Robotics in Industry 4.0: A Bibliometric Analysis (2011-2022)

Ravi Sekhar, Pritesh Shah, Iswanto Iswanto

Abstract


Robotics forms an integral part of industry 4.0, the industrial revolution of the 21st century. This paper presents a bibliometric analysis of Web of Science (WoS) indexed publications addressing this emerging field from 2011 till June 2022. WoS research publications were firstly analysed along multiple verticals such as annual counts, types, publishing sources, research directions, researchers, organizations, and countries. Next, co-authorship collaborations among authors, organizations, and countries were discovered. This was followed by an analysis of co-occurring keywords related to robotics in industry 4.0. Finally, a detailed citation analysis was carried out to unearth citation linkages among authors, institutions, documents, nations, and journals. Latest trends, under-investigated topics, and future directions are also discussed. Primary results indicate that more than 3000 articles are being published annually in this emerging field, with a total of 18,893 documents published in WoS during the last decade. The 'IEEE Access', Chinese Academy of Science, Wang Y. (USA), and the USA emerged as the topmost productive journal, institution, author, and nation. Porpiglia Francesco (Italy), Chinese Academy Science and USA obtained the highest co-authorship total link strength (TLS); whereas Lee Chengkuo (Singapore), China, Chinese Academy Science, and the IEEE Access scored the highest citation TLS among authors, countries, organizations, and sources respectively. Machine learning (ML) emerged as the highest co-occurring keyword, followed by artificial intelligence (AI). Computer Science emerged as the most trending research domain, followed by general applications. In the future, ML and AI will advance more sophisticated robots in industry 4.0 systems.


Keywords


bibliometry; robotics; industry 4.0; co-authorship; co-occurrence; citation analysis

Full Text:

PDF

References


P. Shah and R. Sekhar, “Predictive modeling and control of clamp load loss in bolted joints based on fractional calculus,” in Advances in Computing and Network Communications, S. M. Thampi, E. Gelenbe, M. Atiquzzaman, V. Chaudhary, and K.-C. Li, Eds. Singapore: Springer Singapore, 2021, pp. 15–32.

N. Solke, P. Shah, R. Sekhar, and T. Singh, “Machine learning-based predictive modeling and control of lean manufacturing in automotive parts manufacturing industry,” Global Journal of Flexible Systems Management, vol. 23, no. 1, pp. 89–112, 2022.

P. Shah, R. Sekhar, and P. Singh, “Predictive modeling of a biofuelled diesel engine using system identification approach,” in 2021 6th International Conference on Renewable Energy: Generation and Applications (ICREGA), 2021, pp. 95–100.

R. Sekhar and P. Shah, “Predictive modeling of a flexible robotic arm using cohort intelligence socio-inspired optimization,” in 2020 1st International Conference on Information Technology, Advanced Mechanical and Electrical Engineering (ICITAMEE), 2020, pp. 193–198.

A. Ma’arif, N. Raharja, G. Supangkat, F. Arofiati, R. Sekhar, and D. Rijalusalam, “PID-based with odometry for trajectory tracking control on four-wheel omnidirectional covid-19 aromatherapy robot,” Emerging Science Journal, vol. 5, pp. 157–181, 2021.

P. Shah and R. Sekhar, “Closed loop system identification of a DC motor using fractional order model,” in 2019 International Conference on Mechatronics, Robotics and Systems Engineering (MoRSE), 2019, pp. 69–74.

R. Sekhar, T. P. Singh, and P. Shah, “Machine learning based predictive modeling and control of surface roughness generation while machining micro boron carbide and carbon nanotube particle reinforced Al-Mg matrix composites,” Particulate Science and Technology, vol. 40, no. 3, pp. 355–372, 2022.

R. Sekhar, T. Singh, and P. Shah, “System identification of tool chip interface friction while machining CNT-Mg-Al composites,” vol. 2317, 2021, pp. 1–10

R. Sekhar, T. P. Singh, and P. Shah, “ARX/ARMAX modeling and fractional order control of surface roughness in turning nano-composites,” in 2019 International Conference on Mechatronics, Robotics and Systems Engineering (MoRSE), 2019, pp. 97–102.

R. Sekhar, T. Singh, and P. Shah, “Micro and nano particle composite machining: Fractional order control of surface roughness,” in Proceedings of the Third International Conference on Powder, Granule and Bulk Solids: Innovations and Applications PGBSIA, 2020, pp. 35–42.

R. Sekhar and T. Singh, “Determination of johnson cook parameters in turning of micro and nano reinforced aluminum composites using trust region reflective algorithm,” International Journal of Innovative Technology and Exploring Engineering, vol. 8, no. 12, pp. 1712–1716, 2019.

——, “Mechanisms in turning of metal matrix composites: a review,” Journal of Materials Research and Technology, vol. 4, no. 2, pp. 197–207, 2015.

A. Pandit, R. Sekhar, and P. Shah, “Simulation based process optimization for additive manufacturing,” International Journal of Innovative Technology and Exploring Engineering (IJITEE), vol. 8, no. 10, pp.3405–3410, 2019.

D. Agrawal, R. Sekhar, and T. Singh, “Finite element analysis of mono composite leaf spring for automobile application,” International Journal of Applied Engineering Research, vol. 10, no. 8, pp. 20 741–20 754, 2015.

S. Jadhav, R. Sekhar, and T. Singh, “Process capability and stability analysis in track grinding of taper roller bearings,” International Journal of Applied Engineering Research, vol. 10, no. 4, pp. 11 263–11 271, 2015.

P. Vishwakarma, R. Sekhar, and T. Singh, “Finite element analysis of force variation with cutting speed in orthogonal turning of aluminum AA6351 alloy,” International Journal of Applied Engineering Research, vol. 10, no. 4, pp. 10 055–10 064, 2015.

R. Sekhar, S. Shaikh, I. Akbani, and N. Solke, “Pareto analysis based investigation and reduction of welding-defects in automobile ring gear/flex plate assembly,” International Journal of Applied Engineering Research,vol. 10, no. 4, pp. 9811–9818, 2015.

B. Sasane, S. Tamboli, and R. Sekhar, “An investigation of tire tread material effect on auto wheel impact strength using FEA and experimentation,” International Journal of Applied Engineering Research, vol. 10, no. 8, pp. 20 875–20 885, 2015.

V. S. Jatti, R. Sekhar, and P. Shah, “Machine learning based predictive modeling of ball nose end milling using exogeneous autoregressive moving average approach,” in 2021 IEEE 12th International Conference on Mechanical and Intelligent Manufacturing Technologies (ICMIMT), 2021, pp. 68–72.

K. Purohit, S. Srivastava, V. Nookala, V. Joshi, P. Shah, R. Sekhar, S. Panchal, M. Fowler, R. Fraser, M.-K. Tran, and C. Shum, “Soft sensors for state of charge, state of energy, and power loss in formula student electric vehicle,” Applied System Innovation, vol. 4, no. 4, 2021.

P. Shah, D. Sharma, and R. Sekhar, “Analysis of research trends in fractional controller using latent dirichlet allocation,” Engineering Letters, vol. 29, pp. 109–119, 2021.

R. Sekhar, D. Sharma, and P. Shah, “Intelligent classification of TIG welding defects: A transfer learning approach,” Frontiers in Mechanical Engineering, vol. 8, pp. 1–18, 2022.

A. Pandit, R. Sekhar, and R. K. Revanur, “Simulation mechanism development for additive manufacturing,” Materials Today: Proceedings, vol. 4, no. 8, pp. 7270–7278, 2017, international Conference on Advancements in Aeromechanical Materials for Manufacturing (ICAAMM-2016): Organized by MLR Institute of Technology, Hyderabad, Telangana, India.

A. Ghumatkar, R. Sekhar, and S. Budhe, “Experimental study on different adherend surface roughness on the adhesive bond strength,” Materials Today: Proceedings, vol. 4, no. 8, pp. 7801–7809, 2017, international Conference on Advancements in Aeromechanical Materials for Manufacturing (ICAAMM-2016): Organized by MLR Institute of Technology, Hyderabad, Telangana, India.

