Proceedings Article10.1109/ICCP51029.2020.9266216
A Hyperledger integration for audit-enhanced decision support in a smart water distribution system
Diana Arsene,Bogdan Pahontu,Alexandru Predescu,Mariana Mocanu,Ciprian Lupu +4 more
- 03 Sep 2020
- pp 499-504
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TL;DR: A system that uses a water distribution network to evaluate the integration of modern concepts in a smart, secure and distributed approach for consumer demand monitoring and an IoT architecture is used for collecting data from smart meters.
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Abstract: Water is one of the most important resources nowadays, which is why a good management can bring multiple benefits in modern society. With the continuous increase of water consumption, there is significant research regarding the efficiency of water control and monitoring process, in order to make optimal decisions for the proper functioning of a healthy eco-system. In the current paper we present a system that uses a water distribution network to evaluate the integration of modern concepts in a smart, secure and distributed approach for consumer demand monitoring. An IoT architecture is used for collecting data from smart meters, with push-based data exchange and reactive programming patterns. The network is integrated with a blockchain solution developed using Hyperledger Fabric to ensure an additional layer of security and transparency, while being used as an audit tool as well as data provider for decision support systems.
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