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Predicting Foaming Slag Quality in Electric Arc Furnace Using Power Quality Indices and Fuzzy Method

机译:用电能质量指标和模糊方法预测电弧炉泡沫渣的质量。

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In this paper, a new method based on adaptive neuro fuzzy inference system (ANFIS) and fuzzy logic is presented to determine the slag quality in electric arc furnace using power quality indices. To train ANFIS, all electrical power quality parameters are measured for 13 meltings using a power quality analyzer. Twelve different sets of power quality parameters are examined to predict the slag quality. Finally, one parameter set consisting of total current harmonic distortion, seventh current harmonic, and three phase current unbalance is selected, which shows the best prediction accuracy. Although the trained ANFIS can accurately predict the slag quality, it is not a robust predictor. If the power quality analyzer model or furnace capacity is changed, then the predictor accuracy will be decreased. To overcome this problem, the fuzzy method is used to predict the slag quality using selected power quality parameters. The predictor reports the slag quality every 1 min in experimental test. The designed fuzzy slag quality predictor can also be used in an automatic slag control process.
机译:提出了一种基于自适应神经模糊推理系统(ANFIS)和模糊逻辑的电能质量指标确定电弧炉炉渣质量的新方法。为了训练ANFIS,使用电能质量分析仪测量13次融化的所有电能质量参数。检查了十二组不同的电能质量参数以预测炉渣质量。最后,选择了一个由总电流谐波失真,七次电流谐波和三相电流不平衡组成的参数集,该参数集显示出最佳的预测精度。尽管训练有素的ANFIS可以准确预测炉渣质量,但它并不是可靠的预测器。如果电能质量分析仪型号或熔炉容量发生变化,则预测器准确性会降低。为了克服这个问题,使用模糊方法使用选定的电能质量参数来预测炉渣质量。预测器在实验测试中每1分钟报告一次炉渣质量。设计的模糊炉渣质量预测器也可用于自动炉渣控制过程。

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