IGADA-IoT: IoT Sensor Energy Optimization in Wireless Sensor Networks Driven by Automatic Data Augmentation
IGADA-IoT proposes an information gap-guided automatic data augmentation framework for IoT sensor energy optimization in wireless sensor networks. The method employs hierarchical multi-generator collaboration scheduling (HMGCS) and joint information gap-model performance evaluation (IGMP-EC). Results: +7.27% average accuracy improvement, +8.67% vs advanced augmentation methods.