Research on soft sensing modeling method of gas turbine’s difficult-to-measure parameters

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[24]  Han Liu,et al.  A Knowledge- and Data-Driven Soft Sensor Based on Deep Learning for Predicting the Deformation of an Air Preheater Rotor , 2019, IEEE Access.