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18 pages, 600 KB  
Article
Digital Transformation of Vocational Schools in Switzerland: The Importance of Innovative School Management Behavior
by Andreas Harder and Stephan Schumann
Educ. Sci. 2025, 15(9), 1099; https://doi.org/10.3390/educsci15091099 (registering DOI) - 25 Aug 2025
Abstract
Due to their close connection to the working world, digital transformation is particularly important for vocational schools. To ensure the sustainable integration of digital media into everyday school life, a holistic school improvement approach is necessary. In this context, school leadership plays a [...] Read more.
Due to their close connection to the working world, digital transformation is particularly important for vocational schools. To ensure the sustainable integration of digital media into everyday school life, a holistic school improvement approach is necessary. In this context, school leadership plays a key role as the initiator and driver of relevant development processes. This study first examines the current development state of the digital transformation in vocational schools in Switzerland. Building on this, it investigates whether there are relations between the digital status quo and innovative school leadership practices. The data were collected in spring 2023 and the sample consists of 320 school management members from 135 vocational schools. The findings indicate that the digital development status of vocational schools in Switzerland is generally assessed positively. Based on the assessments of their schools’ digital development status, three distinct profiles of school management members emerge: those perceiving their schools as digitally advanced, digitally average, or having digital development potential. Innovative leadership practices are more common among school management members who perceive their schools as more digitally advanced. The study also reveals differences between language regions and financial resources depending on the stage of digitalization-related development. The results highlight the crucial role of school leadership in promoting digital transformation. Finally, education policy measures—such as language-region-specific support programs—are discussed. Full article
(This article belongs to the Special Issue Dynamic Change: Shaping the Schools of Tomorrow in the Digital Age)
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26 pages, 2959 KB  
Article
A Non-Invasive Gait-Based Screening Approach for Parkinson’s Disease Using Time-Series Analysis
by Hui Chen, Tee Connie, Vincent Wei Sheng Tan, Michael Kah Ong Goh, Nor Izzati Saedon, Ahmad Al-Khatib and Mahmoud Farfoura
Symmetry 2025, 17(9), 1385; https://doi.org/10.3390/sym17091385 (registering DOI) - 25 Aug 2025
Abstract
Parkinson’s disease (PD) is a progressive neurodegenerative disorder that severely impacts motor function, necessitating early detection for effective management. However, current diagnostic methods are expensive and resource-intensive, limiting their accessibility. This study proposes a non-invasive, gait-based screening approach for PD using time-series analysis [...] Read more.
Parkinson’s disease (PD) is a progressive neurodegenerative disorder that severely impacts motor function, necessitating early detection for effective management. However, current diagnostic methods are expensive and resource-intensive, limiting their accessibility. This study proposes a non-invasive, gait-based screening approach for PD using time-series analysis of video-derived motion data. Gait patterns indicative of PD are analyzed using videos containing walking sequences of PD subjects. The video data are processed via computer vision and human pose estimation techniques to extract key body points. Classification is performed using K-Nearest Neighbors (KNN) and Long Short-Term Memory (LSTM) networks in conjunction with time-series techniques, including Dynamic Time Warping (DTW), Bag of Patterns (BoP), and Symbolic Aggregate Approximation (SAX). KNN classifies based on similarity measures derived from these methods, while LSTM captures complex temporal dependencies. Additionally, Shapelet-based Classification is independently explored for its ability to serve as a self-contained classifier by extracting discriminative motion patterns. On a self-collected dataset (43 instances: 8 PD and 35 healthy), DTW-based classification achieved 88.89% accuracy for both KNN and LSTM. On an external dataset (294 instances: 150 healthy and 144 PD with varying severity), KNN and LSTM achieved 71.19% and 57.63% accuracy, respectively. The proposed approach enhances PD detection through a cost-effective, non-invasive methodology, supporting early diagnosis and disease monitoring. By integrating machine learning with clinical insights, this study demonstrates the potential of AI-driven solutions in advancing PD screening and management. Full article
(This article belongs to the Special Issue Symmetry/Asymmetry in Image Processing and Computer Vision)
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31 pages, 13101 KB  
Article
Strategic Risk Spillovers from Rare Earth Markets to Critical Industrial Sectors
by Oana Panazan and Catalin Gheorghe
Int. J. Financial Stud. 2025, 13(3), 156; https://doi.org/10.3390/ijfs13030156 (registering DOI) - 25 Aug 2025
Abstract
This study investigates the nonlinear, regime-dependent, and frequency-specific interdependencies between rare earth element (REE) markets and key global critical sectors, including artificial intelligence, semiconductors, clean energy, defense, and advanced manufacturing, under varying levels of geopolitical and financial uncertainty. The main objective is to [...] Read more.
