Main Article Content

Abstract

Instead of spending money on new paper, there is a practical solution: recycling. Most discarded papers end up in landfills or in the hands of street merchants. Many large machines exist now to recycle paper, but the price tag on a compact unit is likely to be too high for most people. Therefore, the issues can be completely eliminated by developing a simple and inexpensive machine. With the aid of such a recycling machine, we will be able to make noncomplex, basic, and inexpensive papers that the institution can reuse rather than always buying. The necessary parts of the machine's design will be assembled beforehand. The project will figure out how to standardise and organise the resulting papers into a complete one after making the necessary tweaks. Getting high-quality paper and then using a cutting machine to shape it into the final product is currently priority number one. It will be easy enough for a human to design and build the machine, putting the emphasis on current job prospects. The machine was built primarily in accordance with Industry 4.0 standards. Papers will be recycled in an automated system using an application from a grinder to a cutter to produce fine paper in the correct dimensions. Here, the user can remotely switch on the machine from any part of the world over the internet. The Internet of Things also enables remote alterations to paper length and quantity.

Keywords

Paper Recycling Transformation Machine Based On IOT Industry 4.0. Automatic Machine

Article Details

How to Cite
R. Regin, S. Suman Rajest, Shynu T, & Steffi. R. (2023). Machine for the Transformation of Recycled Paper Based on the Internet of Things. CENTRAL ASIAN JOURNAL OF MATHEMATICAL THEORY AND COMPUTER SCIENCES, 4(11), 61-80. Retrieved from https://cajmtcs.centralasianstudies.org/index.php/CAJMTCS/article/view/555

