Artificial neural networks to estimate, artichoke’s antioxidant components evaluation based on the easily available soil properties

Paper Details

Research Paper 01/06/2020
Views (810)
current_issue_feature_image
publication_file

Artificial neural networks to estimate, artichoke’s antioxidant components evaluation based on the easily available soil properties

Azadeh Alizadeh
Int. J. Biosci. 16(6), 98-120, June 2020.
Copyright Statement: Copyright 2020; The Author(s).
License: CC BY-NC 4.0

Abstract

One of the most important requirements in planning production and processing of medicinal plants in order to obtain high yield and high-quality is the initial assessment of the soil physical and chemical properties, which can reduce the production cost by avoiding the use of unnecessary soil analysis. Artichoke (Cynara scolymus L.) is one of the useful and medical herbs which is considered as the plant qualitative index based on the secondary components like antioxidant components. Therefore, it is necessary to evaluate the yield performance of artichoke by means of fast and cheap methods with an acceptable accuracy. The present study aims at investigating the amount of antioxidants of artichoke by means of soil physical and chemical characteristics including: soil texture, percent of organic carbon, percent of neutralizing substances, pH, EC, CEC, phosphorus, potassium, nitrogen and apparent specific gravity by artificial neural network. So soil sampling conducted from 60 different agricultural and forest lands of Golestan Province, soil parameters measured in lab. Based on sensitive parameters different models have been designed. The results showed that all artificial neural network models were more efficient rather than multivariate regression model. The model 5 is selected with an overall view as an optimal model, as with a minimum input parameter with a function close to other models with the number of parameters. However, the number 4 model, because in the explanatory coefficient compared to the three models, will be chosen, especially in the case of the performance and cost of being selected, because with a test (soil texture), three parameters are measured. The results indicated that the neural network application was used to estimate antioxidant amount performance using soil parameters, but it is also suggested to continue to access the definitive results of similar research in this regard.

Ayoubi S, Khormali F, Sahrawat K. 2009. Relation of barley biomass and grain yields to soil properties within a field in the arid region: Use of factor analysis. Acta Agriculturae Scandinavica. 59(2), 107-117. https://doi.org/10.1080/0906471080193.2417

Bremner JS, Mulvaney CS. 1982. Nitrogen-total. In A. L. Page (Ed.), Methods of Soil Analysis, Part 2. American Society of Agronomy (p. 595-624). Madison, Wisconsin. http://dx.doi.org/10.13031/2013.12541.

Drummond ST, Sudduth KA, Joshi A, Birrell SL, Kitchen NR. 2003. Statistical and Neural Methods for Site-specific Yield Prediction. Transactions of the American Society of Agricultural Engineering 46(1), 5-14. http://dx.doi.org/10.13031/201312541

Guadalupe M, Susana N, Diéguez María B, Fernández Paggi María B, Riccio Denisa S, Pérez G, Edgardo R, Fabián A, Amanto María  O, Tapia Alejandro L. 2019. Effect of fosfomycin, Cynara scolymus extract, deoxynivalenol and their combinations on intestinal health of weaned piglets.  Animal Nutrition 5(4), 386-395. http://dx.doi.org/10.1016/j.aninu.2019.08.001

Hill M. 1998. Methods and guidelines for effective model calibration. U.S. Geological survey Water- Resources Investigations Rep. 98-4005.

Kaul M, Hill RL, Walthall C. 2005. Artificial neural networks for corn and soybean yield prediction. Agriculture Systems 85, 1-18. http://dx.doi.org/10.1016/j.agsy.2004.07.009

Kumar N, Raghuwanshi NS, Singh R, Wallender WW, Pruitt WO. 2002. Estimating evapotranspiration using artificial network. Journal of  Irrigation and Drainage Engineering. 128(4), 224-233. http://dx.doi.org/10.1061/(ASCE)07339437(2007)1332(83)