This study investigates the nonlinear, regime-dependent, and frequency-specific interdependencies between rare earth element (REE) markets and key global critical sectors, including artificial intelligence, semiconductors, clean energy, defense, and advanced manufacturing, under varying levels of geopolitical and financial uncertainty. The main objective is to assess how REE markets transmit and absorb systemic risks across these critical domains. Using a mixed-methods approach combining Quantile-on-Quantile Regression (QQR), Continuous Wavelet Transform (CWT), and Wavelet Transform Coherence (WTC), we examine the dynamic connections between two REE proxies, SOLLIT (Solactive Rare Earth Elements Total Return) and MVREMXTR (MVIS Global Rare Earth Metals Total Return), and major sectoral indices based on a dataset of daily observations from 2018 to 2025. Our results reveal strong evidence of asymmetric, regime-specific risk transmission, with REE markets acting as systemic amplifiers during periods of extreme uncertainty and as sensitive receptors under moderate or localized geopolitical stress. High co-volatility and persistent low-frequency coherence with critical sectors, especially defense, technology, and clean energy, indicate deeply embedded structural linkages and a heightened potential for cross-sectoral contagion. These findings confirm the systemic relevance of REEs and underscore the importance of integrating critical resource exposure into global supply chain risk strategies, sector-specific stress testing, and national security frameworks. This study offers relevant insights for policymakers, risk managers, and institutional investors aiming to anticipate disruptions and strengthen resilience in critical industries. Full article
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11 pages, 650 KB  
Article
Efficient and Low-Cost Modular Polynomial Multiplier for WSN Security
by Fariha Haroon and Hua Li
J. Sens. Actuator Netw. 2025, 14(5), 86; https://doi.org/10.3390/jsan14050086 - 25 Aug 2025
Abstract
Wireless Sensor Network (WSN) technology has constrained computing resources that require efficient and low-cost cryptographic hardware to provide security services, particularly when dealing with large modular polynomial multiplication in cryptography. In this paper, a cost-efficient reconfigurable Karatsuba modular polynomial multiplier is proposed for [...] Read more.
Wireless Sensor Network (WSN) technology has constrained computing resources that require efficient and low-cost cryptographic hardware to provide security services, particularly when dealing with large modular polynomial multiplication in cryptography. In this paper, a cost-efficient reconfigurable Karatsuba modular polynomial multiplier is proposed for general modulus polynomials. The modulus polynomial can be changed easily depending on the application. The proposed modular polynomial multiplier is synthesized and simulated by the AMD Vivado Design Tool. The design’s performance on ADP (Area Delay Product) has been improved compared to previous designs. It can be applied in ECC encryption to speed up the security services in WSN. Full article
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17 pages, 1027 KB  
Article
Agri-Food E-Marketplaces as New Business Models for Smallholders: A Case Analysis in Spain
by José Manuel García-Gallego, Antonio Chamorro-Mera, Víctor Valero-Amaro, Marta Martínez-Jiménez, Pilar Romero, María Teresa Miranda and Sergio Rubio
Agriculture 2025, 15(17), 1806; https://doi.org/10.3390/agriculture15171806 - 24 Aug 2025
Abstract
This paper presents the SMALLDERS project, a European initiative aimed at transforming smallholders’ business models through an innovative technological platform. The platform functions as an e-marketplace that connects small farmers directly with consumers while simultaneously promoting environmental sustainability and collaboration across the agri-food [...] Read more.
