Optimizing Sustainable Supply Chain Network Design using Hybrid AI and Real-Time Data

Authors

  • Mocombe Celucien Université de Port-au-Prince, Haiti
  • Eécoles Notre Institut Universitaire des Sciences, Haïti

DOI:

https://doi.org/10.35335/emod.v13i2.12

Keywords:

Sustainable supply chain, Network design, Hybrid AI, Real-time data, Optimization

Abstract

This research focuses on optimizing sustainable supply chain network design by leveraging hybrid AI techniques and real-time data integration. The objective is to minimize costs while considering carbon emissions, transportation modes, supplier selection, and inventory allocation. The research proposes a mathematical formulation model that incorporates these variables and constraints, enabling companies to make data-driven decisions and enhance their sustainability performance. Real-time data from various sources, including suppliers, transportation providers, and inventory systems, is collected and processed using AI techniques. The model is then solved using advanced optimization algorithms to determine the optimal supply chain network design. Sensitivity analysis is conducted to assess the robustness of the model and evaluate the impact of changing parameters and constraints. A case example illustrates the practical application of the research findings, highlighting the benefits of the hybrid AI and real-time data approach in achieving cost efficiency and sustainability goals. The research contributes to the field of supply chain management by providing insights into the integration of real-time data, AI techniques, and sustainability considerations in supply chain network design. It also identifies limitations and suggests areas for future research to enhance the applicability and scalability of the proposed approach.

References

Abdel-Basset, M., Manogaran, G., & Mohamed, M. (2018). Internet of Things (IoT) and its impact on supply chain: A framework for building smart, secure and efficient systems. Future Generation Computer Systems, 86(9), 614-628.

Abdelgawad, K., Elkatatny, S., Moussa, T., Mahmoud, M., & Patil, S. (2019). Real-time determination of rheological properties of spud drilling fluids using a hybrid artificial intelligence technique. Journal of Energy Resources Technology, 141(3).

Abduljabbar, R., Dia, H., Liyanage, S., & Bagloee, S. A. (2019). Applications of artificial intelligence in transport: An overview. Sustainability, 11(1), 189.

Ahmed, M. S., Mohamed, A., Khatib, T., Shareef, H., Homod, R. Z., & Abd Ali, J. (2017). Real time optimal schedule controller for home energy management system using new binary backtracking search algorithm. Energy and Buildings, 138, 215-227.

Ali, A. M., & Söffker, D. (2018). Towards optimal power management of hybrid electric vehicles in real-time: A review on methods, challenges, and state-of-the-art solutions. Energies, 11(3), 476.

Ansarey, M., Panahi, M. S., Ziarati, H., & Mahjoob, M. (2014). Optimal energy management in a dual-storage fuel-cell hybrid vehicle using multi-dimensional dynamic programming. Journal of Power Sources, 250, 359-371.

Bagheri, M., Mirbagheri, S. A., Bagheri, Z., & Kamarkhani, A. M. (2015). Modeling and optimization of activated sludge bulking for a real wastewater treatment plant using hybrid artificial neural networks-genetic algorithm approach. Process Safety and Environmental Protection, 95, 12-25.

Baklacioglu, T., Turan, O., & Aydin, H. (2015). Dynamic modeling of exergy efficiency of turboprop engine components using hybrid genetic algorithm-artificial neural networks. Energy, 86, 709-721.

Balaji, P. G., & Srinivasan, D. (2011). Type-2 fuzzy logic based urban traffic management. Engineering Applications of Artificial Intelligence, 24(1), 12-22.

Banos, R., Manzano-Agugliaro, F., Montoya, F. G., Gil, C., Alcayde, A., & Gómez, J. (2011). Optimization methods applied to renewable and sustainable energy: A review. Renewable and sustainable energy reviews, 15(4), 1753-1766.

Bányai, T., Tamás, P., Illés, B., Stankevičiūtė, Ž., & Bányai, Á. (2019). Optimization of municipal waste collection routing: Impact of industry 4.0 technologies on environmental awareness and sustainability. International journal of environmental research and public health, 16(4), 634.