Melesse AM, Hanley RS. 2005. artificial  neural network application for multi-ecosystem carbon flux simulation. Ecological Modeling 189, 305-314. http://dx.doi.org/10.1016/j.ecolmodel.2005.03.014

Moazenzadeh R, Ghahraman B, Fathalian F, Khoshnoodiyazdi A. 2009. Effect of type and number of input variables on estimation of moisture retention curve and saturated hydraulic conductivity. Journal of Water and Soil 23(3), 57-70. http://dx.doi.org/10.1016/j.jhydrol.2019.05058

Mahboubi M. 2018. Cynara scolymus (artichoke) and its efficacy in management of obesity. Bulletin of Faculty of Pharmacy, Cairo University 56(2), 115-120. http://dx.doi.org/10.1016/j.bfopcu.2018.10.003

Movahedi Naeini SA, Rezaei M. 2008. Soil Physics (Fundamentals and Applications). Gorgan University of Agricultural Sciences and Natural Resources Publications, 474 p.

Musaffah B, Khalili A. 2003. Prediction of rainfed wheat yield using artificial neural networks. Nivar. 48, 47-62. http://dx.doi.org/10.1080/09064710903005.682

Page A, Miller R, Keeney D. 1982. Methods of Soil Analysis.2th ed. Part2: Chemical and biological properties. Soil Science Society of America, 24 p.

Rao V, Rao H. 1996. C++ Neural networks and fuzzy logic, BPB, New Dehli, India. 380-381.

Schaap M, Leij F. 1998. Using neural networks to predict soil water retention and soil hydraulic conductivity. Soil and Tillage Research 47, 37-42. https://doi.org/10.1016/S0167-1987(98)00070-1

Schaap M, Leij F, Van Genuchten M. 1998. Neural network analysis for hierarchical prediction of soil hydraulic properties. Soil Science Society of America Journal 62, 847-855. http://dx.doi.org/10.2136/sssaj1998.03615995006200040001x

Related Articles

Frequency of occurrence of pathogens of diseases observed in cucumber (Cucumis sativa L.) plants

K. F. Bakhshaliyeva*, A. Kh. Rajabli, A. G. Eyvazov, E. I. Allahverdiyev, S. F. Azadaliyeva, Int. J. Biosci. 28(4), 181-186, April 2026.

Apparent digestibility of nutrients in diets based on dried Okara (Solid residue from soy milk and cheese production) in growing rabbits in Benin

Atchadé Ghislaine Sègbédji Théodora*, Edénakpo Kocou Aimé, Yètomè Amour, Bonou Gbodja Gilbert, Houndonougbo Mankpondji Frédéric, Mensah Guy Apollinaire, Int. J. Biosci. 28(4), 155-163, April 2026.

Philippines dipterocarp research (2000-2025): Trends, gaps and future priorities

Jay Mark G. Cortado, Angelo L. Lozano*, Reymark P. Rivera, Int. J. Biosci. 28(4), 138-154, April 2026.

Anti-proliferative potential of seed derived proteins from Vitis vinifera and Mangifera indica

Hareeshthulasi, V. Vinotha, R. Rajakumar*, Int. J. Biosci. 28(4), 129-137, April 2026.

Valorisation of table waste and fruit waste by black soldiers (Ullicens hermetica)

Ayaba Adéline Hounnou, Vanessa Chabi, Jomini Marc Sène Alitonou, Franck Sokenou, Mickael Vitus Martin Kpessou Saïzonou, Fidèle Paul Tchobo, Guy Alain Alitonou*, Int. J. Biosci. 28(4), 123-128, April 2026.

Murraya koenigii (Linn.) Spreng.: An opulent source of fatty acid

Shahin Aziz*, Int. J. Biosci. 28(4), 116-122, April 2026.

Design and architecture of an IoT-enabled bamboo resource management system: Data-driven approach for sustainable agriculture

Charlot L. Maramag*, Dorothy M. Ayuyang, Richard R. Ayuyang, Int. J. Biosci. 28(4), 107-115, April 2026.