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17 pages, 650 KB  
Article
Optimization of Biomass Delivery Through Artificial Intelligence Techniques
by Marta Wesolowska, Dorota Żelazna-Jochim, Krystian Wisniewski, Jaroslaw Krzywanski, Marcin Sosnowski and Wojciech Nowak
Energies 2025, 18(18), 5028; https://doi.org/10.3390/en18185028 - 22 Sep 2025
Viewed by 336
Abstract
Efficient and cost-effective biomass logistics remain a significant challenge due to the dynamic and nonlinear nature of supply chains, as well as the scarcity of comprehensive data on this topic. As biomass plays an increasingly important role in sustainable energy systems, managing its [...] Read more.
Efficient and cost-effective biomass logistics remain a significant challenge due to the dynamic and nonlinear nature of supply chains, as well as the scarcity of comprehensive data on this topic. As biomass plays an increasingly important role in sustainable energy systems, managing its complex supply chains efficiently is crucial. Traditional logistics methods often struggle with the dynamic, nonlinear, and data-scarce nature of biomass supply, especially when integrating local and international sources. To address these challenges, this study aims to develop an innovative modular artificial neural network (ANN)-based Biomass Delivery Management (BDM) model to optimize biomass procurement and supply for a fluidized bed combined heat and power (CHP) plant. The comprehensive model integrates technical, economic, and geographic parameters to enable supplier selection, optimize transport routes, and inform fuel blending strategies, representing a novel approach in biomass logistics. A case study based on operational data confirmed the model’s ability to identify cost-effective and quality-compliant biomass sources. Evaluated using empirical operational data from a Polish CHP plant, the ANN-based model demonstrated high predictive accuracy (MAE = 0.16, MSE = 0.02, R2 = 0.99) within the studied scope. The model effectively handled incomplete datasets typical of biomass markets, aiding in supplier selection decisions and representing a proof-of-concept for optimizing Central European biomass logistics. The model was capable of generalizing supplier recommendations based on input variables, including biomass type, unit price, and annual demand. The proposed framework supports both strategic and real-time logistics decisions, providing a robust tool for enhancing supply chain transparency, cost efficiency, and resilience in the renewable energy sector. Future research will focus on extending the dataset and developing hybrid models to strengthen supply chain stability and adaptability under varying market and regulatory conditions. Full article
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23 pages, 424 KB  
Article
Factors Affecting the Support of Industrial Businesses’ Performance in Vietnam’s Digital Economy
by Duong Phuong Thao Pham, Duc Huynh, Kim-Linh Le and Thao-Anh Le
Sustainability 2025, 17(17), 7996; https://doi.org/10.3390/su17177996 - 4 Sep 2025
Viewed by 1226
Abstract
This study analyzes the factors that affect the technical efficiency (TE) of firms in the supporting industry in the context of Vietnam’s digitalized economy. Stochastic frontier analysis (SFA), Fixed Effect Models, and System-GMM methods are applied to reach the findings that the quality [...] Read more.
This study analyzes the factors that affect the technical efficiency (TE) of firms in the supporting industry in the context of Vietnam’s digitalized economy. Stochastic frontier analysis (SFA), Fixed Effect Models, and System-GMM methods are applied to reach the findings that the quality of human resources, capital intensity, and firm size have positive effects on TE. Furthermore, exogenous environmental factors, such as the domestic demand of an industry impacting all upstream businesses, which use inputs that are products of that industry (BSpill-ratio), and the FDI backward effect (BFSpill), also exhibit positive effects. These confirm that the linkage between domestic supporting industry suppliers and FDI assembly enterprises plays an important role in improving TE. Vietnam’s digital transformation since 2020 has also created some interesting changes in the correlation coefficient. Location, sectors, competitiveness, and investment environment are also considered, and the results suggest that they are all determinants to be considered in management policies at both the firm level and the government level. Our contribution in this study is new policies aligned with many major changes in the world economic context, such as the tough tariff policy implemented by recent presidential administrations and a series of reforms of the Vietnamese Government, as well as strong digital transformation in Vietnam. The key findings of this research are important as they confirm which factors are really determinants for the Vietnamese government to implement investment policies for this industry effectively. Full article
20 pages, 2367 KB  
Article
Challenges for Improved Production and Value Share Along the Honey Value Chain in Ethiopia
by Mulubrihan Bayissa, Ludwig Lauwers, Fikadu Mitiku, Dirk C. de Graaf and Wim Verbeke
Agriculture 2025, 15(17), 1871; https://doi.org/10.3390/agriculture15171871 - 2 Sep 2025
Viewed by 1148
Abstract
Although Ethiopia has an enormous agroecological potential for beekeeping, only 10% of it is realized. As its conventional smallholder production calls for improvement in market relationships, this paper aims at an in-depth analysis of the honey value chain, value share distribution, and leverages [...] Read more.
