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Research article
Analyzing Soil Pollution: Heavy Metals in Setif City Region Using ICP-OES Technique
said lifa ,
seifeddine sellami ,
ouahida zeghouan ,
omar tebboub ,
fares zaamouche
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Available online: 12-29-2025

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Heavy metal contamination is a serious issue that poses a significant threat to soil environments and human health worldwide. The rapid population growth in developing countries, together with challenging economic conditions, has led to uncontrolled urbanization. These activities have become major sources of environmental pollution, affecting soil, water, and air quality. The objective of this study was to analyze the concentration of heavy metals in the soil of Setif City. To achieve this objective, 16 soil samples were collected using a regular 3 $\times$ 3 km grid across the region. Inductively Coupled Plasma Optical Emission Spectrometry (ICP-OES) was used to analyze these samples, and their pH , organic matter (OM), and limestone (CaCO$_3$) levels were also determined to assess their physical and chemical properties. Zinc (Zn), Copper (Cu), Nickel (Ni), and Cadmium (Cd) were selected as representative heavy metals for the study. The sixteen diffractograms obtained from powder X-ray diffraction (XRD) analysis showed the presence of calcite and quartz, along with elements such as Cd, Zn, Cu, and Ni . The results indicate that the soils in Setif City are alkaline, with pH values ranging from 8.00 to 8.47 . The average concentrations of Zn, Cu, Ni, and Cd were 407.06, 55.85, 32.21, and 0.16 mg kg$^{-1}$, respectively, in the sixteen soil samples collected from Setif City. When compared with international standards (e.g., AFNOR NF X31-101 and CEPA), Zn concentrations in several samples exceeded acceptable thresholds, indicating moderate to high levels of contamination in specific zones. This finding is supported by the geoaccumulation index (Igeo) and contamination factor (Cf), both of which identified Zn as the main pollutant of concern. Contrary to the initial assumption of no contamination, the study reveals that localized Zn accumulation may pose potential environmental risks, highlighting the need for continuous monitoring and site-specific remediation strategies

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This study presents the design and experimental evaluation of a laboratory-scale Pumped Hydro Storage (PHS) system driven by photovoltaic (PV) power, featuring adaptive multi-pump operation and a cascading turbine–generator configuration. The system integrates real-time monitoring and control architecture based on ESP32 and NRF24L01 modules with a Raspberry Pi web interface, allowing automatic operation according to PV power availability and reservoir conditions. The adaptive multi-pump mechanism enables stepwise pump activation as solar energy increases, effectively balancing water transfer and electrical consumption. Experimental results demonstrate that increasing the number of operating pumps significantly improves flow rate and upper reservoir elevation, confirming the effectiveness of the adaptive strategy under variable PV conditions. Furthermore, comparative testing of cascading turbine–generator configurations indicates that the parallel configuration achieves higher conversion efficiency and energy yield than the series configuration. These findings validate that multi-pump adaptive control combined with an optimized turbine configuration enhances the flexibility and overall efficiency of small-scale PHS systems. The proposed architecture offers a practical framework for integrating solar energy and hydro storage technologies to support reliable and sustainable off-grid power applications.

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The digital transformation of professional sectors requires a systematic renewal of processes, and the accounting profession is no exception. In Sub-Saharan Africa (SSA), active engagement with digital transformation is critical for accounting professionals, who must adapt to meet emerging demands in a rapidly evolving digital landscape. This transformation entails not only technological upgrades but also a shift in the societal perception of the accounting profession, driven by enhanced operational efficiency, data security, and transparency facilitated by digital systems. However, significant challenges hinder the seamless integration of digital technologies in accounting practices across the region. These include concerns regarding ethics, inadequate digital infrastructure, high implementation costs, cybersecurity threats, and a skills gap among professionals, compounded by institutional resistance to change. Nevertheless, the digital transformation offers substantial opportunities to enhance efficiency, accountability, and transparency in accounting operations. AI technologies, for instance, can automate repetitive tasks, enabling accountants to focus on more strategic, advisory roles. The potential for digital innovation also extends to fostering collaboration among stakeholders, including government bodies, which could play a pivotal role in creating the necessary infrastructure and policy frameworks to support digital transformation. Furthermore, partnerships between industry and academia are essential for the development of curricula that address the evolving needs of the profession. In light of these considerations, it is essential that efforts are made to overcome existing barriers, while leveraging digital transformation to foster a more efficient, transparent, and resilient accounting profession across SSA.

