A Seasonal-Trend Decomposition and Single Dendrite Neuron-Based Predicting Model for Greenhouse Time Series

Qianqian Li, Houtian He, Chenxi Xue, Tongyan Liu, Shangce Gao*

*この論文の責任著者

研究成果: ジャーナルへの寄稿学術論文査読

1 被引用数 (Scopus)

抄録

The greenhouse farming always uses sensors to monitor the dynamic climate parameters and generate time-related data. The prediction of these time series contributes a lot to greenhouse cultivation. Plenty of works concentrate on the chaotic characteristics of the time series and propose many machine learning-based models. However, the intrinsic features of them are ignored, i.e., seasonality and tendency. In this study, we propose a novel predicting model SDN that utilizes the Seasonal-trend Decomposition as preprocessing method and the Single Dendrite Neuron as nonlinear fitter to tackle greenhouse time series predictions. The decomposition gives SDN a flexibility that can process each component separately, while the well-designed neuron structure provides SDN with time efficiency. Accordingly, the experimental results show that the proposed SDN not only beats the widely used machine learning-based models, but also shows the robustness considering customized parameters and outliers in datasets, which enhance the possibility for SDN to be employed in the practical usage scenarios.

本文言語英語
ページ(範囲)427-440
ページ数14
ジャーナルEnvironmental Modeling and Assessment
29
3
DOI
出版ステータス出版済み - 2024/06

ASJC Scopus 主題領域

  • 環境科学一般

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