Journal Description
Sustainability
Sustainability
is an international, peer-reviewed, open-access journal on environmental, cultural, economic, and social sustainability of human beings, published semimonthly online by MDPI. The Canadian Urban Transit Research & Innovation Consortium (CUTRIC), International Council for Research and Innovation in Building and Construction (CIB) and Urban Land Institute (ULI) are affiliated with Sustainability and their members receive discounts on the article processing charges.
- Open Access— free for readers, with article processing charges (APC) paid by authors or their institutions.
- High Visibility: indexed within Scopus, SCIE and SSCI (Web of Science), GEOBASE, GeoRef, Inspec, RePEc, CAPlus / SciFinder, and other databases.
- Journal Rank: JCR - Q2 (Environmental Studies) / CiteScore - Q1 (Geography, Planning and Development)
- Rapid Publication: manuscripts are peer-reviewed and a first decision is provided to authors approximately 17.9 days after submission; acceptance to publication is undertaken in 3.6 days (median values for papers published in this journal in the second half of 2025).
- Recognition of Reviewers: reviewers who provide timely, thorough peer-review reports receive vouchers entitling them to a discount on the APC of their next publication in any MDPI journal, in appreciation of the work done.
- Testimonials: See what our editors and authors say about Sustainability.
- Companion journals for Sustainability include: World, Sustainable Chemistry, Conservation, Future Transportation, Architecture, Standards, Merits, Bioresources and Bioproducts, Accounting and Auditing, Environmental Remediation and Green.
- Journal Cluster of Environmental Science: Sustainability, Land, Clean Technologies, Environments, Nitrogen, Recycling, Urban Science, Safety, Air, Waste, Aerobiology and Toxics.
Impact Factor:
3.3 (2024);
5-Year Impact Factor:
3.6 (2024)
Latest Articles
Time-Varying Characteristics and Reliability of Urban Travel Impedance Based on High-Frequency Navigation OD Data
Sustainability 2026, 18(11), 5215; https://doi.org/10.3390/su18115215 (registering DOI) - 22 May 2026
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With the advancement of urbanization and motorization, urban traffic conditions increasingly affect both travel efficiency and system stability, yet existing studies based on high-frequency OD data mainly focus on single aspects such as congestion patterns or travel time variability, lacking a unified analytical
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With the advancement of urbanization and motorization, urban traffic conditions increasingly affect both travel efficiency and system stability, yet existing studies based on high-frequency OD data mainly focus on single aspects such as congestion patterns or travel time variability, lacking a unified analytical framework that jointly captures time-varying travel impedance, reliability, and anomaly risks under comparable conditions, especially in cross-city contexts. This study constructs a standardized analytical framework with a novel integration based on a “city × weekday × 5 min interval” structure, using high-frequency navigation OD data from eight major cities in China over four consecutive weeks, totaling approximately 560,000 valid samples. Travel Time per Unit Distance (TTUD) is employed as the core metric, and a distance-stratified weighting approach is adopted to improve cross-city comparability. Reliability is characterized by variability, dispersion, and tail risk, and anomalous events are identified using a dynamic baseline. The results reveal clear intra-week temporal regularity and significant inter-city heterogeneity, with weekday evening peaks generally lasting longer than those on weekends, reflecting sustained commuting pressure and slower dissipation of travel demand. A total of 249 anomaly events are detected, with higher frequency and persistence on weekdays, highlighting the increased vulnerability of traffic systems during peak commuting periods and indicating that commuting periods are more prone to sustained deviations due to higher system load and demand instability. Overall, the proposed framework provides a unified and comparable basis for cross-city traffic performance evaluation and supports practical applications such as peak-period traffic management, congestion mitigation, and traffic risk monitoring.
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Open AccessArticle
An Exploratory Circular Economy Management Framework for Plastic Recycling SMEs: A Process Reengineering Approach for Sustainability
by
Oscar Gildardo Hernández Alomía and Alicia Cristina Silva Calpa
Sustainability 2026, 18(11), 5214; https://doi.org/10.3390/su18115214 (registering DOI) - 22 May 2026
Abstract
The transition toward a circular economy (CE) in the plastic recycling sector requires integrated management frameworks that align technical performance with organizational governance. This study proposes an exploratory diagnostic framework for formalized recycling SMEs, integrating Latent Dirichlet Allocation (LDA) and Random Forest (RF)
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The transition toward a circular economy (CE) in the plastic recycling sector requires integrated management frameworks that align technical performance with organizational governance. This study proposes an exploratory diagnostic framework for formalized recycling SMEs, integrating Latent Dirichlet Allocation (LDA) and Random Forest (RF) algorithms. Given the specialized nature of the sector, a purposive sample of 16 ‘pioneer’ SMEs in Bogotá was analyzed. Data were standardized through a 5-point ordinal scale, and the Spearman rank correlation analysis ( revealed high internal consistency and structural synchronization. This high correlation reflects the operational homogeneity of the analyzed vanguard rather than a universal statistical claim. The findings suggest that, for these leading firms, circularity is driven by social impact, collaborative networks, and systemic process reengineering. Consequently, the proposed framework is presented as an exploratory diagnostic tool tailored to the specific structural characteristics of formalized recycling SMEs, providing a methodological basis for understanding circularity within this specialized niche.
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(This article belongs to the Special Issue Economic, Social, and Cultural Aspects of Circular Economy)
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Open AccessArticle
Designing Like an Institution: Systems Thinking, Design Thinking, and Visual Grammars in Sustainability Education
by
Michael Carolan
Sustainability 2026, 18(11), 5213; https://doi.org/10.3390/su18115213 (registering DOI) - 22 May 2026
Abstract
Sustainability education increasingly centers on systems and design thinking to address complex socio-environmental challenges. While these approaches enhance reflexivity, interdisciplinarity, and problem-solving capacity, this paper argues that they also translate complex problems into forms that institutions can recognize, act on, and bring to
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Sustainability education increasingly centers on systems and design thinking to address complex socio-environmental challenges. While these approaches enhance reflexivity, interdisciplinarity, and problem-solving capacity, this paper argues that they also translate complex problems into forms that institutions can recognize, act on, and bring to closure. Drawing on institutional theory and visual semiotics, this paper uses grammar in a structural sense to examine how sustainability education organizes perception, responsibility, and action. The analysis focuses on recurring pedagogical images—including the iceberg model, feedback loops, empathy maps, and the double diamond—and is informed by prior analyses of visual representations. Rather than treating these images as representations, this paper analyzes them as pedagogical infrastructures that stabilize recurring grammars of actionability in the sustainability field. These grammars translate disagreement, complexity, uncertainty, causality, and moral distance into forms that are legible, actionable, and provisionally closable within institutional contexts. While this alignment enables coordination and responsiveness, it also narrows the scope of responsibility by privileging synthesis, adaptation, and iteration over redistribution, obligation, and structural transformation. For educators, this framework offers a way to teach students not only to use systems and design tools but also to reflect on what it means to be an agent of change while institutionally embedded.
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(This article belongs to the Section Sustainable Education and Approaches)
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Open AccessArticle
A Preliminary Data-Driven Competency Mapping Study for Modular Construction Designers: Exploratory Korean Validation Using Bayesian BWM and Fuzzy DEMATEL
by
Woojae Kim, Hyojae Kim, Yonghan Ahn, Seokhyeon Moon and Nahyun Kwon
Sustainability 2026, 18(10), 5212; https://doi.org/10.3390/su18105212 - 21 May 2026
Abstract
Modular construction advances sustainability and is reshaping designer competencies, making workforce development critical to industry transition. Existing competency models rely mainly on expert interviews and Delphi methods, offering limited quantitative evidence on role-specific labor-market demands, causal relationships among competencies, or experience-based perceptual differences.
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Modular construction advances sustainability and is reshaping designer competencies, making workforce development critical to industry transition. Existing competency models rely mainly on expert interviews and Delphi methods, offering limited quantitative evidence on role-specific labor-market demands, causal relationships among competencies, or experience-based perceptual differences. This study presents a preliminary, data-driven competency-mapping study for modular construction designers by integrating BERTopic, Ward clustering, CVR, Bayesian BWM, and Fuzzy DEMATEL. Applied to 243 job postings from six countries, the text-mining stage identifies a candidate competency structure of 3 domains, 9 categories, and 36 performance statements. This candidate structure was then examined through an exploratory survey of 30 Korean respondents. The results suggest that Codes and Compliance represents the most clearly recognized high-consensus competency area within this local validation sample, whereas Modular Construction shows an indicative experience-related divergence in perceived causal position. Given the small and uneven subgroup sample and the formative state of Korea’s modular construction industry, the findings should be interpreted as preliminary evidence rather than as a validated competency framework or a confirmed expert–novice model. The study contributes a reproducible mixed-method workflow, a candidate competency map, and an illustrative maturity prototype for future validation and refinement.
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(This article belongs to the Section Green Building)
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Open AccessArticle
How Pre-Service Elementary Teachers Develop Scientific Concepts in AI-Integrated Lesson Designs: Implications for Sustainable Teacher Education
by
Juyoung Lee
Sustainability 2026, 18(10), 5211; https://doi.org/10.3390/su18105211 - 21 May 2026
Abstract
As AI and digital tools become more widely adopted in school education, integrating them sustainably into teacher preparation has become a central concern for sustainable teacher education. This study examined how pre-service elementary teachers develop scientific concepts within AI-integrated lesson plans and how
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As AI and digital tools become more widely adopted in school education, integrating them sustainably into teacher preparation has become a central concern for sustainable teacher education. This study examined how pre-service elementary teachers develop scientific concepts within AI-integrated lesson plans and how those patterns change within each case following teaching demonstrations and instructor feedback. Qualitative content analysis was conducted on twelve lesson plans—initial drafts and revised versions from six groups across two science units—produced within an elementary science methods course. Plans were analyzed along three dimensions of conceptual development (conceptual structuring, generalization, and conceptual explicitness) and three functional roles of AI and digital tools. In draft plans, tools were predominantly used for learner engagement and artifact production, with scientific concepts embedded in activity contexts. Following feedback, conceptual explicitness was the dimension most frequently revised, while changes in conceptual structuring and generalization appeared in fewer cases. Cases in which conceptual development reached higher levels in revised plans shared a common design feature: AI outputs were repositioned within the consolidation stage in connection with explicit concept statements, rather than serving as content presentation. These findings suggest that pedagogical judgment about positioning AI outputs within lesson stages, reflected across design–demonstration–feedback–revision cycles, is central to the quality of AI-integrated science lesson design and offers implications for sustaining teacher preparation in the era of AI.
Full article
(This article belongs to the Special Issue Sustainable Digital Education: Innovations in Teaching and Learning)
Open AccessArticle
Coupled Thermal Desorption–Thermal Plasma Methods for Diesel-Contaminated Soil Remediation and Syngas Production
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Dovilė Gimžauskaitė, Jūratė Žaltauskaitė, Justas Eimontas, Vilmantė Kudelytė, Mindaugas Aikas, Rolandas Uscila, Gintarė Sujetovienė, Austra Dikšaitytė, Liutauras Marcinauskas and Irena Vaškevičienė
Sustainability 2026, 18(10), 5210; https://doi.org/10.3390/su18105210 - 21 May 2026
Abstract
Diesel is a major soil contaminant that poses significant environmental risks, making its removal essential. This study investigates the synergistic application of thermal desorption (TD) and thermal plasma for the remediation of diesel-contaminated soil, while simultaneously converting desorbed contaminants into valuable gaseous products.
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Diesel is a major soil contaminant that poses significant environmental risks, making its removal essential. This study investigates the synergistic application of thermal desorption (TD) and thermal plasma for the remediation of diesel-contaminated soil, while simultaneously converting desorbed contaminants into valuable gaseous products. Artificially contaminated soil (25 g/kg) was treated by TD at 250–300 °C and the resulting off-gas and volatilized diesel were subsequently processed in a thermal plasma system. Soil samples were characterized using CHNS, EDX, FTIR, and TGA/DTG analyses, while gas composition was determined using a gas analyzer. The results demonstrate that TD achieved diesel removal efficiencies of up to 86% at 300 °C and 65% at 250 °C. TD off-gas and volatilized diesel were predominantly converted into synthesis gas (H2 + CO) in a thermal plasma environment, with H2 and CO concentrations reaching up to 15.49 vol% and 7.61 vol%, respectively, depending on the plasma-forming gas, carrier gas flow rate, and remediation temperature. Thermal treatment of diesel-contaminated soil significantly altered key physicochemical properties, including reduced organic matter content, increased soil compaction, and temperature-dependent shifts in pH and nitrogen speciation (decreased NO3−-N and increased NH4+-N). These changes were accompanied by enhanced phosphorus availability, indicating substantial thermally induced transformation of soil nutrients. Phytotoxicity assessment using Lepidium sativum in a soil leachate-based bioassay indicated that higher treatment temperature (300 °C) increased toxicity and inhibited plant growth, whereas treatment at 250 °C resulted in lower phytotoxicity. These findings highlight the adaptability of the proposed combination of methods enabling effective soil remediation while supporting energy recovery.
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Open AccessArticle
Evapotranspiration for Sustainable Land Management Systems
by
Salah M. Alagele, Stephen H. Anderson and Ranjith P. Udawatta
Sustainability 2026, 18(10), 5209; https://doi.org/10.3390/su18105209 - 21 May 2026
Abstract
Evapotranspiration (ET) is a fundamental process within the water cycle and the agricultural water balance, optimizing resource allocation, maintaining soil health, and enhancing ecosystem resilience to climate change. Because ET represents a primary consumptive use of irrigation on agricultural lands, enhancing water-use efficiency
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Evapotranspiration (ET) is a fundamental process within the water cycle and the agricultural water balance, optimizing resource allocation, maintaining soil health, and enhancing ecosystem resilience to climate change. Because ET represents a primary consumptive use of irrigation on agricultural lands, enhancing water-use efficiency and sustainable water management requires accurate estimation of evapotranspiration to support long-term sustainability and productivity. This study offers an effective means to visualize spatial and temporal patterns of reference evapotranspiration (ETo) across various vegetation management practices. This study examined the impacts of agroforestry buffers (ABs), grass buffers (GBs), biofuel crops in an agroforestry watershed (BCa), and biofuel crops in a grass buffer watershed (BCg) on ETo, compared to a corn (Zea mays L.)–soybean (Glycine max L.) rotation (RC) for claypan soil in Northern Missouri, USA. The experimental watersheds were located at the Greenley Memorial Research Center, Missouri, USA. Campbell Scientific sensors and Photosynthetically Active Radiation (PAR) smart sensors were installed to measure net radiation, anemometers, humidity, and air temperature. All instruments were mounted on masts at a height of 2 m above ground level in crop, tree, grass, and biofuel areas. Measured meteorological data were recorded hourly from April to October during 2017 and 2018. Daily ETo predictions were calculated using the Penman–Monteith model. These ETo predictions were displayed across the landscape using Python-based GIS for selected dates (each Saturday) for the watersheds. The methodology was implemented using the software programs of Python 2.7.10 and ArcGIS 10.3.1. The results indicated that ETo increased by 11%, 17%, 18%, and 25% in 2017, and by 7%, 9%, 14%, and 20% in 2018 for AB, BCa, BCg, and GB, respectively, compared to RC management. This process may improve soil water recharge in perennial management systems. Accurate estimation of ET in agricultural regions is critical for understanding water balance, hydrological and ecosystem processes, and climate variability. Given that agriculture constitutes the majority of global water consumption, precise ET estimation is particularly significant for sustainable water management, especially in regions experiencing water scarcity. These outcomes may support effective planning and management of agricultural water resources by enabling optimized irrigation and agricultural production.
