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<title>Qualitative Modeling & Diagnosis</title><h1>Qualitative Modeling & Diagnosis</h1>To view a paper, click on the open book image. <br> <br><ol><! ===========================================================================><a name="qdocs-aaai-96.ps.Z"</a><b><li> Qualitative Multiple-Fault Diagnosis of Continuous Dynamic Systems UsingBehavioral Modes<br></b>Siddarth Subramanian and Raymond J. Mooney<br><cite>Proceedings of the Thirteenth National Conference on Aritificial Intelligence</cite>,pp. 965-970, Portland, OR, August, 1996. (AAAI-96)<p><blockquote>Most model-based diagnosis systems, such as GDE and Sherlock, haveconcerned discrete, static systems such as logic circuits and usesimple constraint propagation to detect inconsistencies. However,sophisticated systems such as QSIM and QPE have been developed forqualitative modeling and simulation of continuous dynamic systems.  Wepresent an integration of these two lines of research as implementedin a system called QDOCS for multiple-fault diagnosis of continuousdynamic systems using QSIM models. The main contributions of thealgorithm include a method for propagating dependencies while solvinga general constraint satisfaction problem and a method for verifyingthe consistency of a behavior with a model across time. Throughsystematic experiments on two realistic engineering systems, wedemonstrate that QDOCS demonstrates the best balance of generality,accuracy, and efficiency among competing methods.</blockquote><!WA0><a href="file://ftp.cs.utexas.edu/pub/mooney/papers/qdocs-aaai96sub.ps.Z"><!WA1><img align=top src="http://www.cs.utexas.edu/users/ml/paper.xbm"></a><p><! ===========================================================================><a name="qdocs-dissertation-95.ps.Z"</a><b><li>Qualitative Multiple-Fault Diagnosis of Continuous Dynamic Systems UsingBehavioral Modes<br></b>Siddarth Subramanian<br>Ph.D. Thesis, Department of Computer Sciences, University of Texas at Austin, August, 1995.<p><blockquote>As systems like chemical plants, power plants, and automobiles getmore complex, online diagnostic systems are becomingly increasinglyimportant.  One of the ways to rein in the complexity of describingand reasoning about large systems such as these is to describe themusing qualitative rather than quantitative models.<p>Model-based diagnosis is a class of diagnostic techniques that usedirect knowledge about how a system functions instead of expert rulesdetailing causes for every possible set of symptons of a brokensystem.  Our research builds on standard methods for model-baseddiagnosis and extends them to the domain of complex dynamic systemsdescribed using qualitative models.<p>We motivate and describe out algorithm for diagnosing faults in adynamic system given a qualitative model and a sequence of qualitativestates.  The main contributions in this algorithm include a method forpropagating dependencies while solving a general constraintsatisfaction problem, and a method for verfying the compatibility of abehavior with a model across time.  The algorithm can diagnosemultiple faults and uses models of faulty behavior, or behavioralmodes.<p>We then demonstrate these techniques using an implemented programcalled QDOCS and test it on some realistic problems.  Through ourexperiments with a model of the reaction control system (RCS) of thespace shuttle and with a level-controller for a reaction tank, we showthat QDOCS demonstrates the best balance of generality, accuracy andefficiency among known systems.<p></blockquote><!WA2><a href="file://ftp.cs.utexas.edu/pub/mooney/papers/qdocs-dissertation-95.ps.Z"><!WA3><img align=top src="http://www.cs.utexas.edu/users/ml/paper.xbm"></a><p><! ===========================================================================><a name="qdocs-ijcai95sub.ps.Z" </a><b> <li> Multiple-Fault Diagnosis Using General Qualitative Models with Fault Modes <br> </b>  Siddarth Subramanian and Raymond J. Mooney <br><cite>Working Notes of the IJCAI-95 Workshop on Engneering Problems for Qualitative Reasoning</cite>, Monreal, Quebec, August 1995.<p><blockquote>This paper describes an approach to diagnosis of systems described byqualitative differential equations represented as QSIM models.  