Open Access

New anergy tide control strategy based on Eviews econometric model

 and    | Jun 02, 2023

Cite

Barun, Poudel, Prajwal, et al. (2018). Allergic asthma: RIPK2 takes the lead. Journal of leukocyte biology. Search in Google Scholar

Montero-Campillo, M. M., Alkorta, I., et al. (2021). Clustering of Electron Deficient B- and Be-Containing Analogues: In the Fight for Tetracoordination, Beryllium Takes the Lead. European Journal of Inorganic Chemistry. Search in Google Scholar

Monroe, D. (2020). Fugaku takes the lead. Communications of the ACM, 64(1), 16-18. Search in Google Scholar

Bass, K., Farkas, D., Hassan, A., et al. (2020). High-efficiency dry powder aerosol delivery to children: Review and application of new technologies[J]. Journal of Aerosol Science, 105692. Search in Google Scholar

Li, Y. L., Xu, Q. X., Wang, W. W. (2018). Key technologies for dual high- k and dual metal gate integration. Chinese Physics B, 27(9). Search in Google Scholar

Yi, W., Liu, W., Botana, J., et al. (2018). Microporosity as a new property control factor in graphene-like 2D allotropes. Journal of Materials Chemistry A, https://doi.org/10.1039/C8TA02606H Search in Google Scholar

Ribeiro-Santos, R., Carvalho-Costa, D., Cavaleiro, C., et al. (2015). A novel insight on an ancient aromatic plant: The rosemary (Rosmarinus officinalis L.). Trends in Food Science & Technology. Search in Google Scholar

Sobrinho, D. G., Nomiyama, R. K., Chaves, A. S., et al. (2015). Structure, Electronic, and Magnetic Properties of Binary Pt n TM 55-n (TM = Fe, Co, Ni, Cu, Zn) Nanoclusters: A Density Functional Theory Investigation. Journal of Physical Chemistry C, 119(27), 150611131046008. Search in Google Scholar

Vidal, O., Rostom, F., Fran Ois, C., et al. (2017). Global Trends in Metal Consumption and Supply: The Raw Material–Energy Nexus. Elements. Search in Google Scholar

Vemer, P., Ramos, I. C., Voorn, G. V., et al. (2016). AdViSHE: A Validation-Assessment Tool of Health-Economic Models for Decision Makers and Model Users. Pharmaco Economics, 34(4), 349-361. Search in Google Scholar

Silvio, S., Charles, P. (2015). Indirect economic indicators in bio-economic fishery models: agricultural price indicators and fish stocks in Lake Victoria. Ices Journal of Marine Science, 3, 483-492. Search in Google Scholar

Momblanch, A., Connor, J. D., Crossman N. D, et al. (2016). Using ecosystem services to represent the environment in hydro-economic models. Journal of Hydrology, 538, 293-303. Search in Google Scholar

Trica, C., Banacu, C., Busu, M. (2019). Environmental Factors and Sustainability of the Circular Economy Model at the European Union Level. Sustainability, 11(4). Search in Google Scholar

Zbuchea, A., Pînzaru, F., Busu, M., et al. (2019). Sustainable Knowledge Management and Its Impact on the Performances of Biotechnology Organizations. Sustainability, 11(2). Search in Google Scholar

Guan, H., Xing, M. (2022). Impact of Energy Price Distortion on Green TFP Based on Spatial Econometric Model. Mathematical Problems in Engineering. Search in Google Scholar

Fu, Z., Li, R. (2019). The contributions of socioeconomic indicators to global PM2.5 based on the hybrid method of spatial econometric model and geographical and temporal weighted regression. Science of The Total Environment, 703, 135481. Search in Google Scholar

Kulikova, M. V., Tsyganova, J. V., Kulikov, G. Y. (2020). UD-Based Pairwise and MIMO Kalman-Like Filtering for Estimation of Econometric Model Structures. IEEE Transactions on Automatic Control, 99, 1-1. Search in Google Scholar

Yang, H., Xi, X., Han, S., et al. (2020). Construction of Econometric Model of Social Economic Loss Caused by Water Resources Imbalance Risk. Journal of Coastal Research, 104(sp1). Search in Google Scholar

A M M, A B O, B P S, et al. (2016). Mobile social media for smart grids customer engagement: Emerging trends and challenges - Science Direct. Renewable and Sustainable Energy Reviews, 53(6), 1611-1616. Search in Google Scholar

Proskuryakova, L., Kovalev, A. (2015). Measuring energy efficiency: Is energy intensity a good evidence base?. Applied Energy, 5.261(jan.15), 450-459. Search in Google Scholar

Vazza, F., Ferrari, C., Brüggen, M., et al. (2015). Forecasts for the detection of the magnetised cosmic web from cosmological simulations. Astronomy & Astrophysics, 580. Search in Google Scholar

Alexander, J. M., Chalmandrier, L., Lenoir, J., et al. (2018). Lags in the response of mountain plant communities to climate change. Global Change Biology, 24(2). Search in Google Scholar

Akhtar, K., Sugand, K., Sperrin, M., et al. (2015). Training safer orthopedic surgeons Construct validation of a virtual-reality simulator for hip fracture surgery. Acta Orthopaedica, 86(5), 616. Search in Google Scholar

Shao, X., Ma, S., Xu, C., et al. (2020). Effects of sampling intensity and non-slide/slide sample ratio on the occurrence probability of coseismic landslides. Geomorphology, 363, 107222. Search in Google Scholar

Ameh, P. O., Sani, U. M., Nwoye, E. E. (2015). Studies on some physicochemical and Rheological properties of the plant Gum Exudates of Albiziafurriguinea. International Journal of Chemical, Material and Environmental Research, 2(2), 10-26. Search in Google Scholar

eISSN:
2444-8656
Language:
English
Publication timeframe:
Volume Open
Journal Subjects:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics