Pesticide concentration monitoring: investigating spatio-temporal patterns in left censored data

12/20/2022
by   Clément Laroche, et al.
0

Monitoring pesticide concentration is very important for public authorities given the major concerns for environmental safety and the likelihood for increased public health risks. An important aspect of this process consists in locating abnormal signals, from a large amount of collected data. This kind of data is usually complex since it suffers from limits of quantification leading to left censored observations, and from the sampling procedure which is irregular in time and space across measuring stations. The present manuscript tackles precisely the issue of detecting spatio-temporal collective anomalies in pesticide concentration levels, and introduces a novel methodology for dealing with spatio-temporal heterogeneity. The latter combines a change-point detection procedure applied to the series of maximum daily values across all stations, and a clustering step aimed at a spatial segmentation of the stations. Limits of quantification are handled in the change-point procedure, by supposing an underlying left-censored parametric model, piece-wise stationary. Spatial segmentation takes into account the geographical conditions, and may be based on river network, wind directions, etc. Conditionally to the temporal segment and the spatial cluster, one may eventually analyse the data and identify contextual anomalies. The proposed procedure is illustrated in detail on a data set containing the prosulfocarb concentration levels in surface waters in Centre-Val de Loire region.

READ FULL TEXT

page 23

page 25

page 27

page 29

page 30

research
04/12/2019

A Composite Likelihood-based Approach for Change-point Detection in Spatio-temporal Process

This paper develops a unified, accurate and computationally efficient me...
research
11/25/2022

Geo-Spatial Cluster based Hybrid Spatio-Temporal Copula Interpolation

In the absence of Gaussianity assumptions without disturbing spatial con...
research
10/18/2017

Identifying Coherent Anomalies in Multi-Scale Spatio-Temporal Data using Markov Random Fields

Many physical processes involve spatio-temporal observations, which can ...
research
06/16/2020

A joint bayesian space-time model to integrate spatially misaligned air pollution data in R-INLA

In air pollution studies, dispersion models provide estimates of concent...
research
04/23/2020

Real-time Detection of Clustered Events in Video-imaging data with Applications to Additive Manufacturing

The use of video-imaging data for in-line process monitoring application...
research
12/09/2021

Source Reconstruction for Spatio-Temporal Physical Statistical Models

In many applications, a signal is deformed by well-understood dynamics b...
research
09/02/2020

Reconstructing the Dynamic Sea Surface from Tide Gauge Records Using Optimal Data-Dependent Triangulations

Reconstructions of sea level prior to the satellite altimeter era are us...

Please sign up or login with your details

Forgot password? Click here to reset