STEP: Towards a Semantics-Aware Framework for Instrumenting Community-Scale Infrastructure

Abstract

Urban communities rely on built utility infrastructures as critical lifelines that provide essential services such as water, gas, and power, to sustain modern socioeconomic systems. These infrastructures consist of underground and surface-level assets which are operated and geo-distributed over large regions where continuous monitoring for anomalies is required but challenging to implement. This paper addresses the problem of deploying heterogeneous IoT sensors in these networks to support future decision-support tasks, e.g., anomaly detection, source identification and mitigation. We use \emph {stormwater} as a driving use case; these systems are responsible for drainage and flood control, but act as conduits that can carry contaminants to receiving waters. Challenges towards effective monitoring include the transient and random nature of the pollution incidents, the scarcity of historical data, the complexity of the system, and technological limitations for real-time monitoring. We design a SemanTics-aware sEnsor Placement framework, entitled STEP, to capture pollution incidents using structural, behavioral, and semantic aspects of the infrastructure. We leverage historical data to inform our system with new, credible instances of potential anomalies. Several key topological and empirical network properties are used in proposing candidate deployments which optimize the balance between multiple objectives. We also explore the quality of anomaly representation in the network through new perspectives, and provide techniques to enhance the realism of the anomalies considered in a network. We evaluate STEP on six real-world stormwater networks in Southern California, USA, which shows its efficacy in monitoring areas of interest over other baseline methods.

Publication
Data-Centric Engineering