首页> 外文会议>European Conference on Modelling and Simulation >PREDICTION OF RAW MATERIAL BATCHES FOR THE PRODUCTION OF CLINKER BY MEANS OF ARTIFICIAL NEURAL NETWORKS - ANALYSIS OF BEHAVIOUR
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PREDICTION OF RAW MATERIAL BATCHES FOR THE PRODUCTION OF CLINKER BY MEANS OF ARTIFICIAL NEURAL NETWORKS - ANALYSIS OF BEHAVIOUR

机译:通过人工神经网络预测熟料生产熟料的批量 - 行为分析

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This research deals with the analysis of the behaviour of artificial neural nets for prediction of raw material batches for the production of clinker. During the production several oxides that are present in raw materials in quarries have to be extracted for homogenization of the mixture suitable for clinker production. There is some delay between the measurement of the mixture and the material which is send from quarry. It is necessary to "send" precise chemical composition to ensure a good quality of clinker and resulting product - cement. Artificial neural networks (ANN) are suitable for such kind of time-independent prediction. The results show that not all oxides are necessary to use for the prediction of one oxide. The ANN were designed into several nets with one input similarly as pseudo neural networks are able to work. The results will be used for the purpose of further research of pseudo neural nets which currently serve only as classifiers.
机译:该研究涉及分析人工神经网的行为,以预测熟料生产原料批次。在生产过程中,必须提取以争吵的原料中存在的几种氧化物,以均质化适于熟料产生的混合物。在采石场发送的混合物和材料的测量之间存在一些延迟。有必要“发送”精确的化学组合物,以确保熟料质量良好,并得到产品 - 水泥。人工神经网络(ANN)适用于这种多次的时间预测。结果表明,不是所有氧化物都必须用于预测一氧化物。由于伪神经网络能够工作,ANN设计成几个网站,其中一个输入。结果将用于进一步研究目前仅作为分类器的伪神经网络。

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