Artificial Intelligence in Environmental Monitoring: Predicting and Managing Climate Change Impacts

Authors

  • Olivia Bianchi Università di Bologna
  • Herman Purwoko Putro Universitas Ichsan Satya

DOI:

https://doi.org/10.33050/italic.v3i1.650

Keywords:

Artificial Intelligence, Climate Change, Environmental Monitoring, Machine Learning, Deep Learning

Abstract

Environmental monitoring has become increasingly critical as climate change continues to pose significant global challenges, impacting ecosystems, economies, and human health. Predicting and managing these impacts requires advanced technological solutions, and Artificial Intelligence (AI) has emerged as a powerful tool in this domain. This study aims to explore the integration of AI techniques, such as machine learning and deep learning, into environmental monitoring to enhance the accuracy of climate change impact predictions and improve management strategies. The methods employed include the application of Convolutional Neural Networks (CNN) for land cover classification and Long Short-Term Memory (LSTM) models for forecasting air quality levels. The results indicate that AI significantly improves prediction accuracy, with CNN achieving high performance in land classification and LSTM models providing reliable forecasts for air quality changes. The findings suggest that AI can be instrumental in transforming environmental monitoring, enabling more proactive and data-driven climate change management. Future research should focus on improving data quality, model interpretability, and expanding AI applications in various environmental contexts.

References

U. Rusilowati, H. R. Ngemba, R. W. Anugrah, A. Fitriani, and E. D. Astuti, “Leveraging ai for superior efficiency in energy use and development of renewable resources such as solar energy, wind, and bioenergy,” International Transactions on Artificial Intelligence, vol. 2, no. 2, pp. 114–120, 2024.

N. F. A. M. Fadzil, H. M. Fadzir, H. Mansor, and U. Rahardja, “Driver behaviour classification: A research using obd-ii data and machine learning,” Journal of Advanced Research in Applied Sciences and Engineering Technology, pp. 51–61, 2024.

S. P. Pattyam, “Ai-driven data science for environmental monitoring: Techniques for data collection, analysis, and predictive modeling,” Australian Journal of Machine Learning Research & Applications, vol. 1, no. 1, pp. 132–169, 2021.

H. Y. N. Heri, “The effect of fragmentation as a moderation on the relationship between supply chain management and project performance,” ADI Journal on Recent Innovation, vol. 6, no. 1, pp. 54–64, 2024.

Z. Ye, J. Yang, N. Zhong, X. Tu, J. Jia, and J. Wang, “Tackling environmental challenges in pollution controls using artificial intelligence: A review,” Science of the Total Environment, vol. 699, p. 134279, 2020.

F. S. Putri, H. R. Ngemba, S. Hendra, and W. Wirdayanti, “Sistem layanan ujian psikotes sim menggunakan computer based test berbasis website: Sim psychological test service system using computer based test based on website,” Technomedia Journal, vol. 9, no. 1, pp. 92–104, 2024.

P. Asha, L. Natrayan, B. Geetha, J. R. Beulah, R. Sumathy, G. Varalakshmi, and S. Neelakandan, “Iot enabled environmental toxicology for air pollution monitoring using ai techniques,” Environmental research, vol. 205, p. 112574, 2022.

M. R. Anwar and L. D. Sakti, “Integrating artificial intelligence and environmental science for sustainable urban planning,” IAIC Transactions on Sustainable Digital Innovation (ITSDI), vol. 5, no. 2, pp. 179–191, 2024.

S. L. Ullo and G. R. Sinha, “Advances in smart environment monitoring systems using iot and sensors,” Sensors, vol. 20, no. 11, p. 3113, 2020.

A. Leffia, S. A. Anjani, M. Hardini, S. V. Sihotang, and Q. Aini, “Corporate strategies to improve platform economic performance: The role of technology, ethics, and investment management,” CORISINTA, vol. 1, no. 1, pp. 16–25, 2024.

V. Galaz, M. A. Centeno, P. W. Callahan, A. Causevic, T. Patterson, I. Brass, S. Baum, D. Farber, J. Fischer, D. Garcia et al., “Artificial intelligence, systemic risks, and sustainability,” Technology in Society, vol. 67, p. 101741, 2021.

A. G. Prawiyogi, A. S. Anwar et al., “Perkembangan internet of things (iot) pada sektor energi: Sistematik literatur review,” Jurnal MENTARI: Manajemen, Pendidikan dan Teknologi Informasi, vol. 1, no. 2, pp. 187–197, 2023.

R. B. Ghannam and S. M. Techtmann, “Machine learning applications in microbial ecology, human microbiome studies, and environmental monitoring,” Computational and Structural Biotechnology Journal, vol. 19, pp. 1092–1107, 2021.

Z. Kedah, “Use of e-commerce in the world of business,” Startupreneur Business Digital (SABDA Journal), vol. 2, no. 1, pp. 51–60, 2023.

X. Cao, Y. Xiong, J. Sun, X. Zhu, Q. Sun, and Z. L. Wang, “Piezoelectric nanogenerators derived self-powered sensors for multifunctional applications and artificial intelligence,” Advanced Functional Materials, vol. 31, no. 33, p. 2102983, 2021.

