Advances in sensor technology and the possibility of automated long distance data transmission have made continuous measurements the preferable way of monitoring urban drainage processes. Usually, the collected data have to be processed by an expert in order to detect and mark the wrong data, remove them and replace them with interpolated data. In general, the first step in detecting the wrong, anomaly data is called the data quality assessment or data validation. Data validation consists of three parts: data preparation, validation scores generation and scores interpretation. This paper will present the overall framework for the data quality improvement system, suitable for automatic, semi-automatic or manual operation. The first two steps...
The evaluation of urban stormwater quality is of relevant importance for urban drainage, and mathema...
This book presents the advancements made in applied metrology in the field of Urban Drainage and Sto...
Previous research learned that the reproducibility of visual sewer inspection data is poor (Dirksen ...
Validation and criticism of measurements in urban hydrology. Knowledge development in urban hydrolo...
International audienceIn common with most infrastructure systems, sewers are often inspected visuall...
In Deliverable D6.3, Co-UDlabs project, funded under the European Union’s Horizon 2020 research and ...
In the past, there has been an emphasis on the use of hydrodynamic models as a tool for urban draina...
The current state of knowledge regarding uncertainties in urban drainage models is poor. This is in ...
This chapter briefly presents concepts and methodologies to support the management of urban drainage...
We propose a method for quality assurance of raw data from water distribution networks in near real-...
Advances in measurement equipment and data transfer enabled easy and economic automatic monitoring o...
In this paper, a methodology for data validation and reconstruction of flow meter sensor data in wat...
In this paper, a methodology for data validation and reconstruction of flow meter sensor data in wat...
In urban water quality management, several models are connected and integrated for analysing the fat...
Once data have been recorded, data validation procedures have to be conducted to assess the quality ...
The evaluation of urban stormwater quality is of relevant importance for urban drainage, and mathema...
This book presents the advancements made in applied metrology in the field of Urban Drainage and Sto...
Previous research learned that the reproducibility of visual sewer inspection data is poor (Dirksen ...
Validation and criticism of measurements in urban hydrology. Knowledge development in urban hydrolo...
International audienceIn common with most infrastructure systems, sewers are often inspected visuall...
In Deliverable D6.3, Co-UDlabs project, funded under the European Union’s Horizon 2020 research and ...
In the past, there has been an emphasis on the use of hydrodynamic models as a tool for urban draina...
The current state of knowledge regarding uncertainties in urban drainage models is poor. This is in ...
This chapter briefly presents concepts and methodologies to support the management of urban drainage...
We propose a method for quality assurance of raw data from water distribution networks in near real-...
Advances in measurement equipment and data transfer enabled easy and economic automatic monitoring o...
In this paper, a methodology for data validation and reconstruction of flow meter sensor data in wat...
In this paper, a methodology for data validation and reconstruction of flow meter sensor data in wat...
In urban water quality management, several models are connected and integrated for analysing the fat...
Once data have been recorded, data validation procedures have to be conducted to assess the quality ...
The evaluation of urban stormwater quality is of relevant importance for urban drainage, and mathema...
This book presents the advancements made in applied metrology in the field of Urban Drainage and Sto...
Previous research learned that the reproducibility of visual sewer inspection data is poor (Dirksen ...