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Search Results (2,579)

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Keywords = supply chain processes

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29 pages, 631 KB  
Article
Techno-Economic Evaluation of Sustainability Innovations in a Tourism SME: A Process-Tracing Study
by Natalia Chatzifoti, Alexandra Alexandropoulou, Andreas E. Fousteris, Maria D. Karvounidi and Panos T. Chountalas
Tour. Hosp. 2025, 6(4), 209; https://doi.org/10.3390/tourhosp6040209 (registering DOI) - 13 Oct 2025
Abstract
In response to growing pressures for sustainability in tourism, this paper examines the techno-economic evaluation of green innovations in small and medium-sized tourism enterprises (SMEs). Focusing on a single case study of a hotel in Greece, the research investigates how and why specific [...] Read more.
In response to growing pressures for sustainability in tourism, this paper examines the techno-economic evaluation of green innovations in small and medium-sized tourism enterprises (SMEs). Focusing on a single case study of a hotel in Greece, the research investigates how and why specific sustainability interventions were implemented and assesses their operational and economic impacts. The study adopts an interpretivist approach, combining process tracing with thematic analysis. The analysis is guided by innovation diffusion theory, supported by organizational learning perspectives, to explain the stepwise adoption of sustainability practices and the internal adaptation processes that enabled them. The techno-economic evaluation draws on quantitative indicators and qualitative assessments of perceived benefits and implementation challenges, offering a broader view of value beyond purely financial metrics. Data were collected through semi-structured interviews, on-site observations, and internal documentation. The findings reveal a gradual, non-linear path to innovation, shaped by adoption dynamics and organizational learning, reinforced by leadership commitment, contextual adaptation, supply chain decisions, and external incentives. Key interventions, including solar energy adoption, composting, and the formation of zero-waste partnerships, resulted in measurable reductions in energy use and landfill waste, along with improvements in guest satisfaction, operational efficiency, and local collaboration. Although it is subject to limitations typical of single-case designs, the study demonstrates how even modest sustainability efforts, when integrated into daily operations, can generate multiple types of outcomes (economic, environmental, and operational). The paper offers practical implications for tourism SMEs and policymakers and formulates propositions for future testing on sustainable innovation in the tourism sector. Full article
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15 pages, 576 KB  
Article
Building Resilient and Sustainable Supply Chains: A Distributed Ledger-Based Learning Feedback Loop
by Tan Gürpinar and Mehmet Akif Gulum
Sustainability 2025, 17(20), 9023; https://doi.org/10.3390/su17209023 (registering DOI) - 12 Oct 2025
Abstract
Global supply chains face increasing disruptions from cyber threats, geopolitical instability, extreme weather events, and a range of economic, social, and environmental sustainability challenges. As these disruptions intensify, enhancing Supply Chain Resilience (SCR) has become a strategic priority. This study investigates how Distributed [...] Read more.
Global supply chains face increasing disruptions from cyber threats, geopolitical instability, extreme weather events, and a range of economic, social, and environmental sustainability challenges. As these disruptions intensify, enhancing Supply Chain Resilience (SCR) has become a strategic priority. This study investigates how Distributed Ledger Technology (DLT) can contribute to SCR by mitigating vulnerabilities and strengthening key capabilities within global supply chains. A qualitative research approach is employed, utilizing expert evaluations to examine DLT’s impact on supply chain vulnerabilities and capabilities. Five workshops were conducted with 25 industry professionals from logistics, IT, procurement, and risk management. Experts examined how DLT could address disruptions stemming from supplier instability, poor traceability, and regulatory and environmental pressures, while highlighting its potential to drive ethical sourcing and environmentally responsible practices. The structured discussions were guided by theoretical frameworks and expert evaluations were synthesized into two analytical matrices illustrating DLT’s influence on SCR. The findings reveal that the contribution of DLT to SCR and sustainability is highly context-dependent, with its effectiveness hinging on how it is embedded within governance structures and aligned with the interplay of complementary technologies. Building on these insights, the study presents the DLT-LFL (Distributed Ledger Technology–Learning Feedback Loop) framework, which integrates sensing, decision-making, adaptation, and predictive learning from distributed operational data, allowing supply chains to better anticipate disruptions, adjust processes dynamically, and continuously strengthen resilience and sustainable practices. The study also develops a practical checklist to assess how effective DLT applications and their integration with predictive and AI-driven analytics reduce vulnerabilities, strengthen capabilities, mitigate risks, and support adaptive decision-making. Full article
(This article belongs to the Section Economic and Business Aspects of Sustainability)
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16 pages, 3068 KB  
Article
Unveiling the Regulatory Mechanisms of Irradiation Response in Pseudococcus jackbeardsleyi Under Hypoxic Conditions
by Li Li, Changyao Shan, Qiang Xu, Baishu Li, Haijun Liu and Tao Liu
Agriculture 2025, 15(20), 2104; https://doi.org/10.3390/agriculture15202104 - 10 Oct 2025
Viewed by 146
Abstract
Mealybugs are high-priority quarantine pests in fresh-produce trade due to cryptic habits, broad host ranges, and market-access risks. Phytosanitary irradiation (PI) provides a non-residual, process-controlled option that is increasingly integrated with modified-atmosphere (MA/MAP) logistics. Because molecular oxygen enhances indirect radiation damage (oxygen enhancement [...] Read more.
