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24 pages, 8188 KiB  
Article
Top of the Atmosphere Reflected Shortwave Radiative Fluxes from ABI on GOES-18
by Yingtao Ma, Rachel T. Pinker, Wen Chen, Istvan Laszlo, Hye-Yun Kim, Hongqing Liu and Jaime Daniels
Atmosphere 2025, 16(8), 979; https://doi.org/10.3390/atmos16080979 (registering DOI) - 17 Aug 2025
Abstract
In this study, we describe the derivation and evaluation of Top of the Atmosphere (TOA) Shortwave Radiative (SWR) Fluxes from the Advanced Baseline Imager (ABI) sensor on the GOES-18 satellite. The TOA estimates use narrowband observations from ABI that are transformed to broadband [...] Read more.
In this study, we describe the derivation and evaluation of Top of the Atmosphere (TOA) Shortwave Radiative (SWR) Fluxes from the Advanced Baseline Imager (ABI) sensor on the GOES-18 satellite. The TOA estimates use narrowband observations from ABI that are transformed to broadband (NTB), based on simulations and adjusted to total fluxes using Angular Distribution Models (ADMs). Subsequently, the GOES-18 estimates are evaluated against the Clouds and the Earth’s Radiant Energy System (CERES) data, the only observed SWR broadband flux dataset. The importance of agreement at the TOA is that most methodologies to derive surface SWR start with the satellite observation at the TOA. Moreover, information needed to compute radiative fluxes at both boundaries (TOA and surface) is needed for estimating the energy absorbed by the atmosphere. The methodology described was comprehensively evaluated, and possible sources of errors were identified. The results of the evaluation for the four seasonal months indicate that by using the best available auxiliary data, the accuracy achieved in estimating TOA SWR at the instantaneous scale ranges between 0.55 and 17.14 W m−2 for the bias and 22.21 to 30.64 W m−2 for the standard deviation of biases (differences are ABI minus CERES). It is believed that the high bias of 17.14 for July is related to the predominantly cloudless sky conditions, when the used ADMs do not perform as well as for cloudy conditions. Full article
(This article belongs to the Section Atmospheric Techniques, Instruments, and Modeling)
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16 pages, 2856 KiB  
Article
Dynamic Risk Assessment of Collapse Geological Hazards on Highway Slopes in Basalt Regions During Rainy Seasons
by Lihui Qian, Peng Zhao and Zhongshui Li
Atmosphere 2025, 16(8), 978; https://doi.org/10.3390/atmos16080978 (registering DOI) - 17 Aug 2025
Abstract
Anchored in the four-factor theory of natural hazard risk, this study presents a dynamic risk assessment of collapse geological hazards (CGHs) using the S3K highway slope in Changbai Korean Autonomous County, China, as a case study. Building on previous research, the methodological framework [...] Read more.
Anchored in the four-factor theory of natural hazard risk, this study presents a dynamic risk assessment of collapse geological hazards (CGHs) using the S3K highway slope in Changbai Korean Autonomous County, China, as a case study. Building on previous research, the methodological framework consists of three sequential stages: (1) critical indicators for CGHs in basalt regions are identified, with iron-staining anomalies—a hallmark of such terrains—innovatively integrated as a slope stability metric; (2) a system dynamics (SD) model is developed in Vensim to quantify dynamic feedback mechanisms, focusing on the “rock weathering–rainfall triggering–slope instability” nexus, and time-varying parameters are introduced to enable monthly-scale risk prediction; and (3) a 500 m × 500 m grid system is established using ArcGIS 10.4, and a computer program is developed to achieve SD-GIS coupling and calculate grid parameters. The information value method is then employed to determine risk thresholds, thereby completing CGH risk assessment and prediction. The results indicate that over the next five years, high-risk areas will exhibit spatial agglomeration when monthly rainfall exceeds approximately 130 mm (July and August). Conversely, when monthly rainfall is below around 60 mm, the entire region will display low or no risk. Model simulations reveal that risks during the rainy season over the next five years will exhibit insignificant variability, prompting simplification of the resultant cartography. Field validation corroborates the robustness of the model. This research overcomes the primary limitations of conventional static assessment models by improving the dynamic predictability and the applicability to basalt terrains. The integrated SD-GIS framework presents a novel methodological paradigm for dynamic CGH risk analysis and offers support for the formulation of targeted disaster mitigation strategies. Full article
(This article belongs to the Section Climatology)
18 pages, 4921 KiB  
Article
Genetic and Evolutionary Analysis of Porcine Kobuvirus in Guangxi Province, Southern China, Between 2021 and 2025
by Yang Tang, Yuwen Shi, Kaichuang Shi, Yanwen Yin, Shuping Feng, Feng Long and Hongbin Si
Microorganisms 2025, 13(8), 1921; https://doi.org/10.3390/microorganisms13081921 (registering DOI) - 17 Aug 2025
Abstract
Kobuvirus is a new genus of viruses in the Picornaviridae family causing diarrhea in animals. Porcine kobuvirus (PKV) is an important pathogen with a high rate of infection in pig herds. In this study, a total of 10,990 fecal swabs and tissue samples [...] Read more.
