基于决策树的可配置板级自适应增量诊断技术

C. Bolchini, Luca Cassano
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引用次数: 1

摘要

复杂电路板的功能诊断是一项耗时的工作,对诊断工程师的专业知识要求很高。本文提出了一种基于决策树的董事会级自适应增量功能诊断引擎。引擎增量地选择必须执行的测试,并根据测试结果,一旦识别出一个或多个错误候选项,它就会自动停止诊断,从而允许减少执行的测试数量。此外,我们为发动机提出了一个可配置的早期停止条件,该条件允许进一步减少利用诊断准确性执行测试的数量。使用一组合成但现实的板和三个工业板评估了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A configurable board-level adaptive incremental diagnosis technique based on decision trees
Functional diagnosis for complex electronic boards is a time-consuming task that requires big expertise to the diagnosis engineers. In this paper we propose a new engine for board-level adaptive incremental functional diagnosis based on decision trees. The engine incrementally selects the tests that have to be executed and based on the test outcomes it automatically stops the diagnosis as soon as one or more faulty candidates can be identified, thus allowing to reduce the number of executed tests. Moreover, we propose a configurable early stop condition for the engine that allows to further reduce the number of executed tests leveraging the diagnosis accuracy. The effectiveness of the proposed approach has been assessed using a set of synthetic but realistic boards and three industrial boards.
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