Abaku, E. A., Edunjobi, T. E., & Odimarha, A. C. (2024). Theoretical approaches to AI in supply chain optimization: Pathways to efficiency and resilience. International Journal of Science and Technology Research Archive, 6(1), 092-107.
Abba, S. I., Usman, J., Abdulazeez, I., Lawal, D. U., Baig, N., Usman, A. G., & Aljundi, I. H. (2023). Integrated modeling of hybrid nanofiltration/reverse osmosis desalination plant using deep learning-based crow search optimization algorithm.
Water,
15(19), 3515.
https://doi.org/10.3390/w15193515.
Abdulrahim, H. K., & Ahmed, M. (2022). Levelized cost analysis for desalination using renewable energy in GCC. Desalination & Water Treatment, 263, 3-8.
Addy, A., Asamoah-Atakorah, S., Mensah, G. B., Dodoo, S. W., & Asamoah-Atakorah, R. (2024). Ghana's public health act, AI algorithms and vaccine distribution in Ghana. International Journal for Multidisciplinary Research, 6, 1-9.
Adeniran, I. A., Efunniyi, C. P., Osundare, O. S., & Abhulimen, A. O. (2024). Optimizing logistics and supply chain management through advanced analytics: Insights from industries. Engineering Science & Technology Journal, 5(8).
Adesoga, T. O., Ajibaye, T. O., Nwafor, K. C., Imam-Lawal, U. T., Ikekwere, E. A., & Ekwunife, D. I. (2024). The rise of the" smart" supply chain: How AI and automation are revolutionizing logistics. International Journal of Science & Research Archive, 12(2), 790-798.
Agrawal, P., Narain, R., & Ullah, I. (2020). Analysis of barriers in implementation of digital transformation of supply chain using interpretive structural modelling approach. Journal of Modelling in Management, 15(1), 297-317.
Ali, Z. S. G., Hameed, I. M. A., & Al-Fiqi, M. M. (2024). Environmental impacts of seawater desalination technologies in the Gulf States - A review.
Zagazig Journal of Agricultural Research.
Alqaed, S., Mustafa, J., & Almehmadi, F. A. (2021). Design and energy requirements of a photovoltaic-thermal powered water desalination plant for the Middle East. International Journal of Environmental Research & Public Health, 18(3), 1001.
Ardiantono, D. S., Ardyansyah, G. D., Sugihartanto, M. F., Al Mustofa, M. U., & Lisdiantini, N. (2024). Mapping the barrier and strategic solutions of halal supply chain implementation in small and medium enterprises. Journal of Islamic Marketing, 15(7), 1673-1705.
Bag, S., Rahman, M. S., Srivastava, G., & Shrivastav, S. K. (2025). Unveiling metaverse potential in supply chain management and overcoming implementation challenges: an empirical study. Benchmarking: An International Journal, 32(11), 79-108.
Bakas, I., & Kontoleon, K. (2023). A review of the contributions of Artificial Intelligence in fire engineering, in a world rapidly realising the need for sustainable design.
IOP Conference Series: Earth and Environment,
1196(1), 12-112.
Balaji, R., Mosha, K., & Gowthami, V. (2021). Is desalination of sea water cheaper than constructing damin coastal areas for irrigation?. International Journal of Environment & Climate Change, 11(2), 131-141.
Balon, V., Bagul, A., & Kumar, R. (2024). Green construction supply chain barriers assessment: Evidence from Indian construction industry.
Global Business Review.
Bhatt, A., Singh, T., Pandey, S., Chauhan, A. S., Kumar, R., & Sunil, G. (2024). Monitoring of smart human resource (hr) using artificial intelligence and internet of things. In 2024 3rd International Conference on Sentiment Analysis and Deep Learning (ICSADL) (pp. 613-617). IEEE.
Cannas, V., Ciano, M. P., Saltalamacchia, M., & Secchi, R. (2023). Artificial intelligence in supply chain and operations management: A multiple case study research.
