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数据与模型驱动的电熔镁群炉需量预报方法
引用本文:杨杰, 柴天佑, 张亚军, 吴志伟. 数据与模型驱动的电熔镁群炉需量预报方法. 自动化学报, 2018, 44(8): 1460-1474. doi: 10.16383/j.aas.2017.c160597
作者姓名:杨杰  柴天佑  张亚军  吴志伟
作者单位:1.东北大学流程工业综合自动化国家重点实验室 沈阳 110819;;2.东北大学自动化研究中心 沈阳 110819
基金项目:国家自然科学基金61403071教育部项目基本科研业务费培育种子基金N140804001国家自然科学基金61503066中国博士后科学基金2014M561246中国博士后科学基金2015M581355辽宁省博士启动基金项目201501151教育部项目基本科研业务费培育种子基金N160801001
摘    要:电熔镁群炉需量指当前时刻k和(k-1),…,(k-n+1)时刻群炉功率的平均值,用于度量高耗能电熔镁群炉用电量.(k+1)时刻群炉需量取决于功率变化率.本文建立了功率变化率与电流控制系统输出电流之间由线性项与未知非线性项组成的动态模型,其中线性项通过电流被控对象的参数和控制器的参数计算,未知非线性项采用基于偏自相关函数(Partial autocorrelation function,PACF)输入变量决策的径向基函数神经网络(Radial basis function neural network,RBFNN)来估计.本文提出了由当前k时刻的需量和功率,(k-n+1)时刻功率及k时刻功率变化率的估计组成的(k+1)时刻需量的计算模型.通过某电熔镁砂厂实际数据的仿真实验和工业实验表明所提方法可准确预报需量变化趋势,可以防止因原料变化引起需量尖峰导致错误切断电熔镁炉供电造成电熔镁砂质量降低.

关 键 词:需量预报   电熔镁群炉   数据与模型驱动   径向基函数神经网络
收稿时间:2016-08-20

Data and Model Driven Demand Forecasting Method for Fused Magnesium Furnace Group
YANG Jie, CHAI Tian-You, ZHANG Ya-Jun, WU Zhi-Wei. Data and Model Driven Demand Forecasting Method for Fused Magnesium Furnace Group. ACTA AUTOMATICA SINICA, 2018, 44(8): 1460-1474. doi: 10.16383/j.aas.2017.c160597
Authors:YANG Jie  CHAI Tian-You  ZHANG Ya-Jun  WU Zhi-Wei
Affiliation:1. State Key Laboratory of Synthetical Automation for Process Industries, Northeastern University, Shenyang 110819;;2. Research Center of Automation, Northeastern University, Shenyang 110819
Abstract:The demand of fused magnesium furnace group (FMFG) is the average value of powers at times k, (k-1), …, (k-n+1). The demand indicates the electricity consumption of the FMFG. The demand at time (k+1) depends on the rate of power change. In this paper, we develop a dynamic model of the rate of power change and the output current. The model consists of a linear term and an unknown nonlinear term, where the linear term can be calculated by the parameters of the controlled current and the controller, and the unknown nonlinear term can be estimated using the radial basis function neural network (RBFNN). The input variables of RBFNN are decided based on partial autocorrelation function (PACF). Then a computing model of demand at time (k+1) is proposed, which consists of the demand at time k, the powers at times k and (k-n+1) and the estimate of the rate of power change at time k. Simulations based on actual data and industrial experiments at a fused magnesia plant show that the proposed method can accurately forecast demand trends and can prevent reduction of fused magnesia grade caused by unnecessary cut off due to the demand spikes caused by change of raw materials.
Keywords:Demand forecasting  fused magnesium furnace group (FMFG)  data and model driven  radial basis function neural network (RBFNN)
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