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Prediction Based on Online Extreme Learning Machine in WWTP Application

机译:基于WWTP应用中的在线极端学习机的预测

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Predicting the plant process performance is essential for controlling in wastewater treatment plant (WWTP), which is a complex non-linear time-variant system. Extreme learning machine (ELM) is a single-hidden layer feed-forward neural network (SLFN), which randomly generates the feed-forward parameters without tuning the parameters from the input to the output layer. The output weights are calculated via the theory of Moore-Penrose generalized inverse and the minimum norm least-squares. In this paper, online extreme learning machine (Online ELM) is proposed as a predictor in WWTP, which trains the output weights and predicts the next outputs according to the real-time data collected from the process in an online manner. Furthermore, extensive comparison studies have been conducted by using other four neural network structures, including extreme learning machine, ELM with kernel, online sequential ELM (OSELM) and back propagation (BP) neural network.
机译:预测植物工艺性能对于控制废水处理厂(WWTP)是必不可少的,这是一种复杂的非线性时变体系。极端学习机(ELM)是一个单隐藏的层前馈神经网络(SLFN),它随机生成前馈参数,而不会将参数从输入调谐到输出层。输出权重通过摩尔彭罗斯广义逆和最小规范最小二乘理论来计算。在本文中,在线极端学习机(在线ELM)被提出为WWTP中的预测器,其列举输出权重,并根据以在线方式从过程中收集的实时数据预测下一个输出。此外,通过使用其他四个神经网络结构进行了广泛的比较研究,包括极端学习机,ELM,具有内核,在线顺序ELM(OSELM)和后传播(BP)神经网络。

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