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25 pages, 18896 KB  
Article
Radio Frequency Interference Suppression for High-Frequency Ocean Remote Sensing Radar with Inter-Pulse Phase Agility Waveform
by Heng Zhou, Xiongbin Wu, Liang Yu, Fuqi Mo and Xiaoyan Li
Sensors 2026, 26(8), 2350; https://doi.org/10.3390/s26082350 - 10 Apr 2026
Viewed by 3
Abstract
The inversion of wind and wave parameters in high-frequency ocean remote sensing radar relies heavily on the sea echo Doppler power spectrum. However, the accuracy of parameter inversion is often compromised by radio frequency interference (RFI), which distorts the Doppler spectral power distribution. [...] Read more.
The inversion of wind and wave parameters in high-frequency ocean remote sensing radar relies heavily on the sea echo Doppler power spectrum. However, the accuracy of parameter inversion is often compromised by radio frequency interference (RFI), which distorts the Doppler spectral power distribution. Existing RFI suppression algorithms primarily focus on enhancing the signal-to-interference-plus-noise ratio post-mitigation, while insufficient attention has been paid to the spectral power fluctuations induced by these suppression processes. To address this issue, this study proposes a narrowband RFI suppression scheme that combines inter-pulse phase agility (IPA) with orthogonal projection (OP). An optimized aperiodic sequence is used to modulate the inter-pulse phases of the transmitted waveform, thus uniformly dispersing the sea echo power across the entire Doppler spectrum. Spatial OP is then applied to suppress RFI stripes on the range-Doppler spectrum, a process in which only the sea echo samples masked by the RFI stripes are affected. Finally, phase compensation restores the sea echo coherence and disperses residual RFI power uniformly into the Doppler domain, minimizing its localized impact. Simulations and semi-synthetic tests involving real-world interference verify that the proposed scheme effectively suppresses RFI while alleviating spectral distortion in the sea-echo Doppler spectrum. Full article
(This article belongs to the Section Radar Sensors)
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27 pages, 18886 KB  
Article
A Pre-Disaster Deployment and Post-Disaster Restoration Method Considering Coupled Failures of Power Distribution and Communication Networks
by Wenlong Qin, Xuming Chen, He Jiang, Sifan Qian, Kewei Xu, Peng He, Xian Meng, Le Liu and Xiaoning Kang
Electronics 2026, 15(8), 1585; https://doi.org/10.3390/electronics15081585 - 10 Apr 2026
Viewed by 30
Abstract
Extreme natural disasters may simultaneously disrupt power distribution infrastructures and their supporting communication systems, significantly degrading post-disaster recovery performance. To enhance coordinated restoration under such coupled failure conditions, this study proposes a unified optimization framework for pre-disaster deployment and post-disaster repair and service [...] Read more.
Extreme natural disasters may simultaneously disrupt power distribution infrastructures and their supporting communication systems, significantly degrading post-disaster recovery performance. To enhance coordinated restoration under such coupled failure conditions, this study proposes a unified optimization framework for pre-disaster deployment and post-disaster repair and service restoration in interdependent distribution–communication networks. First, an interdependency model is developed to characterize the physical and operational couplings between the distribution and communication networks. The impacts of communication outages on remotely controlled switches and repair crew dispatching are quantitatively analyzed, revealing how communication failures influence the restoration process. Based on this interdependency representation, a coordinated optimization model is established to jointly determine repair crew routing, mobile power allocation, and critical load restoration sequencing. The objective is to minimize cumulative outage losses over the recovery horizon, thereby achieving coordinated allocation and routing of multiple types of emergency repair resources. Furthermore, by jointly considering pre-disaster deployment planning and post-disaster restoration strategies, a two-stage emergency recovery framework is designed to integrate pre-event preparedness with post-event response for distribution networks. Case studies on a modified IEEE 33-bus cyber–physical distribution system demonstrate that the proposed coordinated restoration strategy restores approximately 50% of critical loads within the first 3 h, which is of direct significance for maintaining essential services such as hospitals and emergency shelters during the acute phase of a disaster. The proposed approach reduces the total load loss by 49.5% and shortens the restoration time by 120 min. In terms of pre-disaster deployment, the proposed strategy reduces average load shedding by 33.4% and 46.5% relative to the heuristic and random deployment strategies, respectively, demonstrating the effectiveness of proposed method for grid resilience enhancement. Full article
23 pages, 20258 KB  
Article
Mining Scene Classification and Semantic Segmentation Using 3D Convolutional Neural Networks
by André Estevam Costa Oliveira, Matheus Corrêa Domingos, Valdivino Alexandre de Santiago Júnior and Maria Isabel Sobral Escada
Remote Sens. 2026, 18(8), 1112; https://doi.org/10.3390/rs18081112 - 8 Apr 2026
Viewed by 164
Abstract
High spatio-temporal resolution satellite imagery has become increasingly accessible thanks to advancements in the aerospace industry which, combined with a growing computational power, has enabled the spring of novel techniques regarding recognition in remote sensing (RS) images. However, there is still a lack [...] Read more.
High spatio-temporal resolution satellite imagery has become increasingly accessible thanks to advancements in the aerospace industry which, combined with a growing computational power, has enabled the spring of novel techniques regarding recognition in remote sensing (RS) images. However, there is still a lack of studies around 3D convolutions for spatio-temporal data applied to classification problems in RS. Hence, this study investigates the feasibility of 3D convolutional neural networks (3DCNNs) within a spatio-temporal perspective for scene classification and semantic segmentation in RS images, focusing on the identification of mining sites. We firstly developed a dataset covering several parts of Brazil based on MapBiomas products and Planet imagery, then we evaluated the effectiveness of 3DCNNs in capturing temporal information from a sequence of monthly captured images. Moreover, not only for scene classification but also for semantic segmentation, we compared 3D and 2D approaches. As for scene classification, a 3DCNN was better than the corresponding 2D model, while a 2D U-Net was better than a U-Net3D for semantic segmentation. The main explanation for this lies in the fact that a less costly annotation and training time strategy was adopted, but this may have harmed spatio-temporal approaches for semantic segmentation but not for scene classification. However, U-Net3D presented the highest Precision of all models, meaning that it is highly accurate when it predicts a positive. Moreover, 3DCNN (U-Net3D) presented significantly better performance with respect to semantic segmentation compared to other spatio-temporal approaches like ConvLSTM+U-Net and TempCNN. Sensitivity analysis revealed that the near-infrared (NIR) band played a decisive role in distinguishing mining areas, emphasizing its importance in highlighting subtle spectral variations associated with land-cover disturbances. Full article
(This article belongs to the Section Environmental Remote Sensing)
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25 pages, 2327 KB  
Article
Joint Beamforming for Integrated Satellite–Terrestrial ISAC Systems
by Tengyu Wang and Qian Wang
Sensors 2026, 26(7), 2273; https://doi.org/10.3390/s26072273 - 7 Apr 2026
Viewed by 209
Abstract
Satellite–terrestrial integrated networks provide seamless global coverage, especially in remote areas where terrestrial deployment is costly. Integrated sensing and communications (ISAC) enhances spectral efficiency by merging both functions on a single platform. This paper proposes a novel integrated satellite–terrestrial ISAC architecture, where a [...] Read more.
