Unraveling water monitoring association towards weather attributes for response proportions data: A unit-Lindley learning

PLoS One. 2022 Oct 14;17(10):e0275841. doi: 10.1371/journal.pone.0275841. eCollection 2022.

Abstract

Learning techniques involve unraveling regression structures, which aim to analyze in a probabilistic frame the associations across variables of interest. Thus, analyzing fraction and/or proportion data may not be adequate with standard regression procedures, since the linear regression models generally assume that the dependent (outcome) variable is normally distributed. In this manner, we propose a statistical model called unit-Lindley regression model, for the purpose of Statistical Process Control (SPC). As a result, a new control chart tool was proposed, which targets the water monitoring dynamic, as well as the monitoring of relative humidity, per minute, of Copiapó city, located in Atacama Desert (one of the driest non-polar places on Earth), north of Chile. Our results show that variables such as wind speed, 24-hour temperature variation, and solar radiation are useful to describe the amount of relative humidity in the air. Additionally, Information Visualization (InfoVis) tools help to understand the time seasonality of the water particle phenomenon of the region in near real-time analysis. The developed methodology also helps to label unusual events, such as Camanchaca, and other water monitoring-related events.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Humidity
  • Temperature
  • Water*
  • Weather*
  • Wind

Substances

  • Water

Grants and funding

Anderson O. Fonseca acknowledges the support from Bahia State Research Foundation (FAPESB Proc. 084.0508.2020.0002837-61). Francisco Louzada acknowledges support from the São Paulo State Research Foundation (FAPESP Processes 2013/07375-0) and CNPq (grant no. 301976/2017-1). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.