Bangus (Chanos Chanos) Farming: Preparing for SMART Farming and Predictive Analysis using Artificial Intelligence Tools

Authors

  • Rhowel M. Dellosa Pangasinan State University, Lingayen, Pangasinan, Philippines

Keywords:

data mining, decision tree, machine learning, random forest, regression analysis, support vector machine, WEKA

Abstract

The study looks at how traditional Bangus (chanos chanos) farming methods in the Philippine province of Pangasinan can be adapted to incorporate cutting-edge technology and predictive analytics. The study's objective is to boost the local aquaculture sector's production, efficiency, and sustainability in order to promote economic development and food security in the long run. The study starts off by thoroughly reviewing the body of prior research on SMART farming, predictive analysis, and the situation of Bangus farming in the area. This literature review lays the groundwork for the study by highlighting the possible advantages and difficulties of implementing modern technologies in aquaculture. Then, primary data is gathered through document analysis from the reliable source of the internet. These measure if there is a need to adapt SMART farming ideas for improvements. The study also gathers crucial historical information on past climatic trends, water quality, and other pertinent environmental aspects that affect Bangus cultivation. This data serves as the foundation for predictive modeling, which projects future outcomes under various scenarios utilizing cutting-edge analytical tools. Predictive analysis tries to improve Bangus farming enterprises' overall efficiency by optimizing feeding practices, reducing disease outbreaks, and anticipating market demand. The study's findings provided insight into the Bangus farmers of Pangasinan's existing level of knowledge and readiness about SMART farming techniques. Additionally, the predictive models provide useful insights into the potential advantages and difficulties of deploying SMART agricultural technologies in this particular area. The study's conclusions have important results for agricultural extension agencies, legislators, and technology providers because they can guide targeted interventions and support systems to encourage the adoption of SMART farming in the neighborhood aquaculture industry. In the context of food production and rural development, the research also contributes to a larger conversation about sustainable agriculture, technological integration, and predictive analytics.

Downloads

Download data is not yet available.

References

Ahmad, A. T., Salim, K., Ean, C. P., Isa, M. M., & Fong, L. C. (2003). An overview of the socio[1]economic status of fisheries in Malaysia. Fisheries Research Institute, 11960.

Harun Z., Reda, E. and Zulkifli, R. (2017). Buoyancy effect on atmospheric surface layer: measurements from the East Coast of Malaysia, IOP Conference Series.

Harun, Z., Khamis, N. K., Isa, M. D., Mohamed, Z. and Hashim, H. (2013). The roles of professional engineers at the institutions of higher learning in nation-building, International Education Studies, vol. 6(6), 137

Jarin, S (2018). Socio-economic status and environmental problems affecting the fishermen along the river tributaries of Dagupan City. Asia Pacific Journal of Multidisciplinary Research. http://www.apjmr.com/wp-content/uploads/2018/01/APJMR-2017.6.1.10.pdf

Kenyhercz, M. W., & Passalacqua, N. V. 2016. Missing Data Imputation Methods and Their Performance With Biodistance Analyses. In Elsevier eBooks (pp. 181–194). https://doi.org/10.1016/b978-0-12-801966-5.00009-3

Kutty, M. N. (1987). Site selection for aquaculture: physical features of water, Nigerian Institute for Oceanography and Marine Research, Food and Agriculture Organization of The United Nations., http://www.fao.org/documents/en/detail/69895/

Mazuki, H. (2015). Industry and Market Status of Tilapia in Malaysia, 4th International Trade and Technical Conference And Exposition on Tilapia.

National Water Quality Standards For Malaysia (2008), http://www.wepa-db.net/policies/law/malaysia/eq_surface.htm

Philippine Statistics Authority. (2023) Technical Notes on Fisheries Statistical Report. https://psa.gov.ph/technical-notes/fsr-2023

Philippine Statistics Authority. (2021) Notes on Fisheries Statistics of the Philippines. Https://pas.gov.ph/technical-notes/fsp-2021

PHILMINAQ (Mitigating impact from aquaculture in the Phillippines), 2008. Water Quality Criteria and Standards for Freshwater and Marine Aquaculture, Marine Science Institute, Univ. of the Philippines, http://aquaculture.asia/files/PMNQ%20WQ%20standard%202.pdf

Smola, A. J., & Schölkopf, B. 2004. A tutorial on support vector regression. Statistics and Computing, 14(3), 199–222. https://doi.org/10.1023/b:stco.0000035301.49549.88

Somerville, C., Cohen, M., Pantanella, E., Stankus, A. & Lovatelli, A. (2014). Small-scale aquaponic food production. Integrated fish and plant farming. FAO Fisheries and Aquaculture Technical Paper No. 589. Rome, FAO.

TagalogLang. (2023). BANGUS. TAGALOG LANG. https://www.tagaloglang.com/bangus/

The State of World Fisheries and Aquaculture (2016). Food and Agriculture Organization of the United Nations.

Tien, J. M. 2017. Internet of Things, Real-Time Decision Making, and Artificial Intelligence. Annals of Data Science, 4(2), 149–178. https://doi.org/10.1007/s40745-017-0112-5

Witten, IH, Frank, E, Hall, MA, Pal, CJ (2016). The WEKA Workbench. https://www.cs.waikato.ac.nz/ml/weka/Witten_et_al_2016_appendix.pdf

Yusof M., Presentation, Program National Key Economic Areas (NKEA) on Agriculture, Fisheries Department of Malaysia, http://etp.pemandu.gov.my/upload/NKEA_Agriculture.pdf

Juhani Nieminen , Johan Bakker, Martin Mayer, Patrick Schmid, Andrea Ricci. Exploring Explainable AI in Educational Machine Learning Models. Kuwait Journal of Machine Learning, 2(2). Retrieved from http://kuwaitjournals.com/index.php/kjml/article/view/191

Andrew Hernandez, Stephen Wright, Yosef Ben-David, Rodrigo Costa, David Botha. Predictive Analytics for Decision-Making: Leveraging Machine Learning Techniques. Kuwait Journal of Machine Learning, 2(3). Retrieved from http://kuwaitjournals.com/index.php/kjml/article/view/193

Dhabliya, D., & Parvez, A. (2019). Protocol and its benefits for secure shell. International Journal of Control and Automation, 12(6 Special Issue), 19-23. Retrieved from www.scopus.com

Downloads

Published

16.07.2023

How to Cite

Dellosa, R. M. . (2023). Bangus (Chanos Chanos) Farming: Preparing for SMART Farming and Predictive Analysis using Artificial Intelligence Tools. International Journal of Intelligent Systems and Applications in Engineering, 11(3), 665–672. Retrieved from https://ijisae.org/index.php/IJISAE/article/view/3272

Issue

Section

Research Article