A. Ghumatkar, S. Budhe, R. Sekhar, M. Banea, and S. d. Barros, “Influence of adherend surface roughness on the adhesive bond strength,” Latin American Journal of Solids and Structures, vol. 13, pp. 2356–2370, 2016.

S. Sarabjeet, N. Solke, and R. Sekhar, “Design and modification of stacker mechanism for seal pressing machine,” International Journal of Applied Engineering Research, vol. 10, no. 10, pp. 26 641–26 656, 2015.

A. Ghumatkar, S. Budhe, and R. Sekhar, “Effect of heat treatment and surface roughness of adherend material on adhesive bond strength,” in Fifteenth Global Conference on Flexible Systems Management (GLOGIFT 15), 2015.

G. Jha, P. Singh, Y. Parikh, and R. Sekhar, “Effect of injection timing on the performance and emissions of biodiesel fuelled diesel engine,” Journal of Chemical and Pharmaceutical Research, vol. 7, no. 2, pp. 365–369, 2015.

A. Dev, P. Arora, and R. Sekhar, “Human energy harvesting through a low cost footstep power generator,” International Journal of Applied Engineering Research, vol. 10, no. 11, pp. 30 101–30 107, 2015.

A. Agarwal, R. Sekhar, S. Shaikh, I. Akbani, and N. Solke, “Reduction in chamfer width variation in epicyclic ring gear manufacturing using pareto analysis,” International Journal of Applied Engineering Research, vol. 9, pp. 11 029–11 037, 2014.

V. Jatti, R. Sekhar, and R. Patil, “Study of ball nose end milling of LM6 Al alloy: Surface roughness optimisationusing genetic algorithm,” International Journal of Engineering and Technology, vol. 5, no. 3, pp. 2859–2865, 2013.

S. Rathod, R. Sekhar, V. Jatti, and T. Singh, “Optimization of tool shape and size in EDM of Al alloy metal matrix composites,” International Journal of Applied Engineering Research, vol. 8, no. 5, pp. 639–646, 2013.

P. Phutane, V. Jatti, R. Sekhar, and T. Singh, “Synthesis and characterization of SiC reinforced HE-30 Al alloy particulate mmcs,” International Journal of Engineering and Technology, vol. 5, no. 3, pp. 2866–2870, 2013.

R. Sekhar and V. V.S.Jadhav, “Effect of strain hardening rate on the clamp load loss due to an externally applied separating force in bolted joints,” Indian Journal of Applied Research, vol. 1, no. 10, pp. 61–63, 2011.

P. Shah, R. Sekhar, I. Iswanto, and M. Shah, “Complex order P Ia+jbDc+jd controller design for a fractional order dc motor system,” Advances in Science Technology and Engineering Systems Journal, vol. 6, pp. 541–551, 2021.

P. Shah, R. Sekhar, A. J. Kulkarni, and P. Siarry, Metaheuristic Algorithms in Industry 4.0. CRC Press, 2021. [Online]. Available: https://doi.org/10.1201/9781003143505

P. Warrier and P. Shah, “Fractional order control of power electronic converters in industrial drives and renewable energy systems: A review,” IEEE Access, vol. 9, pp. 58 982–59 009, 2021.

P. Shah, R. Sekhar, and S. Agashe, “Application of fractional PID controller to single and multi-variable non-minimum phase systems,” International Journal of Recent Technology and Engineering, vol. 8, no. 2, pp. 2801–2811, 2019.

V. S. Jatti, R. Sekhar, and R. Patil, “Study of ball nose end milling of LM6 Al alloy: Surface roughness optimisation using genetic algorithm,” Int. J. Eng. Technol, vol. 5, pp. 2859–65, 2013.

P. Warrier and P. Shah, “Optimal fractional PID controller for buck converter using cohort intelligent algorithm,” Applied System Innovation, vol. 4, no. 3, p. 50, 2021.

P. Shah and S. Agashe, “Review of fractional PID controller,” Mechatronics, vol. 38, pp. 29–41, 2016.

R. Bhimte, K. Bhole-Ingale, P. Shah, and R. Sekhar, “Precise position control of quanser servomotor using fractional order fuzzy PID controller,” in 2020 IEEE Bombay Section Signature Conference (IBSSC), 2020, pp. 58–63.