Satellite–terrestrial integrated networks provide seamless global coverage, especially in remote areas where terrestrial deployment is costly. Integrated sensing and communications (ISAC) enhances spectral efficiency by merging both functions on a single platform. This paper proposes a novel integrated satellite–terrestrial ISAC architecture, where a satellite performs simultaneous communication and sensing. The satellite transmits communication signals and sensing waveforms to an Earth Station, which then relays them to a terrestrial base station to serve multiple users. We formulate a joint beamforming design problem to maximize the sum rate of users under quality-of-service constraints, backhaul capacity limits, beampattern requirements for sensing, and power budgets. With perfect channel state information, the non-convex problem is transformed into a difference-of-convex form and solved via the convex–concave procedure. For imperfect channel state information, a robust method combining successive convex approximation and the S-procedure is developed. Simulations show the proposed design outperforms benchmarks and is suitable for low-Earth orbit satellite systems. Full article
(This article belongs to the Special Issue New Technologies in Wireless Communication System)
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21 pages, 4245 KB  
Article
Integrated Wind Energy Potential Assessment Based on Multi-Satellite Remote Sensing: A Case Study of Hainan Island and Its Climate Linkage
by Chen Chen, Jin Sha and Xiao-Ming Li
Remote Sens. 2026, 18(7), 1089; https://doi.org/10.3390/rs18071089 - 4 Apr 2026
Viewed by 347
Abstract
In the context of the global transition from fossil fuels to renewable energy, offshore wind power has emerged as a critical resource and gained increasing attention, requiring accurate assessments of coastal wind energy potential. This study presents an integrated suitability evaluation framework for [...] Read more.
In the context of the global transition from fossil fuels to renewable energy, offshore wind power has emerged as a critical resource and gained increasing attention, requiring accurate assessments of coastal wind energy potential. This study presents an integrated suitability evaluation framework for offshore wind energy around Hainan Island, utilizing multi-satellite remote-sensing observations. A fused wind product was generated by applying the optimal interpolation (OI) algorithm to scatterometer data and was subsequently used to construct a wind farm suitability index (WFSI). The results classify the coastal waters of Hainan Island into three suitability tiers, with the most favorable zones located along the west coast and near the Qiongzhou Strait, collocating with 62.5% of documented wind farm projects. Further analysis on a decadal-long comparative experiment reveals a clear linkage between local wind energy potential and the El Niño-Southern Oscillation (ENSO) cycle that causes wind resources and high-suitability areas to contract during El Niño and expand during La Niña. These findings provide a refined natural source baseline for Hainan Island, clarify regional responses to climate variability, and offer a transferable remote-sensing framework for coastal wind energy assessments in similar maritime regions. Full article
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13 pages, 2084 KB  
Article
Telehealth-Delivered Dietary Counseling in Myeloproliferative Neoplasms: A Randomized Feasibility Study
by Angela Fleischman, Jiarui Li, Asmaa Tabban, Shuwei Cai and Andrew Odegaard
Nutrients 2026, 18(7), 1158; https://doi.org/10.3390/nu18071158 - 4 Apr 2026
Viewed by 285
Abstract
Background/Objectives: Patients with myeloproliferative neoplasms (MPNs) experience chronic inflammation, elevated cardiovascular risk, and substantial symptom burden. Dietary patterns with anti-inflammatory and cardioprotective effects may represent a modifiable strategy to address these overlapping risks, yet dietary intervention has not been systematically studied in MPN. [...] Read more.
