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Die Verwendung von existierenden Planungsansätzen zur Lösung von realen Anwendungs- problemen führt meist schnell zur Erkenntnis, dass eine vorliegende Problemstellung im Prinzip zwar lösbar ist, der exponentiell anwachsende Suchraum jedoch nur die Behandlung relativ kleiner Aufgabenstellungen erlaubt. Beobachtet man jedoch menschliche Planungsexperten, so sind diese in der Lage bei komplexen Problemen den Suchraum durch Abstraktion und die Verwendung bekannter Fallbeispiele als Heuristiken, entscheident zu verkleinern und so auch für schwierige Aufgabenstellungen zu einer akzeptablen Lösung zu gelangen. In dieser Arbeit wollen wir am Beispiel der Arbeitsplanung ein System vorstellen, das Abstraktion und fallbasierte Techniken zur Steuerung des Inferenzprozesses eines nichtlinearen, hierarchischen Planungssystems einsetzt und so die Komplexität der zu lösenden Gesamtaufgabe reduziert.
We describe a hybrid architecture supporting planning for machining workpieces. The archi- tecture is built around CAPlan, a partial-order nonlinear planner that represents the plan already generated and allows external control decision made by special purpose programs or by the user. To make planning more efficient, the domain is hierarchically modelled. Based on this hierarchical representation, a case-based control component has been realized that allows incremental acquisition of control knowledge by storing solved problems and reusing them in similar situations.
We describe a hybrid case-based reasoning system supporting process planning for machining workpieces. It integrates specialized domain dependent reasoners, a feature-based CAD system and domain independent planning. The overall architecture is build on top of CAPlan, a partial-order nonlinear planner. To use episodic problem solving knowledge for both optimizing plan execution costs and minimizing search the case-based control component CAPlan/CbC has been realized that allows incremental acquisition and reuse of strategical problem solving experience by storing solved problems as cases and reusing them in similar situations. For effective retrieval of cases CAPlan/CbC combines domain-independent and domain-specific retrieval mechanisms that are based on the hierarchical domain model and problem representation.
While most approaches to similarity assessment are oblivious of knowledge and goals, there is ample evidence that these elements of problem solving play an important role in similarity judgements. This paper is concerned with an approach for integrating assessment of similarity into a framework of problem solving that embodies central notions of problem solving like goals, knowledge and learning.
Contrary to symbolic learning approaches, which represent a learned concept explicitly, case-based approaches describe concepts implicitly by a pair (CB; sim), i.e. by a measure of similarity sim and a set CB of cases. This poses the question if there are any differences concerning the learning power of the two approaches. In this article we will study the relationship between the case base, the measure of similarity, and the target concept of the learning process. To do so, we transform a simple symbolic learning algorithm (the version space algorithm) into an equivalent case- based variant. The achieved results strengthen the hypothesis of the equivalence of the learning power of symbolic and case-based methods and show the interdependency between the measure used by a case-based algorithm and the target concept.
Im Bereich der Expertensysteme ist das Problemlösen auf der Basis von bekannten Fallbeispielen ein derzeit sehr aktuelles Thema. Auch für Diagnoseaufgaben gewinnt der fallbasierte Ansatz immer mehr an Bedeutung. In diesem Papier soll der im Rahmen des Moltke -Projektes1 an der Universität Kaiserslautern entwickelte fallbasierte Problemlöser Patdex/22 vorgestellt werden. Ein erster Prototyp, Patdex/1, wurde bereits 1988 entwickelt.
Forschungsprojekte im Bereich des fallbasierten Schliessens in den USA, die Verfügbarkeit kommerzieller fallbasierter Shells, sowie erste Forschungsergebnisse initialer deutscher Projekte haben auch in Deutschland verstärkte Aktivitäten auf dem Gebiet des fallbasierten Schliessens ausgelöst. In diesem Artikel sollen daher Projekte, die sich als Schwerpunkt oder als Teilaspekt mit fallbasierten Aspekten beschäftigen, einer breiteren Öffentlichkeit kurz vorgestellt werden.
Patdex is an expert system which carries out case-based reasoning for the fault diagnosis of complex machines. It is integrated in the Moltke workbench for technical diagnosis, which was developed at the university of Kaiserslautern over the past years, Moltke contains other parts as well, in particular a model-based approach; in Patdex where essentially the heuristic features are located. The use of cases also plays an important role for knowledge acquisition. In this paper we describe Patdex from a principal point of view and embed its main concepts into a theoretical framework.
Patdex is an expert system which carries out case-based reasoning for the fault diagnosis of complex machines. It is integrated in the Moltke workbench for technical diagnosis, which was developed at the university of Kaiserslautern over the past years, Moltke contains other parts as well, in particular a model-based approach; in Patdex where essentially the heuristic features are located. The use of cases also plays an important role for knowledge acquisition. In this paper we describe Patdex from a principal point of view and embed its main concepts into a theoretical framework.