AIMS: an SQL-based system for airspace monitoring

In this paper, we present the "Airspace Monitoring System" (AIMS) for monitoring and analyzing flight data streams with respect to the occurrence of arbitrary complex events. In contrast to already existing tools which often focus on a single task like flight delay detection, we want to provide a more general system that allows for a comprehensive analysis of aircraft movements. This includes, e.g., the detection of critical deviations from the current flight plan, abnormal approach parameters of landing flights as well as areas with an increased risk of collisions. To this end, tracks are extracted from cluttered radar data and SQL views are employed for a timely processing of these tracks. Our general aim is to show that conventional relational database technology is capable of dealing with data streams of remarkably high complexity and frequency.

[1]  Andreas Behrend,et al.  Incremental view-based analysis of stock market data streams , 2008, IDEAS '08.

[2]  Vikram Krishnamurthy,et al.  A Bayesian EM algorithm for optimal tracking of a maneuvering target in clutter , 2002, Signal Process..

[3]  Lukasz Golab,et al.  Issues in data stream management , 2003, SGMD.

[4]  Michael Stonebraker,et al.  Aurora: a data stream management system , 2003, SIGMOD '03.

[5]  Ashish Gupta,et al.  Materialized views: techniques, implementations, and applications , 1999 .

[6]  Wolfgang Koch Exact update formulae for distributed Kalman filtering and retrodiction at arbitrary communication rates , 2009, 2009 12th International Conference on Information Fusion.

[7]  Carlo Zaniolo,et al.  ATLAS: A Small but Complete SQL Extension for Data Mining and Data Streams , 2003, VLDB.

[8]  Jennifer Widom,et al.  The CQL continuous query language: semantic foundations and query execution , 2006, The VLDB Journal.

[9]  F. Tödtling,et al.  One size fits all?: Towards a differentiated regional innovation policy approach , 2005 .

[10]  Damianos Chatziantoniou,et al.  Stream Variables: A Quick but not Dirty SQL Extension for Continuous Queries , 2007, 2007 IEEE 23rd International Conference on Data Engineering Workshop.

[11]  Wolfgang Koch,et al.  On Sequential Track Extraction within the PMHT Framework , 2008, EURASIP J. Adv. Signal Process..

[12]  G. V. Keuk MHT extraction and track maintenance of a target formation , 2002 .

[13]  Jennifer Widom,et al.  Models and issues in data stream systems , 2002, PODS.

[14]  Jennifer Widom,et al.  STREAM: The Stanford Stream Data Manager , 2003, IEEE Data Eng. Bull..

[15]  Andreas Behrend,et al.  Detecting Moving Objects in Noisy Radar Data Using a Relational Database , 2009, ADBIS.

[16]  Jarek Gryz,et al.  Stream Processing in a Relational Database: a Case Study , 2007, 11th International Database Engineering and Applications Symposium (IDEAS 2007).

[17]  Samuel Madden,et al.  Fjording the stream: an architecture for queries over streaming sensor data , 2002, Proceedings 18th International Conference on Data Engineering.

[18]  Jennifer Widom,et al.  STREAM: the stanford stream data manager (demonstration description) , 2003, SIGMOD '03.

[19]  Daniel J. Abadi,et al.  An Integration Framework for Sensor Networks and Data Stream Management Systems , 2004, VLDB.

[20]  Michael Stonebraker,et al.  "One Size Fits All": An Idea Whose Time Has Come and Gone (Abstract) , 2005, ICDE.

[21]  Samuel S. Blackman,et al.  Design and Analysis of Modern Tracking Systems , 1999 .