Although Ethiopia has an enormous agroecological potential for beekeeping, only 10% of it is realized. As its conventional smallholder production calls for improvement in market relationships, this paper aims at an in-depth analysis of the honey value chain, value share distribution, and leverages for improvement. Questionnaires, focus group discussions, and key informant interviews were used to collect data. Descriptive statistics, value chain mapping, and margin analysis were used for analysis. The main honey value chain actors were input suppliers, producers (beekeepers), collectors, wholesalers, processors, cooperatives, unions, retailers, and consumers. Agricultural offices, research centers, trade and market development offices, financial institutions, and NGOs are major supporters. The value share of beekeepers using traditional hives is still low, while the largest share goes to improved hive users and wholesalers, respectively. Weak market linkages, high costs and shortage of modern equipment, limited access to credit, lack of legal frameworks and standardized laboratories, absconding, pest infestation, and unsafe use of agrochemicals were the major challenges. Nevertheless, attractive investment policy, global market demand, low capital requirements, and support from NGOs were key opportunities. Improving access to better market, finance and modern inputs, capacity building, legal reform, and a standardized laboratory would help to support the honey value chain and its contribution. Full article
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14 pages, 838 KB  
Article
Fuzzy TOPSIS Reinvented: Retaining Linguistic Information Through Interval-Valued Analysis
by Abdolhanan Aminoroaya, Abdollah Hadi-Vencheh, Ali Jamshidi and Amir Karbassi Yazdi
Mathematics 2025, 13(17), 2819; https://doi.org/10.3390/math13172819 - 2 Sep 2025
Viewed by 566
Abstract
In real-world decision-making situations, experts often rely on subjective and imprecise judgments, frequently expressed using linguistic terms. While fuzzy logic offers a valuable tool to capture and process such uncertainty, traditional methods often convert fuzzy inputs into crisp values too early in the [...] Read more.
In real-world decision-making situations, experts often rely on subjective and imprecise judgments, frequently expressed using linguistic terms. While fuzzy logic offers a valuable tool to capture and process such uncertainty, traditional methods often convert fuzzy inputs into crisp values too early in the process. This premature defuzzification can result in significant loss of information and reduced interpretability. To address this issue, the present study introduces an enhanced fuzzy TOPSIS model that utilizes expected interval representations instead of early crisp transformation. This approach allows the original fuzzy data to be preserved throughout the analysis, leading to more transparent, realistic, and informative decision outcomes. The practical application of the proposed method is demonstrated through a supplier selection case study, which illustrates the model’s capability to handle real-world, complex, and qualitative decision environments. By explicitly linking the method to this domain, the study provides a concrete anchor for practitioners and decision-makers seeking transparent and robust evaluation tools. Full article
(This article belongs to the Special Issue Application of Multiple Criteria Decision Analysis)
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21 pages, 1918 KB  
Article
The Regional and Personal Disparities of Global Renewable Energy Use from Four Perspectives
by He He, Zhuanting Wang, Zekai Jiang, Tian Liu and Zifei Qin
Sustainability 2025, 17(17), 7822; https://doi.org/10.3390/su17177822 - 30 Aug 2025
Cited by 1 | Viewed by 733
Abstract
Global climate change demands a rapid transition to renewable energy for sustainable development and carbon neutrality. However, existing frameworks often overlook the dynamics of renewable energy use across production, consumption, final production, and income perspectives of the economy, thereby limiting understanding of global [...] Read more.
