TY - EJOU AU - Alenazi, Mohammed M. TI - EdgeST-Fusion: A Cross-Modal Federated Learning and Graph Transformer Framework for Multimodal Spatiotemporal Data Analytics in Smart City Consumer Electronics T2 - Computers, Materials \& Continua PY - 2026 VL - 87 IS - 2 SN - 1546-2226 AB - Multimodal spatiotemporal data from smart city consumer electronics present critical challenges including cross-modal temporal misalignment, unreliable data quality, limited joint modeling of spatial and temporal dependencies, and weak resilience to adversarial updates. To address these limitations, EdgeST-Fusion is introduced as a cross-modal federated graph transformer framework for context-aware smart city analytics. The architecture integrates cross-modal embedding networks for modality alignment, graph transformer encoders for spatial dependency modeling, temporal self-attention for dynamic pattern learning, and adaptive anomaly detection to ensure data quality and security during aggregation. A privacy-preserving federated learning protocol with differential privacy guarantees enables collaborative model training without centralizing sensitive data. The framework employs data-quality-aware weighted aggregation to enhance robustness against noisy and malicious client updates. Experimental evaluation on the GeoLife, PeMS-Bay, and SmartHome+ datasets demonstrates that EdgeST-Fusion achieves 21.8% improvement in prediction accuracy, 35.7% reduction in communication overhead, and 29.4% enhancement in security resilience compared to recent baselines. Real-world deployment across three smart city testbeds validates practical viability with 90.0% average accuracy and sub-250 ms inference latency. The proposed framework remains feasible for deployment on heterogeneous and resource-constrained consumer electronics devices while maintaining strong privacy guarantees and scalability for large-scale urban environments. KW - Federated learning; graph transformer; spatiotemporal analytics; consumer electronics; smart cities; cross-modal fusion; edge computing; privacy preservation DO - 10.32604/cmc.2026.075966