Accès libre

The teaching of sports science of track and field-based on nonlinear mathematical equations

À propos de cet article

Citez

Kim, J. Z., Lu, Z., Nozari, E., Pappas, G. J., & Bassett, D. S. Teaching recurrent neural networks to infer global temporal structure from local examples. Nature Machine Intelligence., 2021; 3(4): 316–323. KimJ. Z. LuZ. NozariE. PappasG. J. BassettD. S. Teaching recurrent neural networks to infer global temporal structure from local examples Nature Machine Intelligence 2021 3 4 316 323 10.1038/s42256-021-00321-2 Search in Google Scholar

Li, T., & Song, J. Research on promotion methods of positive mental health of college students under the model of ecological sports teaching. Ekoloji., 2019; 28(107): 1861–1868. LiT. SongJ. Research on promotion methods of positive mental health of college students under the model of ecological sports teaching Ekoloji 2019 28 107 1861 1868 Search in Google Scholar

Correia, V., Carvalho, J., Araújo, D., Pereira, E., & Davids, K. Principles of nonlinear pedagogy in sport practice. Physical Education and Sport Pedagogy., 2019; 24(2): 117–132. CorreiaV. CarvalhoJ. AraújoD. PereiraE. DavidsK. Principles of nonlinear pedagogy in sport practice Physical Education and Sport Pedagogy 2019 24 2 117 132 10.1080/17408989.2018.1552673 Search in Google Scholar

Keller, M., Ritter, D., Schmitt, L., Hänggi, S., Onder, C., Abel, D., & Albin, T. Teaching Nonlinear Model Predictive Control with MATLAB/Simulink and an Internal Combustion Engine Test Bench. IFAC-PapersOnLine., 2020; 53(2): 17190–17197. KellerM. RitterD. SchmittL. HänggiS. OnderC. AbelD. AlbinT. Teaching Nonlinear Model Predictive Control with MATLAB/Simulink and an Internal Combustion Engine Test Bench IFAC-PapersOnLine 2020 53 2 17190 17197 10.1016/j.ifacol.2020.12.1733 Search in Google Scholar

Grisham, W., Abrams, M., Babiec, W. E., Fairhall, A. L., Kass, R. E., Wallisch, P., & Olivo, R. Teaching computation in neuroscience: notes on the 2019 society for neuroscience professional development workshop on teaching. J Undergrad Neurosci Educ., 2021; 19(2): A185–A191 GrishamW. AbramsM. BabiecW. E. FairhallA. L. KassR. E. WallischP. OlivoR. Teaching computation in neuroscience: notes on the 2019 society for neuroscience professional development workshop on teaching J Undergrad Neurosci Educ 2021 19 2 A185 A191 Search in Google Scholar

Iglesias Martínez, M., Antonino-Daviu, J., de Córdoba, P. & Conejero, J. Higher-Order Spectral Analysis of Stray Flux Signals for Faults Detection in Induction Motors. Applied Mathematics and Nonlinear Sciences., 2020; 5(2): 1–14. Iglesias MartínezM. Antonino-DaviuJ. de CórdobaP. ConejeroJ. Higher-Order Spectral Analysis of Stray Flux Signals for Faults Detection in Induction Motors Applied Mathematics and Nonlinear Sciences 2020 5 2 1 14 10.2478/amns.2020.1.00032 Search in Google Scholar

Bicer, E. An Asymptotic Result for neutral differential equations. Applied Mathematics and Nonlinear Sciences., 2020; 5(1): 189–194. BicerE. An Asymptotic Result for neutral differential equations Applied Mathematics and Nonlinear Sciences 2020 5 1 189 194 10.2478/amns.2020.1.00017 Search in Google Scholar

Moy, B., Renshaw, I., & Pavey, T. Impact of the constraints-led approach on students’ motor performance. Journal of Physical Education and Sport., 2020; 20(6): 3345–3353. MoyB. RenshawI. PaveyT. Impact of the constraints-led approach on students’ motor performance Journal of Physical Education and Sport 2020 20 6 3345 3353 Search in Google Scholar

McCosker, C., Renshaw, I., Russell, S., Polman, R., & Davids, K. The role of elite coaches’ expertise in identifying key constraints on long jump performance: how practice task designs can enhance athlete self-regulation in competition. Qualitative Research in Sport, Exercise and Health., 2021; 13(2): 283–299. McCoskerC. RenshawI. RussellS. PolmanR. DavidsK. The role of elite coaches’ expertise in identifying key constraints on long jump performance: how practice task designs can enhance athlete self-regulation in competition Qualitative Research in Sport, Exercise and Health 2021 13 2 283 299 10.1080/2159676X.2019.1687582 Search in Google Scholar

Ba, H. Medical sports rehabilitation deep learning system of sports injury based on MRI image analysis. Journal of Medical Imaging and Health Informatics., 2020;10(5): 1091–1097. BaH. Medical sports rehabilitation deep learning system of sports injury based on MRI image analysis Journal of Medical Imaging and Health Informatics 2020 10 5 1091 1097 10.1166/jmihi.2020.2892 Search in Google Scholar

Rahmani, B., Loterie, D., Kakkava, E., Borhani, N., Teğin, U., Psaltis, D., & Moser, C. Actor neural networks for the robust control of partially measured nonlinear systems showcased for image propagation through diffuse media. Nature Machine Intelligence., 2020; 2(7): 403–410. RahmaniB. LoterieD. KakkavaE. BorhaniN. TeğinU. PsaltisD. MoserC. Actor neural networks for the robust control of partially measured nonlinear systems showcased for image propagation through diffuse media Nature Machine Intelligence 2020 2 7 403 410 10.1038/s42256-020-0199-9 Search in Google Scholar

Godbout, P., & Gréhaigne, J. F. Revisiting the tactical-decision learning model. Quest., 2020;72(4): 430–447. GodboutP. GréhaigneJ. F. Revisiting the tactical-decision learning model Quest 2020 72 4 430 447 10.1080/00336297.2020.1792953 Search in Google Scholar

Kaheni, H. R., & Yaghoobi, M. A new approach in anti-synchronization of a fractional-order hyper-chaotic Duffing system based on new nonlinear predictive control. International Journal of Dynamics and Control., 2020; 8(3): 917–931. KaheniH. R. YaghoobiM. A new approach in anti-synchronization of a fractional-order hyper-chaotic Duffing system based on new nonlinear predictive control International Journal of Dynamics and Control 2020 8 3 917 931 10.1007/s40435-020-00609-y Search in Google Scholar

eISSN:
2444-8656
Langue:
Anglais
Périodicité:
2 fois par an
Sujets de la revue:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics