for wind & wake-vortex monitoring on airport: first...
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Thales Air Operations 29/02/2012
Radar/Lidar Sensorsfor Wind & Wake-Vortex
Monitoring on Airport: First results of SESAR P12.2.2 XP0 trials
campaign at Paris CDG AirportF. Barbaresco, Thales Air Systems
Thales Air Operations 29/02/2012
2 /2 Synthesis of SESAR P12.2.2 XP0 Sensors Trials Campaign at CDG
Two configurations relative to the North runways (i.e. 09L/27R and 09R/27L) were used to benchmark the Wake Vortex and Weather sensors at Paris CDG Airport
The Weather sensors benchmarked during sensors assessment campaign (XP0) were: One UHF wind profiler (PCL1300 of DEGREANE deployed under the glide),
One UHF wind profiler (PCL1300 of METEO FRANCE deployed at CDG Airport),
One SODAR PCS 2000 (METEK) (SODAR of METEO FRANCE still operational in CDG),
One LIDAR wind profiler (WINDCUBE-70 of LEOSPHERE),
Two Anemometers (of METEO FRANCE still operational in CDG)
The Wake Vortex sensors benchmarked during sensors assessment campaign (XP0) were: One X band RADAR (BOR-A 550 of THALES),
One LIDAR (WINDCUBE 200S of LEOSPHERE)
Thales Air Operations 29/02/2012
3 /3 SESAR P12.2.2. : XP0 Sensors Deployment at CDG Airport
Wake Vortex X-band Radar
Wake Vortex & Wind 1.5 mm Lidar Scanner
Sodar UFR Radar Wind Profiler
Anemometers Visibility
1.5 mm Lidar Wind Profiler
Wake Vortex X-band Radar
UFR Radar Wind ProfilerWake Vortex
1.5 mm Radar Scanner
Meteo-FranceC-band Radar
Thales Air Operations 29/02/2012
4 /4 Sensors Recording Architecture in XP0 trials
Meteo Centre
ATC & AirportSystems
MeteoNowcast
(Wind Profile)
Wake VortexLocation/Strength& short prediction
WV Radar
Data Recorder
External Weather Observations
Aircraft Characteristics + 4D trajectory
Anemometers
LIDAR Wind Profiler
UHF Wind Profiler
LIDAR scanner
SODAR/RASS
Weather Radar
Local Meteo Sensors
Lidar 1.5 um
Mechanical scan
X Band Radar
Air TrafficData Recorder
Recorder
Recorder
Recorder
Recorder
Recorder
Meteo Data Recorder
Recorder
WV LidarData Recorder
Wake Vortex Sensors
Wake Vortex Decision Support System
Thales Air Operations 29/02/2012
5 /5
BOR-A radar WINDCUBE-200S
SESAR P12.2.2 XP0 Trials : Sensors Deployment at CDG Airport
BOR-A radarWINDCUBE-200S
Wake-Vortex Sensors
Deployment
Wind Sensors Deployment
Close to Runways under the glide slope
Thales Air Operations 29/02/2012
6 /6 X-band Wake-Vortex Radar Deployment at CDG Airport
Close to runways
Under the glide slope
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7 /7 X-band Doppler Wake-Vortex Radar Signature in Rain
Rain Dopplerspectrum
Wake-vortex Dopplerspectrum
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8 /8 Wake-Vortex tracking with X-band Radar in rainy weather
A340Take-Off
B777Landing
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9 /9 X-band Radar Wake-Vortex Detection in Rain
Wake-Vortex Radar Detection in Rainy Weather
When the X-band radar BOR-A was located at Juilly, under the glide, it operated a vertical scan in the plane orthogonal to the glide axis. During the rainy weather condition, 34 aircrafts have crossed the scanning plane of the radar: 13 aircrafts taking-off: 4 heavy (B777, A340, A330, B767), 9 medium (B737, A319, MD80, EMB190);
21 aircrafts landing: 9 heavy (B777, MD11, A330), 12 medium (B737, A320, A321, B717, EMB170).