Full article
(This article belongs to the Special Issue Land Use Strategies for Sustainable Development)
Open AccessArticle
Measuring the Level of Circularity in a Ho.Re.Ca. Organization According to UNI/TS 11820:2024
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Agata Matarazzo, Salvatore Ingenito, Marcella Bucca, Carla Zarbà, Gaetano Chinnici and Alessandro Scuderi
Sustainability 2026, 18(10), 5208; https://doi.org/10.3390/su18105208 - 21 May 2026
Abstract
Assessing the level of circularity in the Hotel, Restaurant and Catering (HoReCa) sector is a significant challenge due to the lack of standardized quantification methods and the absence of structured environmental and material accounting systems, features that are typical of a sector largely
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Assessing the level of circularity in the Hotel, Restaurant and Catering (HoReCa) sector is a significant challenge due to the lack of standardized quantification methods and the absence of structured environmental and material accounting systems, features that are typical of a sector largely composed of micro-enterprises. The technical standard UNI/TS 11820:2024 has developed a set of 71 indicators for the circular economy, structured across six domains (material resources and components; energy and water; waste and emissions; logistics; products and services; and human resources, assets, policies, and sustainability), allowing the assessment of circularity levels in a replicable and comparable manner. The present research measures circularity in a table-service restaurant micro-enterprise, which has voluntarily adopted circular economy practices since its foundation. The purpose is to test the applicability of UNI/TS 11820:2024 in the HoReCa context, improve knowledge about this technical standard, and highlight its strengths and weaknesses from the managerial, methodological and public authorities’ perspective. The overall organization’s circularity score achieved is 31.88%, with performance ranging from 14.40% for “material resources and components” to 56.25% for “human resources, assets and policies”. Although UNI/TS 11820:2024 aims at bridging theoretical and practical gaps towards a harmonized set of measurement tools, sector-specific indicators for the foodservice context remain underrepresented, and public authorities and universities should promote both basic and advanced education in the field of circular economy measurement to support wider adoption.
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Open AccessArticle
Determinants of Adopting Climate-Smart Agriculture Practices by Small-Scale Urban Crop Farmers in eThekwini Municipality
by
Nolwazi Z. Khumalo, Melusi Sibanda and Lelethu Mdoda
Sustainability 2026, 18(10), 5207; https://doi.org/10.3390/su18105207 - 21 May 2026
Abstract
Climate change continues to threaten global food security. Climate-smart agriculture (CSA) offers a solution to addressing this challenge in urban agriculture (UA). This paper addresses a gap in the empirical literature on decision-making about the adoption of CSA practices by examining the determinants
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Climate change continues to threaten global food security. Climate-smart agriculture (CSA) offers a solution to addressing this challenge in urban agriculture (UA). This paper addresses a gap in the empirical literature on decision-making about the adoption of CSA practices by examining the determinants of CSA adoption among small-scale urban crop (SSUC) farmers in eThekwini (ETH) Municipality, South Africa. Grounded in a utility theory framework, the paper draws on 412 respondents (Cochran-estimated) from a multi-stage sample design across four wards, providing reasonable coverage of SSUC farmers in ETH Municipality. While the sample size is statistically representative of SSUC farmers in ETH Municipality, it is a single metropolitan case rather than universal. The results show strong complementarities among these CSA practices, for example, between OM and CD (r ≈ 0.70, p < 0.001) and M and CD (r ≈ 0.61, p < 0.001). The multivariate probit (MVP) model predicts that the socio-economic and institutional factors age, gender, marital and employment status, education, credit access, extension contact, land tenure, and location (distance from home to farm plots) (p < 0.05) were significant determinants of adopting CSA practices by SSUC farmers. The findings contribute to the global literature on the UA–CSA nexus, demonstrating that socio-economic and institutional factors shape the adoption of bundled CSA practices. While the findings underscore the need for integrated, custom, and UA context-specific policy and extension interventions to strengthen urban food system resilience, UA farmers, practitioners, researchers, and policymakers should apply these insights elsewhere with caution.
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(This article belongs to the Section Sustainable Agriculture)
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Open AccessArticle
Carbide Slag Decontamination and Mineralization: A Circular Economy Approach to High-Purity CaCO3 and CO2 Storage
by
Huaigang Cheng, Ruirui Hou, Yanli Wang, Bo Wang, Zhuohui Ma and Jincai Zhang
Sustainability 2026, 18(10), 5206; https://doi.org/10.3390/su18105206 - 21 May 2026
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Calcium carbide slag is a highly alkaline solid waste generated during acetylene production, but its long-term accumulation causes land occupation and persistent environmental risks such as soil alkalinization and water pollution. To support circular economy and carbon emission reduction goals, in this study,
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Calcium carbide slag is a highly alkaline solid waste generated during acetylene production, but its long-term accumulation causes land occupation and persistent environmental risks such as soil alkalinization and water pollution. To support circular economy and carbon emission reduction goals, in this study, we develop an integrated physical decontamination–mineralization process combining calcination, magnetic separation, sedimentation, and CO2 mineralization. After calcination, magnetic separation, and 8 h of gravity sedimentation, the removal efficiency of Si reaches about 67% (residual Si content reduces to 0.43%), while those of Fe and Al are 75.4% and 74.2%, respectively. The purified calcium-rich slurry is then used for CO2 mineralization. Under a solid-to-liquid ratio of 10% and a CO2 flow rate of 0.4 L/min, CO2 is fixed as carbonate solids, yielding calcite-type CaCO3 with 97.88% ± 0.35% purity. This process is centered on physical separation and uses no acids, alkalis, or ammonium salts, avoiding secondary pollution while achieving waste valorization and permanent CO2 sequestration. In this study, we provide a scalable, low-impact pathway for alkaline solid waste valorization and carbon emission reduction, contributing to sustainable consumption and production (SDG 12) and climate action (SDG 13).
