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RBS Tutorial

RBS Tutorial. CIS 488/588 Bruce R. Maxim UM-Dearborn. Breaker Capabilities. Obstacle avoidance Pursuit Evasion Weapon selection based on situation Prediction of enemy movement Basic aiming and firing at targets Tactical reasoning. Technology. Second-generation RBS

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RBS Tutorial

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  1. RBS Tutorial CIS 488/588 Bruce R. Maxim UM-Dearborn

  2. Breaker Capabilities • Obstacle avoidance • Pursuit • Evasion • Weapon selection based on situation • Prediction of enemy movement • Basic aiming and firing at targets • Tactical reasoning

  3. Technology • Second-generation RBS • Declarative XML rules • Boolean symbols used to represent rules • Conflict resolution based on rule ordering • Rule interpreter written in C++ • Rules loaded using lightweight XML interpreter • C++ STL templates used extensively • (e.g. vector and map)

  4. Principles • Rule-base systems can emulate other AI system types • Breaker RBS emulates a finite state machine • Rules will be used to model the FSM control system, not directed graphs

  5. How can we execute animat behaviors in parallel if rules are fired one at a time? • Allow the interpreter to fire all applicable rules during each match cycle. • Rule priorities become irrelevant under this option • This will increase the complexity of most rule conditions • No execution preconditions can be used since the interpreter does not stop at the first match • All rule assumptions must be written explicitly

  6. How can we execute animat behaviors in parallel if rules are fired one at a time? • Make the system use effectors that have persistent effects over time, rather than only instantaneous actions. • This reduces the responsiveness of the system • When one body part get control over the system the others will need to wait for the next match cycle • Tracking the states of the effectors involves techniques that are better suited to FSM’s

  7. How can we execute animat behaviors in parallel if rules are fired one at a time? • Separate rulebase in to chunks, each of which controls only one body part • This techniques is called decomposition by control • Only problem is “what’s the best way to split up the rulebase so that it is easy to manage?” • The implementation of this requires the use of context variables in the rules (e.g. context limiting conflict resolution) • Using a tree structure to store rules so that only rules for active chunks are considered

  8. Senses • Used to gather environment information when requested by the RBS • Functions are defined to retrieve data via the world interfaces and convert it to Boolean symbols for WM storage • Most functions defined in Brain.h as in-line functions

  9. Sensors Used - 1 • Left Obstacle, Front Obstacle, Right Obstacle • Returns true if way is clear • Detects walls, ledges, and steep ridges • Collision • Returns true if collision will move requested is to an occupied space • Enemy, Health Item, Armor Item • Returns true if presence of object is within animat’s field of view

  10. Sensors Used - 2 • Close, Far • Enemy close < = 10 steps away • Enemy far > 20 steps • Low Health, Full Health, Full Armor • Animat personal attributes • Low values < 30% • Full values = 100%

  11. Actions • Allow RBS to apply its decision by controlling the animat’s body • Functions implemented in both Brain.h and Brain.cpp • Actions are grouped into chunks based on body part they control • Actions for looking around and bouncing off obstacles cannot be implemented using a symbolic RBS

  12. Movement Actions • Forward • Move in direction body is facing • Seek • Head toward enemy • Flee • Move away from enemy • Side • Take lateral step (use as strafing motion) • Avoid • Move in direction of collision normal if obstacle hit

  13. View Control Actions • Look Left • Rotate View –30% • Look Right • Rotate view +30% • Look Behind • Rotate view 90+ degrees left or right • Look to Enemy/Health/Armour • Turn to face enemy in field of view • Look Around • Rotate view

  14. Weapon Control Actions • Use Weapon • Select one of four weapons (rocket launcher, railgun, chaingun, hyperblaster) • Fire • Pull trigger on current weapon

  15. Action Chunk Rules • Internal symbols are set so that other rules can check them and decide what to do • The order of the first two rules is not important • IF enemy AND health_low THEN retreat • IF enemy AND NOT distance_close THEN pursue • IF enemy THEN dodge • IF true THEN NOT retreat AND NOT pursue AND NOT dodge

  16. Movement Chunk Rules • Rule order is very important, obstacle avoidance has highest priority • By default animat moves forward with travel directed by view control in later chunk • IF collision AND enemy THEN move_avoid • IF retreat THEN move_flee • IF pursue THEN move_seek • IF dodge THEN move_side IF true THEN move_forward

  17. Weapon Chunk Rules • Decisions are based on distance only • Each rule has to symbols so that a backup weapon is selected when one is out of ammo • Weapons with C++ effectors declared last have priority over previous ones for ties • IF enemy AND distance_far THEN use_rocketlauncher AND use_railgun • IF enemy AND NOT distance_far THEN use_chaingun AND use_hyperblaster

  18. View Control Chunk Rules - 1 • First rule forces animal to turn toward enemy and fire whenever possible • IF enemy THEN look_enemy AND fire • Next three rules focus on collision prevention • IF obstacle_front AND obstacle_left AND obstacle_right THEN look_behind • IF obstacle_front AND obstacle_left THEN look_right • IF obstacle_front AND obstacle_right THEN look_left

  19. View Control Chunk Rules - 2 • These rules gather armor and health items if they are required • IF NOT health_full AND health_item THEN look_health • IF NOT armor_full AND armor_item THEN look_armor • Allow for wandering • IF true THEN look_around

  20. Breaker • Let’s view the demo • Author recommends disabling firing rule to make the end more quickly

  21. Evaluation - 1 • Weapon selection is satisfactory, except that weapons are swapped when two players get close to each other • Collision detection is not perfect (would be better to use dead reckoning based on physics information) • Animat only collects health and armor items by design, weapons and ammo only collected by accident

  22. Evaluation – 2 • Obstacle sensors only check a few steps ahead and animats travel at full speed (so animats occasionally fall off of ledges) • Worse then that animat spins in the air trying to avoid all obstacles on the way down (more realistic without spinning)

  23. Evaluation - 3 • Using only Booleans in WM limits our RBS somewhat (e.g. it can’t even count) • Large arrays of symbols are not searched efficiently (O(N) on the average) • Rule matching with the separate chunks is also O(N) • All symbols must be declared before the rules are loaded

  24. Conclusion • RBS are flexible and potentially powerful • RBS capable of both low-level control and decision making • Rules are modular so adding new rules is fairly easy • Because they are data driven, they can be light weight alternatives to scripting languages for some situations

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