Neural Modeling of the Distribution of Protein, Water and Gluten in Wheat Grains during Storage

Author:

Szwedziak KatarzynaORCID,Polańczyk Ewa,Grzywacz ŻanetaORCID,Niedbała GniewkoORCID,Wojtkiewicz Wiktoria

Abstract

An important requirement in the grain industry is to obtain fast information on the quality of purchased and stored grain. Therefore, it is of great importance to search for innovative solutions aimed at the monitoring and fast assessment of quality parameters of stored wheat The results of the evaluation of total protein, water and gluten content by means of near infrared spectrometry are presented in the paper. Multiple linear regression analysis (MLR) and neural modeling were used to analyze the obtained results. The results obtained show no significant changes in total protein (13.13 ± 0.15), water (10.63 ± 0.16) or gluten (30.56 ± 0.54) content during storage. On the basis of the collected data, a model artificial neural network (ANN) MLP 52-6-3 was created, which, with the use of four independent features, allows us to determine changes in the content of water, protein and gluten in stored wheat. The chosen network returned good error values: learning, below 0.001; testing, 0.015; and validation, 0.008. The obtained results and their interpretation are an important element in the warehouse industry. The information obtained in this way about the state of the quality of stored grain will allow for a fast reaction in case of the threat of lowering the quality parameters of the stored grain.

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development

Reference47 articles.

1. Food Security: The Challenge of Feeding 9 Billion People

2. Insects as food: A review on risks assessments of Tenebrionidae and Gryllidae in relation to a first machines and plants development

3. World Agriculture Towards 2030/2050: The 2012 Revision;Alexandratos,2012

4. Post Harvest Food Losses-The Neglected Dimension In Increasing The World Food Supply. (Cornell International Agriculture Mimeograph 53);Bourne,1977

5. FOOD, TECHNOLOGY AND EMPLOYMENT: THE FARM-LEVEL POST-HARVEST SYSTEM IN DEVELOPING COUNTRIES

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