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Comparison of Neural Networks and Kalman Filters Performances for Fouling Detection in a Heat Exchanger

机译:换热器结垢检测的神经网络和卡尔曼滤波器性能比较

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This paper presents the comparison between a neural network model and a Kalman filter model when applied for fouling detection. The models are determined using data that do not require the heat exchanger to be in a steady state. These data are the inlet and outlet temperatures and the mass flow rates. It monitored how the difference between estimated values and actual values evolve with time. This difference is computed for predictions (one-step ahead) or simulations (the whole set of data is computed using past estimated values). The evolution is due to fouling (the fouling scenario is given in terms of a fouling factor). The detection of the drift is carried out using the Cusum test. It is shown that fouling is detected quite early. By the analysis of the results, it is recommended to use the neural network model when dealing with fast drifts, and to use the Kalman filter model when dealing with slow drifts.
机译:本文介绍了将神经网络模型和卡尔曼滤波器模型应用于结垢检测之间的比较。使用不需要使热交换器处于稳定状态的数据确定模型。这些数据是入口和出口温度以及质量流量。它监视估计值和实际值之间的差异如何随时间变化。此差异是为预测(提前一个步骤)或模拟(使用过去的估计值来计算整个数据集)而计算的。演变是由于结垢(结垢情况是根据结垢因子给出的)。漂移的检测使用Cusum测试进行。结果表明,很早就发现了结垢。通过对结果的分析,建议在处理快速漂移时使用神经网络模型,在处理慢速漂移时建议使用卡尔曼滤波器模型。

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