首页> 外文会议>International Mineral Processing Congress >Fingerprint of a Phosphorus Producing Submerged Arc Furnace A - The Limits of Dynamic Modelling
【24h】

Fingerprint of a Phosphorus Producing Submerged Arc Furnace A - The Limits of Dynamic Modelling

机译:磷生产埋弧炉A的指纹图谱-动态建模的局限性

获取原文

摘要

Within a phosphorus producing submerged arc furnace it was found that the continuous fluctuation of the furnace between a flowrate-driven state (high throughput) and a thermodynamic-driven state (low throughput) caused both techniques to have similar overall, predictive abilities and resulted in a linear, ARX-type, adaptive prediction model as the model of choice. Secondly, this prediction model was developed, tested and then shown to have a reasonable, 8-hour-ahead predictive accuracy (R2, coefficient of determination) of 30% (±6%) on future Pslag values. This inherent relationship exists because, at the precise moment of a Pslag prediction, the furnace already contains the metallurgical memory (input variables to the linear model) needed to ensure that some predictive possibilities will always exists all as a result of the long residence times in the furnace. Residence time, however, is not a directly adjustable variable but rather a fully dependent variable and a function of an array of interconnected and interactive variables. In fact, this applies to virtually all input variables, re-emphasising the importance of innate metallurgical memory. Thirdly, predictive control possibilities were explored by simulating the set-points of two fully independent variables used by operators to control the process: the ratio of fixed carbon-to-P2O5 and the ratio of silica gravel-to-pellets. This linear, predictive control model showed only a slight improvement with an 8-hour-ahead predictive accuracy of 35% (±7%). This highlights how ineffective current adjustments are in optimally steering the process and how difficult even incremental improvements in feed-forward and predictive control can be. Finally, it is shown that fundamental design-, samplingand process restrictions currently associated with the process will always limit the predictive and especially control accuracy or meaningfulness of any dynamic model. These restrictions include the size of the furnace resulting in long residence times, 8-hours sampling intervals, an extremely complex and interactive process and a 16% spatial analyses variation on the Pslag values the very value that the model is to predict. The point is made that, given the current status quo, even the perfect dynamic prediction model can not improve on an 8-hour-ahead prediction of 30% (±6%). This barrier can only be pierced with e.g. tidier and more frequent sampling regimes and other upfront capital investments, a decision that becomes a cost accounting exercise and that can only be taken by the management structure. An investment demanding ever-increasing attention is CFD software and it's potential to shed more light on the complex interactions within the furnace.
机译:在产生磷的埋弧炉中,发现炉在流量驱动状态(高通量)和热力学驱动状态(低通量)之间的连续波动导致两种技术具有相似的总体预测能力,并导致线性,ARX类型的自适应预测模型作为选择模型。其次,开发,测试了此预测模型,然后证明其具有对未来Pslag值的30%(±6%)的合理的,提前8小时的预测准确性(R2,确定系数)。之所以存在这种固有的关系,是因为在Pslag预测的精确时刻,熔炉已经包含了冶金记忆(线性模型的输入变量),以确保某些预测可能性将始终存在,这是由于在炉渣中存在较长的停留时间所致。炉子。但是,停留时间不是直接可调的变量,而是完全因变量,并且是相互关联和交互的变量数组的函数。实际上,这实际上适用于所有输入变量,从而再次强调了固有冶金存储器的重要性。第三,通过模拟操作员用来控制过程的两个完全独立变量的设定点来探索预测控制的可能性:固定碳与P2O5的比例和二氧化硅砾石与小球的比例。这种线性的预测控制模型仅显示了轻微的改进,提前8小时的预测精度为35%(±7%)。这凸显了电流调节如何无法有效地优化过程,以及前馈和预测控制的逐步改进甚至有多困难。最后,表明当前与过程相关的基本设计,采样和过程限制将始终限制任何动态模型的预测性,尤其是控制准确性或有意义性。这些限制包括炉子的尺寸,较长的停留时间,8小时的采样间隔,极其复杂和互动的过程以及Pslag值的16%空间分析变化,这正是模型所要预测的价值。指出,鉴于当前的现状,即使是完美的动态预测模型也无法在30%(±6%)的提前8小时预测中得到改善。只能用例如更为常规,更频繁的抽样制度和其他前期资本投资,这一决定将成为成本核算活动,并且只能由管理机构来决定。 CFD软件是一项需要越来越多的关注的投资,它有可能进一步阐明炉子内部复杂的相互作用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号