References

  1. J.Y. Al-Jawad, H.M. Alsaffar, D. Bertram, R.M. Kalin, A comprehensive optimum integrated water resources management approach for multidisciplinary water resources management problems, J. Environ, Manage., 239 (2019) 211–224.
  2. F. Hadizadeh, M.S. Allahyari, C.A. Damalas, M.R. Yazdani, Integrated management of agricultural water resources among paddy farmers in northern Iran, Agric. Water Manage., 200 (2018) 19–26.
  3. C. Shen, A transdisciplinary review of deep learning research and its relevance for water resources scientists, Water Resour. Res., 54 (2018) 8558–8593.
  4. H. Wang, W. Wang, Z. Cui, X. Zhou, A new dynamic firefly algorithm for demand estimation of water resources, Inf. Ences, 438 (2018) 95–106.
  5. W. You-Chiun, C. Kai-Chung, EPS: Energy-efficient pricing and resource scheduling in LTE-A heterogeneous networks, IEEE Trans. Veh. Technol., 67 (2018) 8832–8845.
  6. A.E. Akpan, A.N. Ugbaja, E.I. Okoyeh, N.J. George, Assessment of spatial distribution of contaminants and their levels in soil and water resources of Calabar, Nigeria using geophysical and geological data, Environ. Earth Sci., 77 (2018) 12665–12678.
  7. V. Sergi, G. Fernando, L.L. Josep, C. Fernando, Energy-saving scheduling on IaaS HPC cloud environments based on a multi-objective genetic algorithm, J. Supercomputing, 75 (2019) 1483–1495.
  8. T. Cui, W. Zhao, C. Wang, Design optimization of vehicle EHPS system based on multi-objective genetic algorithm, Energy, 179 (2019) 100–110.
  9. A. Rapaport, V. Riquelme, Controlling recirculation rate for minimal-time bioremediation of natural water resources, Automatica, 106 (2019) 77–82.
  10. C.F. Liu, S. Samarakoon, M. Bennis, H.V. Poor, Fronthaul-aware software-defined wireless networks: resource allocation and user scheduling, IEEE Trans. Wireless Commun., 17 (2018) 533–547.
  11. D. Bai, J. Li, T. Wang, Multi-dimensional distribution simulation of water resources in Weihe river basin based on fuzzy optimization, Comput. Simul., 37 (2020) 161–164.
  12. Y. Kuwayama, S.M. Olmstead, Hydroeconomic modeling of resource recovery from wastewater: implications for water quality and quantity management, J. Environ. Qual., 49 (2020) 593–603.
  13. K. Gurleen, B. Anju, A survey of prediction-based resource scheduling techniques for physics-based scientific applications, Mod. Phys. Lett. B, 32 (2018) 185–198.
  14. A. Anshuman, A. Kunnath-Poovakka, T.I. Eldho, Towards the use of conceptual models for water resource assessment in Indian tropical watersheds under monsoon-driven climatic conditions, Environ. Earth Sci., 78 (2019) 126–138.
  15. A.W. Worqlul, Y.T. Dile, P. Schmitter, J. Jeong, Water resource assessment, gaps, and constraints of vegetable production in Robit and Dangishta watersheds, Upper Blue Nile Basin, Ethiopia, Agric. Water Manage., 226 (2019) 105–127.
  16. S. Qu, L. Zhao, Z. Xiong, Cross-layer congestion control of wireless sensor networks based on fuzzy sliding mode control, Neural Comput. Appl., 32 (2020) 13505–13520.
  17. X. Fu, Y. Yang, Modeling and analysis of cascading node-link failures in multi-sink wireless sensor networks, Reliab. Eng. Syst. Saf. 197 (2020) 106815, doi: 10.1016/j.ress.2020.106815.
  18. X.W. Fu, P. Pace, G. Aloi, L. Yang, G. Fortino, Topology optimization against cascading failures on wireless sensor networks using a memetic algorithm, Comput. Networks (Amsterdam, Netherlands: 1999), 177 (2020) 107327, doi: 10.1016/j.comnet.2020.107327.
  19. C. Zuo, Q. Chen, L. Tian, L. Waller, A. Asundi, Transport of intensity phase retrieval and computational imaging for partially coherent fields: the phase space perspective, Optics Lasers Eng., 71 (2015) 20–32.
  20. Z.H. Lv, X.M. Li, H.B. Lv, W.Q. Xiu, BIM big data storage in WebVRGIS, IEEE Trans. Ind. Inf., 16 (2020) 2566–2573.
  21. Z. Lv, L. Qiao, Deep belief network and linear perceptron based cognitive computing for collaborative robots, Appl. Soft Comput., 92 (2020) 106300, doi: 10.1016/j.asoc.2020.106300.
  22. Z. Lv, W. Xiu, Interaction of edge-cloud computing based on SDN and NFV for next generation IoT, IEEE Internet Things J., 7 (2020) 5706–5712.
  23. Z. Lv, H. Song, Mobile internet of things under data physical fusion technology, IEEE Internet Things J., 7 (2020) 4616–4624.
  24. Y.X. Liu, C.N. Yang, Q.D. Sun, S.Y. Wu, S.S. Lin, Y.S. Chou, Enhanced embedding capacity for the SMSD-based data-hiding method, Signal Process. Image Commun., 78 (2019) 216–222.