Trends in Sustainable Inventory Management Practices in Industry 4.0
Abstract
:1. Introduction
- This study includes a structured search for the recent literature, specifically journal articles, conference papers, and book chapters, on sustainable inventory management and Industry 4.0 technologies from the last two calendar years (2024 and 2025).
- The identified articles are thoroughly screened, categorized, and reviewed to synthesize key managerial insights, relevant techniques, and emerging trends related to sustainable practices in inventory management in Industry 4.0.
- Research gaps and promising future developments are formalized by discussing areas where innovative approaches can contribute to improving sustainability in inventory management in the evolving digital transformation landscape.
2. Literature Review
2.1. Sustainable Inventory Management in Industry 4.0
2.2. Methodological Approach Used for the Review
- Industry 4.0 and digital transformation. Papers in this category underline that Industry 4.0 brings digital tools like smart sensors, automation, and real-time data analytics to inventory management, improving efficiency and reducing waste. With predictive analytics, businesses can optimize stock levels, prevent shortages, and reduce excess inventory, leading to a more sustainable supply chain.
- Sustainability and circular economy. Papers in this category discuss sustainable inventory management focusing on minimizing waste, reusing materials, and reducing environmental impact. Industry 4.0 technologies enable better tracking of product lifecycles, allowing businesses to extend product use, implement recycling strategies, and adopt circular economy practices that reduce resource consumption.
- Artificial intelligence and machine learning applications. Papers in this category focus on AI and machine learning transforming inventory management by predicting demand, optimizing stock levels, and reducing overproduction. These technologies analyze patterns in supply and demand, adjusting inventory dynamically to prevent waste and improve efficiency, making supply chains more sustainable.
- Supply chain and logistics management. Papers sorted into this category deal with the role of efficient supply chain and logistics operations for sustainable inventory management. Industry 4.0 enables automated inventory tracking, smart warehouses, and optimized transportation routes, reducing excess storage, cutting emissions, and ensuring a smoother, more sustainable flow of goods.
- Sustainable manufacturing and lean production. Papers in this category are focused on lean production combined with Industry 4.0 technologies, helping manufacturers reduce waste and energy consumption. Smart monitoring systems and automated inventory controls ensure that materials are used efficiently, minimizing overproduction and improving sustainability without compromising productivity.
- Blockchain, digital twins, and emerging technologies. Papers in this category refer to relevant technologies. Blockchain enhances transparency and security in supply chains, reducing fraud and ensuring ethical sourcing. Digital twins create virtual models of inventory systems, allowing businesses to test and optimize strategies before implementation. Emerging technologies like the Internet of Things (IoT) and 3D printing further improve significant sustainability aspects in inventory management.
2.3. Examination of Papers in the Designated Topic Categories
2.3.1. Industry 4.0 and Digital Transformation
2.3.2. Sustainability and Circular Economy
2.3.3. Artificial Intelligence and Machine Learning Applications
2.3.4. Supply Chain and Logistics Management
2.3.5. Sustainable Manufacturing and Lean Production
2.3.6. Blockchain, Digital Twins, and Emerging Technologies
3. Formalization of Results
4. Conclusions and Future Research
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
AI | Artificial Intelligence |
AISM | Adapted Interpretive Structural Modeling |
AMHS | Automated Material Handling System |
AMT | Additive Manufacturing Technology |
AR | Augmented Reality |
BMI | Business Model Innovation; |
CPS | Cyber-Physical System |
DT | Digital Twin |
EES | Environmental, Economic and Social |
EOQ | Economic Order Quantity |
EPQ | Economic Production Quantity |
ESG | Environmental, Social, and Governance |
GS-OBM | Green Servitisation-Oriented Business Model |
HWP | Harvested Wood Product |
IoT | Internet of Things; |
JIT | Just in Time |
KPI | Key Performance Indicator |
LLM | Large Language Model |
MCDM | Multi-Criteria Decision-Making |
PLS-SEM | Partial Least Squares Structural Equation Modeling |
RFID | Radio Frequency Identification |
RSC | Reliable Supply Chain |
SCD | Supply Chain Decarbonization |
SCM | Supply Chain Management |
SCR | Supply Chain Risk |
SEM | Structural Equation Modeling |
SM | Smart Manufacturing |
SME | Small and Medium Enterprise |
SPM | Spare Parts Management |
TQM | Total Quality Management |
VSM | Value Stream Mapping |
VR | Virtual Reality |
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Areas | Key Findings |
---|---|
Methods and topics | - Systematic literature review on Industry 4.0 and supply chain operations [29]. |
- Local Industry 4.0 adoption focusing on logistic flexibility and risk management [30]. | |
- IoT, CPSs and environmental sustainability in manufacturing contexts [31]. | |
- Integration of SCM with Industry 4.0 technologies in Indian manufacturing [32]. | |