Global climate change demands a rapid transition to renewable energy for sustainable development and carbon neutrality. However, existing frameworks often overlook the dynamics of renewable energy use across production, consumption, final production, and income perspectives of the economy, thereby limiting understanding of global energy transitions. This study addresses this gap using a multi regional input-output (MRIO) model to analyze renewable energy use globally from 2000 to 2021 through multiple perspectives. Our findings reveal significant disparities in renewable energy use across countries. The United States is the largest renewable energy user by four perspectives in 2021, while per capita renewable energy use reveals pronounced disparities, with heavily populated countries like China and India having notably low use levels. Furthermore, resource-exporting countries, as primary suppliers for global renewable energy, promote renewable energy use, making a substantial contribution to the energy transition. Sectoral analysis highlights the significance of electricity, gas, and water industries in renewable energy use. This study provides a comprehensive framework for analyzing renewable energy use, offering valuable insights to policymakers to accelerate equitable and sustainable energy transitions. Full article
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25 pages, 425 KB  
Article
Does Financial Power Lead Farmers to Focus More on the Behavioral Factors of Business Relationships with Input Suppliers?
by Michał Gazdecki and Kamila Grześkowiak
Sustainability 2025, 17(17), 7634; https://doi.org/10.3390/su17177634 - 24 Aug 2025
Viewed by 880
Abstract
Developments in agriculture is reshaping the agribusiness landscape, altering farms’ bargaining power and strategic positioning within supply chains. These dynamics raise important questions about how financial strength influences farmers’ preferences for different components of business relationships with input suppliers. The primary objective of [...] Read more.
Developments in agriculture is reshaping the agribusiness landscape, altering farms’ bargaining power and strategic positioning within supply chains. These dynamics raise important questions about how financial strength influences farmers’ preferences for different components of business relationships with input suppliers. The primary objective of this study is to examine the relationship between a farm’s financial power and the importance it assigns to the behavioral dimension in such relationships. To address this objective, we employ a two-stage research design. In the first stage, qualitative interviews with farmers were conducted to identify the key attributes contributing to relationship value, encompassing economic, strategic, and behavioral dimensions. In the second stage, a quantitative survey was administered to 249 farmers, supplemented with financial data from the Farm Accountancy Data Network (FADN). The Maximum Difference Scaling (MaxDiff) method was applied to assess the relative importance of these attributes, followed by statistical analysis linking the observed preferences to a composite indicator of financial power. The results indicate that financially stronger farms place greater emphasis on economic factors while attaching less importance to behavioral aspects. Among less financially powerful farms, two distinct patterns emerge: one characterized by opportunistic, price-oriented behavior, and another reflecting a relational orientation that values trust, communication, and long-term cooperation alongside economic conditions. These findings contribute to a better understanding of business relationships in agribusiness by explaining how financial power shapes the trade-off between economic and behavioral components. Full article
(This article belongs to the Special Issue Smart Supply Chain Innovation and Management)
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26 pages, 1541 KB  
Article
Assessing the Socioeconomic and Environmental Impact of Hybrid Renewable Energy Systems for Sustainable Power in Remote Cuba
by Israel Herrera Orozco, Santacruz Banacloche, Yolanda Lechón and Javier Dominguez
Sustainability 2025, 17(17), 7592; https://doi.org/10.3390/su17177592 - 22 Aug 2025
Viewed by 1365
Abstract
This study evaluates the viability of a specific hybrid renewable energy system (HRES) installation designed for a remote community as a case study in Cuba. The system integrates solar, wind, and biomass resources to address localised challenges of energy insecurity and environmental degradation. [...] Read more.
