热电生产过程优化建模预测方法研究

Guodong Mou, Guochang Li, Tao Du
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引用次数: 0

摘要

为了处理热电生产中加热蒸汽锅炉产生的大量历史数据,协助优化生产工艺。针对这一问题,提出了一种燃煤锅炉生产过程优化建模方法。该方法设计了优化的建模算法流程。该方法的基本步骤是:数据处理、关联链发现、利用灵活的神经树算法进行建模和预测。最后得到数据的趋势函数,即拟合函数。通过拟合函数对锅炉生产过程中的各环节进行预测和模拟,可以获得数据中隐含的规律性知识。我们可以调节主蒸汽压力、含氧量、鼓风机转速等生产参数。通过设计算法和实验分析,得到了较好的实验结果。将该方法应用于热电生产,提高了生产效率,实现了节能减排,保证了生产安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Modeling Prediction Methods of Process Optimization for Thermoelectric Production
In order to process massive historical data generated by heating steam boiler in thermoelectric production and assist in optimizing production process. To solve this problem, we propose a modeling method for coal boiler production process optimization. This method has designed optimized modeling algorithm flow. The fundamental steps of this method are: data processing, discovery of correlation chain, modeling and prediction by using the flexible neural tree algorithm. Finally, the trend function of data, namely the fitting function, is obtained. Through fitting function to predict and simulate the links in the boiler production process, we can obtain the implicit regularity knowledge in the data. We can be able to adjust the main steam pressure, oxygen content, rotational speed of blower and other production parameters. Through the design algorithm and experimental analysis, the better experimental results are obtained. By applying this method to thermoelectric production, the production efficiency is improved, energy saving and emission reduction are achieved, and the safety of production is guaranteed.
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