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A Hybrid LSTM Approach for Irrigation Scheduling in Maize Crop

Konstantinos Dolaptsis, Xanthoula Eirini Pantazi, Charalampos Paraskevas, Selçuk Arslan, Yücel Tekìn, Bere Benjamin Bantchına, Yahya Ulusoy, Kemal Sulhi Gündoğdu, Muhammad Qaswar, Danyal Bustan, Abdul Mounem Mouazen

2024Agriculture31 citationsDOIOpen Access PDF

Abstract

Irrigation plays a crucial role in maize cultivation, as watering is essential for optimizing crop yield and quality, particularly given maize’s sensitivity to soil moisture variations. In the current study, a hybrid Long Short-Term Memory (LSTM) approach is presented aiming to predict irrigation scheduling in maize fields in Bursa, Turkey. A critical aspect of the study was the use of the Aquacrop 7.0 model to simulate soil moisture content (MC) data due to data limitations in the investigated fields. This simulation model, developed by the Food and Agriculture Organization (FAO), helped overcome gaps in soil sensor data, enhancing the LSTM model’s predictions. The LSTM model was trained and tuned using a combination of soil, weather, and satellite-based plant vegetation data in order to predict soil moisture content (MC) reductions. The study’s results indicated that the LSTM model, supported by Aquacrop 7.0 simulations, was effective in predicting MC reduction across various time phases of the maize growing season, attaining R2 values ranging from 0.8163 to 0.9181 for Field 1 and from 0.7602 to 0.8417 for Field 2, demonstrating the potential of this approach for precise and efficient agricultural irrigation practices.

Topics & Concepts

Irrigation schedulingIrrigationEnvironmental scienceWater contentAgricultural engineeringAgricultureCropGrowing seasonAgronomyComputer scienceSoil scienceSoil waterEcologyEngineeringGeotechnical engineeringBiologyPlant Water Relations and Carbon DynamicsSoil Moisture and Remote SensingGreenhouse Technology and Climate Control