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Detection of Floricane Raspberry Shrubs from Unmanned Aerial Vehicle Imagery Using YOLO Models -
Soil Fumigation Combined with Seed Rhizome Disinfection to Synergistically Promote Soil Health and Increase Ginger Yield -
Effect of Global Energy Price Shocks on Dynamics of World Agricultural and Food Prices -
Advanced Technologies to Treat Manure Generated on Dairy Farms: Overview and Perspectives for Intensifying Australian Systems -
Four Decades of Common Vole (Microtus arvalis Pallas 1778) Population Outbreaks in NW Spain: Transition from Environmentally Harmful Practices to Sustainable Integrated Pest Management (IPM)
Journal Description
Agriculture
Agriculture
is an international, peer-reviewed, open access journal published semimonthly online.
- Open Access— free for readers, with article processing charges (APC) paid by authors or their institutions.
- High Visibility: indexed within Scopus, SCIE (Web of Science), GEOBASE, PubAg, AGRIS, RePEc, and other databases.
- Journal Rank: JCR - Q1 (Agronomy) / CiteScore - Q1 (Plant Science)
- Rapid Publication: manuscripts are peer-reviewed and a first decision is provided to authors approximately 18.8 days after submission; acceptance to publication is undertaken in 1.9 days (median values for papers published in this journal in the second half of 2025).
- Recognition of Reviewers: reviewers who provide timely, thorough peer-review reports receive vouchers entitling them to a discount on the APC of their next publication in any MDPI journal, in appreciation of the work done.
- Companion journals for Agriculture include: Poultry, Grasses, Crops, AIPA and Grain Science.
- Journal Cluster of Agricultural Science: Agriculture, Agronomy, Horticulturae, Soil Systems, AgriEngineering, Crops, Seeds, Grasses, Agrochemicals and AI and Precision Agriculture.
Impact Factor:
3.6 (2024);
5-Year Impact Factor:
3.8 (2024)
Latest Articles
Interpreting Yield–Spectral Relationships in Wheat and Cotton Using a Unified Sentinel-2 Indicator Framework
Agriculture 2026, 16(11), 1252; https://doi.org/10.3390/agriculture16111252 (registering DOI) - 5 Jun 2026
Abstract
Accurate estimation of crop yield from remote sensing remains challenging due to the crop-specific nature of yield drivers and the difficulty of interpreting spectral indicators across agronomic systems. While many studies prioritise predictive accuracy through complex models, fewer explicitly examine the stability and
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Accurate estimation of crop yield from remote sensing remains challenging due to the crop-specific nature of yield drivers and the difficulty of interpreting spectral indicators across agronomic systems. While many studies prioritise predictive accuracy through complex models, fewer explicitly examine the stability and physiological relevance of individual spectral and phenological indicators under controlled analytical conditions. This study investigates yield–spectral relationships in wheat and cotton using a unified Sentinel-2 indicator framework applied across multiple growing seasons in a Mediterranean agricultural environment. A consistent set of spectral and thermal indicators was derived from two phenologically targeted Sentinel-2 acquisitions per season and analysed using correlation analysis, univariate regression, constrained multivariate modelling, and recurrence analysis within an identical workflow for both crops. Distinct crop-specific patterns were observed. Wheat yield was most strongly associated with water-sensitive and canopy-related indicators, with NDWI-based metrics reaching Pearson correlations up to r = 0.85 and multivariate models explaining a substantial proportion of yield variability (up to R2 ≈ 0.70) under controlled analytical conditions. In contrast, cotton yield variability was dominated by thermal accumulation, with growing degree day indicators showing correlations up to |r| = 0.59 and multivariate performance reaching R2 = 0.74. Recurrence analysis indicated consistent recurrence of these indicator families across analytical stages under the examined conditions. Overall, the results indicate that parsimonious, physiologically interpretable indicator combinations can account for a meaningful proportion of yield variability without reliance on highly complex or high-dimensional modelling approaches, supporting crop-aware indicator selection for precision agriculture applications.
Full article
(This article belongs to the Special Issue Remote and Proximal Sensing for Arable Crops Monitoring and Yield Assessment)
Open AccessArticle
Influence of Altitudinal Grassland Systems on Forage Antioxidant Potential and Nutritional Quality of Beef from Cattle Raised in Caraș-Severin County, Romania
by
Alexandra-Ioana Ibric, Ileana Cocan, Ersilia Alexa, Călin Jianu, Monica Negrea, Cristian Argyelan, Alina Dragoescu-Petrica and Tiberiu Iancu
Agriculture 2026, 16(11), 1251; https://doi.org/10.3390/agriculture16111251 (registering DOI) - 5 Jun 2026
Abstract
The aim of this study was to evaluate the influence of altitudinal grassland systems on forage antioxidant properties and the nutritional composition of beef produced in Caraș-Severin County, Romania. We hypothesised that cattle raised at higher altitudes would produce beef with a superior
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The aim of this study was to evaluate the influence of altitudinal grassland systems on forage antioxidant properties and the nutritional composition of beef produced in Caraș-Severin County, Romania. We hypothesised that cattle raised at higher altitudes would produce beef with a superior nutritional profile, characterised by a more favourable lipid composition and enhanced antioxidant-related characteristics. Samples of fresh grass and hay were gathered from three representative areas: plain (Sacu, 154 m), hill (Văliug, 550 m), and mountain (Cozia, 1130 m). The beef samples were represented by two categories of commercially important muscles: Longissimus thoracis (loin) and Semimembranosus (topside), sourced from animals raised in each location. The proximate composition of forage samples indicated substantially higher levels of fatty acids, protein, and ash in mountain grasslands compared to lowland regions (p < 0.05). The total polyphenol content (TPC) and antioxidant activity (DPPH test) revealed a similar pattern, with the strongest antioxidant activity (lowest IC50 value) recorded for Cozia hay (GHC) samples. The composition of beef was additionally influenced by the production area. Samples derived from mountainous regions exhibited elevated protein concentrations, moderate intramuscular fat levels, and enhanced mineral composition in comparison to samples from plain areas. Fatty acid analysis revealed that mountain-sourced beef had significantly reduced levels of saturated fatty acids (SFA) and elevated concentrations of monounsaturated fatty acids (MUFA) and polyunsaturated fatty acids (PUFA), including the nutritionally beneficial n-3 fatty acids and conjugated linoleic acid (CLA). Principal component analysis distinctly classified beef samples based on production method, with mountain-origin samples indicating better lipid properties and enhanced antioxidant-related variables. The findings demonstrate that natural grasslands at higher altitudes may enhance both the bioactive quality of fodder and the nutritional value of beef. Mountain pasture systems are a sustainable approach for producing high-quality beef with enhanced lipid composition and increased market value.
