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Optimal Control Strategy of Multi-Stage Pharmaceutical

机译:多阶段药物的最优控制策略

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The fermentation production process is the basis for ensuring product quality in pharmaceutical production. There are many variable parameters such as temperature, number of revolutions and PH value in the fermentation production process, therefore, it is difficult to describe the complex problems through precise mathematical models. Since the process has to go through four different steps, each of which is a nonlinear time-varying dynamic system, the four steps constitute a large dynamic system, and the global modeling accuracy cannot be guaranteed; and the optimization problem of the nonlinear time-varying dynamic system is also a problem. In order to solve the above problems, the paper proposes to use the BP (Back Propagation)neural network modeling method to screen the input variables of the system with large effect on the basis of the actual production data of a pharmaceutical factory. Then, based on the process parameters of the fermentation and the output of the product quality index, a multi-stage mapping model based on LSSVM (Least Squares Support Vector Machine) was established. Finally, the PSO (Particle Swarm Optimization) algorithm is used to optimize the parameters of the model.The simulation results show that the model obtained by parameter optimization can achieve better prediction results.
机译:发酵生产过程是确保药品生产中产品质量的基础。在发酵生产过程中,温度,转数和PH值等可变参数很多,因此很难通过精确的数学模型来描述复杂的问题。由于该过程必须经历四个不同的步骤,每个步骤都是一个非线性的时变动态系统,所以这四个步骤构成了一个大型的动态系统,无法保证全局建模的准确性;非线性时变动力系统的优化问题也是一个问题。为了解决上述问题,本文提出了基于制药厂的实际生产数据,采用BP神经网络建模方法对系统的输入变量进行有效筛选的方法。针对发酵的工艺参数和产品质量指标的输出,建立了基于LSSVM(最小二乘支持向量机)的多阶段映射模型,最后采用粒子群算法对粒子群进行了优化。仿真结果表明,通过参数优化获得的模型可以获得较好的预测结果。

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