4.7 Article

Machine learning-based optimisation of microalgae biomass production by using wastewater

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Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jece.2023.111387

Keywords

Microalgae; Wastewater; Machine learning; Biomass production; Decision tree

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Microalgae biomass production can be improved by optimizing cultivation parameters, such as light intensity, CO2 content, and initial inoculum level, using machine learning algorithms. This study used a decision tree model to analyze microalgae-based datasets and predict optimized combinations of variables for high growth rate and biomass production. The results showed that the initial inoculum level and nitrogen/phosphorus ratio in the medium have a significant influence on microalgae growth.
Microalgae biomass a valuable resource for energy source and fertilisers. Among all available media sources, wastewater serves as cost-efficient media for microalgae biomass production. However, improvements are still needed to increase microalgae biomass productivity in wastewater, particularly optimising cultivation param-eters, including light intensity, CO2 content, and initial inoculum level. Machine learning algorithms can easily optimise the cultivation parameters by analysing the microalgae-based wastewater treatment dataset without experimental runs. In the present work, a machine learning algorithm, Decision Tree, was used to analyse microalgae-based datasets and predict different optimised combinations of descriptor variables leading to high growth rate and microalgae biomass production. The decision tree model presented 18 combinations of descriptor variables leading to increased biomass production with a general accuracy of 81.25%. Seven of them were experimentally verified by using two newly isolated strains that predicted a 10% error after experimental verification. Models also revealed that the medium's initial inoculum level and nitrogen/phosphorus ratio highly influence microalgae growth as compared to other parameters. Results obtained in the analysis can be easily implemented at pilot and industrial scales without any laboratory experiments.

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