Full article
(This article belongs to the Special Issue Research on the Nutrition and Physiology of Dairy and Beef Cattle)
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Open AccessArticle
Nitrogen Additions Suppress Microbial Diversity but Enhance Carbon Accumulation in Desert Soil Profiles
by
Chenhua Li, Yugang Wang, Lisong Tang and Yan Liu
Agriculture 2026, 16(11), 1250; https://doi.org/10.3390/agriculture16111250 (registering DOI) - 5 Jun 2026
Abstract
Desert reclamation into oases promotes soil organic carbon (SOC) accumulation across soil profiles, with nitrogen (N) fertilization being a key driver. However, the possible role of soil microorganisms in coupled C–N processes remains poorly understood in desert regions. We conducted a soil incubation
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Desert reclamation into oases promotes soil organic carbon (SOC) accumulation across soil profiles, with nitrogen (N) fertilization being a key driver. However, the possible role of soil microorganisms in coupled C–N processes remains poorly understood in desert regions. We conducted a soil incubation experiment to evaluate the effects of N addition to varied soil layers on soil properties, CO2 efflux, and microbial communities. The fertilized treatments (N, NP, and NPK) were compared with the unfertilized control (CK). All treatments were derived from the original desert soil. After incubation, SOC content decreased by 8–28% below the topsoil (20–100 cm) in the CK treatment, while it increased by 6–32% throughout the soil profile (0–100 cm) in all fertilizer treatments. Compared to the CK, all fertilizer treatments reduced daily and cumulative CO2 emissions throughout the soil profile, with NP and NPK treatments showing greater reductions (3–19%). Fertilizer addition consistently enriched the phylum Firmicutes—notably the genera Virgibacillus and Bacillus—while lowering the relative abundance of other major phyla. After incubation, all treatments reduced microbial diversity and richness, with the most pronounced declines observed under fertilization. These community shifts were closely linked to changes in SOC and total N below the topsoil. These findings demonstrate that N-based fertilization promotes SOC accumulation in desert regions through microbial community restructuring. This study highlights the important role of exogenous nutrients, particularly N, in regulating C–N cycling and organic C sequestration in deep soil during desert oasis transformation.
Full article
(This article belongs to the Special Issue Harnessing Microbial Mechanisms for Synergistic Nitrogen and Carbon Management in Agricultural Soils)
Open AccessEditorial
From Agricultural Soils to Human Health: Heavy Metal Sources, Biogeochemical Controls, Crop Accumulation, and Risk Assessment
by
Min Liang, Hui Guan and Hui Huang
Agriculture 2026, 16(11), 1249; https://doi.org/10.3390/agriculture16111249 (registering DOI) - 5 Jun 2026
Abstract
Heavy metals and metalloids (denoted as “HMs”) in agricultural soils remain a persistent concern for sustainable agriculture, food safety, ecosystem functioning, and human health [...]
Full article
(This article belongs to the Special Issue From Agricultural Soils to Human Health: Exposure Sources, Intake Pathways, and Accumulation of Heavy Metals)
Open AccessArticle
Biochar Mitigates Root Exudate-Induced Priming of Native SOC Decomposition via Soil Phosphorus Availability and Microbial Structure
by
Zheng Jiang, Lingyan Zhou, Huifeng Sun, Xianxian Zhang, Liuming Hai, Cong Wang, Jining Zhang and Sheng Zhou
Agriculture 2026, 16(11), 1248; https://doi.org/10.3390/agriculture16111248 (registering DOI) - 5 Jun 2026
Abstract
Biochar amendment is increasingly recognized as a promising strategy for enhancing soil carbon sequestration in cropland systems; however, the mechanisms governing its effects on root exudate-induced decomposition of native soil organic carbon (SOC) remain poorly understood. We conducted a controlled laboratory incubation experiment
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Biochar amendment is increasingly recognized as a promising strategy for enhancing soil carbon sequestration in cropland systems; however, the mechanisms governing its effects on root exudate-induced decomposition of native soil organic carbon (SOC) remain poorly understood. We conducted a controlled laboratory incubation experiment using 13C-labeled glucose as a proxy for root exudates to quantify native SOC decomposition in wheat soil with or without long-term biochar amendment. Glucose addition induced a strong positive priming effect in unamended control soils, increasing native SOC decomposition by 354.4 μg CO2 g−1 soil over 30 days, whereas biochar amendment substantially suppressed this response by 75.7%. This suppression was attributed to biochar-enhanced phosphorus availability and a shift in microbial community composition toward greater fungal dominance, which collectively reduced microbial nutrient mining from native SOC pools. Our findings demonstrate that biochar can effectively mitigate the priming effect through coordinated alterations in nutrient dynamics and microbial community structure, thereby promoting long-term SOC stabilization. These results strengthen the scientific basis for biochar application as a climate change mitigation strategy in agricultural ecosystems.
