In the context of monitoring water quality in natural ecosystems in real time, on-line data quality control is a very important issue for effective system surveillance and for optimizing maintenance of the monitoring network. This paper presents some applications of recursive state-parameter estimation algorithms to real-time detection of signal drift in high-frequency observations. Two continuous-discrete recursive estimation schemes, namely the Extended Kalman Filter and the Recursive Prediction Error algorithm, were applied to assuring the quality of the dissolved oxygen (DO) time series, as obtained from the Lagoon of Venice (Italy) during August 2002, through the real-time monitoring network of the Magistrato alle Acque (the Venice Water Authority). Results demonstrate the effectiveness of the methodology in early detection of a probable drift in the DO signal. Comparison of these results with those obtained from the application of a related recursive scheme (a Dynamic Linear Regression procedure) suggests the strong benefits of approaching the problem of on-line data quality control with several (not merely a single) independent such estimation methods.
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December 01 2004
Fault detection in a real-time monitoring network for water quality in the lagoon of Venice (Italy) Available to Purchase
S. Ciavatta;
*Department of Physical Chemistry, University of Venice, 2137 Dorsoduro, 30123 Venice, Italy (E-mail: [email protected]; [email protected])
E-mail: [email protected]
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R. Pastres;
R. Pastres
*Department of Physical Chemistry, University of Venice, 2137 Dorsoduro, 30123 Venice, Italy (E-mail: [email protected]; [email protected])
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Z. Lin;
Z. Lin
**Warnell School of Forest Resources, University of Georgia, Athens, Georgia 30602, USA (E-mail: [email protected]; [email protected])
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M.B. Beck;
M.B. Beck
**Warnell School of Forest Resources, University of Georgia, Athens, Georgia 30602, USA (E-mail: [email protected]; [email protected])
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C. Badetti;
C. Badetti
***Sezione Antinquinamento, Magistrato alle Acque di Venezia, 19 San Polo-Rialto, 30125 Venice, Italy (E-mail: [email protected]; [email protected])
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G. Ferrari
G. Ferrari
***Sezione Antinquinamento, Magistrato alle Acque di Venezia, 19 San Polo-Rialto, 30125 Venice, Italy (E-mail: [email protected]; [email protected])
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Water Sci Technol (2004) 50 (11): 51–58.
Citation
S. Ciavatta, R. Pastres, Z. Lin, M.B. Beck, C. Badetti, G. Ferrari; Fault detection in a real-time monitoring network for water quality in the lagoon of Venice (Italy). Water Sci Technol 1 December 2004; 50 (11): 51–58. doi: https://doi.org/10.2166/wst.2004.0670
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