Water quality sensing and spatio-temporal monitoring structure with autocorrelation kernel methods


Abstract:

Pollution on water resources is usually analyzed with monitoring campaigns, which consist of programmed sampling, measurement, and recording of the most representative water quality parameters. These campaign measurements yields a non-uniform spatio-temporal sampled data structure to characterize complex dynamics phenomena. In this work, we propose an enhanced statistical interpolation method to provide water quality managers with statistically interpolated representations of spatial-temporal dynamics. Specifically, our proposal makes efficient use of the a priori available information of the quality parameter measurements through Support Vector Regression (SVR) based on Mercer’s kernels. The methods are benchmarked against previously proposed methods in three segments of the Machángara River and one segment of the San Pedro River in Ecuador, and their different dynamics are shown by statistically interpolated spatial-temporal maps. The best interpolation performance in terms of mean absolute error was the SVR with Mercer’s kernel given by either the Mahalanobis spatial-temporal covariance matrix or by the bivariate estimated autocorrelation function. In particular, the autocorrelation kernel provides with significant improvement of the estimation quality, consistently for all the six water quality variables, which points out the relevance of including a priori knowledge of the problem.

Año de publicación:

2017

Keywords:

  • water quality
  • Mahalanobis kernel
  • Autocorrelation kernel
  • Pollution measurements
  • Support Vector Regression
  • Spatio-temporal interpolation

Fuente:

scopusscopus
googlegoogle

Tipo de documento:

Article

Estado:

Acceso abierto

Áreas de conocimiento:

  • Recursos hídricos
  • Ciencia ambiental
  • Sensor

Áreas temáticas:

  • Ingeniería sanitaria
  • Otros problemas y servicios sociales
  • Métodos informáticos especiales