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首页> 外文期刊>Journal of coal science & engineering (China) >Study on optimization control method based on artificial neural network
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Study on optimization control method based on artificial neural network

机译:基于人工神经网络的优化控制方法研究

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In the goal optimization and control optimization process the problems with common artificial neural network algorithm are unsure convergence, insufficient post-training network precision, and slow training speed, in which partial minimum value question tends to occur. This paper conducted an in-depth study on the causes of the limitations of the algorithm, presented a rapid artificial neural network algorithm, which is characterized by integrating multiple algorithms and by using their complementary advantages. The salient feature of the method is self-organization, which can effectively prevent the optimized results from tending to be partial minimum values. Overall optimization can be achieved with this method, goal function can be searched for in overall scope. With optimization control of coal mine ventilator as a practical application, the paper proves that by integrating multiple artificial neural network algorithms, best control optimization and goal optimized can be achieved.
机译:在目标优化和控制优化过程中,常见的人工神经网络算法存在收敛不确定,训练后网络精度不足,训练速度慢等问题,容易出现局部最小值问题。本文对算法局限性的原因进行了深入研究,提出了一种快速人工神经网络算法,其特点是将多种算法集成在一起,并利用它们的互补优势。该方法的显着特征是自组织,可以有效地防止优化结果趋于偏小值。用这种方法可以实现整体优化,可以在整体范围内搜索目标函数。以煤矿通风机的优化控制为实际应用,证明通过集成多种人工神经网络算法,可以实现最佳的控制优化和目标优化。

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