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Search Results (475)

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21 pages, 1190 KiB  
Article
Intergenerational Differences in the Perception of the Assumptions of Individual Organizational Management Models in the Context of Sustainable Development
by Inessa Sytnik, Eryk Franke and Artem Stopochkin
Sustainability 2025, 17(15), 6776; https://doi.org/10.3390/su17156776 - 25 Jul 2025
Viewed by 232
Abstract
The concept of sustainable development requires a more human-centered approach to management. Frederic Laloux’s organizational management models—green and teal organizations—offer a response to this challenge. Generational cohorts currently active in the labor market (Baby Boomers, Generation X, Generation Y, and Generation Z) differ [...] Read more.
The concept of sustainable development requires a more human-centered approach to management. Frederic Laloux’s organizational management models—green and teal organizations—offer a response to this challenge. Generational cohorts currently active in the labor market (Baby Boomers, Generation X, Generation Y, and Generation Z) differ in values, beliefs, and preferences, which may influence their acceptance of various organizational management models. This study aimed to examine how representatives of these generations perceive organizational management styles in the context of sustainable development. A qualitative study was conducted using a questionnaire completed by 263 respondents. The survey focused on teal, green, orange, amber, and red organizational models, and the results were analyzed statistically. The analysis showed that respondents’ work experiences with specific organizational management models are not dependent on generational affiliation. The highest levels of acceptance were observed for models aligned with sustainable development—green and teal organizations. Acceptance of these models is higher among younger generations, with the teal organizational model showing a statistically significant generational dependency. As Generation Z enters the labor market, some traditional management practices are becoming obsolete. The green organizational model demonstrates strong potential for current labor market conditions, while the teal organizational model shows high future implementation potential. The forecast suggests that acceptance of the teal organizational model among Generation Alpha may exceed 90%. Full article
(This article belongs to the Section Sustainable Management)
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23 pages, 476 KiB  
Article
Predictors of Sustainable Student Mobility in a Suburban Setting
by Nataša Kovačić and Hrvoje Grofelnik
Sustainability 2025, 17(15), 6726; https://doi.org/10.3390/su17156726 - 24 Jul 2025
Viewed by 261
Abstract
Analyses of student mobility are typically conducted in an urban environment and are informed by socio-demographic or trip attributes. The prevailing focus is on individual modes of transport, different groups of commuters travelling to campus, students’ behavioural perceptions, and the totality of student [...] Read more.
Analyses of student mobility are typically conducted in an urban environment and are informed by socio-demographic or trip attributes. The prevailing focus is on individual modes of transport, different groups of commuters travelling to campus, students’ behavioural perceptions, and the totality of student trips. This paper starts with the identification of the determinants of student mobility that have received insufficient research attention. Utilising surveys, the study captures the mobility patterns of a sample of 1014 students and calculates their carbon footprint (CF; in kg/academic year) to assess whether the factors neglected in previous studies influence differences in the actual environmental load of student commuting. A regression analysis is employed to ascertain the significance of these factors as predictors of sustainable student mobility. This study exclusively focuses on the group of student commuters to campus and analyses the trips associated with compulsory activities at a suburban campus that is distant from the university centre and student facilities, which changes the mobility context in terms of commuting options. The under-researched factors identified in this research have not yet been quantified as CF. The findings confirm that only some of the factors neglected in previous research are statistically significant predictors of the local environmental load of student mobility. Specifically, variables such as student employment, frequency of class attendance, and propensity for ride-sharing could be utilised to forecast and regulate students’ mobility towards more sustainable patterns. However, all of the under-researched factors (including household size, region of origin (i.e., past experiences), residing at term-time accommodation while studying, and the availability of a family car) have an influence on the differences in CF magnitude in the studied campus. Full article
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30 pages, 6733 KiB  
Article
Forecasting Electric Vehicle Charging Demand in Smart Cities Using Hybrid Deep Learning of Regional Spatial Behaviours
by Muhammed Cavus, Huseyin Ayan, Dilum Dissanayake, Anurag Sharma, Sanchari Deb and Margaret Bell
Energies 2025, 18(13), 3425; https://doi.org/10.3390/en18133425 - 29 Jun 2025
Viewed by 390
Abstract
This study presents a novel predictive framework for estimating electric vehicle (EV) charging demand in smart cities, contributing to the advancement of data-driven infrastructure planning through behavioural and spatial data analysis. Motivated by the accelerating regional demand accompanying EV adoption, this work introduces [...] Read more.