Full article
(This article belongs to the Topic Greenhouse Gas Emission Reductions and Carbon Sequestration in Agriculture)
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Open AccessArticle
Evaluation of High-Yield Potential, Yield Stability, and Adaptability of Different Varieties Under Long-Term Environmental Conditions
by
Shixiao Fang, Yilei Long, Yin Wang, Xiutong Wu, Teng Liu, Shen Jin, Yinan Yang, Shengwu Chen and Xiantao Ai
Agriculture 2026, 16(11), 1247; https://doi.org/10.3390/agriculture16111247 (registering DOI) - 5 Jun 2026
Abstract
To identify upland cotton varieties with consistently high yields and stable performance across variable growing seasons in Xinjiang, we evaluated yield data for 11 varieties over 4 consecutive years (2022–2025). Among the tested varieties, 02 achieved the highest average yield (10.85 kg per
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To identify upland cotton varieties with consistently high yields and stable performance across variable growing seasons in Xinjiang, we evaluated yield data for 11 varieties over 4 consecutive years (2022–2025). Among the tested varieties, 02 achieved the highest average yield (10.85 kg per plot). Variety ZMBH1939 showed the most stable yield across years (coefficient of variation = 0.1557). Analysis of variance showed that variety, year, and their interaction significantly affected yield (p < 0.01 for all). Further evaluation using two complementary multi-environment trial models (AMMI and GGE) revealed consistent findings: 02 and FC190 were high-yielding but moderately stable; W21 and TH02 showed moderate yield with good stability; and XLM108 combined high yield potential with excellent stability. The control variety Z49 (CK) exhibited good stability but only moderate yield. Among the four trial years, 2023 was the most representative and discriminatory environment, making it ideal for screening superior varieties. Exploratory analysis of climatic covariates suggested that accumulated temperature (≥10 °C) may be associated with interannual yield variation (R2 = 0.464), and low precipitation was linked to stronger environmental discrimination. However, given the limited number of environments (n = 4), these findings are preliminary and hypothesis-generating rather than confirmatory. This study provides a framework for understanding climate-driven yield variation in regional cotton trials and identifies promising germplasm (notably XLM108 and 02) for further breeding and promotion. Validation in multi-location or longer-term trials is required before drawing definitive conclusions.
Full article
(This article belongs to the Special Issue Analysis of Crop Yield Stability and Quality Evaluation)
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Open AccessArticle
Effect of In Ovo Injection Time of Various Plant Byproducts on Hatching Traits, Productive Performance, and Physiological Aspects of Hatched Chicks
by
Karrar Imad Abdulsahib Al-Shammari, Meaad Rasool Mohammad and Justyna Batkowska
Agriculture 2026, 16(11), 1246; https://doi.org/10.3390/agriculture16111246 (registering DOI) - 5 Jun 2026
Abstract
Using plant byproducts as bioactive sources for in ovo injection (IOI) can enhance embryo development. This study evaluated the effects of air cell IOI of sweet orange peel (SP), pomegranate peel (PP), and olive leaf (OL) aqueous extracts on embryonic days 10 and
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Using plant byproducts as bioactive sources for in ovo injection (IOI) can enhance embryo development. This study evaluated the effects of air cell IOI of sweet orange peel (SP), pomegranate peel (PP), and olive leaf (OL) aqueous extracts on embryonic days 10 and 18, assessing chicken hatching and post-hatch performance up to 42 days of age. Nine hundred eggs were assigned to 10 treatments. Each treatment had three replicates (n = 30 eggs/replicate) with a 5 × 2 factorial design (uninjected negative control, injection with distilled water as positive control, or injection with 1% SP, PP, or OL on day 10 or 18 of embryogenesis). Compared to the negative control, the results revealed that in ovo-injected substances (IOSs) did not alter hatchability but significantly decreased pipped-chick percentage, the heterophil-to-lymphocyte ratio, malondialdehyde, cholesterol, triglycerides, and glucose levels. However, IOSs were found to increase superoxide dismutase (SOD) levels, liveability, and final body weight. Specifically, SP maximised hatch weight, gut length, and thymus weight, whilst decreasing eggshell conductance and uric acid. SP and OL reduced liver enzyme activities, whereas PP lowered creatinine. Compared to day 10, IOI on day 18 improved hatchability, packed cell volume, SOD activity, liveability, and organ development. In conclusion, IOI with SP or OL, particularly on day 18 of incubation, is recommended to improve antioxidant status, biochemical indices, and cumulative body weight.
Full article
(This article belongs to the Special Issue Use of Medicinal Plants and Their Derivatives in Animal Production and Health)
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Open AccessArticle
The Effects of Co-Application of Biochar and Phosphogypsum on Regulating the Microenvironment of Saline–Alkali Soils to Promote Safflower Growth and Quality Development
by
Hong-Jie Long, Hai Sun, Cai Shao, Yan-Mei Cui, Wei-Yu Cao, Yue Wang, Jia-Peng Zhu, Xiao-Meng Geng and Ya-Yu Zhang
Agriculture 2026, 16(11), 1245; https://doi.org/10.3390/agriculture16111245 (registering DOI) - 5 Jun 2026
Abstract
The utilization of saline–alkali lands and the competition between medicinal plants and grain crops are urgent issues. This study aimed to evaluate the effects of combined biochar and phosphogypsum application on soil physicochemical properties, microbial communities, and safflower growth, yield, and bioactive component
[...] Read more.