R. Sekhar, T. P. Singh, and P. Shah, “Complex Order P Iα+iβ Dγ+jθ Design for Surface Roughness Control in Machining CNT Al-Mg Hybrid Composites,” Advances in Science, Technology and Engineering Systems Journal, vol. 5, no. 6, pp. 299–306, 2020.

R. Bhimte, K. Bhole, and P. Shah, “Fractional order fuzzy PID controller for a rotary servo system,” in 2018 2nd International Conference on Trends in Electronics and Informatics (ICOEI), 2018, pp. 538–542

A. K. Pritesh Shah, Sudhir Agashe, “Design of a fractional P IλDμ controller using the cohort intelligence method,” Frontiers of Information Technology & Electronic Engineering, vol. 19, no. 3, p. 437, 2018.

P. Shah, S. Agashe, and V. Vyawahare, “System identification with fractional-order models: A comparative study with different model structures,” Progress in Fractional Differentiation and Applications, 2018.

B. Vaisi, “A review of optimization models and applications in robotic manufacturing systems: Industry 4.0 and beyond,” Decision Analytics Journal, vol. 2, p. 100031, 2022.

J. Ribeiro, R. Lima, T. Eckhardt, and S. Paiva, “Robotic process automation and artificial intelligence in industry 4.0 – a literature review,” Procedia Computer Science, vol. 181, pp. 51–58, 2021.

L. Adriana Cárdenas-Robledo, Óscar Hernández-Uribe, C. Reta, and J. Antonio Cantoral-Ceballos, “Extended reality applications in industry 4.0. – a systematic literature review,” Telematics and Informatics, vol. 73, p. 101863, 2022.

P. Segura, O. Lobato-Calleros, A. Ramírez-Serrano, and E. G. Hernández-Martínez, “Safety assurance in human-robot collaborative systems: A survey in the manufacturing industry,” Procedia CIRP, vol.107, pp. 740–745, 2022.

F. F. Rad, P. Oghazi, M. Palmié, K. Chirumalla, N. Pashkevich, P. C. Patel, and S. Sattari, “Industry 4.0 and supply chain performance: A systematic literature review of the benefits, challenges, and critical success factors of 11 core technologies,” Industrial Marketing Management, vol. 105, pp. 268–293, 2022.

K. Aravindaraj and P. Rajan Chinna, “A systematic literature review of integration of industry 4.0 and warehouse management to achieve sustainable development goals (sdgs),” Cleaner Logistics and Supply Chain, vol. 5, p. 100072, 2022.

A. Grybauskas, A. Stefanini, and M. Ghobakhloo, “Social sustainability in the age of digitalization: A systematic literature review on the social implications of industry 4.0,” Technology in Society, vol. 70, p. 101997, 2022.

R. Abbasi, P. Martinez, and R. Ahmad, “The digitization of agricultural industry – a systematic literature review on agriculture 4.0,” Smart Agricultural Technology, vol. 2, p. 100042, 2022.

L. N. Duong, M. Al-Fadhli, S. Jagtap, F. Bader, W. Martindale, M. Swainson, and A. Paoli, “A review of robotics and autonomous systems in the food industry: From the supply chains perspective,” Trends in Food Science & Technology, vol. 106, pp. 355–364, 2020.

M. Bartoš, V. Bulej, M. Bohušík, J. Stanˇcek, V. Ivanov, and P. Macek, “An overview of robot applications in automotive industry,” Transportation Research Procedia, vol. 55, pp. 837–844, 2021, 14th International scientific conference on sustainable, modern and safe transport.

B. Unhelkar, S. Joshi, M. Sharma, S. Prakash, A. K. Mani, and M. Prasad, “Enhancing supply chain performance using RFID technology and decision support systems in the industry 4.0–a systematic literature review,” International Journal of Information Management Data Insights, vol. 2, no. 2, p. 100084, 2022.

E. Taddei, C. Sassanelli, P. Rosa, and S. Terzi, “Circular supply chains in the era of industry 4.0: A systematic literature review,” Computers & Industrial Engineering, vol. 170, p. 108268, 2022.