In rain, the BOR-A was able to detect wake vortices for all of them, via the Doppler analysis of the raindrops. The observation time of the wake vortices varies from a few seconds up to 250 s. This time seems to be limited by two factors: When the rain rate is too low, it is more difficult to detect raindrops and then wake vortices;
In most configurations, vortices are lost when they go out of the radar scan (in range or angle) after some time.
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0-15 15-30 30-45 45-60 60-75 75-90 90-115 > 115
observation time [s]
num
ber
of c
ases
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10 /10 X-band Radar Wake-Vortex Detection for different aircraft categories
Case 1 2 3 4 5 6 7 Date 2011-06-07 2011-06-07 2011-06-06 2011-06-07 2011-06-07 2011-06-07 2011-06-07 Time (local) 16:14 15:54 9:31 11:12 15:22 9:42 9:53 Weather data: Wind profiler PCL1300 (Juilly)
East wind speed [m/s] +4.8 +5.8 +7.1 +1.7 +3.3 -0.2 -0.5 North wind speed [m/s] (direction)
-4.5 (South)
-5.1 (South)
+5.2 (North)
+4.8 (North)
+0.2 (North)
+3.2 (North)
+5.2 (North)
Vertical wind speed [m/s] +0.07 +0.05 -0.21 -0.57 -0.03 -0.08 +0.20 Wind direction [°] 313 311 234 194 267 176 175 EDR [10^-4 m2/s3] 1;2 0.3;7 0.5 0.1;4 9;51 1;6 0.4;5 Weather data: Météo France (Roissy)
Temperature [°C] 15.1 15.0 15.6 17.0 14.8 16.7 16.7 Relative humidity [%] 88 89 93 82 91 88 83 Weather data: X-band radar (Juilly)
Rain SNR [dB] 43 60 40 30 20 42 28 Rain rate [mm/hr] 4 40 3 1 0.2 7 1 Aircraft characteristics Aircraft B777-F A330 B737 A340-300 A330-200 B767-300 B737-500 Category Heavy Heavy Medium Heavy Heavy Heavy Medium Movement Landing Landing Landing Take-Off Take-Off Take-Off Take-Off Wingspan b [m] 64.8 60.3 28.9 60.3 60.3 47.6 28.9 MTOW [t] 348 233 80 255 233 185 71 Speed V [m/s] 90.8 79.7 93.1 87.9 106.9 110.0 (?) 130.9 Wake vortex measures: X-band radar (Juilly)
Observation time [s] 90 250 35 50 60 150 90 Initial horizontal velocity [m/s] (North) -2.1 -0.1 +1.3 +4.1 +2.4 +2.4 +3.3
Fall direction in the scan plane South South North North North North North Initial vertical velocity v0 [m/s] -1.8 -0.8 (?) -0.4 -2.6 -0.8 -1.6 -0.9 Radial range [m] 510;700 600;680 720;730 880;950 1000;1060 1100;1350 1280;1350 Wake vortex SNR [dB] 32;41 35;44 30;35 26;30 22;35 27;37 18;24 Wake vortex estimations Vortices separation b0 = 0.8*b [m] 51.8 48.2 23.1 48.2 48.2 38.1 23.1 Aircraft weight M = k*MTOW [t] 209 140 48 204 186 148 57 Time constant t0 = b0/v0 [s] 29 60 58 19 60 24 26 Normalized observation time t/t0 3.1 4.2 0.6 2.6 1.0 6.3 3.5 Normalized EDR η = (EDR*b0)^(1/3)/v0 0.1 0.1;0.4 0.3 0.03;0.1 0.4;0.8 0.1;0.2 0.1;0.3
Initial circulation (1) Γ0 = M*g/(ρ*V*b0) [m2/s] 363 297 182 393 295 289 154
Initial circulation (2) Γ0 = 2π*b0*v0 [m2/s] 586 242 58 788 242 383 131
RCS [dBm2] -28;-25 -34;-25 -30;-25 -29;-28 -34;-26 -24;-14 -31;-25 Reflectivity [dBm2/m3] -75;-70 -79;-71 -78;-73 -78;-71 -84;-76 -75;-66 -84;-78
00 bV
gM
000 π2 vb
Normalized EDR vs. normalized observation time (L: Landing, T-O: Take-Off)
Initial circulation vs aircraft configuration
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11 /11 Wake-Vortex Lidar Deployment at CDG Airport
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12 /12 Wake-vortex tracking by 1.5 micron Lidar in clear air
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13 /13 Wake-Vortex Circulation Retrieval
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14 /14 Synthesis of wake-vortex Radar/Lidar data exploitation
Analysis of wake-Vortex Data
the X-band RADAR and the LIDAR have successfully detected wake vortices generated by aircraft of categories HEAVY and MEDIUM.