The utilization of saline–alkali lands and the competition between medicinal plants and grain crops are urgent issues. This study aimed to evaluate the effects of combined biochar and phosphogypsum application on soil physicochemical properties, microbial communities, and safflower growth, yield, and bioactive component accumulation in moderately saline–alkali soil of western Jilin, and to identify key soil factors driving these responses. To achieve this, outdoor pot experiments were conducted using safflower (Carthamus tinctorius L.), with the application of 1% biochar + 1% phosphogypsum to moderately saline–alkali soil. The results showed that the amendment significantly reduced bulk density (BD), pH, sodium adsorption ratio (SAR), total alkalinity (TA), and exchangeable sodium percentage (ESP), while increasing soil water content (SWC), soil organic matter (SOM), nitrogen, phosphorus, potassium, and beneficial ions. Soil sucrase, urease, alkaline phosphatase, and catalase activities were enhanced. Copiotrophic taxa (Pseudomonadota, Sphingomonas, Vicinamibacter) increased, whereas oligotrophic taxa (Gemmatimonadetes, Longimicrobium, Luteitalea) decreased, with stronger effects on bacteria than fungi. Safflower growth indices improved; leaf Na+/K+ ratio, superoxide radicals, and malondialdehyde decreased; and soluble protein, proline, and antioxidant enzyme activities increased. Bioactive components (hydroxysafflor yellow A, kaempferol) and yield reached 1.41%, 0.056%, and 343.23 mg/plant, representing 1.74–27.68-fold increases over moderate and mild saline–alkali soils. Correlation analysis identified SOM, total nitrogen (TN), available phosphorus (AP), BD, SWC, pH, SAR, TA, and ESP as key factors. In conclusion, co-application of 1% biochar and 1% phosphogypsum improves soil physicochemical and microbial properties, alleviates saline–alkali stress, and enhances safflower quality and yield.
Full article
(This article belongs to the Special Issue Effects of Biochar on Soil Improvement and Crop Production)
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Open AccessReview
Regulating Gut Microbiota in Post-Weaned Pigs: The Role of Digestive Capacity and Substrate Flow
by
Kathryn Ruth Connolly, Shane Maher, Torres Sweeney and John V. O’Doherty
Agriculture 2026, 16(11), 1244; https://doi.org/10.3390/agriculture16111244 (registering DOI) - 5 Jun 2026
Abstract
In commercial pig production systems, early weaning imposes abrupt nutritional, environmental and social challenges before full gastrointestinal maturation has occurred, increasing susceptibility to post-weaning diarrhoea (PWD) and impaired growth performance. Although enterotoxigenic Escherichia coli (ETEC) is frequently implicated in PWD, pathogen presence alone
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In commercial pig production systems, early weaning imposes abrupt nutritional, environmental and social challenges before full gastrointestinal maturation has occurred, increasing susceptibility to post-weaning diarrhoea (PWD) and impaired growth performance. Although enterotoxigenic Escherichia coli (ETEC) is frequently implicated in PWD, pathogen presence alone does not adequately explain variation in disease expression among pigs and production systems. Increasing evidence indicates that gastrointestinal stability following weaning is determined by interactions among digestive capacity, substrate flow, microbial metabolism, epithelial integrity and host immune responses. In this review, substrate flow refers to the quantity, composition and regional distribution of undigested dietary and endogenous substrates moving through the gastrointestinal tract (GIT) and becoming available for microbial fermentation. The review proposes substrate flow as the central mechanistic interface linking digestive physiology with microbial metabolic activity during the post-weaning transition. Commercial weaning frequently occurs before complete adaptation to cereal- and plant-based diets has developed. Reduced feed intake, elevated gastric pH, incomplete pancreatic adaptation and reduced brush-border enzyme activity impair nutrient digestion during this transition, increasing nutrient overflow to the distal intestine. Under these conditions, microbial metabolism shifts from predominantly saccharolytic fermentation towards proteolytic pathways associated with production of ammonia, phenols, indoles and branched-chain fatty acids. These metabolites impair epithelial integrity, alter luminal conditions and favour proliferation of opportunistic bacteria. Conversely, effective digestion supports saccharolytic fermentation, short-chain fatty acid production, epithelial integrity and microbial stability. Microbial dysbiosis is therefore more accurately interpreted as a metabolic consequence of altered substrate availability and fermentation dynamics rather than solely as a compositional imbalance of bacterial taxa. By integrating digestive physiology, microbial ecology and nutritional management, the substrate-flow concept provides a mechanistic framework for development of more biologically coherent nutritional strategies aimed at improving gastrointestinal resilience and reducing antimicrobial reliance in modern pig production systems.