This study presents a novel predictive framework for estimating electric vehicle (EV) charging demand in smart cities, contributing to the advancement of data-driven infrastructure planning through behavioural and spatial data analysis. Motivated by the accelerating regional demand accompanying EV adoption, this work introduces HCB-Net: a hybrid deep learning model that combines Convolutional Neural Networks (CNNs) for spatial feature extraction with Extreme Gradient Boosting (XGBoost) for robust regression. The framework is trained on user-level survey data from two demographically distinct UK regions, the West Midlands and the North East, incorporating user demographics, commute distance, charging frequency, and home/public charging preferences. HCB-Net achieved superior predictive performance, with a Root Mean Squared Error (RMSE) of 0.1490 and an R2 score of 0.3996. Compared to the best-performing traditional model (Linear Regression, R2=0.3520), HCB-Net improved predictive accuracy by 13.5% in terms of R2, and outperformed other deep learning models such as LSTM (R2=0.3756) and GRU (R2=0.6276), which failed to capture spatial patterns effectively. The hybrid model also reduced RMSE by approximately 23% compared to the standalone CNN (RMSE = 0.1666). While the moderate R2 indicates scope for further refinement, these results demonstrate that meaningful and interpretable demand forecasts can be generated from survey-based behavioural data, even in the absence of high-resolution temporal inputs. The model contributes a lightweight and scalable forecasting tool suitable for early-stage smart city planning in contexts where telemetry data are limited, thereby advancing the practical capabilities of EV infrastructure forecasting. Full article
(This article belongs to the Special Issue Sustainable and Low Carbon Development in the Energy Sector)
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14 pages, 877 KiB  
Article
No Learner Left Behind: How Medical Students’ Background Characteristics and Psychomotor/Visual–Spatial Abilities Correspond to Aptitude in Learning How to Perform Clinical Ultrasounds
by Samuel Ayala, Eric R. Abrams, Lawrence A. Melniker, Laura D. Melville and Gerardo C. Chiricolo
Emerg. Care Med. 2025, 2(3), 31; https://doi.org/10.3390/ecm2030031 - 25 Jun 2025
Viewed by 236
Abstract
Background/Objectives: The goal of educators is to leave no learner behind. Ultrasounds require dexterity and 3D image interpretation. They are technologically complex, and current medical residency programs lack a reliable means of assessing this ability among their trainees. This prompts consideration as to [...] Read more.
Background/Objectives: The goal of educators is to leave no learner behind. Ultrasounds require dexterity and 3D image interpretation. They are technologically complex, and current medical residency programs lack a reliable means of assessing this ability among their trainees. This prompts consideration as to whether background characteristics or certain pre-existing skills can serve as indicators of learning aptitude for ultrasounds. The objective of this study was to determine whether these characteristics and skills are indicative of learning aptitude for ultrasounds. Methods: This prospective study was conducted with third-year medical students rotating in emergency medicine at the New York Presbyterian Brooklyn Methodist Hospital, Brooklyn, NY, USA. First, students were given a pre-test survey to assess their background characteristics. Subsequently, a psychomotor task (Purdue Pegboard) and visual–spatial task (Revised Purdue Spatial Visualization Tests) were administered to the students. Lastly, an ultrasound task was given to identify the subxiphoid cardiac view. A rubric assessed ability, and proficiency was determined as a 75% or higher score in the ultrasound task. Results: In total, 97 students were tested. An analysis of variance (ANOVA) was used to ascertain if any background characteristics from the pre-test survey was associated with the ultrasound task score. The student’s use of cadavers to learn anatomy had the most correlation (p-value of 0.02). Assessing the psychomotor and visual–spatial tasks, linear regressions were used against the ultrasound task scores. Correspondingly, the p-values were 0.007 and 0.008. Conclusions: Ultrasound ability is based on hand–eye coordination and spatial relationships. Increased aptitude in these abilities may forecast future success in this skill. Those who may need more assistance can have their training tailored to them and further support offered. Full article
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18 pages, 2452 KiB  
Article
Exploring the Habitat Distribution of Decapterus macarellus in the South China Sea Under Varying Spatial Resolutions: A Combined Approach Using Multiple Machine Learning and the MaxEnt Model
by Qikun Shen, Peng Zhang, Xue Feng, Zuozhi Chen and Jiangtao Fan
Biology 2025, 14(7), 753; https://doi.org/10.3390/biology14070753 - 24 Jun 2025
Viewed by 368
Abstract
The selection of environmental variables with different spatial resolutions is a critical factor affecting the accuracy of machine learning-based fishery forecasting. In this study, spring-season survey data of Decapterus macarellus in the South China Sea from 2016 to 2024 were used to construct [...] Read more.
