0000000000757078

AUTHOR

Pei Wang

showing 3 related works from this author

Agents in dynamic contexts, a system for learning plans

2020

Reproducing the human ability to cooperate and collaborate in a dynamic environment is a significant challenge in the field of human-robot teaming interaction. Generally, in this context, a robot has to adapt itself to handle unforeseen situations. The problem is runtime planning when some factors are not known before the execution starts. This work aims to show and discuss a method to handle this kind of situation. Our idea is to use the Belief-Desire-Intention agent paradigm, its the Jason reasoning cycle and a Non-Axiomatic Reasoning System. The result is a novel method that gives the robot the ability to select the best plan.

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniReasoning systemComputer science020207 software engineeringContext (language use)02 engineering and technologyPlan (drawing)Field (computer science)Human–robot interactionPlanningWork (electrical)Human–computer interaction020204 information systems0202 electrical engineering electronic engineering information engineeringRobotBDIHuman-robot interactionJason
researchProduct

Comparative Reasoning for Intelligent Agents

2023

We demonstrate new comparative reasoning abilities of NARS, a formal model of intelligence, which enable the asymmetric comparison of perceivable quantifiable attributes of objects using rela- tions. These new abilities are implemented by extending NAL with addi- tional inference rules. We demonstrate the new capabilities in a bottle- picking experiment on a mobile robot running ONA, an implementation of NARS.

Settore ING-INF/05 - Sistemi Di Elaborazione Delle InformazioniVisual Object ComparisonComparative RelationNon-Axiomatic LogicComparative ReasoningNARSInference Rule
researchProduct

Self in NARS, an AGI System

2018

This article describes and discusses the self-related mechanisms of a general-purpose intelligent system, NARS. This system is designed to be adaptive and to work with insufficient knowledge and resources. The system’s various cognitive functions are uniformly carried out by a central reasoning-learning process following a “non-axiomatic” logic. This logic captures the regularities of human empirical reasoning, where all beliefs are revisable according to evidence, and the meaning of concepts are grounded in the system’s experience. NARS perceives its internal environment basically in the same way as how it perceives its external environment although the sensors involved are completely diff…

general intelligence0209 industrial biotechnologyself-controlComputer scienceProcess (engineering)lcsh:Mechanical engineering and machineryControl (management)02 engineering and technologyconsciousnessConstructiveMental operationslcsh:QA75.5-76.9503 medical and health sciences020901 industrial engineering & automation0302 clinical medicineHuman–computer interactionArtificial Intelligencelcsh:TJ1-1570Meaning (existential)Original ResearchRobotics and AISelf-organizationnon-axiomatic logicCognitionself-organizationComputer Science ApplicationsSelf-awarenesslcsh:Electronic computers. Computer scienceself-awareness030217 neurology & neurosurgeryFrontiers in Robotics and AI
researchProduct