Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation Engineering

The present study implements novel innovative geostatistical imaging using precision agriculture (PA) under sugarbeet field conditions. Two driplines layout designs (d.l.d.) and soil water content (SWC)–irrigation treatments (A: d.l.d. = 1.00 m driplines spacing × 0.50 m emitters inline spacing; B:...

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Main Author: Agathos Filintas
Format: Article
Language:English
Published: MDPI AG 2025-07-01
Series:AgriEngineering
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Online Access:https://www.mdpi.com/2624-7402/7/7/229
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author Agathos Filintas
author_facet Agathos Filintas
author_sort Agathos Filintas
collection DOAJ
description The present study implements novel innovative geostatistical imaging using precision agriculture (PA) under sugarbeet field conditions. Two driplines layout designs (d.l.d.) and soil water content (SWC)–irrigation treatments (A: d.l.d. = 1.00 m driplines spacing × 0.50 m emitters inline spacing; B: d.l.d. = 1.50 m driplines spacing × 0.50 m emitters inline spacing) were applied, with two subfactors of clay loam and clay soils (laboratory soil analysis) for modeling (evaluation of seven models) TDR multi-sensor network measurements. Different sensor calibration methods [method 1(M1) = according to factory; method 2 (M2) = according to Hook and Livingston] were applied for the geospatial two-dimensional (2D) imaging of accurate GIS maps of rootzone soil moisture profiles, soil apparent dielectric <i>Ka</i> profiles, and granular and hydraulic parameters profiles, in multiple soil layers (0–75 cm depth). The modeling results revealed that the best-fitted geostatistical model for soil apparent dielectric <i>Ka</i> was the Gaussian model, while spherical and exponential models were identified to be the most appropriate for kriging modelling, and spatial and temporal imaging was used for accurate profile SWC <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML" display="inline"><semantics><mrow><msub><mrow><mi>θ</mi><mi>v</mi></mrow><mrow><mi>T</mi><mi>D</mi><mi>R</mi></mrow></msub><mo> </mo></mrow></semantics></math></inline-formula>(m<sup>3</sup>·m<sup>−3</sup>) M1 and M2 maps using TDR sensors. The resulting PA profile map images depict the spatio-temporal soil water and apparent dielectric <i>Ka</i> variability at very high resolutions on a centimeter scale. The best geostatistical validation measures for the PA profile SWC <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML" display="inline"><semantics><mrow><msub><mrow><mi>θ</mi><mi>v</mi></mrow><mrow><mi>T</mi><mi>D</mi><mi>R</mi></mrow></msub></mrow></semantics></math></inline-formula> maps obtained were MPE = −0.00248 (m<sup>3</sup>·m<sup>−3</sup>), RMSE = 0.0395 (m<sup>3</sup>·m<sup>−3</sup>), MSPE = −0.0288, RMSSE = 2.5424, ASE = 0.0433, Nash–Sutcliffe model efficiency NSE = 0.6229, and MSDR = 0.9937. Based on the results, we recommend d.l.d. A and sensor calibration method 2 for the geospatial 2D imaging of PA GIS maps because these were found to be more accurate, with the lowest statistical and geostatistical errors, and the best validation measures for accurate profile SWC imaging were obtained for clay loam over clay soils. Visualizing sensors’ soil moisture results via geostatistical maps of rootzone profiles have practical implications that assist farmers and scientists in making informed, better and timely environmental irrigation engineering decisions, to save irrigation water, increase water use efficiency and crop production, optimize energy, reduce crop costs, and manage water resources sustainably.
