A Data-Driven Method for Water Quality Analysis and Prediction for Localized Irrigation

Author:

da Silva Roberto Fray12ORCID,Benso Marcos Roberto23ORCID,Corrêa Fernando Elias2,Messias Tamara Guindo4,Mendonça Fernando Campos1ORCID,Marques Patrícia Angelica Alves25ORCID,Duarte Sergio Nascimento1,Mendiondo Eduardo Mario23ORCID,Delbem Alexandre Cláudio Botazzo26ORCID,Saraiva Antonio Mauro278ORCID

Affiliation:

1. Biosystems Engineering Department, ESALQ, University of Sao Paulo, Av. Pádua Dias, 11, Piracicaba 13418-900, SP, Brazil

2. Center for Artificial Intelligence—C4AI, University of Sao Paulo, Av. Prof. Lúcio Martins Rodrigues, 370-Butantã, São Paulo 05508-020, SP, Brazil

3. TheWADILab, CEPED, EESC, University Sao Paulo, Av. Trabalhador Saocarlense, 400, São Carlos 13566-590, SP, Brazil

4. ESALQ, University of Sao Paulo, Av. Pádua Dias, 11, Piracicaba 13418-900, SP, Brazil

5. PPGESA, Biosystems Engineering Department, ESALQ, University of Sao Paulo, Av. Pádua Dias, 11, Piracicaba 13418-900, SP, Brazil

6. Institute of Mathematics and Computer Sciences, University of Sao Paulo, Av. Trab. São Carlense, 400-Centro, São Carlos 13566-590, SP, Brazil

7. Polytechnic School, University of Sao Paulo, Av. Prof. Luciano Gualberto, 380-Butantã, São Paulo 05508-010, SP, Brazil

8. Institute of Advanced Studies, University of Sao Paulo, R. da Praça do Relógio, 109-Conj. Res. Butanta, São Paulo 05508-050, SP, Brazil

Abstract

Several factors contribute to the increase in irrigation demand: population growth, demand for higher value-added products, and the impacts of climate change, among others. High-quality water is essential for irrigation, so knowledge of water quality is critical. Additionally, water use in agriculture has been increasing in the last decades. Lack of water quality can cause drip clog, a lack of application uniformity, cross-contamination, and direct and indirect impacts on plants and soil. Currently, there is a need for more automated methods for evaluating and monitoring water quality for irrigation purposes, considering different aspects, from impacts on soil to impacts on irrigation systems. This work proposes a data-driven method to address this gap and implemented it in a case study in the PCJ river basin in Brazil. The methodology contains nine components and considers the main steps of the data lifecycle and the traditional machine learning workflow, allowing for automated knowledge extraction and providing important information for improving decision making. The case study illustrates the use of the methodology, highlighting its main advantages and challenges. Clustering different scenarios in three hydrological years (high, average, and lower streamflows) and considering different inputs (soil-related metrics, irrigation system-related metrics, and all metrics) helped generate new insights into the area that would not be easily obtained using traditional methods.

Funder

Sao Paulo Research Foundation

Coordenacão de Aperfeiçoamento de Pessoal de Nível Superior

Publisher

MDPI AG

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