Kobuvirus is a new genus of viruses in the Picornaviridae family causing diarrhea in animals. Porcine kobuvirus (PKV) is an important pathogen with a high rate of infection in pig herds. In this study, a total of 10,990 fecal swabs and tissue samples were collected from different areas of Guangxi province in southern China during 2021–2025 and then tested for PKV using RT-qPCR. The results showed a 19.19% (2109/10,990) PKV positivity rate. Sixty-two PKV-positive samples, which were selected according to sampling regions, sampling seasons, and detection Ct values, were used for PCR amplification and gene sequencing. A sequence comparison showed that the nucleotide and amino acid identities of VP1, 2B, and 3D genes were 78.6–99.5% and 83.5–100%, 77.7–99.8% and 80.9–100%, and 90.9–99.8% and 94.9–99.9%, respectively, indicating that the 3D gene was more conserved than the VP1 and 2B genes. The phylogenetic trees based on these three genes revealed that the PKV VP1 gene sequences from different countries could be classified into two groups (Groups I and II), and the PKV VP1 gene sequences obtained from Guangxi province were distributed in Groups I and II and formed independent clades. The 2B and 3D gene sequences could also be classified into two groups (Groups I and II). Bayesian analysis indicated a state of population growth for PKV strains from the time of their discovery until 2009, at which point it began to decline. Amino acid sequence analysis of the VP1 gene identified mutations and insertions in the obtained PKV strains. Recombinant analysis showed that no recombinant event was found in the VP1, 2B, and 3D genes of the obtained strains. The results indicated the geographically specific inheritance and variation in PKV, provided more information on the prevalence and genetic evolution of PKV in Guangxi province, Southern China, and emphasized the importance of regularly monitoring genetic variation in PKV for better comprehension of PKV. Full article
(This article belongs to the Special Issue Viral Infection on Swine: Pathogenesis, Diagnosis and Control)
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17 pages, 1159 KiB  
Article
Sports Analytics for Evaluating Injury Impact on NBA Performance
by Vangelis Sarlis, George Papageorgiou and Christos Tjortjis
Information 2025, 16(8), 699; https://doi.org/10.3390/info16080699 (registering DOI) - 17 Aug 2025
Abstract
This study investigates the impact of injuries on National Basketball Association (NBA) player performance over 20 seasons, using large-scale performance data and a statistical evaluation. Injury events were matched with player–game performance metrics to assess how various injury types influence short-, medium-, and [...] Read more.
This study investigates the impact of injuries on National Basketball Association (NBA) player performance over 20 seasons, using large-scale performance data and a statistical evaluation. Injury events were matched with player–game performance metrics to assess how various injury types influence short-, medium-, and long-term performance outcomes, measured across 2-, 5-, and 10-game windows. Using paired sample t-tests and Cohen’s d, we quantified both the statistical significance and effect size of changes in key performance metrics before and after injury. The analysis applies paired t-tests and Cohen’s d to quantify the statistical and practical significance of performance deviations pre- and post-injury. Our results show that while most injury types are associated with measurable performance declines, especially in offensive and defensive ratings, certain categories, such as cardiovascular injuries, demonstrate counterintuitive improvements post-recovery. These patterns suggest that not all injuries have equivalent consequences and highlight the importance of individualized recovery protocols. This work contributes to the growing field of sports injury analytics by combining statistical modeling and sports analytics to deliver actionable insights for coaches, medical staff, and performance analysts in managing player rehabilitation and optimizing return-to-play decisions. Full article
(This article belongs to the Special Issue Real-World Applications of Machine Learning Techniques)
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15 pages, 4130 KiB  
Article
Monitoring and Influencing Factors Analysis of Urban Vegetation Changes in the Plateau-Mountainous City
by Zhoujiang Liu, Wentan Wei, Yifan Dong and Wenxian Hu
Forests 2025, 16(8), 1339; https://doi.org/10.3390/f16081339 (registering DOI) - 17 Aug 2025
Abstract
It is of great importance to study the spatiotemporal variation in vegetation and its influencing factors at a regional scale in plateau mountainous cities for ecological restoration and management and maintenance of ecosystem stability. This study employed MODIS NDVI data to construct a [...] Read more.
