Data validation and missing data reconstruction using self-organizing map for water treatment

被引:0
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作者
B. Lamrini
El-K. Lakhal
M-V. Le Lann
L. Wehenkel
机构
[1] IRCAM/Centre Georges-Pompidou,Faculté des Sciences Semlalia, Laboratoire d’Automatique, de l’Environnement et des Procédés de Transfert
[2] Université Cadi Ayyad,Laboratoire d’Analyse et d’Architecture des Systèmes
[3] LAAS-CNRS,Systems and Modelling Research Unit, Institute Montefiore (B28, P32)
[4] University of Liege,undefined
来源
关键词
Anomaly detection; Coagulation process; Data validation; Drinking water treatment; Missing data reconstruction; Self-organizing maps;
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摘要
Applications in the water treatment domain generally rely on complex sensors located at remote sites. The processing of the corresponding measurements for generating higher-level information such as optimization of coagulation dosing must therefore account for possible sensor failures and imperfect input data. In this paper, self-organizing map (SOM)-based methods are applied to multiparameter data validation and missing data reconstruction in a drinking water treatment. The SOM is a special kind of artificial neural networks that can be used for analysis and visualization of large high-dimensional data sets. It performs both in a nonlinear mapping from a high-dimensional data space to a low-dimensional space aiming to preserve the most important topological and metric relationships of the original data elements and, thus, inherently clusters the data. Combining the SOM results with those obtained by a fuzzy technique that uses marginal adequacy concept to identify the functional states (normal or abnormal), the SOM performances of validation and reconstruction process are tested successfully on the experimental data stemming from a coagulation process involved in drinking water treatment.
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页码:575 / 588
页数:13
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