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基于数据驱动的工业过程故障诊断方法综述 被引量:10

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摘要 随着监测系统在复杂工业过程控制领域的广泛应用,大量的过程数据得以保存与利用,基于数据驱动的工业过程故障诊断方法得到较快发展,大量研究成果不断涌现。在梳理数据驱动基本原理的基础上,探讨基于数据驱动的工业过程故障诊断技术,并进行研究展望。
作者 苏中鲜
出处 《软件导刊》 2016年第3期149-150,共2页 Software Guide
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参考文献9

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