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首页> 外文期刊>Optimization: A Journal of Mathematical Programming and Operations Research >Optimal control of bioprocess systems using hybrid numerical optimization algorithms
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Optimal control of bioprocess systems using hybrid numerical optimization algorithms

机译:使用混合数值优化算法的生物过程系统的最佳控制

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In the paper, we consider the bioprocess system optimal control problem. Generally speaking, it is very difficult to solve this problem analytically. To obtain the numerical solution, the problem is transformed into a parameter optimization problem with some variable bounds, which can be efficiently solved using any conventional optimization algorithms, e.g. the improved Broyden-Fletcher-Goldfarb-Shanno algorithm. However, in spite of the improved Broyden-Fletcher-Goldfarb-Shanno algorithm is very efficient for local search, the solution obtained is usually a local extremum for non-convex optimal control problems. In order to escape from the local extremum, we develop a novel stochastic search method. By performing a large amount of numerical experiments, we find that the novel stochastic search method is excellent in exploration, while bad in exploitation. In order to improve the exploitation, we propose a hybrid numerical optimization algorithm to solve the problem based on the novel stochastic search method and the improved Broyden-Fletcher-Goldfarb-Shanno algorithm. Convergence results indicate that any global optimal solution of the approximate problem is also a global optimal solution of the original problem. Finally, two bioprocess system optimal control problems illustrate that the hybrid numerical optimization algorithm proposed by us is low time-consuming and obtains a better cost function value than the existing approaches.
机译:在论文中,我们考虑了生物过程系统的最佳控制问题。一般来说,很难分析解决这个问题。为了获得数值解决方案,将问题转换为具有一些可变界限的参数优化问题,可以使用任何传统的优化算法有效地解决,例如,改进的Broyden-Fletcher-Goldfarb-Shanno算法。然而,尽管有改进的泡沫 - 弗拉尔 - 金粪牧师算法对于本地搜索非常有效,但获得的解决方案通常是用于非凸的最佳控制问题的局部极值。为了逃离本地极值,我们开发了一种新型随机搜索方法。通过执行大量的数值实验,我们发现新型随机搜索方法在勘探中具有优异的探索,而剥削方面是糟糕的。为了提高开发,我们提出了一种混合数值优化算法来解决基于新型随机搜索方法的问题及改进的泡籽氟 - 金禾鲨综合理性。收敛结果表明,近似问题的任何全局最优解也是原始问题的全局最佳解决方案。最后,两个生物过程系统最佳控制问题说明我们提出的混合数值优化算法是低耗时的,并且比现有方法获得更好的成本函数值。

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