首页> 外文期刊>Journal of Hazardous Materials >Application of the differential neural network observer to the kinetic parameters identification of the anthracene degradation in contaminated model soil
【24h】

Application of the differential neural network observer to the kinetic parameters identification of the anthracene degradation in contaminated model soil

机译:差分神经网络观测器在污染模型土壤中蒽降解动力学参数识别中的应用

获取原文
获取原文并翻译 | 示例
           

摘要

In this work a new technique dealing with differential neural network observer (DNNO), which is related with differential neural networks (DNN) approach, is applied to estimate the anthracene dynamics decomposition and to identify the kinetic parameters in a contaminated model soil treatment by simple ozonation. To obtain the experimental data set, the model soil (sand) is combined with an initial anthracene concentration of 3.24 mg/g and treated by ozone (with the ozone initial concentration 16 mg/L) during 90 min in a reactor by the "fluid bed" principle. The anthracene degradation degree was controlled by UV-vis spectrophotometry and HPLC techniques. Based on the HPLC data, the obtained results confirm that anthracene may be decomposed completely in the solid phase by simple ozonation during 20 min and by-products of ozonation are started to be destroyed after 30 min of treatment. In the ozonation process the ozone concentration in the gas phase at the reactor outlet is registered by an ozone detector. The variation of this parameter is used to obtain the summary characteristic curve of the anthracene ozonation (ozonogram). Then, using the experimental decomposition dynamics of anthracene and the ozonogram, the proposed DNNO is trained to reconstruct the anthracene decomposition and to estimate the anthracene ozonation constant using the DNN technique and a modified Least Square method.
机译:在这项工作中,与微分神经网络(DNN)方法相关的一种处理微分神经网络观测器(DNNO)的新技术被用于估算蒽动力学分解并通过简单的方法识别污染模型土壤处理中的动力学参数。臭氧化。为了获得实验数据集,将模型土壤(沙土)与初始蒽浓度为3.24 mg / g结合,并在反应器中90分钟内通过“流体”对臭氧进行处理(臭氧初始浓度为16 mg / L)。床”的原则。蒽的降解程度通过紫外可见分光光度法和HPLC技术来控制。基于HPLC数据,获得的结果证实,在20分钟内,通过简单的臭氧化,蒽可以在固相中完全分解,并且在处理30分钟后,臭氧化的副产物开始被破坏。在臭氧化过程中,反应器出口处气相中的臭氧浓度由臭氧检测器记录。该参数的变化用于获得蒽臭氧化的简要特征曲线(臭氧图)。然后,利用蒽和臭氧的实验分解动力学,对提出的DNNO进行训练,以重建蒽分解,并使用DNN技术和改进的最小二乘方法估算蒽的臭氧化常数。

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