N. T. Ching, M. Ghobakhloo, M. Iranmanesh, P. Maroufkhani, and S. Asadi, “Industry 4.0 applications for sustainable manufacturing: A systematic literature review and a roadmap to sustainable development,” Journal of Cleaner Production, vol. 334, p. 130133, 2022.

T. Fraske, “Industry 4.0 and its geographies: A systematic literature review and the identification of new research avenues,” Digital Geography and Society, vol. 3, p. 100031, 2022.

L. Silvestri, T. Gallo, and C. Silvestri, “Which tools are needed to implement lean production in an industry 4.0 environment? a literature review,” Procedia Computer Science, vol. 200, pp. 1766–1777, 2022, 3rd International Conference on Industry 4.0 and Smart Manufacturing.

M. Javaid, A. Haleem, R. Pratap Singh, S. Khan, and R. Suman, “Blockchain technology applications for industry 4.0: A literature-based review,” Blockchain: Research and Applications, vol. 2, no. 4, p. 100027, 2021.

M. Piccarozzi, C. Silvestri, B. Aquilani, and L. Silvestri, “Is this a new story of the ‘two giants’? a systematic literature review of the relationship between industry 4.0, sustainability and its pillars,” Technological Forecasting and Social Change, vol. 177, p. 121511, 2022.

Z. Liu, Q. Liu, W. Xu, L. Wang, and Z. Zhou, “Robot learning towards smart robotic manufacturing: A review,” Robotics and Computer-Integrated Manufacturing, vol. 77, p. 102360, 2022.

J. Moosavi, J. Bakhshi, and I. Martek, “The application of industry 4.0 technologies in pandemic management: Literature review and case study,” Healthcare Analytics, vol. 1, p. 100008, 2021.

L. Gualtieri, E. Rauch, and R. Vidoni, “Emerging research fields in safety and ergonomics in industrial collaborative robotics: A systematic literature review,” Robotics and Computer-Integrated Manufacturing, vol. 67, p. 101998, 2021.

C. Lee and C. Lim, “From technological development to social advance: A review of industry 4.0 through machine learning,” Technological Forecasting and Social Change, vol. 167, p. 120653, 2021.

F. De Pace, F. Manuri, A. Sanna, and C. Fornaro, “A systematic review of augmented reality interfaces for collaborative industrial robots,” Computers & Industrial Engineering, vol. 149, p. 106806, 2020.

A. Jimeno-Morenilla, P. Azariadis, R. Molina-Carmona, S. Kyratzi, and V. Moulianitis, “Technology enablers for the implementation of industry 4.0 to traditional manufacturing sectors: A review,” Computers in Industry, vol. 125, p. 103390, 2021.

V. S. Yadav, A. Singh, R. D. Raut, S. K. Mangla, S. Luthra, and A. Kumar, “Exploring the application of industry 4.0 technologies in the agricultural food supply chain: A systematic literature review,” Computers & Industrial Engineering, vol. 169, p. 108304, 2022.

L. Silvestri, A. Forcina, V. Introna, A. Santolamazza, and V. Cesarotti, “Maintenance transformation through industry 4.0 technologies: A systematic literature review,” Computers in Industry, vol. 123, p. 103335, 2020.

K. Govindan, D. Kannan, T. B. Jørgensen, and T. S. Nielsen, “Supply chain 4.0 performance measurement: A systematic literature review, framework development, and empirical evidence,” Transportation Research Part E: Logistics and Transportation Review, vol. 164, p. 102725, 2022.

R. Castagnoli, G. Büchi, R. Coeurderoy, and M. Cugno, “Evolution of industry 4.0 and international business: A systematic literature review and a research agenda,” European Management Journal, 2021.

T. Gallo, C. Cagnetti, C. Silvestri, and A. Ruggieri, “Industry 4.0 tools in lean production: A systematic literature review,” Procedia Computer Science, vol. 180, pp. 394–403, 2021, proceedings of the 2nd International Conference on Industry 4.0 and Smart Manufacturing (ISM 2020).

A. Reiman, J. Kaivo-oja, E. Parviainen, E.-P. Takala, and T. Lauraeus, “Human factors and ergonomics in manufacturing in the industry 4.0 context – a scoping review,” Technology in Society, vol. 65, p. 101572, 2021.