This study evaluates the viability of a specific hybrid renewable energy system (HRES) installation designed for a remote community as a case study in Cuba. The system integrates solar, wind, and biomass resources to address localised challenges of energy insecurity and environmental degradation. Rather than offering a generalised evaluation of HRES technologies, this work focuses on the performance, impacts, and viability of this particular configuration within its unique geographical, social, and technical context. Using life cycle assessment (LCA) and input–output modelling, the research assesses environmental and socioeconomic impacts. The proposed HRES reduces greenhouse gas emissions by 60% (from 1.14 to 0.47 kg CO2eq/kWh) and fossil energy consumption by 50% compared to diesel-based systems. Socioeconomic analysis reveals that the system generates 40.3 full-time equivalent (FTE) jobs, with significant employment opportunities in operation and maintenance. However, initial investments primarily benefit foreign suppliers due to Cuba’s reliance on imported components. The study highlights the potential for local economic gains through workforce training and domestic manufacturing of renewable energy technologies. These findings underscore the importance of integrating multiple renewable sources to enhance energy resilience and sustainability in Cuba. Policymakers should prioritise strategies to incentivise local production and capacity building to maximise long-term benefits. Future research should explore scalability across diverse regions and investigate policy frameworks to support widespread adoption of HRES. This study provides valuable insights for advancing sustainable energy solutions in Cuba and similar contexts globally. Full article
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21 pages, 1369 KB  
Article
Optimizing Cold Food Supply Chains for Enhanced Food Availability Under Climate Variability
by David Hernandez-Cuellar, Krystel K. Castillo-Villar and Fernando Rey Castillo-Villar
Foods 2025, 14(15), 2725; https://doi.org/10.3390/foods14152725 - 4 Aug 2025
Viewed by 849
Abstract
Produce supply chains play a critical role in ensuring fruits and vegetables reach consumers efficiently, affordably, and at optimal freshness. In recent decades, hub-and-spoke network models have emerged as valuable tools for optimizing sustainable cold food supply chains. Traditional optimization efforts typically focus [...] Read more.
Produce supply chains play a critical role in ensuring fruits and vegetables reach consumers efficiently, affordably, and at optimal freshness. In recent decades, hub-and-spoke network models have emerged as valuable tools for optimizing sustainable cold food supply chains. Traditional optimization efforts typically focus on removing inefficiencies, minimizing lead times, refining inventory management, strengthening supplier relationships, and leveraging technological advancements for better visibility and control. However, the majority of models rely on deterministic approaches that overlook the inherent uncertainties of crop yields, which are further intensified by climate variability. Rising atmospheric CO2 concentrations, along with shifting temperature patterns and extreme weather events, have a substantial effect on crop productivity and availability. Such uncertainties can prompt distributors to seek alternative sources, increasing costs due to supply chain reconfiguration. This research introduces a stochastic hub-and-spoke network optimization model specifically designed to minimize transportation expenses by determining optimal distribution routes that explicitly account for climate variability effects on crop yields. A use case involving a cold food supply chain (CFSC) was carried out using several weather scenarios based on climate models and real soil data for California. Strawberries were selected as a representative crop, given California’s leading role in strawberry production. Simulation results show that scenarios characterized by increased rainfall during growing seasons result in increased yields, allowing distributors to reduce transportation costs by sourcing from nearby farms. Conversely, scenarios with reduced rainfall and lower yields require sourcing from more distant locations, thereby increasing transportation costs. Nonetheless, supply chain configurations may vary depending on the choice of climate models or weather prediction sources, highlighting the importance of regularly updating scenario inputs to ensure robust planning. This tool aids decision-making by planning climate-resilient supply chains, enhancing preparedness and responsiveness to future climate-related disruptions. Full article
(This article belongs to the Special Issue Climate Change and Emerging Food Safety Challenges)
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17 pages, 1307 KB  
Review
Starch Valorisation as Biorefinery Concept Integrated by an Agro-Industry Case Study to Improve Sustainability
by Maider Gomez Palmero, Ana Carrasco, Paula de la Sen, María Dolores Mainar-Toledo, Sonia Ascaso Malo and Francisco Javier Royo Herrer
Sustainability 2025, 17(15), 6808; https://doi.org/10.3390/su17156808 - 27 Jul 2025
Viewed by 819
Abstract
The production of bio-based products for different purposes has become an increasingly common strategy over the last few decades, both in Europe and worldwide. This trend seeks to contribute to mitigating the impacts associated with climate change and to cope with the ambitious [...] Read more.