Mealybugs are high-priority quarantine pests in fresh-produce trade due to cryptic habits, broad host ranges, and market-access risks. Phytosanitary irradiation (PI) provides a non-residual, process-controlled option that is increasingly integrated with modified-atmosphere (MA/MAP) logistics. Because molecular oxygen enhances indirect radiation damage (oxygen enhancement ratio, OER), oxygen limitation may modulate PI outcomes in mealybugs. The Jack Beardsley mealybug (Pseudococcus jackbeardsleyi) has an IPPC-adopted PI treatment of 166 Gy (ISPM 28, PT 45). We exposed adult females to 166 Gy under air and 1% O2 and generated whole-transcriptome profiles across treatments. Differentially expressed genes and co-differentially expressed genes (co-DEGs) were integrated with protein–protein interaction (PPI) and regulatory networks, and ten hubs were validated by reverse transcription quantitative PCR (RT-qPCR). Hypoxia attenuated irradiation-induced transcriptional disruption. Expression programs shifted toward transport, redox buffering, and immune readiness, while morphogen signaling (Wnt, Hedgehog, BMP) was coherently suppressed; hubs including wg, hh, dpp, and ptc showed stronger down-regulation under hypoxia + irradiation than under irradiation alone. Despite these molecular differences, confirmatory bioassays at 166 Gy under both atmospheres (air and 1% O2) achieved complete control. These results clarify how oxygen limitation modulates PI responses in a quarantine mealybug while confirming the operational efficacy of the prescribed 166 Gy dose. Practically, they support the current international standard and highlight the value of documenting oxygen atmospheres and managing dose margins when PI is applied within MA/MAP supply chains. Full article
(This article belongs to the Section Crop Protection, Diseases, Pests and Weeds)
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45 pages, 9186 KB  
Article
Life Cycle Assessment of Shipbuilding Materials and Potential Exposure Under the EU CBAM: Scenario-Based Assessment and Strategic Responses
by Bae-jun Kwon, Sang-jin Oh, Byong-ug Jeong, Yeong-min Park and Sung-chul Shin
J. Mar. Sci. Eng. 2025, 13(10), 1938; https://doi.org/10.3390/jmse13101938 - 10 Oct 2025
Viewed by 125
Abstract
This study evaluates the environmental impacts of shipbuilding materials through life cycle assessment (LCA) and assesses potential exposure under the EU Carbon Border Adjustment Mechanism (CBAM). Three representative vessel types, a pure car and truck carrier (PCTC), a bulk carrier, and a container [...] Read more.
This study evaluates the environmental impacts of shipbuilding materials through life cycle assessment (LCA) and assesses potential exposure under the EU Carbon Border Adjustment Mechanism (CBAM). Three representative vessel types, a pure car and truck carrier (PCTC), a bulk carrier, and a container ship, were analyzed across scenarios reflecting different steelmaking routes, recycling rates, and regional energy mixes. Results show that structural steel (AH36, EH36, DH36, A/B grades) overwhelmingly dominates embedded emissions, while aluminium and copper contribute secondarily but with high sensitivity to recycling and energy pathways. Coatings, polymers, and yard processes add smaller but non-negligible effects. Scenario-based CBAM cost estimates for 2026–2030 indicate rising liabilities, with container vessels facing the highest exposure, followed by bulk carriers and PCTCs. The findings highlight the strategic importance of steel sourcing, recycling strategies, and verifiable supply chain data for reducing embedded emissions and mitigating financial risks. While operational emissions still dominate the life cycle, the relative importance of construction-phase emissions will grow as shipping decarbonizes. Current EU-level discussions on extending CBAM to maritime services, together with recognition of domestic carbon pricing as a potential pathway to reduce liabilities, underscore regulatory uncertainty and emphasize the need for harmonized methods, transparent datasets, and digital integration to support decarbonization. Full article
(This article belongs to the Section Ocean Engineering)
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30 pages, 1769 KB  
Review
Decarbonizing the Cement Industry: Technological, Economic, and Policy Barriers to CO2 Mitigation Adoption
by Oluwafemi Ezekiel Ige and Musasa Kabeya
Clean Technol. 2025, 7(4), 85; https://doi.org/10.3390/cleantechnol7040085 - 9 Oct 2025
Viewed by 425
Abstract
The cement industry accounts for approximately 7–8% of global CO2 emissions, primarily due to energy-intensive clinker production and limestone calcination. With cement demand continuing to rise, particularly in emerging economies, decarbonization has become an urgent global challenge. The objective of this study [...] Read more.
The cement industry accounts for approximately 7–8% of global CO2 emissions, primarily due to energy-intensive clinker production and limestone calcination. With cement demand continuing to rise, particularly in emerging economies, decarbonization has become an urgent global challenge. The objective of this study is to systematically map and synthesize existing evidence on technological pathways, policy measures, and economic barriers to four core decarbonization strategies: clinker substitution, energy efficiency, alternative fuels, as well as carbon capture, utilization, and storage (CCUS) in the cement sector, with the goal of identifying practical strategies that can align industry practice with long-term climate goals. A scoping review methodology was adopted, drawing on peer-reviewed journal articles, technical reports, and policy documents to ensure a comprehensive perspective. The results demonstrate that each mitigation pathway is technically feasible but faces substantial real-world constraints. Clinker substitution delivers immediate reduction but is limited by SCM availability/quality, durability qualification, and conservative codes; LC3 is promising where clay logistics allow. Energy-efficiency measures like waste-heat recovery and advanced controls reduce fuel use but face high capital expenditure, downtime, and diminishing returns in modern plants. Alternative fuels can reduce combustion-related emissions but face challenges of supply chains, technical integration challenges, quality, weak waste-management systems, and regulatory acceptance. CCUS, the most considerable long-term potential, addresses process CO2 and enables deep reductions, but remains commercially unviable due to current economics, high costs, limited policy support, lack of large-scale deployment, and access to transport and storage. Cross-cutting economic challenges, regulatory gaps, skill shortages, and social resistance including NIMBYism further slow adoption, particularly in low-income regions. This study concludes that a single pathway is insufficient. An integrated portfolio supported by modernized standards, targeted policy incentives, expanded access to SCMs and waste fuels, scaled CCUS investment, and international collaboration is essential to bridge the gap between climate ambition and industrial implementation. Key recommendations include modernizing cement standards to support higher clinker replacement, providing incentives for energy-efficient upgrades, scaling CCUS through joint investment and carbon pricing and expanding access to biomass and waste-derived fuels. Full article
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23 pages, 2258 KB  
Article
A Reputation-Enhanced Shapley–FAHP Method for Multi-Dimensional Food Safety Evaluation
by Xiaobo Yang, Hanning Wei, Binghui Guo, Min Zuo, Lipo Mo and Haiwei Gao
Appl. Sci. 2025, 15(19), 10787; https://doi.org/10.3390/app151910787 - 7 Oct 2025
Viewed by 201
Abstract
Ensuring food safety in complex supply chains requires evaluation frameworks that integrate multiple indicators, account for their interdependencies, and incorporate historical performance. This study proposes a novel RM–Shapley–FAHP framework that combines the Fuzzy Analytic Hierarchy Process, Shapley value contribution analysis, and a reputation [...] Read more.
Ensuring food safety in complex supply chains requires evaluation frameworks that integrate multiple indicators, account for their interdependencies, and incorporate historical performance. This study proposes a novel RM–Shapley–FAHP framework that combines the Fuzzy Analytic Hierarchy Process, Shapley value contribution analysis, and a reputation decay mechanism to construct a dynamic, multi-year assessment model. The framework evaluates six governance subsystems, mitigates indicator redundancy, and links past performance to current risk posture. Applied to a leading food enterprise over three years, the method demonstrated superior consistency, interpretability, and operational relevance compared to FAHP, entropy weighting, and equal-weight baselines. The results demonstrate that RM–Shapley–FAHP framework effectively supports balanced development in food safety governance by capturing temporal dynamics and interdependencies, offering interpretable and operationally relevant guidance for decision makers. In future work, this framework may be extended with machine learning to improve adaptability for multi-dimensional and time-series evaluations, noted here as a research prospect rather than a present contribution. Full article
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17 pages, 1178 KB  
Article
A Machine-Learning-Based Prediction Model for Total Glycoalkaloid Accumulation in Yukon Gold Potatoes
by Saipriya Ramalingam, Diksha Singla, Mainak Pal Chowdhury, Michele Konschuh and Chandra Bhan Singh
Foods 2025, 14(19), 3431; https://doi.org/10.3390/foods14193431 - 7 Oct 2025
Viewed by 300
Abstract
Potatoes are the most extensively cultivated vegetable crop in Canada and rank as the fifth largest primary agricultural commodity. Given their diverse end uses and significant market value, particularly in processed forms, ensuring consistent quality from harvest to consumption is of critical importance. [...] Read more.
Potatoes are the most extensively cultivated vegetable crop in Canada and rank as the fifth largest primary agricultural commodity. Given their diverse end uses and significant market value, particularly in processed forms, ensuring consistent quality from harvest to consumption is of critical importance. Total glycoalkaloids (TGA) are nitrogen-containing secondary metabolites that are known to accumulate in the tuber as an effect of greening in-field or elsewhere in the supply chain. In this study, 210 Yukon Gold (YG) potatoes were exposed to a constant light source to green over a period of 14 days and sampled in 7-day intervals. The samples were scanned using a short-wave infrared (SWIR) hyperspectral imaging camera in the 900–2500 nm wavelength range. Once individually scanned, pixel-wise spectral data was extracted and averaged for each tuber and matched with its respective ground truth TGA values which were obtained using a High-Performance Liquid Chromatography (HPLC) system. Prediction models using the partial least squares regression technique were developed from the extracted hyperspectral data and reference TGA values. Wavelength selection techniques such as competitive adaptive re-weighted sampling (CARS) and backward elimination (BE) were deployed to reduce the number of contributing wavelengths for practical applications. The best model resulted in a correlation coefficient of cross-validation (R2cv) of 0.72 with a root mean square error of cross-validation (RMSEcv) of 51.50 ppm. Full article
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28 pages, 3804 KB  
Article
Analysis of a Three-Echelon Supply Chain System with Multiple Retailers, Stochastic Demand and Transportation Times
by Georgios Varlas, Stelios Koukoumialos, Alexandros Diamantidis and Evangelos Ioannidis
Mathematics 2025, 13(19), 3199; https://doi.org/10.3390/math13193199 - 6 Oct 2025
Viewed by 221
Abstract
In this paper we present an exact numerical model for the evaluation of a three-echelon supply chain with multiple retailers. Poisson demand, exponentially distributed transportation times and lost sales at the retailers are assumed. The system is modeled as a continuous time Markov [...] Read more.
In this paper we present an exact numerical model for the evaluation of a three-echelon supply chain with multiple retailers. Poisson demand, exponentially distributed transportation times and lost sales at the retailers are assumed. The system is modeled as a continuous time Markov chain, and the analysis is based on matrix analytic methods. We analyze the infinitesimal generator matrix of the process and develop an algorithm for its construction. Performance measures for the system are calculated algorithmically from the stationary probabilities vector. The algorithm is used for an extensive numerical investigation of the system so that conclusions of managerial importance may be drawn. Full article
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15 pages, 326 KB  
Article
Enhancing Problem-Solving Skills with AI: A Case Study on Innovation and Creativity in a Business Setting
by Cynthia Hajj, Christophe Schmitt and Nehme Azoury
Adm. Sci. 2025, 15(10), 388; https://doi.org/10.3390/admsci15100388 - 6 Oct 2025
Viewed by 328
Abstract
The adoption of artificial intelligence has risen, yet research on its impact on innovation processes between actual businesses remains sparse. This research fills the present gap by investigating ten workers from a tech startup who utilize artificial intelligence tools in operational and creative [...] Read more.
The adoption of artificial intelligence has risen, yet research on its impact on innovation processes between actual businesses remains sparse. This research fills the present gap by investigating ten workers from a tech startup who utilize artificial intelligence tools in operational and creative activities. The paper analyzes business-related AI functionality through a qualitative analysis of ten tech start-up employees. The examination reveals that AI produces significant enhancements in problem resolution by executing mundane actions while analyzing large datasets to deliver data-driven suggestions to users. The interview respondents mentioned that AI’s role in diminishing supply chains is 15%, while allowing AI to manage customer service without employee engagement in 80% of interactions. The implementation costs, along with data dependency and occasional contextual blindness in AI systems, represented some of the problems in this system. Analysis demonstrated that AI tools enable the development of innovative concepts and challenge established viewpoints, prompting participants to create a gamified loyalty system and dynamic content planning. Participants in the study emphasized the need for human involvement to refine AI-based insights, recognizing how human imagination complements AI capabilities effectively. The work enhances academic discussions about AI-related problem-solving and creativity while offering specific business-related recommendations for implementation. The recommendations begin with establishing initial experimental programs, while providing support for employee’s skills development, and fostering strong alliances between technical AI personnel and professional subject matter experts. Research topics focused on AI application fields and the anticipated impacts on company decision-making, as well as the ethical ramifications, need further exploration. This research confirms the revolutionary potential of artificial intelligence systems for problem-solving methods, but requires proper execution, along with human supervision, to fully realize their advantages. Full article
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20 pages, 2313 KB  
Review
Citrus Waste Valorisation Processes from an Environmental Sustainability Perspective: A Scoping Literature Review of Life Cycle Assessment Studies
by Grazia Cinardi, Provvidenza Rita D’Urso, Giovanni Cascone and Claudia Arcidiacono
AgriEngineering 2025, 7(10), 335; https://doi.org/10.3390/agriengineering7100335 - 5 Oct 2025
Viewed by 318
Abstract
Citrus fruits and related processed products represent a major agricultural sector worldwide, contributing to food supply chains and to regional economies, particularly in Mediterranean and subtropical areas. Citrus processing generates significant amounts of post-processing waste, and their sustainable management is a critical challenge, [...] Read more.
Citrus fruits and related processed products represent a major agricultural sector worldwide, contributing to food supply chains and to regional economies, particularly in Mediterranean and subtropical areas. Citrus processing generates significant amounts of post-processing waste, and their sustainable management is a critical challenge, driving growing scientific interest in exploring environmentally sustainable and profitable valorisation strategies. This study aimed at mapping the sustainability of post-processing citrus valorisation strategies documented in the scientific literature, through a scoping literature review based on the PRISMA-ScR model. Only peer-reviewed studies in English were selected from Scopus and Web of Science; in detail, 29 life cycle assessment studies (LCAs) focusing on the valorisation of citrus by-products have been analysed. Most of the studies were focused on essential oil extraction and energy production. Most of the biorefinery systems and valorisation aims proposed were found to be better than the business-as-usual solution. However, results are strongly influenced by the functional unit and allocation method. Economic allocation to the main product resulted in better environmental performances. The major environmental hotspot is the agrochemicals required for crop management. The analysis of LCAs facilitated the identification of valorisation strategies that deserve greater interest from the scientific community to propose sustainable bio-circular solutions in the agro-industrial and agricultural sectors. Full article
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35 pages, 5316 KB  
Review
Machine Learning for Quality Control in the Food Industry: A Review
by Konstantinos G. Liakos, Vassilis Athanasiadis, Eleni Bozinou and Stavros I. Lalas
Foods 2025, 14(19), 3424; https://doi.org/10.3390/foods14193424 - 4 Oct 2025
Viewed by 994
Abstract
The increasing complexity of modern food production demands advanced solutions for quality control (QC), safety monitoring, and process optimization. This review systematically explores recent advancements in machine learning (ML) for QC across six domains: Food Quality Applications; Defect Detection and Visual Inspection Systems; [...] Read more.
