Abstract

Due to the very complex sets of component systems, interrelated thermodynamic processes and seasonal change in operating conditions, it is relatively difficult to find an accurate model for turbine cycle of nuclear power plants (NPPs). This paper deals with the modeling of turbine cycles to predict turbine-generator output using an adaptive neuro-fuzzy inference system (ANFIS) for Unit 1 of the Kuosheng NPP in Taiwan. Plant operation data obtained from Kuosheng NPP between 2006 and 2011 were verified using a linear regression model with a 95% confidence interval. The key parameters of turbine cycle, including turbine throttle pressure, condenser backpressure, feedwater flow rate and final feedwater temperature are selected as inputs for the ANFIS based turbine cycle model. In addition, a thermodynamic turbine cycle model was developed using the commercial software PEPSE® to compare the performance of the ANFIS based turbine cycle model. The results show that the proposed ANFIS based turbine cycle model is capable of accurately estimating turbine-generator output and providing more reliable results than the PEPSE® based turbine cycle models. Moreover, test results show that the ANFIS performed better than the artificial neural network (ANN), which has also being tried to model the turbine cycle. The effectiveness of the proposed neuro-fuzzy based turbine cycle model was demonstrated using the actual operating data of Kuosheng NPP. Furthermore, the results also provide an alternative approach to evaluate the thermal performance of nuclear power plants.

Highlights

  • Nuclear power plants (NPPs) consist of very complex sets of component systems and interrelated thermodynamic processes

  • We adopted a widely used commercial software program, PEPSE®, to develop the thermodynamic turbine cycle model for Unit 1 of the Kuosheng NPP in order to compare the performance of the adaptive neuro-fuzzy inference system (ANFIS) based turbine cycle model

  • This paper presents an ANFIS based turbine cycle model for the Kuosheng NPP

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Summary

Introduction

Nuclear power plants (NPPs) consist of very complex sets of component systems and interrelated thermodynamic processes. In developing the turbine cycle model, a number of researchers have used fundamental steady-state mass and energy balance equations, while others have adopted commercial tools to model the turbine cycle and analyze performance. These approaches all have the same drawback. ANFIS is used to develop a turbine cycle model for Unit 1 of the Kuosheng NPP to estimate turbine-generator output with key parameters. To assess the performance of the neuro-fuzzy based turbine cycle model, we adopted a commercial software program, PEPSE®, for developing the thermodynamic turbine cycle of the Kuosheng NPP.

The Kuosheng Nuclear Power Plant
Adaptive Neuro-Fuzzy Inference System
Operating Data Processing System
Determining the Input and Output Variables
ANFIS Structure
Results
Conclusions
Full Text
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