Internet of Thing Data
Internet of Things (IoT) data presents significant challenges due to its volume, heterogeneity, and dynamic nature, demanding efficient management and analysis for diverse applications. Current research focuses on developing robust indexing structures, employing deep learning models (like CNNs and GRUs) for classification and anomaly detection, and utilizing federated learning to address privacy concerns while enabling collaborative model training. These advancements are crucial for optimizing resource utilization, improving the accuracy and reliability of IoT-based predictions (e.g., in predictive maintenance and energy management), and unlocking the full potential of IoT data in various sectors.
Papers
CityGPT: Towards Urban IoT Learning, Analysis and Interaction with Multi-Agent System
Qinghua Guan, Jinhui Ouyang, Di Wu, Weiren Yu
A Gap in Time: The Challenge of Processing Heterogeneous IoT Point Data in Buildings
Xiachong Lin, Arian Prabowo, Imran Razzak, Hao Xue, Matthew Amos, Sam Behrens, Stephen White, Flora D. Salim