The production of bio-based products for different purposes has become an increasingly common strategy over the last few decades, both in Europe and worldwide. This trend seeks to contribute to mitigating the impacts associated with climate change and to cope with the ambitious objectives established at European level. Over recent decades, agro-industries have shown significant potential as biomass suppliers, triggering the development of robust logistical supply chains and the valorization of by-products to obtain bio-based products that can be marketed at competitive prices. However, this transformation may, in some cases, involve restructuring traditional business model to incorporate the biorefinery concept. In this sense, the first step in developing a bio-based value chain involves assessing the resource’s availability and characterizing the feedstock to select the valorization pathway and the bio-application with the greatest potential. The paper incorporates inputs from a case study on PATURPAT, a company commercializing a wide range of ready-prepared potato products, which has commissioned a starch extraction facility to process the rejected pieces of potatoes and water from the process to obtain starch that can be further valorized for different bio-applications. This study aims to comprehensively review current trends and frameworks for potatoes processing agro-industries and define the most suitable bio-applications to target, as well as identify opportunities and challenges. Full article
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34 pages, 3561 KB  
Article
Research on Pricing and Effort Investment Decisions for Dual-Channel Fresh Product Supply Chain Under the Participation of Third-Party Logistics Provider
by Yunting Wu, Aimin Zhu, Lijuan Yu and Wenbo Wang
Systems 2025, 13(7), 538; https://doi.org/10.3390/systems13070538 - 1 Jul 2025
Viewed by 537
Abstract
This study takes the dual-channel fresh product supply chain involving the participation of third-party logistics (3PL) as the background to explore how 3PL makes choices between homogeneous and differentiated logistics service strategies and how the supply chain formulates optimal decisions under different logistics [...] Read more.
This study takes the dual-channel fresh product supply chain involving the participation of third-party logistics (3PL) as the background to explore how 3PL makes choices between homogeneous and differentiated logistics service strategies and how the supply chain formulates optimal decisions under different logistics service strategies to achieve maximum benefits. This paper constructs a sequential game model of the three-tier supply chain composed of 3PL, a supplier, and a retailer; uses the consumer utility function to describe market demand; and considers different logistics service strategies adopted by 3PL. It compares and analyzes the equilibrium strategies under the traditional retail channel (O Model), the homogeneous cold-chain service dual-channel model (D1 Model), and the differentiated cold-chain service dual-channel model (D2 Model). The results show the following: (1) The D1 Model reduces the transportation cost of the supply chain through economies of scale. Under the D2 Model, the transportation and sales prices of the offline channels are higher than those of the online channels, while the online marketing effort is higher than that of the offline channels. (2) The profits generated by the dual-channel models (D1 Model and D2 Model) are both higher than those of O Model. In most cases, the D1 Model generates the highest system profit. However, in scenarios where consumers are highly sensitive to freshness and marketing efforts, the system profit of the D2 Model is higher than that of the D1 Model. (3) The supply chain has lower pricing and effort input when consumers are more sensitive to prices and higher pricing and effort input when consumers are more sensitive to freshness. These findings contribute valuable insights to the field of supply chain management, particularly in the context of fresh product supply chains involving 3PL. They underscore the importance of considering consumer behavior and logistics service strategies in optimizing supply chain performance and highlight the potential trade-offs between standardization and differentiation in logistics services. Full article
(This article belongs to the Section Supply Chain Management)
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20 pages, 1242 KB  
Article
Risk Assessment of Supplier R&D Investment Based on Improved BP Neural Network
by Yinghua Song, Xiaoyan Sang, Zhe Wang and Hongqian Xu
Mathematics 2025, 13(13), 2094; https://doi.org/10.3390/math13132094 - 26 Jun 2025
Viewed by 457
Abstract
As market competition intensifies, the survival and development of suppliers increasingly rely on research and development (R&D) investment and innovation. Due to the uncertainty of factors affecting supplier R&D investment, the risks faced by supplier R&D investment are also uncertain. Therefore, identifying and [...] Read more.