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Open AccessArticle
Building Back Better or Locking in Carbon? A Provincial Panel Analysis of Residential Energy Demand and Low-Carbon Reconstruction Policy in Post-Earthquake Türkiye
by
Kerem Yavuz Arslanlı, Ayşe Buket Önem, Cemre Özipek, Maide Dönmez, Maral Taşçılar, Belinay Hira Güney, Şule Tağtekin, Candan Bodur and Yulia Besik
Sustainability 2026, 18(10), 5205; https://doi.org/10.3390/su18105205 - 21 May 2026
Abstract
Post-disaster reconstruction programmes create an irreversible window for embedding or foreclosing residential energy efficiency at scale. This study examines the structural determinants of per capita residential electricity consumption (K_MES) across all 81 provinces of Türkiye over 2013–2022 using a balanced province-year panel. We
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Post-disaster reconstruction programmes create an irreversible window for embedding or foreclosing residential energy efficiency at scale. This study examines the structural determinants of per capita residential electricity consumption (K_MES) across all 81 provinces of Türkiye over 2013–2022 using a balanced province-year panel. We develop two complementary panel models, both estimated by two-way fixed effects (province + year) with cluster-robust standard errors, and supported by GLS-AR(1) and random-effects GLS robustness checks. Note that K_MES measures the electricity component of residential energy use only; we, therefore, also estimate the building-stock model with a constructed total-energy dependent variable that combines residential electricity (H_MES) and natural-gas consumption (X_DG) in kWh-equivalent units. Model 1 isolates the macroeconomic transmission channel through which exchange-rate volatility shapes residential electricity demand. Because the USD/TRY rate has no cross-sectional variation, its identifying power in two-way fixed effects comes from its interaction with province-level natural-gas-heating exposure (sh_gas × EV_DA). The interaction is robustly negative across all full-sample specifications (β ≈ −0.022, p < 0.01), indicating that provinces with greater gas-heating penetration are buffered against currency-depreciation pass-through into electricity demand. Provincial GDP carries the dominant direct macro coefficient (β ≈ 0.27–0.29, p < 0.01), establishing income elasticity rather than the exchange rate as the headline aggregate driver. Model 2 decomposes the building stock by structural system, filler material, heating system, and heating fuel. The dominant predictors are the share of electric heating (β ≈ 1.16–1.27, p < 0.01) and the share of AC-only heating (β ≈ −1.0 to −1.13, p < 0.05), with a total-energy specification reaching R2 = 0.92. In the comparative subsample of the eleven Kahramanmaraş-affected provinces, masonry construction emerges as the dominant pre-disaster predictor of per capita electricity consumption (β = 14.04, p < 0.05), revealing structurally distinct stock characteristics that pre-date the February 2023 earthquake. Two re-framings are required. First, since the panel covers 2013–2022, the disaster-province estimates capture pre-disaster structural heterogeneity rather than post-disaster market rupture. Second, the macroeconomic mechanism that prior work attributed to the exchange-rate level is more accurately understood as a fuel-mix-mediated exposure channel. The combined evidence implies that mandatory building-code enforcement and natural-gas grid extension are complementary policy levers in the 488,000-unit Turkish Housing Development Administration reconstruction programme: gas grid expansion reduces the macroeconomic vulnerability of residential energy demand, while masonry-replacement construction standards address the largest pre-disaster structural determinant of energy intensity in the affected region.
Full article
(This article belongs to the Section Sustainable Urban and Rural Development)
Open AccessArticle
Improvement Pathways for Irrigation Water Use Efficiency in Large and Medium-Sized Irrigation Districts Based on Analysis of Influencing Factors: A Machine Learning Case Study in Anhui, China
by
Hu Zhang, Bin Xu, Shangming Jiang, Fengcun Yu and Shiwei Zhou
Sustainability 2026, 18(10), 5204; https://doi.org/10.3390/su18105204 - 21 May 2026
Abstract
Irrigation water use efficiency (IWUE) is a core indicator for assessing agricultural water use efficiency. However, existing studies predominantly focus on linear relationships between IWUE and individual correlates, with insufficient attention to the nonlinear interactions among multiple factors and the staged pathways of
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Irrigation water use efficiency (IWUE) is a core indicator for assessing agricultural water use efficiency. However, existing studies predominantly focus on linear relationships between IWUE and individual correlates, with insufficient attention to the nonlinear interactions among multiple factors and the staged pathways of IWUE improvement. Taking 153 large- and medium-sized irrigation districts in Anhui Province as a case study, this research identifies seven key influencing factors—including canal lining rate (CLR), proportion of water-saving irrigation area (WSIR), and water price (WP)—and employs a random forest model coupled with SHAP (SHapley Additive exPlanations) interpretability analysis to uncover the driving mechanisms and enhancement pathways of IWUE. The results reveal that CLR, WSIR, and WP are the top three correlates, collectively contributing 67.80% to IWUE variation, with CLR being the most influential (28.75%). Their effects exhibit strong nonlinearity and threshold behavior: the marginal benefit of CLR diminishes significantly beyond approximately 75%; the optimal incentive range for WP lies between 0.09 and 0.14 CNY/m3; and precipitation exerts a persistent negative constraint. Moreover, IWUE improvement follows a sequential hierarchy: CLR serves as the foundational prerequisite; once CLR reaches a certain threshold, advancing WSIR becomes essential; and further gains require synergistic interaction between WSIR and WP after both attain sufficient levels. This study elucidates the nonlinear response mechanisms and stage-dependent driving patterns of IWUE, offering scientific insights and quantitative support for targeted, precision-oriented upgrades of irrigation infrastructure in Anhui Province and analogous humid/semi-humid regions, thereby contributing to sustainable agricultural water management.
