Nanotechnology in BattleField: A Study

Year : 2024 | Volume :14 | Issue : 02 | Page : 18-29
By

Kazi Kutubuddin Sayyad Liyakat,

  1. Professor,Head, Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane Institute of Technology, Solapur, Maharashtra, India

Abstract

Nanotechnology, a rapidly evolving frontier of science and engineering, has revolutionized multiple  sectors, including medicine, electronics, and materials science. Its application in military domains  presents both intriguing opportunities and complex challenges. The abstract titled “Nanotechnology in  Battlefield: A Study” offers a comprehensive overview of how nanotechnology is transforming warfare  and military strategy. The abstract emphasizes the ethical and moral implications of deploying  nanotechnology in warfare. The potential for creating weapons of mass destruction at a nanoscale,  along with concerns regarding dual-use technologies, raises fundamental questions about  accountability and regulation. This critical analysis invites readers to consider not only the  technological advancements but also the associated risks and ethical dilemmas that accompany them.  While the abstract effectively outlines both the benefits and challenges of integrating nanotechnology  into the battlefield, it could further strengthen its argument by including foresight into future  developments and strategic considerations. The dynamic nature of technological evolution suggests  that military applications will continue to expand, thus warranting ongoing evaluation and adaptation  of ethical frameworks. 

Keywords: Nanotechnology, Battlefield, Weaponry, Medical innovation, Surveillance, Communication,

[This article belongs to Journal of Nanoscience, NanoEngineering & Applications (jonsnea)]

How to cite this article:
Kazi Kutubuddin Sayyad Liyakat. Nanotechnology in BattleField: A Study. Journal of Nanoscience, NanoEngineering & Applications. 2024; 14(02):18-29.
How to cite this URL:
Kazi Kutubuddin Sayyad Liyakat. Nanotechnology in BattleField: A Study. Journal of Nanoscience, NanoEngineering & Applications. 2024; 14(02):18-29. Available from: https://journals.stmjournals.com/jonsnea/article=2024/view=174526