This paper presents the SMALLDERS project, a European initiative aimed at transforming smallholders’ business models through an innovative technological platform. The platform functions as an e-marketplace that connects small farmers directly with consumers while simultaneously promoting environmental sustainability and collaboration across the agri-food value chain. The study evaluates the platform’s commercial viability and acceptance through a mixed-methods approach, incorporating qualitative and quantitative data. Research methods include focus group sessions, interviews with key stakeholders—such as transport companies, large distributors, and public administrations—and a consumer survey assessing intentions and attitudes toward the e-marketplace. Results indicate limited overall consumer readiness to adopt the platform; however, 48.6% of respondents expressed willingness to use it provided competitive prices and personal benefits are assured. Smallholders regard e-commerce as a promising opportunity, yet they face significant barriers, including limited resources, low digital literacy, and logistical constraints. Stakeholders generally view the platform positively, emphasizing that its success depends on achieving a critical mass of business volume. To foster adoption, SMALLDERS proposes three business models for smallholders: sustainable, cooperative, and technological. The platform includes a user-friendly feature to assist smallholders in transitioning among these models, complemented by training and support services designed to encourage more resilient and innovative agricultural practices. Full article
(This article belongs to the Special Issue Strategies for Resilient and Sustainable Agri-Food Systems)
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38 pages, 4783 KB  
Article
Sparse-MoE-SAM: A Lightweight Framework Integrating MoE and SAM with a Sparse Attention Mechanism for Plant Disease Segmentation in Resource-Constrained Environments
by Benhan Zhao, Xilin Kang, Hao Zhou, Ziyang Shi, Lin Li, Guoxiong Zhou, Fangying Wan, Jiangzhang Zhu, Yongming Yan, Leheng Li and Yulong Wu
Plants 2025, 14(17), 2634; https://doi.org/10.3390/plants14172634 - 24 Aug 2025
Abstract
Plant disease segmentation has achieved significant progress with the help of artificial intelligence. However, deploying high-accuracy segmentation models in resource-limited settings faces three key challenges, as follows: (A) Traditional dense attention mechanisms incur quadratic computational complexity growth (O(n2d)), rendering [...] Read more.
Plant disease segmentation has achieved significant progress with the help of artificial intelligence. However, deploying high-accuracy segmentation models in resource-limited settings faces three key challenges, as follows: (A) Traditional dense attention mechanisms incur quadratic computational complexity growth (O(n2d)), rendering them ill-suited for low-power hardware. (B) Naturally sparse spatial distributions and large-scale variations in the lesions on leaves necessitate models that concurrently capture long-range dependencies and local details. (C) Complex backgrounds and variable lighting in field images often induce segmentation errors. To address these challenges, we propose Sparse-MoE-SAM, an efficient framework based on an enhanced Segment Anything Model (SAM). This deep learning framework integrates sparse attention mechanisms with a two-stage mixture of experts (MoE) decoder. The sparse attention dynamically activates key channels aligned with lesion sparsity patterns, reducing self-attention complexity while preserving long-range context. Stage 1 of the MoE decoder performs coarse-grained boundary localization; Stage 2 achieves fine-grained segmentation by leveraging specialized experts within the MoE, significantly enhancing edge discrimination accuracy. The expert repository—comprising standard convolutions, dilated convolutions, and depthwise separable convolutions—dynamically routes features through optimized processing paths based on input texture and lesion morphology. This enables robust segmentation across diverse leaf textures and plant developmental stages. Further, we design a sparse attention-enhanced Atrous Spatial Pyramid Pooling (ASPP) module to capture multi-scale contexts for both extensive lesions and small spots. Evaluations on three heterogeneous datasets (PlantVillage Extended, CVPPP, and our self-collected field images) show that Sparse-MoE-SAM achieves a mean Intersection-over-Union (mIoU) of 94.2%—surpassing standard SAM by 2.5 percentage points—while reducing computational costs by 23.7% compared to the original SAM baseline. The model also demonstrates balanced performance across disease classes and enhanced hardware compatibility. Our work validates that integrating sparse attention with MoE mechanisms sustains accuracy while drastically lowering computational demands, enabling the scalable deployment of plant disease segmentation models on mobile and edge devices. Full article
(This article belongs to the Special Issue Advances in Artificial Intelligence for Plant Research)
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28 pages, 1342 KB  
Article
Neighborhood Conditions in a New Destination Context and Latine Youth’s Ethnic–Racial Identity: What’s Gender Got to Do with It?
