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Human Supervisory Contorl

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16.422 Human Supervisory Contorl Nuclear and Process Control Plants Massachusetts Institute of Technology – PowerPoint PPT presentation

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Title: Human Supervisory Contorl


1
16.422 Human Supervisory Contorl
Nuclear and Process Control Plants
Massachusetts Institute of Technology
2
Process Control Plants
16.422
Continuous or batch processing
ExampleElectricity generation (nuclear power
Plants),refineries, stell production, paper
mills, Pasteurization of milk Characterzied
by Large scale, both physically and
conceptually Complex High risk
High automation Remote vs. direct
manipulation of plant equipment
3
Three Mile Island
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March 28th 1979 Main feedwater pump
failure, caused reactor to shut down Relief
valve opened to reduce pressure but became
stuck in the open position No indication to
controllers Valve failure led to a loss of
reactant No instrument showed the coolant level
in the reactor Operators thought relief valve
closed water level too high High stress
Overrode emergency relief pump
4
Three Mile Island
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Automation worked correctly Confirmation
bias people seek out information to confirm a
prior belief and discount information that
does not support this belief At TMI,
operators selectively filtered out data from
other gauges to support their hypothesis
that coolant level was too high
5
Process Control Human Factors Challenges
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Control room design Increasing automation
requires cognitive support as opposed to
manual control support Human-machine
interface design Team decision making
Standardized procedures vs. innovatuon Trust
confidence
6
Supercvisory Process Control Tasks
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Monitor process Detect disturbances, faults,
abnormalities Counter disturbances, faults,
abnormalities Operating procedures must be
followed Communications A log must be
kept Other team members ( shift changes )
Emergency procedures Training and retraining
7
Cognitive Demands When Monitoring Process Control
Plants
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Vigilance Continuous vs. time shire
Active vs. passive monitoring Memory
Selective attention Visual attention/perception
System complexity System reliability
Critical vs. non-critical components
8
Cognitive Demands, cont.
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Display and control design Lack of
referent values Lack of emergent featurs
Lack of intergrated information Alarm system
design Nuisance alarms Cycling around
limits Desensitizaation Automation
design Lack of appropriate feedback
Direct vs. indirect cues
9
Coping Strategies
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Increase desired information salience and
reduce background noise Clearing and
disabling alarms Cross checking with other
reactor Create new information
Operators manipulated set points for earlier
alarms Offload cognitive processing onto
external aids Leaving door open
sticky notes Deviations from approved
procedures
10
Advanced Displays in process Control
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Classical display ( bar graphs, meters,
annunciators ) are being replaced with
computerized displays Keyhole effert
Temporal considerations Integration of
information Flexible adaptable displays
Local vs. global problems Configural
Ecological displays
11
Configural Displays
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Separable vs. integral vs. configural
Gestalt principles in design Emergent features
12
A Process Control Design Case Study
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Model-Based Predictive Control (MPC) of a
refinery plant Multi-input multi-output
autimatic controlls Optimize the process
based on maximizing production and minimizing
utility cost. Higher levels of
automation human less in the loop Three
variable types CVs Controlled Variables
process variables to be kept at setpoints or
within constraints (20-30 variables). MVs
Manipulated Variables Variables (typically
valves) that are adjusted to achieve CVs
while optimizing (6-8variables). DVs
Disturbance variables Variables that can
measured but not controlled, e.g., ambient
air temp. (2-3 variables) Humans have
difficylty monitoring, diagnosing, controlling
these advanced systems
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REGEN BED TEMP Detail Display
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CV DETAIL
RX / REGEN CTL
ON OFF
WARM
OPTIMIZING
TAG 25ATCV01
DESC REGEN BED TEMP
LINEAR OBJ COEF
SOURCE 25ATCV01.PV
-1.00
PV VALUE 579.3 PRED VAL 579.36 FUTURE 579.38
SS VALUE 581.36
QUAD OBJ COEF DESIRED CV VAL SCALING FACTOR
0.00
STATUS GOOD
0.00
0.329
SP.LIM TRACKS PV UPDATE FREQUENCY CRITICAL CV
CONTROL THIS CV
NO
YES
CV LO ERROR WEIGHT CV HI ERROR WEIGHT
1.00
lt