Two principal sensor position options can be distinguished: Under the flight path which allows the two vortices to be separated due to the angular resolution.
However it requires a large scan angle when the vortex is close to the sensor
Sideways, with a vertical scan perpendicular to the corridor axis. This setup is well suited to track vortices down to the ground, the two vortices could be separated due to the range resolution
Both concepts have their specific strengths and weaknesses. The optimum geometry should be chosen depending on the selected operational concept. RADAR has more restrictive limits with respect to small scan angles in order to avoid ground
clutter, but This shortcoming can possibly be compensated because of the RADAR’s longer range
The presence of aerosols, humidity and visibility are crucial parameters which have more or less significant impact on the performance of either sensor.
Ideally a sensor or a combination of sensors should yield reliable data under all weather conditions
Detailed statistical conclusions about availability of data cannot be given at this stage. Such kind of assessments are foreseen for XP1 and XP2 campaigns.
Thales Air Operations 29/02/2012
15 /15 Synthesis of wake-vortex Radar/Lidar data exploitation
Analysis of wake-Vortex Data
WINDCUBE-200S LIDAR has shown its ability to detect wake vortices up to adistance of 800 m in clear weather (equally well in upward as in sideways) Owing to the high spatial resolution (0.1° in angle and 30 m in range) and the resolution of
Doppler velocity around 0.2 m/s, determination of the two vortex cores were allowed
The BOR-A X-band RADAR has detected wake vortices up to 1350 m above the instrument Due to the less favourable weather conditions for Doppler-RADAR measurements in combination
with the limited power budget of the BOR-A, wake vortices could only be detected during rain
wake vortices were detected merely because of scattering on raindrops
the variation of relative dielectric constant within the vortices. For detection in dry air, requires a higher power budget than the power which could be used in XP0. This point offers room for improvement and will be assessed during future measurement campaigns.
the X-band RADAR was able to distinguish the two vortices in some cases. However its angular resolution limits its capabilities to provide accurate vortex core positions. For future campaigns, the new X-band RADAR will be designed with a narrower beam width to investigate this issue.
The LIDAR nor the RADAR could be not able to detect any vortex, just behind a rain front, during a short period when the air was dry again but still clean from aerosols. In future campaigns, an optimized power setting of the X-band RADAR will be able to close the observed gap
Thales Air Operations 29/02/2012
16 /16 Synthesis of wake-vortex Radar/Lidar data exploitation
Analysis of wake-Vortex Data
The ability of the wake vortex sensors to detect aged vortices depends on: the time the vortices stay within the area where the sensor is scanning and thus on the dimension
of scanning sector and crosswind. Rapid vortex decay, e.g. due to strong atmospheric turbulence would also result in shorter vortex
detection times. Other parameters like wind shear and atmospheric stability are also assumed to affect wake
vortex decay and transportation, but are not included in this study.
With the X-band RADAR : wake vortices could be observed up to a maximum of 250 s after the airplane wake vortices could be observed in relation to the crosswind, which transported the vortices more
or less quickly out of the scanning domain.
