Journal Articles (All Issues)

AI-ENHANCED SEMICONDUCTOR MANUFACTURING FOR OPTOELECTRONIC ADVANCEMENTS

Authors

Dr. Sharath Kumar.D.R.V.A, Dr.B.Ramesh, Dr. V.J. Priyadharshini, Mohammad Taj, Elangovan Muniyandy, Soumya S S, Dr. P.Veeramanikandan

Keyword Semiconductor Manufacturing, AI, Optoelectronic Devices, Process Optimization, Quality control.

Abstract

Semiconductor production drives electronics and optoelectronic device advances. With the requirement for accuracy and efficiency in semiconductor manufacture, AI integration has become revolutionary. LEDs, photovoltaics, and optical sensors need advanced production techniques to achieve performance and quality criteria. AI-enhanced semiconductor production may improve productivity, output, and quality. AI optimizes process parameters, discovers abnormalities, and boosts production efficiency using machine learning, predictive analytics, and sophisticated control systems. This article discusses AI-enhanced semiconductor production for optoelectronic breakthroughs, including current advances, major applications, and future possibilities.

References

    1. Zenkert, J., Weber, C., Dornhöfer, M., Abu-Rasheed, H., & Fathi, M. (2021). Knowledge integration in smart factories. Encyclopedia, 1(3), 792-811. 2. Li, X. H., Cao, C. C., Shi, Y., Bai, W., Gao, H., Qiu, L., ... & Chen, L. (2020). A survey of data-driven and knowledge-aware explainable ai. IEEE Transactions on Knowledge and Data Engineering, 34(1), 29-49. 3. Samek, W., Montavon, G., Vedaldi, A., Hansen, L. K., & Müller, K. R. (Eds.). (2019). Explainable AI: interpreting, explaining and visualizing deep learning (Vol. 11700). Springer Nature. 4. Frakes, W. B., & Baeza-Yates, R. (Eds.). (1992). Information retrieval: data structures and algorithms. Prentice-Hall, Inc.. 5. Polley, S., Koparde, R. R., Gowri, A. B., Perera, M., & Nuernberger, A. (2021, July). Towards trustworthiness in the context of explainable search. In Proceedings of the 44th International ACM SIGIR Conference on Research and Development in Information Retrieval (pp. 2580-2584). 6. Yang, Z. (2020, July). Biomedical information retrieval incorporating knowledge graph for explainable precision medicine. In Proceedings of the 43rd International ACM SIGIR Conference on Research and Development in Information Retrieval (pp. 2486-2486). 7. Adadi, A., & Berrada, M. (2018). Peeking inside the black-box: a survey on explainable artificial intelligence (XAI). IEEE access, 6, 52138-52160. 8. Abu-Rasheed, H., Weber, C., Zenkert, J., Krumm, R., & Fathi, M. (2022). Explainable Graph-Based Search for Lessons-Learned Documents in the Semiconductor Industry. In Intelligent Computing: Proceedings of the 2021 Computing Conference, Volume 1 (pp. 1097-1106). Springer International Publishing 9. Tiddi, I., Lécué, F., & Hitzler, P. (Eds.). (2020). Knowledge graphs for explainable artificial intelligence: Foundations, applications and challenges. 10. Xu, F., Uszkoreit, H., Du, Y., Fan, W., Zhao, D., & Zhu, J. (2019). Explainable AI: A brief survey on history, research areas, approaches and challenges. In Natural Language Processing and Chinese Computing: 8th CCF International Conference, NLPCC 2019, Dunhuang, China, October 9–14, 2019, Proceedings, Part II 8 (pp. 563-574). Springer International Publishing. 11. Moon, S., Shah, P., Kumar, A., & Subba, R. (2019, July). Opendialkg: Explainable conversational reasoning with attention-based walks over knowledge graphs. In Proceedings of the 57th annual meeting of the association for computational linguistics (pp. 845-854). 12. Ribeiro, M. T., Singh, S., & Guestrin, C. (2016, August). " Why should i trust you?" Explaining the predictions of any classifier. In Proceedings of the 22nd ACM SIGKDD international conference on knowledge discovery and data mining (pp. 1135-1144). 13. Selvaraju, R. R., Cogswell, M., Das, A., Vedantam, R., Parikh, D., & Batra, D. (2017). Grad-cam: Visual explanations from deep networks via gradient-based localization. In Proceedings of the IEEE international conference on computer vision (pp. 618-626) 14. Ehsan, U., Harrison, B., Chan, L., & Riedl, M. O. (2018, December). Rationalization: A neural machine translation approach to generating natural language explanations. In Proceedings of the 2018 AAAI/ACM Conference on AI, Ethics, and Society (pp. 81-87). 