Bartolacci, M. R., LeBlanc, L. J., Kayikci, Y., & Grossman, T. A. (2012). Optimization modeling for logistics: options and implementations. Journal of Business Logistics, 33(2), 118-127.

Bechtsis, D., Tsolakis, N., Vlachos, D., & Iakovou, E. (2017). Sustainable supply chain management in the digitalisation era: The impact of Automated Guided Vehicles. Journal of Cleaner Production, 142, 3970-3984.

Bechtsis, D., Tsolakis, N., Vlachos, D., & Srai, J. S. (2018). Intelligent Autonomous Vehicles in digital supply chains: A framework for integrating innovations towards sustainable value networks. Journal of cleaner production, 181, 60-71.

Bhowmik, C., Bhowmik, S., Ray, A., & Pandey, K. M. (2017). Optimal green energy planning for sustainable development: A review. Renewable and Sustainable Energy Reviews, 71, 796-813.

Bigdeli, N. (2015). Optimal management of hybrid PV/fuel cell/battery power system: A comparison of optimal hybrid approaches. Renewable and Sustainable Energy Reviews, 42, 377-393.

Bizon, N., & Thounthong, P. (2018). Real-time strategies to optimize the fueling of the fuel cell hybrid power source: A review of issues, challenges and a new approach. Renewable and Sustainable Energy Reviews, 91, 1089-1102.

Cavalcante, I. M., Frazzon, E. M., Forcellini, F. A., & Ivanov, D. (2019). A supervised machine learning approach to data-driven simulation of resilient supplier selection in digital manufacturing. International Journal of Information Management, 49, 86-97.

Cela, A., Jurik, T., Hamouche, R., Natowicz, R., Reama, A., Niculescu, S. I., & Julien, J. (2014). Energy optimal real-time navigation system. IEEE Intelligent Transportation Systems Magazine, 6(3), 66-79.

Chaudhari, K., Ukil, A., Kumar, K. N., Manandhar, U., & Kollimalla, S. K. (2017). Hybrid optimization for economic deployment of ESS in PV-integrated EV charging stations. IEEE Transactions on Industrial Informatics, 14(1), 106-116.

Chen, M., Miao, Y., Jian, X., Wang, X., & Humar, I. (2018). Cognitive-LPWAN: Towards intelligent wireless services in hybrid low power wide area networks. IEEE Transactions on Green Communications and Networking, 3(2), 409-417.

Choi, T. M., Wallace, S. W., & Wang, Y. (2018). Big data analytics in operations management. Production and Operations Management, 27(10), 1868-1883.

Chou, J. S., & Telaga, A. S. (2014). Real-time detection of anomalous power consumption. Renewable and Sustainable Energy Reviews, 33, 400-411.

Chui, K. T., Lytras, M. D., & Visvizi, A. (2018). Energy sustainability in smart cities: Artificial intelligence, smart monitoring, and optimization of energy consumption. Energies, 11(11), 2869.

Colson, C. M., Nehrir, M. H., & Wang, C. (2009, March). Ant colony optimization for microgrid multi-objective power management. In 2009 IEEE/PES Power Systems Conference and Exposition (pp. 1-7). IEEE.

Dagdougui, H., Minciardi, R., Ouammi, A., Robba, M., & Sacile, R. (2012). Modeling and optimization of a hybrid system for the energy supply of a “Green” building. Energy Conversion and Management, 64, 351-363.

Dias, L. S., & Ierapetritou, M. G. (2017). From process control to supply chain management: An overview of integrated decision making strategies. Computers & Chemical Engineering, 106, 826-835.

Dolgui, A., Ivanov, D., & Sokolov, B. (2018). Ripple effect in the supply chain: an analysis and recent literature. International Journal of Production Research, 56(1-2), 414-430.

Duan, J., Yi, Z., Shi, D., Lin, C., Lu, X., & Wang, Z. (2019). Reinforcement-learning-based optimal control of hybrid energy storage systems in hybrid AC–DC microgrids. IEEE Transactions on Industrial Informatics, 15(9), 5355-5364.