V. Melinda, T. Williams, J. Anderson, J. G. Davies, and C. Davis, “Enhancing waste-to-energy conversion efficiency and sustainability through advanced artificial intelligence integration,” International Transactions on Education Technology (ITEE), vol. 2, no. 2, pp. 183–192, 2024.

Y. J. Wong, Y. Shimizu, A. Kamiya, L. Maneechot, K. P. Bharambe, C. S. Fong, and N. M. Nik Sulaiman, “Application of artificial intelligence methods for monsoonal river classification in selangor river basin, malaysia,” Environmental Monitoring and assessment, vol. 193, no. 7, p. 438, 2021.

M. Pereira, I. Guvlor et al., “Implementation of artificial intelligence framework to enhance human resources competency in indonesia,” International Journal of Cyber and IT Service Management, vol. 4, no. 1, pp. 64–70, 2024.

M. DATA, “Multimodal artificial intelligence foundation models: Unleashing the power of remote sensing big data in earth observation,” Innovation, vol. 2, no. 1, p. 100055, 2024.

K. Myers and C. R. Hinman, “The impact of cryptocurrency on the indonesian community’s economy,” Blockchain Frontier Technology, vol. 3, no. 1, pp. 74–79, 2023.

N. Chamara, M. D. Islam, G. F. Bai, Y. Shi, and Y. Ge, “Ag-iot for crop and environment monitoring: Past, present, and future,” Agricultural systems, vol. 203, p. 103497, 2022.

I. Erliyani, K. Yuliana, H. Kusumah, and N. Aziz, “Metode pembelajaran dalam memberikan pendidikan agama islam pada usia dini industri 4.0,” Alfabet Jurnal Wawasan Agama Risalah Islamiah, Teknologi dan Sosial, vol. 1, no. 1, pp. 96–105, 2021.

Z. Fan, Z. Yan, and S. Wen, “Deep learning and artificial intelligence in sustainability: a review of sdgs, renewable energy, and environmental health,” Sustainability, vol. 15, no. 18, p. 13493, 2023.

M. Irawan and Z. A. Tyas, “Desain asset game android komodo isle berbasis 2 dimensi,” ADI Bisnis Digital Interdisiplin Jurnal, vol. 5, no. 1, pp. 58–66, 2024.

A. Subeesh and C. Mehta, “Automation and digitization of agriculture using artificial intelligence and internet of things,” Artificial Intelligence in Agriculture, vol. 5, pp. 278–291, 2021.

S. Purnama and C. S. Bangun, “Strategic management insights into housewives consumptive shopping behavior in the post covid-19 landscape,” APTISI Transactions on Management, vol. 8, no. 1, pp. 71–79, 2024.

T. Reddy, S. P. RM, M. Parimala, C. L. Chowdhary, S. Hakak, W. Z. Khan et al., “A deep neural networks based model for uninterrupted marine environment monitoring,” Computer Communications, vol. 157, pp. 64–75, 2020.

I. Sembiring, D. Manongga, U. Rahardja, and Q. Aini, “Understanding data-driven analytic decision making on air quality monitoring an empirical study,” Aptisi Transactions on Technopreneurship (ATT), vol. 6, no. 3, pp. 418–431, 2024.

W. Shi, M. Zhang, R. Zhang, S. Chen, and Z. Zhan, “Change detection based on artificial intelligence: State-of-the-art and challenges,” Remote Sensing, vol. 12, no. 10, p. 1688, 2020.

A. Holzinger, K. Keiblinger, P. Holub, K. Zatloukal, and H. M¨uller, “Ai for life: Trends in artificial intelligence for biotechnology,” New Biotechnology, vol. 74, pp. 16–24, 2023.

Q. Shi, B. Dong, T. He, Z. Sun, J. Zhu, Z. Zhang, and C. Lee, “Progress in wearable electronics/photonics—moving toward the era of artificial intelligence and internet of things,” InfoMat, vol. 2, no. 6, pp. 1131–1162, 2020.

N. Misra, Y. Dixit, A. Al-Mallahi, M. S. Bhullar, R. Upadhyay, and A. Martynenko, “Iot, big data, and

artificial intelligence in agriculture and food industry,” IEEE Internet of things Journal, vol. 9, no. 9, pp. 6305–6324, 2020.

S. K. Bhoi, S. K. Panda, K. K. Jena, K. S. Sahoo, N. Jhanjhi, M. Masud, and S. Aljahdali, “Iot-ems: An internet of things based environment monitoring system in volunteer computing environment,” Intell. Autom. Soft Comput, vol. 32, no. 3, pp. 1493–1507, 2022.

M. E. E. Alahi, A. Sukkuea, F. W. Tina, A. Nag, W. Kurdthongmee, K. Suwannarat, and S. C. Mukhopadhyay, “Integration of iot-enabled technologies and artificial intelligence (ai) for smart city scenario: recent advancements and future trends,” Sensors, vol. 23, no. 11, p. 5206, 2023.

X. Xiang, Q. Li, S. Khan, and O. I. Khalaf, “Urban water resource management for sustainable environ- ment planning using artificial intelligence techniques,” Environmental Impact Assessment Review, vol. 86, p. 106515, 2021.

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Published

2024-11-28

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