利用电能质量指标和ANFIS预测电弧炉发泡渣质量

A. Parsapoor, B. Mirzaeian Dehkordi, M. Moallem
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引用次数: 0

摘要

发泡渣质量是提高电弧炉工艺效率和质量的重要参数。然而,由于其变化迅速且不可预测,其质量难以控制。本文采用自适应神经模糊推理系统(ANFIS)基于电能质量指标对电弧炉炉渣质量进行判定。为了训练智能系统,在电弧炉给料机上安装电能质量分析仪,记录电弧炉给料机电能质量参数。测量了13个熔点的所有电能质量参数。对12组电能质量参数进行了检验,最终选出了总电流谐波畸变、七次电流谐波和三相电流不平衡3组预测精度最高的电能质量参数。该智能系统通过6次熔炼数据训练,并将电能质量分析仪连接到炉膛给料机进行实验测试,每分钟预测炉渣质量。实验结果表明,该方法的预测准确率约为95%。所设计的智能系统也可用于渣控过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting foaming slag quality in electric arc furnace using power quality indices and ANFIS
Foaming slag quality is an important parameter that can be used to improve the efficiency and quality of electric arc furnace process. However due to its fast and unpredictable changes, its quality is difficult to control. In this paper, an Adaptive Neuro Fuzzy Inference System (ANFIS) is used to determine slag quality based on power quality indices in electric arc furnaces. In order to train the intelligent system, a power quality analyzer is installed on an electric arc furnace feeder to record its power quality parameters. All electrical power quality parameters have been measured for 13 melting. Twelve groups of power quality parameters are examined for prediction slag quality and finally one group including total current harmonic distortion, seventh current harmonic, and three phase current unbalance are selected which shows the best prediction accuracy. The intelligent system trained by six melting data and tested experimentally by connecting power quality analyzer to furnace feeder to predict the slag quality every minute. Experimental results show the accuracy of prediction is about 95%. The designed intelligent system can also be used in slag control process.
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