Elsied, M., Oukaour, A., Youssef, T., Gualous, H., & Mohammed, O. (2016). An advanced real time energy management system for microgrids. Energy, 114, 742-752.

Esther, B. P., & Kumar, K. S. (2016). A survey on residential demand side management architecture, approaches, optimization models and methods. Renewable and Sustainable Energy Reviews, 59, 342-351.

Fathima, A. H., & Palanisamy, K. (2015). Optimization in microgrids with hybrid energy systems–A review. Renewable and Sustainable Energy Reviews, 45, 431-446.

Fazelpour, F., Vafaeipour, M., Rahbari, O., & Rosen, M. A. (2014). Intelligent optimization to integrate a plug-in hybrid electric vehicle smart parking lot with renewable energy resources and enhance grid characteristics. Energy Conversion and Management, 77, 250-261.

Garcia, D. J., & You, F. (2015). Supply chain design and optimization: Challenges and opportunities. Computers & Chemical Engineering, 81, 153-170.

Garrido-Hidalgo, C., Olivares, T., Ramirez, F. J., & Roda-Sanchez, L. (2019). An end-to-end internet of things solution for reverse supply chain management in industry 4.0. Computers in Industry, 112, 103127.

Ghiasi, M. (2019). Detailed study, multi-objective optimization, and design of an AC-DC smart microgrid with hybrid renewable energy resources. Energy, 169, 496-507.

Gong, Q., Li, Y., & Peng, Z. R. (2008). Trip-based optimal power management of plug-in hybrid electric vehicles. IEEE Transactions on vehicular technology, 57(6), 3393-3401.

Green II, R. C., Wang, L., & Alam, M. (2011). The impact of plug-in hybrid electric vehicles on distribution networks: A review and outlook. Renewable and sustainable energy reviews, 15(1), 544-553.

Grossmann, I. E. (2004). Challenges in the new millennium: product discovery and design, enterprise and supply chain optimization, global life cycle assessment. Computers & Chemical Engineering, 29(1), 29-39.

Gudi, N., Wang, L., & Devabhaktuni, V. (2012). A demand side management based simulation platform incorporating heuristic optimization for management of household appliances. International Journal of Electrical Power & Energy Systems, 43(1), 185-193.

Guo, S., & Zhao, H. (2015). Optimal site selection of electric vehicle charging station by using fuzzy TOPSIS based on sustainability perspective. Applied Energy, 158, 390-402.

Han, S., Chih-Lin, I., Li, G., Wang, S., & Sun, Q. (2017). Big data enabled mobile network design for 5G and beyond. IEEE Communications Magazine, 55(9), 150-157.

Han, T., & Ansari, N. (2013). On optimizing green energy utilization for cellular networks with hybrid energy supplies. IEEE Transactions on Wireless Communications, 12(8), 3872-3882.

He, Y., Chowdhury, M., Pisu, P., & Ma, Y. (2012). An energy optimization strategy for power-split drivetrain plug-in hybrid electric vehicles. Transportation Research Part C: Emerging Technologies, 22, 29-41.

Hu, X., Liu, T., Qi, X., & Barth, M. (2019). Reinforcement learning for hybrid and plug-in hybrid electric vehicle energy management: Recent advances and prospects. IEEE Industrial Electronics Magazine, 13(3), 16-25.

Hu, X., Moura, S. J., Murgovski, N., Egardt, B., & Cao, D. (2015). Integrated optimization of battery sizing, charging, and power management in plug-in hybrid electric vehicles. IEEE Transactions on Control Systems Technology, 24(3), 1036-1043.

Ivanov, D., & Dolgui, A. (2019). New disruption risk management perspectives in supply chains: Digital twins, the ripple effect, and resileanness. IFAC-PapersOnLine, 52(13), 337-342.

Ivanov, D., Dolgui, A., Das, A., & Sokolov, B. (2019). Digital supply chain twins: Managing the ripple effect, resilience, and disruption risks by data-driven optimization, simulation, and visibility. Handbook of ripple effects in the supply chain, 309-332.