Background/Objectives: Patients with myeloproliferative neoplasms (MPNs) experience chronic inflammation, elevated cardiovascular risk, and substantial symptom burden. Dietary patterns with anti-inflammatory and cardioprotective effects may represent a modifiable strategy to address these overlapping risks, yet dietary intervention has not been systematically studied in MPN. We evaluated the feasibility, engagement, and preliminary clinical signals of a fully remote dietary counseling intervention in adults with MPN. Methods: In this single-center, randomized, open-label pilot study, 28 adults with polycythemia vera, essential thrombocythemia, or primary myelofibrosis were randomized 1:1 to Mediterranean (MED) or Dietary Approaches to Stop Hypertension (DASH) dietary counseling over 10 weeks. The protocol included a 2-week baseline run-in period, 10-week active intervention with four telehealth dietitian visits, and 4-week postintervention follow-up. Prespecified feasibility endpoints were the completion of dietitian visits, daily MPN Symptom Assessment Form Total Symptom Score (MPN-SAF TSS) surveys, Mediterranean Diet Adherence Screener (MEDAS) questionnaires, and Automated Self-Administered 24-Hour Dietary Recall (ASA24) assessments. Exploratory endpoints included the change in Healthy Eating Index 2015 (HEI-2015) and symptom burden. Results: Twenty-seven participants provided data and were analyzed (14 MED, 13 DASH). Dietitian visit attendance was 96% (MED) and 85% (DASH). Daily symptom survey completion averaged 93% (MED) and 58% (DASH). MEDAS completion was 81% (MED) and 51% (DASH); ASA24 completion was 55% (MED) and 38% (DASH). HEI-2015 increased from 55 to 63 in MED during active intervention. At week 12, 23% of MED and 13% of DASH participants achieved ≥50% TSS reduction. Symptom reductions were observed across multiple domains. Conclusions: A fully remote dietary intervention is feasible in adults with MPN, with strong engagement in the Mediterranean arm. These findings support adequately powered trials incorporating biomarker endpoints to evaluate dietary modification as a strategy for inflammation-driven symptoms and cardiovascular risk in MPN. Full article
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20 pages, 1583 KB  
Article
Performance and Detectability Analysis of Resident Space Objects Using an S-Band Bi-Static Radar with the Sardinia Radio Telescope as Receiver
by Luca Schirru
Remote Sens. 2026, 18(7), 1083; https://doi.org/10.3390/rs18071083 - 3 Apr 2026
Viewed by 265
Abstract
The continuous growth of the population of Resident Space Objects (RSOs) poses increasing challenges for Space Situational Awareness (SSA), particularly in terms of detection capability and collision risk mitigation. Ground-based radar systems represent a primary class of remote sensing instruments for RSO observation; [...] Read more.
The continuous growth of the population of Resident Space Objects (RSOs) poses increasing challenges for Space Situational Awareness (SSA), particularly in terms of detection capability and collision risk mitigation. Ground-based radar systems represent a primary class of remote sensing instruments for RSO observation; however, their deployment is often constrained by cost and infrastructure requirements. In this context, the reuse of existing large radio astronomy facilities as radar receivers offers an innovative and potentially cost-effective alternative. This paper presents a fully model-based feasibility study of S-band bi-static radar observations of RSOs using the Sardinia Radio Telescope (SRT) as a high-sensitivity ground-based receiver. The analysis is entirely analytical and is conducted in the absence of experimental radar measurements. A bi-static radar equation framework is adopted to evaluate received signal power and the resulting signal-to-noise ratio (SNR) as functions of target size, range, and observation geometry. The model explicitly incorporates thermal noise, integration time and target dynamics, radio-frequency interference (RFI), atmospheric and environmental clutter contributions, and the realistic antenna radiation pattern of the SRT through a Gaussian beam approximation. Detection thresholds, maximum observable ranges, and performance envelopes are derived for representative RSO dimensions, and the impact of off-boresight reception on detectability is quantified. The results define the operational conditions under which RSOs may be detected in an S-band bi-static configuration and demonstrate the potential of the SRT as a non-conventional ground-based instrument for space object observation, supporting future developments in SSA and space debris monitoring strategies. Full article
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17 pages, 2592 KB  
Technical Note
SpecResNet: Hyperspectral Image Compression via Hybrid Residual Learning and Spectral Calibration
by Fahad Saeed, Shumin Liu and Jie Chen
Remote Sens. 2026, 18(7), 1074; https://doi.org/10.3390/rs18071074 - 3 Apr 2026
Viewed by 265
Abstract
Hyperspectral imaging provides rich spatial–spectral information but generates huge data volumes, posing significant challenges for storage, transmission, and real-time processing in remote sensing applications. In this study, we propose SpecResNet, a 3D autoencoder-based model for hyperspectral image compression. This framework introduces hybrid residual [...] Read more.
