Application of Lifecycle Measures for an Integrated Method of Environmental Sustainability Assessment of Radio Frequency Identification and Wireless Sensor Networks
Abstract
:1. Introduction
- Embodying the LCA-based IMAR within the group of assessment methods to be applied as a decision-making method;
- Assisting manufacturing companies to improve their environmental and operational performance;
- Assessing the environmental sustainability of RFID and WSN technologies.
2. Literature Review
- Goal and scope definition;
- Inventory analysis (LCI);
- Impact assessment (LCIA);
- Interpretation.
3. Opportunities and Challenges
3.1. Broadening the Scope of the IMAR as a System Boundary
3.2. Broadening the Object of Analysis: Environmental Sustainability Indicators as a Challenging Point of the IMAR
3.3. Revealing Environmental Sustainability Impacts Using Lifecycle Measures
3.4. Streamlining the Assessment and Results
4. Discussion
- Low global weights factor (GCF) and high consolidated degree of fulfillment (conDF), in which case there is no need to focus on such a situation;
- High GCF and low conDF, in which case actions should immediately address the identified issue.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
AHP | Analytical Hierarchy Process |
DF | Degree of Fulfilment |
GCF | Global Weights Factor |
GHG | Greenhouse Gas |
GM | Geometric Mean |
GDM | Group Decision-Making |
IMAR | Integrated Assessment Method |
IMATOV | Methodology of Technical Project Evaluation |
IAV | Impact Assessment Value |
IoT | Internet of Things |
LAN | Local Area Network |
WAN | Wireless Local Area Network |
LCA | Lifecycle Analysis |
LCC | Lifecycle Costing |
RFID | Radio Frequency Identification |
SDGs | Sustainable Development Goals |
SLCA | Social Lifecycle Analysis |
SCC | Supply Chain Collaboration |
TBL | Triple Bottom Line |
WSN | Wireless Sensor Networks |
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Ref. | En. * | Ec. ** | So. *** | Topic/Scope |
---|---|---|---|---|
[33,58,64] | X | Environmental monitoring, remote sensing | ||
[34] | X | Environmental (condition) monitoring | ||
[57] | X | Environmental monitoring, smart building | ||
[59] | X | Smartphones and smartphone crowd computing (SCC) | ||
[18] | X | LCA: Environmental analysis of WSN in a specific case | ||
[60] | X | LCA, Deep Learning, Data Mining: Analysis of carbon footprints of smart devices; focus on “Green IoT” | ||
[65] | X | X | X | DSS: Conceptual framework for a data driven-decision support system (DSS) for farmland assessment using WSN |
[66] | X | X | X | Building Information Modelling: Demonstrating the potential of RFID to promote the sustainable lifecycle management of construction elements, with emphasis on capturing their technical, environmental, economic, and social value |
[67] | X | LCA, Building Information Modelling: Green building material management system and a safety monitoring management system for construction sites | ||
[68] | X | Assessing the environmental performance and burdens of RFID | ||
[69] | X | Real-time registration model of key indicators for calculating and estimating energy consumption and CO2 emissions from buildings based on the RFID system | ||
[70] | X | X | Sustainable water management based on the IoT | |
[71] | X | Characteristics of the ePedigree traceability system (electronic pedigree) based on the integration of sensors and RFID technology for agricultural food monitoring in real-time | ||
[61] | X | Reducing CO2 emissions from on-campus private cars using RFID | ||
[62] | X | X | Assessment for an RFID application in transfusion medicine | |
[72] | X | AHP: Analysis of the green supply chain using RFID | ||
[63] | X | Investigation and evaluation of life-cycle management and environmental assessment in the manufacturing process of RFID-based systems |
Ref. | Indicators | E/D * | Areas |
---|---|---|---|
[10] | (1) Increased equipment/device demands (2) Potential equipment obsolescence | D | Impact of environmental sustainability indicators on Industry 4.0 elements (automatization, digitalization, integration) |
[90] | IoT-to-Cloud business pillars IoT protocol landscape 11 goals to fulfill IoT business sustainability principles | D | Sustainability assessment framework based on multi-objective cloud computing to provide the required level of sustainable interoperability for IoT environments |
[91] | Indicators related to printed RFID antennas and tags | E | Environmental assessment for the production of polymer- and paper-based RFID antennae |
[50] | (1) Increased visibility and awareness of energy consumption (2) Improved equipment and operator safety | D | Impacts of environmental and social sustainability indicators on smart manufacturing |
[54] | (1) Flexibility and integration of production (2) Increased use of smart gadgets (IoT) Industry 4.0 | D | Impact of Industry 4.0 on environmental sustainability |
[57] | (1) Enabling humans to communicate directly with different types of objects, which in turn will communicate between each other and with objects of other people (2) Monitoring, tracking, and controlling devices; addressability and traceability; automating process controls and operative tools | D | IoT and RFID to build smart sustainable city |
[92] | Timely based data in Agriculture Supply Chain (ASC) | D | Using IoT to support food supply chain management |
[93] | Information sharing and real-time data collection, which can utilize SCOR model and ISA-95 Connect object using IoT with RFID, LAN, WAN, WSN, etc. | D | Develop a performance measurement framework for agricultural supply chain based on IoT data |
[94] | Service reliability | D | The use of IoT to improve service reliability |
[95] | Proposing indicators for IoT in the areas of business components, environmental components, social initiatives | D/E | Proposing the concepts of IoE (Internet of Environment) and IoS (Internet of Sustainability) |
[96] | Real-time, information-driven dynamic optimization for logistics tasks | E | IoT-enabled dynamic optimization for sustainable reverse logistics |
[97] | IoT as a technology that has a great impact on sustainable development | E | Impacts of Industry 4.0 technologies (including IoT) on sustainable development |
[98] | 10 indicators for IoT in fast-moving consumer-goods (FMCG) supply chains | D/E | The use of IoT to support the sustainable development of the FMCG supply chain during the COVID-19 pandemic |
[99] | Impact of IoT on the sustainability and development of enterprises in Australia | D | Factors, opportunities, and challenges related to the application of IoT in Australia |
[100] | Reducing or enhancing the visualization of information | E | Augmented reality application in IoT (AR-IoT) in precision farming |
[101] | Influence of IoT usage on the grassroots innovators’ sustainability Increased public awareness of the innovations provided thanks to IoT | D | Impacts of the use of IoT on the sustainable development of grassroots innovators—a Malaysian perspective |
[102] | Lifecycle assessment in the IoT domain Increased data sovereignty in assessing the sustainable development of manufacturing systems | D | LCA as a service using IoT input data |
Measures | Indicators | Metrics and Units * | Weighted Factors ** | |
---|---|---|---|---|
LWF, Local | GWF, Global | |||
Waste generation 50.0% | Amount of waste 75.0% | Tags disposed completely (pcs/y) | 19% | 7% |
Tags circulating in the system (pcs) | 8% | 3% | ||
Electronic devices disposed completely (pcs/y) | 53% | 20% | ||
Electronic devices installed (pcs/y) | 20% | 7% | ||
Lifecycle and supply chain integration 25.0% | Tags lifecycle duration in supply chain (weeks) | 43% | 5% | |
Tag’s reads in its lifecycle (number) | 32% | 4% | ||
Reading points in a supply chain (number) | 16% | 2% | ||
Supply chain echelons benefiting RFID (number) | 9% | 1% | ||
Waste reduction 50.0% | Inventory accuracy 50.0% | Decrease of stocks in units (pcs/y) | 75% | 19% |
Decrease of shrinkage in units (pcs/y) | 25% | 6% | ||
Resource utilization 50.0% | Decrease of paper documents (pages/y) | 8% | 2% | |
Decrease of printing accessories (pcs) | 4% | 1% | ||
Decrease of number of assets (pcs) | 8% | 2% | ||
Decrease of the total value of assets (USD) | 14% | 4% | ||
Decrease of fuel consumption (dm3/y) | 28% | 7% | ||
Decrease of electricity consumption (GJ/y) | 37% | 9% |
Metrics to Be Evaluated | GWF | Optimum Value, Reference | Goal |
---|---|---|---|
Tags disposed completely | 7% | 0 | minimize |
Tags circulating in the system | 3% | organization-specific value * | minimize |
Electronic devices disposed completely | 20% | 0 | minimize |
Electronic devices installed | 7% | organization-specific value * | minimize |
Tags lifecycle duration in supply chain | 5% | +∞ | maximize |
Tag’s reads in its lifecycle | 4% | +∞ | maximize |
Reading points in a supply chain | 2% | organization-specific value * | |
Supply chain echelons benefiting RFID | 1% | all | maximize |
Decrease of stocks in units | 19% | organization-specific value * | maximize |
Decrease of shrinkage in units | 6% | organization-specific value * | maximize |
Decrease of paper documents | 2% | organization-specific value * | maximize |
Decrease of printing accessories | 1% | organization-specific value * | maximize |
Decrease of number of assets | 2% | organization-specific value * | maximize |
Decrease of the total value of assets | 4% | organization-specific value * | maximize |
Decrease of fuel consumption | 7% | organization-specific value * | maximize |
Decrease of electricity consumption | 9% | organization-specific value * | maximize |
Evaluated Metrics | GWF * | Optimum Value | Real Value |
---|---|---|---|
Tags disposed completely | 7% | 0 | 20 |
Tags circulating in the system | 3% | 100 | 100 |
Electronic devices disposed completely | 20% | 0 | 2 |
Electronic devices installed | 7% | 15 | 10 |
Tags lifecycle duration in supply chain | 5% | +∞ | 2 years |
Tag’s reads in its lifecycle | 4% | 20 per day x 2 y | 15 per day x 2 y |
Reading points in a supply chain | 2% | 15 | 11 |
Supply chain echelons benefiting RFID | 1% | 4 | 3 |
Decrease of stocks in units | 19% | −30% | −24% |
Decrease of shrinkage in units | 6% | −80% | −40% |
Decrease of paper documents | 2% | no change | no change |
Decrease of printing accessories | 1% | no change | no change |
Decrease of number of assets | 2% | −10% | −7% |
Decrease of the total value of assets | 4% | −15% | −13% |
Decrease of fuel consumption | 7% | no change | no change |
Decrease of electricity consumption | 9% | −15% | −12% |
Evaluated Metrics | GWF * | conDF ** | DF1 ** | DF2 ** | DF3 ** | IAV *** |
---|---|---|---|---|---|---|
Tags disposed of completely | 7% | 2.3 | 3 | 1 | 4 | 16% |
Tags circulating in the system | 3% | 10 | 10 | 10 | 10 | 32% |
Electronic devices disposed completely | 20% | 6.4 | 8 | 4 | 8 | 127% |
Electronic devices installed | 7% | 5.2 | 5 | 4 | 7 | 38% |
Tag lifecycle duration in supply chain | 5% | 1.3 | 1 | 2 | 1 | 7% |
Tag reads in the lifecycle | 4% | 5.3 | 5 | 5 | 6 | 21% |
Reading points in a supply chain | 2% | 6.5 | 5 | 7 | 8 | 13% |
Supply chain echelons benefiting RFID | 1% | 9.0 | 9 | 9 | 9 | 10% |
Decrease of stocks in units | 19% | 6.2 | 6 | 8 | 5 | 117% |
Decrease of shrinkage in units | 6% | 5.0 | 5 | 5 | 5 | 32% |
Decrease of paper documents | 2% | 8.7 | 8 | 9 | 9 | 18% |
Decrease of printing accessories | 1% | 8.3 | 9 | 8 | 8 | 9% |
Decrease of number of assets | 2% | 6.7 | 6 | 7 | 7 | 14% |
Decrease of the total value of assets | 4% | 8.3 | 8 | 8 | 9 | 29% |
Decrease of fuel consumption | 7% | 8.0 | 8 | 8 | 8 | 57% |
Decrease of electricity consumption | 9% | 7.3 | 8 | 7 | 7 | 67% |
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Kluczek, A.; Gladysz, B.; Ejsmont, K. Application of Lifecycle Measures for an Integrated Method of Environmental Sustainability Assessment of Radio Frequency Identification and Wireless Sensor Networks. Energies 2021, 14, 2794. https://doi.org/10.3390/en14102794
Kluczek A, Gladysz B, Ejsmont K. Application of Lifecycle Measures for an Integrated Method of Environmental Sustainability Assessment of Radio Frequency Identification and Wireless Sensor Networks. Energies. 2021; 14(10):2794. https://doi.org/10.3390/en14102794
Chicago/Turabian StyleKluczek, Aldona, Bartlomiej Gladysz, and Krzysztof Ejsmont. 2021. "Application of Lifecycle Measures for an Integrated Method of Environmental Sustainability Assessment of Radio Frequency Identification and Wireless Sensor Networks" Energies 14, no. 10: 2794. https://doi.org/10.3390/en14102794
APA StyleKluczek, A., Gladysz, B., & Ejsmont, K. (2021). Application of Lifecycle Measures for an Integrated Method of Environmental Sustainability Assessment of Radio Frequency Identification and Wireless Sensor Networks. Energies, 14(10), 2794. https://doi.org/10.3390/en14102794