It is of great importance to study the spatiotemporal variation in vegetation and its influencing factors at a regional scale in plateau mountainous cities for ecological restoration and management and maintenance of ecosystem stability. This study employed MODIS NDVI data to construct a kNDVI dataset for the growing season in Kunming, with the aim of exploring the spatiotemporal variations in vegetation more precisely. The study analyzed the trends and stability of kNDVI and investigated the primary drivers of kNDVI dynamics in Kunming. The results show that the regional proportion of higher-level kNDVI is more than half, and vegetation in the growing season has shown an improvement trend. The primary factors influencing kNDVI variations in Kunming include soil type, landform type, nighttime light intensity, and slope gradient. The pairwise interactions among factors have a more substantial impact on vegetation dynamics compared to individual factors, with the interaction between soil type and nighttime light intensity being particularly pronounced. The results offer scientific bases for assessing and managing ecological environment quality in plateau-mountainous cities. Full article
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17 pages, 2419 KiB  
Article
Variations in the Surface Atmospheric Electric Field on the Qinghai–Tibet Plateau: Observations at China’s Gar Station
by Jia-Nan Peng, Shuai Fu, Yan-Yan Xu, Gang Li, Tao Chen and En-Ming Xu
Atmosphere 2025, 16(8), 976; https://doi.org/10.3390/atmos16080976 (registering DOI) - 17 Aug 2025
Abstract
The Qinghai-Tibet Plateau, known as the “third pole” of the Earth with an average elevation of approximately 4500 m, offers a unique natural laboratory for probing the dynamic behavior of the global electric circuit. In this study, we conduct a comprehensive analysis of [...] Read more.
The Qinghai-Tibet Plateau, known as the “third pole” of the Earth with an average elevation of approximately 4500 m, offers a unique natural laboratory for probing the dynamic behavior of the global electric circuit. In this study, we conduct a comprehensive analysis of near-surface vertical atmospheric electric field (AEF) measurements collected at the Gar Station (80.1° E, 32.5° N; 4259 m a.s.l.) on the western Tibetan Plateau, spanning the period from November 2021 to December 2024. Fair-weather conditions are imposed. The annual mean AEF at Gar is ∼0.331 kV/m, significantly higher than values observed at lowland and plain sites, indicating a pronounced enhancement in atmospheric electricity associated with high-altitude conditions. Moreover, the AEF exhibits marked seasonal variability, peaking in December (∼0.411–0.559 kV/m) and valleying around July–August (∼0.150–0.242 kV/m), yielding an overall amplitude of approximately 0.3 kV/m. We speculate that this seasonal pattern is primarily driven by variations in aerosol concentration. During winter, increased aerosol loading from residential heating and vehicle emissions due to incomplete combustion reduces atmospheric conductivity by depleting free ions and decreasing ion mobility, thereby enhancing the near-surface AEF. In contrast, lower aerosol concentrations in summer lead to weaker AEF. This seasonal decline in aerosol levels is likely facilitated by stronger winds and more frequent rainfall in summer, which enhance aerosol dispersion and wet scavenging, whereas weaker winds and limited precipitation in winter favor near-surface aerosol accumulation. On diurnal timescales, the Gar AEF curve deviates significantly from the classical Carnegie curve, showing a distinct double-peak and double-trough structure, with maxima at ∼03:00 and 14:00 UT and minima near 00:00 and 10:00 UT. This deviation may partly reflect local influences related to sunrise and sunset. This study presents the longest ground-based AEF observations over the Qinghai–Tibet Plateau, providing a unique reference for future studies on altitude-dependent AEF variations and their coupling with space weather and climate processes. Full article
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21 pages, 1845 KiB  
Article
SRoFF-Yolover: A Small-Target Detection Model for Suspicious Regions of Forest Fire
by Lairong Chen, Ling Li, Pengle Cheng and Ying Huang
Forests 2025, 16(8), 1335; https://doi.org/10.3390/f16081335 (registering DOI) - 16 Aug 2025
Abstract
The rapid detection and confirmation of Suspicious Regions of Forest Fire (SRoFF) are critical for timely alerts and firefighting operations. In the early stages of forest fires, small flames and heavy occlusion lead to low accuracy, false detections, omissions, and slow inference in [...] Read more.
