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微藻 VV2 中脂类积累的增强:生物柴油生产的响应面法和人工神经网络建模。

Enhancement of lipid accumulation in microalga Desmodesmus sp. VV2: Response Surface Methodology and Artificial Neural Network modeling for biodiesel production.

机构信息

Department of Molecular Microbiology, School of Biotechnology, Madurai Kamaraj University, Madurai, 625021, Tamil Nadu, India.

Department of Chemical and Environmental Engineering, University of Nottingham Malaysia, Jalan Broga, 43500, Semenyih, Selangor Darul Ehsan, Malaysia.

出版信息

Chemosphere. 2022 Apr;293:133477. doi: 10.1016/j.chemosphere.2021.133477. Epub 2022 Jan 7.

Abstract

Microalgae are the most attractive renewable energy sources for the production of biofuels because of their luxurious growth and lipid accumulation ability in diverse nutritional conditions. In the present study, Desmodesmus sp. VV2, an indigenous microalga, was evaluated for its biodiesel potential using Response Surface Methodology (RSM) to improve the lipid accumulation with the combination of nutrients stress NaNO starvation, CaCl depletion, and supplementation of magnesium oxide nanoparticles (MgO). Among different stress conditions, 57.6% lipid content was achieved from RSM optimized media. Owing to this, RSM results were also validated by the Artificial Neural Network (ANN) with 11 training algorithms and it is found that RSM was more significant. In addition, the saturated fatty acid (SFA) content was noticeably increased in RSM optimized media (95.8%) while compared with control. Further, the highest total FAME content 97.21% was also achieved in cells grown in RSM optimized media. Biodiesel quality parameters were analyzed and found that they are in accordance with international standards. Thus, this study suggesting that the fatty acid profile of Desmodesmus sp. VV2 attained under optimized media conditions would be suitable for biodiesel production for future energy demand.

摘要

微藻是最有吸引力的可再生能源,可用于生产生物燃料,因为它们在各种营养条件下都具有旺盛的生长和脂质积累能力。在本研究中,采用响应面法(RSM)评估了土著微藻束丝藻 VV2 的生物柴油潜力,以通过营养胁迫(NaNO 饥饿、CaCl 耗尽和氧化镁纳米粒子(MgO)补充)的组合来提高脂质积累。在不同的胁迫条件下,从 RSM 优化的培养基中获得了 57.6%的脂质含量。因此,通过具有 11 种训练算法的人工神经网络(ANN)对 RSM 结果进行了验证,发现 RSM 更为显著。此外,在 RSM 优化的培养基中(95.8%),饱和脂肪酸(SFA)的含量明显增加,而与对照相比。此外,在 RSM 优化的培养基中生长的细胞也获得了最高的总 FAME 含量 97.21%。对生物柴油的质量参数进行了分析,发现它们符合国际标准。因此,本研究表明,在优化的培养基条件下获得的束丝藻 VV2 的脂肪酸谱适合未来能源需求的生物柴油生产。

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