Animplemented system QDOCS is described that performs multiple-fault,fault-model based diagnosis, using constraint satisfaction techniques,of qualitative behaviors of systems described by such models. Wedemonstrate the utility of this system by accurately diagnosingrandomly generated faults using simulated behaviors of a portion ofthe Reaction Control System of the space shuttle.</blockquote><!WA4><a href="file://ftp.cs.utexas.edu/pub/mooney/papers/qdocs-ijcai95sub.ps.Z"><!WA5><img align=top src="http://www.cs.utexas.edu/users/ml/paper.xbm"></a><p><! ===========================================================================><a name="qdocs-dx-94.ps.Z" </a><b><li>Multiple-Fault Diagnosis Using General Qualitative Models with Fault Modes<br></b>  Siddarth Subramanian and Raymond J. Mooney <br><cite> Working Papers of the Fifth International Workshop onPrinciples of Diagnosis</cite>, pp. 321-325, New Paltz, NY, 1994. <p><blockquote>This paper describes an approach to diagnosis of systems described byqualitative differential equations represented as QSIM models.  Animplemented system QDOCS is described that performs multiple-fault,fault-model based diagnosis, using constraint satisfaction techniques,of qualitative behaviors of systems described by such models. Wedemonstrate the utility of this system by accurately diagnosingrandomly generated faults using simulated behaviors of a portion ofthe Reaction Control System of the space shuttle.</blockquote><!WA6><a href="file://ftp.cs.utexas.edu/pub/mooney/papers/qdocs-dx-94.ps.Z"><!WA7><img align=top src="http://www.cs.utexas.edu/users/ml/paper.xbm"></a><p><! ===========================================================================><a name="misq-rt-qr-94.ps.Z"</a><b> <li>Learning Qualitative Models for Systems with Multiple Operating Regions<br></b>Sowmya Ramachandran, Raymond J. Mooney and Benjamin J. Kuipers <br><cite>Proceedings of the Eight International Workshop of QualitativeReasoning about Physical Systems</cite>, pp. 212-223, Nara, Japan,June 1994. (QR-94)<blockquote>The problem of learning qualitative models of physical systems fromobservations of its behaviour has been addressed by severalresearchers in recent years. Most current techniques limit themselvesto learning a single qualitative differential equation to model theentire system.  However, many systems have several qualitativedifferential equations underlying them.  In this paper, we present anapproach to learning the models for such systems.  Our techniquedivides the behaviours into segments, each of which can be explainedby a single qualitative differential equation.  The qualitative modelfor each segment can be generated using any of the existing techniquesfor learning a single model.  We show that results of applying ourtechnique to several examples and demonstrate that it is effective.</blockquote><!WA8><a href="file://ftp.cs.utexas.edu/pub/mooney/papers/misq-rt-qr-94.ps.Z"</a><p><!WA9><img align=top src="http://www.cs.utexas.edu/users/ml/paper.xbm"></a><p><! ===========================================================================><a name="misq-aaai-92.ps.Z" </a><b> <li> Automatic Abduction of Qualitative Models </b> <br> Bradley L. Richards, Ina Kraan, and Benjamin J. Kuipers <br> <cite> Proceedings of the Tenth National Conference on ArtificialIntelligence</cite>, pp. 723-728, San Jose, CA, July 1992. <p><blockquote>We describe a method of automatically abducing qualitative models fromdescriptions of behaviors.  We generate, from either quantitative orqualitative data, models in the form of qualitative differential equationssuitable for use by QSIM.  Constraints are generated and filtered both bycomparison with the input behaviors and by dimensional analysis.  If theuser provides complete information on the input behaviors and thedimensions of the input variables, the resulting model is unique,maximally constrainted, and guaranteed to reproduce the input behaviors.If the user provides incomplete information, our method will stillgenerate a model which reproduces the input behaviors, but the modelmay no longer be unique.  Incompleteness can take several forms:  missingdimensions, values of variables, or entire variables.</blockquote><!WA10><a href="file://ftp.cs.utexas.edu/pub/mooney/papers/misq-aaai-92.ps.Z"><!WA11><img align=top src="http://www.cs.utexas.edu/users/ml/paper.xbm"></a><p><! ===========================================================================><hr><address><!WA12><a href="http://www.cs.utexas.edu/users/estlin/">estlin@cs.utexas.edu</a></address>

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