基于AP的CBR转炉炼钢终点含碳量预测

Yuan Cheng, Jun Xing, Jie Dong, Zhiseng Wang, Xinzhe Wang
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引用次数: 0

摘要

炼钢终点含碳量是衡量钢材质量的重要指标。为了提高转炉炼钢终点含碳量预测的准确性,采用基于案例推理的方法对转炉炼钢终点含碳量进行预测。在CBR中,案例检索对推理结果有重要影响。因此,我们采用亲和传播(affinity propagation, AP)聚类算法和注水算法来增强案例检索,从而提高端点碳含量预测的准确性和稳定性。通过仿真实验,将本文提出的新模型与目前广泛使用的方法进行了比较。结果表明,改进后的CBR能明显提高终点碳含量预测的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AP Based CBR for Endpoint Carbon Content Prediction of BOF Steelmaking
The endpoint carbon content of steelmaking is an important criterion for steel quality. Aiming at increasing the accuracy of endpoint carbon content prediction in basic oxygen furnace (BOF) steelmaking, this paper uses case-based reasoning (CBR) method to predict the endpoint carbon content of BOF steelmaking. In CBR, case retrieval makes a significant impact on reasoning result. Therefore, we apply affinity propagation (AP) clustering algorithm and waterfilling algorithm to enhance the case retrieval so as to improve the accuracy and stability of endpoint carbon content prediction. Through the simulation experiment, this paper compares the new model we proposed with the widely used method at present. The results show that the improved CBR can obviously improve the accuracy of endpoint carbon content prediction.
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