Sustainability in the Aerospace, Naval, and Automotive Supply Chain 4.0: Descriptive Review
Abstract
:1. Introduction
2. Materials and Methods
3. Results and Discussion
3.1. Aerospace
3.2. Shipbuilding
3.3. Automotive
3.4. Key Points Overview
4. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Aerospace | Shipbuilding | Automotive | |
---|---|---|---|
Methodologies | Lean practices improve SC performance [11,12,70,71,72,73,74,75,76,77] | Lean strengthens the probability of success of Supply Chain Management [78,79] | Lean provides competitive advantages, quality, and flexibility performance [80,81] and improves dealer service through an inventory management model [82] |
Agile practices evaluate new event with restructuring suggestions [75,83,84,85] | The Agile methodology identifies improvements in the relationship between the shipyard and its suppliers [85,86] | Agile provides competitive advantages, quality, and flexibility performance [80,87] and is used as a strategy for supplier selection [88] | |
Green practices make an important contribution to SC sustainability and suppliers [73,75,86,89,90,91] | Green practices contribute to a sense of social responsibility and competitive advantage [86,92] | Green practices improve the relationship between companies and green suppliers, improves the capacity to develop green products, and increases the competitiveness of companies in the market [93] and minimizes the total cost [94] | |
Resilient initiatives improve SC sustainability and social improvements in safety and environmental health [70,72,73,83,95] | The resilient paradigm is compromised by the social and functional aspects of the I4.0 performance model [96] | Resilient methodologies to SC are preferable to focus on minimizing costs [97], improve the selection of sustainable and appropriate suppliers, and maximize value by developing close and long-term relationships [98] | |
Models | Closed-Loop SC models help increase profits by transforming and remanufacturing waste [86] | Closed-Loop SC models help increase profits by transforming and remanufacturing waste [86] | Adding value to remanufacturing practices [99] collaborating with environmental management [100] |
No evidence of Circular Economy | Circular economy helps to reduce CO2 emissions [101] | Circular economy provides priority solution measures to formulate effective strategies to overcome failures in the adoption of SC management [63] | |
Environmental sustainability by applying the product life cycle management system [90,102,103] | Product lifecycle management (PLM) contributes to efficient control and distribution, minimizes costs, and reduces lead times [104] | Product life-cycle management (PLM) approach supports decision making [105], reduces the time to market, and satisfies the end customer needs [106] | |
Infrastructure | Use of technological platforms to improve logistics capacity [107] and to develop the reference architecture and define the standards to exchange electronic information securely [108] | The use of technological platforms achieves an important integration and collaboration with its suppliers and customers [109] | Through a platform with several simulation components, the control of the manufacturing systems is established [110]. In addition, an integrated platform based on a cyber–physical system provides optimal use of manufacturing resources in dynamic, real-time environments to increase efficiency and responsiveness to uncertain market changes [111] |
Data Sharing Package allows the reduction of SC inefficiencies [112] | Lightweight data format for the visualization of 3D product information and the collaboration of all SC agents in all phases of the ship lifecycle [113] | Data-sharing protocols based on Blockchain technology provide reliability [114]. Data sharing on production planning and scheduling using IoT can reduce product preparation and delivery time [115] | |
Analysis, design, and performance improvement of the SC by applying the SC Operations Reference Model (SCOR) using the internet [116,117] | Web-based software framework that enables electronic collaboration between companies working together for ship repair [118,119], An open communication infrastructure guarantees the success of SC [120] | Providing benefits to remanufacturing practices through the use of Big Data using the Internet [99] | |
Technologies | IoT: Registering and verifying the identity of the machines simplifying the management of the assets within the connected SC [121] | IoT: Identification and tracking of the pipes of a ship during its construction [32], offering solutions for the management of services and operations [34] | IoT: Allowing connectivity for later analysis through simulation [110]. This exchange of data on production planning and scheduling using IoT can reduce product preparation and delivery time [115,122] |
Simulation: To accurately model or predict the effects of joining and fixing parts [123], analyzing SC performance [124], for decision support [125] | Simulation: Management tool [107], to solve complicated problems of SC management [126], identify the critical control point to mitigate the effects caused by the disproportion in the logistic flow [127] | Simulation: As a training tool for ship design processes [128] and as a tool for decision making [105] | |
Big Data Analytics: Support for dynamic production capacity and decision making of the SC [129] | Big Data Analytics: Used to optimize the design of a vessel and to maximize efficiency and safety in an existing one [130], focused on the reduction of emissions [21,22] | Big Data Analytics: Providing advantages to remanufacturing practices [99] | |
Artificial Intelligence: Adaptive resource management based on multi-agent technology [131], to produce more affordable parts, faster, and with less weight [132] | Artificial Intelligence: Using control architecture and programming of the production plant [133], focused on reducing CO2 [23] | Artificial Intelligence: new dimension of the relationship between financing and production [134]. Solves problems in the management of the SC that can track, communicate, analyze, and ensure the overall sustainability of the system [135]. Facilitate the execution of mechanism design-based negotiations [136] | |
Cybersecurity: To derive the behavior of programs with hidden malicious operations and supporting workforce productivity [137], providing operational certainty of SC systems [138] | Cybersecurity: Improving economic, energy, and environmental aspects [96] | Cybersecurity: Threat deterrence and mitigation function [139]. Provides mechanisms for identifying generic and manufacturing-specific vulnerabilities [140] | |
Cloud Computing: Providing unlimited processing to SC management [141] | Cloud Computing: Improving economic, energy, and environmental aspects [96] | Cloud Computing: Allows the collection, supply, and analysis of relevant data in all companies that make up the SC [122,142] | |
– | Additive Manufacturing: Supporting sustainability in CS through material recycling [143], remanufacturing of high-value parts on the reverse logistics supply chain [144] | Additive Manufacturing: Enabling design flexibility, reducing waste, and integrating subassemblies [145], Negative aspect: increased delivery time, shipping cost, inventory requirements, and transportation vulnerability [146] | Additive Manufacturing: Used during the supply stage; it changes complex subsets into a single integrated structure [147] |
Blockchain: Ensuring traceability by certified agents in the SC [148,149] | Blockchain: strengthening production security in the collaborative development process, improving the integrity and traceability of Supply Chain data [150] | Blockchain: provides reliability in the creation of protocols to share processes, business logic, and financial ledgers [114]. Guarantees the security, transparency, and visibility of the network from the origin of the SC, the reengineering of the business processes to the improvement of the security [151] | |
Collaborative Programs | Use of system of systems to address multi-system integration problems associated with SC [152], Collaborative Aerospace Life Cycle Systems Program that integrates from the beginning of the aerospace design process [153] | Information systems for project management with integrated approach [154], high integration and collaboration between design, manufacturing, and management functions [109] | Logistics integration through collaborative supply chain innovation [155] |
Gaining transparency between the central company and its suppliers, exchanging high-quality information leads to significant improvements in overall SC performance [156] | Through transparency, collaborative risk management in SC management shows collaborative control mechanisms [157] | Through the Blockchain technology, the security, transparency, and visibility of the network is guaranteed [151]. Focal companies increase multi-tier SC management transparency for sustainability [158] | |
Through the implementation of sustainable policies with long-term strategies among the agents involved in SC [159] | Through carbon policies based on the sustainability characteristics of the region, the level of design of Supply Chain networks is improved, cost is reduced, and the environmental impact is improved [160] | The application of Green strategies to the management of CS helps companies establish innovative and effective policies [161]. Closed-Loop SC provides recommendations for sustainable policies [100] | |
No evidence of the I4.0 training programs despite potential benefits to SC management [162] | No evidence of I4.0 training programs despite potential benefits to SC management [162] | Design of training tools for ship design processes through the use of simulation [128] | |
Multi-Stage Implementation | No evidence of culture in the sector in relation to SC | No evidence of culture in the sector in relation to SC | Implementing Green practices in the management of SC collaborates in the implementation of socio-cultural responsibility [163] |
No evidence of multifunctional approach in the sector in relation to SC | No evidence of multifunctional approach in the sector in relation to SC | Multifunctional approach using Closed-Loop SC [164] | |
Continuous improvement of the quality of products and processes [165] system to define a Lean workflow [166] | Through collaborative tools that allow completely managing the SC in continuous improvement [154] | Continuous improvement to reduce stocks [167], evaluating the performance of the downstream supply chain [168,169] |
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Ramirez-Peña, M.; Mayuet, P.F.; Vazquez-Martinez, J.M.; Batista, M. Sustainability in the Aerospace, Naval, and Automotive Supply Chain 4.0: Descriptive Review. Materials 2020, 13, 5625. https://doi.org/10.3390/ma13245625
Ramirez-Peña M, Mayuet PF, Vazquez-Martinez JM, Batista M. Sustainability in the Aerospace, Naval, and Automotive Supply Chain 4.0: Descriptive Review. Materials. 2020; 13(24):5625. https://doi.org/10.3390/ma13245625
Chicago/Turabian StyleRamirez-Peña, Magdalena, Pedro F. Mayuet, Juan Manuel Vazquez-Martinez, and Moises Batista. 2020. "Sustainability in the Aerospace, Naval, and Automotive Supply Chain 4.0: Descriptive Review" Materials 13, no. 24: 5625. https://doi.org/10.3390/ma13245625
APA StyleRamirez-Peña, M., Mayuet, P. F., Vazquez-Martinez, J. M., & Batista, M. (2020). Sustainability in the Aerospace, Naval, and Automotive Supply Chain 4.0: Descriptive Review. Materials, 13(24), 5625. https://doi.org/10.3390/ma13245625