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Prediction of dissolved oxygen content in aquaculture using Clustering-based Softplus Extreme Learning Machine

机译:基于聚类的Softplus极限学习机预测水产养殖中溶解氧含量的预测

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摘要

Accurate and efficient prediction of dissolved oxygen from time series data is critical for aquaculture that needs intelligent management and control. However, data streams of dissolved oxygen that are nonlinear and continuously generated challenge the existing prediction methods. This paper provides a novel Clustering-based Softplus Extreme Learning Machine method (CSELM) to accurately and efficiently predict dissolved oxygen change from time series data. The CSELM adopts k-medoids clustering to group the dataset into different clusters based on Dynamic Time Warping (DTW) distance, and uses a new Softplus ELM algorithm to discover a common trend in a cluster of time series pieces (within the same period) and then predict the future trend. The Softplus ELM improves ELM using a new activation function, Softplus, to solve the nonlinear and continuous problems of time series data streams and adopting partial least squares (PLS) to avoid the instability of output weight coefficients. The DTW based clustering in CSELM improves the efficiency while tolerating some data loss and uncertain outliers of sensor time series. Softplus based on PLS optimizes the performance and increases the accuracy of ELM. We have demonstrated that CSELM achieves better prediction results than PLS-ELM and ELM models in terms of accuracy and efficiency in a real-world dissolved oxygen content prediction.
机译:从时间序列数据的溶解氧准​​确和有效地预测溶解氧对于需要智能管理和控制的水产养殖至关重要。然而,溶解氧的数据流是非线性和不断产生的挑战现有预测方法的数据流。本文提供了一种新的基于聚类的SoftPluse Extentic Learning Machine方法(CSELM),以准确且有效地预测从时间序列数据的溶解氧气变化。 CSELM采用K-METOIDS集群基于动态时间翘曲(DTW)距离将数据集分组到不同的集群中,并使用新的SoftPlus ELM算法在时间序列(同一时期内)中发现共同趋势。然后预测未来的趋势。 SOFTPLUS ELM使用新的激活功能,SOFTPLUS来改善ELM,以解决时间序列数据流的非线性和连续问题,以及采用部分最小二乘(PLS)来避免输出权重系数的不稳定性。基于DTW在CSELM中的聚类可以提高效率,同时容忍传感器时间序列的一些数据丢失和不确定的异常值。 SoftPlus基于PLS优化了性能并提高了ELM的准确性。我们已经证明,CSELM在真实溶解的氧气含量预测中的准确性和效率方面比PLS-ELM和ELM模型实现了更好的预测结果。

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