References

  1. 1. P. Hao and S. Wang, Analysis on Cutter Machine Driving Technology Process and Control Strategies”, International Workshop on Intelligent Systems and Applications. 2010.
  2. 2. A. N. Q. J. A. V. O. K. Saptaji Tasya and D. Septiani Sylvania Mulia, “Design and Modelling of Shredding Machine for Recycling Plastic Waste,” in International Conference on Computing, Engineering, and Design (ICCED), 2021.
  3. 3. W. Xinxiang and Guoqing, “Analysis and study on a novel type of fully auto-cross paper cutting machine,” in IEEE International Conference on Mechatronics and Automation, 2009, pp. 9–12.
  4. 4. Z. Yang and L. Song, “Fuzzy-PI control system for speeding of paper cutting machine Based on PLC,” in International Conference on Electric Information and Control Engineering (ICE ICE), 2011, pp. 15–17.
  5. 5. D. Fam Feiran, “The research and the application for the rotary die-cutting Machine drive technology,” International Conference on Mechanism Automation and Control Engineering, pp. 26–28, 2010.
  6. 6. Z. Yin and L. Xu, “Finite Element Analysis and Optimization Design of Paper Cutter Cutting Blade Based on Ansys,” in International Conference on Robots Intelligent System (ICRIS), 2018, pp. 26–27.
  7. 7. A. Bamshad and J. Hyoung, “Disposable Sensor Devices Fabricated by Paper Crafting Tools,” in IEEE Sensors Applications Symposium(SAS), 2020.
  8. 8. S. Chahal, “Agile methodologies for improved product management,” Journal of Business and Strategic Management, vol. 8, no. 4, pp. 79–94, Sep. 2023.
  9. 9. S. Chahal, “AI-Enhanced Cyber Incident Response and Recovery,” International Journal of Science and Research, vol. 12, no. 3, pp. 1795–1801, Mar. 2023.
  10. 10. S. Chahal, “Deep learning for early detection of disease outbreaks,” International Journal of Science and Research, vol. 11, no. 11, pp. 1489–1495, Nov. 2022.
  11. 11. H.A.A. Alsultan and K. H. Awad "Sequence Stratigraphy of the Fatha Formation in Shaqlawa Area, Northern Iraq," Iraqi Journal of Science ,vol. 54, no.2F, p.13-21, 2021.
  12. 12. H.A.A. Alsultan , M.L. Hussein, , M.R.A. Al-Owaidi , A.J. Al-Khafaji and M.A. Menshed "Sequence Stratigraphy and Sedimentary Environment of the Shiranish Formation, Duhok region, Northern Iraq", Iraqi Journal of Science, vol.63, no.11, p.4861-4871, 2022.
  13. 13. H.A.A. Alsultan , F.H.H. Maziqa and M.R.A. Al-Owaidi "A stratigraphic analysis of the Khasib, Tanuma and Sa’di formations in the Majnoon oil field, southern Iraq," Bulletin of the Geological Society of Malaysia, vol. 73, p.163 – 169, 2022 .
  14. 14. I.I. Mohammed, and H. A. A. Alsultan "Facies Analysis and Depositional Environments of the Nahr Umr Formation in Rumaila Oil Field, Southern Iraq," Iraqi Geological Journal, vol.55, no.2A, p.79-92, 2022.
  15. 15. I.I. Mohammed, and H. A. A. Alsultan "Stratigraphy Analysis of the Nahr Umr Formation in Zubair oil field, Southern Iraq," Iraqi Journal of Science, vol. 64, no. 6, p. 2899-2912, 2023.
  16. 16. Prince, Ananda Shankar Hati , Prasun Chakrabarti , Jemal Hussein , Ng Wee Keong , "Development of Energy Efficient Drive for Ventilation System using Recurrent Neural Network" , Neural Computing and Applications , 33 : 8659 , 2021.
  17. 17. Ashish Kumar Sinha, Ananda Shankar Hati , Mohamed Benbouzid , Prasun Chakrabarti , “ANN-based Pattern Recognition for Induction Motor Broken Rotor Bar Monitoring under Supply Frequency Regulation”, Machines , 9(5):87, 2021.
  18. 18. Chakrabarti P., Bhuyan B., Chaudhuri A. and Bhunia C.T., “A novel approach towards realizing optimum data transfer and Automatic Variable Key(AVK)” , International Journal of Computer Science and Network Security, 8(5), pp.241-250, 2008.
  19. 19. Chakrabarti P. , Goswami P.S., “Approach towards realizing resource mining and secured information transfer”, International Journal of Computer Science and Network Security, 8(7), pp.345-350, 2008.
  20. 20. Chakrabarti P., Choudhury A., Naik N. , Bhunia C.T., “Key generation in the light of mining and fuzzy rule”, International Journal of Computer Science and Network Security, 8(9), pp.332-337, 2008.
  21. 21. Chakrabarti P., De S.K., Sikdar S.C., “Statistical Quantification of Gain Analysis in Strategic Management” , International Journal of Computer Science and Network Security,9(11), pp.315-318, 2009.
  22. 22. Chakrabarti P. , Basu J.K. , Kim T.H., “Business Planning in the light of Neuro-fuzzy and Predictive Forecasting”, Communications in Computer and Information Science , 123, pp.283-290, 2010.
  23. 23. Prasad A. , Chakrabarti P., “Extending Access Management to maintain audit logs in cloud computing", International Journal of Advanced Computer Science and Applications ,5(3),pp.144-147, 2014.
  24. 24. Sharma A.K., Panwar A., Chakrabarti P. ,Viswakarma S., “Categorization of ICMR Using Feature Extraction Strategy and MIR with Ensemble Learning”, Procedia Computer Science, 57,pp.686-694,2015.
  25. 25. Patidar H. , Chakrabarti P., “A Novel Edge Cover based Graph Coloring Algorithm”, International Journal of Advanced Computer Science and Applications , 8(5),pp.279-286,2017.
  26. 26. Patidar H., Chakrabarti P., Ghosh A., “Parallel Computing Aspects in Improved Edge Cover based Graph Coloring Algorithm”, Indian Journal of Science and Technology ,10(25),pp.1-9,2017.
  27. 27. Tiwari M., Chakrabarti P, Chakrabarti T., “Novel work of diagnosis in liver cancer using Tree classifier on liver cancer dataset ( BUPA liver disorder )” , Communications in Computer and Information Science , 837, pp.155-160, 2018.
