Knowledge Discovery for Operational Decision Support in Air Quality Management

Operational decision-making in air quality management systems requires intense efforts for assessing monitored data streams on time. In contrary with the previous works, which focus on air quality forecasting, this paper concentrates on near real time air quality assessment. Data uncertainty problems associated with environmental monitoring networks bring forth issues such as measurement validation and estimation of missing or erroneous values, which are critical for taking trustworthy decisions in a timely fashion. A remedy to these problems is proposed through knowledge discovery techniques. By employing classification techniques, an empirical approach is presented for supporting the decision making process involved in an environmental management system that monitors ambient air quality and triggers alerts when incidents occur. Specifically, exhaustive experiments with large, real world data- sets have resulted to trustworthy predictive models, capable operational decision-making for measurement validation and estimation of missing or erroneous data. The outstanding performance of the induced predictive models signifies the added value of using data-driven approaches in operational air quality assessment.

[1]  Alice M. Agogino,et al.  A methodology for intelligent sensor measurement, validation, fusion, and fault detection for equipment monitoring and diagnostics , 2001, Artificial Intelligence for Engineering Design, Analysis and Manufacturing.

[2]  Umit Ozguner,et al.  A FRAMEWORK FOR DATA VALIDATION AND FUSION, AND FAULT DETECTION AND ISOLATION FOR INTELLIGENT VEHICLE SYSTEMS , 1998 .

[3]  Yoshikiyo Kato,et al.  Fault Detection by Mining Association Rules from House-keeping Data , 2001 .

[4]  J. Ross Quinlan,et al.  C4.5: Programs for Machine Learning , 1992 .

[5]  Padhraic Smyth,et al.  From Data Mining to Knowledge Discovery in Databases , 1996, AI Mag..

[6]  Pericles A. Mitkas,et al.  Applying agent technology in Environmental Management Systems under real-time constraints , 2004 .

[7]  Ian H. Witten,et al.  Data mining: practical machine learning tools and techniques with Java implementations , 2002, SGMD.

[8]  V. Prybutok,et al.  A neural network model forecasting for prediction of daily maximum ozone concentration in an industrialized urban area. , 1996, Environmental pollution.

[9]  Ian H. Witten,et al.  Data mining: practical machine learning tools and techniques, 3rd Edition , 1999 .

[10]  Jiawei Han,et al.  Data Mining: Concepts and Techniques , 2000 .

[11]  C.J.H. Mann,et al.  Handbook of Data Mining and Knowledge Discovery , 2004 .

[12]  Richard L. Smith,et al.  Meteorologically‐dependent trends in urban ozone , 1999 .

[13]  Nikolaos M. Avouris,et al.  Case-based reasoning in environment monitoring applications , 1994, Appl. Artif. Intell..

[14]  Pericles A. Mitkas,et al.  Applying Machine Learning Techniques on Air Quality Data for Real-Time Decision Support , 2003 .

[15]  Ian Witten,et al.  Data Mining , 2000 .

[16]  M. Jenkin,et al.  Analysis of the relationship between ambient levels of O3, NO2 and NO as a function of NOx in the UK , 2001 .

[17]  Guohe Huang,et al.  The Perspectives of Environmental Informatics and Systems Analysis , 2003 .

[18]  José Ragot,et al.  Sensor Failure Detection of Air Quality Monitoring Network , 2000 .

[19]  Jose Torres-Jimenez,et al.  Short-term ozone forecasting by artificial neural networks , 1995 .

[20]  Nikolaos Avouris,et al.  Air Quality Management Using a Multi‐Agent System , 2002 .

[21]  Carlo Gaetan,et al.  Nonlinear models for ground-level ozone forecasting , 2002 .

[22]  Maurice G Cox,et al.  Method for evaluating trends in ozone concentration data and its application to data from the UK Rural Ozone Monitoring Network. , 2002 .

[23]  Pericles A. Mitkas,et al.  An agent-based intelligent environmental monitoring system , 2004, ArXiv.

[24]  S. Islam,et al.  Nonlinear dynamics of hourly ozone concentrations. nonparametric short term prediction , 1998 .

[25]  Pericles A. Mitkas,et al.  Embedding data-driven decision strategies on software agents: the case of a multi-agent system for monitoring air-quality indexes , 2003, ISPE CE.