Fetching IP address…

Full Text PDF

References

  1. Halli UM. Nanotechnology in IoT security. J Nanoscience, Nanoengineering Appl. 2022;12:11–6.
  2. Wale AD, Dipali R, et al. Smart agriculture system using IoT. Int J Innov Res Technol. 2019;5: 493–7.
  3. Halli UM. Nanotechnology in E-vehicle batteries. Int J Nanomater Nanostruct. 2022;8:22–7.
  4. Sayyad Liyakat KK. Nanotechnology application in neural growth support system. Nano Trends. 2022;24:47–55.
  5. Mishra Sunil B, et al. Nanotechnology’s importance in mechanical engineering. J Fluid Mech Des. 2024;6:1–9.
  6. Liyakat KSS. Accepting Internet of nano-things: Synopsis, developments, and challenges. J Nanoscience, Nanoengineering Appl. 2023;13:17–26. DOI: 10.37591/jonsnea.v13i2.1464.
  7. Liyakat KSS, Liyakat KKS. Nanomedicine as a potential therapeutic approach to COVID-19. Int J Appl Nanotechnol. 2023;9:27–35.
  8. Liyakat KKS. Nanotechnology in precision farming: The role of research. Int J Nanomater Nanostruct. 2023;9. DOI: 10.37628/ijnn.v9i2.1051.
  9. Liyakat KKS. Smart agriculture based on AI-driven-IoT (AIIoT): A KSK approach. Adv Res Commun Eng Innov. 2024;1:23–32.
  10. Kazi K. Complications with malware identification in IoT and an overview of artificial immune approaches. Res Rev J Immunol. 2024;14:54–62.
  11. Liyakat KKS. Machine learning approach using artificial neural networks to detect malicious nodes in IoT networks. In: Udgata SK, Sethi S, Gao XZ, editors. ICMIB 2023. Lecture Notes in Networks and Systems. Vol. 728. Singapore: Springer; 2024. Available from: https://link.springer.com/ chapter/10.1007/978-981-99-3932-9_12. DOI: 10.1007/978-981-99-3932-9_12.
  12. Pradeepa M, Jamberi K, Sajith S, Bai MR, Prakash A, Liyakat KS. Student health detection using a machine learning approach and IoT. 2nd Mysore sub section International Conference (MysuruCon). 2022. IEEE Publications. DOI: 10.1109/MysuruCon55714.2022.9972445.
  13. Liyakat KKS. Detecting malicious nodes in IoT networks using machine learning and artificial neural networks. Int Conf Emerg Smart Comput Inform (ESCI). 2023. Pune, India. Vol. 2023. pp. 1–5. DOI: 10.1109/ESCI56872.2023.10099544.
  14. Kasat K, Shaikh N, Rayabharapu VK, Nayak M, Sayyad LK. Implementation and recognition of waste management system with mobility solution in smart cities using IoT. Second Int Conf Augment Intell Sustain Syst (ICAISS). 2023. Trichy, India. Vol. 2023. pp. 1661–5. DOI: 10.1109/ICAISS58487.2023.10250690.
  15. Liyakat KKS. Machine learning approach using artificial neural networks to detect malicious nodes in IoT networks. In: Shukla PK, Mittal H, Engelbrecht A, editors. CVR 2023. Algorithms for Intelligent Systems. Singapore: Springer; 2023. DOI: 10.1007/978-981-99-4577-1_3.
  16. Kazi K. AI-driven IoT (AIIoT) in healthcare monitoring. In: Nguyen T, Vo N, editors. Using Traditional Design Methods to Enhance AI-Driven Decision Making. IGI Global; 2024. pp. 77–101. Available from: https://www.igi-global.com/chapter/ai-driven-iot-aiiot-in-healthcare-monitoring/336693. DOI: 10.4018/979-8-3693-0639-0.ch003.
  17. Kazi K. Modelling and simulation of electric vehicle for performance analysis: BEV and HEV electrical vehicle implementation using Simulink for E-mobility ecosystems. In: Nagpal N, Kassarwani V, Varthanan G, Siano P, editors. IGI Global; 2024. pp. 295–320. Available from: https://www.igi-global.com/gateway/chapter/full-text-pdf/341172. DOI: 10.4018/979-8-3693-2611-4.ch014.
  18. Kazi KS. Computer-aided diagnosis in ophthalmology: A technical review of deep learning applications. In: Garcia M, de Almeida R, editors. Transformative Approaches to Patient Literacy and Healthcare Innovation. IGI Global; 2024. pp. 112–35. Available from: https://www.igi-global.com/chapter/computer-aided-diagnosis-in-ophthalmology/342823. DOI: 10.4018/979-8-3693-3661-8.ch006.
  19. Magadum PK. Machine learning for predicting wind turbine output power in wind energy conversion systems. Grenze Int J Eng Technol. 2024;10(1):2074–80. Grenze ID: 01.GIJET.10.1.4_1. Available from: https://thegrenze.com/index.php?display=page&view=journal abstract&absid=2514&id=8.
  20. Nerkar PM, Dhaware BU. Predictive data analytics framework based on Heart Healthcare System (HHS) using machine learning. J Adv Zool. 2023;44(Spec Issue 2):3673–86.
  21. Neeraja P, Kumar RG, Kumar MS, Liyakat KKS, Vani MS. DL-based somnolence detection for improved driver safety and alertness monitoring. IEEE Int Conf Comput Power Commun Technol (IC2PCT). 2024. Greater Noida, India. Vol. 2024. pp. 589–94. Available from: https://ieeexplore. org/document/10486714. DOI: 10.1109/IC2PCT60090.2024.10486714.
  22. Liyakat KKS. Explainable AI in healthcare. In: Kamaraj AA, Acharjya DP, editors. Explainable Artificial Intelligence in Healthcare System. 2024. ISBN: 979-8-89113-598-7. DOI: 10.52305/
