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Hybridized multi-objective optimization approach (HMODE) for lysine fed-batch fermentation process

机译:赖氨酸喂养批量发酵过程的杂交多目标优化方法(HMODE)

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A new hybrid multi-objective differential evolution (MODE) algorithm is proposed that combines the MODE algorithm for the global space search with a dynamical local search (DLS) method for the local space search. HMODE-DLS algorithm was validated using the tri-objective DTLZ7 test problem and the results were compared with MODE algorithm with respect to four performance metrics. In addition to HMODE-DLS, another three algorithms were used to solve two multi-objective optimization cases in an industrial lysine bioreactor at different feeding conditions. Case 1 considers maximizing lysine's productivity and yield. While case 2 studies the maximization of productivity along with minimization of total operating time. In all cases, theoretical and industrial, HMODE-DLS showed a better performance with a better quality Pareto set of solutions. The Pareto front of case 1 found by HMODE-DLS was compared with a recent study trade-off, and the current non-dominated solutions values were found to be improved. This indicates that the lysine production process is enhanced. For case 2, the switching time from fed-batch to batch was found to be the key decision variable. Generally, these findings indicate the effectiveness of HMODE-DLS for the studied cases and its potential in solving real world complex problems.
机译:提出了一种新的混合多目标差分演进(模式)算法,其将全局空间搜索的模式算法与用于本地空间搜索的动态本地搜索(DLS)方法组合。使用三目标DTLZ7测试问题验证了HMode-DLS算法,并将结果与​​四种性能度量的模式算法进行了比较。除了HMODE-DLS之外,还用于在不同喂养条件下解决工业赖氨酸生物反应器中的两种多目标优化案例。案例1考虑最大化赖氨酸的生产力和产量。虽然案例2研究了生产力的最大化以及最小化总操作时间。在所有情况下,理论和工业,HMode-DLS都表现出更好的性能,具有更好的帕累托解决方案。将HMODE-DLS发现的案例1前面与最近的研究折衷相比,发现目前的非主导溶液值得到改善。这表明赖氨酸生产过程得到了增强。对于案例2,发现来自FED批处理到批次的切换时间是关键决策变量。通常,这些发现表明HMODE-DLS对所研究的病例的有效性及其在解决现实世界复杂问题方面的潜力。

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