by Olivia C. Goldstein, Dawn P. Witherspoon and Mayra Y. Bámaca
Behav. Sci. 2025, 15(9), 1148; https://doi.org/10.3390/bs15091148 - 23 Aug 2025
Viewed by 55
Abstract
This exploratory pilot study examined how Latine adolescents’ ethnic–racial identity (ERI)—specifically, centrality, private regard, and public regard—was shaped by parents’ gender role socialization (GRS) beliefs and perceptions of neighborhood connectedness and problems. Sixty Latine parent–adolescent dyads living in a Northeastern new destination context [...] Read more.
This exploratory pilot study examined how Latine adolescents’ ethnic–racial identity (ERI)—specifically, centrality, private regard, and public regard—was shaped by parents’ gender role socialization (GRS) beliefs and perceptions of neighborhood connectedness and problems. Sixty Latine parent–adolescent dyads living in a Northeastern new destination context participated. Hierarchical regression models were used to test whether GRS beliefs moderated the effects of neighborhood on adolescents’ ERI. Traditional GRS beliefs moderated associations between neighborhood problems and ERI dimensions, such that adolescents whose parents endorsed stronger traditional GRS beliefs reported lower ERI centrality, private regard, and public regard in neighborhoods with more problems. These associations were not significant for neighborhood connectedness and did not differ by child gender. Findings suggest that parent beliefs about gender may shape identity development in environments perceived as risky or under-resourced. The context-dependent nature of socialization and the adaptive nature of parenting processes in emerging Latine communities are discussed. Full article
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28 pages, 14406 KB  
Article
Development and Engineering Evaluation of Interlocking Hollow Blocks Made of Recycled Plastic for Mortar-Free Housing
by Shehryar Ahmed and Majid Ali
Buildings 2025, 15(17), 2996; https://doi.org/10.3390/buildings15172996 - 23 Aug 2025
Viewed by 320
Abstract
The construction industry is the biggest consumer of raw materials, and there is growing pressure for this industry to reduce its environmental footprint through the adoption of sustainable solutions. Waste plastic in a recycled form can be used to produce valuable products that [...] Read more.
