Zhao Jun, Wang Tianyu, Pedrycz Witold, Wang Wei
IEEE Trans Cybern. 2021 Apr;51(4):2201-2214. doi: 10.1109/TCYB.2019.2901268. Epub 2021 Mar 17.
A timely and effective scheduling of the byproduct gas system plays a pivotal role in realizing intelligent manufacturing and energy conservation in the steel industry. In order to realize real-time dynamic scheduling of the blast furnace gas (BFG) system, a granular prediction and dynamic scheduling process based on adaptive dynamic programming is proposed in this paper. To reflect the specificity of production reflected in the fluctuation of data, a series of information granules is constructed and described. In the dynamic scheduling phase, based on the granular feature description, a scheduling action network is established and further updates of information granules are realized. Considering a slow adjustment process and delay characteristics of the BFG system, the cumulative reward of the critic network is calculated on the basis of the data partition to construct a tendency attenuation-based cost function. In order to determine the future trends of the gas tank level that targets real-time determination of the scheduling moment, a reinforcement learning-based granulation and prediction process is also proposed. To demonstrate the performance of the proposed method, a number of comparative experiments are presented by using the practical industrial data. The results indicate that the proposed method exhibits high accuracy and can deliver an effective solution to justified scheduling of the BFG system.
副产品气体系统的及时有效调度在钢铁行业实现智能制造和节能方面起着关键作用。为实现高炉煤气(BFG)系统的实时动态调度,本文提出了一种基于自适应动态规划的粒度预测与动态调度方法。为反映数据波动所体现的生产特殊性,构建并描述了一系列信息粒度。在动态调度阶段,基于粒度特征描述建立调度动作网络,并实现信息粒度的进一步更新。考虑到BFG系统的调整过程缓慢及延迟特性,在数据分区的基础上计算评判网络的累积奖励,构建基于趋势衰减的成本函数。为确定以实时确定调度时刻为目标的气罐液位未来趋势,还提出了一种基于强化学习的粒度化与预测方法。为验证所提方法的性能,利用实际工业数据进行了多项对比实验。结果表明,所提方法具有较高的准确性,能够为BFG系统的合理调度提供有效的解决方案。