Full article
(This article belongs to the Special Issue Towards Sustainability: Applications of Machine Learning in Water Management and Environmental Monitoring)
Open AccessArticle
Integrating Experimental Pyrolysis and Machine Learning for Sustainable Biochar Yield Prediction from Lignocellulosic Waste
by
Abdulkarim Aljomah and Şeyda Taşar
Sustainability 2026, 18(10), 5203; https://doi.org/10.3390/su18105203 - 21 May 2026
Abstract
Biochar production from lignocellulosic waste represents a sustainable route for biomass valorization and carbon management within circular bioeconomy frameworks. In this study, biochar was produced from two abundant agricultural wastes in Türkiye—tea-brewing residues and almond husks—via controlled non-isothermal pyrolysis, and biochar yield was
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Biochar production from lignocellulosic waste represents a sustainable route for biomass valorization and carbon management within circular bioeconomy frameworks. In this study, biochar was produced from two abundant agricultural wastes in Türkiye—tea-brewing residues and almond husks—via controlled non-isothermal pyrolysis, and biochar yield was modeled using data-driven machine learning approaches. The effects of key process parameters, including carbonization temperature (37–850 °C covering drying/pre-pyrolysis and pyrolysis regions), residence time (1–150 min), and heating rate (10–60 °C min−1), were evaluated using regression-based, ensemble, and deep learning models. Model performance was evaluated using cross-validation on training and testing datasets. The results showed that linear models exhibited limited predictive capability (R2 < 0.95), while regularized and ensemble models improved performance (R2 ≈ 0.97–0.99). Among all approaches, Gaussian Process Regression (GPR) achieved the highest predictive performance (R2 ≈ 0.99, RMSE ≈ 0.06), indicating its superior ability to capture nonlinear relationships, particularly for limited datasets. Sensitivity and partial dependence analyses identified carbonization temperature as the dominant factor controlling biochar yield, with sharp declines observed above 600 °C. Optimal yields of 52–55% were obtained at 400–500 °C and residence times of 10–15 min, while lower heating rates enhanced yield stability. Overall, the results demonstrate that advanced machine learning models provide reliable tools for optimizing biochar production and supporting sustainable thermochemical conversion of lignocellulosic waste for energy and carbon-oriented sustainability applications.
Full article
(This article belongs to the Section Energy Sustainability)
Open AccessArticle
Firm Entry, Environmental Regulation, and Air Pollution: Evidence from China’s Air Pollution Prevention and Control Action Plan
by
Kaiyi Guo, Rundong Luo and Tianyue Pei
Sustainability 2026, 18(10), 5202; https://doi.org/10.3390/su18105202 - 21 May 2026
Abstract
This paper examines how local firm entry affects air pollution and whether the Air Pollution Prevention and Control Action Plan (APPCAP) changes this relationship. Using a county–month panel for 2010–2020, we match the Chinese Industrial and Commercial Enterprise Registration Database with county-level monthly
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This paper examines how local firm entry affects air pollution and whether the Air Pollution Prevention and Control Action Plan (APPCAP) changes this relationship. Using a county–month panel for 2010–2020, we match the Chinese Industrial and Commercial Enterprise Registration Database with county-level monthly PM2.5 data to measure new firm entry and its sectoral composition. To address the potential endogeneity of firm entry, we use the opening of high-speed rail as an instrumental variable. The results show that firm entry significantly increases county-level PM2.5 concentrations. This effect is highly heterogeneous across industries, with stronger pollution effects in sectors such as wholesale and retail, manufacturing, and accommodation and catering. We further find that the APPCAP significantly weakens the positive effect of firm entry on air pollution. Additional evidence suggests that the policy improves air quality not only by tightening environmental constraints, but also by shifting firm entry toward relatively cleaner industries. This paper explains the environmental consequences of local economic expansion from the perspective of incremental firm entry and provides new evidence on the joint role of environmental regulation and industrial restructuring in air pollution control.
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(This article belongs to the Section Air, Climate Change and Sustainability)
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Open AccessArticle
Does More Rural E-Commerce Still Mean Common Prosperity? A Digital Saturation Trap in Sustainable Urban–Rural Development in China
by
Zhibin Xing and Zixuan Zheng
Sustainability 2026, 18(10), 5201; https://doi.org/10.3390/su18105201 - 21 May 2026
Abstract
Rural e-commerce is treated as a lever for common prosperity, but its welfare effect turns non-monotonic across digital-development gradients, raising concerns about the widening urban–rural gap in sustainable regional development. We built a county-year panel of 2725 Chinese counties from 2014 to 2022,
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Rural e-commerce is treated as a lever for common prosperity, but its welfare effect turns non-monotonic across digital-development gradients, raising concerns about the widening urban–rural gap in sustainable regional development. We built a county-year panel of 2725 Chinese counties from 2014 to 2022, with Taobao village density as the treatment, land-based agricultural value conversion efficiency as the county-level mediator, and the Peking University digital financial inclusion digitization sub-index as the moderator. The estimations combine two-way fixed-effect regressions, continuous-interaction moderation, Hansen panel-threshold regression, Callaway–Sant’Anna difference-in-differences, Bartik shift-share instrumentation with Rotemberg-weight diagnostics, and multiple imputation by chained equations supplemented by propensity-score sensitivity checks. Taobao village density linearly depresses rural per-capita disposable income and produces a significant U-shape in the nightlight Gini with an in-sample turning point. The marginal effect on Sen welfare moves from approximately log-units at low digitization to approximately at high digitization, with the sign-reversal becoming statistically significant only above the 55th percentile of the moderator (Hansen threshold at the 85th percentile), so the trap is a tail regime rather than a generalized reversal; over the panel window, however, 80.5% of counties cross into the trap zone in at least one year. Approximately 28 percent of the welfare squeeze passes through the land-based ecological efficiency channel, with parallel mediators delivering 19–90 percent. The deepest squeeze appears in cash-crop counties that platform theory predicted to benefit most, where the welfare effect at high digitization is roughly times the staple-grain effect. We label this pattern the Digital Saturation Trap and argue that sustainable urban–rural policy should shift from uniform platform access toward differentiated platform governance in counties beyond the saturation threshold.
