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Soft - sensing modeling based on ABC - MLSSVM inversion for marine low - temperature alkaline protease MP fermentation process

机译:基于ABC - MLSSVM载体对海洋低温碱性蛋白酶MP发酵过程的软感应建模

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Aiming at the characteristics of nonlinear, multi-parameter, strong coupling and difficulty in direct on-line measurement of key biological parameters of marine low-temperature protease fermentation process, a soft-sensing modeling method based on artificial bee colony (ABC) and multiple least squares support vector machine (MLSSVM) inversion for marine protease fermentation process is proposed. Firstly, based on the material balance and the characteristics of the fermentation process, the dynamic “grey box” model of the fed-batch fermentation process of marine protease is established. The inverse model is constructed by analyzing the inverse system existence and introducing the characteristic information of the fermentation process. Then, the inverse model is identified off-line using MLSSVM. Meanwhile, in order to reduce the model error, the ABC algorithm is used to correct the inverse model. Finally, the corrected inverse model is connected in series to the marine alkaline protease MP fermentation process to form a composite pseudo-linear system, thus, real-time on-line prediction of key biological parameters in fermentation process can be realized. Taking the alkaline protease MP fermentation process as an example, the simulation results demonstrate that the soft-sensing modeling method can solve the real-time prediction problem of key biological parameters in the fermentation process on-line, and has higher accuracy and generalization ability than the traditional soft-sensing method of support vector machine. The research provides a new method for soft-sensing modeling of key biological parameters in fermentation process, which can be extended to soft-sensing modeling of general nonlinear systems.
机译:瞄准非线性,多参数,强耦合和直接在线测量的非线性,多参数,强耦合和难度的特点,基于人造蜜蜂菌落(ABC)和多重的软感测模型方法提出了母蛋白蛋白酶发酵过程的最小二乘支持向量机(MLSSVM)反转。首先,基于材料平衡和发酵过程的特性,建立了母蛋白酶的送餐批量发酵过程的动态“灰盒”模型。通过分析逆系统存在并引入发酵过程的特征信息来构建逆模型。然后,使用MLSSVM识别逆模型。同时,为了减少模型误差,ABC算法用于校正逆模型。最后,校正的逆模型串联连接到海洋碱性蛋白酶MP发酵过程中以形成复合伪线性系统,因此可以实现发酵过程中的关键生物参数的实时在线预测。以碱性蛋白酶MP发酵过程为例,模拟结果表明,软感测建模方法可以解决发酵过程中的主要生物参数的实时预测问题,具有更高的准确性和泛化能力传统的支持向量机软感测方法。该研究提供了一种发酵过程中的关键生物参数的软感测的新方法,这可以扩展到一般非线性系统的软感测。

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