Literature DB >> 27500586

Integrated environmental monitoring and multivariate data analysis-A case study.

Ingvar Eide1, Frank Westad2, Ingunn Nilssen1,3, Felipe Sales de Freitas4, Natalia Gomes Dos Santos5, Francisco Dos Santos5, Marcelo Montenegro Cabral5, Marcia Caruso Bicego4, Rubens Figueira4, Ståle Johnsen1.   

Abstract

The present article describes integration of environmental monitoring and discharge data and interpretation using multivariate statistics, principal component analysis (PCA), and partial least squares (PLS) regression. The monitoring was carried out at the Peregrino oil field off the coast of Brazil. One sensor platform and 3 sediment traps were placed on the seabed. The sensors measured current speed and direction, turbidity, temperature, and conductivity. The sediment trap samples were used to determine suspended particulate matter that was characterized with respect to a number of chemical parameters (26 alkanes, 16 PAHs, N, C, calcium carbonate, and Ba). Data on discharges of drill cuttings and water-based drilling fluid were provided on a daily basis. The monitoring was carried out during 7 campaigns from June 2010 to October 2012, each lasting 2 to 3 months due to the capacity of the sediment traps. The data from the campaigns were preprocessed, combined, and interpreted using multivariate statistics. No systematic difference could be observed between campaigns or traps despite the fact that the first campaign was carried out before drilling, and 1 of 3 sediment traps was located in an area not expected to be influenced by the discharges. There was a strong covariation between suspended particulate matter and total N and organic C suggesting that the majority of the sediment samples had a natural and biogenic origin. Furthermore, the multivariate regression showed no correlation between discharges of drill cuttings and sediment trap or turbidity data taking current speed and direction into consideration. Because of this lack of correlation with discharges from the drilling location, a more detailed evaluation of chemical indicators providing information about origin was carried out in addition to numerical modeling of dispersion and deposition. The chemical indicators and the modeling of dispersion and deposition support the conclusions from the multivariate statistics. Integr Environ Assess Manag 2017;13:387-395.
© 2016 SETAC. © 2016 SETAC.

Entities:  

Keywords:  Drill cuttings; Partial least squares regression; Peregrino; Principal component analysis (PCA); Sediment traps

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Year:  2016        PMID: 27500586     DOI: 10.1002/ieam.1840

Source DB:  PubMed          Journal:  Integr Environ Assess Manag        ISSN: 1551-3777            Impact factor:   2.992


  2 in total

1.  Automated multivariate analysis of multi-sensor data submitted online: Real-time environmental monitoring.

Authors:  Ingvar Eide; Frank Westad
Journal:  PLoS One       Date:  2018-01-12       Impact factor: 3.240

2.  Underwater hyperspectral classification of deep sea corals exposed to 2-methylnaphthalene.

Authors:  Paul Anton Letnes; Ingrid Myrnes Hansen; Lars Martin Sandvik Aas; Ingvar Eide; Ragnhild Pettersen; Luca Tassara; Justine Receveur; Stéphane le Floch; Julien Guyomarch; Lionel Camus; Jenny Bytingsvik
Journal:  PLoS One       Date:  2019-02-27       Impact factor: 3.240

  2 in total

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