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A connectionist expert system approach to fault diagnosis in the presence of noise and redundancy

机译:在存在噪声和冗余的情况下,一个连接主义专家系统的故障诊断方法

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The author differentiates between physical redundancy involving duplicate measurements of the same quantity and analytical redundancy involving the behavior of a collection of sensors measuring different quantities. If there are a finite number of possible faults, if each fault has a known set of ideal instrument readings (in the absence of noise), and if a model of the noise is available, then analytical redundancy relationships exist. The task of constructing expert systems for problems involving noise and redundancy is then considered. The author reviews an automated method for constructing diagnostic expert systems (MACIE). This approach is based on machine learning techniques for connectionist network models and is well suited for noisy problems. The main advantage of the MACIE system is that it only requires training examples of desired behavior to generate the final expert system. Moreover, this approach takes advantage implicitly of both types of redundancy, without the need for explicit probabilistic analysis.
机译:作者区分了涉及相同数量和分析冗余的重复测量的物理冗余之间的涉及测量不同量的传感器的行为的相同数量和分析冗余。如果有有限数量的可能性故障,如果每个故障都有已知的一组理想的仪器读数(在没有噪声的情况下),并且如果噪声模型可用,则存在分析冗余关系。然后考虑构建涉及噪声和冗余的问题的专家系统的任务。作者审查了一种构建诊断专家系统的自动化方法(宏)。这种方法是基于用于连接人网络模型的机器学习技术,非常适合嘈杂的问题。 Macie System的主要优点是它只需要训练所需行为的培训示例来生成最终的专家系统。此外,这种方法隐含地利用了两种类型的冗余,而无需明确的概率分析。

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