Applications of artificial intelligence and machine learning within supply chains:systematic review and future research directions
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Balan Sundarakani | Hassan Younis | Malek Alsharairi | B. Sundarakani | Hassan Younis | Malek Alsharairi
[1] C. Ringle,et al. Artificial Intelligence and Digital Transformation in Supply Chain Management: Innovative Approaches for Supply Chains , 2019 .
[2] K. Jermsittiparsert,et al. Mobilizing Organizational Performance through Robotic and Artificial Intelligence Awareness in Mediating Role of Supply Chain Agility , 2019 .
[3] Mohammad Ali Beheshtinia,et al. A robust possibilistic programming model for production-routing problem in a three-echelon supply chain , 2021 .
[4] Shahriar Akter,et al. Analytics-based decision-making for service systems: A qualitative study and agenda for future research , 2019, Int. J. Inf. Manag..
[5] Ianire Taboada,et al. Understanding 5G technology for future supply chain management , 2020 .
[6] Stefan Mangard,et al. Malware Guard Extension: abusing Intel SGX to conceal cache attacks , 2020, Cybersecurity.
[7] Nils J. Nilsson,et al. Artificial Intelligence , 1974, IFIP Congress.
[9] Matthias Klumpp,et al. Regulation for artificial intelligence and robotics in transportation, logistics and supply chain management , 2018 .
[10] Sanaz Soleimani. A Perfect Triangle with: Artificial Intelligence, Supply Chain Management, and Financial Technology , 2018, Archives of Business Research.
[11] A. Beltagui,et al. The potential of emergent disruptive technologies for humanitarian supply chains: the integration of blockchain, Artificial Intelligence and 3D printing , 2020, Int. J. Prod. Res..
[12] Hang Sun,et al. Sourcing Risk Detection and Prediction with Online Public Data: An Application of Machine Learning Techniques in Supply Chain Risk Management. , 2019 .
[13] Yogesh Kumar Dwivedi,et al. Artificial Intelligence (AI): Multidisciplinary perspectives on emerging challenges, opportunities, and agenda for research, practice and policy , 2019, International Journal of Information Management.
[14] G. Antoniou,et al. Supply chain risk management and artificial intelligence: state of the art and future research directions , 2018, Int. J. Prod. Res..
[15] Michael Jeffrey Daniel Hoefer,et al. Automated Design for Manufacturing and Supply Chain Using Geometric Data Mining and Machine Learning , 2017 .
[16] Yogesh K. Dwivedi,et al. Understanding artificial intelligence adoption in operations management: insights from the review of academic literature and social media discussions , 2020, Annals of Operations Research.
[17] The Use of Artificial Intelligence in the Supply Chain Management in Finnish Large Enterprises , 2020 .
[18] Khizar Abbas,et al. A Blockchain and Machine Learning-Based Drug Supply Chain Management and Recommendation System for Smart Pharmaceutical Industry , 2020, Electronics.
[19] Assunta Di Vaio,et al. Artificial Intelligence in the Agri-Food System: Rethinking Sustainable Business Models in the COVID-19 Scenario , 2020, Sustainability.
[20] Oana Dumitrascu,et al. Performance Evaluation for a Sustainable Supply Chain Management System in the Automotive Industry Using Artificial Intelligence , 2020, Processes.
[21] Saman Hassanzadeh Amin,et al. Prediction of probable backorder scenarios in the supply chain using Distributed Random Forest and Gradient Boosting Machine learning techniques , 2020, Journal of Big Data.
[22] Zhi Xiao,et al. Machine learning in recycling business: an investigation of its practicality, benefits and future trends , 2021, Soft Computing.
[23] Jiafu Wan,et al. Artificial Intelligence for Cloud-Assisted Smart Factory , 2018, IEEE Access.
[24] Naima El Haoud,et al. Stochastic Artificial Intelligence benefits and Supply Chain Management inventory prediction , 2019, 2019 International Colloquium on Logistics and Supply Chain Management (LOGISTIQUA).
[25] Rustam M. Vahidov,et al. Application of machine learning techniques for supply chain demand forecasting , 2008, Eur. J. Oper. Res..
[26] S. Travis Waller,et al. Machine Learning Fusion Based Technique for Predicting the Concrete Pouring Production Rate Based on Traffic and Supply Chain Parameters , 2015 .
[27] Vahid Sohrabpour,et al. Artificial intelligence in supply chain management: A systematic literature review , 2021, Journal of Business Research.
[28] Oihab Allal-Chérif,et al. Intelligent purchasing: How artificial intelligence can redefine the purchasing function , 2021 .
[29] L. Singh,et al. Integrated Forecasting Using the Discrete Wavelet Theory and Artificial Intelligence Techniques to Reduce the Bullwhip Effect in a Supply Chain , 2015, Global Journal of Flexible Systems Management.
[30] Javad Feizabadi,et al. Machine learning demand forecasting and supply chain performance , 2020, International Journal of Logistics Research and Applications.
[31] Yousif Mohammed Yousif Alsharidah,et al. Artificial Intelligence and Digital Transformation in Supply Chain Management A Case Study in Saudi Companies , 2020, 2020 International Conference on Data Analytics for Business and Industry: Way Towards a Sustainable Economy (ICDABI).
[32] Surajit Bag,et al. Role of artificial intelligence in operations environment: a review and bibliometric analysis , 2020, The TQM Journal.
