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Combination of uniform design with artificial neural network coupling genetic algorithm: an effective way to obtain high yield of biomass and algicidal compound of a novel HABs control actinomycete

机译:均匀设计与人工神经网络耦合遗传算法相结合:一种高效控制新型放线菌的生物量和杀藻化合物的有效途径

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Controlling harmful algae blooms (HABs) using microbial algicides is cheap, efficient and environmental-friendly. However, obtaining high yield of algicidal microbes to meet the need of field test is still a big challenge since qualitative and quantitative analysis of algicidal compounds is difficult. In this study, we developed a protocol to increase the yield of both biomass and algicidal compound present in a novel algicidal actinomycete Streptomyces alboflavus RPS, which kills Phaeocystis globosa. To overcome the problem in algicidal compound quantification, we chose algicidal ratio as the index and used artificial neural network to fit the data, which was appropriate for this nonlinear situation. In this protocol, we firstly determined five main influencing factors through single factor experiments and generated the multifactorial experimental groups with a U15(155) uniform-design-table. Then, we used the traditional quadratic polynomial stepwise regression model and an accurate, fully optimized BP-neural network to simulate the fermentation. Optimized with genetic algorithm and verified using experiments, we successfully increased the algicidal ratio of the fermentation broth by 16.90% and the dry mycelial weight by 69.27%. These results suggested that this newly developed approach is a viable and easy way to optimize the fermentation conditions for algicidal microorganisms.
机译:使用微生物杀藻剂控制有害藻华(HABs)便宜,高效且环境友好。然而,获得高产量的杀藻微生物以满足现场测试的需求仍然是一个巨大的挑战,因为很难对杀藻化合物进行定性和定量分析。在这项研究中,我们开发了一种协议,可以增加生物杀虫剂和杀藻化合物的产量,该化合物存在于新型杀藻放线菌链霉菌(Alphalavlavus)RPS中,可杀死球囊藻。为了克服化合物的定量分析中的问题,我们选择了化合物的比例作为指标,并使用人工神经网络对数据进行拟合,以适应这种非线性情况。在该方案中,我们首先通过单因素实验确定了五个主要影响因素,并生成了具有U 15 (15 5 )统一设计表的多因素实验组。然后,我们使用传统的二次多项式逐步回归模型和精确,完全优化的BP神经网络来模拟发酵。通过遗传算法优化并通过实验验证,我们成功提高了发酵液的杀藻率,使菌丝体干重增加了16.90%,使菌丝干重增加了69.27%。这些结果表明,这种新开发的方法是一种优化藻类微生物发酵条件的可行且简便的方法。

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