基于惩罚约束的浮选过程预测新模型的应用研究

Zhang Yong, Liu Xuqiang
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引用次数: 0

摘要

浮选过程是一个复杂的多输入多输出过程,具有强非线性、重耦合和大时滞的特点。由于精矿品位和尾矿品位指标难以在线测量,且随工艺条件的变化而发生动态变化,现有的控制方法目前难以实现这样的控制目标,难以将产品质量指标控制在技术目标范围内,甚至造成故障工况。提出了一种基于群体智能惩罚约束的聚类算法。利用粒子群算法的特性,PCSI可以随机搜索簇的中心,得到簇的个数。利用过程先验知识和主成分分析方法对输入数据进行降维,选择辅助变量。在此基础上,提出了一种基于简化对手惩罚竞争学习方法(SRPCL)的RBFNN混合递归自适应聚类算法。该方法已在鞍钢某选矿厂的两条生产线上成功应用,效果显著。
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Study on the application of a new prediction model based on penalty constraint to flotation process
The flotation process is a complicated multi-input and multi-output process with the characteristic of strong non-linearity, heavy coupling and large delay. Due to the difficulty of measuring the concentrate grade and tailing grade index online, and its dynamics varying with the process conditions, such a control objective by far is difficult to achieve by the existing control methods to control the product quality indices into their technical targeted ranges and even cause fault work-condition. This paper presents a clustering algorithm based on punishing constraint of swarm intelligence (PCSI). Directed by the nature of PSO, PCSI could randomly search the centers of clusters and obtain the number of clusters. The process prior knowledge and PCA method are used to reduce dimension of the input data and select auxiliary variables. And then a new hybrid recursive algorithm of RBFNN based on simplified rival penalized competitive learning method (SRPCL) to make an adaptive clustering is developed. The method proposed has successfully been applied to two production lines of a mineral processing plant of Anshan Iron and Steel Group Corporation, and its effectiveness is proved evidently.
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