Manas, KumarKumarManasPaschke, AdrianAdrianPaschke2025-08-122025-08-122025-06-22https://publica.fraunhofer.de/handle/publica/49044210.1109/IV64158.2025.11097371This comprehensive survey examines the integration of knowledge-based approaches in autonomous driving systems, specifically focusing on trajectory prediction and planning. We extensively analyze various methodologies for incorporating domain knowledge, traffic rules, and common-sense reasoning into autonomous driving systems. The survey categorizes and analyzes approaches based on their knowledge representation and integration methods, ranging from purely symbolic to hybrid neuro-symbolic architectures. We examine recent developments in logic programming, foundation models for knowledge representation, reinforcement learning frame-works, and other emerging technologies incorporating domain knowledge. This work systematically reviews recent approaches, identifying key challenges, opportunities, and future research directions in knowledge-enhanced autonomous driving systems. Our analysis reveals emerging trends in the field, including the increasing importance of interpretable AI, the role of formal verification in safety-critical systems, and the potential of hybrid approaches that combine traditional knowledge representation with modern machine learning techniques.enSurveysReviewsLogic programmingKnowledge based systemsKnowledge representationReinforcement learningKnowledge Integration Strategies in Autonomous Vehicle Prediction and Planning: A Comprehensive Surveyconference paper