摘要
烧结矿碱度的测量是钢铁工业中的关键和难点,况且又容易受到烧结几乎每一个操作环节的影响。利用BP神经网络进行多传感器数据融合的烧结矿碱度的预报模型,可对现场实际数据进行仿真,该方法准确性高,泛化能力广,具有很强的实用性和推广价值。
The measurement of R in sintering process is difficult to control , on the other hand, it is easily to be disturbed by almost process steps. A prediction model of R in sintering process based on BP neural network is proposed to judge the trend of R. The application result shows that the prediction with this method can achieve higher robust, better utility and expensive value.
出处
《安阳工学院学报》
2006年第1期33-36,共4页
Journal of Anyang Institute of Technology