Water outlet temperature prediction method of nuclear power plant based on echo state network with variable memory length

Dongmin Yu, C. Duan, Siyuan Fan
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Abstract

As a new type of energy which is developing vigorously in China, nuclear energy has been widely concerned in all aspects. The circulating water system in the nuclear power plant takes water from seawater and cools the steam engine through the condenser, and then carries waste heat from the outlet to the sea. If the temperature of the outlet is too high, it will not only cause the temperature rise near the water surface of the atmosphere and the ground layer near the shore, but also affect the ecological environment inside the ocean. In this paper, a model based on the echo state network with variable memory length (VML-ESN) is proposed to predict outlet temperature of the nuclear power plant. It can get memory according to the different input autocorrelation characteristic length to adjust status update equation. The simulation results show that compared with ESN, Leaky-ESN, and Twi-ESN, the proposed model has better prediction performance, with a MAPE of 3.42%. In addition, when the reservoir size is 40, the error of VML-ESN is smaller than that of other models.
基于变记忆长度回声状态网络的核电站出水温度预测方法
核能作为一种正在中国蓬勃发展的新型能源,受到了各方面的广泛关注。核电站的循环水系统从海水中取水,通过冷凝器冷却蒸汽机,然后从出口将余热输送到大海中。如果出水口温度过高,不仅会造成大气水面附近和海岸附近的地面层温度升高,而且会影响海洋内部的生态环境。本文提出了一种基于变记忆长度回声状态网络(VML-ESN)的核电厂出口温度预测模型。它可以根据不同的输入自相关特征长度来调整状态更新方程。仿真结果表明,与回声状态网络、leaky -回声状态网络和twi -回声状态网络相比,该模型具有更好的预测性能,MAPE为3.42%。此外,当水库规模为40时,VML-ESN的误差小于其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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