PL EN


Preferencje help
Widoczny [Schowaj] Abstrakt
Liczba wyników
Tytuł artykułu

Design of a Rules-Based Recommendation System Implemented in Prolog for the Management of Electronic Waste from ICT

Treść / Zawartość
Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Electronic waste generated from Information and Communication Technologies (ICT) has become a global issue as this represents a negative impact on both environment and human health. Consequently, it is noticeably useful to develop tools to soften such impact. Therefore, this article presents a rules-based system implemented in Prolog aiming at guiding ICT devices users towards good practices on electronic waste management to diminish the negative impact. The methodologies employed include exploratory, descriptive, and experimental. Even though the system developed in Prolog was found to be deficient with user interface, it is also functional and efficient, including features like usability and maintainability. In conclusion, it was found that waste recollection systems may be useful for both environmental management processes in different countries and also positive business opportunities.
Rocznik
Strony
104--113
Opis fizyczny
Bibliogr. 39 poz., rys.
Twórcy
  • Facultad de Ingeniería, Universidad Distrital Francisco José de Caldas, Carrera 7 # 40B – 53, 110211, Bogotá D.C., Colombia
  • Facultad de Ingeniería, Universidad Distrital Francisco José de Caldas, Carrera 7 # 40B – 53, 110211, Bogotá D.C., Colombia
  • Facultad de Ingeniería, Universidad Distrital Francisco José de Caldas, Carrera 7 # 40B – 53, 110211, Bogotá D.C., Colombia
Bibliografia
  • 1. Afsar, B et al. 2019. Air Pollution and Kidney Disease: Review of Current Evidence. Clinical Kidney Journal 12(1): 19–32.
  • 2. Andarani, P, and W Budiawan. 2015. Multicriteria Decision Analysis for Optimizing Site Selection of Electronic and Electricity Equipment Waste Dismantling and Sorting Facility (Case Study: In Indonesia, Using AHP). In 2015 International Conference on Science in Information Technology (ICSITech), , 264–69.
  • 3. Aristizábal-Alzate, Carlos E., José L. González-Manosalva, and Andrés F. Vargas. 2021. Revalorización de Residuos de Equipos Eléctricos y Electrónicos En Colombia: Una Alternativa Para La Obtención de Metales Preciosos y Metales Para La Industria. TecnoLógicas 24(51): e1740.
  • 4. Badaro, Sebastian, Leonardo Javier Ibañez, and Martín Agüero. 2013. SISTEMAS EXPERTOS: Fundamentos, Metodologías y Aplicaciones. Ciencia y Tecnología 1(13): 349–64.
  • 5. Barbon, A.P.A.C. et al. 2016. Storage Time Prediction of Pork by Computational Intelligence. Computers and Electronics in Agriculture 127: 368–75.
  • 6. Bartolo Pinzón Jonathan Urbina Guerra, Jessica Kimberly. Estado De La Gestión De Residuos De Aparatos Eléctricos Y Electrónicos En Colombia Atendiendo Al Marco De Convenios, Acuerdos Y Estrategias De Gestión En El Contexto Internacional State Of Waste Of Electrical And Electronic Management In Colombia Attendin.
  • 7. Van Biesen, W, G Sieben, N Lameire, and R Vanholder. 1998. Application of Kohonen Neural Networks for the Non-Morphological Distinction between Glomerular and Tubular Renal Disease. Nephrology Dialysis Transplantation 13(1): 59–66.
  • 8. Boeni, Heinz, Uca Silva, and Daniel Ott. 2008. E-Waste Recycling in Latin America: Overview, Challenges and Potential. Proceedings of the 2008 Global Symposium on Recycling, Waste Treatment and Clean Technology, REWAS 2008: 665–73.
  • 9. Bono Cabre, Roser. 2012. Universidad de Barcelona. Facultad de Psicología. Diseños Cuasi-Experimentales y Longitudinales.
  • 10. Buday-Malik, A. 2006. Key Questions of ICTi Waste Management in Hungary and in Slovenia. In Proceedings of the 13th CIRP International Conference on Life Cycle Engineering, LCE 2006, Katholieke Universiteit Leuven, 489–96.
  • 11. Chen, Z C, and Z Miao. 2006. An Intelligent Approach to Non-Constant Feed Rate Determination for High-Performance 2D CNC Milling. International Journal of Manufacturing Technology and Management 9(3–4): 219–36.
  • 12. Corrêa, A S, A de Assis Mota, L T M Mota, and P L P Corrêa. 2014. A Fuzzy Rule-Based System to Assess e-Government Technical Interoperability Maturity Level. Transforming Government: People, Process and Policy 8(3): 335–56.
  • 13. Devika, S. 2010. Environmental Impact of Improper Disposal of Electronic Waste. In Recent Advances in Space Technology Services and Climate Change 2010 (RSTS CC-2010), , 29–31.
  • 14. Diez, Juan José. 2016. Sistemas Inteligentes T6: Sistemas Basados En Reglas. : 40.
  • 15. Egwali, A. O., and F. A. I Mouokhome. 2013. Managing the Challenges of E-Waste Recycling in Nigeria. In Science and Information Conference. IEEE, 689–95.