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(This article belongs to the Collection Economic Inequality, Regional Disparities and Sustainable Development)
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Zero Waste, 100% Resources: From Utopian Vision to Public–Private Opportunity in the Circular Economy
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Fernando Ferri, Patrizia Grifoni, Noemi Biancone, Ester Napoli, Sabine Schubbe, Magalie Michalak, Daniel Gerdes, Rosa Onofre, Sofia Martins, Elsa Ferreira Nunes, Nikoletta Vogli, Theofano Kollatou, Konstantinos Karamarkos, Athina Krestou, Francesco Lembo, Zuzana Bohacova, Gaëlle Colas, Valentina Scavelli, Caterina Praticò, Francesco Niglia, Nina J. Zugic, Ilaria Corsi and Frederic Andresadd
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Sustainability 2026, 18(10), 5200; https://doi.org/10.3390/su18105200 - 21 May 2026
Abstract
Adopting a circular economy approach requires new business models, multi-stakeholder engagement, and tailored financial models and mechanisms as core pillars. This paper examines the conditions needed to scale circular economy initiatives in Europe by analysing insights collected from the DECISO project and conducting
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Adopting a circular economy approach requires new business models, multi-stakeholder engagement, and tailored financial models and mechanisms as core pillars. This paper examines the conditions needed to scale circular economy initiatives in Europe by analysing insights collected from the DECISO project and conducting a comparative analysis of 38 European projects. The study adopts a mixed methods approach that integrates an online stakeholder survey with inputs generated through participatory workshops and discussions of selected use cases. This combined approach is used to identify the main structural barriers limiting the maturity and investment readiness of circular economy projects, such as regulatory complexity, difficulties in accessing funding, and weak stakeholder dialogue mechanisms. The approach was also used for enabling factors that can support development of circular economy. Particular attention is given to the role of project development assistance, modular financing strategies, and de-risking tools, which are highlighted as crucial elements for supporting the technical and economic credibility of projects and attracting public and private investors. The article also identifies and addresses seven unresolved research gaps in the literature, including the lack of interoperable policy instruments, the absence of business models capable of integrating investor expectations, the paucity of integrated methodologies for assessing technical and economic regulatory feasibility, and the need for trust-building procedures. The findings suggest that the transition to a regenerative economy requires a systemic approach based on coherent policies, de-risking financial instruments, collaborative governance, and strategic technical support throughout the project development cycle.
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(This article belongs to the Special Issue Entrepreneurship, Innovation and Sustainable Business Development in a Changing Economic Environment)
Open AccessArticle
Air or Ground EMS: The Fastest Route to Care in Alberta
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Tyler Selby, Rizwan Shahid, Michael Govorov and Stefania Bertazzon
Sustainability 2026, 18(10), 5199; https://doi.org/10.3390/su18105199 - 21 May 2026
Abstract
Emergency medical response is complex. The need to make time-based decisions that can impact people’s health requires careful examination. Network analysis, among other methods, can support that time-based decision making. This study explores network analysis through a multi-modal transportation network model to represent
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Emergency medical response is complex. The need to make time-based decisions that can impact people’s health requires careful examination. Network analysis, among other methods, can support that time-based decision making. This study explores network analysis through a multi-modal transportation network model to represent both fixed-wing air and ground Emergency Medical Services (EMS) resources. Methods: The study utilized open and EMS industry data to build a geospatial multi-modal network to model potential patient transfer across Alberta (Canada). Results: Within the study’s service area, ground transportation alone is more effective within 101 Km, at which threshold the addition of aerial transport begins to be more time effective, saving 9.7 min over ground transportation only. Between this distance and 417 Km, results show a mixed-use area where a combination of ground only and aerial travel is recommended based on the event pickup location, aircraft availability, and ambulance station location relative to high-speed roads. Beyond 417 Km, aerial transportation is consistently more efficient. There is a high correlation (R2 = 0.82) between trip length and time difference between using ground only mode and combined air and ground. Lastly, the data showed air travel is 6.6 times more expensive than ground travel, with no modeled transfers identifying air as more time-effective than ground travel. Conclusions: Fixed-wing aircraft travel can have a positive impact on patient transfers; however, fluctuations in flight routes and times may require response agencies to implement time buffers to account for these variabilities. No cost savings were seen using fixed-wing aircraft, and the benefit of their use would be realized with efficient patient transfer times, as well as leaving ground ambulances in localized areas.