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Efficient management of production processes in modern manufacturing depends on the timely identification of their most critical phases, as such recognition directly enhances process reliability, productivity, and product quality. To address this need, an objective multi-attribute decision-making (MADM) framework has been developed by integrating the Criteria Importance Through Inter-criteria Correlation (CRITIC) method with Pareto analysis, a well-established approach also referred to as ABC classification. Within this framework, a comprehensive set of evaluation criteria was determined in collaboration with a Process Failure Mode and Effects Analysis (PFMEA) team from a Tier-1 automotive manufacturer. The decision matrix was constructed from data extracted from PFMEA reports that had been subjected to preliminary statistical processing to ensure robustness and comparability. The relative importance of the criteria was then established using the CRITIC method, which objectively derives weights from statistical indicators such as the arithmetic mean, standard deviation, and inter-criteria correlation coefficients. The framework was subsequently applied to the PFMEA report for a rear axle assembly process, encompassing 16 discrete production phases. Pareto analysis was employed to classify the phases according to their criticality, thereby enabling a systematic prioritization of process risks. The resulting classification demonstrated strong consistency with expert evaluations and was confirmed to reflect real-world production conditions accurately. Beyond confirming methodological validity, the findings underscore the advantages of employing a fully objective weighting mechanism combined with a widely recognized prioritization tool, thereby offering a transparent and replicable basis for decision-making in complex manufacturing contexts. This integration not only supports continuous improvement and risk mitigation but also provides a scalable framework applicable to a broad range of industrial processes where critical phase identification is essential.
Open Access
Research article
Evaluation of the CIPP Model in Waste Management in Lebak Regency, Banten Province
harits hijrah wicaksana ,
hendy tannady ,
umol syamsyul bin rakiman ,
michael a. aloria
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Available online: 12-28-2025

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This study aims to evaluate the implementation of Lebak Regency Government policies and strategies in waste management as stipulated in Regional Regulation No. 4/2018 and Regent Regulation No. 30/2018. The management-oriented evaluation approach proposed by Daniel Stufflebeam, also known as the Context, Input, Process, Product (CIPP) model evaluation, is used to assess the context, input, and process of policy products related to waste management in Lebak Regency. The research method used is qualitative with a descriptive approach. Data were collected through documentation studies, field observations, and quantitative data from official reports. The evaluation results show that contextually, waste management policies are in line with the phenomenon of increasing waste generation due to population growth in Lebak Regency caused by urbanization that has an impact on changes in consumption patterns from community activities. However, the input of policies and strategies of the Lebak Regency Government in waste management are not in line with the processes carried out. Therefore, waste management policy products and strategies in Lebak Regency have not been running optimally including the provision of services and infrastructure facilities, increasing public awareness, and optimizing financial resources. Recommendations that can be given are to create a waste management system using a collaborative governance method.

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Recognition of traffic signs by drivers is essential for ensuring road safety. Recently, with the growing demand for driver assistance systems and autonomous vehicles, traffic sign recognition has become increasingly important. In this study, Spatial Transformer Networks (STN) integrated with Convolutional Neural Networks (CNN) were used to classify traffic signs. STNs minimize the effects of geometric distortions by applying affine transformations to images, thereby improving classification performance. This study focuses on adapting and optimizing an STN-based CNN model specifically for the Russian Traffic Signs Dataset (RTSD) to achieve higher classification accuracy. The proposed model was trained and tested on the RTSD. First, the proposed CNN model was trained on the RTSD-R1 and RTSD-R3 datasets, achieving accuracy rates of 89.15% and 94.3%, respectively. Then, by integrating STN into the CNN model, the proposed model was trained on the RTSD-R1 and RTSD-R3 datasets, achieving accuracy rates of 93% and 95%, respectively. These results demonstrate that incorporating STNs into the CNNs is effective in improving traffic sign classification performance.

