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Online estimation of electric arc furnace tap temperature by using fuzzy neural networks

机译:基于模糊神经网络的电弧炉出铁温度在线估计

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摘要

Industrial factories require continuous analysis and reengineering over its production processes but always keeping a severe control of material costs and operation emissions. In the past electric steel mills have been subject of some operation models developed in order to improve the control of the arc furnace by means of mathematical techniques and, later on, with finite elements technique (FEM). However, these models have not reached the expected results and applicability. In this case, a model has been developed that allows improving the control through a better prediction of the final temperature and, as consequence, to reduce the consumption of energy in the electric arc furnace. Required information for this new model will be obtained gathering knowledge collected up from data obtained of a certain electric furnace and also considering the plant operators and technicians experience. The model has been constructed by using neural networks as classifier, and with a final fuzzy inference function to return a predicted temperature value.
机译:工业工厂需要对其生产过程进行连续分析和重新设计,但始终严格控制材料成本和运营排放。过去,为了改善电弧炉的控制,通过数学技术以及后来的有限元技术(FEM),开发了一些钢厂的操作模型。但是,这些模型尚未达到预期的结果和适用性。在这种情况下,已经开发出一种模型,该模型可以通过更好地预测最终温度来改善控制,从而减少电弧炉中的能源消耗。通过收集从某些电炉获得的数据中收集的知识,并考虑工厂操作人员和技术人员的经验,可以获取此新模型所需的信息。该模型是通过使用神经网络作为分类器并具有最终的模糊推理函数来返回预测温度值而构建的。

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