The rapid detection and confirmation of Suspicious Regions of Forest Fire (SRoFF) are critical for timely alerts and firefighting operations. In the early stages of forest fires, small flames and heavy occlusion lead to low accuracy, false detections, omissions, and slow inference in existing target-detection algorithms. We constructed the Suspicious Regions of Forest Fire Dataset (SRFFD), comprising publicly available datasets, relevant images collected from online searches, and images generated through various image enhancement techniques. The SRFFD contains a total of 64,584 images. In terms of effectiveness, the individual augmentation techniques rank as follows (in descending order): HSV (Hue Saturation and Value) random enhancement, copy-paste augmentation, and affine transformation. A detection model named SRoFF-Yolover is proposed for identifying suspicious regions of forest fire, based on the YOLOv8. An embedding layer that effectively integrates seasonal and temporal information into the image enhances the prediction accuracy of the SRoFF-Yolover. The SRoFF-Yolover enhances YOLOv8 by (1) adopting dilated convolutions in the Backbone to enlarge feature map receptive fields; (2) incorporating the Convolutional Block Attention Module (CBAM) prior to the Neck’s C2fLayer for small-target attention; and (3) reconfiguring the Backbone-Neck linkage via P2, P4, and SPPF. Compared with the baseline model (YOLOv8s), the SRoFF-Yolover achieves an 18.1% improvement in mAP@0.5, a 4.6% increase in Frames Per Second (FPS), a 2.6% reduction in Giga Floating-Point Operations (GFLOPs), and a 3.2% decrease in the total number of model parameters (#Params). The SRoFF-Yolover can effectively detect suspicious regions of forest fire, particularly during winter nights. Experiments demonstrated that the detection accuracy of the SRoFF-Yolover for suspicious regions of forest fire is higher at night than during daytime in the same season. Full article
(This article belongs to the Section Natural Hazards and Risk Management)
19 pages, 614 KiB  
Article
Effects of Outdoor and Household Air Pollution on Hand Grip Strength in Longitudinal Study of Rural Beijing Adults
by Wenlu Yuan, Xiaoying Li, Collin Brehmer, Talia Sternbach, Xiang Zhang, Ellison Carter, Yuanxun Zhang, Guofeng Shen, Shu Tao, Jill Baumgartner and Sam Harper
Int. J. Environ. Res. Public Health 2025, 22(8), 1283; https://doi.org/10.3390/ijerph22081283 (registering DOI) - 16 Aug 2025
Abstract
Background: Outdoor and household PM2.5 are established risk factors for chronic disease and early mortality. In China, high levels of outdoor PM2.5 and solid fuel use for cooking and heating, especially in winter, pose large health risks to the country’s aging [...] Read more.
Background: Outdoor and household PM2.5 are established risk factors for chronic disease and early mortality. In China, high levels of outdoor PM2.5 and solid fuel use for cooking and heating, especially in winter, pose large health risks to the country’s aging population. Hand grip strength is a validated biomarker of functional aging and strong predictor of disability and mortality in older adults. We investigated the effects of wintertime household and outdoor PM2.5 on maximum grip strength in a rural cohort in Beijing. Methods: We analyzed data from 877 adults (mean age: 62 y) residing in 50 rural villages over three winter seasons (2018–2019, 2019–2020, and 2021–2022). Outdoor PM2.5 was continuously measured in all villages, and household (indoor) PM2.5 was monitored for at least two months in a randomly selected ~30% subsample of homes. Missing data were handled using multiple imputation. We applied multivariable mixed effects regression models to estimate within- and between-individual effects of PM2.5 on grip strength, adjusting for demographic, behavioral, and health-related covariates. Results: Wintertime household and outdoor PM2.5 concentrations ranged from 3 to 431 μg/m3 (mean = 80 μg/m3) and 8 to 100 μg/m3 (mean = 49 μg/m3), respectively. The effect of a 10 μg/m3 within-individual increase in household and outdoor PM2.5 on maximum grip strength was 0.06 kg (95%CI: −0.01, 0.12 kg) and 1.51 kg (95%CI: 1.35, 1.68 kg), respectively. The household PM2.5 effect attenuated after adjusting for outdoor PM2.5, while outdoor PM2.5 effects remained robust across sensitivity analyses. We found little evidence of between-individual effects. Conclusions: We did not find strong evidence of an adverse effect of household PM2.5 on grip strength. The unexpected positive effects of outdoor PM2.5 on grip strength may reflect transient physiological changes following short-term exposure. However, these findings should not be interpreted as evidence of protective effects of air pollution on aging. Rather, they highlight the complexity of air pollution’s health impacts and the value of longitudinal data in capturing time-sensitive effects. Further research is needed to better understand these patterns and their implications in high-exposure settings. Full article
(This article belongs to the Section Environmental Health)
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24 pages, 6917 KiB  
Article
Multi-Sensor Fusion and Deep Learning for Predictive Lubricant Health Assessment
by Yongxu Chen, Jie Shen, Fanhao Zhou, Huaqing Li, Kun Yang and Ling Wang
Lubricants 2025, 13(8), 364; https://doi.org/10.3390/lubricants13080364 (registering DOI) - 16 Aug 2025
Abstract
Lubricating oil degradation directly impacts friction coefficient, wear rate, and lubrication regime transitions, making precise health quantification essential for predictive tribological maintenance. However, conventional evaluation methods fail to capture subtle tribological changes preceding lubrication failure, often oversimplifying complex multi-parameter relationships critical to friction [...] Read more.
