Using Database and Fuzzy Logic for Static and Dynamic Fitness Tests Representation

Main Article Content

Omar Muayad Abdullah
Esraa Khalid Ahmed
Rayan Yousif Alkhayat

Abstract

The fitness's dynamic and static tests require the person being tested to run or walk as far as possible in a determined period, depending on some main factors it can be decide the status of the athletic. This work aims to create databases dedicated for dynamic and static fitness tests utilizing fuzzy logic to estimates athletic tests in different ages. The procedure of this work is divided into two steps, first determining the factors for processing, the second is the databases and FIS construction. The determined databases are considered as an inputs and output for proposed fuzzy logic system. There are two inputs (Age, Distance) and one output (Status), the membership functions for the first input (Age) are (Young Adults_A, Young Adults_B, Young Adults_C, Young Adults_D, Middle Aged_A, Middle Aged_B), the membership functions for the next input (Distance) are (Very Short, Short, Medium, Long, Very long), while the membership functions of the determined output (Status) are (Very Good, Good, Accepted, Bad, Very Bad). The procedure for creating proposed fuzzy logic structure is repeated twice, one for male and other for female.


 


Article Details

How to Cite
Abdullah, O. M., Ahmed, E. K., & Alkhayat, R. Y. (2023). Using Database and Fuzzy Logic for Static and Dynamic Fitness Tests Representation. Technium: Romanian Journal of Applied Sciences and Technology, 11, 8–16. https://doi.org/10.47577/technium.v11i.9120
Section
Articles

References

Alvero-Cruz, J.R., et al., Cooper test provides better half-marathon performance prediction in recreational runners than laboratory tests. Frontiers in Physiology, 2019. 10: p. 1349.

Bhunia, S.S., J. Pal, and N. Mukherjee. Fuzzy assisted event driven data collection from sensor nodes in sensor-cloud infrastructure. in 2014 14th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing. 2014. IEEE.

Buckles, B.P. and F.E. Petry, A fuzzy representation of data for relational databases. Fuzzy sets and systems, 1982. 7(3): p. 213-226.

Haddin, M., et al., Fuzzy logic applications for data acquisition systems of practical measurement. International Journal of Electrical and Computer Engineering, 2020. 10(4): p. 3441.

Hudec, M., An approach to fuzzy database querying, analysis and realization. Computer Science and Information Systems, 2009. 6(2): p. 127-140.

Kartavykh, S., et al., Adaptation of fuzzy inference system to solve assessment problems of technical condition of construction objects. Technology audit and production reserves, 2020. 3(2): p. 53.

Kumara, R., Impact of database management in modern world. management, 2020. 4: p. 7.

TAMRAKAR, A.K., An Analysis of Fuzzy set of Query Processing for Fuzzification. Journal of University of Shanghai for Science and Technology. Retrieved on 8th April, 2023.

Tech, R.L.M. and N. Pavani, Fuzzy Logic-Retrieval of Data from Database. 2011.

Rojek, I., et al., From Classical to Fuzzy Databases in a Production Enterprise. Journal of Universal Computer Science, 2020. 26(11): p. 1382-1401.

Shah, B., et al., Fuzzy logic-based guaranteed lifetime protocol for real-time wireless sensor networks. Sensors, 2015. 15(8): p. 20373-20391.

Smolka, P. and V. Bradac. Fuzzy queries above relational database. in AIP Conference Proceedings. 2017. AIP Publishing LLC.

Suriya, P. and S. Arumugam, Technology in physical education. TECHNOLOGY, 2020. 9(4).

Susana, S. and S. Suharjito, Query Optimization Using Fuzzy Logic in Integrated Database. Indonesian Journal of Electrical Engineering and Computer Science, 2016. 4: p. 637.

Lan, L.T.H., et al., A new complex fuzzy inference system with fuzzy knowledge graph and extensions in decision making. Ieee Access, 2020. 8: p. 164899-164921.

Radu, V., et al., Bibliometric Analysis of Fuzzy Logic Research in International Scientific Databases. International Journal of Computers, Communications & Control, 2021. 16(1).