Ivanov, D., Dolgui, A., Sokolov, B., & Ivanova, M. (2017). Literature review on disruption recovery in the supply chain. International Journal of Production Research, 55(20), 6158-6174.

Jakhar, S. K. (2015). Performance evaluation and a flow allocation decision model for a sustainable supply chain of an apparel industry. Journal of Cleaner Production, 87, 391-413.

Jauhar, S. K., & Pant, M. (2016). Genetic algorithms in supply chain management: a critical analysis of the literature. Sādhanā, 41, 993-1017.

Jauhar, S. K., & Pant, M. (2016). Genetic algorithms in supply chain management: a critical analysis of the literature. Sādhanā, 41, 993-1017.

Javaid, N., Javaid, S., Abdul, W., Ahmed, I., Almogren, A., Alamri, A., & Niaz, I. A. (2017). A hybrid genetic wind driven heuristic optimization algorithm for demand side management in smart grid. Energies, 10(3), 319.

Kelouwani, S., Agbossou, K., Dubé, Y., & Boulon, L. (2013). Fuel cell plug-in hybrid electric vehicle anticipatory and real-time blended-mode energy management for battery life preservation. Journal of Power Sources, 221, 406-418.

Khan, A. A., Naeem, M., Iqbal, M., Qaisar, S., & Anpalagan, A. (2016). A compendium of optimization objectives, constraints, tools and algorithms for energy management in microgrids. Renewable and Sustainable Energy Reviews, 58, 1664-1683.

Khokhar, S., Zin, A. A. B. M., Mokhtar, A. S. B., & Pesaran, M. (2015). A comprehensive overview on signal processing and artificial intelligence techniques applications in classification of power quality disturbances. Renewable and Sustainable Energy Reviews, 51, 1650-1663.

Kumar, D., Rahman, Z., & Chan, F. T. (2017). A fuzzy AHP and fuzzy multi-objective linear programming model for order allocation in a sustainable supply chain: A case study. International Journal of Computer Integrated Manufacturing, 30(6), 535-551.

Lee, J. H., Moon, I. K., & Park, J. H. (2010). Multi-level supply chain network design with routing. International Journal of Production Research, 48(13), 3957-3976.

Leng, J., Yan, D., Liu, Q., Xu, K., Zhao, J. L., Shi, R., ... & Chen, X. (2019). ManuChain: Combining permissioned blockchain with a holistic optimization model as bi-level intelligence for smart manufacturing. IEEE Transactions on Systems, Man, and Cybernetics: Systems, 50(1), 182-192.

Li, B. H., Hou, B. C., Yu, W. T., Lu, X. B., & Yang, C. W. (2017). Applications of artificial intelligence in intelligent manufacturing: a review. Frontiers of Information Technology & Electronic Engineering, 18, 86-96.

Li, Y., Wen, Y., Tao, D., & Guan, K. (2019). Transforming cooling optimization for green data center via deep reinforcement learning. IEEE transactions on cybernetics, 50(5), 2002-2013.

Liu, C., & Murphey, Y. L. (2019). Optimal power management based on Q-learning and neuro-dynamic programming for plug-in hybrid electric vehicles. IEEE transactions on neural networks and learning systems, 31(6), 1942-1954.

Liu, T., Hu, X., Hu, W., & Zou, Y. (2019). A heuristic planning reinforcement learning-based energy management for power-split plug-in hybrid electric vehicles. IEEE Transactions on Industrial Informatics, 15(12), 6436-6445.

Liu, T., Tang, X., Wang, H., Yu, H., & Hu, X. (2019). Adaptive hierarchical energy management design for a plug-in hybrid electric vehicle. IEEE Transactions on Vehicular Technology, 68(12), 11513-11522.

Logenthiran, T., Srinivasan, D., & Shun, T. Z. (2012). Demand side management in smart grid using heuristic optimization. IEEE transactions on smart grid, 3(3), 1244-1252.

Maleki, A., Ameri, M., & Keynia, F. (2015). Scrutiny of multifarious particle swarm optimization for finding the optimal size of a PV/wind/battery hybrid system. Renewable Energy, 80, 552-563.