- Industry 5.0 and human-centric industrial systems [33]. | |
- Empirical study on Industry 4.0 and SMEs’ international competitiveness [34]. | |
- Exploratory study on sustainability and BMI in Indian automotive [35]. | |
- MCDM approach for ranking Industry 4.0 technologies [36]. | |
- Digitalization impact on sustainable inventory in the bakery industry [37]. | |
Benefits | - Enhanced supply chain efficiency, inventory management, and logistics [30,32]. |
- Support for environmental sustainability and supply chain decarbonization [31]. | |
- Improved collaboration and cost efficiency in SCM [32,35]. | |
- Industry 5.0 advances sustainability and human–machine collaboration [33]. | |
- Digitalization promotes business model innovation in market competitiveness [34,35]. | |
Challenges | - IT infrastructure readiness is critical for successful Industry 4.0 adoption [29]. |
- Regional disparities in Industry 4.0 implementation [30]. | |
- High resource consumption and environmental impact of CPSs [31]. | |
- Collaboration barriers existing between supply chain entities [35]. | |
- Sector-specific variability in digital transformation effectiveness [36,37]. | |
Future trends | - Growth of Industry 5.0 with sustainability and human-centric innovations [33]. |
- Stronger alignment of Industry 4.0 with environmental sustainability goals [31,37]. | |
- Policies supporting regional digitalization efforts and SMEs [30,34]. | |
- Greater integration of AI, big data, and machine learning in supply chains [36]. | |
- Expanding digitalization strategies across diverse industries [32,37]. |
Areas | Key Findings |
---|---|
Methods and topics | - Review on Industry 4.0 and SM and related conceptual and mathematical models [38]. |
- Lean Six Sigma and Industry 4.0 integration through AISM and Delphi technique [39]. | |
- Lean management and circular economy synergy via JIT and VSM [40]. | |
- Theoretical framework on Industry 4.0, circular economy and sustainability [41]. | |
- Sentiment analysis and association rule mining revealing with impact on EES [42]. | |
- Analysis of Industry 5.0’s impact on EES, blockchain, IoT, VR, and AR [43]. | |
- MCDM-based risk assessment framework for mitigating SCRs within AMT [44]. | |
- Case on food-tech startups integrating Industry 4.0 for circular economy [45]. | |
- Circular economy practices in green hotels in Saudi Arabia and Egypt [46]. | |
Benefits | - Manufacturing efficiency integrating Lean Six Sigma and Industry 4.0 [38,39]. |
- Circular economy transition eased by lean practices, resource use, and recycling [40]. | |
- Industry 4.0 drives sustainability through job creation and lower emissions [42]. | |
- Contribution to sustainability across supply chains and inventory management [43]. | |
- AMT reduces lead time fluctuations, waste, and supplier dependency [44]. | |
- Food-tech startups and hospitality leverage Industry 4.0 for sustainability [45,46]. | |
Challenges | - Limited case studies and mathematical approaches in Industry 4.0 research [38]. |
- Lack of integration between quality management and circular economy [39]. | |
- Unclear interconnection between Industry 4.0 and circular economy strategies [41]. | |
- Sector-specific challenges in applying Industry 4.0 for sustainability [45,46]. | |
Future trends | - Increasing adoption of Lean Six Sigma within Industry 4.0 [39]. |
- Stronger alignment of circular economy principles with Industry 4.0 [40,41]. | |
- Wider use of sentiment analysis and AI techniques for Industry 4.0 impact [42]. | |
- Expansion of Industry 5.0 with metaverse and immersive technologies [43]. | |
- Greater role of AMT in reducing SCRs and promoting green innovation [44]. |
Areas | Key Findings |
---|---|
Methods and topics | - AI-based approaches in Supply Chain 4.0 improve security and cost efficiency [47]. |
- Systematic review on AI’s role in SCM from Industry 4.0 to Industry 6.0 [48]. | |
- Machine learning for backorder prediction and inventory optimization [50]. | |
- Reinforcement learning integrated with lean green manufacturing systems [52]. | |
Benefits | - AI enhances demand forecasting, inventory management, and decision-making [48]. |
- Machine learning reduces financial pressures and prevents supply disruptions [50]. | |
- Reinforcement learning improves scheduling by adapting to real-time data [53]. | |
- AI in fashion manufacturing enables personalized consumer experiences [49]. | |
Challenges | - AI implementation faces cybersecurity risks and workforce skill gaps [48]. |
- Machine learning requires overcoming technical and implementation barriers [51]. | |
- AI integration into traditional manufacturing may pose compatibility issues [49]. | |
- Reinforcement learning models need extensive real-world validation [52]. | |
Future trends | - Increased adoption of predictive maintenance and smart inventory management [51]. |
- AI and machine learning driving sustainability and circular economy practices [52]. | |
- Further exploration of AI–human collaboration in supply chain optimization [48]. | |
- Adaptive AI solutions tailored for complex manufacturing environments [53]. |
Areas | Key Findings |
---|---|
Methods and topics | - Bibliometric network analysis on digital interventions in sustainable logistics [54]. |
- AMHSs optimizes warehouse efficiency through automated queuing [56]. | |
- RFID and IoT enhance supply chain flexibility, security, and inventory mobility [57]. | |