International Journal of Production Research,
62, 3333–3360.
Charcosset, C. (2022). Classical and recent developments of membrane processes for desalination and natural water treatment. Membranes, 12(3), 267.
Chekifi, T., Benmoussa, A., & Boukraa, M. (2024). Desalination powered by renewables: A challenge and an AI opportunity.
Water Resources Management,
38(5), 5419–5461.
Choudhuri, S. S. (2024). AI-Driven Supply Chain Optimization: Enhancing Inventory Management, Demand Forecasting, and Logistics within ERP Systems. International Journal of Science and Research (IJSR), 13(3), 927-933.
Chowdhury, M. M. H., Rahman, S., Quaddus, M. A., & Shi, Y. (2023). Strategies to mitigate barriers to supply chain sustainability: an apparel manufacturing case study. Journal of Business & Industrial Marketing, 38(4), 869-885.
Dhal, S. B., & Kar, D. (2024). Transforming agricultural productivity with AI-driven forecasting: Innovations in food security and supply chain optimization. Forecasting, 6(4), 925-951.
Drogkoula, M., Kokkinos, K., & Samaras, N. (2023). A Comprehensive Survey of Machine Learning Methodologies with Emphasis in Water Resources Management.
Applied Sciences,
13(22), 12147.
https://doi.org/10.3390/app132212147
Ejjami, R., & Boussalham, K. (2024). Industry 5.0 in manufacturing: Enhancing resilience and responsibility through AI-driven predictive maintenance, quality control, and supply chain optimization. International Journal for Multidisciplinary Research, 6(4).
Elyaakouby, Y., & Tilioua, A. (2024, November). A review on artificial intelligence for water Treatment by desalination using reverse osmosis. In The International Conference on Artificial Intelligence and Smart Environment (pp. 431-440). Cham: Springer Nature Switzerland.
Farazmand, A., Danaeefard, H., Mostafazadeh, M. &, Sadeghi, M. R. (2019).
Trends in Public Administration Research: A Content Analysis of Iranian Journal Articles (2004-2017).
International Journal of Public Administration, Routledge, 42(10), 867-879.
https://doi.org/10.1080/01900692.2019.1598689.
Fares, M. N., Al-Mayyahi, M. A., Rida, M. M., & Najim, S. E. (2019). Water desalination using a new humidification-dehumidification (HDH) technology. In Journal of Physics: Conference Series, 1279 (1), 012052.
Fathi, M. R., Sadeghi, M. R., Ghadimi, S., & Akhlaghpour, S. (2025). Identifying and Ranking Barriers to IoT Implementation in the Food Supply Chain: A Case Study of Kalleh Company.
Knowledge Economy Studies, 2(1), 139-158.
https://doi.org/10.22034/kes.2025.2057601.1057.
Gao, Q., Yang, L., Lu, M., Jin, R., Ye, H., & Ma, T. (2023). The artificial intelligence and machine learning in lung cancer immunotherapy.
Journal of Hematology & Oncology,
16(1), 55.
Gomera, P. M., & Mafini, C. (2020). Supply chain management enablers, barriers and disruptions in the animal feed industry in the Western Cape Province of South Africa. Journal of Transport and Supply Chain Management, 14(1), 1-12.
Gomes, A., Islam, N. M., & Karim, M. R. (2024). Intelligent automation in supply chain optimization. Academic Journal on Science, Technology, Engineering & Mathematics Education, 4(04), 124-133.
Gonçalves, H., Magalhães, V. S., Ferreira, L. M., & Arantes, A. (2024). Overcoming barriers to sustainable supply chain management in small and medium-sized enterprises: a multi-criteria decision-making approach. Sustainability, 16(2), 506.
Gorbenko, K., Romanchuk, K., Sagliocca, F., & Mazumdar, M. (2022). A changing supply chain for a changing health care system: Barriers and facilitators of implementing enterprise resource planning.
Work,
74, 977–990.
