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Improved on-line process fault diagnosis through information fusion in multiple neural networks

机译:通过多神经网络中的信息融合改进在线过程故障诊断

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A single neural network based fault diagnosis system may not give reliable fault diagnosis due to the fact that a perfect neural network is generally difficult, if not impossible, to develop. To enhance fault diagnosis reliability, this paper proposes a technique where multiple neural networks are developed and their diagnosis results are combined to give the overall diagnosis result. To develop a diverse range of individual networks, each individual network is trained on a replication of the original training data generated through bootstrap re-sampling with replacement. Furthermore, individual networks are trained from different initial weights. Different combination schemes including averaging, majority voting, and a proposed modified majority voting are studied. Applications of the proposed method to a simulated continuous stirred tank reactor demonstrate that combining multiple neural networks can give more reliable and earlier diagnosis than a single neural network whether the networks are trained on quantitative data or qualitative trend data. It is also shown that the modified majority voting combination method proposed in this paper gives better performance than other combination schemes.
机译:基于单个神经网络的故障诊断系统可能无法提供可靠的故障诊断,原因是,即使不是不可能,也很难开发出完善的神经网络。为了提高故障诊断的可靠性,本文提出了一种开发多种神经网络并结合其诊断结果以给出整体诊断结果的技术。为了开发各种范围的单个网络,对每个单独的网络都进行了原始训练数据复制的训练,该原始训练数据是通过自举替换进行重新采样而生成的。此外,从不同的初始权重训练各个网络。研究了包括平均,多数表决和拟议的修改多数表决在内的不同组合方案。所提方法在模拟连续搅拌釜反应器中的应用表明,无论是在定量数据还是定性趋势数据上训练,结合多个神经网络都比单个神经网络可提供更可靠,更早的诊断。还表明,本文提出的改进的多数投票表决合并方法比其他合并方案具有更好的性能。

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