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Application of Gradient-Free Optimization Algorithms in Yield Optimization of Fed-Batch Fermentation Processes

机译:无梯度优化算法在分批补料发酵过程产量优化中的应用

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The fed-hatch fermentation process of antibiotics is a complex industrial process with high nonlinearity and uncertainty. Due to the difficulty of building the yield model, yield optimization of antibiotic production becomes a challenging task. Aiming to optimize the antibiotic yield of the fed-batch fermentation process efficiently, a kind of gradient-free optimization scheme was introduced, which does not rely on a yield model. Two different gradient-free optimization algorithms, adaptive particle swarm optimization (APSO) as a global algorithm and the Simultaneous Perturbation Stochastic Approximation (SPSA) as a local algorithm, were incorporated and applied to the yield optimization of the penicillin fermentation process. The results had shown that both types of gradient-free optimization algorithms could achieve satisfactory performance. However, as a global optimization algorithm, the APSO may attain better optimal settings than the SPSA, while the SPSA is much beneficial than the APSO in optimization cost. The trade-off should be made according to different application scenarios.
机译:抗生素的孵化发酵过程是一个复杂的工业过程,具有高度的非线性和不确定性。由于建立产量模型的困难,抗生素生产的产量优化成为一项艰巨的任务。为了有效优化分批补料发酵过程的抗生素产量,提出了一种不依赖产量模型的无梯度优化方案。两种不同的无梯度优化算法:自适应粒子群优化(APSO)作为全局算法和同时扰动随机逼近(SPSA)作为局部算法,被合并并应用于青霉素发酵过程的产量优化。结果表明,两种类型的无梯度优化算法均可达到令人满意的性能。但是,作为一种全局优化算法,APSO可以获得比SPSA更好的最佳设置,而SPSA在优化成本方面比APSO受益得多。应当根据不同的应用场景进行权衡。

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