Title: By: Ryan N. Smith,
1AUV Trajectory Design Based on Ocean Model
Predictions
- By Ryan N. Smith,
- Yi Chao, Burton H. Jones, David A. Caron, Peggy
P. Li and Gaurav S. Sukhatme
7th International Conference on Field and Service
Robots Cambridge, MA July 15, 2009
2The USC Center for Integrated Networked Aquatic
PlatformS
- CINAPS sin-aps
- Bridging the gap between technology,
communication, and the scientific exploration of
aquatic ecosystems. - Collaborative research effort between RESL,
usCLAB and Caron Lab at USC - A main area of CINAPS research is addressing
scientific questions regarding the formation,
propagation and prediction of Harmful Algal
Blooms (HABs).
3Robotic Embedded Systems Laboratory (RESL)?
- Design, implement and understand large-scale,
distributed, robotic systems. - Aggregate mobile robots and unattended sensors
into a sensor network - Applications in urban security, military
reconnaissance, and environmental monitoring.
4Introduction
- Develop an innovative sampling method
- Utilize ocean model predictions
- Generate trajectories for AUVs that track an
ocean feature - Allow for the collection of data that is both
meaningful to the oceanographic community as well
as increases the skill of the predictive model.
5Goals
- Design and implement an innovative technology
chain for AUV trajectory design - Multi-agency collaboration
- USC -gt JPL -gt Field Robot -gt JPL -gt USC
- Develop basic algorithms for feature tracking by
an AUV utilizing ocean model data - Demonstrate the ability to task, assimilate data
and retask AUVs currently operating in the field
for the purpose of feature tracking
6Oceanography Motivation
- Harmful Algal Blooms (HABs)?
- Rapid growth of algae and phytoplankton
- Produce potent neurotoxins that can be
transferred through the food web - Toxins affect zooplankton, shellfish, fish,
birds, marine mammals, and even humans - Blooms are most likely to occur in an areas of
cooler, nutrient-rich waters - Both occur in southern California due to
upwelling and anthropogenic inputs
7Features of Interest
- Fresh water plume
- River discharge
- Anthropogenic input
- Nutrient-rich, low density water
- Potential for productivity
- Interested in the centroid (eye of the storm) and
the extent of dispersion (boundary)? - Eddy
- Cold-core eddies raise the thermocline and bring
cooler, nutrient-rich water toward the surface - Promotes productivity
- Interested in a cross-section view
Images courtesy of Ocean Imaging, Inc. (top) and
Defant, 1927 (bottom).
8Ocean Model
- Regional Ocean Model System
- ROMS - Split-explicit, free-surface,
topography-following-coordinate oceanic model - Daily provides a 12-hour hindcast and 36 hour
forecast - Open-source and widely accepted in many
communities - Carried out at JPL, California Institute of
Technology under a contract with NASA - Initially developed to model the ocean in
southern California
1 km
9 km
3 km
12 km
9Mobile Sensor Platform
- Webb Slocum Autonomous Glider
- Passive actuation
- Long-term deployments (1 month)?
- Slow moving vehicle (1km/hr)?
- Waypoint-based trajectory plan
- Robust
- Depth-rated to 200m
10General Concept
- Track and collect daily information about an
ocean process or feature - Feature has a lifespan on the order of weeks
- Tracking trajectory duration of approximately 12
hours - Assimilate data into ROMS for an updated
prediction - Generate a new tracking trajectory
- Repeat until feature is out of range or no longer
of interest
11Trajectory Design Algorithm
- 1. Feature Observation and Delineation
- Feature bounded by a set of points referred to as
drifters - 2. ROMS Prediction
- Hourly prediction for given time period
- Web-based GUI developed for this research
- 3. Waypoint Generation Algorithm
- 4. Trajectory QA/QC
- 5. Mission Upload
- 6. Mission Execution
- 7. Data Download and Assimilation
12http//ourocean.jpl.nasa.gov/SCB
13Web-based Interface
14Centroid Tracking Algorithm
- Input Hourly predictions of the locations of the
drifters - Trajectory waypoints are the predicted locations
of the centroid at 4 hour time intervals. - Minimize surfacings (safety)?
- Three possibilities
- dlltd(Ci,Ci4)ltdu
- d(Ci,Ci4)ltdl
- d(Ci,Ci4)gtdu
Ci
d(Ci,Ci4)?
dllt
lt du
d(Ci,Ci4)ltdl
d(Ci,Ci4)gtdu
Ci4
Ci6
15Boundary Tracking
- Input Hourly predictions of the locations of the
drifters - Trajectory waypoints computed for 4 hour time
intervals. - Circle of radius rv4 is drawn around the
vehicle or its predicted location (distance
reachable in 4 hours)? - The intersection of this circle with the boundary
leads to three possibilities - ?2 intersection points
- 1 intersection point
- Empty intersection
Average azimuth of all drifters
16Data Assimilation
17Observational Area
Nevada
San Francisco
Las Vegas
California
Los Angeles
600 km
18Southern California Bight
100 km
19Testing Region
10 km
20Implementation Results
- Two Webb gliders
- On deployment for communications testing
- Task the gliders to track a feature of interest
- Proof of concept mission
- Test the technology chain
- Tracked the centroid and boundary
- Two separate tracking trajectories
- Data upload and assimilation between missions
- Feature re-delineated for day two
21May 11, 2009 1100a
5 km
22May 11, 2009 300p
5 km
23May 11, 2009 1100p
5 km
24May 12, 2009 300a
5 km
25Intermission
- 16 hour mission
- Data sent back from glider for assimilation
- Re-delineate feature of interest
- Updated ROMS prediction
26May 12, 2009 300p
5 km
27May 12, 2009 700p
5 km
28May 12, 2009 1100p
5 km
29May 13, 2009 300a
5 km
30May 13, 2009 700a
5 km
31Conclusions
- Established and demonstrated successful
implementation of a new technology chain for AUV
trajectory design - Effectively tasked, assimilated data and retasked
AUVs in the field for feature tracking - Working on incorporating 3D currents into the
trajectory design - Preparing for Bight 2010 comprehensive survey
of SCB. - 4 gliders, 2 months
- Planning to track and monitor a REAL HAB event.