[33] A. Davies,et al. The utilization of artificial intelligence to achieve availability improvement in automated manufacture , 1994 .
[34] Dan Zhou,et al. Design and implementation path of intelligent transportation information system based on artificial intelligence technology , 2020 .
[35] Ana Isabel Canhoto,et al. Artificial intelligence and machine learning as business tools: A framework for diagnosing value destruction potential , 2020 .
[36] Grigoris Antoniou,et al. Predicting supply chain risks using machine learning: The trade-off between performance and interpretability , 2019, Future Gener. Comput. Syst..
[37] Zengqiang Jiang,et al. The evolution of production scheduling from Industry 3.0 through Industry 4.0 , 2021, Int. J. Prod. Res..
[38] Wookyong Kwon,et al. Novel Summation-Type Triggering Condition on Event-Based Memory Output Feedback Control for Networked Control Systems , 2020 .
[39] Angappa Gunasekaran,et al. Artificial intelligence applications in supply chain: A descriptive bibliometric analysis and future research directions , 2021, Expert Syst. Appl..
[40] Jay Lee,et al. Industrial Artificial Intelligence for industry 4.0-based manufacturing systems , 2018, Manufacturing Letters.
[41] Carmen Constantinescu,et al. Application potentials of artificial intelligence for the design of innovation processes , 2019, Procedia CIRP.
[42] Jui-Sheng Chou,et al. Predicting the development cost of TFT-LCD manufacturing equipment with artificial intelligence models , 2010 .
[43] G. M. P. O'Hare,et al. Designing intelligence manufacturing systems: a distributed artificial intelligence approach , 1990 .
[44] Chi Xie,et al. Comparison of individual, ensemble and integrated ensemble machine learning methods to predict China’s SME credit risk in supply chain finance , 2017, Neural Computing and Applications.
[45] P. Helo,et al. Artificial intelligence in operations management and supply chain management: an exploratory case study , 2021, Production Planning & Control.
[46] David Flynn,et al. Artificial intelligence and machine learning approaches to energy demand-side response: A systematic review , 2020, Renewable and Sustainable Energy Reviews.
[47] B. Sundarakani,et al. Designing a hybrid cloud for a supply chain network of Industry 4.0: a theoretical framework , 2021, Benchmarking: An International Journal.
[48] Mohammadreza Akbari,et al. A systematic review of machine learning in logistics and supply chain management: current trends and future directions , 2021, Benchmarking: An International Journal.
[49] Shahriar Akter,et al. How to improve firm performance using big data analytics capability and business strategy alignment , 2016 .
[50] Andreas M. Kaplan,et al. Rulers of the world, unite! The challenges and opportunities of artificial intelligence , 2020 .
[51] Aziza Tazhiyeva. Challenges and opportunities of introducing Internet of Things and Artificial Intelligence applications into Supply Chain Management , 2018 .
[52] Babak Abbasi,et al. Predicting solutions of large-scale optimization problems via machine learning: A case study in blood supply chain management , 2020, Comput. Oper. Res..
[53] Hokey Min,et al. Artificial intelligence in supply chain management: theory and applications , 2010 .
[55] Firm Resources and Sustained Competitive Advantage , 1991 .
[56] Qi Zhang,et al. Optimization of supply chain efficiency management based on machine learning and neural network , 2020, Neural Computing and Applications.
[57] Balan Sundarakani,et al. Assessing Blockchain Technology application for freight booking business: a case study from Technology Acceptance Model perspective , 2020 .
[58] Felix Hartmann,et al. Evolving digitisation: Chances and risks of robotic process automation and artificial intelligence for process optimisation within the supply chain , 2018 .
[59] Sachin Gupta,et al. Operations-based classification of the bullwhip effect , 2020 .
[60] J. Arul Valan,et al. Machine Learning and Big Data Analytics in IoT based Blood Bank Supply Chain Management System , 2019 .
[61] John Salvatier,et al. When Will AI Exceed Human Performance? Evidence from AI Experts , 2017, ArXiv.
[62] Grigoris Antoniou,et al. Decision Support Systems and Artificial Intelligence in Supply Chain Risk Management , 2018, Springer Series in Supply Chain Management.
[63] Jamal Shahrabi,et al. Supply Chain Demand Forecasting; A Comparison of Machine Learning Techniques and Traditional Methods , 2009 .
[64] Ali Dehghantanha,et al. A Systematic Literature Review of Integration of Blockchain and Artificial Intelligence , 2020, Blockchain Cybersecurity, Trust and Privacy.
[65] Elissa Farrow. To augment human capacity—Artificial intelligence evolution through causal layered analysis , 2019, Futures.
[66] Niraj Kumar,et al. Understanding big data analytics capabilities in supply chain management: Unravelling the issues, challenges and implications for practice , 2017, Transportation Research Part E: Logistics and Transportation Review.
[67] Am-Suk Oh. Development of a Smart Supply-Chain Management Solution Based on Logistics Standards Utilizing Artificial Intelligence and the Internet of Things , 2019 .
[68] Davide La Torre,et al. A stochastic dynamic multiobjective model for sustainable decision making , 2020, Ann. Oper. Res..
[69] David De Roure,et al. The Industrial Internet of Things in the Industry 4.0 supply chains: literature review and future trends , 2019, ArXiv.