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On leaning algorithm and soft sensor model of swage disposal based on process neural network

机译:基于过程神经网络的污水处理学习算法和软传感器模型研究

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To solve the problem that water quality of sewage disposal process (such as BOD) is difficulty to measure on-line, meanwhile considering the characteristics of sewage disposal process which is related with time. A soft sensor method for water quality of swage disposal based on process neural network (PNN) was proposed in this paper. On the basis of learning algorithm based on orthogonal function basis expansion, in order to improve the learning rate, the function momentum adjustment item was introduced, moreover, genetic algorithm was used to optimize learning rate and realized learning rate adaptive adjustment algorithm. The soft-sensing model was trained and simulated by a lot of observed data, the experimental results show that the method is effective. So it can implement the real-time and close-loop control of sewage disposal process and have a broad perspective in application.
机译:为解决污水处理过程(如BOD)的水质难以在线测量的问题,同时考虑了污水处理过程的时间特性。提出了一种基于过程神经网络的污水处理水质软传感器方法。在基于正交函数基展开的学习算法的基础上,为了提高学习率,引入了函数动量调节项,并采用遗传算法对学习率进行了优化,实现了学习率自适应调节算法。通过大量的观测数据对软传感模型进行了训练和仿真,实验结果表明该方法是有效的。因此可以实现污水处理过程的实时,闭环控制,具有广阔的应用前景。

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