Martinez, C. M., Hu, X., Cao, D., Velenis, E., Gao, B., & Wellers, M. (2016). Energy management in plug-in hybrid electric vehicles: Recent progress and a connected vehicles perspective. IEEE Transactions on Vehicular Technology, 66(6), 4534-4549.

Mbungu, N. T., Bansal, R. C., Naidoo, R., Miranda, V., & Bipath, M. (2018). An optimal energy management system for a commercial building with renewable energy generation under real-time electricity prices. Sustainable cities and society, 41, 392-404.

Mehar, S., Zeadally, S., Remy, G., & Senouci, S. M. (2014). Sustainable transportation management system for a fleet of electric vehicles. IEEE transactions on intelligent transportation systems, 16(3), 1401-1414.

Min, H. (2010). Artificial intelligence in supply chain management: theory and applications. International Journal of Logistics: Research and Applications, 13(1), 13-39.

Min, Q., Lu, Y., Liu, Z., Su, C., & Wang, B. (2019). Machine learning based digital twin framework for production optimization in petrochemical industry. International Journal of Information Management, 49, 502-519.

Mohamed, A., & Mohammed, O. (2013). Real-time energy management scheme for hybrid renewable energy systems in smart grid applications. Electric Power Systems Research, 96, 133-143.

Mohamed, A., Salehi, V., & Mohammed, O. (2012). Real-time energy management algorithm for mitigation of pulse loads in hybrid microgrids. IEEE Transactions on Smart Grid, 3(4), 1911-1922.

Mohamed, A., Salehi, V., Ma, T., & Mohammed, O. (2013). Real-time energy management algorithm for plug-in hybrid electric vehicle charging parks involving sustainable energy. IEEE Transactions on Sustainable Energy, 5(2), 577-586.

Nair, K., Kulkarni, J., Warde, M., Dave, Z., Rawalgaonkar, V., Gore, G., & Joshi, J. (2015, October). Optimizing power consumption in iot based wireless sensor networks using Bluetooth Low Energy. In 2015 International Conference on Green Computing and Internet of Things (ICGCIoT) (pp. 589-593). IEEE.

Naz, M., Iqbal, Z., Javaid, N., Khan, Z. A., Abdul, W., Almogren, A., & Alamri, A. (2018). Efficient power scheduling in smart homes using hybrid grey wolf differential evolution optimization technique with real time and critical peak pricing schemes. Energies, 11(2), 384.

Öberg, C., & Graham, G. (2016). How smart cities will change supply chain management: a technical viewpoint. Production Planning & Control, 27(6), 529-538.

Olatomiwa, L., Mekhilef, S., Ismail, M. S., & Moghavvemi, M. (2016). Energy management strategies in hybrid renewable energy systems: A review. Renewable and Sustainable Energy Reviews, 62, 821-835.

Rahman, I., Vasant, P. M., Singh, B. S. M., Abdullah-Al-Wadud, M., & Adnan, N. (2016). Review of recent trends in optimization techniques for plug-in hybrid, and electric vehicle charging infrastructures. Renewable and Sustainable Energy Reviews, 58, 1039-1047.

Raut, R. D., Mangla, S. K., Narwane, V. S., Gardas, B. B., Priyadarshinee, P., & Narkhede, B. E. (2019). Linking big data analytics and operational sustainability practices for sustainable business management. Journal of cleaner production, 224, 10-24.

Ren, S., Zhang, Y., Liu, Y., Sakao, T., Huisingh, D., & Almeida, C. M. (2019). A comprehensive review of big data analytics throughout product lifecycle to support sustainable smart manufacturing: A framework, challenges and future research directions. Journal of cleaner production, 210, 1343-1365.

Risbeck, M. J., Maravelias, C. T., Rawlings, J. B., & Turney, R. D. (2017). A mixed-integer linear programming model for real-time cost optimization of building heating, ventilation, and air conditioning equipment. Energy and Buildings, 142, 220-235.

