Login / Signup

Building an IoT Platform Based on Service Containerisation.

Mário AntunesAna Rita SantiagoSérgio MansoDiogo RegateiroJoão Paulo BarracaDiogo GomesRui L Aguiar
Published in: Sensors (Basel, Switzerland) (2021)
IoT platforms have become quite complex from a technical viewpoint, becoming the cornerstone for information sharing, storing, and indexing given the unprecedented scale of smart services being available by massive deployments of a large set of data-enabled devices. These platforms rely on structured formats that exploit standard technologies to deal with the gathered data, thus creating the need for carefully designed customised systems that can handle thousands of heterogeneous data sensors/actuators, multiple processing frameworks, and storage solutions. We present the SCoT2.0 platform, a generic-purpose IoT Platform that can acquire, process, and visualise data using methods adequate for both real-time processing and long-term Machine Learning (ML)-based analysis. Our goal is to develop a large-scale system that can be applied to multiple real-world scenarios and is potentially deployable on private clouds for multiple verticals. Our approach relies on extensive service containerisation, and we present the different design choices, technical challenges, and solutions found while building our own IoT platform. We validate this platform supporting two very distinct IoT projects (750 physical devices), and we analyse scaling issues within the platform components.
Keyphrases
  • high throughput
  • healthcare
  • mental health
  • electronic health record
  • machine learning
  • big data
  • physical activity
  • quality improvement
  • single cell
  • deep learning
  • low cost
  • affordable care act