The relationship between EDR and wake vortex decay could not be analyzed Lack of algorithm to compute wake vortex circulation from a Doppler effect on raindrops. An algorithm of inversion should be developed and calibrated on Wake-Vortex simulation based
Fluid mechanical model.
With the LIDAR wake vortices have been observed up to 90s after the airplane detection. Variation in observation
duration is due to two main factors: transport due to crosswind
limitations of the algorithms to detect the wake vortex signals within a turbulent atmosphere
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17 /17 Synthesis of SESAR P12.2.2 XP0 WV Trials Campaign at CDG
LIDAR:25/05/2011 9h54 for a B767 (take-off)
X-band RADAR:2011-06-07 9:42 B767-300 (take-off)
LIDAR:17/05/2011 12h06 for a B747 (take-off)
Tim
e
Thales Air Operations 29/02/2012
18 /18 Conclusion of XP0 Trials for Wake-Vortex Sensors
Wake-Vortex Sensors Recommendations
Thanks to XP0 results, it has been demonstrated that, in high altitudes, wake vortex behaviour, being affected only by the wind, is predictable. out of ground effect, wake vortex predictors will be able to compute wake vortex behaviour based
on theoretical models.
They need as input an accurate wind speed and direction.
In these areas, no wake vortex monitoring sensor is recommended. On the opposite, close to the ground, where wake vortex behaviour is affected
by IGE, a wake vortex monitoring is mandatory. sensors scanning domain must be large enough to cover both landing & take-off.
the best sensors position is demonstrated to be sideways, few hundred meters upstream from the touch down area.
Out of Ground Effect In Ground Effect
Left Vortex Right Vortex
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19 /19 Conclusion of XP0 Trials for Wake-Vortex Sensors
Wake-Vortex Sensors Recommendations
For wake vortex monitoring the recommendation is to deploy: an X band RADAR (electronic scanning)
a 1.5µm LIDAR
both located perpendicularly to the runways, a few hundred meters upstream from the touch down area.
XP0 campaign has confirmed that wake vortex behaviour differs significantly depending on altitude In high altitude, out of ground effect, wake vortex behaviour is affected by the wind,
but remains stable and predictable.
Close to the ground. In this area low wind shear and ground effect can lead to unexpected wake vortex behaviour, (e.g. rebounds). These phenomena are very difficult to predict and to modelize.
Thales Air Operations 29/02/2012
20 /20 Conclusion of XP0 Trials for Wake-Vortex Sensors
Wake-Vortex Sensors Recommendations
The main results were convincing in terms of wake vortex detection: Most of wake vortices were detected in both critical areas The detection range has been demonstrated to be over the detection needs. wake vortex was detected as long as it was in the sensor scanning domain, except for some
cases where detection algorithms must be tuned.
Results show that RADAR and LIDAR are complementary depending onweather conditions: X-band RADAR performances are optimal under rainy conditions LIDAR performances are optimal in dry air.
Nevertheless, some improvements have to be done on these sensors to reach the performances needed by an operational system: Update rate needed to scan the Wake-Vortex 3D volume should be around 10 s. This capacity is
already available for LIDAR, but should be developed for RADAR by electronic scanning Both LIDAR and RADAR have evaluated the circulation of Wake-Vortex, but this part needs
further algorithm development to be able to assess accurate initial circulation and decay. A gap in data availability has been observed in particular weather conditions, after a raindrop
when air has been cleaned from aerosols. Thus, the RADAR power budget must be increased in order for it to detect wake vortices in the whole domain where LIDAR data are not available.
These development were already planned within the project. Thus, the campaign results confirm the theoretical analysis.
Thales Air Operations 29/02/2012
21 /21 Synthesis of SESAR P12.2.2 XP0 Wind Sensors Trials
Lidar Wind profiler WINDCUBE-70 SODAR Wind profilerPCS 2000
Alizia 312 anemometers
Radar Wind Profiler PCL-1300
Thales Air Operations 29/02/2012
22 /22 Wind sensors performances
Analysis of Meteorological Data
The ranges that could be covered by the various weather sensors are summarized in the table:
This campaign revealed a couple of situations, which require optimisation of the sensors: LIDAR performance is linked to visibility and it’s capabilities are limited by rain.
