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  • The effects of potting substrate compositions on the growth of potted hellebore (Helleborus × hybridus)
    The potted hellebore is widely favored in horticulture owing to its diverse flower colors and special flower shapes. As a potted plant with remarkable ornamental value, it enjoys promising development prospects in the ornamental plant market. However, scientific literature remains scarce regarding the effects of different composite substrates on the growth of Helleborus×hybridus, the focus of this study. Given its distinctive aesthetic value and the crucial significance of the substrate for its growth, this study examined the growth status of potted seedlings in various substrate compositions. Key growth and photosynthetic parameters were measured, and a comprehensive evaluation was carried out using principal component analysis (PCA). Results demonstrated that the substrate containing imported peat mixed with vermiculite (1:1 ratio) yielded optimal plant growth, followed by coconut coir combined with vermiculite (1:1). These findings provide practical insights for selecting environmentally sustainable and cost-effective substrate components for hellebores cultivation. We believe that the present paper will be of interest to the readership of your journal.
  • Biopolyolysis - a new biopathway for recycling waste polyurethane foams
    The research described in this article concerns eco-design of thermal insulation polyurethane biomaterials in accordance with the assumptions of the European Green Deal. Biofoams based on three different biopolyols derived from rapeseed oil were obtained. In the foams, 100% of the petrochemical polyol was replaced with a selected biopolyol. The biopolyols were obtained in the reactions of transesterification of rapeseed oil with triethanolamine, transesterification with diethylene glycol and in the reaction of epoxidation and oxirane ring opening with diethylene glycol. The material obtained from the petrochemical polyol was used as a reference foam. The foams were subjected to polyolysis using the biopolyol obtained in the reaction of transesterification of rapeseed oil with triethanolamine. Chemolysis of the same foams using diethylene glycol played the role of a comparative reaction. The obtained rebiopolyols were characterized by hydroxyl numbers comparable to those of the biopolyols and significantly lower than those of typical recyclates obtained in the glycolysis reaction. This type of research has not yet been described in the literature. The new biocomponents obtained as a result of the polyolysis reaction were used to produce open-cell foams in which 100% of the petrochemical polyol was replaced with a rebiopolyol. The resulting foam materials were characterized by a thermal conductivity coefficient of about 36 mW/m·K, density of about 15 kg/m3 and compressive strength of about 50 kPa.
  • From Concentration to Flux: A Mechanistic Model for Accurate Methane Emission Estimates in Livestock
    This dataset contains MATLAB source code used to implement the hybrid multiphysics framework described in the manuscript titled "A Physics-Based Framework for Accurate On-Farm Enteric Methane Sensing." The software models the complete emission-to-sensor pathway for methane released during cattle eructation events, integrating physiological control volume analysis with a transient buoyant puff model. The main script is MassConservationV05.m, which simulates methane transport through four interconnected control volumes representing the rumen, lungs, local environment, and sampling device. It applies the Reynolds Transport Theorem to derive time-resolved methane concentrations and mass fluxes in each compartment. The second core script is Solve_bovine_puffV04_integration.m, which couples the output of the control volume model to a puff-based fluid dynamics model. This code initializes the puff using integrated physiological parameters and solves a system of ordinary differential equations to predict the spatiotemporal evolution of methane concentration and velocity fields. Two supporting functions are included: PuffSolver.m: Solves the puff trajectory and concentration field using Gaussian self-similar profiles and conservation laws for momentum, buoyancy, and scalar transport. BelchProfileGenerator.m: Generates a lognormal flow profile representing the temporal shape of a belching event, which serves as input to the control volume model. All files are written in MATLAB and are compatible with versions R2021a and later. Users can modify physiological parameters, environmental conditions, and sensor configurations to simulate different scenarios. The software is intended to support researchers working on methane sensing, livestock emissions modeling, and sensor calibration. To run the full simulation: Start with MassConservationV05.m to simulate the control volume system. Then run Solve_bovine_puffV04_integration.m to compute the puff evolution and sensor capture fraction. Use the supporting functions as needed to customize the emission profile and puff behavior. This software supports the reproducibility and extension of the results presented in the associated manuscript and is intended for open scientific use.
  • Calorie Consumption and Wages: Evidence from India’s Labor Market
    This dataset and code generates the Tables and figures in the paper "Calorie Consumption and Wages: Evidence from India’s Labor Market," submitted to Economic Modelling.
  • Toward scientific clarity in the evolutionary puzzle of Austropotamobius crayfish
    Supporting datasets (mtCOI & 16S sequences ID, location and references) used in this study.
  • Critical Role of Sea Spray Aerosol Production Pathways in Particulate Transfer Across the Sea-Air Interface
    Sea spray aerosols (SSA) play a crucial role in transferring particulates from oceanic water to the atmosphere. The production pathways of SSA from bubble bursting include jet drops from bubble cavity collapse, surface film drops from bubble cap disintegration and collision film drops from underwater bubble collision. While the physical formation of these drops has been extensively studied, the mechanisms governing particle enrichment and transfer within these individual drop types remain poorly understood. This study systematically investigates particle enrichment and transfer across the three types of drops. While previous studies suggested only hydrophobic particles could be enriched by SSA, our findings reveal that both hydrophilic and hydrophobic particles can be enriched in all drop types, with surface film drops exhibiting significantly greater enrichment than previously reported. We propose for the first time that particle enrichment occurs during bubble film drainage because particles tend to remain within the thinning film rather than being uniformly drained out, leading to additional concentration within the film. These findings enhance our understanding of mass transfer at water-air interface.
  • Lacticaseibacillus rhamnosus MDC 2012 whole-genome
    Genetic and Biochemical Characterization of Lacticaseibacillus rhamnosus MDC 2012 and Its Potential in Processing of Raw Pork Meat
  • Dataset from a Systematic Review on State, Institutional, and Organizational Capacities in Disaster Risk Management
    This dataset contains the results of a systematic literature review conducted for the article “State, Institutional, and Organizational Capacities in Disaster Risk Management”. The dataset includes: Search results retrieved from the Scopus and Web of Science platforms, including all records obtained through the defined search strategies. Screened and eligible articles, after applying the inclusion and exclusion criteria. Data extraction sheets, containing the coding and variables related to state, institutional, and organizational capacities, as well as the phases of disaster risk management addressed in each study. The dataset allows other researchers to verify the review process, reproduce the selection and extraction steps, and reuse the data for further studies on disaster risk management capacities.
  • Lemon Leaf Diseases Dataset and Annotations
    The dataset contains eight classes of dominant diseases affecting lemon leaves such; Anthracnose, Bacterial Blight, Citrus Canker, Curl Virus, Deficiency Leaf, Dry Leaf, Sooty Mould, Spider Mites as well as a class of Healthy leaves. This repository also contain annotations of all the classes and are converted into a .txt format which can be used for any artificial intelligence project and any agricultural research. This dataset is preprocessed to ensure high-quality input for disease detection, classification and segmentation.
  • Supplemental Material
    Supplemental Methods, Supplemental Table 1, Supplemental Table 2, and Supplemental Figure 1
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