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A dependable Monitoring Platform based on Wireless Sensor Networks for Water Environments

This project aims to develop a reliable monitoring platform for aquatic environments, utilizing wireless sensor networks. The platform will support monitoring, controlling, and mitigating natural disasters in real-time, while also improving the quality of measurements and predictions. The case study will focus on the Baía do Seixal in the Tagus estuary, providing valuable services to the local population and economy. The project will evaluate existing technologies, develop a reliability strategy, and implement a dependable communication framework.

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A dependable Monitoring Platform based on Wireless Sensor Networks for Water Environments

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  1. A dependable Monitoring Platform based on Wireless Sensor Networks for Water Environments

  2. Overview Motivation Objectives Case study Technical approach Questions and answers

  3. Aquatic information systems Anticipate events of pollution and support the emergency response Support daily and long-term management actions to minimize the risks for public and ecosystems health Support activities in the water bodies (management and leisure)

  4. Aquatic monitoring and forecast systems The integrated use of wireless sensors and web-based decision support systems plays a main role in monitoring, controlling, relieving and assessing natural disasters Real-time aquatic monitoring, for water level, flow or precipitation values, is essential in losses prevention: • Confirm process-based model predictions • Support alerts issuing • Support decision-making (mitigation actions) The quality of the data that feeds these systems depends on the quality of the measurements that are used to continually validate the involved predictions

  5. Faulty data in harsh environments

  6. Faulty data in harsh environments

  7. Failure detection and data correction

  8. Objectives Develop a dependable monitoring platform for application in aquatic environments using wireless sensor networks Address data communication quality problems Demonstrate the results using a real-time hydrodynamic and water quality monitoring and forecast system of the Tagus estuary

  9. Case Study – Baía do Seixal Baía do Seixal - provides valuable services (e.g., recreational activities, inundation protection) for both the local population and economy, and the global ecological functioning of the Tagus estuary AQUAMON will produce daily forecasts (water levels, velocities, salinity and water temperature) and implement a real-time monitoring network - to continuously and dependably assess the environmental status of the bay

  10. Dependable WSN-based communication Objectives • Evaluate existing technologies, namely high-power ZigBee, LoRA and NB-IoT • Define a low-level management interface for: • RF channel selection • Address configuration • Power management • Collection of performance data • Etc. • Experimentally characterize communication quality • In the demonstration deployment site • Develop a reliability strategy to mitigate communication problems (e.g. interference of water waves)

  11. Dependable Monitoring Framework

  12. Data Processing QE received measurement from sensor S1 quality coefficient q FD mS1 failure? MR corrected measurement m’ predictions P mS2 S1 S2 SN . . . P – Prediction FD – Failure Detection QE – Quality Evaluation MR – Measurement Reassessment mSN past measurements . . . predictions based on past measurements

  13. Prediction models • Notes on training • Training data representative of one entire year and fault free • Several ANNs trained for each sensor output, exploiting different correlations: • Using only target sensor data • Using only neighbour sensor data • Using both target and neighbour sensor data Multilayer perceptron ANN Use Artificial Neural Network to predict the value of a sensor based on past measurements of that sensor and of neighbour sensors Depending on combinations, multiple predictions can be obtained Requires careful selection of sensors and features to be used Input vectors must include data from about 12 hours (a complete tidal cycle)

  14. Questions? https://aquamon.di.fc.ul.pt/

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