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RBF Neural Networks and Genetic Algorithms Based Optimization Control of Aluminum Powder Nitrogen Atomization Process

机译:基于RBF神经网络和遗传算法的铝粉氮雾化过程优化控制

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Aluminum powder nitrogen atomizing process is with nonlinearities, large time delay, strong coupling and severe uncertainty, thus it is difficult to obtain the deterministic model and implement process optimization control by conventional methods. In this paper, the optimization control of aluminum powder nitrogen atomization process is presented to improve the fine powder rate. The process model of nitrogen atomization is established using RBF neural networks and the set values of control variables are optimized dynamically by means of implement of the optimization strategy based on enhanced genetic algorithms. Comparisons of the aluminum powder particle size distribution before and after optimization illustrate that the implement of process optimization control can improve the effect of nitrogen atomization and promote the percentages of ultra-fine aluminum powder greatly.
机译:铝粉氮雾化过程具有非线性,时延大,耦合性强,不确定性大等特点,难以通过常规方法获得确定性模型并进行工艺优化控制。为提高细粉率,提出了铝粉氮雾化工艺的优化控制。利用RBF神经网络建立氮雾化过程模型,并通过基于改进遗传算法的优化策略,对控制变量的设定值进行动态优化。对优化前后铝粉粒度分布的比较表明,工艺优化控制的实施可以提高氮雾化效果,大大提高超细铝粉的含量。

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