Affiliation:
1. Faculty of Petroleum Processing and Petrochemistry, Petroleum-Gas University, 100680 Ploiesti, Romania
Abstract
Hazardous petroleum wastes are an inevitable source of environmental pollution. Leachates from these wastes could contaminate soil and potable water sources and affect human health. The management of acid tars, as a byproduct of refining and petrochemical processes, represented one of the major hazardous waste problems in Romania. Acid tars are hazardous and toxic waste and have the potential to cause pollution and environmental damage. The need for the identification, study, characterization, and subsequently either the treatment, valorization, or elimination of acid tars is determined by the fact that they also have high concentrations of hydrocarbons and heavy metals, toxic for the storage site and its neighboring residential area. When soil contamination with acid tars occurs, sustainable remediation techniques are needed to restore soil quality to a healthy production state. Therefore, it is necessary to ensure a rapid but robust characterization of the degree of contamination with hydrocarbons and heavy metals in acid tars so that appropriate techniques can then be used for treatment/remediation. The first stage in treating these acid tars is to determine its properties. This article presents a software program that uses machine learning to estimate selected properties of acid tars (pH, Total Petroleum Hydrocarbons—TPH, and heavy metals). The program uses the Automatic Machine Learning technique to determine the Machine Learning algorithm that has the lowest estimation error for the given dataset, with respect to the Mean Average Error and Root Mean Squared Error. The chosen algorithm is used further for properties estimation, using the R2 correlation coefficient as a performance criterion. The dataset used for training has 82 experimental points with continuous, unique values containing the coordinates and depth of acid tar samples and their properties. Based on an exhaustive search performed by the authors, a similar study that considers machine learning applications was not found in the literature. Further research is required because the method presented therein can be improved because it is dataset dependent, as is the case with every ML problem.
Funder
Eurototal Comp Srl Bucharest
Reference53 articles.
1. Riazi, M.R. (2005). Characterization and Properties of Petroleum Fractions, ASTM International. [1st ed.].
2. Solid waste management in petroleum refineries;Alshammari;Am. J. Environ. Sci.,2008
3. Milne, D.D. (1985). Acid Tar: Production, Treatment and Disposal. [Master’s Thesis, Department of Civil Engineering, Imperial College of Science and Technology, University of London].
4. Characterization of acid tars;Leonard;J. Hazard. Mater.,2010
5. Environmental aspect of storage of acid tars and their utilization in commercial petroleum products (Review);Kolmakov;Pet. Chem.,2007
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献