Rong, H., Zhang, H., Xiao, S., Li, C., & Hu, C. (2016). Optimizing energy consumption for data centers. Renewable and Sustainable Energy Reviews, 58, 674-691.

Sarkar, T., Bhattacharjee, A., Samanta, H., Bhattacharya, K., & Saha, H. (2019). Optimal design and implementation of solar PV-wind-biogas-VRFB storage integrated smart hybrid microgrid for ensuring zero loss of power supply probability. Energy conversion and management, 191, 102-118.

Sasikumar, P., & Kannan, G. (2008). Issues in reverse supply chains, part I: end‐of‐life product recovery and inventory management–an overview. International Journal of Sustainable Engineering, 1(3), 154-172.

Scholz, J., De Meyer, A., Marques, A. S., Pinho, T. M., Boaventura-Cunha, J., Van Orshoven, J., ... & Nummila, K. (2018). Digital technologies for forest supply chain optimization: existing solutions and future trends. Environmental Management, 62, 1108-1133.

Shaikh, P. H., Nor, N. B. M., Nallagownden, P., Elamvazuthi, I., & Ibrahim, T. (2014). A review on optimized control systems for building energy and comfort management of smart sustainable buildings. Renewable and Sustainable Energy Reviews, 34, 409-429.

Shen, J., & Khaligh, A. (2016). Design and real-time controller implementation for a battery-ultracapacitor hybrid energy storage system. IEEE Transactions on Industrial Informatics, 12(5), 1910-1918.

Shuai, H., Fang, J., Ai, X., Wen, J., & He, H. (2018). Optimal real-time operation strategy for microgrid: An ADP-based stochastic nonlinear optimization approach. IEEE Transactions on Sustainable Energy, 10(2), 931-942.

Sodhro, A. H., Pirbhulal, S., Luo, Z., & De Albuquerque, V. H. C. (2019). Towards an optimal resource management for IoT based Green and sustainable smart cities. Journal of Cleaner Production, 220, 1167-1179.

Souza, G. C. (2014). Supply chain analytics. Business Horizons, 57(5), 595-605.

Srai, J. S., Badman, C., Krumme, M., Futran, M., & Johnston, C. (2015). Future supply chains enabled by continuous processing—Opportunities and challenges. May 20–21, 2014 Continuous Manufacturing Symposium. Journal of pharmaceutical sciences, 104(3), 840-849.

Srinivasan, D., Choy, M. C., & Cheu, R. L. (2006). Neural networks for real-time traffic signal control. IEEE Transactions on intelligent transportation systems, 7(3), 261-272.

Stindt, D. (2017). A generic planning approach for sustainable supply chain management-How to integrate concepts and methods to address the issues of sustainability?. Journal of cleaner production, 153, 146-163.

Syafrudin, M., Alfian, G., Fitriyani, N. L., & Rhee, J. (2018). Performance analysis of IoT-based sensor, big data processing, and machine learning model for real-time monitoring system in automotive manufacturing. Sensors, 18(9), 2946.

Tachizawa, E. M., Alvarez-Gil, M. J., & Montes-Sancho, M. J. (2015). How “smart cities” will change supply chain management. Supply Chain Management: An International Journal, 20(3), 237-248.

Tiwari, S., Wee, H. M., & Daryanto, Y. (2018). Big data analytics in supply chain management between 2010 and 2016: Insights to industries. Computers & Industrial Engineering, 115, 319-330.

Tuttle, J. F., Vesel, R., Alagarsamy, S., Blackburn, L. D., & Powell, K. (2019). Sustainable NOx emission reduction at a coal-fired power station through the use of online neural network modeling and particle swarm optimization. Control Engineering Practice, 93, 104167.

Vajedi, M., Chehrehsaz, M., & Azad, N. L. (2014). Intelligent power management of plug–in hybrid electric vehicles, part I: Real–time optimum SOC trajectory builder. International Journal of Electric and Hybrid Vehicles, 6(1), 46-67.

Vet, J. A., & Marras, S. A. (2005). Design and optimization of molecular beacon real-time polymerase chain reaction assays. Oligonucleotide Synthesis, 273-290.