Full article
(This article belongs to the Special Issue Regulation of Gut Microbiota to Improve Pig Health and Growth)
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Open AccessReview
Fermentation-Oriented Viticulture: A Narrative Review Linking Climate Change, Soil Fertility, Crop Protection and Must Microbiota Ecology
by
Eleonora Daniela Ciupeanu-Calugaru, Ana Maria Dodocioiu and Gilda-Diana Buzatu
Agriculture 2026, 16(11), 1243; https://doi.org/10.3390/agriculture16111243 (registering DOI) - 5 Jun 2026
Abstract
This narrative review develops fermentation-oriented viticulture as an agronomic-oenological framework linking vineyard environment, management and must ecology to fermentation performance. The literature from 2010 to April 2026 was synthesized through structured searches in PubMed and Google Scholar, complemented by targeted searches in MDPI,
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This narrative review develops fermentation-oriented viticulture as an agronomic-oenological framework linking vineyard environment, management and must ecology to fermentation performance. The literature from 2010 to April 2026 was synthesized through structured searches in PubMed and Google Scholar, complemented by targeted searches in MDPI, Frontiers, Nature, ScienceDirect, OENO One, PNAS and European Union regulatory sources, with emphasis on 2020–2026 publications and retention of older foundational sources. Current evidence indicates that must microbiota is not a linear derivative of soil or berry surfaces, but a network outcome of connected habitats spanning the viticultural biotope and grapevine-associated biocenosis (soil, rhizosphere, phyllosphere, berry, insect, atmospheric and winery). Climate warming, drought, altered phenology, soil fertility, nitrogen nutrition, crop-protection programs and bio-based inputs jointly modify berry chemistry, yeast-assimilable nitrogen (YAN), microbial inocula and pre-fermentative selection pressures. The review distinguishes fermentation-oriented viticulture from descriptive microbial terroir by defining practical endpoints: fermentation onset and completion, sluggish or stuck fermentation risk, microbial stability, spoilage taxa, volatilome development and wine typicity. It also proposes operational indicators and a decision matrix for integrating vineyard and winery management. The framework supports future multi-vintage studies combining climate, soil, agronomic metadata, YAN, microbiome profiling and microvinification outcomes.
Full article
(This article belongs to the Special Issue Climate Change and Plant Phenology: Challenges for Fruit Production)
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Open AccessArticle
Effects of Potassium Management on Yield Formation and Nutrient Utilization in Japonica Rice Cultivars with Contrasting Nitrogen Efficiency Under a Simplified Nitrogen Regime
by
Liqiang Chen, Haoyang Jia, Yunfei Xu, Jiajun Xu, Yuqi Liu, Xiao Liang and Wenzhong Zhang
Agriculture 2026, 16(11), 1242; https://doi.org/10.3390/agriculture16111242 - 4 Jun 2026
Abstract
Nitrogen (N) and potassium (K) co-management is critical for optimizing grain yield in rice. However, the interactive effects of N supply and K application timing on cultivars with contrasting N efficiencies remain poorly understood. Here, we conducted a two-year field experiment (2020 and
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Nitrogen (N) and potassium (K) co-management is critical for optimizing grain yield in rice. However, the interactive effects of N supply and K application timing on cultivars with contrasting N efficiencies remain poorly understood. Here, we conducted a two-year field experiment (2020 and 2021) using two japonica rice cultivars, Shennong 265 (SN265) and Meifengdao 61 (MFD61), under three N rates (180, 225, and 270 kg ha−1) and three K application ratios (basal: panicle = 3:7, 5:5, and 7:3). SN265 exhibited a 20.31% higher average grain yield than MFD61, primarily attributable to increased crop growth rates during the tillering–booting (14.08%) and grain-filling–maturity phases (31.88%). Under moderate N supply (N180 and N225), increasing the proportion of basal K application (K7:3) consistently improved dry matter accumulation, enzyme activity, and grain yield in both cultivars. However, under high-N conditions (N270), excessive early-season K application reduced grain yield in MFD61 by 7.69%. For SN265, further yield improvement required an enhanced net assimilation rate during the tillering–booting phase. Although this study was conducted at a single site with only two cultivars, it provides a physiological and agronomic framework for cultivar-specific N–K co-management strategies to improve grain yield and nutrient use efficiency.
Full article
(This article belongs to the Special Issue Analysis of Crop Yield Stability and Quality Evaluation)
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Open AccessArticle
Vertical Migration Characteristics and Driving Mechanisms of Soil Nitrogen in Sloped Croplands of Purple Soil Regions
by
Yi Wang, Jiupai Ni, Xiaoning Hang, Xueting Yang, Dunxiu Liao and Deti Xie
Agriculture 2026, 16(11), 1241; https://doi.org/10.3390/agriculture16111241 - 4 Jun 2026
Abstract
The vertical migration of soil nitrogen (N) losses in sloped farmlands under natural rainfall conditions remains inadequately understood. This study conducted a two-year (2023.3–2025.2) in situ runoff field monitoring experiment on purple loam slopes in Chongqing, China, systematically investigating the effects of different
[...] Read more.
The vertical migration of soil nitrogen (N) losses in sloped farmlands under natural rainfall conditions remains inadequately understood. This study conducted a two-year (2023.3–2025.2) in situ runoff field monitoring experiment on purple loam slopes in Chongqing, China, systematically investigating the effects of different rainfall patterns (TR, HR, MR, LR) and planting stages (CPS, SFS, MPS, WFS) on the vertical migration of nitrogen at four depths (0, 20, 40, and 60 cm) under natural rainfall conditions. The results demonstrate that rainfall is the key driver of vertical nitrogen migration. The migration loads of total nitrogen (TN), total dissolved nitrogen (TDN), and nitrate nitrogen (NO3−-N) all increased significantly with increasing rainfall intensity (p < 0.01), showing the strongest correlation with rainfall amount in the shallow soil layer (L1). Nitrogen migration loads exhibited a clear decreasing trend with increasing soil depth, declining progressively from the surface (L1) to deeper layers (L3). However, higher loads of nitrate nitrogen were maintained in deeper layers, given its strong mobility. The study found that although extreme rainfall events (TR and HR) accounted for only 6.05% of total rainfall events, they contributed to more than 60% of the total nitrogen migration load, highlighting extreme rainfall as the primary driver of nutrient loss. Over 70% of nitrogen loss occurred during the corn planting stage (CPS) with high fertilizer demand, highlighting that this period is critical for nitrogen loss and represents a key window for risk management. The increased soil depth functions as a “sink”, exhibiting certain nitrogen retention and filtration effects. The total nitrogen content in deeper soil layers (L2, L3) shows cumulative accumulation, confirming the nitrogen migration pattern from sources (surface layers) to sinks (deep layers) within the soil profile. This study elucidates the core driving mechanisms and critical risk periods for vertical nitrogen migration in purple soil on sloped farmland, providing crucial scientific evidence for precise regional nitrogen fertilizer management and non-point source pollution control.