The construction industry is the biggest consumer of raw materials, and there is growing pressure for this industry to reduce its environmental footprint through the adoption of sustainable solutions. Waste plastic in a recycled form can be used to produce valuable products that can decrease dependence on natural resources. Despite the growing trend of exploring the potential of recycled plastics in construction through composite manufacturing and nonstructural products, to date no scientific data is available about converting waste plastic into recycled plastic to manufacture interlocking hollow blocks (IHBs) for construction. Thus, the current study intended to fill this gap by investigating the dynamic, mechanical, and physicochemical properties of engineered IHBs made out of recycled plastic. Engineered IHBs are able to self-center via controlled tolerance to lateral displacement, which makes their design novel. High-density polyethylene (HDPE) waste was considered due to its anticipated material properties and abundance in daily-use household products. Mechanical recycling coupled with extrusion-based pressurized filling was adopted to manufacture IHBs. Various configurations of IHBs and prism samples were tested for compression and shear strength, and forensic tests were conducted to study the physicochemical changes in the recycled plastic. In addition, to obtain better dynamic properties for energy dissipation, the compressive strength of the IHBs was 30.99 MPa, while the compressive strength of the prisms was 34.23 MPa. These values are far beyond the masonry strength requirements in applicable codes across the globe. In-plane shear strength was greater than out-of-plane shear strength, as anticipated. Microstructure analysis showed fibrous surfaces with good resistance and enclosed unburnt impurities. The extrusion process resulted in the elimination of contaminants and impurities, with limited variation in thermal stability. Overall, the outcomes are favorable for potential use in house construction due to sufficient masonry strength and negligible environmental concerns. Full article
(This article belongs to the Section Building Materials, and Repair & Renovation)
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40 pages, 7084 KB  
Article
Cascading Failure Modeling and Resilience Analysis of Coupled Centralized Supply Chain Networks Under Hybrid Loads
by Ziqiang Zeng, Ning Wang, Dongyu Xu and Rui Chen
Systems 2025, 13(9), 729; https://doi.org/10.3390/systems13090729 - 22 Aug 2025
Viewed by 85
Abstract
As manufacturing and logistics-oriented supply chains continue to expand in scale and complexity, and the coupling between their physical execution layers and information–decision layers deepens, the resulting high interdependence within the system significantly increases overall fragility. Driven by key technological barriers, economies of [...] Read more.
As manufacturing and logistics-oriented supply chains continue to expand in scale and complexity, and the coupling between their physical execution layers and information–decision layers deepens, the resulting high interdependence within the system significantly increases overall fragility. Driven by key technological barriers, economies of scale, and the trend toward resource centralization, supply chains have increasingly evolved into centralized structures, with critical functions such as decision-making highly concentrated in a few focal firms. While this configuration may enhance coordination under normal conditions, it also significantly increases dependency on focal nodes. Once a focal node is disrupted, the intense task, information, and risk loads it carries cannot be effectively dispersed across the network, thereby amplifying load spillovers, coordination imbalances, and information delays, and ultimately triggering large-scale cascading failures. To capture this phenomenon, this study develops a coupled network model comprising a Physical Network and an Information and Decision Risk Network. The Physical Network incorporates a tri-load coordination mechanism that distinguishes among theoretical operational load (capacity), actual production load (production output), and actual delivery load (order fulfillment), using a load sensitivity coefficient to describe the asymmetric propagation among them. The Information and Decision Risk Network is further divided into a communication subnetwork, which represents transmission efficiency and delay, and a decision risk subnetwork, which reflects the diffusion of uncertainty and risk contagion caused by information delays. A discrete-event simulation approach is employed to evaluate system resilience under various failure modes and parametric conditions. The results reveal the following: (1) under a centralized structure, poorly allocated redundancy can worsen local imbalances and amplify disruptions; (2) the failure of a focal firm is more likely to cause a full network collapse; and (3) node failures in the Communication System Network have a greater destabilizing effect than those in the Physical Network. Full article
(This article belongs to the Section Complex Systems and Cybernetics)
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22 pages, 9949 KB  
Article
A DeepAR-Based Modeling Framework for Probabilistic Mid–Long-Term Streamflow Prediction
by Shuai Xie, Dong Wang, Jin Wang, Chunhua Yang, Keyan Shen, Benjun Jia and Hui Cao
Water 2025, 17(17), 2506; https://doi.org/10.3390/w17172506 (registering DOI) - 22 Aug 2025
Viewed by 83
Abstract
Mid–long-term streamflow prediction (MLSP) plays a critical role in water resource planning amid growing hydroclimatic and anthropogenic uncertainties. Although AI-based models have demonstrated strong performance in MLSP, their capacity to quantify predictive uncertainty remains limited. To address this challenge, a DeepAR-based probabilistic modeling [...] Read more.
