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Agriculture

Agriculture is an international, peer-reviewed, open access journal published semimonthly online. 

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In the post-antibiotic era, postbiotics and phytogenic additives such as essential oils compounds combination (PBEO) has emerged as a sustainable alternative to enhance poultry productivity. This study investigated the synergistic effects of this novel combination PBEO on broiler growth performance, meat quality and intestinal health. Two hundred and eighty-eight (n = 288) one-day-old male Arbor Acres (AA) broilers were randomly divided into three groups: control group (Basal, basal diet), two experimental groups (0.02% PBEO and 0.04% PBEO, 0.02% or 0.04% PBEO added on top of basal diet, respectively). Each group consisted of eight replicates with twelve birds per replicate. Dietary supplementation with 0.02% PBEO significantly improved the growth performance of broiler chickens by increasing body weight at day 41 (2920.6 g vs. 2786.3 g) and average daily gain during days 1–41 (70.2 g vs. 66.9 g) compared to the control group (p < 0.05). Regarding meat quality, muscle pH was significantly higher in groups fed 0.02% PBEO (6.77) or 0.04% PBEO (6.68) compared to the control (6.50) (p < 0.05). GSH content in breast meat showed a significant increase in the 0.04% group (84.19 µmol/gprot) compared to the control (40.61 µmol/gprot) (p < 0.05). Additionally, muscle fiber diameter (MFD) was significantly reduced in both the 0.02% group (68.77 µm) and 0.04% group (79.68 µm) compared to the control group (92.12 µm) (p < 0.05). Dietary PBEO boosts broiler growth by increasing body weight and average daily gain. The improvements in meat quality were marked by higher muscle pH, increased antioxidant capacity (GSH) and reduced muscle fiber diameter.

4 March 2026

Visual scoring scale for white striping in broiler breast fillets where 0 = Normal, 1 = Moderate, 2 = Severe, and 3 = Extreme [45].

An UAV Direct Seeding Device for Rice Based on EDEM

  • Zhijun Wu,
  • Runan Xu and
  • Lijia Xu
  • + 4 authors

UAV-based rice direct seeding offers high operational efficiency and reduced labor demand, yet seed distribution uniformity remains a major limitation for centrifugal spreading devices. This study aims to design and optimize a novel centrifugal drone rice direct seeding device to improve seed lateral distribution uniformity. In this study, a centrifugal drone rice direct seeding device was developed with a concave perforated disc and double-arc seed-pushing blades to regulate seed motion and improve lateral distribution uniformity. Discrete element method (DEM) simulations were conducted to examine the effects of disc tilt angle, blade type, and blade number. Single-factor and response-surface simulation results identified an optimal parameter combination of a 29.0° disc tilt angle, double-arc blades with a 110° arc angle, and six blades. Based on these results, the disc structure was further refined, and the simulated lateral coefficient of variation (CV) of seed distribution reached 18.22%. Bench tests yielded a minimum CV of 16.34%, an average CV of 19.36%, and a total discharge coefficient of variation of 0.276%, which agrees with the simulation outcomes and supports the validity of the DEM model. Overall, the proposed device demonstrates improved seeding uniformity and meets agronomic requirements for rice cultivation, offering farmers a high-efficiency planting solution and providing UAV manufacturers with a validated double-arc disc design for equipment optimization.

4 March 2026

Overall view of the UAV rice direct seeding device. 1. Drone. 2. Seed box. 3. Seed supply device. 4. Centrifugal seeding disc.

Silage additives formulated with lactic acid bacteria (LAB) are commonly applied to enhance fermentation efficiency and aerobic stability. However, comparative evaluations across different forage species are still scarce. This in vitro experiment assessed the influence of eleven commercial silage inoculants containing various combinations of homo- and heterofermentative LAB on fermentation dynamics, nutrient conservation, and aerobic stability of medium-wilted alfalfa (Medicago sativa L.), perennial ryegrass (Lolium perenne L.), and red clover/perennial ryegrass silages. Experimental silages were prepared in 3 L laboratory silos and stored for 90 days. All inoculated treatments exhibited significantly lower pH values at both 3 and 90 days of ensiling compared with the untreated control (p < 0.05). LAB application increased the concentration of total fermentation acids and lactic acid in all forage types, although responses varied depending on inoculant composition. Inoculants containing Lentilactobacilllus buchneri produced the greatest acetic acid concentrations and resulted in a marked enhancement of aerobic stability. Compared with the control, silage inoculation significantly decreased dry matter losses by 35–64% and ammonia-N proportion by 20–37%, leading to an additional dry matter recovery of 1.29–2.87%. Control silages showed the lowest aerobic stability (97.2 h), while inoculated silages ranged from 126.0 to 200.4 h, with the extent of improvement differing among forage species and LAB formulations. In conclusion, commercial silage inoculants incorporating diverse LAB strains effectively improve fermentation quality, limit nutrient degradation, and enhance aerobic stability of legume and grass silages under controlled experimental conditions.