Lubricating oil degradation directly impacts friction coefficient, wear rate, and lubrication regime transitions, making precise health quantification essential for predictive tribological maintenance. However, conventional evaluation methods fail to capture subtle tribological changes preceding lubrication failure, often oversimplifying complex multi-parameter relationships critical to friction and wear performance. To address this challenge, this study proposes Seasonal–Trend decomposition using Loess, a Factor Attention Network, a Temporal Convolutional Network, and an Informer with Long Short-Term Memory Variational Autoencoder (SFTI-LVAE) framework for continuous tribological health assessment of diesel engine lubricants. The approach integrates Seasonal–Trend decomposition using Loess (STL) for trend–seasonal separation, a Factor Attention Network (FAN) for multidimensional feature fusion, and a Temporal Convolutional Network (TCN)-enhanced Informer for capturing long-term tribological dependencies. By combining Long Short-Term Memory (LSTM) temporal modeling with Variational Autoencoder (VAE) reconstruction, the method quantifies lubricant health through reconstruction error, establishing a direct correlation between data deviation and tribological performance degradation. Additionally, permutation importance-based feature evaluation and parameter contribution quantification techniques enable deep mechanistic analysis and fault source tracing of lubricant health degradation. Experimental validation using multi-sensor monitoring data demonstrates that SFTI-LVAE achieves a 96.67% fault detection accuracy with zero false alarms, providing early warning 6.47 h before lubrication failure. Unlike traditional anomaly detection methods that only classify conditions as abnormal or normal, the proposed continuous health index reveals gradual tribological degradation processes, capturing subtle viscosity–temperature relationships and wear particle evolution indicating early lubrication regime transitions. The health index correlates strongly with tribological performance indicators, enabling a transition from reactive maintenance to predictive tribological management, providing an innovative solution for equipment health evaluation in the digital tribology era. Full article
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14 pages, 429 KiB  
Brief Report
Seroprevalence and Passive Clinical Surveillance of West Nile Virus in Horses from Ecological High-Risk Areas in Western Romania: Exploratory Findings from a Cross-Sectional Study
by Paula Nistor, Livia Stanga, Andreia Chirila, Vlad Iorgoni, Alexandru Gligor, Alexandru Ciresan, Ionela Popa, Bogdan Florea, Mirela Imre, Vlad Cocioba, Ionica Iancu, Janos Degi and Viorel Herman
Microorganisms 2025, 13(8), 1910; https://doi.org/10.3390/microorganisms13081910 (registering DOI) - 16 Aug 2025
Abstract
This cross-sectional study evaluated the seroprevalence and clinical impact of West Nile virus (WNV) infection in horses from three ecologically high-risk counties in western Romania (Timiș, Arad, and Bihor) between 2023 and 2025. A total of 306 unvaccinated horses were tested using a [...] Read more.
