Litcius/Paper detail

Prediction Error-Driven Memory Consolidation for Continual Learning: On the Case of Adaptive Greenhouse Models

Guido Schillaci, Uwe Schmidt, Luis Miranda

2021KI - Künstliche Intelligenz10 citationsDOIOpen Access PDF

Abstract

Abstract This work presents an adaptive architecture that performs online learning and faces catastrophic forgetting issues by means of an episodic memory system and of prediction-error driven memory consolidation. In line with evidence from brain sciences, memories are retained depending on their congruence with the prior knowledge stored in the system. In this work, congruence is estimated in terms of prediction error resulting from a deep neural model. The proposed AI system is transferred onto an innovative application in the horticulture industry: the learning and transfer of greenhouse models. This work presents models trained on data recorded from research facilities and transferred to a production greenhouse.

Topics & Concepts

ForgettingCongruence (geometry)Computer scienceArtificial intelligenceArtificial neural networkGreenhouseMachine learningEngineeringWork (physics)Consolidation (business)Deep learningMemory consolidationOn the flyTransfer of learningMean squared prediction errorTraining setAdaptive learningTurbineOrganizational memoryAdaptive systemProduction (economics)Long short term memoryDowntimeDomain Adaptation and Few-Shot LearningNeural Networks and ApplicationsAI-based Problem Solving and Planning