Hyperspectral imaging provides rich spatial–spectral information but generates huge data volumes, posing significant challenges for storage, transmission, and real-time processing in remote sensing applications. In this study, we propose SpecResNet, a 3D autoencoder-based model for hyperspectral image compression. This framework introduces hybrid residual blocks for preserving representational power and a spectral calibration (SC) block to enhance spectral fidelity. It also uses Squeeze-and-Excitation (SE) blocks for adaptive feature recalibration. Our model obtains different compression operating points by varying model capacity, with bitrate emerging implicitly from the learned latent representations. Experiments on several benchmark datasets show that SpecResNet surpasses the performance of existing frameworks on most datasets in terms of PSNR, MS-SSIM, and SAM, demonstrating its strong potential. Our results suggest that SpecResNet offers a promising trade-off for efficient hyperspectral image compression, with potential for further refinement in complex scenes. Full article
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71 pages, 2175 KB  
Systematic Review
Applying Artificial Intelligence (AI) Innovative Tools for Ecological Research and Monitoring of Transitional Water Ecosystems: A Systematic Review
by Armando Cazzetta, Francesco Zangaro, Francesca Marcucci, Olumide Temitope Julius, Marco Rainò, Mahallelah Shauer, Roberto Massaro, Teodoro Semeraro, Alberto Basset and Maurizio Pinna
Environments 2026, 13(4), 193; https://doi.org/10.3390/environments13040193 - 1 Apr 2026
Viewed by 811
Abstract
Transitional water ecosystems exhibit pronounced spatio-temporal variability and increasing anthropogenic pressures, posing substantial challenges for ecological monitoring and management. Artificial Intelligence (AI), particularly Machine Learning (ML) and Deep Learning (DL), has emerged as a powerful framework for addressing the structural complexity of these [...] Read more.
Transitional water ecosystems exhibit pronounced spatio-temporal variability and increasing anthropogenic pressures, posing substantial challenges for ecological monitoring and management. Artificial Intelligence (AI), particularly Machine Learning (ML) and Deep Learning (DL), has emerged as a powerful framework for addressing the structural complexity of these systems. This systematic review synthesizes peer-reviewed studies applying ML and DL to ecological research and monitoring in transitional waters. A structured search of the Scopus® database was conducted up to 31 December 2024, and studies were screened according to predefined eligibility criteria and PRISMA 2020 guidance; methodological quality was appraised using a structured assessment framework. Ninety-six studies met the inclusion criteria. Regression was the most frequent analytical task (44.1%), followed by classification (36.2%) and clustering (19.7%), with water quality monitoring representing the dominant thematic domain. Tree-based and kernel-based ML models prevailed overall, whereas DL architectures increased markedly after 2020, particularly in remote sensing and high-dimensional applications. Despite methodological heterogeneity and variable validation practices, the evidence indicates that ML and DL approaches effectively accommodate non-linearity, data heterogeneity, and scale mismatches typical of transitional waters. Standardized validation strategies and improved model interpretability remain essential for robust ecological inference and operational implementation. Full article
(This article belongs to the Collection Trends and Innovations in Environmental Impact Assessment)
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16 pages, 3658 KB  
Article
Runoff and Sediment Flux on the North Coast of KwaZulu-Natal: Counter-Acting Beach Erosion from Rising Seas?
by Mark R. Jury
Coasts 2026, 6(2), 13; https://doi.org/10.3390/coasts6020013 - 1 Apr 2026
Viewed by 294
Abstract
A remote analysis of coastal sedimentation in northern KwaZulu-Natal (KZN), South Africa, describes how summer runoff and winter wave-action operate within a highly variable climate. Despite rising sea levels, the sediment flux can sustain beaches under certain conditions. Daily satellite red-band reflectivity and [...] Read more.
