PrISM at Operational Scale: Monitoring Irrigation District Water Use during Droughts

Author:

Paolini Giovanni1ORCID,Escorihuela Maria Jose1ORCID,Bellvert Joaquim2ORCID,Merlin Olivier3ORCID,Pellarin Thierry4ORCID

Affiliation:

1. isardSAT, Carrer del Dr. Trueta, 113, Sant Martí, 08005 Barcelona, Catalunya, Spain

2. Efficient Use of Water in Agriculture Program, Institut de Recerca i Tecnologia Agroalimentàries (IRTA), Fruitcentre, Parc Cientific i Tecnològic Agroalimentari (PCiTAL), 25003 Lleida, Catalunya, Spain

3. CESBIO (Centre d’Études Spatiales de la BIOsphère), University of Toulouse, CNES/CNRS/INRAE/IRD/UPS, 31401 Toulouse, France

4. Institut des Géosciences de l’Environnement (IGE), CNRS, IRD, University Grenoble Alpes, Saint-Martin-d’Hères, 38400 Grenoble, France

Abstract

Efficient water management strategies are of utmost importance in drought-prone regions, given the fundamental role irrigation plays in avoiding yield losses and food shortages. Traditional methodologies for estimating irrigation amounts face limitations in terms of overall precision and operational scalability. This study proposes to estimate irrigation amounts from soil moisture (SM) data by adapting the PrISM (Precipitation Inferred from Soil Moisture) methodology. The PrISM assimilates SM into a simple Antecedent Precipitation Index (API) model using a particle filter approach, which allows the creation and estimation of irrigation events. The methodology is applied in a semi-arid region in the Ebro basin, located in the north-east of Spain (Catalonia), from 2016 to 2023. Multi-year drought, which started in 2020, particularly affected the region starting from the spring of 2023, which led to significant reductions in irrigation district water allocations in some of the areas of the region. This study demonstrates that the PrISM approach can correctly identify areas where water restrictions were adopted in 2023, and monitor the water usage with good performances and reliable results. When compared with in situ data for 8 consecutive years, PrISM showed a significant person’s correlation between 0.58 and 0.76 and a cumulative weekly root mean squared error (rmse) between 7 and 11 mm. Additionally, PrISM was applied to three irrigation districts with different levels of modernization, due to the different predominant irrigation systems: flood, sprinkler, and drip. This analysis underlined the strengths and limitations of PrISM depending on the irrigation techniques monitored. PrISM has good performances in areas irrigated by sprinkler and flood systems, while difficulties are present over drip irrigated areas, where the very localized and limited irrigation amounts could not be detected from SM observations.

Funder

Spanish Education Ministry

Catalan Agency of Research

ACCWA project

European Commission Horizon 2020 Program for Research and Innovation

Marie Skłodowska-Curie Research and Innovation Staff Exchange

Ministry of Science, Innovation and Universities of the Spanish government

PRIMA IDEWA project

Publisher

MDPI AG

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