Abstract

Accurately predicting the reheater steam temperature over both short and medium time periods is crucial for the efficiency and safety of operations. With regard to the diverse temporal effects of influential factors, the accurate identification of delay orders allows effective temperature predictions for the reheater system. In this paper, a deep neural network (DNN) and a genetic algorithm (GA)-based optimal multi-step temporal feature selection model for reheater temperature is proposed. In the proposed model, DNN is used to establish a steam temperature predictor for future time steps, and GA is used to find the optimal delay orders, while fully considering the balance between modeling accuracy and computational complexity. The experimental results for two ultra-super-critical 1000 MW power plants show that the optimal delay orders calculated using this method achieve high forecasting accuracy and low computational overhead. Moreover, it is argued that the similarities of the two reheater experiments reflect the common physical properties of different reheaters, so the proposed algorithms could be generalized to guide temporal feature selection for other reheaters.

Highlights

  • Steam reheating plays an important role in power plants

  • This proposed proposed method method is is evaluated evaluated from from three three different different perspectives: Firstly, aa one-round one-round. This perspectives: Firstly, simulation is performed with a set of data to demonstrate its capability for finding the optimal delay simulation is performed with a set of data to demonstrate its capability for finding the optimal delay orderfor fordifferent different features; features; secondly, secondly, the the experiment experiment is is implemented implemented on on unit unit 33and andunit unit44at atdifferent different order times to demonstrate the adaptability of the presented method; the delay order identified times to demonstrate the adaptability of the presented method; the delay order identified withdata datafrom fromthe theunit unit3 3isisdirectly directly used modeling process to check its capability with used inin thethe modeling process forfor unitunit

  • A delay order identification method based on genetic algorithm (GA) and deep neural network (DNN) is proposed

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Summary

Introduction

Steam reheating plays an important role in power plants. It can increase thermal efficiency by2% and it can reduce steam humidity and improve the safety of the final stage’s blade [1,2].due to the complexity of the many influential factors, it is difficult to maintain the reheat steam temperature within a certain range [3]. Steam reheating plays an important role in power plants. 2% and it can reduce steam humidity and improve the safety of the final stage’s blade [1,2]. Due to the complexity of the many influential factors, it is difficult to maintain the reheat steam temperature within a certain range [3]. A temperature that is too high will cause damage to the metal material, while a temperature that is too low will reduce the thermal cycle efficiency [5]. Finding features that affect the modeling target and analyzing the extent of these features are crucial for the system’s safety and efficiency

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