The selection of environmental variables with different spatial resolutions is a critical factor affecting the accuracy of machine learning-based fishery forecasting. In this study, spring-season survey data of Decapterus macarellus in the South China Sea from 2016 to 2024 were used to construct six machine learning models—decision tree (DT), extra trees (ETs), K-Nearest Neighbors (KNN), light gradient boosting machine (LGBM), random forest (RF), and extreme gradient boosting (XGB)—based on seven environmental variables (e.g., sea surface temperature (SST), chlorophyll-a concentration (CHL)) at four spatial resolutions (0.083°, 0.25°, 0.5°, and 1°), filtered using Pearson correlation analysis. Optimal models were selected under each resolution through performance comparison. SHapley Additive exPlanations (SHAP) values were employed to interpret the contribution of environmental predictors, and the maximum entropy (MaxEnt) model was used to perform habitat suitability mapping. Results showed that the XGB model at 0.083° resolution achieved the best performance, with the area under the receiver operating characteristic curve (ROC_AUC) = 0.836, accuracy = 0.793, and negative predictive value = 0.862, outperforming models at coarser resolutions. CHL was identified as the most influential variable, showing high importance in both the SHAP distribution and the cumulative area under the curve contribution. Predicted suitable habitats were mainly located in the northern and central-southern South China Sea, with the latter covering a broader area. This study is the first to systematically evaluate the impact of spatial resolution on environmental variable selection in machine learning models, integrating SHAP-based interpretability with MaxEnt modeling to achieve reliable habitat suitability prediction, offering valuable insights for fishery forecasting in the South China Sea. Full article
(This article belongs to the Section Marine Biology)
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16 pages, 3885 KiB  
Article
Predictability and Impact of Structural Reinforcement on Unplanned Dilution in Sublevel Stoping Operations
by Thaís Janine Oliveira and Anna Luiza Marques Ayres da Silva
Resources 2025, 14(7), 104; https://doi.org/10.3390/resources14070104 - 24 Jun 2025
Viewed by 601
Abstract
Unplanned dilution is a critical challenge in underground mining, directly affecting operating costs, resource recovery, stope stability and operational safety. This study presents an empirical–statistical framework that integrates the Mathews–Potvin stability graph, the Equivalent Linear Overbreak/Slough (ELOS) metric, and a site-specific linear calibration [...] Read more.
