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Dynamic Fire Risk Prevention Strategy In Underground Coal Gasification Processes By Means Of Artificial Neural Networks

机译:人工神经网络的地下煤气化过程动态火灾预防策略。

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Based on data collected during an UCG pilot-scale experiment that took place during 2014 at Wieczorek mine, an active mine located in Upper Silesia (Poland), this research focuses on developing a dynamic fire risk prevention strategy addressing underground coal gasification processes (UCG) within active mines, preventing economic and physical losses derived from fires.To achieve this goal, the forecasting performance of two different kinds of artificial neural network models (generalized regression and multi-layer feedforward) are studied, in order to forecast the syngas temperature at the georeactor outlet with one hour of anticipation, thus giving enough time to UCG operators to adjust the amount and characteristics of the gasifying agents if necessary.The same model could be used to avoid undesired drops in the syngas temperature, as low temperature increases precipitation of contaminants reducing the inner diameter of the return pipeline. As a consequence the whole process of UGC might be stopped. Moreover, it could allow maintaining a high temperature that will lead to an increased efficiency, as UCG is a very exothermic process.Results of this research were compared with the ones obtained by means of Multivariate Adaptative Regression Splines (MARS), a non-parametric regression technique able to model non-linearities that cannot be adequately modelled using other regression methods.Syngas temperature forecast with one hour of anticipation at the georeactor outlet was achieved successfully, and conclusions clearly state that generalized regression neural networks (GRNN) achieve better forecasts than multi-layer feedforward networks (MLFN) and MARS models.
机译:根据2014年在位于上西里西亚(波兰)的活跃矿井Wieczorek矿进行的UCG中试试验中收集的数据,本研究着重于制定针对地下煤气化过程(UCG)的动态火灾风险预防策略为了实现这一目标,研究了两种不同类型的人工神经网络模型(广义回归和多层前馈)的预测性能,以预测煤层气的合成气温度。预计一小时即可到达地质反应器出口,从而为UCG操作员提供了足够的时间来调整气化剂的量和特性(如有必要)。可以使用同一模型来避免合成气温度的意外下降,因为低温会增加合成气的沉淀污染物会减小回流管道的内径。结果,UGC的整个过程可能会停止。此外,由于UCG是一个非常放热的过程,因此可以维持高温,从而提高效率。研究结果与非参数多元自适应回归样条(MARS)进行了比较。能够对非线性进行建模的回归技术,该非线性技术无法使用其他回归方法进行充分建模。成功实现了对地质反应器出口进行一小时预期的合成气温度预测,结论明确指出,广义回归神经网络(GRNN)的预测效果优于多层前馈网络(MLFN)和MARS模型。

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