Full article
(This article belongs to the Section Ecosystem, Environment and Climate Change in Agriculture)
Open AccessArticle
Why Is Agricultural Productivity Slowing Down in Israel? Measurement, Data Revisions, and Emerging Constraints
by
Daniel Grandisky Lerner and Ayal Kimhi
Agriculture 2026, 16(11), 1240; https://doi.org/10.3390/agriculture16111240 - 4 Jun 2026
Abstract
This paper examines whether total factor productivity (TFP) in Israeli agriculture has genuinely slowed or declined in recent years, or whether the reported trend is primarily driven by methodological choices, data limitations, and measurement error. We compare two widely used approaches to TFP
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This paper examines whether total factor productivity (TFP) in Israeli agriculture has genuinely slowed or declined in recent years, or whether the reported trend is primarily driven by methodological choices, data limitations, and measurement error. We compare two widely used approaches to TFP measurement—those of the Bank of Israel and the U.S. Department of Agriculture (USDA)—which differ in their definitions of output, treatment of inputs, and assumptions regarding factor shares. We reconstruct and refine the underlying datasets, addressing important limitations in the existing measures, including the omission of foreign labor, inconsistencies in agricultural land measurement, and the application of non-representative input shares. Despite data improvements and methodological adjustments, both approaches yield similar qualitative conclusions. Following rapid increase in earlier decades, TFP growth in Israeli agriculture appears to have stagnated or declined since the early 2010s. A decomposition of output growth further indicates that recent production patterns have been driven primarily by greater input intensity per unit of land rather than by technological progress or efficiency gains. As a result, agricultural output has shown little or no net growth over the past decade. We discuss potential explanations for this slowdown, including climate change, the growing reliance on reclaimed and other marginal water sources, and the long-term decline in agricultural research and development (R&D) investment relative to sectoral output. Overall, the findings suggest that the productivity slowdown is real rather than an artifact of measurement and underscore the need for renewed investment in agricultural innovation and climate adaptation to sustain domestic production and strengthen food security.
Full article
(This article belongs to the Section Agricultural Economics, Policies and Rural Management)
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Open AccessArticle
Digital Soil Mapping of the Steppe Zone in Northern Kazakhstan: Predicting Agrochemical Properties of Soils Using Multimodal Satellite Data and Machine and Deep Learning Techniques
by
Aliya Yskak, Gulnaz T. Yermoldina, Almabek B. Nugmanov, Berik S. Rakhimbayev, Zhanna B. Suimenbayeva, Vladimir D. Fominov, Zhassulan B. Irzhanov, Tatiana A. Paramonova, Sergey V. Mamikhin and Aleksandr G. Bulaev
Agriculture 2026, 16(11), 1239; https://doi.org/10.3390/agriculture16111239 - 3 Jun 2026
Abstract
Digital soil mapping (DSM), based on multimodal satellite data, is a crucial tool for the transition to precision agriculture. However, systematic studies using this method and machine and deep learning techniques are lacking for the arid and semi-arid regions of Central Asia, where
[...] Read more.
Digital soil mapping (DSM), based on multimodal satellite data, is a crucial tool for the transition to precision agriculture. However, systematic studies using this method and machine and deep learning techniques are lacking for the arid and semi-arid regions of Central Asia, where multimodal satellite data can provide valuable insights into soil conditions. This work provides, for the first time, benchmark metrics for the predictive ability of six soil agrochemical properties (pH, Soil Organic Carbon, NO3, P2O5, K2O, and S) in the dry steppe zone of Central Asia, with a quantitative assessment of the difference between “standard” and “fair” validation strategies. This has methodological significance for the entire field of DSM research. A comprehensive comparison of 11 machine learning (ML) models and four deep learning (DL) architectures was conducted to predict soil agrochemical properties using a set of 530 features extracted from various satellite datasets. These features were extracted from Sentinel-2, Landsat-8, Sentinel-1 SAR, SRTM DEM, and ERA 5-Land using Google Earth Engine (GEE) automated pipeline. All models were evaluated using three spatial validation strategies with increasing stringency: Leave-One-Field-Out CV (LOFO-CV), Leave-One-Farm-Out CV (Farm-LOFO), and an optimized spatial split. We propose a three-level hierarchical validation scheme that allows for the quantitative separation of spatial leakage and feature selection leakage, a methodology that can be applied to any spatial ML problem. Local models have been shown to outperform the global SoilGrids v2.0 product in terms of accuracy, demonstrating the need for high-resolution regional models for precision agriculture. Local models outperformed SoilGrids v2.0 by 3.6× in Spearman ρ for pH (0.750 vs. 0.208), quantitatively confirming the necessity of regional calibration over global soil products. Multi-season ConvNeXt with SE-blocks on 54-channel composites improved R2 for NO3 by 36% (0.422 → 0.575), confirming the value of temporal dynamics for mobile elements; however, it underperformed RF on tabular features for most properties at the available sample size (n = 1085).