This cross-sectional study evaluated the seroprevalence and clinical impact of West Nile virus (WNV) infection in horses from three ecologically high-risk counties in western Romania (Timiș, Arad, and Bihor) between 2023 and 2025. A total of 306 unvaccinated horses were tested using a commercial ELISA, with 8.17% testing positive for WNV antibodies, indicating prior exposure. Passive surveillance for clinical signs during mosquito seasons identified 16 horses with acute neurological symptoms, four of which were confirmed as clinical cases based on WNV-specific IgM positivity, suggesting probable silent WNV circulation in the region. The overall case fatality rate among confirmed clinical cases was 25.0%. WNV seropositivity was highest in Bihor (8.85%), followed by Arad (8.57%) and Timiș (7.32%). Statistical comparisons using χ2 tests and binary logistic regression indicated no significant differences in seroprevalence between counties, sexes, or age groups, consistent with the overlapping 95% confidence intervals. These findings suggest the continued silent circulation of WNV in the region and support the integration of equine surveillance into the One Health framework as a potential tool for early detection and risk mitigation. However, in the absence of molecular confirmation (e.g., RT-PCR or virus isolation), these results should be interpreted as indicative of prior exposure rather than direct evidence of ongoing viral activity. Full article
(This article belongs to the Section Veterinary Microbiology)
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21 pages, 2926 KiB  
Article
Geostatistical Analysis and Delineation of Groundwater Potential Zones for Their Implications in Irrigated Agriculture of Punjab Pakistan
by Aamir Shakoor, Imran Rasheed, Muhammad Nouman Sattar, Akinwale T. Ogunrinde, Sabab Ali Shah, Hafiz Umer Fareed, Hareef Ahmed Keerio, Asim Qayyum Butt, Amjad Ali Khan and Malik Sarmad Riaz
World 2025, 6(3), 115; https://doi.org/10.3390/world6030115 - 15 Aug 2025
Abstract
Groundwater is essential for irrigated agriculture, yet its use remains unsustainable in many regions worldwide. In countries like Pakistan, the situation is particularly pressing. The irrigated agriculture of Pakistan heavily relies on groundwater resources owing to limited canal-water availability. The groundwater quality in [...] Read more.
Groundwater is essential for irrigated agriculture, yet its use remains unsustainable in many regions worldwide. In countries like Pakistan, the situation is particularly pressing. The irrigated agriculture of Pakistan heavily relies on groundwater resources owing to limited canal-water availability. The groundwater quality in the region ranges from good to poor, with the lower-quality water adversely affecting soil structure and plant health, leading to reduced agricultural productivity. The delineation of quality zones with respect to irrigation parameters is thus crucial for optimizing its sustainable use and management. Therefore, this research study was carried out in the Lower Chenab Canal (LCC) irrigation system to assess the spatial distribution of groundwater quality. The geostatistical analysis was conducted using Gamma Design Software (GS+) and the Kriging interpolation method was applied within a Geographic Information System (GIS) framework to generate groundwater-quality maps. Semivariogram models were evaluated for major irrigation parameters such as electrical conductivity (EC), residual sodium carbonate (RSC), and sodium adsorption ratio (SAR) to identify the best fit for various Ordinary Kriging models. The spherical semivariogram model was the best fit for EC, while the exponential model best suited SAR and RSC. Overlay analysis was performed to produce combined water-quality maps. During the pre-monsoon season, 17.83% of the LCC area demonstrated good irrigation quality, while 42.84% showed marginal quality, and 39.33% was deemed unsuitable for irrigation. In the post-monsoon season, 17.30% of the area had good irrigation quality, 44.53% exhibited marginal quality, and 38.17% was unsuitable for irrigation. The study revealed that Electrical Conductivity (EC) was the primary factor affecting water quality, contributing to 71% of marginal and unsuitable conditions. In comparison, the Sodium Adsorption Ratio (SAR) accounted for 38% and Residual Sodium Carbonate (RSC) contributed 45%. Therefore, it is recommended that groundwater in unsuitable zones be subjected to artificial recharge methods and salt-tolerated crops to enhance its suitability for agricultural applications. Full article
14 pages, 4297 KiB  
Article
Numerical Simulation of Natural Gas Waste Heat Recovery Through Hydrated Salt Particle Desorption in a Full-Size Moving Bed
by Liang Wang, Minghui Li, Yu Men, Yun Jia and Bin Ding
Processes 2025, 13(8), 2589; https://doi.org/10.3390/pr13082589 - 15 Aug 2025
Abstract
To achieve energy conservation, emission reduction, and green low-carbon goals for gas storage facilities, it is crucial to efficiently recover and utilize waste heat during gas injection while maintaining natural gas cooling rates. However, existing sensible and latent heat storage technologies cannot sustain [...] Read more.