A remote analysis of coastal sedimentation in northern KwaZulu-Natal (KZN), South Africa, describes how summer runoff and winter wave-action operate within a highly variable climate. Despite rising sea levels, the sediment flux can sustain beaches under certain conditions. Daily satellite red-band reflectivity and ocean–atmosphere reanalysis datasets were studied over the period of 2018–2025. Statistical results indicate that streamflow discharges are spread northward by oblique wave-driven currents. Sediment concentrations peak during late winter (>1 mg/L, May–October) when deep turbulent mixing (>40 m) mobilizes sand from the seabed. A case study from September 2021 revealed that ridging high-pressure/cut-off low weather patterns can simultaneously increase streamflow, wave energy, and wind power, creating a surf-zone sediment conveyor along the coast of northern KZN. Long-term climate diagnostics from 1981 to 2025 reveal upward trends in coastal runoff, vegetation, and turbidity (0.29 σ/yr) that point to an increasingly vigorous water cycle. The warming of the southeast Atlantic intensifies the sub-tropical upper-level westerlies and late winter storms over southeast Africa. These processes occur in 5–8 year cycles and drive shoreline advance and retreat, from accretion ~1 T/m and storm surge inundations up to 5.5 m. Using Digital Earth, it was noted that ~1/4 of beaches around Africa are gaining sediment while ~1/3 are eroding. Although remote information could not close the sediment budget, realistic estimates of long-shore transport in the surf-zone (>104 kg/yr/m) and on the beach (>103 kg/yr/m) were calculated. These provide an emerging explanation for the resilience of northern KZN beaches, as sea levels rise at a rate of 0.6 cm/yr. Full article
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48 pages, 652 KB  
Review
Artificial Intelligence in Cardiovascular Medicine: A Giant Step in Personalized Medicine?
by Stanislovas S. Jankauskas, Fahimeh Varzideh, Urna Kansakar and Gaetano Santulli
J. Pers. Med. 2026, 16(4), 192; https://doi.org/10.3390/jpm16040192 - 1 Apr 2026
Viewed by 625
Abstract
Artificial intelligence (AI) is rapidly reshaping cardiovascular (CV) medicine, driving a paradigm shift toward truly personalized and data-driven care. This comprehensive review examines the conceptual foundations, clinical applications, and future implications of AI across the CV continuum, spanning prevention, diagnosis, risk stratification, and [...] Read more.
Artificial intelligence (AI) is rapidly reshaping cardiovascular (CV) medicine, driving a paradigm shift toward truly personalized and data-driven care. This comprehensive review examines the conceptual foundations, clinical applications, and future implications of AI across the CV continuum, spanning prevention, diagnosis, risk stratification, and therapy. Core AI methodologies (including machine learning, deep learning, natural language processing, and computer vision) are discussed in the context of cardiology’s uniquely data-rich environment, encompassing imaging, electrocardiography, electronic health records, wearable devices, and multi-omics data. This systematic review highlights major clinical domains where AI has demonstrated a substantial impact, including CV imaging, ECG interpretation, hypertension and heart failure management, coronary artery disease, acute coronary syndromes, interventional cardiology, and cardiac surgery. AI-driven predictive analytics enable early detection of subclinical disease, improved prognostication, and individualized prevention strategies, while wearable technologies and remote monitoring platforms facilitate continuous, real-world patient surveillance. Emerging applications in pharmacotherapy, drug repurposing, and genomics further reinforce AI’s role in advancing precision cardiology. Equally emphasized are the ethical, legal, and social challenges accompanying AI adoption, such as algorithmic bias, data privacy, cybersecurity, interpretability, and regulatory oversight. Our review underscores the necessity of rigorous clinical validation, transparent model design, and seamless integration into clinical workflows to ensure safety, equity, and physician trust. Ultimately, AI is best positioned as an augmentative tool that complements (but does not replace!) clinical expertise. By fostering hybrid intelligence that integrates human judgment with computational power, AI has the potential to redefine CV care delivery, improve outcomes, and support a more proactive, patient-centered healthcare model. Full article
(This article belongs to the Special Issue Personalized Medicine in Cardiovascular and Metabolic Diseases)
28 pages, 2119 KB  
Article
‘Now There Is Somebody I Can Go to, Although It’s an AI’: Evaluating Acceptance and Use of Obruche, a Pilot Chatbot to Prevent Power Asymmetries in Cross-Border Journalism Teams
by Ruona Meyer
Journal. Media 2026, 7(2), 75; https://doi.org/10.3390/journalmedia7020075 - 31 Mar 2026
Viewed by 444
Abstract
This exploratory study examines how journalists in/coordinating investigations use a chatbot designed to reduce power asymmetries during remote work. Twelve freelancers across Africa, Europe, and India tested Obruche, a chatbot advisor covering risk mitigation, pay equality, tension de-escalation, and intellectual property protection. Drawing [...] Read more.