1.00
NO
YES
SETPOINT
NO
YES
PERFORMANCE RATIO CLS LOOP RESP INT FF TO FB
PERF RATIO
1.00
LO LIMIT ACTIVE
OF BAD READS ALLOWED
400.00
54.800
5
0.50
400.00
LO LIMIT RAMP RATE HI LIMIT RAMP RATE UNBIASED
MODEL PV
10.000
HI LIMIT ACTIVE
600.00
0.00
SETPOINT GAP NUMBER OF BLOCKS
10.000
600.00
10.0
379.35
APPLCN MENU
PROCESS DISPLY
CV DISPLY
MV DISPLY
DV DISPLY
STATUS MESG
MV TUNING
CV TUNING
GAIN/ DELAY
TREND DISPLY
14
Gain/Delay Matrix _ The Goal State
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ONLINE GAIN AND DELAY CHANGE
RX / REGEN CTL
ON OFF
OPTIMIZING
WARM
MV01
MV02
MV03
MV04
MV05
MV06
MV07
MV08
MV09
MV10
DV01
CV DESCRIPTION
2.0
-1.0
-3.5
4.2
6.1
-0.5
0.25
REACTOR BED TEMP
1 2 3
4.0
5.9
REGEN BED TEMP
-0.5
0.25
4.2
REGEN EXCESS O2
0.3
-1.0
2.0
-3.5
6.1
RX/REGEN DELTA P
4
2.0
-3.5
6.1
4.2
-1.0
.12
-0.5
0.25
6.1
4.2
-3.0
-0.7
0.70
REGEN CAT SLV DP
-2.5
1.0
10.0
5
6
SPENT CAT SLV DP
9.0
-0.4
7.2
-8.0
-2.0
6.9
STRIPPER LEVEL
7
12.0
8
9.0
3.0
1.5
3.6
BLOWER AMP's
-2.5
-.60
5.2
-3.5
WET GAS RPM's
9
1.2
10
FEED HDR-PRESS
-5.5
.02
6.2
2.1
-8.3
3.0
FRAC BTMS TEMP
11
2.2
-7.3
4.5
FRAC DELTA PRESS
12
.04
BLOWER VLV OP
5.1
4.4
2.6
-9.0
-.06
5.5
13
6.3
-.25
3.2
4.0
6.2
14
WET GAS VLV OP
-0.4
4.3
-8.2
7.0
15
RX PRED OCTAN E
0.000
1.000
Gain Multiplier
Deadtime Bias
0.000
2.00
3.750
Deadtime
Max Deadtime
Gain
PROCESS DISPLY
MV DISPLY
TREND DISPLY
APPLCN MENU
CV DISPLY
DV DISPLY
STATUS MESG
MV TUNING
CV TUNING
GAIN/ DELAY
15
The Display Redesign
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16
Supporting Monitoring
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Overview display Alerts Easy
recognition of priblems Summary
Direct manipulation Representation Aiding
Trend information depicted
graphically variable state as well
as optimization history
Color important
17
Supporting Diagnosing
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18
Representation Aiding in Diagnosis
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d
a
b
c
e
f
g
h
i
j
Normal state, both operator and hard
engineering limits shown Normal state, operator
limits engineering limits Normal, no
engineering hard limits defined Current state
within 1 of operator limits Current state
exceeded operator limits Normal state, variable
constrained to setpoint. Value wound-up,
valve fully closed or open Negative linear
coefficient (maximize value) Poditive linear
coefficient (minimize value) Non-zero quadratic
coefficient (resting value)
a. b. c. d. e. f. g. h. i. j.
19
Supporting Interaction
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Performance over time Important to provide
logging ability What-if
20
Decision Aid Design
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An assistant versus a coach what-ifs
(a form of preview ) Narrowing a
solution space Recommendations
Critiquing Problems Clumsy
automation? Will they work in
all situations Codifying rules and
updating them Plant upgrades
system evolution
Especially tricky in intentional domains
Automation bias Interactivity in decision
support
21
References
16.422
N. Moray, Human Factors in Process Control, in
Handbook of Human Factors and Ergonomics,
edited by G. Salvendy, pp.1944 1971,
1997. C. Burns, Putting It All together
Improving Display Integration in Ecological
Displays, Human Factors, vol. 42, pp.
226-241, 2000. R. Mumaw, E. M. Roth, K. Vicente,
and C. Burns, " There is more to monitoring
a nuclear power plant than meets the eye, "
Human Factots, vol. 42, pp. 36-55, 2000. S.
Guerlain, G Jamieson, P. Bullemer, and R. Blair,
" The MPC Elucidator A case study in the
design of representational aids, " IEEE
Journal of Systems, Man, and Cybernetics,
vol. 32, pp. 25- 40, 2002.
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