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(This article belongs to the Section Artificial Intelligence and Digital Agriculture)
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Open AccessReview
Research Progress on Key Technologies, Restrictive Factors and Optimization Strategies of Detasseling for Maize Seed Production
by
Yang Li, Yiteng Lei, Zhen Ma and Cundeng Wang
Agriculture 2026, 16(11), 1238; https://doi.org/10.3390/agriculture16111238 - 3 Jun 2026
Abstract
Maize hybrid seed production is a core factor in increasing maize yield. It is the key to ensure seed purity to remove tassels from female plants. This paper analyzes the inherent connections between seed production agronomy, biomechanics, computer vision, and intelligent devices at
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Maize hybrid seed production is a core factor in increasing maize yield. It is the key to ensure seed purity to remove tassels from female plants. This paper analyzes the inherent connections between seed production agronomy, biomechanics, computer vision, and intelligent devices at the system engineering level. The paper first elaborates on the role of crop growth models and genetic male sterility techniques in expanding the time window of mechanical operations. Secondly, based on the perception decision execution framework, this paper discusses how the biomechanical characteristics of male spikes directly determine the dynamic parameter design of the male removal actuator; in-depth analysis was conducted on the performance and limitations of deep learning algorithms in handling lighting changes, leaf occlusion, and high-throughput recognition in unstructured field environments. In addition, this paper compares the technical game between the detasseling success rate and leaf damage rate of two mainstream execution paths, cutting and extraction. This review highlights that future research should focus on the development of lightweight intelligent operation platforms and full-life-cycle digital decision-making systems, to realize high-efficiency and low-damage precision detasseling of seed maize.
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(This article belongs to the Section Agricultural Technology)
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Open AccessArticle
Research on Field Weed Detection Methods for Sweet Corn Seedlings and Laser Weed Control Experiments
by
Yuqi Zhang, Xuehai Wang, Yang Zhou, Lili Fu and Yanlei Xu
Agriculture 2026, 16(11), 1237; https://doi.org/10.3390/agriculture16111237 - 3 Jun 2026
Abstract
Sweet corn has high economic value and is consumed directly, requiring strict environmental and management conditions. However, weed infestation during growth seriously affects yield and quality, while conventional chemical weed control may compromise product safety. Laser weeding offers an effective alternative, with precise
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Sweet corn has high economic value and is consumed directly, requiring strict environmental and management conditions. However, weed infestation during growth seriously affects yield and quality, while conventional chemical weed control may compromise product safety. Laser weeding offers an effective alternative, with precise weed detection and localization as its core requirement. This study proposes YOLO-GFD, a lightweight weed detection algorithm for sweet corn fields. Compared with the original model, YOLO-GFD increased mAP@0.5 by 10.61 percentage points, reduced floating-point operations by 0.6 percentage points, and achieved an average precision of 95.77%. Field trials further showed a real-time weed detection rate of 93.1% and a corn seedling misdetection rate of 1.1%, indicating strong practical applicability. In addition, weed control experiments using 110 W near-infrared and blue lasers under different power levels and irradiation durations identified suitable laser parameters for field laser weeding. Overall, YOLO-GFD meets the real-time accuracy requirements of autonomous laser weeding and provides a reliable basis for visual recognition and laser parameter optimization in sweet corn production.
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(This article belongs to the Section Crop Protection, Diseases, Pests and Weeds)
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Open AccessArticle
Remediation Effects and Mechanisms of Biochar Derived from Agricultural Waste on Soils Contaminated with Cadmium (Cd) and Lead (Pb)
by
Xiang Zhang, Chunyi Kuang, Ziying Han, Xiaoyuan Chen, Zhihong Gao and Yongyong Zhu
Agriculture 2026, 16(11), 1236; https://doi.org/10.3390/agriculture16111236 - 3 Jun 2026
Abstract
Cadmium (Cd) and lead (Pb) are ubiquitous toxic heavy metals in farmland soils, posing a threat to agricultural product safety and human health through food chain transmission. Biochar is widely used for in situ immobilization of heavy metals; however, systematic comparisons of the
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Cadmium (Cd) and lead (Pb) are ubiquitous toxic heavy metals in farmland soils, posing a threat to agricultural product safety and human health through food chain transmission. Biochar is widely used for in situ immobilization of heavy metals; however, systematic comparisons of the immobilization performance of rice straw biochar (RSB) and sugarcane bagasse biochar (SCB) under single and combined Cd–Pb contamination remain limited. This study systematically evaluated their immobilization performance and mechanisms through pot and batch adsorption experiments. Without altering total soil Cd and Pb contents, both biochars significantly regulated heavy metal bioavailability in the soil–plant system. In batch adsorption, RSB exhibited maximum Cd and Pb adsorption capacities 2.1 and 3.0 times those of SCB, respectively, with chemisorption as the dominant mechanism. In pot experiments, RSB reduced Pb uptake in pakchoi by 60.0% and 81.0%, but increased Cd uptake. SCB increased Cd uptake under single Cd contamination, had no significant effect on Pb under single Pb contamination, yet reduced Cd and Pb uptake under co-contamination by 44.4% and 31.6%, respectively. These differential effects are attributed to distinct mechanisms: Pb was primarily immobilized via stable mineral precipitation, whereas Cd was bound through weakly reversible ion exchange. Both biochars improved soil fertility and maintained core bacterial ecological functions without posing additional ecological risks. This study clarifies the feedstock-dependency and metal-specificity of biochar in remediating Cd- and Pb-contaminated farmlands, guiding precise biochar selection under varying contamination scenarios.
