universal features
(power tails,).
37OPA model results include
- self-organization to a dynamic equilibrium
- complicated critical point behaviors
38Time evolution
- The system evolves to steady state.
- A measure of the state of the system is the
average fractional line loading.
200 days
39Steady state
40OPA/NERC results
41Application of the OPA model
- The probability distribution function of blackout
size for different networks has a similar
functional form - universality?
42Effect of blackout mitigation methods on pdf of
blackout size
obvious methods can have counterintuitive
effects
43 Mitigation
- Require a certain minimum number of transmission
lines to overload before any line outages can
occur.
44A minimum number of line overloads before any
line outages
- With no mitigation, there are blackouts with line
outages ranging from zero up to 20. - When we suppress outages unless there are n gt
nmax overloaded lines, there is an increase in
the number of large blackouts. - The overall result is only a reduction of 15 of
the total number of blackouts. - this reduction may not yield overall benefit to
consumers.
45Forest fire mitigation
46Dynamics essential in evaluating blackout
mitigation methods
- Suppose power system organizes itself to near
criticality - We try a mitigation method requiring 30 lines to
overload before outages occur. - Method effective in short time scale. In long
time scale very large blackouts occur.
47KEY POINTS
- NERC data suggests power tails and power system
operated near criticality - power tails imply significant risk of large
blackouts and nonstandard risk analysis - cascading loading-dependent failure
- engineering improvements and economic forces can
drive to criticality - in mitigating blackout risk, sensible approaches
can have unintended consequences
48BIG PICTURE
- Substantial risk of large blackouts caused by
cascading events need to address a huge number
of rare interactions - Where is the edge for high risk of cascading
failure? How do we detect this in designing
complex engineering systems? - Risk analysis and blackout mitigation based on
entire pdf, including high risk large blackouts. - Developing understanding and methods is better
than the direct experimental approach of waiting
for large blackouts to happen!
49Papers on this topic are available from
http//eceserv0.ece.wisc.edu/dobson/home.html