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引用次数: 0

摘要

硝化过程是二硝基苯生产的重要环节。提出了一种优化控制系统,实现了对硝化过程的建模、优化和控制。利用改进的反向传播神经网络建立并实现了硝化过程质量预测模型,并提出了一种结合c均值聚类、遗传和混沌方法的硝化过程运行参数优化算法。实际运行结果证明了系统的有效性。
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Optimization control system for nitrifying process
The nitrifying process is an important step in dinitrochlorobenzene production. This paper presented an optimization control system to implement the modeling, optimization, and control of the nitrifying process. Models for predicting the quality of nitrifying process are derived and implemented using improved back-propagation neural networks, and an algorithm combining c-means clustering, genetic, and chaos approaches for the optimization of the operating parameters of the nitrifying process is presented. The results of actual runs demonstrate the validity of the system.
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