To achieve energy conservation, emission reduction, and green low-carbon goals for gas storage facilities, it is crucial to efficiently recover and utilize waste heat during gas injection while maintaining natural gas cooling rates. However, existing sensible and latent heat storage technologies cannot sustain long-term thermal storage or seasonal utilization of waste heat. Thermal chemical energy storage, with its high energy density and low thermal loss during prolonged storage, offers an effective solution for efficient recovery and long-term storage of waste heat in gas storage facilities. This study proposes a novel heat recovery method by combining a moving bed with mixed hydrated salts (CaCl2·6H2O and MgSO4·7H2O). By constructing both small-scale and full-scale three-dimensional models in Fluent, which couple the desorption and endothermic processes of hydrated salts, the study analyzes the temperature and flow fields within the moving bed during heat exchange, thereby verifying the feasibility of this approach. Furthermore, the effects of key parameters, including the inlet temperatures of hydrated salt particles and natural gas, flow velocity, and mass flow ratio on critical performance indicators such as the outlet temperatures of natural gas and hydrated salts, the overall heat transfer coefficient, the waste heat recovery efficiency, and the mass fraction of hydrated salt desorption are systematically investigated. The results indicate that in the small-scale model (1164 × 312 × 49 mm) the outlet temperatures of natural gas and mixed hydrated salts are 79.8 °C and 49.3 °C, respectively, with a waste heat recovery efficiency of only 33.6%. This low recovery rate is primarily due to the insufficient residence time of high-velocity natural gas (10.5 m·s−1) and hydrated salt particles (2 mm·s−1) in the moving bed, which limits heat exchange efficiency. In contrast, the full-scale moving bed (3000 × 1500 × 90 mm) not only accounts for variations in natural gas inlet temperature during the three-stage compression process but also allows for optimized operational adjustments. These optimizations ensure a natural gas outlet temperature of 41.3 °C, a hydrated salt outlet temperature of 82.5 °C, a significantly improved waste heat recovery efficiency of 94.2%, and a hydrated salt desorption mass fraction of 69.2%. This configuration enhances the safety of the gas injection system while maximizing both natural gas waste heat recovery and the efficient utilization of mixed hydrated salts. These findings provide essential theoretical guidance and data support for the effective recovery and seasonal utilization of waste heat in gas storage reservoirs. Full article
(This article belongs to the Special Issue Multiphase Flow Process and Separation Technology)
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21 pages, 6984 KiB  
Article
Limitations of Polar-Orbiting Satellite Observations inCapturing the Diurnal Variability of Tropospheric NO2: A Case Study Using TROPOMI, GOME-2C, and Pandora Data
by Yichen Li, Chao Yu, Jing Fan, Meng Fan, Ying Zhang, Jinhua Tao and Liangfu Chen
Remote Sens. 2025, 17(16), 2846; https://doi.org/10.3390/rs17162846 - 15 Aug 2025
Abstract
Nitrogen dioxide (NO2) plays a crucial role in environmental processes and public health. In recent years, NO2 pollution has been monitored using a combination of in situ measurements and satellite remote sensing, supported by the development of advanced retrieval algorithms. [...] Read more.
Nitrogen dioxide (NO2) plays a crucial role in environmental processes and public health. In recent years, NO2 pollution has been monitored using a combination of in situ measurements and satellite remote sensing, supported by the development of advanced retrieval algorithms. With advancements in satellite technology, large-scale NO2 monitoring is now feasible through instruments such as GOME-2C and TROPOMI. However, the fixed local overpass times of polar-orbiting satellites limit their ability to capture the complete diurnal cycle of NO2, introducing uncertainties in emission estimation and pollution trend analysis. In this study, we evaluated differences in NO2 observations between GOME-2C (morning overpass at ~09:30 LT) and TROPOMI (afternoon overpass at ~13:30 LT) across three representative regions—East Asia, Central Africa, and Europe—that exhibit distinct emission sources and atmospheric conditions. By comparing satellite-derived tropospheric NO2 column densities with ground-based measurements from the Pandora network, we analyzed spatial distribution patterns and seasonal variability in NO2 concentrations. Our results show that East Asia experiences the highest NO2 concentrations in densely populated urban and industrial areas. During winter, lower boundary layer heights and weakened photolysis processes lead to stronger accumulation of NO2 in the morning. In Central Africa, where biomass burning is the dominant emission source, afternoon fire activity is significantly higher, resulting in a substantial difference (1.01 × 1016 molecules/cm2) between GOME-2C and TROPOMI observations. Over Europe, NO2 pollution is primarily concentrated in Western Europe and along the Mediterranean coast, with seasonal peaks in winter. In high-latitude regions, weaker solar radiation limits the photochemical removal of NO2, causing concentrations to continue rising into the afternoon. These findings demonstrate that differences in polar-orbiting satellite overpass times can significantly affect the interpretation of daily NO2 variability, especially in regions with strong diurnal emissions or meteorological patterns. This study highlights the observational limitations of fixed-time satellites and offers an important reference for the future development of geostationary satellite missions, contributing to improved strategies for NO2 pollution monitoring and control. Full article
26 pages, 10531 KiB  
Article
Seasonally Contrasting Sensitivity of Minimal River Runoff to Future Climate Change in Western Kazakhstan: A CMIP6 Scenario Analysis
by Lyazzat Makhmudova, Sayat Alimkulov, Aisulu Tursunova, Lyazzat Birimbayeva, Elmira Talipova, Oirat Alzhanov, María Elena Rodrigo-Clavero and Javier Rodrigo-Ilarri
Water 2025, 17(16), 2417; https://doi.org/10.3390/w17162417 - 15 Aug 2025
Abstract
This study presents a scenario-based assessment of the future sensitivity of minimal low-water runoff to climate change in Western Kazakhstan. An ensemble of global climate models from the Coupled Model Intercomparison Project Phase 6 (CMIP6), combined with dynamically downscaled projections for Central Asia, [...] Read more.