Wang, G., Gunasekaran, A., Ngai, E. W., & Papadopoulos, T. (2016). Big data analytics in logistics and supply chain management: Certain investigations for research and applications. International journal of production economics, 176, 98-110.

Wang, X., El-Farra, N. H., & Palazoglu, A. (2017). Optimal scheduling of demand responsive industrial production with hybrid renewable energy systems. Renewable Energy, 100, 53-64.

Wang, X., Palazoglu, A., & El-Farra, N. H. (2015). Operational optimization and demand response of hybrid renewable energy systems. Applied Energy, 143, 324-335.

Wang, X., Teichgraeber, H., Palazoglu, A., & El-Farra, N. H. (2014). An economic receding horizon optimization approach for energy management in the chlor-alkali process with hybrid renewable energy generation. Journal of Process Control, 24(8), 1318-1327.

Wang, Z., Wang, L., Dounis, A. I., & Yang, R. (2012). Integration of plug-in hybrid electric vehicles into energy and comfort management for smart building. Energy and Buildings, 47, 260-266.

Wu, G., Boriboonsomsin, K., & Barth, M. J. (2014). Development and evaluation of an intelligent energy-management strategy for plug-in hybrid electric vehicles. IEEE Transactions on Intelligent Transportation Systems, 15(3), 1091-1100.

Wu, X., Hu, X., Teng, Y., Qian, S., & Cheng, R. (2017). Optimal integration of a hybrid solar-battery power source into smart home nanogrid with plug-in electric vehicle. Journal of power sources, 363, 277-283.

Xiong, R., Cao, J., & Yu, Q. (2018). Reinforcement learning-based real-time power management for hybrid energy storage system in the plug-in hybrid electric vehicle. Applied energy, 211, 538-548.

Yadav, V. S., Tripathi, S., & Singh, A. R. (2019). Bi-objective optimization for sustainable supply chain network design in omnichannel. Journal of Manufacturing Technology Management, 30(6), 972-986.

Yue, D., You, F., & Snyder, S. W. (2014). Biomass-to-bioenergy and biofuel supply chain optimization: Overview, key issues and challenges. Computers & Chemical Engineering, 66, 36-56.

Zahraee, S. M., Assadi, M. K., & Saidur, R. (2016). Application of artificial intelligence methods for hybrid energy system optimization. Renewable and sustainable energy reviews, 66, 617-630.

Zhang, C., Zhou, J., Li, C., Fu, W., & Peng, T. (2017). A compound structure of ELM based on feature selection and parameter optimization using hybrid backtracking search algorithm for wind speed forecasting. Energy Conversion and Management, 143, 360-376.

Zhang, F., Xi, J., & Langari, R. (2016). Real-time energy management strategy based on velocity forecasts using V2V and V2I communications. IEEE Transactions on Intelligent Transportation Systems, 18(2), 416-430.

Zhang, L., & Li, Y. (2013). Optimal energy management of wind-battery hybrid power system with two-scale dynamic programming. IEEE Transactions on sustainable energy, 4(3), 765-773.

Zhao, D., Stobart, R., Dong, G., & Winward, E. (2014). Real-time energy management for diesel heavy duty hybrid electric vehicles. IEEE Transactions on Control Systems Technology, 23(3), 829-841.

Zhao, G., Liu, S., Lopez, C., Lu, H., Elgueta, S., Chen, H., & Boshkoska, B. M. (2019). Blockchain technology in agri-food value chain management: A synthesis of applications, challenges and future research directions. Computers in industry, 109, 83-99.

Zhu, Z., Chu, F., Dolgui, A., Chu, C., Zhou, W., & Piramuthu, S. (2018). Recent advances and opportunities in sustainable food supply chain: a model-oriented review. International Journal of Production Research, 56(17), 5700-5722.

Published

2019-05-30

How to Cite

Celucien, M., & Notre, E. (2019). Optimizing Sustainable Supply Chain Network Design using Hybrid AI and Real-Time Data. International Journal of Enterprise Modelling, 13(2), 90–98. https://doi.org/10.35335/emod.v13i2.12