4.6 Article

Bioremediation of Hydrocarbon-Polluted Soil: Evaluation of Different Operative Parameters

Journal

APPLIED SCIENCES-BASEL
Volume 12, Issue 4, Pages -

Publisher

MDPI
DOI: 10.3390/app12042012

Keywords

bioremediation; microcosms; biopiles; statistical analysis; categorical factors

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This paper discusses the application of statistical analysis in the bioremediation of hydrocarbon-polluted soils. The results demonstrate the effectiveness of this method in identifying the significance of factors and their interactions, especially when some factors cannot be defined numerically.
The bioremediation of soils polluted with hydrocarbons demonstrated to be a simple and cheap technique, even if it needs a long time. The current paper shows the application of statistical analysis, based on two factors involved in the biological process at several levels. We focus on the Design of Experiments (DOE) to determine the number and kind of experimental runs, whereas the use of the categorical factors has not been widely exploited up to now. This method is especially useful to analyze factors with levels constituted by categories and define the interaction effects. Particularly, we focused on the statistical analysis of (1) experimental runs carried out at laboratory scale (test M, in microcosm), on soil polluted with diesel oil, and (2) bench scale runs (test B, in biopile), on refinery oil sludge mixed with industrial or agricultural biodegradable wastes. Finally, the main purpose was to identify the factor's significance in both the tests and their potential interactions, by applying the analysis of variance (ANOVA). The results demonstrate the robustness of the statistical method and its quality, especially when at least one of the factors cannot be defined with a numerical value.

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