D. Mitchell, J. Blanche, S. Harper, T. Lim, R. Gupta, O. Zaki, W. Tang, V. Robu, S. Watson, and D. Flynn, “A review: Challenges and opportunities for artificial intelligence and robotics in the offshore wind sector,” Energy and AI, vol. 8, p. 100146, 2022.

A. Forcina and D. Falcone, “The role of industry 4.0 enabling technologies for safety management: A systematic literature review,” Procedia Computer Science, vol. 180, pp. 436–445, 2021, proceedings of the 2nd International Conference on Industry 4.0 and Smart Manufacturing (ISM 2020).

A. Aoun, A. Ilinca, M. Ghandour, and H. Ibrahim, “A review of industry 4.0 characteristics and challenges, with potential improvements using blockchain technology,” Computers & Industrial Engineering, vol. 162, p. 107746, 2021.

C. H. Resende, C. A. Geraldes, and F. R. Lima, “Decision models for supplier selection in industry 4.0 era: A systematic literature review,” Procedia Manufacturing, vol. 55, pp. 492–499, 2021, fAIM 2021.

R. Sekhar, D. Sharma, and P. Shah, “State of the art in metal matrix composites research: A bibliometric analysis,” Applied System Innovation, vol. 4, no. 4, 2021.

G. Atzeni, G. Vignali, L. Tebaldi, and E. Bottani, “A bibliometric analysis on collaborative robots in logistics 4.0 environments,” Procedia Computer Science, vol. 180, pp. 686–695, 2021, proceedings of the 2nd International Conference on Industry 4.0 and Smart Manufacturing (ISM 2020).

A. Rejeb, A. Abdollahi, K. Rejeb, and H. Treiblmaier, “Drones in agriculture: A review and bibliometric analysis,” Computers and Electronics in Agriculture, vol. 198, p. 107017, 2022.

F. Longo, A. Padovano, L. Gazzaneo, J. Frangella, and R. Diaz, “Human factors, ergonomics and industry 4.0 in the oil & gas industry: a bibliometric analysis,” Procedia Computer Science, vol. 180, pp. 1049–1058, 2021, proceedings of the 2nd International Conference on Industry 4.0 and Smart Manufacturing (ISM 2020).

L. Ante, “Digital twin technology for smart manufacturing and industry 4.0: A bibliometric analysis of the intellectual structure of the research discourse,” Manufacturing Letters, vol. 27, pp. 96–102, 2021.

L. O. David, N. I. Nwulu, C. O. Aigbavboa, and O. O. Adepoju, “Integrating fourth industrial revolution (4IR) technologies into the water, energy & food nexus for sustainable security: A bibliometric analysis,” Journal of Cleaner Production, vol. 363, p. 132522, 2022.

P. K. Muhuri, A. K. Shukla, and A. Abraham, “Industry 4.0: A bibliometric analysis and detailed overview,” Engineering Applications of Artificial Intelligence, vol. 78, pp. 218–235, 2019.

F. Tektüfekçi, “A bibliometric analysis of industry 4.0-focused Turkish e-accounting applications,” Procedia Computer Science, vol. 158, pp. 602–608, 2019.

M. Mariani and M. Borghi, “Industry 4.0: A bibliometric review of its managerial intellectual structure and potential evolution in the service industries,” Technological Forecasting and Social Change, vol. 149, p.119752, 2019.

R. Katoch, “IoT research in supply chain management and logistics: A bibliometric analysis using vosviewer software,” Materials Today: Proceedings, vol. 56, pp. 2505–2515, 2022, 3rd International Conference on Contemporary Advances in Mechanical Engineering.

M. Cobo, B. Jürgens, V. Herrero-Solana, M. Martínez, and E. Herrera Viedma, “Industry 4.0: a perspective based on bibliometric analysis,” Procedia Computer Science, vol. 139, pp. 364–371, 2018, 6th International Conference on Information Technology and Quantitative Management.

M. Núñez-Merino, J. M. Maqueira-Marín, J. Moyano-Fuentes, and C. A. Castaño-Moraga, “Industry 4.0 and supply chain. a systematic science mapping analysis,” Technological Forecasting and Social Change, vol. 181, p. 121788, 2022.