The SODAR performance has to be considered as a critical item, because it is the only instrument that offers wind data from the critical height range between 10 and 100 m AGL. But availability and quality of SODAR-derived wind data are negatively affected by high ambient noise levels.
Maximum range Sensor
Minimum
range 90%
availability 10%
availability LIDAR wind profiler WINDCUBE 70 100m 950m 1950m SODAR 20m 150m 370m Anemometers 10m 10m 10m UHF wind profiler PCL1300 170m 1600m 3950m
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23 /23 Synthesis of Wind trials : % of availability according to altitude
Lidar Wind profiler WINDCUBE-70 SODAR Wind profiler PCS 2000 Radar Wind Profiler PCL-1300
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24 /24 Synthesis of SESAR P12.2.2 XP0 Sensors Trials Campaign at CDG
Wind velocity and direction between MF UHF and DEGREANE UHF at 300m
Wind velocity and direction between MF UHF and DEGREANE UHF at 2550m
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25 /25 Synthesis of SESAR P12.2.2 XP0 Sensors Trials Campaign at CDG
Weather Sensors Recommendations
For weather monitoring, the recommendation is to deploy two sets of sensors: one located under the glide interception point, including :
an UHF wind profiler
a 1.5µm LIDAR wind profiler
the other one located close to the runways and composed by;
an anemometers field
a high power 3D X Band RADAR
a 3D 1.5µm LIDAR scanner.
For wake vortex tracking and predicting, weather data are critical. The following parameters are mandatory for the system: Wind field (u, v and w components),
EDR (Eddy Dissipation Rate),
Temperature vertical profile
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26 /26 Synthesis of SESAR P12.2.2 XP0 Sensors Trials Campaign at CDG
Weather Sensors Recommendations
Two kinds of critical areas can be defined regarding wake vortexhazards, depending on the altitude (close to the ground and at higher altitudes)
In both cases, weather parameters (wind, EDR and temperature) must be provided to the system. The way to acquire these data will be: Wind field is obviously provided by weather forecast models
but wake vortex tracking and predicting need accurate data in the defined critical areas, requiring direct measurements
EDR is a parameter which can be : computed from wind measurements coming from different sensors.
Provided by weather forecast models
no specific sensor is required to acquire this parameter.
Temperature vertical profile can be: measured by a RASS associated to a SODAR or a Wind Profiler.
Provided by weather forecast models
the recommendation is to rely on this forecast model
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27 /27 Synthesis of SESAR P12.2.2 XP0 Sensors Trials Campaign at CDG
Analysis of Meteorological Data
The wind field were performed using data that were provided every 10minutes.
For safety critical aviation applications however, update intervals around 1 minute are foreseen at least for the most critical parameters
The Eddy Dissipation Rate, EDR, needed for Wake-Vortex Predictor is still a subject of research: EDR retrieval algorithms derived from RADAR or LIDAR wind profile
measurements are under study
EDR Retrieval algorithm is already available for the UHF wind profiler.
Regarding the X band RADAR : a rationalization could be done by using a multifunction RADAR, able to monitor
both wind and wake vortices.
As the scanning domains are different, this RADAR should be an electronic scanning one. This kind of RADAR will be used for the following phases o the project.
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28 /28 Sensors Requirements
General Recommendations
The sensors deployed for a Wake Vortex Detection, Prediction andDecision Support Tool are one of the most vitals parts of the whole system. Since the sensors are in charge of observing the reality, it is essential for the output data to be useful, reliable and on time.