15. Wang, X., Wang, D., Xu, C., He, X., Cao, Y., & Chua, T. S. (2019, July). Explainable reasoning over knowledge graphs for recommendation. In Proceedings of the AAAI conference on artificial intelligence (Vol. 33, No. 01, pp. 5329-5336). 16. Xian, Y., Fu, Z., Muthukrishnan, S., De Melo, G., & Zhang, Y. (2019, July). Reinforcement knowledge graph reasoning for explainable recommendation. In Proceedings of the 42nd international ACM SIGIR conference on research and development in information retrieval (pp. 285-294). 17. Chen, Y., & Miyazaki, J. (2020). A model-agnostic recommendation explanation system based on knowledge graph. In Database and Expert Systems Applications: 31st International Conference, DEXA 2020, Bratislava, Slovakia, September 14–17, 2020, Proceedings, Part II 31 (pp. 149-163). Springer International Publishing. 18. Fensel, D., Şimşek, U., Angele, K., Huaman, E., Kärle, E., Panasiuk, O., ... & Wahler, A. (2020). Introduction: what is a knowledge graph?. Knowledge graphs: Methodology, tools and selected use cases, 1-10. 19. Alzoubi, W. A. (2020). Dynamic graph based method for mining text data. WSEAS Transactions on Systems and Control, 15(20), 453-458. 20. Alzoubi, W. A. (2020). An Improved Graph based Rules Mining Technique from Text. Eng. World, 2, 76-81] 21. Abu Rasheed, H., Weber, C., Zenkert, J., Czerner, P., Krumm, R., & Fathi, M. (2021). A text extraction-based smart knowledge graph composition for integrating lessons learned during the microchip design. In Intelligent Systems and Applications: Proceedings of the 2020 Intelligent Systems Conference (IntelliSys) Volume 2 (pp. 594-610). Springer International Publishing 22. Seeliger, A., Pfaff, M., & Krcmar, H. (2019). Semantic web technologies for explainable machine learning models: A literature review. PROFILES/SEMEX@ ISWC, 2465, 1-16. 23. Naiseh, M. (2020). Explainability design patterns in clinical decision support systems. In Research Challenges in Information Science: 14th International Conference, RCIS 2020, Limassol, Cyprus, September 23–25, 2020, Proceedings 14 (pp. 613-620). Springer International Publishing. 24. Song, W.; Duan, Z.; Yang, Z.; Zhu, H.; Zhang, M.; Tang, J. Explainable Knowledge Graph-Based Recommendation via Deep Reinforcement Learning. arXiv 2019, arXiv:1906.09506. Available online: http://arxiv.org/abs/1906.09506 (accessed on 17 November 2021). 25. Xie, L., Hu, Z., Cai, X., Zhang, W., & Chen, J. (2021). Explainable recommendation based on knowledge graph and multi-objective optimization. Complex & Intelligent Systems, 7, 1241-1252. 26. Shalaby, W., AlAila, B., Korayem, M., Pournajaf, L., AlJadda, K., Quinn, S., & Zadrozny, W. (2017, December). Help me find a job: A graph-based approach for job recommendation at scale. In 2017 IEEE international conference on big data (big data) (pp. 1544-1553). IEEE. 27. Zhang, J., & Li, J. (2019). Enhanced knowledge graph embedding by jointly learning soft rules and facts. Algorithms, 12(12), 265. 28. Cheng, K.; Yang, Z.; Zhang, M.; Sun, Y. UniKER: A Unified Framework for Combining Embedding and Definite Horn Rule Reasoning for Knowledge Graph Inference. In Proceedings of the 2021 Conference on Empirical Methods in Natural Language Processing; Association for Computational Linguistics, Punta Cana, Dominican Republic, 7–11 November 2021; pp. 9753–9771 29. Yu, J.; McCluskey, K.; Mukherjee, S. Tax Knowledge Graph for a Smarter and More Personalized TurboTax. arXiv 2020, arXiv:2009.06103 30. Dijkstra, E. W. (1959). A note on two problems in connexion with graphs. Numeriske Mathematik, 1, 269–271. 31. Momin, U. (2023). NREGA-Catalyst for Fostering Inclusive Growth. International Journal for Multidimensional Research Perspectives, 1(4), 63-72. 32. Momin, M. U. An Analysis of the Challenges and Opportunities Encountered by Small and Medium Enterprises (SMES) in the Context of the Indian Economy. 33. Momin, U., Mehak, S. T., & Kumar, M. D. (2023). Strategic Planning and Risk Management in the Stratup, Innovation and Entrepreneurship: Best Practices and Challenges. Journal of Informatics Education and Research, 3(2). 