Application of Machine Learning Techniques to Discern Optimal Rearing Conditions for Improved Black Soldier Fly Farming

Author:

Muinde John1ORCID,Tanga Chrysantus M.1ORCID,Olukuru John2ORCID,Odhiambo Clifford3,Tonnang Henri E. Z.1ORCID,Senagi Kennedy1ORCID

Affiliation:

1. International Centre of Insect Physiology and Ecology, Nairobi 30772-00100, Kenya

2. LabAfrica Research Centre, Strathmore University, Nairobi 59857-00200, Kenya

3. Sanergy Limited, Atlanta, GA 550288, USA

Abstract

As the world population continues to grow, there is a need to come up with alternative sources of feed and food to combat the existing challenge of food insecurity across the globe. The use of insects, particularly the black soldier fly (BSF) Hermetia illucens (L.) (Diptera: Stratiomydiae), as a source of feed stands out due to its sustainability and reliability. Black soldier fly larvae (BSFL) have the ability to convert organic substrates to high-quality biomass rich in protein for animal feed. They can also produce biodiesel and bioplastic and have high biotechnological and medical potential. However, current BSFL production is low to meet the industry’s needs. This study used machine learning modeling approaches to discern optimal rearing conditions for improved BSF farming. The input variables studied include the cycle time in each rearing phase (i.e., the rearing period in each phase), feed formulation type, length of the beds (i.e, rearing platforms) at each phase, amount of young larvae added in the first phase, purity score (i.e, percentage of BSFL after separating from the substrate), feed depth, and the feeding rate. The output/target variable was the mass of wet larvae harvested (kg per meter) at the end of the rearing cycle. This data was trained on supervised machine learning algorithms. From the trained models, the random forest regressor presented the best root mean squared error (RMSE) of 2.91 and an R-squared value of 80.9%, implying that the model can be used to effectively monitor and predict the expected weight of BSFL to be harvested at the end of the rearing process. The results established that the top five ranked important features that inform optimal production are the length of the beds, feed formulation used, the average number of young larvae loaded in each bed, feed depth, and cycle time. Therefore, in that priority, it is expected that tuning the mentioned parameters to fall within the required levels would result in an increased mass of BSFL harvest. These data science and machine learning techniques can be adopted to understand rearing conditions and optimize the production/farming of BSF as a source of feed for animals e.g., fish, pigs, poultry, etc. A high production of these animals guarantees more food for humans, thus reducing food insecurity.

Funder

Foreign, Commonwealth & Development Office

Horizon Europe

Rockefeller Foundation

Bill & Melinda Gates Foundation

Australian Centre for International Agricultural Research

Curt Bergfors Foundation Food Planet Prize Award

Swedish International Development Cooperation Agency

Swiss Agency for Development and Cooperation

Federal Democratic Republic of Ethiopia

Government of the Republic of Kenya

Publisher

MDPI AG

Subject

Insect Science

Reference35 articles.

1. United Nations Department of Economic and Social Affairs (2022). World Population Prospects 2022: Summary of Results—UN DESA/POP/2022/TR/NO. 3, United Nations Department of Economic and Social Affairs.

2. FAO (2018). The Future of Food and Agriculture: Alternative Pathways to 2050, Food and Agriculture Organization of the United Nations Rome.

3. Complete replacement of soybean meal with black soldier fly larvae meal in feeding program for broiler chickens from placement through to 49 days of age reduced growth performance and altered organs morphology;Hannah;J. Poult. Sci.,2023

4. Comparative protein quality in black soldier fly larvae meal vs. soybean meal and fish meal using classical protein efficiency ratio (PER) chick growth assay model;Veronica;J. Poult. Sci.,2023

5. Opportunities, challenges and solutions for black soldier fly larvae-based animal feed production;Sharvini;J. Clean. Prod.,2022

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