As market competition intensifies, the survival and development of suppliers increasingly rely on research and development (R&D) investment and innovation. Due to the uncertainty of factors affecting supplier R&D investment, the risks faced by supplier R&D investment are also uncertain. Therefore, identifying and assessing risks in advance and controlling risks can provide effective support for suppliers to carry out risk management of R&D investment. This paper selects key factors through literature review and factor analysis, and establishes a risk index evaluation system for R&D investment of medical material suppliers. Seventeen indicators that affect and constrain project investment factors were identified as input variables of the back propagation (BP) neural network, the comprehensive score of the R&D investment risk assessment was used as the output variable of medical supplies suppliers, and a risk assessment model for the R&D investment of medical material suppliers was established. By leveraging the ability of particle swarm optimization (PSO), whale optimization algorithm (WOA), and genetic algorithm (GA) to search for global optimal solutions, the BP neural network is improved to avoid becoming trapped in local optimal solutions and enhance the model’s generalization ability. The improvement in accuracy and convergence speed of these three methods is compared and analyzed. The results show that the BP neural network improved by the genetic algorithm has better accuracy and faster convergence speed in predicting and assessing risks. This indicates that the BP neural network model improved by genetic algorithm is effective and feasible for predicting the risk assessment of the R&D investment of medical supplies suppliers. Full article
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15 pages, 10184 KB  
Article
An Overview of Substrate Copper Trace Crack Through Experiments, Characterization, and Numerical Simulations
by Wei Yu, Faxing Che, Vance Liu, Raymond Chen, Sam Ireland, Yeow Chon Ong, Hong Wan Ng and Gokul Kumar
Micromachines 2025, 16(4), 428; https://doi.org/10.3390/mi16040428 - 2 Apr 2025
Viewed by 1211
Abstract
The high input/output demands of memory packages require precise trace width and spacing, posing challenges for contemporary package design. Substrate copper trace cracks are a major reliability issue during temperature cycling tests (TCTs). This study offers a detailed analysis of copper trace crack [...] Read more.
The high input/output demands of memory packages require precise trace width and spacing, posing challenges for contemporary package design. Substrate copper trace cracks are a major reliability issue during temperature cycling tests (TCTs). This study offers a detailed analysis of copper trace crack mechanisms through experimental observations, material characterization, and numerical simulations. Common failure modes of trace cracks are identified from experimental data, pinpointing initiation sites and propagation paths. Young’s modulus of copper foil samples is assessed using four testing methods, revealing consistent trends across samples from different substrate suppliers. Sample A with higher E/H values tested via nanoindentation correlated with lower failure rates in the experiment. Stress–strain testing on copper foil was successfully performed at the lower TCT temperature limit of −65 °C, providing vital input for finite element (FE) models. The simulations show strong alignment with trace crack locations under different failure modes. The impact of copper trace width and material properties is illustrated in numerical models by comparing variations in plastic strain responses, which show differences of up to 40% and 30%, respectively. The simulation design of the experiments (DOE) indicates that high-strength solder resist (SR) can significantly enhance temperature cycling performance by reducing SR and copper trace stress and strain by up to 75%. The accumulation of plastic strain in copper traces is predicted to increase up to four times when SR breaks at the crack location, underscoring the importance of SR in copper trace reliability. Full article
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25 pages, 1023 KB  
Article
The Impact of Exogenous Shocks on the Sustainability of Supply Chain Relationships: Evidence from the COVID-19 Pandemic
by Shengmei Chen and Gui Ren
Sustainability 2025, 17(7), 2828; https://doi.org/10.3390/su17072828 - 22 Mar 2025
Cited by 1 | Viewed by 1457
Abstract
In recent years, supply chain risks and stability have become a focal point of public attention. However, there is no consensus on how exogenous shocks affect the sustainability of supply chain relationships, nor a clear mechanism of influence. This study uses data from [...] Read more.
In recent years, supply chain risks and stability have become a focal point of public attention. However, there is no consensus on how exogenous shocks affect the sustainability of supply chain relationships, nor a clear mechanism of influence. This study uses data from all A-share listed companies in China from Q2 2018 to Q4 2021, constructing a “supplier–quarter–customer” relationship dataset, with the COVID-19 pandemic serving as an exogenous shock. The results show that after experiencing exogenous shocks, the sustainability of supply chain relationships actually strengthens. This suggests that companies may take measures to enhance supply chain stability and maintain existing relationships to ensure sustainability. Channel analysis reveal that trade credit serves as a channel for the impact of exogenous shocks on the sustainability of supply chain relationships, with companies adjusting trade credit supply to downstream customers to maintain and strengthen stability. Additionally, the impact of exogenous shocks on the sustainability of supply chain relationships varies with market concentration, product input heterogeneity, and firms’ ownership type. Therefore, companies should enhance supply chain relationship management, utilize trade credit as a risk buffer, and optimize the supply chain structure to reduce risk transmission and maintain sustainability. Full article
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22 pages, 1992 KB  
Article
Investment Decision and Coordination of Fresh Supply Chain Blockchain Technology Considering Consumer Preference
by Xiaohu Xing and Renzhi Miao
Systems 2024, 12(12), 522; https://doi.org/10.3390/systems12120522 - 25 Nov 2024
Cited by 1 | Viewed by 1225
Abstract
In this paper, we study the decision-making and coordination problem of a two-tier fresh food supply chain consisting of a supplier and a retailer. Considering the influencing factors of consumers’ information preference, freshness, and misrepresentation, we construct a centralized decision-making model and a [...] Read more.