This study presents a scenario-based assessment of the future sensitivity of minimal low-water runoff to climate change in Western Kazakhstan. An ensemble of global climate models from the Coupled Model Intercomparison Project Phase 6 (CMIP6), combined with dynamically downscaled projections for Central Asia, was applied to estimate minimal monthly runoff during the summer–autumn and winter low-water periods for the rivers of the Zhaiyk–Caspian water management basin. The analysis covers three future time horizons: 2040 (2031–2050), 2060 (2051–2070), and 2080 (2071–2090), under two greenhouse gas concentration scenarios: SSP3-7.0 (moderately high emissions) and SSP5-8.5 (high emissions). The results reveal a pronounced seasonal contrast in the projected hydrological response. During the winter low-water period, a steady increase in minimal runoff is projected for all rivers, with the most significant changes observed for the Or, Zhem, Temir, and Shagan rivers. This increase is primarily driven by higher winter precipitation, increased thaw frequency, and enhanced infiltration recharge. Conversely, despite modest increases in summer–autumn precipitation, minimal runoff during the summer–autumn low-water period is projected to decline significantly, particularly in the southern basins, due to elevated evapotranspiration rates and soil moisture deficits associated with rising air temperatures. These findings emphasize the importance of developing seasonally differentiated, climate-resilient water management strategies to mitigate low-flow risks and ensure water security under future climate conditions in arid and semi-arid regions. Full article
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24 pages, 1232 KiB  
Article
Characterization and Valuation of the Ecosystem Services of the Coastal Cantabrian Holm Oak Forest in Spain: The Example of the Urdaibai Biosphere Reserve (Bizkaia, Basque Country)
by Cristina Díaz Sanz, Pedro José Lozano Valencia and Carlos Sánchez-García
Land 2025, 14(8), 1655; https://doi.org/10.3390/land14081655 - 15 Aug 2025
Abstract
Holm oak groves of Quercus ilex subsp. ilex are one of the most characteristic environmental elements of the Cantabrian strip of the Iberian Peninsula. The Cantabrian holm oak forest does not have a clear origin. There is a possibility that it has a [...] Read more.
Holm oak groves of Quercus ilex subsp. ilex are one of the most characteristic environmental elements of the Cantabrian strip of the Iberian Peninsula. The Cantabrian holm oak forest does not have a clear origin. There is a possibility that it has a relict character, and it could also respond more to human activity over the last 10,000 years. Nowadays, it is a rare, scarce, and finicultural forest in this demarcation, but it provides many ecosystem services. To carry out a comparative analysis and assessment of its potential as Green Infrastructure and of its coastal facies (Urdaibai, Bizkaia), 10 random and stratified inventories were carried out. These plots were monitored regularly for more than 2 years and in seasonal visits to avoid phenological bias. The resulting synthetic syninventories were then assessed according to the LANBIOEVA (Landscape Biogeographical Evaluation) Methodology, which has been applied for more than 35 years in different ecosystems and landscapes at a global scale. Scores for various parameters related to ecosystem services are of high conservation interest, and the cultural services are medium to high. Concerning conservation priority, the low records of the three threat parameters result in mean values that are in the first quartile for this parameter, which attests to a good level of conservation. The conclusion is clear: the Biosphere Reserve status has had a positive influence on the proper management and conservation of the Cantabrian holm oak forest and its associated ecosystem services. However, certain threats that still weigh on this ecosystem need to be addressed. Full article
(This article belongs to the Special Issue Land Use, Heritage and Ecosystem Services)
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