Gosai, J. D. (2023). Applications of AI (Artificial Intelligence) and cloud computing in manufacturing industries for plant maintenance, production planning & control and supply chain management.
International journal of creative research thoughts, 11(3).
Hanasaki, N., Yoshikawa, S., Kakinuma, K., & Kanae, S. (2016). A seawater desalination scheme for global hydrological models.
Hydrology and Earth System Sciences,
20, 4143–4157.
Hangl, J., Behrens, V., & Krause, S. (2022). Barriers, drivers, and social considerations for AI adoption in supply chain management: A tertiary study.
Logistics. 6(3).
Hasan, S. K., Islam, M. A., Asha, A. I., Priya, S. A., & Islam, N. M. (2024). The integration of AI and machine learning in supply chain optimization: Enhancing efficiency and reducing costs. Int J Multidiscip Res [Internet].
Hayot, V., Ferreira, A. A., Lecler, S., & Chabrol, G. (2024). Artificial intelligence regressors to predict the weld penetration in metal laser welding.
Photonics Europe,
13005.
Heeres, T. J., Tran, T. M., & Noort, B. A. C. (2023). Drivers and Barriers to Implementing the Internet of Things in the Health Care Supply Chain: Mixed Methods Multicase Study.
Journal of Medical Internet Research,
25, e48730.
Husein, M., Rajagukguk, J. R., & Putranto, K. E. (2024). The role of artificial intelligence in improving the efficiency of the company’s supply chain.
International Journal of Engineering Science & Information Technology,
4(4), 156-172.
Ignatov, I., Gluhchev, G., & Ignatov, A. I. (2024). Desalination of seawater. Osmotic process for “blue energy” and estimation for desalination. Ukrainian Journal of Physics, 69(12), 905-905.
Ijiga, A. C., Peace, A. E., Idoko, I. P., Agbo, D. O., Harry, K. D., Ezebuka, C. I., & Ukatu, I. E. (2024). Ethical considerations in implementing generative AI for healthcare supply chain optimization: A cross-country analysis across India, the United Kingdom, and the United States of America. International Journal of Biological and Pharmaceutical Sciences Archive, 7(01), 048-063.
Ike, C. C., Ige, A. B., Oladosu, S., Adepoju, P., & Afolabi, A. I. (1769). Advancing predictive analytics models for supply chain optimization in global trade systems. International Journal of Applied Research in Social Sciences. https://doi. org/10.51594/ijarss. v6i12.
Imandoust, M., Alghorayshi, S. T. K., Abbasi, S., Seifollahi, M., & Zahedi, R. (2025). Simultaneous energy, fresh water, and biogas production process utilizing solar thermal and sewage sludge. Energy Science & Engineering, 13(2), 530-550.
Ismaeil, M. K. A. (2024). The role and impact of artificial intelligence on supply chain management: efficiency, challenges, and strategic implementation. Journal of Ecohumanism, 3(4), 89-106.
Jain, D. (2024). Artificial intelligence in quality control systems: A cross-industry analysis of applications, benefits, and implementation frameworks. International Journal of Scientific Research in Computer Science, Engineering and Information Technology, 10(6), 1321-1333.
Jeong, S., Cho, K., Hagos, F. M., Licto, A. G. C., Lee, C., Loi, V. D., Viet, H. A., Quang, P. N., & Dung, L. Q. (2024). Spreading the desalination technology as the appropriate option for the drinking water in Vietnam.
Academic Society for Appropriate Technology,
10(3), 199-206.
Joel, O. S., Oyewole, A. T., Odunaiya, O. G., & Soyombo, O. T. (2024). Leveraging artificial intelligence for enhanced supply chain optimization: a comprehensive review of current practices and future potentials. International Journal of Management & Entrepreneurship Research, 6(3), 707-721.
Kelly, A. (2024). Impact of artificial intelligence on supply chain optimization. Journal of Technology and Systems, 6(6), 15-27.
Khan, S., Haleem, A., Husain, Z., Samson, D., & Pathak, R. D. (2023). Barriers to blockchain technology adoption in supply chains: the case of India.
Operations Management Research,
16, 668–683.
Khanjani, M., Fayazi, M., Amiri, M., & Yazdani, H. R. (2023). Identifying the factors affecting the success of career advancement of top professors in Iranian universities.
Management in Islamic University, 12(25), 159-192.
Khlie, K., Benmamoun, Z., Jebbor, I., & Serrou, D. (2024). Generative AI for enhanced operations and supply chain management. Journal of Infrastructure, Policy and Development, 8(10), 6637.
Kocher, J. D., & Menon, A. K. (2023, July). Pathways for atmospheric water harvesting to reach cost parity with distributed desalination. In Energy Sustainability (87189, p. V001T02A009). American Society of Mechanical Engineers.
Kramer, S. G. (2024). Artificial intelligence in the supply chain: Legal issues and compliance challenges. Journal of Supply Chain Management, Logistics and Procurement, 7(2), 139-148.
Krishnan, A., Sundaram, T., Nagappan, B., & Bhumika. (2024). Integrating artificial intelligence in nanomembrane systems for advanced water desalination.
Results in Engineering,
24, 103321.
Li, J. (2024). The convergence of artificial intelligence and blockchain in industrial robotics.
Applied and Computational Engineering.
Louis & Eyo-Udo, N. (2024). Leveraging artificial intelligence for enhanced supply chain optimization. Open Access Research Journal of Multidisciplinary Studies, 7(2), 001-015.
Mahadeva, R., Patel, V., Ghosh, A., & Arora, R. (2023). Artificial intelligence in water desalination: A novel approach for global sustainability.
E3S Web of Conferences.
Maier, F. A., Puppala, S., & Oberle, M. (2024). Artificial intelligence applications for resilience in manufacturing — A Systematic literature review.
Digital Signal Processing &Signal Processing Education Workshop, 778–784.
Masod, M. Y., & Zakaria, S. F. (2024). Artificial intelligence in the printing industry: A systematic review of industrial applications, challenges and benefits.
International Journal of Research & Innovation in Social Science, 1713-1732.
Modgil, S., Singh, R. K., & Hannibal, C. (2022). Artificial intelligence for supply chain resilience: learning from Covid-19.
International journal of logistics management [online],
33(4), 1246-1268.
https://doi.org/10.1108/IJLM-02-2021-0094.
Mypati, O., Mukherjee, A., Mishra, D., Pal, S. K., Chakrabarti, P., & Pal, A. (2023). A critical review on applications of artificial intelligence in manufacturing.
Artificial Intelligence Review,
56, 661–768.
Nendrambaka, S. K. (2024). Leveraging AI and machine learning in SAP S/4HANA cloud: A research-based approach to supply chain optimization.
International Journal of Scientific Research in Computer Science Engineering and Information Technology,
10(6), 1878-1885
Nisar, U., Zhang, Z., Wood, B. P., Ahmad, S., Ellahi, E., Haq, S. I. U., Alnafissa, M., & Abd_Allah, E. F. (2024). Unlocking the potential of blockchain technology in enhancing the fisheries supply chain: an exploration of critical adoption barriers in China.
Scientific Reports,
14(1), 10167.
Nitsche, B., Brands, J., Treiblmaier, H., & Gebhardt, J. (2023). The impact of multiagent systems on autonomous production and supply chain networks: use cases, barriers and contributions to logistics network resilience. Supply Chain Management: An International Journal, 28(5), 894-908.
Nourahmadi, M., Rasti, F., & Sadeqi, H. (2021). A Review of Research on Financial Time Series Clustering: A Bibliometrics Approach.
Advances in Finance and Investment, 2(2), 23-57.
Nourahmadi, M., & Rasti, F. (2025). Shaping Fintech through Regulations: Insights and Future Directions.
Knowledge Economy Studies, 2(1), 35-57. https://doi.org/10.22034/kes.2025.2056916.1052.