The sensors set used in such a system will have to be compliant with the following general recommendations Quality of the acquisitions: output data must be valid for determining the separation
between each pair of aircraft, Weather and visibility conditions: even if each sensor cannot reach the required
performances in all weather conditions, the sensors set as a whole shall detect wake vortices with acceptable quality for the system purposes under all possible weather and visibility conditions,
Real-time measurement and processing. In order to provide operational aircraft separation support, the data acquired must be processed on a lapse of time short enough for the system output to be available in real time from the controller point of view.
Electromagnetic interferences.
Compromises in the positioning of sensors will have an impact ontheir real performance.
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29 /29 Synthesis of SESAR P12.2.2 XP0 Sensors Trials Campaign at CDG
Conclusions of XP0
XP0 confirmed the feasibility of a prototype based on existing sensor technologies.
Using combinations of sensors, models and real measurements, andthanks to some improved sensors already planned within the project (e.g. more powerful RADAR), it should be possible to reach current operational needs.
Considering the state of the art on sensor technology, and the needs for operational monitoring of Wake Vortices, it is recommended that further developments on sensor technology focus on: Check the performance of the selected technologies on a long-term basis, which will
allow verification of the overall reliability of the sensors and their maintenance needs.
Evaluate the opportunity for upgrading or replacement of some sensors with current R&D sub-systems.
For future, wake vortex decision support system performances should take advantage of technology progress on sensors and associated algorithms.
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30 /30
2010-2012 2013-2014 2015-2016
Phase 1 Phase 2 Phase 3
Data acquisition:Sensors
Benchmark(CDG )
Partial prototype:« Off-Line » demonstration
Time Based Separation(CDG )
Full scale prototype:« Shadow Mode »
Weather Dependant Separation(CDG )
WV sensors :• X-band radar (mech scan)•1.5 m Lidar• 2 m Lidars
Weather Sensors :• Ultrasonic Anemometers • Lidar Wind Profiler• UHF Radar Wind Profiler• SODAR• X-band weather radar
WVAS System :• Separation Mode Planner• Wake Vortex Predictors • WV Alerts• Operator MMIWV sensors :• X-band radar (Electronic scan)• selected LidarWeather Sensors :• Selected Wind profiling sensors
Full scale updated prototype:« Shadow Mode »
Pair Wise Separation( Frankfurt )
WVAS System :• Separation Mode Planner• Wake Vortex Predictors • WV Alerts• Operator MMIWV sensors :• X-band radar (elec scan)• selected LidarWeather Sensors :• Selected Wind profiling sensors
WVAS System :• Separation Mode Planner• Wake Vortex Predictors • WV Alerts• Operator MMIWV sensors :• X-band radar (elec scan)• selected LidarWeather Sensors :• Selected Wind profiling sensors
XP0Trials
Full scale simulation model
XP2Trials
XP3Trials
Model calibration & validationXP1
Trials
Deployment of a multifunction radar with electronic scanning in September, 2012
Next Phase : XP1 Trials, September/October 2012 at CDG
Sept Oct2012
Thales Air Operations 29/02/2012
31 /31 XP1 CDG Trials : WV & Wind Sensors Deployment
Wake Vortex & Wind 1.5 m
Lidar Scanner
UFR Radar Wind Profiler
Anemometers
Visibility
Wake Vortex & Wind
E-scan X-band Radar
Runway (landing)
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32 /32XP0/XP1 Wake-Vortex Radar Data for Radar simulator calibration
Radar model in clear air
UCL Wake-Vortex Radar Model V1.0 : simplified model with integrated LES
V2.0 : Fine LES simulation integrating turbulence
Code: matlab
Interested Evolution time: 0-180 s
Refractivity n
Log(Cn2)
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33 /33 XP0/XP1 Wake-Vortex Lidar Data for Lidar simulator calibration
Lidar model in clear air
UCL Wake-Vortex Lidar Model Analytical model: Burnham-Hallock
Clear-air conditions
CNR curves versus range from XP trials
Standard deviation on wind according to CNR from XP trials
Code: C++ and matlab
Interested Evolution time: 0-180 s
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34 /34 Questions