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Microplastics are widely present in aquatic environments and, due to their high hydrophobicity, can carry organic pollutants while affecting their accumulation and toxicity in organisms at different trophic levels. The ingestion of microplastics by organisms can be divided into direct and indirect ingestion. Direct ingestion refers to organisms directly consuming microplastics present in the environmental medium, while indirect ingestion can be understood as microplastics being ingested by organisms along the transfer of trophic levels. This study aimed to determine the distribution of microplastics in the surface water of the Yangtze River Estuary and the accumulation characteristics of microplastics in organisms at different trophic levels. In 2021, the study selected typical sampling stations in the Yangtze River Estuary and its adjacent waters for observation, analyzing the concentration and characteristics of microplastics in surface water and samples from nine different trophic level organisms (two types of gastropods and seven types of fish). The abundance of microplastics in the surface water samples collected from the Yangtze River Estuary was 661.2 ± 220.5 items/m$^3$. The average abundance of microplastics in the gills of organisms was 1.1 ± 0.4 items/g w.w., and in the gastrointestinal tract, it was 0.3 ± 0.1 items/g w.w. Based on the calculation of the bioconcentration factor of microplastics, we found that the bioconcentration factor of higher trophic level organisms (fish) (2.6 ± 0.5 m$^3$/kg w.w.) was significantly greater than that of gastropod organisms (0.87 ± 0.4 m$^3$/kg w.w.). In terms of feeding types, the bioconcentration factor of carnivorous fish organisms was significantly greater than that of omnivorous fish. This paper determined the trophic level of organisms through stable nitrogen isotopes ($\delta^{15}$N), and the biomagnification factor of microplastics was calculated to be 4.2 based on the linear regression equation of microplastic concentration and organism trophic level. Therefore, microplastic concentrations can be transferred along different trophic levels in the food chain, and the accumulation level of microplastics in organisms significantly increases with the rise of trophic levels, indicating the potential for biomagnification of microplastics in gastropods and fish organisms.

Open Access
Research article
Using Artificial Intelligence to Manage Visual AR/VR Scenarios in Media Branding of Cultural Institutions
ievgeniia kyianytsia ,
dmytro yatsiuk ,
halyna aldankova ,
oleksii horobets ,
viktor dobrovolskyi ,
vladyslav slipchenko
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Available online: 12-26-2025

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In the context of the digital transformation of cultural institutions, there exists an imperative for interactive AR/VR systems that leverage the capabilities of artificial intelligence for the personalized presentation of cultural content and the management of cognitive interaction scenarios. In light of the above, the purpose of this study was to develop and empirically evaluate the efficacy of an interactive AI model (CurioMind) for AR/VR experiences, which tailors information input to align with user requests and behaviors. Within the framework of the study, an experiment was conducted with two groups of participants (n = 60), which involved comparing the measures of attraction, memorization and subjective evaluation of the experience. Furthermore, NASA-TLX cognitive load assessments were conducted alongside semi-structured interviews to qualitatively evaluate interface perception and content. Participants engaging with the CurioMind model demonstrated significantly higher levels of information retention (mean score of 9.1 compared to 7.2 in the control group) and longer exposure time. Moreover, their ratings on the parameters of emotional engagement, personalization, and interface attractiveness were markedly higher. The findings substantiate the study’s hypothesis: the integration of an adaptive AI agent within AR/VR experiences augments the efficacy of informal cultural learning and elevates the quality of the user experience. The CurioMind model introduces a novel approach to digital museum storytelling based on behavioral personalization. Future research may encompass the scaling of the system to authentic museum environments, adding multimodal input (gestures, gaze).