  28. 28. Verma K., Srivastava P. , Chakrabarti P., “Exploring structure oriented feature tag weighting algorithm for web documents identification”, Communications in Computer and Information Science ,837, pp.169-180, 2018.
  29. 29. Tiwari M., Chakrabarti P , Chakrabarti T., “Performance analysis and error evaluation towards the liver cancer diagnosis using lazy classifiers for ILPD”, Communications in Computer and Information Science , 837, pp.161-168,2018.
  30. 30. Patidar H. , Chakrabarti P., “A Tree-based Graphs Coloring Algorithm Using Independent Set”, Advances in Intelligent Systems and Computing, 714, pp. 537-546, 2019.
  31. 31. Chakrabarti P., Satpathy B., Bane S., Chakrabarti T., Chaudhuri N.S. , Siano P., “Business forecasting in the light of statistical approaches and machine learning classifiers”, Communications in Computer and Information Science , 1045, pp.13-21, 2019.
  32. 32. Shah K., Laxkar P. , Chakrabarti P., “A hypothesis on ideal Artificial Intelligence and associated wrong implications”, Advances in Intelligent Systems and Computing, 989, pp.283-294, 2020.
  33. 33. Kothi N., Laxkar P. Jain A. , Chakrabarti P., “Ledger based sorting algorithm”, Advances in Intelligent Systems and Computing, 989, pp. 37-46, 2020.
  34. 34. Chakrabarti P. ,Chakrabarti T., Sharma M . , Atre D, Pai K.B., “Quantification of Thought Analysis of Alcohol-addicted persons and memory loss of patients suffering from stage-4 liver cancer”, Advances in Intelligent Systems and Computing, 1053, pp.1099-1105, 2020.
  35. 35. Chakrabarti P., Bane S.,Satpathy B.,Goh M, Datta B N , Chakrabarti T., “Compound Poisson Process and its Applications in Business”, Lecture Notes in Electrical Engineering, 601, pp.678-685,2020.
  36. 36. Chakrabarti P., Chakrabarti T., Satpathy B., SenGupta I . Ware J A., “Analysis of strategic market management in the light of stochastic processes, recurrence relation, Abelian group and expectation”, Advances in Artificial Intelligence and Data Engineering, 1133 , pp.701-710, 2020.
  37. 37. Priyadarshi N., Bhoi A.K., Sharma A.K., Mallick P.K. , Chakrabarti P., “An efficient fuzzy logic control-based soft computing technique for grid-tied photovoltaic system”, Advances in Intelligent Systems and Computing, 1040,pp.131-140,2020.
  38. 38. Priyadarshi N., Bhoi A.K., Sahana S.K., Mallick P.K. , Chakrabarti P., Performance enhancement using novel soft computing AFLC approach for PV power system”, Advances in Intelligent Systems and Computing, 1040, pp.439-448,2020.
  39. 39. Magare A., Lamin M., Chakrabarti P., “Inherent Mapping Analysis of Agile Development Methodology through Design Thinking”, Lecture Notes on Data Engineering and Communications Engineering, 52, pp.527-534,2020.
  40. 40. Ali Y., Shreemali J., Chakrabarti T., Chakrabarti P. , Poddar S., “Prediction of Reaction Parameters on Reaction Kinetics for Treatment of Industrial Wastewater: A Machine Learning Perspective”, Materials Today :Proceedings,2020.
  41. 41. Chakrabarti P., Satpathy B., Bane S., Chakrabarti T., Poddar S., “Business gain forecasting in Materials Industry - A linear dependency, exponential growth, moving average, neuro-associator and compound Poisson process perspective”, Materials Today: Proceedings, 2020.
  42. 42. Shameem, A., Ramachandran, K. K., Sharma, A., Singh, R., Selvaraj, F. J., & Manoharan, G. (2023). The rising importance of AI in boosting the efficiency of online advertising in developing countries. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  43. 43. Ramachandran, K. K., Lakshmi, K. K., Singh, J., Prusty, A., Panduro-Ramirez, J., & Lourens, M. (2023). The impact of the metaverse on organizational culture and Communication. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  44. 44. Mittal, A., Ramachandran, K. K., Lakshmi, K. K., Hasbullah, N. N., Ravichand, M., & Lourens, M. (2023). Human-cantered Artificial Intelligence in Education, present and future opportunities. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  45. 45. Raman, R., Joshi, K., Saravana Kumar, G., Ramachandran, K. K., Bothe, S., & Trivedi, S. (2023). Benefits of implementing an ad-hoc network for hospitality businesses with IOT smart devices. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  46. 46. Ramachandran, K. K., K. K, K., Semwal, A., Singh, S. P., Al-Hilali, A. A., & Alazzam, M. B. (2023). AI-powered decision making in management: A review and Future Directions. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  47. 47. Ramachandran, K. K., Lamba, F. L., Rawat, R., Gehlot, A., Raju, A. M., & Ponnusamy, R. (2023). An investigation of block chains for attaining Sustainable Society. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  48. 48. Saravana Kumar, G., Ramachandran, K. K., Sharma, S., Ramesh, R., Qureshi, K., & Ganesh, K. (2023). Ai-Assisted Resource Allocation for improved business efficiency and profitability. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  49. 49. Ramachandran, K. K., K, K. K., Singh, K., R, R., Ganesh, C., & Kumar, S. (2023). Machine learning approaches for statistical analysis of customer satisfaction in Service Management. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  50. 50. Ramachandran, K. K., K, K. K., Semwal, A., Shravan, M., Srinivas, K., & Lourens, M. (2023). Ai-supported Decision Making System. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).
  51. 51. Nagarjuna, B., Ramachandran, K. K., Nautiyal, A., Singh, S. P., Nayak, B. B., & Ganguly, P. (2023). Sustainability in the field of supply chain using technolgy: A Deep Review. 2023 3rd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE).