Detection of Malfunctions in the Secondary System of a Nuclear Power Plant by Neural networks
نویسندگان
چکیده
In nuclear power systems the early identification of transients caused by malfunctions is of great importance for preventing the development of serious accidents and performing adequate operation and maintenance practice. For this reason, various plant system parameters are monitored to provide information about the systems state. This information can be used to detect and classify the transients that occur inadvertently in a nuclear system. In this paper, a neural network methodology is developed which exploits the information provided by the online monitoring of different variables for classifying transients that can occur in the secondary system of a boiling water reactor (BWR). The initiating events of the transients in the scope of this work consist of leakages, of different sizes, performed in different locations of the secondary system. Each initiating event considered defines a class of transients which can be identified by analyzing the evolution in time of a group of variables monitored. In this work a three layered feed-forward neural network has been trained to assign an integer value, corresponding to the class of transient number, as output when the neural network is fed with the evolution of different variables of the system monitored online. This methodology has been applied to the identification of transient classes using data provided by the simulator HAMBO. This simulator has been developed to reproduce the behaviour of Forsmark nuclear power plant. Five classes of transients were considered, corresponding to leakages in different locations of the secondary system, and the evolution of ten variables, corresponding to temperatures and level positions of different control valves has been monitored. Using this information, the network was trained, and the trained system has been successful in classifying new transients belonging to any of the classes considered and also in identifying as “un-known” transients belonging to other classes not considered in the training phase.
منابع مشابه
Robust Fault Detection on Boiler-turbine Unit Actuators Using Dynamic Neural Networks
Due to the important role of the boiler-turbine units in industries and electricity generation, it is important to diagnose different types of faults in different parts of boiler-turbine system. Different parts of a boiler-turbine system like the sensor or actuator or plant can be affected by various types of faults. In this paper, the effects of the occurrence of faults on the actuators are in...
متن کاملImproving Data-based Wind Turbine Using Measured Data Foggy Method
The purpose of this paper is to improve the modeling of the data-driven wind turbine system that receives data from noise signals. Most of the data on industrial systems is noisely and data noise is inevitable and natural. The method and idea proposed in this paper, Data Fogging, significantly reduce the impact of noise on data-driven wind turbine system modeling, which is the basis of this met...
متن کاملMaximum Power Point Tracking of the Photovoltaic System Based on Adaptive Fuzzy-Neural Method
The aim of this paper was to present an optimized method in order to use maximum capacity of the photovoltaic panels. In this regard, we presented a method for the maximum power point tracking in the photovoltaic systems by using the neural networks and adaptive controller. In the proposed system, we estimated an error by using neural network. If this error is lower than the allowable systems e...
متن کاملApplication of ANN Technique for Interconnected Power System Load Frequency Control (RESEARCH NOTE)
This paper describes an application of Artificial Neural Networks (ANN) to Load Frequency Control (LFC) of nonlinear power systems. Power systems, such as other industrial processes, have parametric uncertainties that for controller design had to take the uncertainties in to account. For this reason, in the design of LFC controller the idea of robust control theories are being used. To improve ...
متن کاملGovernor design for hydropower plants by intelligent sliding mode variable structure control
This work proposes a neural-fuzzy sliding mode control scheme for a hydro-turbine speed governor system. Considering the assumption of elastic water hammer, a nonlinear mode of the hydro-turbine governor system is established. By linearizing this mode, a sliding mode controller is designed. The linearized mode is subject to uncertainties. The uncertainties are generated in the process of linear...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2005