This exploratory study examines how journalists in/coordinating investigations use a chatbot designed to reduce power asymmetries during remote work. Twelve freelancers across Africa, Europe, and India tested Obruche, a chatbot advisor covering risk mitigation, pay equality, tension de-escalation, and intellectual property protection. Drawing on the Unified Theory of Acceptance and Use of Technology, semi-structured interviews were coded for Performance Expectancy, Effort Expectancy, Facilitating Conditions, and Social Influence. Results show journalists gravitate towards chatbots that are cognisant of their location-specific challenges and able to provide information that facilitates access to media outlets or peers for future collaborations. Next-best-action responses that expanded user queries or offered role-play scenarios also left journalists feeling supported, less lonely, and not judged. However, the chatbot’s female persona, scepticism of artificial intelligence, and chatbot novelty may reduce user acceptance. Obruche’s potential areas of intervention are linked to eight types of organisational power. The chatbot mainly assisted journalists to confront or rebalance Control of Knowledge and Information, and Control of Scarce Resources, aiding users’ Ability to Cope with Uncertainty. This research contributes to recent qualitative studies on journalists’ well-being by demonstrating how chatbots can mitigate power imbalances between dispersed teams of journalists. The benefits and concerns presented may inform future designs of similar team-mediation chatbots. Full article
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30 pages, 21910 KB  
Article
A New Feature Set for Texture-Based Classification of Remotely Sensed Images in a Quantum Framework
by Archana G. Pai, Koushikey Chhapariya, Krishna M. Buddhiraju and Surya S. Durbha
J. Imaging 2026, 12(4), 149; https://doi.org/10.3390/jimaging12040149 - 30 Mar 2026
Viewed by 368
Abstract
Texture feature extraction plays a crucial role in land-use and land-cover (LULC) classification for the remotely sensed images. However, when these images are quantized to a limited number of gray levels to reduce data volume or noise, conventional texture descriptors often lose discriminative [...] Read more.
Texture feature extraction plays a crucial role in land-use and land-cover (LULC) classification for the remotely sensed images. However, when these images are quantized to a limited number of gray levels to reduce data volume or noise, conventional texture descriptors often lose discriminative power. This study investigates singular values of the gray-level co-occurrence matrix (GLCM) as novel texture features for image classification, with local binary pattern (LBP), complete LBP (CLBP) statistics, and original GLCM features proposed by Haralick et al. for comparison. Under coarse quantization, texture descriptors of LBP and its variants, which encode micro-texture, lose detail, whereas GLCM, which encodes macro-texture, retains structural co-occurrence patterns. This study thus proposes a new feature set, namely the Singular Values of the gray-level co-occurrence matrix (SVGM), for texture discrimination. Experimental analysis indicates SVGM achieves higher class separability by preserving dominant spatial structure while suppressing noise and redundancy. Quantitative evaluation using classical SVMs with multiple kernels, quantum learning models with different kernels, and neural baselines (ANN and 1D-CNN) further shows that SVGM consistently improves classification performance. Within our tested models, quantum kernel SVMs are competitive and achieve the best results on some datasets, while classical models perform best on others. Full article
(This article belongs to the Section Image and Video Processing)
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23 pages, 1818 KB  
Article
Design and Performance Evaluation of a Hybrid Renewable Energy System Integrating Wind, Diesel Generators, and Battery Storage for Remote Communities
by Samira Salari, Amin Etminan and Mohsin Jamil
Energies 2026, 19(7), 1676; https://doi.org/10.3390/en19071676 - 29 Mar 2026
Viewed by 345
Abstract
Climate change poses an urgent challenge to Canada’s sustainable development. The country experiences increasing extreme weather events, rising temperatures, and pressures on energy systems—particularly in remote northern regions. In Newfoundland and Labrador, isolated communities are vulnerable because reliance on diesel-based electricity increases greenhouse [...] Read more.
