首页> 外文期刊>Science of the total environment >Integration of machine learning classifiers and higher order tensors for screening the optimal recipe of filter media in stormwater treatment
【24h】

Integration of machine learning classifiers and higher order tensors for screening the optimal recipe of filter media in stormwater treatment

机译:机器学习分类器的整合和高阶张量筛选雨水处理中过滤介质的最佳配方

获取原文
获取原文并翻译 | 示例
       

摘要

Filter media have oftentimes been used in fixed-bed column tests to examine their removal efficiencies for various pollutants, such as nutrients in stormwater runoff. With limited data sets from column studies, a response surface method (RSM), such as the Box-Behnken Design (BBD), and machine learning methods, can be used to transition from discrete mode assessment to continuous mode optimization, from which the key ingredients of filter media can be better synergized. In this study, similarly to drug discovery via chemometrics, RSM is used to generate meta-models and identify the optimum ratio between clay and iron-filings contents in Iron-filings-based Green Environmental Media (IFGEM) for nutrient removal in stormwater treatment. To achieve the continuous mode optimization, artificial neural network (ANN), deep belief network (DBN), and extreme learning machine (ELM) were selected as machine learning models to compare with BBD to explore the limited column data sets and improve the data science. While separate RSM can help realize the removal efficiencies of total nitrogen (TN), total phosphorus (TP), and ammonia based on varying ratios of clay and iron-filings contents in IFGEM, heterogeneous and inconsistent response surfaces generated from the four learners or classifiers (ANN, ELM, DBN, and BBD) complicate the selection of the final optimal recipe. The power of higher order singular value decomposition (HOSVD) helps synergize the optimal clay and iron filings matrixes of IFGEM in the context of continuous mode optimization via ANN, ELM, DBN, and BBD. With the aid of HOSVD, the optimal recipe for a holistic nutrient removal of TN, TP, and ammonia was determined to be 5% clay, 10% iron filings, 10% tire crumb, and 75% sand.
机译:过滤介质已经使用时间用于固定床柱试验,以检查其用于各种污染物的去除效率,例如雨水径流中的营养素。利用列研究的数据集有限,响应面法(RSM),例如Box-Behnken设计(BBD)和机器学习方法,可用于从离散模式评估转换到连续模式优化,从中转换过滤介质的成分可以更好地协同增长。在本研究中,与通过化学计量学的药物发现类似,RSM用于产生元模型,并鉴定雨水治疗中的铁源的绿色环境介质(IFGEM)中粘土和铁料含量之间的最佳比率。为了实现连续模式优化,人工神经网络(ANN),深度信仰网络(DBN)和极端学习机(ELM)被选为机器学习模型,以与BBD进行比较,探索有限的列数据集并提高数据科学。虽然单独的RSM可以有助于实现基于IFGEM,异构和铁源含量的不同比例,从四个学习者或分类器中产生的IFGEM,异构和不一致的响应表面的粘土和铁锉含量的变化效率的去除效率(ANN,ELM,DBN和BBD)使最终最佳配方的选择复杂化。高阶奇异值分解(HOSVD)的力量有助于通过ANN,ELM,DBN和BBD在连续模式优化的背景下协同IFGEM的最佳粘土和铁锉矩阵。借助Hosvd,测定了TN,TP和氨的整体营养去除的最佳配方为5%粘土,10%铁膜,10%轮胎碎屑和75%的沙子。

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