Mid–long-term streamflow prediction (MLSP) plays a critical role in water resource planning amid growing hydroclimatic and anthropogenic uncertainties. Although AI-based models have demonstrated strong performance in MLSP, their capacity to quantify predictive uncertainty remains limited. To address this challenge, a DeepAR-based probabilistic modeling framework is developed, enabling direct estimation of streamflow distribution parameters and flexible selection of output distributions. The framework is applied to two case studies with distinct hydrological characteristics, where combinations of recurrent model structures (GRU and LSTM) and output distributions (Normal, Student’s t, and Gamma) are systematically evaluated. The results indicate that the choice of output distribution is the most critical factor for predictive performance. The Gamma distribution consistently outperformed those using Normal and Student’s t distributions, due to its ability to better capture the skewed, non-negative nature of streamflow data. Notably, the magnitude of performance gain from using the Gamma distribution is itself region-dependent, proving more significant in the basin with higher streamflow skewness. For instance, in the more skewed Upper Wudongde Reservoir area, the model using LSTM structure and Gamma distribution reduces RMSE by over 27% compared to its Normal-distribution counterpart (from 1407.77 m3/s to 1016.54 m3/s). Furthermore, the Gamma-based models yield superior probabilistic forecasts, achieving not only lower CRPS values but also a more effective balance between high reliability (PICP) and forecast sharpness (MPIW). In contrast, the relative performance between GRU and LSTM architectures was found to be less significant and inconsistent across the different basins. These findings highlight that the DeepAR-based framework delivers consistent enhancement in forecasting accuracy by prioritizing the selection of a physically plausible output distribution, thereby providing stronger and more reliable support for practical applications. Full article
(This article belongs to the Section Hydrology)
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29 pages, 2158 KB  
Article
An Integrated Task Decomposition Framework Considering Knowledge Reuse and Resource Availability for Complex Task Crowdsourcing
by Biyu Yang, Shixin Xie and Longxiao Li
Systems 2025, 13(9), 728; https://doi.org/10.3390/systems13090728 - 22 Aug 2025
Viewed by 173
Abstract
Complex task crowdsourcing (CTC) integrates distributed talent, knowledge, and ideas into innovation via the web; however, task decomposition remains a critical challenge. While existing studies focus primarily on workflow management for specific tasks, they leave a gap in decomposing more complex, creative tasks, [...] Read more.
Complex task crowdsourcing (CTC) integrates distributed talent, knowledge, and ideas into innovation via the web; however, task decomposition remains a critical challenge. While existing studies focus primarily on workflow management for specific tasks, they leave a gap in decomposing more complex, creative tasks, which are characterized by the absence of objective ground truths, nonlinear dependencies, and non-sequential processes. To address this gap, we propose a novel integrated task decomposition framework for CTC that comprises three interconnected components. First, primary decomposition considers knowledge reuse by identifying similar past task decomposition schemes to inform the initial breakdown. Second, modifications to the scheme are guided by work breakdown structure (WBS)-based principles, which also serve as a foundation when no prior knowledge is available. Third, to enhance executability, a task package model is proposed to combine subtasks that share common resources, thereby reducing coordination costs and avoiding waste of workers’ capabilities. To solve this model, we develop an improved non-dominated sorting genetic algorithm (NSGA-II) to generate the final decomposition scheme. A case study from ZBJ.COM validates the feasibility and effectiveness of the proposed framework. Experimental results demonstrate that, compared to baseline algorithms, the improved NSGA-II better balances conflicting objectives and generates non-dominated solution sets with higher diversity and more uniform distribution. Full article
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28 pages, 9622 KB  
Article
Equity Evaluation of Park Green Space Based on SDG11: A Case Study of Jinan City, Shandong Province, China
by Mingxin Sui, Yingjun Sun, Wenxue Meng and Yanshuang Song
Appl. Sci. 2025, 15(17), 9239; https://doi.org/10.3390/app15179239 - 22 Aug 2025
Viewed by 113
Abstract
Urban spatial justice is a critical issue in the context of rapid urbanization. Improving public well-being depends on the efficient use of park green space (PGS) resources. This study evaluates the spatial distribution equity and social equity of PGS in Jinan City, Shandong [...] Read more.