The increasing complexity of modern food production demands advanced solutions for quality control (QC), safety monitoring, and process optimization. This review systematically explores recent advancements in machine learning (ML) for QC across six domains: Food Quality Applications; Defect Detection and Visual Inspection Systems; Ingredient Optimization and Nutritional Assessment; Packaging—Sensors and Predictive QC; Supply Chain—Traceability and Transparency and Food Industry Efficiency; and Industry 4.0 Models. Following a PRISMA-based methodology, a structured search of the Scopus database using thematic Boolean keywords identified 124 peer-reviewed publications (2005–2025), from which 25 studies were selected based on predefined inclusion and exclusion criteria, methodological rigor, and innovation. Neural networks dominated the reviewed approaches, with ensemble learning as a secondary method, and supervised learning prevailing across tasks. Emerging trends include hyperspectral imaging, sensor fusion, explainable AI, and blockchain-enabled traceability. Limitations in current research include domain coverage biases, data scarcity, and underexplored unsupervised and hybrid methods. Real-world implementation challenges involve integration with legacy systems, regulatory compliance, scalability, and cost–benefit trade-offs. The novelty of this review lies in combining a transparent PRISMA approach, a six-domain thematic framework, and Industry 4.0/5.0 integration, providing cross-domain insights and a roadmap for robust, transparent, and adaptive QC systems in the food industry. Full article
(This article belongs to the Special Issue Artificial Intelligence for the Food Industry)
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17 pages, 1727 KB  
Article
An Integrated Approach in Assessing the Food-Related Properties of Microparticulated and Fermented Whey
by Sara Khazzar, Stefania Balzan, Arzu Peker, Laura Da Dalt, Federico Fontana, Elisabetta Garbin, Federica Tonolo, Graziano Rilievo, Enrico Novelli and Severino Segato
Foods 2025, 14(19), 3421; https://doi.org/10.3390/foods14193421 - 4 Oct 2025
Viewed by 384
Abstract
As native bovine whey (WHEY) poses environmental concerns as a high-water-content by-product, this trial aimed at assessing the effectiveness of a thermal–mechanical microparticulation coupled with a fermentative process to concentrate it into a high-protein soft dairy cream. Compared to native whey, in microparticulated [...] Read more.
As native bovine whey (WHEY) poses environmental concerns as a high-water-content by-product, this trial aimed at assessing the effectiveness of a thermal–mechanical microparticulation coupled with a fermentative process to concentrate it into a high-protein soft dairy cream. Compared to native whey, in microparticulated (MPW) and fermented (FMPW) matrices, there was a significant increase in proteins (from 0.7 to 8.8%) and lipids (from 0.3 to 1.3%), and a more brilliant yellowness colour. A factorial discriminant analysis (FDA) showed that FMPW had a higher content of saturated fatty acid (SFA) and some specific polyunsaturated fatty acid (PUFA) n-6, and also identified C14:0, C18:1, C18:1 t-11, C18:2 n-6, and C18:3 n-6 as informative biomarkers of microparticulation and fermentative treatments. The SDS-PAGE indicated no effects on the protein profile but indicated its rearrangement into high molecular weight aggregates. Z-sizer and transmission electron microscopy analyses confirmed a different supramolecular structure corresponding to a higher variability and greater incidence of very large molecular aggregates, suggesting that MPW could be accounted as a colloidal matrix that may have similar ball-bearing lubrication properties. Microparticulation of whey could facilitate its circularity into the dairy supply chain through its re-generation from a waste into a high-value fat replacer for dairy-based food production. Full article
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23 pages, 2798 KB  
Article
Machine Learning-Aided Supply Chain Analysis of Waste Management Systems: System Optimization for Sustainable Production
by Zhe Wee Ng, Biswajit Debnath and Amit K Chattopadhyay
Sustainability 2025, 17(19), 8848; https://doi.org/10.3390/su17198848 - 2 Oct 2025
Viewed by 327
Abstract
Electronic-waste (e-waste) management is a key challenge in engineering smart cities due to its rapid accumulation, complex composition, sparse data availability, and significant environmental and economic impacts. This study employs a bespoke machine learning infrastructure on an Indian e-waste supply chain network (SCN) [...] Read more.
