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Robots Introduction Based on the lecture by Dr. Hadi Moradi University of Southern California
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Outline Control Approaches Feedback Control Cybernetics Braitenberg Vehicles Artificial Intelligence Early robots Robotics Today Why is Robotics hard
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Control Sensing => Action Reactive –Don’t think, act: Animals Deliberative –Think hard, act later: Chess Hybrid –Think and act in parallel: car races Behavior-based –Think the way you act: human
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Reactive Systems Collection of sense-act rules –Stimulus-response Advantages: –? Disadvantages –?
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Reactive Systems Collection of sense-act rules –Stimulus-response Advantages: –Inherently parallel –No/minimal state –Very fast –No memory Disadvantages –No planning –No learning
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Deliberative Systems 3 phase model: –Sense –Plan –Act Example: Chess Advantages: –? Disadvantages: –?
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Deliberative Systems 3 phase model: –Sense –Plan –Act Advantages: –can plan –Can learn Disadvantages: –Needs world model –Searching and planning are slow –World model gets outdated
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Feedback Control React to the sensor changes Feedback control == self-regulation Q: What type of control system is it? Feedback types: –Positive –Negative
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- and + Feedback Negative feedback: –Regulates the state/output –Examples: Thermostat, bodies, … Positive feedback: –Amplifies the state/output –Examples: Stock market The first use: ancient Greek water system Re-invented in the Renaissance for ovens
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W. Grey Walter’s Tortoise 1953 Machina Speculatrix Sensors –1 photocell, –1 bump sensor 2 motors Reactive control
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W. Grey Walter’s Tortoise Behaviors: seeking light, head toward weak light, back away from bright light, turn and push (obstacle avoidance), recharge battery. Basis for creating adaptive behavior-based
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Turtle Principles Parsimony: simple is better –e.g., clever recharging strategy Exploration/speculation: keeps moving –except when charging Attraction (positive tropism): –motivation to approach light Aversion (negative tropism): –motivation to avoid obstacles, slopes Discernment: ability to distinguish and make choices –productive or unproductive behavior, adaptation Ducking
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Tortoise behavior A path: a candle on top of the shell
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Tortoise behavior Two turtles: Like dancing
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New Tortoise
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Question How does it do the charging? –Note: When the battery is low, it goes for the light.
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Braitenberg Vehicles Valentino Braitenberg –early 1980s Extended Walter’s mode Based on analog circuits Direct connections between light sensors and motors Complex behaviors from very simple mechanisms
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Braitenberg Vehicles Complex behaviors from very simple mechanisms
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Braitenberg Vehicles By varying the connections and their strengths, numerous behaviors result, e.g.: –"fear/cowardice" - flees light –"aggression" - charges into light –"love" - following/hugging –many others, up to memory and learning! Reactive control Later implemented on real robots Check: http://www.duke.edu/~mrz/braitenberg/braitenberg.html http://www.duke.edu/~mrz/braitenberg/braitenberg.html Bots order Styrofoam cubes (16 min 30 sec) –Tokyo Lecture 3 time 24:30-41:00
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Brief History 1750: Swiss craftsman create automatons with clockwork to play tunes 1917: Word Robot appeard in Karel Capek’s play 1938: Issac Asimov wrote a novel about robots 1958: Unimation (Universal Automation) co started making die-casting robots for GM 1960: Machine vision studies started 1966: First painting robot installed in Byrne, Norway. 1966: U.S.A.’s robotic spacecraft lands on moon. 1978: First PUMA (Programmable Universal Assembly) robot developed by Unimation. 1979: Japan introduces the SCARA (Selective Compliance Assembly Robot Arm).
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Early Artificial Intelligence "Born" in 1955 at Dartmouth "Intelligent machine" would use internal models to search for solutions and then try them out (M. Minsky) => deliberative model! Planning became the tradition Explicit symbolic representations Hierarchical system organization Sequential execution
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Artificial Intelligence Early AI had a strong impact on early robotics Focused on knowledge, internal models, and reasoning/planning Eventually (1980s) robotics developed more appropriate approaches => behavior-based and hybrid control AI itself has also evolved... Early robots used deliberative control Intelligence through construction (5 min 20 sec) –Tokyo Lecture 2 time 27:40-33:00
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