In this paper, we study the decision-making and coordination problem of a two-tier fresh food supply chain consisting of a supplier and a retailer. Considering the influencing factors of consumers’ information preference, freshness, and misrepresentation, we construct a centralized decision-making model and a decentralized decision-making Stackelberg game model. We also analyze the changes in the equilibrium solution of the supply chain before and after the input of blockchain technology, identify the conditions for the investment in blockchain technology, and design a “cost-sharing + benefit-sharing” combination contract for the coordination of the blockchain. The results are as follows: Firstly, under decentralized decision-making, if the fresh supplier misreports the freshness of the product, it will mislead the retailer to increase the order quantity, and its own profit will rise. Therefore, the fresh supplier has the motivation to misreport freshness. However, the backlog of fresh products will eventually damage the retailer’s profit, and the overall profit of the supply chain will also be damaged. Therefore, the increase in the profit of the fresh supplier is at the expense of the overall interests and stability of the supply chain. Second, when the investment cost of blockchain technology is within a certain threshold, it is feasible to invest in blockchain technology. Consumers’ preference for traceable fresh products will encourage the fresh supply chain to improve the level of information traceability and increase investment in blockchain technology. Finally, there are double marginal effects in the fresh supply chain under decentralized decision-making. The combined contract of “cost-sharing + revenue-sharing” can coordinate the overall revenue of the supply chain to the level of centralized decision-making. When the contract parameters meet certain conditions, Pareto improvement in revenue can be achieved for all parties involved in the fresh supply chain. The willingness of retailers to invest in blockchain technology will change with the change in contract parameters. When the proportion of retailers’ costs and the proportion of shared income are higher, the level of retailers’ investment in blockchain technology will decrease. Therefore, the interests of supply chain members need to be balanced in the process of contract coordination. Full article
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20 pages, 1957 KB  
Article
Predictive Analytics for Energy Efficiency: Leveraging Machine Learning to Optimize Household Energy Consumption
by Piotr Powroźnik and Paweł Szcześniak
Energies 2024, 17(23), 5866; https://doi.org/10.3390/en17235866 - 22 Nov 2024
Cited by 3 | Viewed by 2461
Abstract
This paper presents a novel machine learning framework useful for optimizing energy consumption in households. Home appliances have a great potential to optimize electricity consumption by mitigating peaks in the grid load or peaks in renewable energy generation. However, such functionality of home [...] Read more.
This paper presents a novel machine learning framework useful for optimizing energy consumption in households. Home appliances have a great potential to optimize electricity consumption by mitigating peaks in the grid load or peaks in renewable energy generation. However, such functionality of home appliances requires their users to change their behavior regarding energy consumption. One of the criteria that could encourage electricity users to change their behavior is the cost of energy. The introduction of dynamic energy prices can significantly increase energy costs for unsuspecting consumers. In order to be able to make the right decisions about the process of electricity use in households, an algorithm based on machine learning is proposed. The presented proposal for optimizing electricity consumption takes into account dynamic changes in energy prices, energy production from renewable energy sources, and home appliances that can participate in the energy optimization process. The proposed model uses data from smart meters and dynamic price information to generate personalized recommendations tailored to individual households. The algorithm, based on machine learning and historical household behavior data, calculates a metric to determine whether to send a notification (message) to the user. This notification may suggest increasing or decreasing energy consumption at a specific time, or may inform the user about potential cost fluctuations in the upcoming hours. This will allow energy users to use energy more consciously or to set priorities in home energy management systems (HEMS). This is a different approach than in previous publications, where the main goal of optimizing energy consumption was to optimize the operation of the power system while taking into account the profits of energy suppliers. The proposed algorithms can be implemented either in HEMS or smart energy meters. In this work, simulations of the application of machine learning with different characteristics were carried out in the MATLAB program. An analysis of machine learning algorithms for different input data and amounts of data and the characteristic features of models is presented. Full article
(This article belongs to the Special Issue Novel Energy Management Approaches in Microgrid Systems)
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