Unplanned dilution is a critical challenge in underground mining, directly affecting operating costs, resource recovery, stope stability and operational safety. This study presents an empirical–statistical framework that integrates the Mathews–Potvin stability graph, the Equivalent Linear Overbreak/Slough (ELOS) metric, and a site-specific linear calibration to improve dilution prediction in sublevel stoping operations. A database of more than 65 stopes from a Brazilian underground zinc mine was analyzed and classified as cable-bolted, non-cable-bolted, or self-supported. Planned dilution derived from the Potvin graph was compared with actual ELOS measured by cavity-monitoring surveys. Results show a strong correlation between cable-bolted/supported stopes (r = 0.918), whereas non-cabled/unsupported and self-supported stopes display lower correlations (r = 0.755 and 0.767). Applying a site-specific linear calibration lowered the mean absolute dilution error from 0.126 m to 0.101 m (≈20%), with the largest improvement (≈29%) occurring in self-supported stopes where the unadjusted graph is least reliable. Because the equation can be embedded in routine stability calculations, mines can obtain more realistic forecasts without abandoning established empirical workflows. Beyond geotechnical accuracy, the calibrated forecasts improve grade-control decisions, reduce unnecessary waste haulage, and extend resource life—thereby enhancing both the efficiency and the accessibility of mineral resources. This research delivers the first Brazilian case study that couples Potvin analysis with ELOS back-analysis to generate an operational calibration tool, offering a practical pathway for other sites to refine dilution estimates while retaining the simplicity of empirical design. Full article
(This article belongs to the Special Issue Mineral Resource Management 2025: Assessment, Mining and Processing)
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16 pages, 1456 KiB  
Article
Informing Disaster Recovery Through Predictive Relocation Modeling
by Chao He and Da Hu
Computers 2025, 14(6), 240; https://doi.org/10.3390/computers14060240 - 19 Jun 2025
Viewed by 335
Abstract
Housing recovery represents a critical component of disaster recovery, and accurately forecasting household relocation decisions is essential for guiding effective post-disaster reconstruction policies. This study explores the use of machine learning algorithms to improve the prediction of household relocation in the aftermath of [...] Read more.
Housing recovery represents a critical component of disaster recovery, and accurately forecasting household relocation decisions is essential for guiding effective post-disaster reconstruction policies. This study explores the use of machine learning algorithms to improve the prediction of household relocation in the aftermath of disasters. Leveraging data from 1304 completed interviews conducted as part of the Displaced New Orleans Residents Survey (DNORS) following Hurricane Katrina, we evaluate the performance of Logistic Regression (LR), Random Forest (RF), and Weighted Support Vector Machine (WSVM) models. Results indicate that WSVM significantly outperforms LR and RF, particularly in identifying the minority class of relocated households, achieving the highest F1 score. Key predictors of relocation include homeownership, extent of housing damage, and race. By integrating variable importance rankings and partial dependence plots, the study also enhances interpretability of machine learning outputs. These findings underscore the value of advanced predictive models in disaster recovery planning, particularly in geographically vulnerable regions like New Orleans where accurate relocation forecasting can guide more effective policy interventions. Full article
(This article belongs to the Special Issue Machine Learning and Statistical Learning with Applications 2025)
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22 pages, 2278 KiB  
Article
Quantifying the Impact of Climate Change on Household Water Use in Mega Cities: A Case Study of Beijing, China
by Yubo Zhang, Yongnan Zhu, Haihong Li, Lichuan Wang, Longlong Zhang, Haokai Ding and Hao Wang
Sustainability 2025, 17(12), 5628; https://doi.org/10.3390/su17125628 - 18 Jun 2025
Viewed by 399
Abstract
Amid rapid urbanization and climate change, global urban water consumption, particularly household water use, has continuously increased in recent years. However, the impact of climate change on individual and household water use behavior remains insufficiently understood. In this study, we conducted tracking surveys [...] Read more.
