Privacy-Preserving Data Quality Assessment for Time-Series IoT Sensors

Privacy-Preserving Data Quality Assessment for Time-Series IoT Sensors

Authors: N. Chakraborty, A. Sharma, J. Dutta. H. D. Kumar

This paper proposes a novel framework for automated, objective, and privacy-preserving data quality assessment of time-series data from IoT sensors deployed in smart cities. We leverage custom, autonomously computable metrics that parameterise the temporal performance and adherence to a declarative schema document to achieve objectivity. Additionally, we utilise a trusted execution environment to create a “data-blind” model that ensures individual privacy, eliminates assessee bias, and enhances adaptability across data types. This paper describes this data quality assessment methodology for IoT sensors, emphasising its relevance within the smart-city context while addressing the growing need for privacy in the face of extensive data collection practices.

Journal/Conference

2024 IEEE International Conference on Internet of Things and Intelligence Systems (IoTaIS)