首页> 外文会议>ASME Turbo Expo vol.4; 20050606-09; Reno-Tahoe,NV(US) >ARTIFICIAL INTELLIGENCE FOR THE DIAGNOSTICS OF GAS TURBINES. PART Ⅰ: NEURAL NETWORK APPROACH
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ARTIFICIAL INTELLIGENCE FOR THE DIAGNOSTICS OF GAS TURBINES. PART Ⅰ: NEURAL NETWORK APPROACH

机译:燃气涡轮诊断的人工智能。第一部分:神经网络方法

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In the paper, Neural Network (NN) models for gas turbine diagnostics are studied and developed. The analyses carried out are aimed at the selection of the most appropriate NN structure for gas turbine diagnostics, in terms of computational time of the NN training phase, accuracy and robustness with respect to measurement uncertainty. In particular, feed-forward NNs with a single hidden layer trained by using a back-propagation learning algorithm are considered and tested. Moreover, Multi-Input/Multi-Output NN architectures (i.e. NNs calculating all the system outputs) are compared to Multi-Input/Single-Output NNs, each of them calculating a single output of the system. The results obtained show that NNs are robust with respect to measurement uncertainty, if a sufficient number of training patterns are used. Moreover, Multi-Input/Multi-Output NNs trained with data corrupted with measurement errors seem to be the best compromise between the computational time required for NN training phase and the NN accuracy in performing gas turbine diagnostics.
机译:在本文中,研究和开发了用于燃气轮机诊断的神经网络(NN)模型。进行的分析旨在根据燃气轮机诊断阶段的计算时间,相对于测量不确定度的准确性和鲁棒性,选择最适合燃气轮机诊断的NN结构。特别是,考虑并测试了具有单个隐层的前馈NN,这些隐层通过使用反向传播学习算法进行训练。此外,将多输入/多输出NN体系结构(即计算所有系统输出的NN)与多输入/单输出NN进行比较,它们每个都计算系统的单个输出。获得的结果表明,如果使用足够数量的训练模式,则NN在测量不确定性方面具有鲁棒性。此外,使用因测量错误而损坏的数据训练的多输入/多输出NN似乎是NN训练阶段所需的计算时间与执行燃气轮机诊断的NN精度之间的最佳折衷。

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