  • 16. Erdoğan, M, and İ Kaya. 2020. A Systematic Approach to Evaluate Risks and Failures of Public Transport Systems with a Real Case Study for Bus Rapid System in Istanbul. Sustainable Cities and Society 53.
  • 17. Frame, A J et al. 1998. A Comparison of Computer Based Classification Methods Applied to the Detection of Microaneurysms in Ophthalmic Fluorescein Angiograms. Computers in Biology and Medicine 28(3): 225–38.
  • 18. Hadavandi, E, A Ghanbari, K Shahanaghi, and S Abbasian-Naghneh. 2011. Tourist Arrival Forecasting by Evolutionary Fuzzy Systems. Tourism Management 32(5): 1196–1203.
  • 19. Hernández Sampieri, Roberto, Carlos Fernández Collado, María del Pilar Baptista Lucio, and Pilar Baptista Lucio. 2014. McGraw-Hill Metodología de La Investigación. Sexta. México D.F.: McGraw-Hill / Interamericana Editores, S.A. De C.V.
  • 20. Jaragh, Mansour, and Jenan Boushahri. 2009. The E-Waste Impact. In Proceedings of the First Kuwait Conference on E-Services and e-Systems, eConf ’09, New York, NY, USA: Association for Computing Machinery.
  • 21. de Jesús Casas, José et al. 2015. Priorización Multicriterio de Un Residuo de Aparato Eléctrico y Electrónico. Ingeniería y desarrollo 33(2): 172–97.
  • 22. Kadhim, Mohammed Abbas, M Afshar Alam, and Harleen Kaur. 2013. Design and Implementation of Intelligent Agent and Diagnosis Domain Tool for Rule-Based Expert System. In 2013 International Conference on Machine Intelligence and Research Advancement, , 619–22.
  • 23. Leijting, Jorrit. 2012. The Benefits of E-Waste Recycling in The Netherlands. In 2012 Electronics Goes Green 2012+, , 1–4.
  • 24. Liu, Han, and Alexander Gegov. 2016. Rule Based Systems and Networks: Deterministic and Fuzzy Approaches. In 2016 IEEE 8th International Conference on Intelligent Systems (IS), , 316–21.
  • 25. Longley, D. 1987. Expert Systems Applied to the Analysis of Key Management Schemes. Computers and Security 6(1): 54–67.
  • 26. Ministerio de Ambiente Vivienda Y Desarrollo Territorial. 2010. Lineamientos Técnicos Para El Manejo de Residuos de Aparatos Eléctricos y Electrónicos.
  • 27. Ministerio de Ambiente y Desarrollo Sostenible. 2017. Politica Nacional: Gestion Integral De Residuos De Aparatos Electricos Y Electronicos.
  • 28. Organizacion de las Naciones Unidas. 2019. Los Desechos Electrónicos, Una Oportunidad de Oro Para El Trabajo Decente | Noticias ONU. Noticionas ONU.
  • 29. Plastic Oceans International. 2021. La Quema de Plástico Agrava La Contaminación Del Aire. plasticoceans.org.
  • 30. Sathaporn, Monprapussorn, and Banomyong Ruth. 2012. Reverser Logistic System of Electronic Waste in Thailand: An Environmental Perspective. In 2012 Electronics Goes Green 2012+, , 1–5.
  • 31. Silva, Jose Rocha et al. 2015. Rematronic: Project to Recovery Precious Metals from Electronic Waste. In MEDES ’15: Proceedings of the 7th International Conference on Management of Computational and Collective IntElligence in Digital EcoSystems, 221–227.
  • 32. Tsitomeneas, Stefanos Th., Apostolos I Kokkosis, and Angelos G Charitopoulos. 2014. Legislation, Design and Management of the Electrical and Electronic Waste (e-Waste) Procedures. In MedPower 2014, , 1–5.
  • 33. Vergel Cabrales, Gustavo. 1997. Metodología Un Manual Para La Elaboración de Diseños y Proyectos de Investigación. Cuarta.
  • 34. Wang, L, S K Kwok, and W H Ip. 2010. A Radio Frequency Identification and Sensor-Based System for the Transportation of Food. Journal of Food Engineering 101(1): 120–29.
  • 35. Wang, Y.-M., F.-F. Ye, and L.-H. Yang. 2020. Extended Belief Rule Based System with Joint Learning for Environmental Governance Cost Prediction. Ecological Indicators 111.
  • 36. Widmer, R et al. 2005. Global Perspectives on E-Waste. Environmental Impact Assessment Review 25(5 SPEC. ISS.): 436–58.
  • 37. Xu, F, X Wang, X Sun, and AAbdullah. 2014. Influencing Factors and Moderating Factors of Consumers’ Intentions to Participate in e-Waste Recycling. In 2014 11th International Conference on Service Systems and Service Management (ICSSSM), , 1–6.
  • 38. Yang, L.-H., Y.-M. Wang, J Liu, and L Martínez. 2018. A Joint Optimization Method on Parameter and Structure for Belief-Rule-Based Systems. Knowledge-Based Systems 142: 220–40.
  • 39. Zolnoori, M, M H F Zarandi, and M Moin. 2012. Application of Intelligent Systems in Asthma Disease: Designing a Fuzzy Rule-Based System for Evaluating Level of Asthma Exacerbation. Journal of Medical Systems 36(4): 2071–83.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-74f3ef1a-0ce1-4d03-85a0-ab32d831070b
JavaScript jest wyłączony w Twojej przeglądarce internetowej. Włącz go, a następnie odśwież stronę, aby móc w pełni z niej korzystać.