Urban spatial justice is a critical issue in the context of rapid urbanization. Improving public well-being depends on the efficient use of park green space (PGS) resources. This study evaluates the spatial distribution equity and social equity of PGS in Jinan City, Shandong Province, China, with the aim of optimizing their spatial layout, mitigating poor accessibility due to uneven spatial distribution, and improving the quality of life for all inhabitants. Firstly, based on Sustainable Development Goal 11 (SDG11), we constructed an urban sustainable development index system to quantify residents’ demand levels. The supply level was measured through three dimensions: quantity, quality, and accessibility of PGS utilizing multi-source geospatial data. A coupling coordination degree model (CCDM) was employed to analyze the supply-demand equilibrium. Secondly, Lorenz curves and Gini coefficients were utilized to evaluate the equity of PGS resource distribution to disadvantaged populations. Finally, a k-means clustering algorithm found the best sites for additional parks in low-accessibility regions. The results show that southern areas—that is; those south of the Yellow River—showed greater supply-demand equilibrium than northern ones. With a Gini index for PGS services aimed at vulnerable populations of 0.35, the citywide social level distribution appeared to be relatively balanced. This paper suggests an evaluation technique to support fair resource allocation, establishing a dual-perspective evaluation framework (spatial and social equality) and giving a scientific basis for PGS planning in Jinan. Full article
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13 pages, 759 KB  
Article
Limits of Sustainability in Archaeological Tourism: An Exercise on the United Arab Emirates
by Adriaan De Man
Tour. Hosp. 2025, 6(4), 160; https://doi.org/10.3390/tourhosp6040160 - 22 Aug 2025
Viewed by 188
Abstract
The economic resources of the United Arab Emirates (UAE) follow a national diversification strategy that aims at sustainable growth. In this scenario, archaeological tourism plays a significant role in affirming cultural heritage but remains dependent on variables that are difficult to manipulate. This [...] Read more.
The economic resources of the United Arab Emirates (UAE) follow a national diversification strategy that aims at sustainable growth. In this scenario, archaeological tourism plays a significant role in affirming cultural heritage but remains dependent on variables that are difficult to manipulate. This paper examines not only the opportunities but also the structural constraints of developing archaeology-based tourism propositions in a rapidly growing and highly competitive economy. The UAE counts on multiple sites, all of which face a combination of challenges to sustainable development. These comprise commercial tensions, environmental and infrastructural concerns, perspectives on authenticity, as well as global socioeconomic pressure. Such constraints are analyzed by tapping into the existing literature and recommendations for policymakers are offered in order to balance heritage conservation with economic growth. The findings emphasize the need for prioritizing community engagement and favoring sustainable representations of Emirati archaeology. Full article
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28 pages, 3746 KB  
Article
BERNN: A Transformer-BiLSTM Hybrid Model for Cross-Domain Short Text Classification in Agricultural Expert Systems
by Xueyong Li, Menghao Zhang, Xiaojuan Guo, Jiaxin Zhang, Jiaxia Sun, Xianqin Yun, Liyuan Zheng, Wenyue Zhao, Lican Li and Haohao Zhang
Symmetry 2025, 17(9), 1374; https://doi.org/10.3390/sym17091374 - 22 Aug 2025
Viewed by 235
Abstract
With the advancement of artificial intelligence, Agricultural Expert Systems (AESs) show great potential in enhancing agricultural management efficiency and resource utilization. Accurate extraction of semantic features from agricultural short texts is fundamental to enabling key functions such as intelligent question answering, semantic retrieval, [...] Read more.
