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A Novel Hybrid IOT Based Artificial Intelligence Algorithm for Toxicity Prediction In The Environment And Its Effect On Human Health

Global NEST Journal 2023 1 citation ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 40 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
H Abdollahi, M Noaparast, S Shafaei, A Akcil, S Panda, M Kashi, P Karimi, K Adler, K Piikki, M Sderstrm, J Eriksson, O Alshihabi, M Ahmid, O Kazar, Al Imran, A Rifat, M Mohammad, R, S Bhagat, T Tiyasha, T Bhardwaj, R Mittal, H Upadhyay, L Lagos, H Chen, L Wang, B Hu, J Xu, X Liu, S Das, S Dasgupta, A Biswas, A Abraham, A Konar, W De Sousa Mendes, J Dematt, M Elangasinghe, N Singhal, K Dirks, J Salmond, M Fan, J Hu, R Cao, W Ruan, X Wei, X Guo, J Wang, A Jude, D Singh, S Islam, B Ke, H Nguyen, X Bui, N Balakrishnan, A Yadav, S Akojwar, H Manoharan, F Al-Turjman, K Kumar, S Sampada, G Kumar, A Bharadwaja, N Sai, S Mishra, S Mohanty, S Mohideen, L Tamilselvan, K Subramaniam, G Kavitha, M Neyja, S Mumtaz, K Huq, S Busari, J Rodriguez, Z Zhou, M Padmaja, S Shitharth, K Prasuna, V Pardeshi, S Sagar, S Murmurwar, P Hage, Pravin Kshirsagar, P, J Saha, S Sathe, A Kulkarni, S Sundaramurthy, P Kshirsagar, L Xiong, J Ning, Y Dong, Z Yaseen, L Zhang

Summary

Researchers proposed a hybrid IoT-based artificial intelligence framework for predicting environmental toxicity and its effects on human health, combining sensor networks with machine learning to improve real-time assessment of chemical exposure risks in the environment.

Salem Algarni Mechanical Engineering Department, College of Engineering, King Khalid University, Abha 61421, Asir, Kingdom of Saudi Arabia Vineet Tirth Mechanical Engineering Department, College of Engineering, King Khalid University, Abha 61421, Asir, Kingdom of Saudi Arabia Talal Alqahtani Mechanical Engineering Department, College of Engineering, King Khalid University, Abha 61421, Asir, Kingdom of Saudi Arabia Pravin R. Kshirsagar Professor, Department of Artificial Intelligence, G.H. Raisoni College of Engineering, Nagpur, India

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