Amid rapid urbanization and climate change, global urban water consumption, particularly household water use, has continuously increased in recent years. However, the impact of climate change on individual and household water use behavior remains insufficiently understood. In this study, we conducted tracking surveys in Beijing, China, to determine the correlation between climatic factors (e.g., temperature, precipitation, and wind) and household water use behaviors and consumption patterns. Furthermore, we proposed a genetic programming-based algorithm to identify and quantify key meteorological factors influencing household and personal water use. The results demonstrated that water use is mainly affected by temperature, particularly the daily maximum (TASMAX) and minimum (TASMIN) near-surface air temperature. In addition, showering and personal cleaning account for the largest proportion of water use and are most affected by meteorological factors. For every 10 °C increase in TASMAX, showering water use nonlinearly increases by 3.46 L/d/person and total water use nonmonotonically increases by 1.14 L/d/person. When TASMIN varies between −10 °C and 0 °C, a significant change in personal cleaning water use is observed. We further employed shared socioeconomic pathway scenarios of the Coupled Model Intercomparison Project 6 to forecast household water use. The results showed that residential water use in Beijing will increase by 21–33% by 2035 compared with 2020. This study offers a groundbreaking perspective and transferable methodology for understanding the effects of climate change on household water use behavior, providing empirical foundations for developing sustainable water resource management strategies. Full article
(This article belongs to the Special Issue Hydrosystems Engineering and Water Resource Management)
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27 pages, 2926 KiB  
Article
Research on Resilience Evaluation and Prediction of Urban Ecosystems in Plateau and Mountainous Area: Case Study of Kunming City
by Hui Li, Fucheng Liang, Jiaheng Du, Yang Liu, Junzhi Wang, Qing Xu, Liang Tang, Xinran Zhou, Han Sheng, Yueying Chen, Kaiyan Liu, Yuqing Li, Yanming Chen and Mengran Li
Sustainability 2025, 17(12), 5515; https://doi.org/10.3390/su17125515 - 15 Jun 2025
Viewed by 608
Abstract
In the face of increasingly complex urban challenges, a critical question arises: can urban ecosystems maintain resilience, vitality, and sustainability when confronted with external threats and pressures? Taking Kunming—a plateau-mountainous city in China—as a case study, this research constructs an urban ecosystem resilience [...] Read more.
In the face of increasingly complex urban challenges, a critical question arises: can urban ecosystems maintain resilience, vitality, and sustainability when confronted with external threats and pressures? Taking Kunming—a plateau-mountainous city in China—as a case study, this research constructs an urban ecosystem resilience (UER) assessment model based on the DPSIR (Driving forces, Pressures, States, Impacts, and Responses) framework. A total of 25 indicators were selected via questionnaire surveys, covering five dimensions: driving forces such as natural population growth, annual GDP growth, urbanization level, urban population density, and resident consumption price growth; pressures including per capita farmland, per capita urban construction land, land reclamation and cultivation rate, proportion of natural disaster-stricken areas, and unit GDP energy consumption; states measured by Evenness Index (EI), Shannon Diversity Index (SHDI), Aggregation Index (AI), Interspersion and Juxtaposition Index (IJI), Landscape Shape Index (LSI), and Normalized Vegetation Index (NDVI); impacts involving per capita GDP, economic density, per capita disposable income growth, per capita green space area, and per capita water resources; and responses including proportion of natural reserve areas, proportion of environmental protection investment to GDP, overall utilization of industrial solid waste, and afforestation area. Based on remote sensing and other data, indicator values were calculated for 2006, 2011, and 2016. The entire-array polygon indicator method was used to visualize indicator interactions and derive composite resilience index values, all of which remained below 0.25—indicating a persistent low-resilience state, marked by sustained economic growth, frequent natural disasters, and declining ecological self-recovery capacity. Forecasting results suggest that, under current development trajectories, Kunming’s UER will remain low over the next decade. This study is the first to integrate the DPSIR framework, entire-array polygon indicator method, and Grey System Forecasting Model into the evaluation and prediction of urban ecosystem resilience in plateau-mountainous cities. The findings highlight the ecosystem’s inherent capacities for self-organization, adaptation, learning, and innovation and reveal its nested, multi-scalar resilience structure. The DPSIR-based framework not only reflects the complex human–nature interactions in urban systems but also identifies key drivers and enables the prediction of future resilience patterns—providing valuable insights for sustainable urban development. Full article
(This article belongs to the Special Issue Sustainable and Resilient Regional Development: A Spatial Perspective)
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19 pages, 1546 KiB  
Article
Model for Determining Parking Demand Using Simulation-Based Pricing
by Hrvoje Pavlek, Marko Slavulj, Božidar Ivanković and Luka Vidan
Appl. Sci. 2025, 15(12), 6603; https://doi.org/10.3390/app15126603 - 12 Jun 2025
Viewed by 444
Abstract
Urban traffic management faces significant challenges in balancing parking supply with user demand. This study introduces a novel parking demand model that integrates simulation-based pricing with elasticity functions derived from revealed preference data, segmented across predefined user categories, such as short-term visitors (e.g., [...] Read more.
Urban traffic management faces significant challenges in balancing parking supply with user demand. This study introduces a novel parking demand model that integrates simulation-based pricing with elasticity functions derived from revealed preference data, segmented across predefined user categories, such as short-term visitors (e.g., shoppers) and monthly subscribers (e.g., commuters). Unlike previous models, this approach does not rely on survey-based inputs and explicitly accounts for both natural and chaotic demand behaviors, thereby improving forecasting accuracy under oversaturated conditions. The model supports sustainable parking management by optimizing space availability, while simultaneously increasing occupancy and enhancing revenue generation. Full article
(This article belongs to the Special Issue Sustainable Urban Mobility)
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6 pages, 185 KiB  
Proceeding Paper
Analysis of Severity of Losses and Wastes in Taiwan’s Agri-Food Supply Chain Using Best–Worst Method and Multi-Criteria Decision-Making
by Wen-Hua Yang, Yi-Chang Chen and Ya-Jhu Yang
Eng. Proc. 2025, 98(1), 8; https://doi.org/10.3390/engproc2025098008 - 9 Jun 2025
Viewed by 481
Abstract
Food loss and waste are critical challenges in Taiwan’s agri-food supply chain, deteriorating security and resource efficiency. By employing the best–worst method (BWM), a multi-criteria decision-making model was developed in this study to evaluate the severity of losses and wastes. Combining literature review [...] Read more.
Food loss and waste are critical challenges in Taiwan’s agri-food supply chain, deteriorating security and resource efficiency. By employing the best–worst method (BWM), a multi-criteria decision-making model was developed in this study to evaluate the severity of losses and wastes. Combining literature review results with expert survey analysis results, key loss points, and mitigation strategies were identified to enhance sustainability and efficiency in Taiwan’s agricultural food system. Among the seven stages of the agricultural food supply chain, supermarket waste (16.95%) was identified as the severest, followed by government policies (16.63%), restaurant waste (15.35%), processing loss (14.71%), production site loss (13.64%), household waste (11.93%), and logistics/storage/distribution loss (10.79%). In the subcategories of each supply chain stage, the eight severe issues were identified as “Inadequate planning and control of overall production and marketing policies” under government policies, “Adverse climate conditions” and “Imbalance in production and marketing” under production site loss, “Inaccurate market demand forecasting” and “Poor inventory management at supermarkets” under supermarket waste, and “Improper storage management of ingredients leading to spoilage” as well as “Inability to accurately forecast demand due to menu diversity” under restaurant waste. The least severe issues included “Poor production techniques” under production site loss. Other minor issues included “Inefficient use of ingredients due to poor cooking skills”, “Festive culture and traditional customs”, and “Suboptimal food labeling design”, all of which contributed to household waste. Based on these findings, we proposed recommendations to mitigate food loss and waste in Taiwan’s agricultural food supply chain from practical, policy, and academic perspectives. The results of this study serve as a reference for relevant organizations and stakeholders. Full article
51 pages, 9787 KiB  
Article
AI-Driven Predictive Maintenance for Workforce and Service Optimization in the Automotive Sector
by Şenda Yıldırım, Ahmet Deniz Yücekaya, Mustafa Hekimoğlu, Meltem Ucal, Mehmet Nafiz Aydin and İrem Kalafat
Appl. Sci. 2025, 15(11), 6282; https://doi.org/10.3390/app15116282 - 3 Jun 2025
Viewed by 1439
Abstract
Vehicle owners often use certified service centers throughout the warranty period, which usually extends for five years after buying. Nonetheless, after this timeframe concludes, a large number of owners turn to unapproved service providers, mainly motivated by financial factors. This change signifies a [...] Read more.
Vehicle owners often use certified service centers throughout the warranty period, which usually extends for five years after buying. Nonetheless, after this timeframe concludes, a large number of owners turn to unapproved service providers, mainly motivated by financial factors. This change signifies a significant drop in income for automakers and their certified service networks. To tackle this issue, manufacturers utilize customer relationship management (CRM) strategies to enhance customer loyalty, usually depending on segmentation methods to pinpoint potential clients. However, conventional approaches frequently do not successfully forecast which clients are most likely to need or utilize maintenance services. This research introduces a machine learning-driven framework aimed at forecasting the probability of monthly maintenance attendance for customers by utilizing an extensive historical dataset that includes information about both customers and vehicles. Additionally, this predictive approach supports workforce planning and scheduling within after-sales service centers, aligning with AI-driven labor optimization frameworks such as those explored in the AI4LABOUR project. Four algorithms in machine learning—Decision Tree, Random Forest, LightGBM (LGBM), and Extreme Gradient Boosting (XGBoost)—were assessed for their forecasting capabilities. Of these, XGBoost showed greater accuracy and reliability in recognizing high-probability customers. In this study, we propose a machine learning framework to predict vehicle maintenance visits for after-sales services, leading to significant operational improvements. Furthermore, the integration of AI-driven workforce allocation strategies, as studied within the AI4LABOUR (reshaping labor force participation with artificial intelligence) project, has contributed to more efficient service personnel deployment, reducing idle time and improving customer experience. By implementing this approach, we achieved a 20% reduction in information delivery times during service operations. Additionally, survey completion times were reduced from 5 min to 4 min per survey, resulting in total time savings of approximately 5906 h by May 2024. The enhanced service appointment scheduling, combined with timely vehicle maintenance, also contributed to reducing potential accident risks. Moreover, the transition from a rule-based maintenance prediction system to a machine learning approach improved efficiency and accuracy. As a result of this transition, individual customer service visit rates increased by 30%, while corporate customer visits rose by 37%. This study contributes to ongoing research on AI-driven workforce planning and service optimization, particularly within the scope of the AI4LABOUR project. Full article
(This article belongs to the Topic Applications of NLP, AI, and ML in Software Engineering)
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19 pages, 3604 KiB  
Article
An AI-Enabled Framework for Cacopsylla chinensis Monitoring and Population Dynamics Prediction
by Ruijun Jing, Deyan Peng, Jingtong Xu, Zhengjie Zhao, Xinyi Yang, Yihai Yu, Liu Yang, Ruiyan Ma and Zhiguo Zhao
Agriculture 2025, 15(11), 1210; https://doi.org/10.3390/agriculture15111210 - 1 Jun 2025
Viewed by 491
Abstract
The issue of pesticide and chemical residue in food has drawn increasing public attention, making effective control of plant pests and diseases a critical research focus in agriculture. Monitoring of pest populations is a key factor constraining the precision of pest management strategies. [...] Read more.
The issue of pesticide and chemical residue in food has drawn increasing public attention, making effective control of plant pests and diseases a critical research focus in agriculture. Monitoring of pest populations is a key factor constraining the precision of pest management strategies. Low-cost and high-efficiency monitoring devices are highly desirable. To address these challenges, we focus on Cacopsylla chinensis and design a portable, AI-based detection device, along with an integrated online monitoring and forecasting system. First, to enhance the model’s capability for detecting small targets, we developed a backbone network based on the RepVit block and its variants. Additionally, we introduced a Dynamic Position Encoder module to improve feature position encoding. To further enhance detection performance, we adopt a Context Guide Fusion Module, which enables context-driven information guidance and adaptive feature adjustment. Second, a framework facilitates the development of an online monitoring system centered on Cacopsylla chinensis detection. The system incorporates a hybrid neural network model to establish the relationship between multiple environmental parameters and the Cacopsylla chinensis population, enabling trend prediction. We conduct feasibility validation experiments by comparing detection results with a manual survey. The experimental results show that the detection model achieves an accuracy of 87.4% for both test samples and edge devices. Furthermore, the population dynamics model yields a mean absolute error of 1.94% for the test dataset. These performance indicators fully meet the requirements of practical agricultural applications. Full article
(This article belongs to the Section Artificial Intelligence and Digital Agriculture)
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21 pages, 2795 KiB  
Article
Electricity Cost Forecasting in the South African Mining Industry: A Gap Analysis
by Andrea Cronje, Jean H. van Laar, Johann F. van Rensburg and Jan C. Vosloo
Mining 2025, 5(2), 34; https://doi.org/10.3390/mining5020034 - 30 May 2025
Viewed by 506
Abstract
Despite the rapid improvement in the availability and resolution of real-time electricity data, budget development processes in mining have remained relatively unchanged. Currently, there is no standard for the evaluation of mine electricity cost budgets. This study aims to determine whether forecasting processes [...] Read more.
