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Intelligent explicit model predictive control based on machine learning for microbial desalination cells

机译:基于机器学习的微生物淡化细胞智能显式模型预测控制

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Aiming at the online control problem of microbial fuel cells, this article presents a class of explicit model-predictive control methods based on the machine learning data model. The proposed method is divided into two stages: off-line design and on-line control. In the off-line design stage, (1) a feasible data set is collected by sampling the admissible state in the feasible region and solving the optimal model predictive control law for each sampling data point off-line, (2) a feasible sample discriminator is constructed based on the support vector machine-based binary classification in order to judge the whether the real sampling state is feasible, and (3) according to the feasible samples and the corresponding optimal control law, the control surface of explicit model predictive controller is constructed based on the machine learning methods. In the on-line control stage, the process data are collected in real time and the feasible control output is calculated by using the trained explicit predictive control surface. Extensive testing and comparison among the different machine learning algorithms, such as artificial neural network, extreme learning machine, Gaussian process regression, and relevance vector machine, are performed on the benchmark model of a class of microbial desalination fuel cells. These results demonstrate that the proposed explicit model predictive control method can avoid the exhausting optimization computing and is easy to realize on-line with good control performance.
机译:针对微生物燃料电池的在线控制问题,本文提出了一种基于机器学习数据模型的显式模型预测控制方法。所提出的方法分为两个阶段:离线设计和在线控制。在离线设计阶段,(1)通过对可行区域中的可允许状态进行采样并离线求解每个采样数据点的最优模型预测控制律,来收集可行数据集;(2)可行样本鉴别器构造基于支持向量机的二进制分类器,以判断实际采样状态是否可行,(3)根据可行样本和相应的最优控制律,显式模型预测控制器的控制面为基于机器学习方法构造的。在在线控制阶段,实时收集过程数据,并使用经过训练的显式预测控制面计算可行的控制输出。在一类微生物淡化燃料电池的基准模型上,对不同的机器学习算法(例如人工神经网络,极限学习机,高斯过程回归和相关矢量机)进行了广泛的测试和比较。这些结果表明,所提出的显式模型预测控制方法可以避免繁琐的优化计算,并且易于在线实现,并且具有良好的控制性能。

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