基于输入变化的人工神经网络对大功率多用途电抗器启动状态的功率估计

Nazrul Effendy, Nur Chalim Wachidah, Balza Achmad, Prasojo Jiwandono, M. Subekti
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引用次数: 4

摘要

为了产生所需的电力,需要小心地维护核反应堆的热电。由于岩心内测量系统存在较大的安全风险,因此采用岩心外测量系统来提高安全性。对多层感知器结构的人工神经网络和贝叶斯正则化算法进行了训练和测试,用于G.A. Siwabessy多用途反应堆的热功率估计。此外,为了找出对热功率影响最大的参数,对估计系统进行了输入变化测试。本研究发现,一次冷却剂温度传感器的输出是对反应堆热功率影响最大的主要因素,而压力传感器的输出对功率计算的影响最小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power estimation of G.A. Siwabessy Multi-Purpose Reactor at start-up condition using artificial neural network with input variation
Thermal power of nuclear reactor needs to be carefully maintained to produce desired electrical power. While in-core measurement system has a higher safety risk, ex-core measurement has been employed to increase safety. Artificial neural network with multi-layer perceptron architecture and Bayesian regularization algorithm has been trained and tested for estimating the thermal power at G.A. Siwabessy multi-purpose reactor. Furthermore, to find out the parameters that provide the strongest influences to thermal power, variations of input were tested to the estimation system. This study found that the output from primary coolant temperature sensor was the main factor that produces the strongest effect toward thermal power of the reactor, whereas the output from pressure sensor providing the smallest effect toward the power calculation.
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