Nyamekeh, R., Yusuf, S. O., Afoakwah, B., Oluwadare, O. E., Yusuf, N., & Eyaru, J. (2025). Leveraging AI for real-time sustainable supply chain visibility: Benefits and implementation barriers.
World Journal of Advanced Research and Reviews. 26(2), 422-434
Orejuela-Escobar, L., Venegas-Vásconez, D., & Méndez, M. A. (2024). Opportunities of artificial intelligence in valorisation of biodiversity, biomass and bioresidues–towards advanced bio-economy, circular engineering, and sustainability. International Journal of Sustainable Energy and Environmental Research, 13(2), 105-113.
Orji, I. J., & Ojadi, F. (2023). Assessing the effect of supply chain collaboration on the critical barriers to additive manufacturing implementation in supply chains. Journal of Engineering and Technology Management, 68, 101749.
Oyedijo, A., Kusi-Sarpong, S., Mubarik, M. S., Khan, S. A., & Utulu, K. (2024). Multi-tier sustainable supply chain management: a case study of a global food retailer. Supply Chain Management: An International Journal, 29(1), 68-97.
Oviroh, P. O., Ukoba, K., & Jen, T. C. (2023, October). Renewable energy resources in the long-term sustainability of water desalination as a freshwater source. In ASME International Mechanical Engineering Congress and Exposition (Vol. 87646, p. V007T08A067). American Society of Mechanical Engineers.
Park, J., & Lee, S. (2022). Desalination technology in South Korea: A comprehensive review of technology trends and future outlook. Membranes, 12(2), 204.
Peckham, O., Raines, J., Bulsink, E., Goudswaard, M., Gopsill, J., Barton, D., Nassehi, A., & Hicks, B. (2025). Artificial Intelligence in Generative Design: A Structured Review of Trends and Opportunities in Techniques and Applications.
Designs,
9(4), 79.
Rahman, T., Ali, S., Moktadir, Md. A., & KusiSarpong, S. (2020). Evaluating barriers to implementing green supply chain management: An example from an emerging economy.
Production Planning & Control,
31, 673–698.
Raman, R., & Selvaraj, M. (2024). Leveraging Internet of things (IoT) and artificial intelligence (Al) to optimize supply chain systems. International Journal of Supply Chain Management, 13(6), 1-9.
Rasti, F., Soleimani Sarvestani, M. H., & Akhlaghpour, S. (2024). The role of fintech in shaping modern banking: A bibliometric analysis of past, present, and future.
Knowledge Economy Studies, 1(1), 43-63.
https://doi.org/10.22034/kes.2024.717151.
Rathee, G., Garg, S., Kaddoum, G., Choi, B., Hassan, M. M., & Alqahtani, S. (2023). TrustSys: Trusted decision making scheme for collaborative artificial intelligence of things.
IEEE Transactions on Industrial Informatics,
19, 1059–1068.
Rau, Dr. Entesar. H. B., & Naas, Eng. Abdurrauf, M. (2024). Thermo-economic analysis of gas turbine combined multistage flash (MSF) desalination cycle.
International Journal of Research & Scientific Innovation.
Riad, M., Naimi, M., & Okar, C. (2024). Enhancing supply chain resilience through artificial intelligence: developing a comprehensive conceptual framework for AI implementation and supply chain optimization. Logistics, 8(4), 111.
Rijanto, A. (2024). Blockchain technology roles to overcome accounting, accountability and assurance barriers in supply chain finance. Asian Review of Accounting, 32(5), 728-758.
Ritika, K., Rai, S., Pandey, B., & Dubey, A. (2023). A Review on Future of Solar Desalination Technologies-Energy Input Outlook. AIJR Proceedings, 111-119.
Rostami, M., Rasti, F., & Abbasi, E. (2025). Copula-Based risk modeling: A comparative analysis of MCAViaR and Gaussian copulas for global indices.
