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首页> 外文期刊>Journal of turbomachinery >Simulation of Compressor Transient Behavior Through Recurrent Neural Network Models
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Simulation of Compressor Transient Behavior Through Recurrent Neural Network Models

机译:递归神经网络模型对压缩机瞬态行为的仿真

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摘要

In the paper, self-adapting models capable of reproducing time-dependent data with high computational speed are investigated. The considered models are recurrent feed-forward neural networks (RNNs) with one feedback loop in a recursive computational structure, trained by using a back-propagation learning algorithm. The data used for both training and testing the RNNs have been generated by means of a nonlinear physics-based model for compressor dynamic simulation, which was calibrated on a multistage axial-centrifugal small size compressor. The first step of the analysis is the selection of the compressor maneuver to be used for optimizing RNN training. The subsequent step consists in evaluating the most appropriate RNN structure (optimal number of neurons in the hidden layer and number of outputs) and RNN proper delay time. Then, the robustness of the model response towards measurement uncertainty is ascertained, by comparing the performance of RNNs trained on data uncorrupted or corrupted with measurement errors with respect to the simulation of data corrupted with measurement errors. Finally, the best RNN model is tested on field data taken on the axial-centrifugal compressor on which the physics-based model was calibrated, by comparing physics-based model and RNN predictions against measured data. The comparison between RNN predictions and measured data shows that the agreement can be considered acceptable for inlet pressure, outlet pressure and outlet temperature, while errors are significant for inlet mass flow rate.
机译:本文研究了能够以高计算速度再现时变数据的自适应模型。所考虑的模型是递归前馈神经网络(RNN),它具有递归计算结构中的一个反馈回路,并通过使用反向传播学习算法进行训练。用于训练和测试RNN的数据是通过基于非线性物理的压缩机动态仿真模型生成的,该模型已在多级轴向离心小型压缩机上进行了校准。分析的第一步是选择用于优化RNN训练的压缩机操作。后续步骤包括评估最合适的RNN结构(隐藏层中神经元的最佳数量和输出数量)和RNN适当的延迟时间。然后,通过相对于因测量误差而损坏的数据的仿真进行比较,对未经测量或因测量误差而损坏的数据训练的RNN的性能,可以确定模型对测量不确定性的响应的鲁棒性。最后,通过将基于物理学的模型和RNN预测与实测数据进行比较,对在校准了基于物理学的模型的轴心离心压缩机上采集的现场数据测试最佳RNN模型。 RNN预测值与实测数据之间的比较表明,对于进口压力,出口压力和出口温度,可以认为该协议是可接受的,而对于进口质量流量而言,误差是很大的。

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