A software tool, based on Data Mining techniques, which allows to realize early fault diagnosis, during the remote sensing activity of complex water supply networks, is proposed. In order to foresee and analyze fault and malfunction of water plant, association rules and sequential patterns among events, as warnings and actions, should be discovered. Data Mining techniques such as A-Priori and Episode Mining are suitable to accomplish such task. However, the main difficulty in applying such techniques is the correct interpretation of the results. When the events are highly frequent, the above algorithms return relationships between events that are not correlated on the net-physical level and therefore they are not significant. To ov...
Near-real-time event detection is crucial for water utilities to be able to detect failure events in...
The needs for more resilient, sustainable, and intelligent water distribution systems (WDSs) are bec...
The research work presented in the thesis describes a new methodology for the automated near real-ti...
The growing attention in water supply system security urges the design of new tools in order to cont...
Time series novelty or anomaly detection refers to automatic identification of novel or abnormal eve...
Water is a common good and a limited and strategic resource that needs to be protected and used in a...
In this study, a general framework integrating a data-driven estimation model with sequential probab...
A noise pattern analysis is used to demonstrate how water quality events can be classified. The algo...
This work proposes a mechanism able to automatically categorize different types of faults occurring ...
This work proposes a mechanism able to automatically cat- egorize different types of faults occurrin...
As a core part of protecting water quality safety in water distribution systems, contamination event...
As a core part of protecting water quality safety in water distribution systems, contamination event...
Environmental monitoring, such as analyses of water bodies to detect anomalies, is recognized worldw...
The Tasmanian ICT of CSIRO developed a Sensor Web test-bed system for the Australian water domain i...
The research work presented in this thesis describes the development and testing of a new data analy...
Near-real-time event detection is crucial for water utilities to be able to detect failure events in...
The needs for more resilient, sustainable, and intelligent water distribution systems (WDSs) are bec...
The research work presented in the thesis describes a new methodology for the automated near real-ti...
The growing attention in water supply system security urges the design of new tools in order to cont...
Time series novelty or anomaly detection refers to automatic identification of novel or abnormal eve...
Water is a common good and a limited and strategic resource that needs to be protected and used in a...
In this study, a general framework integrating a data-driven estimation model with sequential probab...
A noise pattern analysis is used to demonstrate how water quality events can be classified. The algo...
This work proposes a mechanism able to automatically categorize different types of faults occurring ...
This work proposes a mechanism able to automatically cat- egorize different types of faults occurrin...
As a core part of protecting water quality safety in water distribution systems, contamination event...
As a core part of protecting water quality safety in water distribution systems, contamination event...
Environmental monitoring, such as analyses of water bodies to detect anomalies, is recognized worldw...
The Tasmanian ICT of CSIRO developed a Sensor Web test-bed system for the Australian water domain i...
The research work presented in this thesis describes the development and testing of a new data analy...
Near-real-time event detection is crucial for water utilities to be able to detect failure events in...
The needs for more resilient, sustainable, and intelligent water distribution systems (WDSs) are bec...
The research work presented in the thesis describes a new methodology for the automated near real-ti...