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spelling doaj-art-4dc93869fbd44da0a8b5de58478a34bc2025-08-20T03:55:48ZengMDPI AGAgriEngineering2624-74022025-07-017722910.3390/agriengineering7070229Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation EngineeringAgathos Filintas0Department of Agricultural Technologists, Campus Gaiopolis, University of Thessaly, 41500 Larisa, GreeceThe present study implements novel innovative geostatistical imaging using precision agriculture (PA) under sugarbeet field conditions. Two driplines layout designs (d.l.d.) and soil water content (SWC)–irrigation treatments (A: d.l.d. = 1.00 m driplines spacing × 0.50 m emitters inline spacing; B: d.l.d. = 1.50 m driplines spacing × 0.50 m emitters inline spacing) were applied, with two subfactors of clay loam and clay soils (laboratory soil analysis) for modeling (evaluation of seven models) TDR multi-sensor network measurements. Different sensor calibration methods [method 1(M1) = according to factory; method 2 (M2) = according to Hook and Livingston] were applied for the geospatial two-dimensional (2D) imaging of accurate GIS maps of rootzone soil moisture profiles, soil apparent dielectric <i>Ka</i> profiles, and granular and hydraulic parameters profiles, in multiple soil layers (0–75 cm depth). The modeling results revealed that the best-fitted geostatistical model for soil apparent dielectric <i>Ka</i> was the Gaussian model, while spherical and exponential models were identified to be the most appropriate for kriging modelling, and spatial and temporal imaging was used for accurate profile SWC <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML" display="inline"><semantics><mrow><msub><mrow><mi>θ</mi><mi>v</mi></mrow><mrow><mi>T</mi><mi>D</mi><mi>R</mi></mrow></msub><mo> </mo></mrow></semantics></math></inline-formula>(m<sup>3</sup>·m<sup>−3</sup>) M1 and M2 maps using TDR sensors. The resulting PA profile map images depict the spatio-temporal soil water and apparent dielectric <i>Ka</i> variability at very high resolutions on a centimeter scale. The best geostatistical validation measures for the PA profile SWC <inline-formula><math xmlns="http://www.w3.org/1998/Math/MathML" display="inline"><semantics><mrow><msub><mrow><mi>θ</mi><mi>v</mi></mrow><mrow><mi>T</mi><mi>D</mi><mi>R</mi></mrow></msub></mrow></semantics></math></inline-formula> maps obtained were MPE = −0.00248 (m<sup>3</sup>·m<sup>−3</sup>), RMSE = 0.0395 (m<sup>3</sup>·m<sup>−3</sup>), MSPE = −0.0288, RMSSE = 2.5424, ASE = 0.0433, Nash–Sutcliffe model efficiency NSE = 0.6229, and MSDR = 0.9937. Based on the results, we recommend d.l.d. A and sensor calibration method 2 for the geospatial 2D imaging of PA GIS maps because these were found to be more accurate, with the lowest statistical and geostatistical errors, and the best validation measures for accurate profile SWC imaging were obtained for clay loam over clay soils. Visualizing sensors’ soil moisture results via geostatistical maps of rootzone profiles have practical implications that assist farmers and scientists in making informed, better and timely environmental irrigation engineering decisions, to save irrigation water, increase water use efficiency and crop production, optimize energy, reduce crop costs, and manage water resources sustainably.https://www.mdpi.com/2624-7402/7/7/229soil analysis and moisture GIS imaging in clayey soilscalibration of TDR sensorsprecision agriculturegeostatistics modelling–validationenvironmental irrigation engineering
spellingShingle Agathos Filintas
Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation Engineering
AgriEngineering
soil analysis and moisture GIS imaging in clayey soils
calibration of TDR sensors
precision agriculture
geostatistics modelling–validation
environmental irrigation engineering
title Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation Engineering
title_full Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation Engineering
title_fullStr Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation Engineering
title_full_unstemmed Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation Engineering
title_short Driplines Layout Designs Comparison of Moisture Distribution in Clayey Soils, Using Soil Analysis, Calibrated Time Domain Reflectometry Sensors, and Precision Agriculture Geostatistical Imaging for Environmental Irrigation Engineering
title_sort driplines layout designs comparison of moisture distribution in clayey soils using soil analysis calibrated time domain reflectometry sensors and precision agriculture geostatistical imaging for environmental irrigation engineering
topic soil analysis and moisture GIS imaging in clayey soils
calibration of TDR sensors
precision agriculture
geostatistics modelling–validation
environmental irrigation engineering
url https://www.mdpi.com/2624-7402/7/7/229
work_keys_str_mv AT agathosfilintas driplineslayoutdesignscomparisonofmoisturedistributioninclayeysoilsusingsoilanalysiscalibratedtimedomainreflectometrysensorsandprecisionagriculturegeostatisticalimagingforenvironmentalirrigationengineering