  23. Liyakat KS. ChatGPT: An automated teacher’s guide to learning. In: Bansal R, Chakir A, Ngah H, Rabby F, Jain A, editors. AI Algorithms and ChatGPT for Student Engagement in Online Learning. IGI Global; 2024. pp. 1–20. DOI: 10.4018/979-8-3693-4268-8.ch001.
  24. Veena C, Sridevi M, Liyakat KKS, Saha B, Reddy SR, Shirisha N. HEECCNB: An efficient IoT-cloud architecture for secure patient data transmission and accurate disease prediction in healthcare systems. Seventh Int Conf Image Inf Process (ICIIP). 2023. Solan, India. Vol. 2023. pp. 407–10. Available from: https://ieeexplore.ieee.org/document/10537627. DOI: 10.1109/ICIIP61524.2023.
  25. Prasad KR, Karanam SR, Ganesh D, Liyakat KKS, Talasila V, Purushotham P. AI in public-private partnership for IT infrastructure development. J High Technol Manag Res. 2024;35:100496. DOI: 10.1016/j.hitech.2024.100496.
  26. Nagrale M, Pol RS, Birajadar GB, Mulani AO. Internet of robotic things in cardiac surgery: An innovative approach. Afr J Biol Sci. 2024;6:709–25. DOI: 10.33472/AFJBS.6.6.2024.709-725.
  27. Kazi KSL. IoT driven by machine learning (MLIoT) for the retail apparel sector. In: Tarnanidis T, Papachristou E, Karypidis M, Ismyrlis V, editors. Driving Green Marketing in Fashion and Retail. IGI Global; 2024. p. 63–81. DOI: 10.4018/979-8-3693-3049-4.ch004.
  28. Kazi KSL. Machine learning (ML)-based braille Lippi characters and numbers detection and announcement system for blind children in learning. In: Sart G, editor. Social Reflections of Human–Computer Interaction in Education, Management, and Economics. IGI Global; 2024. p. 16–39. DOI: 10.4018/979-8-3693-3033-3.ch002.
  29. Kazi KSL. Artificial intelligence (AI)-driven IoT (AIIoT)-based agriculture automation. In: Satapathy S, Muduli K, editors. Advanced Computational Methods for Agri-Business Sustainability. IGI Global; 2024. p. 72–94. DOI: 10.4018/979-8-3693-3583-3.ch005.
  30. Kutubuddin K. Vehicle Health Monitoring System (VHMS) by employing IoT and sensors. Grenze Int J Eng Technol. 2024;10:5367–74.
  31. Kutubuddin K. A Novel Approach on ML based Palmistry. Grenze Int J Eng Technol. 2024;10:5186–93.
  32. Kutubuddin K. IoT based Boiler Health Monitoring for Sugar Industries. Grenze Int J Eng Technol. 2024;10:5178–85.
  33. Liyakat KKS. Explainable AI in healthcare. In: Explainable Artificial Intelligence in Healthcare Systems. 2024. p. 271–84.
  34. Shirdale Y, et al. Analysis and design of Capacitive coupled wideband microstrip antenna in C and X band: A Survey. J GSD-Int Soc Green Sustain Eng Manag. 2014;1:1–7.
  35. Shirdale Y, et al. Coplanar capacitive coupled probe fed micro strip antenna for C and X band. Int J Adv Res Comput Commun Eng. 2016;5:661–3.
  36. Kazi KSL. Machine learning-based pomegranate disease detection and treatment. In: Ul Haq MZ, Ali I, editors. Revolutionizing Pest Management for Sustainable Agriculture. IGI Global; 2024. p. 469–498. DOI: 10.4018/979-8-3693-3061-6.ch019.
  37. Patil VJ, Khadake SB, Tamboli DA, Mallad HM, Takpere SM, Sawant VA. Review of AI in power electronics and drive systems. In: 3rd Int Conf Power Electron IoT Appl Renewable Energy Control (PARC). Mathura, India; 2024. p. 94–9. DOI: 10.1109/PARC59193.2024.10486488.
  38. Patil VJ, Khadake SB, Tamboli DA, Mallad HM, Takpere SM, Sawant VA. A comprehensive analysis of artificial intelligence integration in electrical engineering. In: 5th Int Conf Mobile Comput Sustain Inform (ICMCSI). Lalitpur, Nepal; 2024. p. 484–91. DOI: 10.1109/ICMCS 2024.00076.
  39. Khadake SB, Kashid PJ, Kawade AM, Khedekar SV, Mallad HM. Electric Vehicle Technology Battery Management -Review. Int J Adv Res Sci Commun Technol. 2023;3:319–25. DOI: 10.48175/IJARSCT-13048.
  40. Khadake S, Kawade S, Moholkar S, Pawar M. A review of 6G technologies and its advantages over 5G technology. In: Pawar PM, et al. Techno-societal 2022. ICATSA 2022. Springer: Cham, Germany; 2022. DOI: 10.1007/978-3-031-34644-6_107.
  41. Khadake SB, Chounde A, Gopnarayan BB, Patil KB, Kamble SS. Human health care system: A new approach towards life. Grenze Int J Eng Technol. 2024;10:5487–94. Available from: https://thegrenze.com/index.php?display=page&view=journalabstract&absid=3389&id=8.
  42. Khadake SB, Patil VJ, Mallad HM, Gopnarayan BB, Patil KB. Maximize Farming Productivity through Agriculture 4.0 based Intelligence, with use of Agri Tech Sense Advanced Crop Monitoring System. Grenze Int J Eng Technol. 2024;10:5127–34. Available from: https://thegrenze.com/index. php?display=page&view=journalabstract&absid=3336&id=8.

 


Regular Issue Subscription Review Article
Volume 14
Issue 02
Received September 4, 2024
Accepted September 9, 2024
Published September 19, 2024

Check Our other Platform for Workshops in the field of AI, Biotechnology & Nanotechnology.
Check Out Platform for Webinars in the field of AI, Biotech. & Nanotech.