Despite the rapid improvement in the availability and resolution of real-time electricity data, budget development processes in mining have remained relatively unchanged. Currently, there is no standard for the evaluation of mine electricity cost budgets. This study aims to determine whether forecasting processes used by mines produce budgets of sufficient quality and resolution to be used as a tool for daily energy- and cost management. A literature review was conducted to determine a set of best practices for electricity budgeting on mines. These findings were used to develop a survey to evaluate the current state of budgeting processes on South African mines. Surveys were conducted at 41 mine business units. Survey results were processed and analyzed and found that there are significant shortcomings in complying with the identified best practices. The majority of mines produced forecasts in lower resolutions than actual available data, thereby reducing their usefulness as energy management tools. The methods currently employed by mining sites are not scalable and are vulnerable to human error. Only 7% of participating business units’ budgets passed the identified best practices. Adherence to best practices, identified in this paper, will assist mines in improving electricity cost forecasts for more proactive- and sustainable energy management. This will also assist the industry in aligning with the UN Sustainable Development Goals (SDGs) of Affordable and Clean Energy (SDG 7), Industry, Innovation, and Infrastructure (SDG 9), and Responsible Consumption and Production (SDG 12). Full article
(This article belongs to the Special Issue Mine Management Optimization in the Era of AI and Advanced Analytics)
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50 pages, 2839 KiB  
Article
A Predictive Framework for Understanding Multidimensional Security Perceptions Among Students in Serbia: The Role of Institutional, Socio-Economic, and Demographic Determinants of Sustainability
by Vladimir M. Cvetković, Milan Lipovac, Renate Renner, Svetlana Stanarević and Zlatko Raonić
Sustainability 2025, 17(11), 5030; https://doi.org/10.3390/su17115030 - 30 May 2025
Viewed by 1036
Abstract
This study investigates and forecasts multidimensional security perceptions among Serbian university students, who are a particularly engaged and vulnerable demographic in transitional societies. It examines how demographic traits, socio-economic status, and levels of institutional trust and engagement shape students’ evaluations of security in [...] Read more.
This study investigates and forecasts multidimensional security perceptions among Serbian university students, who are a particularly engaged and vulnerable demographic in transitional societies. It examines how demographic traits, socio-economic status, and levels of institutional trust and engagement shape students’ evaluations of security in everyday life. The study examines six primary dimensions of security perception: personal safety, safety at public events and demonstrations, perceived national threats, digital security and privacy, perception of emergencies and crises, and trust in institutions and security policies. A structured online survey was administered to a sample of 406 university students selected through non-probability purposive sampling from major academic centres in Serbia, including Belgrade, Niš, Novi Sad, and Kragujevac. The questionnaire, based on a five-point Likert scale, was designed to measure levels of agreement across the six dimensions. Data were analysed using multiple regression, one-way ANOVA, Pearson’s correlation, and independent samples t-tests. All necessary statistical assumptions were met, ensuring the reliability and validity of the results. Descriptive statistics indicated moderate to moderately high overall perceived safety, with personal safety scoring the highest, followed by digital security and disaster preparedness. Lower scores were recorded for public event safety, perceived national threats, and, in particular, trust in institutional security policies. Regression analysis revealed that key predictors of perceived safety varied across dimensions: gender was a significant predictor of personal safety. At the same time, family financial status had a strong influence on perceptions of safety at public events. These findings offer valuable insights for designing targeted risk communication, inclusive policy initiatives, and institutional reforms that aim to enhance youth resilience, civic trust, and participatory security governance, ultimately contributing to long-term social sustainability. Full article
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