Climate change poses an urgent challenge to Canada’s sustainable development. The country experiences increasing extreme weather events, rising temperatures, and pressures on energy systems—particularly in remote northern regions. In Newfoundland and Labrador, isolated communities are vulnerable because reliance on diesel-based electricity increases greenhouse gas emissions, energy costs, and environmental risks, highlighting the need for resilient energy solutions. This study uses a systematic methodology combining literature review, local energy demand data, and site-specific wind resources to design and optimize hybrid renewable energy systems (HRESs) for Makkovik. It employs HOMER Pro and the Monte Carlo method to evaluate uncertainties in cost, fuel consumption, and renewable fraction. The objectives are to quantify how renewable integration can reduce emissions, improve energy reliability, and support sustainable development in remote communities. The novelty lies in combining location-specific modeling with probabilistic Monte Carlo analysis and providing robust, system-level insights into environmental and economic outcomes while guiding climate-resilient energy planning. The proposed HRES significantly mitigates climate change impacts, reducing annual CO2 emissions from 72,500 kg/year to 15,190 kg/year. Monte Carlo analysis indicates economic feasibility with a net present cost of $14.5 million, a levelized cost of electricity of 0.256 $/kWh, and diesel consumption reduced from 29,970 L/year to 5854 L/year. Wind energy provides 99.6% of total annual electricity, ensuring a high renewable fraction and reliable power, enhancing energy resilience and adaptation potential. This study demonstrates that a well-designed hybrid renewable energy system can deliver measurable emission reductions, economic feasibility, and enhanced energy resilience. It supports sustainable development and climate change mitigation in remote Canadian communities. Full article
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28 pages, 18007 KB  
Article
Revitalizing Water Storage Capacity: Remote Sensing and Optimization-Based Design for a New Dam
by Ömer Genç, Latif Onur Uğur, Rıfat Akbıyıklı, Beytullah Bozali and Volkan Ateş
Sustainability 2026, 18(7), 3312; https://doi.org/10.3390/su18073312 - 29 Mar 2026
Viewed by 320
Abstract
Most of the dam structures around the world are approaching the end of their economic life of 50 to 70 years, especially due to sediment accumulation in reservoir areas. This situation necessitates the development of proactive infrastructure management strategies. This study presents an [...] Read more.
Most of the dam structures around the world are approaching the end of their economic life of 50 to 70 years, especially due to sediment accumulation in reservoir areas. This situation necessitates the development of proactive infrastructure management strategies. This study presents an original framework for the process of renewal of aging dams that blends remote sensing techniques and meta-intuitive optimization methods. Within the scope of the study, the Hasanlar Dam located in Düzce was selected as a sample, and a new dam axis was determined in the upper part of the basin. A detailed volume–height curve was created using 12.5 m resolution ALOS PALSAR numerical height models (DEM) and GIS-based spatial data curation to calculate the reservoir storage capacity in precise increments of 2 m. To maximize the structural efficiency of the proposed “New Hasanlar Dam”, the cross-sectional area has been minimized through seven current algorithms such as Genetic Algorithm (GA), Arithmetic Optimization Algorithm (AOA), Gray Wolf Optimizer (GWO), Dragonfly Algorithm (DA), Particle Swarm Optimization (PSO), Crayfish Optimization Algorithm (CAO), and Cheetah Optimizer (CO). The findings obtained prove that the PSO and CAOs achieved a significant reduction in cross-sectional area by 29.36% and successfully approached the global optimum. The replacement of the 55.5 million m3 capacity of the existing Hasanlar Dam with a new structure with a height of 78 m will guarantee sustainability and structural safety in water management. As a result, this study reveals that the integration of high-resolution remote sensing data and advanced heuristic methods is a cost-effective and powerful tool in the strategic renovation of aging hydraulic infrastructures. Full article
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