Artificial intelligence model for monitoring biomass growth in semi-batch Chlorella vulgaris cultivation

Angela Paul Peter, Kit Wayne Chew, Ashok Pandey, Sie Yon Lau, Saravanan Rajendran, Huong Yong Ting, Heli Siti Halimatul Munawaroh, Nguyen Van Phuong, Pau Loke Show

Research output: Contribution to journalArticlepeer-review

23 Scopus citations

Abstract

There is a great demand for a clean, economical, and long-term energy source, due to the depletion of fossil fuels. Large-scale production of microalgae biomass for biofuel production is likely attributable to several challenges, including the high cost of photobioreactors, the need for a sustainable medium for optimum development, and time-consuming algal growth monitoring techniques. Firstly, the research novelty aims at improving the strategy of recycling culture media for semi-batch cultivation of Chlorella vulgaris. Two cycles were performed with varying amounts of recycled medium replacement to evaluate algal growth and biochemical content. As compared to all other culture ratio combinations, the mixing ratio of recycled medium to fresh medium is at 40 % (40RB) combination yielded the greatest biomass growth (4.52 g/L), lipid (317.40 mg/g), protein (280.57 mg/g), and carbohydrate (451.37 mg/g) content. Next, custom vision was applied to Chlorella vulgaris maturing stages, and a unique digital architecture framework was developed. The iteration model delivers result interpretation with an accuracy of more than 92 % of every data set based on the trained Model Performance.

Original languageBritish English
Article number126438
JournalFuel
Volume333
DOIs
StatePublished - 1 Feb 2023

Keywords

  • Artificial intelligence
  • Biomass growth
  • Cultivation
  • Culture medium recycling
  • Semi batch

Fingerprint

Dive into the research topics of 'Artificial intelligence model for monitoring biomass growth in semi-batch Chlorella vulgaris cultivation'. Together they form a unique fingerprint.

Cite this