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A three-dimensional seismic response analysis of an asphalt concrete face rockfill dam constructed on a thick overburden layer at the upper reservoir of a pumped-storage power station was conducted using the nonlinear finite element method. The study focused on evaluating the seismic safety of the dam body and the seepage control system. The results indicated that, under the design seismic load, the peak dynamic displacements of the dam body in the horizontal, vertical, and axial directions were 23.87 cm, 10.44 cm, and 26.13 cm, respectively, and the peak accelerations were 2.98 m/s$^2$, 2.01 m/s$^2$, and 2.98 m/s$^2$, respectively. The maximum permanent deformations in the same directions were 18.42 cm, -61.60 cm, and -5.61 cm/18.69 cm, with a settlement ratio of 0.37%. For the asphalt concrete face slab, the peak dynamic displacements in the horizontal, vertical, and axial directions were 23.87 cm, 9.42 cm, and 24.86 cm, respectively. The maximum and minimum principal strains of the face slab after the earthquake were 1.29% and -0.74%. The maximum principal tensile strains of the geomembrane at the reservoir bottom during and after the earthquake were -1.43% and -1.50%. Under the seismic check conditions, the dynamic responses of the dam body, face slab, and geomembrane increased. Comprehensive analysis of the results shows that the seismic response patterns of the dam are consistent with the general characteristics of rockfill dams on thick overburden layers. The dynamic response of the asphalt concrete face slab around the reservoir and the geomembrane at the reservoir bottom did not exceed their respective safety thresholds, indicating that the dam exhibits high seismic safety under seismic loading.

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The shift to a green economy presents substantial barriers to sustainable economic growth. A key component of promoting a sustainable and green growth trajectory is educating the public about environmental sustainability, climate change, and the green economy. The main aim of this study is to evaluate students' understanding of green economy, and environmental concerns while highlighting the contribution of education to the green transition. The study was carried out in Kosovo using a quantitative method approach in a sample from 425 students including undergraduate, master and PhD. The analysis examined in this study are Multiple Regression Analysis, Pearson Correlations, Cronbach's Alpha, Inter item correlations, and descriptive statistics using IBM SPSS program Multiple Regression results showed that students' intention to continue their education in the green economy was significantly predicted by factors like comprehension of environmental policies, confidence in comprehending global economic challenges, and belief in the significance of government policies for the green transition. Significantly, students' willingness to participate in green economy studies was inversely connected with their comprehension of the role of law in environmental issues, indicating a possible discrepancy between perceived readiness and actual participation. The findings indicate that students possess a limited understanding of the green economy and environmental concerns in Kosovo; however, they are quite enthusiastic about expanding their knowledge, particularly via bachelor’s and master’s programs focused on these topics. Considering these results, the research proposes that to enhance awareness and preparedness for the green transition, new educational programs and vocational training efforts should be established alongside targeted conferences. These initiatives are crucial for providing professionals and students with the resources necessary for a sustainable future. Proper education can have a fundamental impact on environmental protection and sustainable economic development thus policymakers and universities must collaborate to create applicable study programs and curricula that promote a stronger focus on green and sustainable education.

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This study develops and validates an integrated model for evaluating passenger service quality (SQ) in Thailand’s rural railway system by embedding environmental and engineering perspectives within the RAILQUAL framework. Drawing upon SERVQUAL, Grönroos's model, and Servicescape theory, it introduces the Eco-Rail Atmosphere Quality (Eco-RAQ) construct, which incorporates sustainability attributes-greenhouse-gas reduction, waste management, traction-energy efficiency, and renewable energy efficiently-into the Rail Atmosphere Quality (RAQ) dimension. Survey data from 1,013 passengers were analyzed using covariance-based structural equation modeling (CBSEM). The final model exhibits excellent fit ($\chi^2$/df = 1.096, CFI = 1.000, RMSEA = 0.010) and explains 91.5% of variance in rail efficiency quality (REQ. RAQ demonstrates the strongest total effect on REQ ($\beta$ = 0.848, $p$ $<$ 0.001), while Eco-RAQ shows a meaningful but more modest total effect ($\beta$ = 0.257, $p$ $<$ 0.001), influencing REQ both directly and indirectly through rail perceived quality (RPQ). Validity diagnostics confirm discriminant validity (HTMT $<$ 0.85) and no substantive common-method bias. The findings advance service-quality theory by integrating sustainability cognition into the Stimulus-Organism-Response paradigm and by proposing Eco-RAQ as a socio-technical mechanism linking passenger perception with operational performance. The model offers actionable insights for achieving Sustainable Development Goals (SDGs) 9, 11, and 13 in rural rail contexts.

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