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(This article belongs to the Section Health, Well-Being and Sustainability)
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Identification of Spatiotemporal Dynamics of Non-Grain Cropland and Its Geographical Differentiation Characteristics in the Guanzhong Region, China
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Donghai Zhang, Mengxiao Huang, Jin Lu, Duo Zhang, Chenglong Huang and Miao Zhang
Sustainability 2026, 18(10), 5198; https://doi.org/10.3390/su18105198 - 21 May 2026
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Ensuring food security is a top priority for China, and non-grain production (NGP) of cropland can substantially reduce food production. As the core grain production base in Shaanxi Province and even Northwest China, the Guanzhong region’s evolution of NGP is very important. Based
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Ensuring food security is a top priority for China, and non-grain production (NGP) of cropland can substantially reduce food production. As the core grain production base in Shaanxi Province and even Northwest China, the Guanzhong region’s evolution of NGP is very important. Based on the single-phase remote sensing data and the time-series curve, this study identifies explicit non-grain production (E-NGP) and implicit non-grain production (I-NGP) of cropland in the Guanzhong region from 2001 to 2020. Spatial analysis and gradient analysis are applied to characterize the spatiotemporal dynamics, differences in reversibility, grain loss, and driving factors of E-NGP and I-NGP. The results show that the area of cropland used for NGP in the Guanzhong region has gradually increased over the past two decades. In 2020, the area of E-NGP reached 4212.06 km2, while that of I-NGP accounted for 8300.16 km2. The total cumulative loss attributed to NGP in 2020 reached 11.58 million tons, and the grain loss caused by I-NGP was approximately twice that of E-NGP. Moreover, cropland used for I-NGP exhibits greater instability and reversibility, making it more susceptible to human intervention than that under E-NGP. The cropland used for E-NGP is mainly distributed around urban areas, where it is often converted into construction land. The cropland used for I-NGP gradually expands from north to south, with areas south of the Weihe River increasingly converted into economic fruit forests. E-NGP is driven by both terrain and socioeconomic factors, while I-NGP shows a stronger natural geographical dependence. This study defines the scale boundaries and driving factors of NGP in the Guanzhong region, reveals its substantial threat to grain production capacity, and provides theoretical support for regional policy implementation and the formulation of refined cropland protection policies in the Guanzhong region.
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Spatiotemporal Evolution, Convergence, and Driving Factors of Green Industry Chain Resilience in China
by
Qian Zhou and Meijie Yang
Sustainability 2026, 18(10), 5197; https://doi.org/10.3390/su18105197 - 21 May 2026
Abstract
Considering rising global uncertainties and intensifying resource and environmental pressures, it has become an inevitable trend to add more ecologically green factors to the traditional industrial chain resilience system and build a system of green industrial chain resilience (GICR). To address the inherent
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Considering rising global uncertainties and intensifying resource and environmental pressures, it has become an inevitable trend to add more ecologically green factors to the traditional industrial chain resilience system and build a system of green industrial chain resilience (GICR). To address the inherent tension between security and green goals, this study develops a novel two-dimensional analytical framework encompassing fracture repair capacity and development regeneration capacity. This framework provides the theoretical foundation for constructing a pioneering city-level evaluation system for GICR. Employing this system and a suite of spatial econometric methods, we empirically analyze the spatiotemporal evolution, convergence, and driving mechanisms of GICR across 245 Chinese cities. The main findings are threefold. First, the proposed framework effectively captures the complexity of GICR, revealing an overall upward trend but significantly widening regional disparities, with a persistent core-periphery spatial pattern. Second, convergence analysis uncovers a club convergence dynamic nationwide, characterized by a notable “high-level equilibrium lock-in” in the advanced eastern region, in contrast to the catch-up convergence observed in central, western, and northeastern China. Third, geographical detector analysis identifies talent agglomeration as the paramount driver, with its interaction with other factors producing nonlinear enhancement effects. These findings underscore that enhancing GICR requires regionally differentiated strategies: policies must break the innovation lock-in in the east, embed resilience standards into industrial transfer in the central and western regions, and prioritize talent as the core lever for synergistic capacity building.
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(This article belongs to the Special Issue Advancing Sustainable Cities and Urban Regions Development: New Challenges and Prospects)
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Energy Consumption, Economic Growth, and CO2 Emissions in GCC Countries: Panel Evidence and the Environmental Kuznets Curve
by
Ines Ben Salah, Houda Arouri, Emna Klibi and Houcem Smaoui
Sustainability 2026, 18(10), 5196; https://doi.org/10.3390/su18105196 - 21 May 2026
Abstract
The Gulf Cooperation Council (GCC) countries consistently rank among the highest per capita CO2 emitters globally, yet rigorous empirical analysis of the structural drivers of these emissions in the post-Paris Agreement era remains scarce. This study investigates the determinants of CO2
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The Gulf Cooperation Council (GCC) countries consistently rank among the highest per capita CO2 emitters globally, yet rigorous empirical analysis of the structural drivers of these emissions in the post-Paris Agreement era remains scarce. This study investigates the determinants of CO2 emissions per capita across six GCC economies—Bahrain, Kuwait, Oman, Qatar, Saudi Arabia, and the United Arab Emirates—over the period 2015–2022, using pooled ordinary least squares (OLSs) and country fixed effects (FEs) panel regression models with country-clustered standard errors. The focal explanatory variable is energy use per capita, complemented by GDP per capita, trade openness, urbanization, foreign direct investment (FDI), and industry value added as controls. A quadratic income term explicitly tests the environmental Kuznets curve (EKC) hypothesis. Results consistently show that energy use is the dominant driver of emissions. The EKC hypothesis is supported in the FE framework. The implied turning point of approximately USD 85,500 per capita (constant 2015 USD) is already exceeded by Qatar (panel mean: USD 114,835) and approached by the UAE (USD 71,434), while Bahrain (USD 55,681), Kuwait (USD 51,531), Saudi Arabia (USD 61,232), and Oman (USD 38,591) remain on the EKC’s rising slope, consistent with their continued emissions’ growth trajectories. Urbanization exerts a significant positive within-country effect on emissions. Trade openness reduces emissions in cross-sectional specifications, while FDI is systematically insignificant. These findings support energy efficiency reforms, renewable energy expansion, and low-carbon urban planning as the most effective policy levers for GCC decarbonization.
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(This article belongs to the Section Economic and Business Aspects of Sustainability)
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