基于Fireworks算法优化极限学习机的过热蒸汽温度特性建模

L. Cheng, Morige Jiletu, Fengqiang Ji, Rui Zhao, Feng Zhang, Ming Xie, Yongjun Wang
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引用次数: 0

摘要

为了建立更精确的过热蒸汽温度(SST)特征模型,实现SST的智能预测最优控制,利用一台600MW亚临界燃煤机组DCS采集的历史运行数据,采用外部时滞极限学习机(TDELM)方法建立了SST预测模型。采用自适应惯性权值的烟花算法(fireworks algorithm, FWA)对ELM神经网络参数进行优化。通过与传统ELM模型和FWAELM模型的模型预测结果比较,表明改进的fireworks算法具有更快的收敛速度和更高的搜索精度,FWA优化后的SST特征模型具有更好的精度和泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling of Superheated Steam Temperature Characteristics Based on Fireworks Algorithm Optimized Extreme Learning Machine
In order to establish a more accurate superheated steam temperature (SST) characteristic model and realize intelligent predictive optimal control of SST, the prediction model of SST was established with external time delay extreme learning machine (TDELM) method using the historical operation data acquired from DCS of a 600MW subcritical coal-fired power unit. The fireworks algorithm (FWA) with adaptive inertia weight was adopted to optimize the ELM neural network parameters. By comparing the model prediction results with the traditional ELM model and FWAELM model, it is shown that the improved fireworks algorithm has faster convergence speed and higher search accuracy, and the SST characteristic model optimized by FWA has better accuracy and generalization ability.
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