With the advancement of artificial intelligence, Agricultural Expert Systems (AESs) show great potential in enhancing agricultural management efficiency and resource utilization. Accurate extraction of semantic features from agricultural short texts is fundamental to enabling key functions such as intelligent question answering, semantic retrieval, and decision support. However, existing single-structure deep neural networks struggle to capture the hierarchical linguistic patterns and contextual dependencies inherent in domain-specific texts. To address this limitation, we propose a hybrid deep learning model—Bidirectional Encoder Recurrent Neural Network (BERNN)—which combines a domain-specific pre-trained Transformer encoder (AgQsBERT) with a Bidirectional Long Short-Term Memory (BiLSTM) network. AgQsBERT generates contextualized word embeddings by leveraging domain-specific pretraining, effectively capturing the semantics of agricultural terminology. These embeddings are then passed to the BiLSTM, which models sequential dependencies in both directions, enhancing the model’s understanding of contextual flow and word disambiguation. Importantly, the bidirectional nature of the BiLSTM introduces a form of architectural symmetry, allowing the model to process input in both forward and backward directions. This symmetric design enables balanced context modeling, which improves the understanding of fragmented and ambiguous phrases frequently encountered in agricultural texts. The synergy between semantic abstraction from AgQsBERT and symmetric contextual modeling from BiLSTM significantly enhances the expressiveness and generalizability of the model. Evaluated on a self-constructed agricultural question dataset with 110,647 annotated samples, BERNN achieved a classification accuracy of 97.19%, surpassing the baseline by 3.2%. Cross-domain validation on the Tsinghua News dataset further demonstrates its robust generalization capability. This architecture provides a powerful foundation for intelligent agricultural question-answering systems, semantic retrieval, and decision support within smart agriculture applications. Full article
(This article belongs to the Section Computer)
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21 pages, 19879 KB  
Article
Nonlinear Relationships Between Economic Development Stages and Land Use Efficiency in China’s Cities
by Xue Luo, Weixin Luan, Qiaoqiao Lin, Zun Liu, Zhipeng Shi and Gai Cao
Land 2025, 14(9), 1699; https://doi.org/10.3390/land14091699 - 22 Aug 2025
Viewed by 202
Abstract
Land use efficiency (LUE) serves as a crucial nexus between economic development and sustainable resource management, directly influencing urban production–consumption systems. While economic development stages (EDSs) reflect a region’s environmental carrying capacity and profoundly affect LUE, the specific mechanisms governing this relationship remain [...] Read more.
Land use efficiency (LUE) serves as a crucial nexus between economic development and sustainable resource management, directly influencing urban production–consumption systems. While economic development stages (EDSs) reflect a region’s environmental carrying capacity and profoundly affect LUE, the specific mechanisms governing this relationship remain unclear. In this study, we combined multi-source data to portray the spatiotemporal patterns of EDSs and LUE in 276 Chinese cities from 1995 to 2020, and we identified the nonlinear effects of EDSs on LUE. Based on the fine-scale LUE, it is confirmed that the older the age of urban land generation, the higher the LUE, laying a theoretical foundation for subsequent research. Simultaneously, the EDS continues to be upgraded, with approximately 70% of cities reaching the post-industrialization stage or higher by 2020. The results of partial dependency plots (PDPs) revealed that the EDS has a positive impact on LUE. From the perspective of different urban scales, the higher the EDSs of supercities, type I large cities, type II large cities, and type II small cities, the greater the positive impact on LUE, whereas the impact patterns at other urban scales follow an inverted U-shape. These findings carry important implications for sustainable spatial development, particularly in optimizing land resource allocation to assist the shift to more efficient production systems and responsible consumption patterns. Full article
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