Energy-Efficient Hierarchical Federated Anomaly Detection for the Internet of Underwater Things via Selective Cooperative Aggregation

arXiv cs.LG / 3/27/2026

💬 OpinionSignals & Early TrendsIdeas & Deep AnalysisModels & Research

Key Points

  • The paper addresses how to run accurate anomaly detection in the Internet of Underwater Things despite low-bandwidth, energy-intensive acoustic links that make direct sensor-to-surface communication difficult.
  • It introduces an energy-efficient hierarchical federated learning framework with feasibility-aware sensor-to-fog association, compressed model-update transmission, and selective cooperative aggregation among fog nodes.
  • The proposed three-tier architecture limits most communications to short-range clusters and activates fog-to-fog exchange only when nearby clusters can provide meaningful benefit.
  • Using a physics-grounded underwater acoustic model, the study jointly evaluates detection quality, communication energy, and network participation, showing hierarchical learning can preserve full participation even when only ~48% of sensors can reach the gateway directly (in a 200-sensor synthetic case).
  • Results indicate selective cooperative aggregation reduces energy by about 31–33% versus always-on inter-fog exchange, and compressed uploads cut total energy by roughly 71–95% in sensitivity-matched tests while maintaining competitive detection quality on multiple benchmarks.

Abstract

Anomaly detection is a core service in the Internet of Underwater Things, yet training accurate distributed models underwater is difficult because acoustic links are low-bandwidth, energy-intensive, and often unable to support direct sensor-to-surface communication. Standard flat federated learning therefore faces two coupled limitations in underwater deployments: expensive long-range transmissions and reduced participation when only a subset of sensors can reach the gateway. This paper proposes an energy-efficient hierarchical federated learning framework for underwater anomaly detection based on three components: feasibility-aware sensor-to-fog association, compressed model-update transmission, and selective cooperative aggregation among fog nodes. The proposed three-tier architecture localises most communication within short-range clusters while activating fog-to-fog exchange only when smaller clusters can benefit from nearby larger neighbours. A physics-grounded underwater acoustic model is used to evaluate detection quality, communication energy, and network participation jointly. In large synthetic deployments, only about 48% of sensors can directly reach the gateway in the 200-sensor case, whereas hierarchical learning preserves full participation through feasible fog paths. Selective cooperation matches the detection accuracy of always-on inter-fog exchange while reducing its energy by 31-33%, and compressed uploads reduce total energy by 71-95% in matched sensitivity tests. Experiments on three real benchmarks further show that low-overhead hierarchical methods remain competitive in detection quality, while flat federated learning defines the minimum-energy operating point. These results provide practical design guidance for underwater deployments operating under severe acoustic communication constraints.