Electronic-waste (e-waste) management is a key challenge in engineering smart cities due to its rapid accumulation, complex composition, sparse data availability, and significant environmental and economic impacts. This study employs a bespoke machine learning infrastructure on an Indian e-waste supply chain network (SCN) focusing on the three pillars of sustainability—environmental, economic, and social. The economic resilience of the SCN is investigated against external perturbations, like market fluctuations or policy changes, by analyzing six stochastically perturbed modules, generated from the optimal point of the original dataset using Monte Carlo Simulation (MCS). In the process, MCS is demonstrated as a powerful technique to deal with sparse statistics in SCN modeling. The perturbed model is then analyzed to uncover “hidden” non-linear relationships between key variables and their sensitivity in dictating economic arbitrage. Two complementary ensemble-based approaches have been used—Feedforward Neural Network (FNN) model and Random Forest (RF) model. While FNN excels in regressing the model performance against the industry-specified target, RF is better in dealing with feature engineering and dimensional reduction, thus identifying the most influential variables. Our results demonstrate that the FNN model is a superior predictor of arbitrage conditions compared to the RF model. The tangible deliverable is a data-driven toolkit for smart engineering solutions to ensure sustainable e-waste management. Full article
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20 pages, 6015 KB  
Article
Selective Lithium Extraction via Chlorination Roasting and Subsequent Valuable Metal Leaching from Spent Lithium-Ion Batteries
by Minji Kim, Seungyun Han, Yong Hwan Kim, Young-Min Kim and Eunmi Park
Metals 2025, 15(10), 1085; https://doi.org/10.3390/met15101085 - 29 Sep 2025
Viewed by 268
Abstract
The rapid growth of the electric vehicle (EV) market has highlighted the critical importance of securing a stable supply chain for lithium-ion battery (LIB) resources, thereby increasing the need for efficient recycling technologies. Among these, lithium recovery remains a major challenge due to [...] Read more.
The rapid growth of the electric vehicle (EV) market has highlighted the critical importance of securing a stable supply chain for lithium-ion battery (LIB) resources, thereby increasing the need for efficient recycling technologies. Among these, lithium recovery remains a major challenge due to significant losses during conventional processes. In this study, a chlorination roasting process was introduced to convert Li2O in spent LIBs into LiCl, which was subsequently evaporated for selective lithium extraction and recovery. Roasting experiments were conducted under air, vacuum, and N2 conditions at 800–1000 °C for 1–5 h, with Cl/Li molar ratios ranging from 0.5 to 8. The optimal condition for lithium evaporation, achieving 100% recovery, was identified as 1000 °C for 5 h, with a Cl/Li molar ratio of 6 under vacuum. Following lithium removal, residual valuable metals were extracted through H2SO4 leaching, and the effects of acid concentration and H2O2 addition on leaching efficiency were examined. The air-roasted samples exhibited the highest leaching performance, while the vacuum- and N2-roasted samples showed relatively lower efficiency; however, the addition of H2O2 significantly enhanced leaching yields in these cases. Full article
(This article belongs to the Section Extractive Metallurgy)
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15 pages, 1065 KB  
Article
Pasteurized Milk Serves as a Passive Surveillance Tool for Highly Pathogenic Avian Influenza Virus in Dairy Cattle
by Abhinay Gontu, Manoj K. Sekhwal, Anastacia Diaz Huemme, Lingling Li, Sophia Kutsaya, Michael Ling, Nidhi Kajal Doshi, Maurice Byukusenge and Ruth H. Nissly
Viruses 2025, 17(10), 1318; https://doi.org/10.3390/v17101318 - 28 Sep 2025
Viewed by 403
Abstract
The emergence of H5N1 highly pathogenic avian influenza virus (HPAIV) clade 2.3.4.4b in dairy cattle across multiple U.S. states in early 2024 marks a major shift in the virus’s host range and epidemiological profile. Traditionally limited to bird species, the ongoing detection of [...] Read more.
The emergence of H5N1 highly pathogenic avian influenza virus (HPAIV) clade 2.3.4.4b in dairy cattle across multiple U.S. states in early 2024 marks a major shift in the virus’s host range and epidemiological profile. Traditionally limited to bird species, the ongoing detection of H5N1 in cattle, a mammalian host not previously considered vulnerable, raises urgent animal and human health concerns about zoonoses and mammalian adaptation. We assessed the feasibility of using commercially available pasteurized milk as a sentinel matrix for the molecular detection and genetic characterization of H5N1 HPAIV. Our aim was to determine whether retail milk could serve as a practical tool for virological monitoring and to evaluate the use of full-length genome segment amplification for extracting genomic sequence information from this highly processed matrix. Our results link HPAIV sequences in store-bought milk to the cattle outbreak and highlight both the potential and the limitations of retail milk as a surveillance window. Together, these findings provide evidence that influenza A virus RNA can be repeatedly detected in retail milk in patterns linked to specific supply chains, with genomic data confirming close relationships with the viruses circulating in cattle. Full article
(This article belongs to the Special Issue Bovine Influenza)
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