- MCDM applied to supply chain performance evaluation in the railway sector [60]. | |
- AI and machine learning enable predictions for sustainable horticulture logistics [62]. | |
Benefits | - Industry 4.0 enhances logistics efficiency, waste reduction, and transparency [58]. |
- AI-driven warehouse management supports decarbonization efforts in industry [59]. | |
- Smart factory technologies improve supply chain reliability and sustainability [61]. | |
- AI and machine learning improve dairy supply chain inventory planning [63]. | |
- IoT solutions improve real-time data transmission and inventory management [57]. | |
Challenges | - Financial constraints and organizational resistance hinder technology adoption [55]. |
- Industrial challenges and market dynamics influence technology effectiveness [58]. | |
- Smaller farms face environmental challenges in supply chain modernization [63]. | |
- Integration of IoT and blockchain requires overcoming regulatory constraints [57]. | |
- Implementation and scalability issues for AI in agricultural supply chains [62]. | |
Future trends | - Increased investment in AI-driven predictive analytics for sustainable logistics [54]. |
- Expansion of decentralized supply chain to enhance resilience and efficiency [61]. | |
- Further exploration of AI-enabled automated inventory tracking [62]. | |
- Evolution of blockchain and IoT integration for transparent and efficient SCM [58]. | |
- Role of smart warehouse management in green supply chain initiatives [59]. |
Areas | Key Findings |
---|---|
Methods and topics | - Review and elaboration of a conceptual framework for economic value creation [64]. |
- Bibliometric analysis using PRISMA on Lean and Green production [65]. | |
- EES sustainability dimensions linked to suitable KPIs measuring their impacts [66]. | |
- SEM applied to Industry 4.0 adoption in India’s automotive manufacturing [68]. | |
- ESG improvement through GS-OBM based on UK Innovation Survey data [69]. | |
Benefits | - Smart technologies enhance efficiency while addressing sustainability concerns [64]. |
- AI and IoT monitoring improve resource tracking in several sectors [67]. | |
- Industry 4.0 strengthens corporate sustainability strategies and service quality [70]. | |
- Digitalization in forestry and wood industries supports carbon storage in HWPs [71]. | |
- Industry 4.0 help integrate green servitisation strategies into supply chains [69]. | |
Challenges | - Manufacturing’s resource-intensive nature makes sustainability goals complex [64]. |
- Difficulties in digitalization for sustainability-driven decision-making [70]. | |
- Market-specific dynamics influence the efficacy of sustainable manufacturing [68]. | |
- Policy and cost barriers hinder the adoption of forest management technologies [71]. | |
- ESG-focused business models require corporate governance adjustments [69]. | |
Future trends | - Increasing reliance on AI-driven decision support for sustainable manufacturing [66]. |
- Smart sensing expansion in aviation, energy grids, sustainable urban planning [67]. | |
- Integration of digitalization and sustainable initiatives in corporate governance [70]. | |
- Development of policy incentives for early adoption of Industry 4.0 in forestry [71]. | |
- Data-driven frameworks for EES sustainability in production [64]. |
Areas | Key Findings |
---|---|
Methods and topics | - Blockchain is reviewed with a focus on smart contracts and real-time traceability [72]. |
- DT is explored to enhance resilience and visibility of supply chain systems [76]. | |
- A review of 3D printing in SPM highlights a shift toward localized production [79]. | |
Benefits | - Blockchain and IoT improve supply chain sustainability and automation [72]. |
- Digital solutions help reduce waste and align with sustainability goals [77]. | |
- Fog computing enhances inventory management through forecast accuracy [78]. | |
- 3D printing eases a transition from “make to stock” to “make to order” models [79]. | |
- Industry 4.0 contribute to resilience during crises like the COVID-19 pandemic [75]. | |
Challenges | - Blockchain adoption still remains limited in underutilized management areas [73]. |
- Despite its benefits, 3D printing adoption faces cost barriers and size limitations [79]. | |
- Infrastructure and regulatory gaps in integrating digital solutions [77]. | |
Future trends | - Research on Industry 4.0 to 5.0 transition about smarter logistics/warehousing [80]. |
- Expansion of blockchain applications in food supply chains is expected [73]. | |
- More integration of DT with supply chains will improve real-time adaptability [76]. | |
- 3D printing in SPM will advance with cost efficiency and regulations [79]. |
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Carpitella, S.; Izquierdo, J. Trends in Sustainable Inventory Management Practices in Industry 4.0. Processes 2025, 13, 1131. https://doi.org/10.3390/pr13041131
Carpitella S, Izquierdo J. Trends in Sustainable Inventory Management Practices in Industry 4.0. Processes. 2025; 13(4):1131. https://doi.org/10.3390/pr13041131
Chicago/Turabian StyleCarpitella, Silvia, and Joaquín Izquierdo. 2025. "Trends in Sustainable Inventory Management Practices in Industry 4.0" Processes 13, no. 4: 1131. https://doi.org/10.3390/pr13041131
APA StyleCarpitella, S., & Izquierdo, J. (2025). Trends in Sustainable Inventory Management Practices in Industry 4.0. Processes, 13(4), 1131. https://doi.org/10.3390/pr13041131