34. Mahajan, T., Momin, U., Khan, S., & Khan, H. ROLE OF WOMEN’S ENTREPRENEURSHIP IN SOCIAL AND ECONOMIC DEVELOPMENT OF INDIA. 35. Naeem, A. B., Senapati, B., Islam Sudman, M. S., Bashir, K., & Ahmed, A. E. (2023). Intelligent road management system for autonomous, non-autonomous, and VIP vehicles. World Electric Vehicle Journal, 14(9), 238. 36. Naeem, A. B., Senapati, B., Mahadin, G. A., Ghulaxe, V., Almeida, F., Sudman, S. I., & Ghafoor, M. I. (2024). Determine the Prevalence of Hepatitis B and C During Pregnancy by Using Machine Learning Algorithm. International Journal of Intelligent Systems and Applications in Engineering, 12(13s), 744-751. 37. Yadav, S., Sudman, M. S. I., Dubey, P. K., Srinivas, R. V., Srisainath, R., & Devi, V. C. (2023, October). Development of an GA-RBF based Model for Penetration of Electric Vehicles and its Projections. In 2023 International Conference on Self Sustainable Artificial Intelligence Systems (ICSSAS) (pp. 1-6). IEEE. 38. Yadav, S., Sudman, M. S. I., Dubey, P. K., Srinivas, R. V., Srisainath, R., & Devi, V. C. (2023, October). Development of an GA-RBF based Model for Penetration of Electric Vehicles and its Projections. In 2023 International Conference on Self Sustainable Artificial Intelligence Systems (ICSSAS) (pp. 1-6). IEEE. 39. Thingom, C., Tammina, M. R., Joshi, A., Agal, S., Sudman, M. S. I., & Byeon, H. (2023, August). Revolutionizing Data Capitalization: Harnessing Blockchain for IoT-Enabled Smart Contracts. In 2023 Second International Conference On Smart Technologies For Smart Nation (SmartTechCon) (pp. 490-496). IEEE. 40. Sakthivel, M., Sudman, M. S. I., Ravishankar, K., Avinash, B., Kumar, A., & Ponnusamy, M. (2023, October). Medical Image Analysis of Multiple Myeloma Diagnosis Using CNN and KNN Based Approach. In 2023 International Conference on Self Sustainable Artificial Intelligence Systems (ICSSAS) (pp. 92-97). IEEE. 41. Choudhuri, S. S., Bowers, W., & Siddiqui, M. N. (2023). U.S. Patent No. 11,763,241. Washington, DC: U.S. Patent and Trademark Office. 42. Zanzaney, A. U., Hegde, R., Jain, L., Choudhuri, S. S., & Sharma, C. K. (2023, September). Crop Disease Detection Using Deep Neural Networks. In 2023 International Conference on Network, Multimedia and Information Technology (NMITCON) (pp. 1-5). IEEE. 43. Faisal, L., Rama, V. S. B., Roy, S., & Nath, S. (2022). Modelling of electric vehicle using modified sepic converter configuration to enhance dc–dc converter performance using matlab. In Smart Energy and Advancement in Power Technologies: Select Proceedings of ICSEAPT 2021, Volume 2 (pp. 643-653). Singapore: Springer Nature Singapore. 44. Faisal, L., Rama, V. S. B., Yang, J. M., Wajid, A., & Ghorui, S. K. (2022, May). Performance and simulation analysis of ipmsyncrm (internal permanent magnet synchronous reluctance motor) for advanced electric vehicle design. In 2022 3rd International Conference for Emerging Technology (INCET) (pp. 1-6). IEEE. 45. Mohd, R., & Faisal, L. (2022). Smart Agricultural Practices using Machine Learning techniques For Rainfall Prediction: A case Study of Valkenburg station, Netherlands. Mathematical Statistician and Engineering Applications, 71(4), 8451-8462. 46. Wani, A. A., & Faisal, L. (2022). Design & development of novel hybrid set of rules for detection and type of malignant or non-malignant tumor in human brain based on svm using artificial intelligence classifier. Mathematical Statistician and Engineering Applications, 71(4), 10253-10276. 47. Mohammed, A. H. (2021). Fish schooling and sorensen trust based wireless sensor network optimization. International Journal, 9, 6. 48. Mohammed, A. H. DDoS Malicious Node Detection by Jaccard and Page Rank Algorithm in Cloud Environment. 49. Mohammed, A. H. (2021). Invasive Weed Optimization Based Ransom-Ware Detection in Cloud Environment. 50. Choudhuri, S. S., Bowers, W., & Siddiqui, M. N. (2023). U.S. Patent No. 11,763,241. Washington, DC: U.S. Patent and Trademark Office. 51. Zanzaney, A. U., Hegde, R., Jain, L., Choudhuri, S. S., & Sharma, C. K. (2023, September). Crop Disease Detection Using Deep Neural Networks. In 2023 International Conference on Network, Multimedia and Information Technology (NMITCON) (pp. 1-5). IEEE.

Downloads

View/Download PDF

PDF



Published

2024-03-15

Issue

Vol. 43 No. 01 (2024)