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Intelligent Autonomous Vehicles

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Intelligent Autonomous Vehicles. J. A. Farrell Department of Electrical Engineering University of California, Riverside. Value Judgment Sensor World Behavior Processing Model Generation Sensors Structure Actuators. World. Intelligent Autonomous Vehicles. - PowerPoint PPT Presentation
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Intelligent Autonomous Vehicles J. A. Farrell Department of Electrical Engineering University of California, Riverside
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Page 1: Intelligent Autonomous Vehicles

Intelligent Autonomous Vehicles

J. A. FarrellDepartment of Electrical Engineering

University of California, Riverside

Page 2: Intelligent Autonomous Vehicles

Intelligent Autonomous Vehicles

ValueJudgment

Sensor World BehaviorProcessing Model Generation

Sensors Structure Actuators

World

Sensors Structure Actuators

World

SensorProcessing

BehaviorGeneration

Planning

WorldModel

Behavior Coordination

Page 3: Intelligent Autonomous Vehicles

February 2009 UCR EE Department951-827-2159

Lane change: Interior view

Page 4: Intelligent Autonomous Vehicles

Q: BehaviorsGT – go to point PUS – uninformed searchIS – informed searchMI – maintain: inMO – maintain: outPD – post-declaration maneuvers

: Eventsf – finishc – detect chemical @td

n1 – no detection at t = td + t1

d – declare source

DES: Chemical Plume TracingDesign behaviors Q, event definitions , and transition function such that an autonomous underwater vehicle (AUV) will

• Proceed from a home location to a region of operation• Search for a chemical plume• Track a chemical plume in a turbulent flow to its source• Declare the source location• Return home

Page 5: Intelligent Autonomous Vehicles

Q: BehaviorsGT – go to point PUS – uninformed searchIS – informed searchMI – maintain: inMO – maintain: outPD – post-declaration maneuvers

: Eventsf – finishc – detect chemical @td

n1 – no detection at t = td + t1

d – declare source

DES: Chemical Plume TracingDesign behaviors Q, event definitions , and transition function such that an autonomous underwater vehicle (AUV) will

• Proceed from a home location to a region of operation• Search for a chemical plume• Track a chemical plume in a turbulent flow to its source• Declare the source location• Return home

f f

c c f

f c

n1 d

f

GT(P)

GT(H) PD

MI MO

US IS

Page 6: Intelligent Autonomous Vehicles

CPT In-water Experimental Results (June 2003)

Page 7: Intelligent Autonomous Vehicles

AUV for Hull Search

Behaviors:• velocity & angular rate• velocity & attitude• trajectory following w/ zero attitude• trajectory following w/ nonzero attitude• surface following• hold position and attitude• scan object at offset

Sim

Page 8: Intelligent Autonomous Vehicles

UCR EE Department951-827-2159

Guidance: Positioning & GIS

Page 9: Intelligent Autonomous Vehicles

UCR EE Department951-827-2159

Driver Warning• Lane Departure Warning & Guidance

– Requirement:• Accurate position determination relative to lane

• Collision Warning– Accurate determination of position relative to

nearby vehicles• Absolute position based

– Accurate position determination– Communication between vehicles

• Relative position based– Feature based: Vision, radar, lidar

Page 10: Intelligent Autonomous Vehicles

UCR EE Department951-827-2159

Project Subgoals• Absolute Position Determination

– Determines: earth relative position, velocity,acceleration, attitude, angular rates

• Relative Position Determination– Lane relative– Neighboring vehicle relative

• Vehicle Control– Determine the steering commands to force

the vehicle states to desired values.

d

r

Page 11: Intelligent Autonomous Vehicles
Page 12: Intelligent Autonomous Vehicles

Enabling Technological Advances• Computational Hardware• Sensors and Sensor Processing• Computational Reasoning• Control Theoretic Advances• Software Engineering Principles

Topics:– Deliberative & reactive planning– Behaviors & nonlinear control– Discrete event & hybrid systems– Theory & practicality: Cognitive mapping

Sensors Structure Actuators

World

SensorProcessing

BehaviorGeneration

Planning

WorldModel

Behavior Coordination

Page 13: Intelligent Autonomous Vehicles

Concluding Comments• Turing Test:

– Optimal– Strong super-human: performs better than all humans– Super human: performs better than most humans– Sub-human: performs worse than most humans

• Intelligent AV Capabilities, e.g.:

– All involve feedback processes, w/ many challenging & unsolved problems

– Control expertise has & continues to expand its role, both developing & utilizing new tools, to yield increasingly robust and capable systems

• The concept of behaviors, combined w/ advanced control methods, enables robust abstraction for higher level IAV performance

Navigation ControlData fusion Map buildingPlan management Learning


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