Knowledge and mathematical programming-based optimal scheduling for byproduct gas system in steel industry

Chunyang Sheng, Jun Zhao
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Abstract

Aiming at the optimal scheduling problem of byproduct gas system in steel industry, a knowledge and mathematical programming-based optimal scheduling method is proposed in this study. On one hand, a fuzzy model is designed to extract the expert scheduling knowledge from the historical data of the industrial process. And then, a great deal of scheduling knowledge is employed to compose a fuzzy rules base, which can be used for fuzzy inference of operation scheme with a new input. On the other hand, a mixed integer linear program (MILP) method is built to further optimize the operation scheme. Thus, a more reasoning and optimal operation scheme can be achieved with the consideration of both the expert knowledge and the mathematical programming method. Finally, a byproduct gas system of one steel industry is studied for experiments to verify the effectiveness and practicability of the proposed method.
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基于知识和数学规划的钢铁工业副产气体系统优化调度
针对钢铁工业副产气体系统的优化调度问题,提出了一种基于知识和数学规划的优化调度方法。一方面,设计了从工业过程历史数据中提取专家调度知识的模糊模型;然后,利用大量的调度知识组成一个模糊规则库,用于新输入操作方案的模糊推理。另一方面,建立了混合整数线性规划(MILP)方法,进一步优化了操作方案。因此,综合考虑专家知识和数学规划方法,可以得到一个更合理、更优的操作方案。最后,以某钢铁工业副产气体系统为例进行了实验研究,验证了该方法的有效性和实用性。
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