M. M. Ahsan and Z. Siddique, “Industry 4.0 in healthcare: A systematic review,” International Journal of Information Management Data Insights, vol. 2, no. 1, p. 100079, 2022.

M. Janmaijaya, A. K. Shukla, P. K. Muhuri, and A. Abraham, “Industry 4.0: Latent dirichlet allocation and clustering based theme identification of bibliography,” Engineering Applications of Artificial Intelligence, vol. 103, p. 104280, 2021.

S. Echchakoui and N. Barka, “Industry 4.0 and its impact in plastics industry: A literature review,” Journal of Industrial Information Integration, vol. 20, p. 100172, 2020.

M. J. S. Dino, P. M. Davidson, K. W. Dion, S. L. Szanton, and I. L. Ong, “Nursing and human-computer interaction in healthcare robots for older people: An integrative review,” International Journal of Nursing Studies Advances, vol. 4, p. 100072, 2022.

A. Perianes-Rodriguez, L. Waltman, and N. J. van Eck, “Constructing bibliometric networks: A comparison between full and fractional counting,” Journal of Informetrics, vol. 10, no. 4, pp. 1178–1195, 2016.

V. Sze, Y.-H. Chen, T.-J. Yang, and J. S. Emer, “Efficient processing of deep neural networks: A tutorial and survey,” Proceedings of the IEEE, vol. 105, no. 12, pp. 2295–2329, 2017.

M. Mozaffari, W. Saad, M. Bennis, Y.-H. Nam, and M. Debbah, “A tutorial on UAVs for wireless networks: Applications, challenges, and open problems,” IEEE Communications Surveys & Tutorials, vol. 21, no. 3, pp. 2334–2360, 2019.

A. Natekin and A. Knoll, “Gradient boosting machines, a tutorial,” Frontiers in neurorobotics, vol. 7, pp. 1–21, 2013.

L. Qian, E. Winfree, and J. Bruck, “Neural network computation with dna strand displacement cascades,” nature, vol. 475, no. 7356, pp. 368– 372, 2011.

Y. Zhou and O. Tuzel, “VoxelNet: End-to-end learning for point cloud based 3d object detection,” in 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition, 2018, pp. 4490–4499.

Z. Ghahramani, “Probabilistic machine learning and artificial intelligence,” Nature, vol. 521, no. 7553, pp. 452–459, 2015.

G. Huang, G.-B. Huang, S. Song, and K. You, “Trends in extreme learning machines: A review,” Neural Networks, vol. 61, pp. 32–48, 2015.

S. Garrido-Jurado, R. Muñoz-Salinas, F. Madrid-Cuevas, and M. Marín-Jiménez, “Automatic generation and detection of highly reliable fiducial markers under occlusion,” Pattern Recognition, vol. 47, no. 6, pp. 2280–2292, 2014.

S. Wang, J. Xu, W. Wang, G.-J. N. Wang, R. Rastak, F. Molina-Lopez, J. W. Chung, S. Niu, V. R. Feig, J. Lopez et al., “Skin electronics from scalable fabrication of an intrinsically stretchable transistor array,” Nature, vol. 555, no. 7694, pp. 83–88, 2018.

S. Wolfert, L. Ge, C. Verdouw, and M.-J. Bogaardt, “Big data in smart farming – a review,” Agricultural Systems, vol. 153,




DOI: https://doi.org/10.18196/jrc.v3i5.15453

Refbacks

  • There are currently no refbacks.


Copyright (c) 2022 Ravi Sekhar, Pritesh Shah, Iswanto Iswanto

Creative Commons License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

 


Journal of Robotics and Control (JRC)

P-ISSN: 2715-5056 || E-ISSN: 2715-5072
Organized by Peneliti Teknologi Teknik Indonesia
Published by Universitas Muhammadiyah Yogyakarta in collaboration with Peneliti Teknologi Teknik Indonesia, Indonesia and the Department of Electrical Engineering
Website: http://journal.umy.ac.id/index.php/jrc
Email: jrcofumy@gmail.com


Kuliah Teknik Elektro Terbaik