Journal of Mathematics and Modeling in Finance, 5(2), 77-106.
https://doi.org/10.22054/jmmf.2025.86227.1187.
Sadeghi, M. R., & Moghimi, M. S., & Ramezan, M. (2013). Identifying and prioritizing effective constructs in readiness of knowledge management implementation by using fuzzy analytic hierarchy process (AHP).
Journal of Knowledge-based Innovation in China, 5(1), 16-31.
https://doi.org/10.1108/17561411311320941.
Sahoo, P. B. B., & Thakur, V. (2023). Enhancing the performance of Indian micro, small and medium enterprises by implementing supply chain finance: challenges emerging from COVID-19 pandemic. Benchmarking: An International Journal, 30(6), 2110-2138.
Salman, H., & Aswad, Z. S. (2022). Desalination methods and their role in solving and managing the problem of salinization in Iraqi water resources.
IOP Conference Series: Earth and Environment,
1002(1).
Shankaran, S. (2024). Maximizing operational efficiency: Utilizing blockchain for comprehensive tracking and visibility throughout the supply chain. International Journal of Supply Chain and Logistics, 8(4), 46-59.
Shokri, A., & Fard, M. S. (2022). A comprehensive overview of environmental footprints of water desalination and alleviation strategies.
International Journal of Environmental Science and Technology,
20, 2347–2374.
Shrivastav, M. (2022). Barriers related to AI implementation in supply chain management.
Journal of Global Information Management,
30, 1–19.
Singh, P. K., & Maheswaran, R. (2023). Analysis of social barriers to sustainable innovation and digitisation in supply chain.
Environment, Development & Sustainability,
26(2), 1–26.
Son, H. S., Nawaz, M. S., Soukane, S., & Ghaffour, N. (2022). Hybrid desalination technologies for sustainable water-energy nexus: innovation in integrated membrane module development. Desalination and Water Treatment, 263, 1-2.
Thakker, S. V., Rane, S. B., & Narwane, V. S. (2024). Implementation of blockchain–IoT-based integrated architecture in green supply chain. Modern Supply Chain Research and Applications, 6(2), 122-145.
Thomas, T., & Sunny, D. (2025). Uncovering the interactions among barriers to sustainable supply Chain management: Insights from Kerala’s leading textile manufacturing industries.
9th FEB International Scientific Conference: Sustainable Management in the Age of ESG and AI: Navigating Challenges and Opportunities.
Tolk, A. (2024). Hybrid modeling integrating artificial intelligence and modeling & simulation paradigms.
Online World Conference on Soft Computing in Industrial Applications, 1271–1280.
Toorajipour, R., Sohrabpour, V., Nazarpour, A., & Fischl, M. (2021). Artificial intelligence in supply chain management: A systematic literature review.
Journal of Business Research,
122, 502-517.
Usmani, A., Sharma, M., Bung, P., Kumar, R., Ahmad, F., & Gupta, A. (2023). Key variables influencing artificial intelligence (AI) implementation in supply chain management (SCM): an empirical analysis on SMEs. Migration Letters, 20(S11), 1284-1307.
Velmurugan, A., Swarnam, P., Subramani, T., Meena, B., & Kaledhonkar, M. J. (2020). Water demand and salinity. Desalination-Challenges and Opportunities, 10.
Wang, L., Violet, C., DuChanois, R. M., & Elimelech, M. (2020). Derivation of the theoretical minimum energy of separation of desalination processes.
Journal of Chemical Education,
97, 4361–4369.
Karbassi Yazdi, A., Wanke, P., Ghandvar, M., Hajili, M., & Mehdikarami, M. (2022). Implementation of sustainable supply chain management considering barriers and hybrid multiple‐criteria decision analysis in the healthcare industry. Mathematical Problems in Engineering, 2022(1), 8221486.
Yekini, L. (2024). An investigation of the barriers and drivers for implementing green supply chain in Malaysian food and beverage SMEs: A qualitative perspective. WSEAS Transactions on Business and Economics, 21, 2169-2189.