In this article, an online detection of transducer and actuator condition is discussed. A case study is on the reading of area radiation monitor (ARM) installed at the chimney of PUSPATI TRIGA nuclear reactor building, located at Bangi, Malaysia. There are at least five categories of abnormal ARM reading that could happen during the transducer failure, namely either the reading becomes very high, or very low/zero, or with high fluctuation and noise. Moreover, the reading may be significantly higher or significantly lower as compared to the normal reading. An artificial neural network (ANN) and adaptive neuro-fuzzy inference system (ANFIS) are good methods for modeling this plant dynamics. The failure of equipment is based on ARM reading so it is then to compare with the estimated ARM data from ANN/ANFIS function. The failure categories in either 'yes' or 'no' state are obtained from a comparison between the actual online data and the estimated output from ANN/ANFIS function. It is found that this system design can correctly report the condition of ARM equipment in a simulated environment and later be implemented for online monitoring. This approach can also be extended to other transducers, such as the temperature profile of reactor core and also to include other critical actuator conditions such as the valves and pumps in the reactor facility provided that the failure symptoms are clearly defined.
CITATION STYLE
Ghazali, A. B., & Ibrahim, M. M. (2016). Fault detection and analysis in nuclear research facility using artificial intelligence methods. In AIP Conference Proceedings (Vol. 1704). American Institute of Physics Inc. https://doi.org/10.1063/1.4940079
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