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首页> 外文期刊>Journal of Environmental Management >Oil sludge depository assessment using multivariate data analysis
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Oil sludge depository assessment using multivariate data analysis

机译:使用多元数据分析的油泥沉积物评估

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Oil-containing industrial wastes tend to accumulate and present a growing environmental danger. This is of particular concern in certain areas of Russia. For effective processing of depositories, the wastes' physico-chemical properties and depository characteristics should both be taken into account. Representative sample sets were collected from fifty four depositories of different age, origin, and location in Samara region and analyzed using multivariate data analysis: Principal Component Analysis (PCA) and Partial Least-Squares (PLS) regression. PCA results provide a better understanding of the internal data structure, i.e. variable correlations and groupings. Based on the PCA results, a new approach to the classification of oil sludge depositories has been suggested. Another practically important task of site assessment has been solved by PLS regression modeling. The method has been successfully applied to the accurate estimation of the depository processing profitability for a specific site.
机译:含油的工业废物往往会积累,并带来越来越严重的环境危险。这在俄罗斯某些地区尤其令人关注。为了有效处理沉积物,应同时考虑废物的理化特性和沉积物特性。从萨马拉地区不同年龄,来源和位置的五十四个储藏库收集了代表性样本集,并使用多元数据分析进行了分析:主成分分析(PCA)和偏最小二乘(PLS)回归。 PCA结果可更好地了解内部数据结构,即变量相关性和分组。基于PCA结果,提出了一种新的油泥沉积物分类方法。通过PLS回归建模解决了站点评估的另一个实际重要任务。该方法已成功应用于特定站点的存款处理利润率的准确估计。

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