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Reutilization of diagnostic cases by adaptation of knowledge models

机译:通过适应知识模型重用诊断案例

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This paper deals with design of knowledge oriented diagnostic system. Two challenges are addressed. The first one concerns the elicitation of expert practice and the proposition of a methodology for developing four knowledge containers of case based reasoning system. The second one concerns the proposition of a general adaptation phase to reuse case solving diagnostic problems in a different context. In most cases, adaptation methods are application-specific and the challenge in this work is to make a general adaptation method for the field of industrial diagnostics applications. This paper is a contribution to fill this gap in the field of fault diagnostic and repair assistance of equipment. The proposed adaptation algorithm relies on hierarchy descriptors, an implied context model and dependencies between problems and solutions of the source cases. In addition, one can note that the first retrieved case is not necessarily the most adaptable case, and to take into account this report, an adaptation-guided retrieval step based on a similarity measure associated with an adaptation measure is realized on the diagnostic problem. These two measures allow selecting the most adaptable case among the retrieved cases. The two retrieval and adaptation phases are applied on real industrial system called Supervised industrial system of Transfer of pallets (SISTRE).
机译:本文涉及面向知识的诊断系统的设计。解决了两个挑战。第一个涉及专家实践的启发和开发基于案例的推理系统的四个知识容器的方法论的提出。第二个问题涉及一般适应阶段的建议,以便在不同情况下重用案例解决诊断问题。在大多数情况下,自适应方法是特定于应用程序的,这项工作面临的挑战是为工业诊断应用程序领域提供通用的自适应方法。本文对填补设备故障诊断和维修协助领域的空白做出了贡献。提出的自适应算法依赖于层次结构描述符,隐式上下文模型以及源案例的问题和解决方案之间的依赖关系。另外,可以注意到,第一个检索到的病例不一定是最适应的病例,并且考虑到该报告,在诊断问题上实现了基于与适应性措施相关联的相似性措施的适应性指导的检索步骤。这两种措施允许在检索到的案例中选择最适合的案例。这两个检索和适应阶段被应用在称为“托盘转移的受监管工业系统”的实际工业系统上。

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