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(This article belongs to the Section Agricultural Soils)
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Open AccessArticle
IoT-Based Monitoring and Recommendation System for Real-Time Moisture and Nutrient Management in Large-Scale Rice Fields
by
Sangtong Boonying, Nantiya Tantidontanet, Likit Chamuthai, Anek Putthidech, Amnaj Sookjam and Salinun Boonmee
Agriculture 2026, 16(11), 1235; https://doi.org/10.3390/agriculture16111235 - 2 Jun 2026
Abstract
Rice cultivation in climate-sensitive regions necessitates adaptive irrigation and nutrient management strategies to enhance resource utilization efficiency and mitigate operational uncertainty. This study investigated the operational feasibility of an Internet of Things (IoT)-based monitoring and recommendation system for real-time soil moisture and nutrient-related
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Rice cultivation in climate-sensitive regions necessitates adaptive irrigation and nutrient management strategies to enhance resource utilization efficiency and mitigate operational uncertainty. This study investigated the operational feasibility of an Internet of Things (IoT)-based monitoring and recommendation system for real-time soil moisture and nutrient-related operational monitoring in large-scale rice farming environments in Thailand. An integrated IoT-assisted monitoring and recommendation framework comprising sensing, communication, analytics, and recommendation components was developed and evaluated under practical field-deployment conditions. The system incorporated soil moisture monitoring and nutrient-related operational sensing, cloud-based data processing, machine learning-assisted prediction, and mobile notification services to support irrigation and fertilizer management. A comparative evaluation between conventional and IoT-assisted management conditions revealed lower irrigation water use (947.38 vs. 7638.38 m3/ha), reduced fertilizer utilization (41.40 vs. 347.56 kg/ha), and lower production costs (4230.88 vs. 30,664.69 THB/ha) under IoT-assisted conditions. Average profit also increased from 2357.68 to 23,920.00 THB/ha. User evaluation indicated high overall satisfaction (mean = 4.28/5.00). The findings suggest that integrating IoT-based sensing, machine learning-assisted prediction, and optimization-driven recommendation workflows within a unified field-deployment framework may improve adaptive irrigation management, resource-allocation efficiency, and operational decision support under climate-sensitive rice cultivation environments.
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(This article belongs to the Section Agricultural Technology)
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Open AccessArticle
Do Grain Imports Improve Water Use Efficiency in Grain Production? A Cost Competition Perspective
by
Ziqiang Li, Weijiao Ye and Ciwen Zheng
Agriculture 2026, 16(11), 1234; https://doi.org/10.3390/agriculture16111234 - 2 Jun 2026
Abstract
Water scarcity poses a major constraint on efficient and sustainable grain production in China. Drawing on the New New Trade Theory and Induced Technological Innovation Theory, this study empirically investigates the relationship between cost competition from grain imports and water use efficiency in
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Water scarcity poses a major constraint on efficient and sustainable grain production in China. Drawing on the New New Trade Theory and Induced Technological Innovation Theory, this study empirically investigates the relationship between cost competition from grain imports and water use efficiency in grain production from a virtual water trade perspective. The results show the following: (1) From 2003 to 2020, China’s overall grain production water use efficiency exhibited an upward trend, with the Huang-Huai-Hai and Northeast regions increasing by 66.35% and 28.49%, respectively. (2) Cost competition from grain imports can force improvements in water use efficiency. For every 1 billion tons of virtual water saved through imports, water use efficiency increases by 0.008. However, when annual virtual water savings exceed 11 billion tons, import competition surpasses a critical threshold. Due to technological and facility constraints, even previously efficient producers cannot further improve efficiency in the short term, and the allocative efficiency of production factors is undermined, leading to a decline rather than an improvement in water use efficiency. (3) The positive effect of import cost competition on water use efficiency is stronger in northern regions and non-major grain-producing areas. (4) Import cost competition improves water use efficiency by reducing domestic grain production profits. This study validates the applicability of the pro-competitive effect of trade and induced technological innovation in grain trade, expands the research boundaries of virtual water trade, and provides policy insights for improving China’s grain production water use efficiency.
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(This article belongs to the Section Agricultural Water Management)
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Open AccessArticle
A Two-Stage G×E Modeling Framework Improves Crop Yield Prediction and Adaptive Selection
by
Qi Wang, Xiaohe Liang, Jiayu Zhuang, Jiajia Liu and Ailian Zhou
Agriculture 2026, 16(11), 1233; https://doi.org/10.3390/agriculture16111233 - 2 Jun 2026
Abstract
Accurate maize yield prediction across diverse environments is pivotal for modern breeding programs. While machine learning (ML) excels at capturing non-linear environmental effects, Genomic Best Linear Unbiased Prediction (GBLUP) remains a benchmark for modeling polygenic small-effect contributions. However, principled integration of these paradigms—while
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Accurate maize yield prediction across diverse environments is pivotal for modern breeding programs. While machine learning (ML) excels at capturing non-linear environmental effects, Genomic Best Linear Unbiased Prediction (GBLUP) remains a benchmark for modeling polygenic small-effect contributions. However, principled integration of these paradigms—while explicitly accounting for genotype-by-environment interaction (G×E)—remains a formidable challenge. We propose a two-step framework evaluated on the Genomes to Fields (G2F) 2022 dataset. In Step 1, ML models are employed to fit environmental main effects; in Step 2, genomic residuals are modeled via additive-dominance relationship matrices, augmented by an explicit low-rank G×E matrix. Candidate interaction markers were screened through plasticity-based genome-wide association studies (GWAS) across six phenotypic stability metrics and used to construct a low-rank candidate G×E representation, with a cross-validation-selected scaling parameter applied to control the contribution of the predicted G×E component. TwoStep_G×E_alpha0.33, achieved a within–environment Pearson correlation coefficient (PCC) of 0.376, outperformed both GBLUP and the competition-winning model (PCC = 0.357) in within-environment ranking. Furthermore, environment-adaptive selection yielded a genetic gain of 0.454 Mg ha−1, representing a 34.7% improvement over GBLUP. Overall, the proposed framework provides a practical approach for environment-specific yield prediction and adaptive selection in maize breeding.
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(This article belongs to the Section Crop Genetics, Genomics and Breeding)
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