3 March 2026

DM loss of the alfalfa silage, % kg−1 DM. Different lowercase letters, in the columns, differ significantly (p &lt; 0.05) from each other. C, control; PLE, Pediococcus acidilactici 33-11, Pediococcus acidilactici 33-06, Lactiplantibacillus plantarum LSI, Lactiplantibacillus plantarum L-256, Enterococcus faecium M74; PLX, Pediococcus acidilactici 33-11, Pediococcus acidilactici 33-06, Lactiplantibacillus plantarum LSI, Lactiplantibacillus plantarum L-256, xylanase; LPELXS, Lactococcus lactis SR 3.54, Pediococcus acidilactici 33-11, Pediococcus acidilactici 33-06, Enterococcus faecium M74, Lactiplantibacillus plantarum LSI, Lactiplantibacillus plantarum L-256, xylanase, sodium benzoate; LPEL, Lactococcus lactis SR 3.54, Pediococcus acidilactici 33-11, Pediococcus acidilactici 33-06, Enterococcus faecium M74, Lactiplantibacillus plantarum MiLab 393; LPE, Lactiplantibacillus plantarum Milab 393, Lactococcus lactis SR354, Pediococcus pentocaceus P6, Enterococcus faecium M74; LLPE, Lactiplantibacillus plantarum Milab 393, Lactiplantibacillus plantarum LP256, Pediococcus pentocaceus P6, Enterococcus faecium M74; LBP, Lactiplantibacillus plantarum Milab 393, Lentilactobacilllus buchneri 1819, Pediococcus pentosaceus PC3; LEP, Lactiplantibacillus plantarum Milab 393, Enterococcus faecium M74, Pediococcus pentosaceus PC3; LELX, Lactiplantibacillus plantarum Milab 393, Enterococcus faecium M74, Lactococcus lactis SR354, xylanase; LEL, Lactiplantibacillus plantarum Milab 393, Enterococcus faecium M74, Lactococcus lactis SR354; BLL, Lentilactobacilllus buchneri DSM 13573, Lactiplantibacillus plantarum, DSM 3676, Lactiplantibacillus plantarum DSM 3677.

The advent of smart farms, enabled by information and communication technologies (ICT) and the Internet of Things (IoT), has improved productivity and sustainable agriculture. However, the large-scale implementation of smart farms is currently hampered by physical constraints. These constraints have led to the concept of open-field smart farming as a viable alternative. In this paradigm, data from unmanned aerial vehicles (UAVs) play a central role in effective and sustainable agricultural management. The quantitative analysis of such data requires highly reliable technological solutions. The objective of this study is to conduct a comparative analysis of image binarization algorithms for UAV-based soybean canopy extraction across growth stages and to contribute to the development of an image labeling methodology. UAVs were used to capture images of soybean fields at different growth stages, and a comparative analysis was performed using binarization image algorithms. The performance of each algorithm was evaluated using Normalized Cross Correlation (NCC) and Mean Absolute Error (MAE). The results indicate that the Excess Green (ExG) and Excess Green minus Excess Red (ExGR) vegetation indices provide accurate and stable soybean canopy extraction across growth stages when combined with Adaptive and Otsu binarization algorithms. These indices are particularly suitable for extracting soybean canopy from UAV-based data, thereby expanding the scope of precision analysis in the agricultural sector and providing data for advancing precision agriculture technology. This study contributes to the standardization and efficient use of UAV-based agricultural data processing. However, since manual weeding was performed prior to image acquisition to ensure that only soybean plants were present, reflecting standard agricultural practices in South Korea, additional validation would be required for application in fields where weeds are naturally present.

3 March 2026

Research flow chart of this study.

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Agriculture - ISSN 2077-0472