College of Geological Engineering and Geomatics, Chang'an University, Xi'an 710064, China.
School of Land Engineering, Chang'an University, Xi'an 710064, China.
Harmful Algae. 2022 Mar;113:102189. doi: 10.1016/j.hal.2022.102189. Epub 2022 Jan 28.
Cyanobacterial Harmful Algae Blooms (CyanoHABs) in the eutrophic lakes have become a global environmental and ecological problem. In this study, a CNN-LSTM integrated model for predicting the CyanoHABs area was proposed and applied to the prediction of the CyanoHABs area in Taihu Lake. Firstly, the time-series data of the CyanoHABs area in Taihu Lake for 20 years were accurately obtained using MODIS images from 2000 to 2019 based on the FAI method. Then, a principal component analysis was performed on the daily meteorological data for the month before the outbreak of CyanoHABs in Taihu Lake from 2000 to 2019 to determine the meteorological factors closely related to the outbreak of CyanoHABs. Finally, the features of CyanoHABs area and meteorological data were extracted by Convolutional Neural Networks (CNN) model and used as the input of Long Short Term Memory Network (LSTM). An integrated CNN-LSTM model approach was constructed for predicting the CyanoHABs area. The results show that high R (0.91) and low mean relative error (17.42%) verified the validity of the FAI index to extract the CyanoHABs area in Taihu Lake; the meteorological factors closely related to the CyanoHABs outbreak in Taihu Lake are mainly temperature, relative humidity, wind speed, and precipitation; the CNN-LSTM integrated model has better prediction effect for both training and test sets compared with the CNN and LSTM models. This study provides an effective method for predicting temporal changes in the CyanoHABs area and offers new ideas for scientific and effective regulation of inland water safety.
富营养化湖泊中的蓝藻水华(CyanoHABs)已经成为全球性的环境和生态问题。本研究提出了一种用于预测 CyanoHABs 面积的 CNN-LSTM 集成模型,并将其应用于太湖 CyanoHABs 面积的预测。首先,基于 FAI 方法,利用 2000 年至 2019 年 MODIS 图像准确获取了太湖 CyanoHABs 面积 20 年的时间序列数据。然后,对 2000 年至 2019 年太湖 CyanoHABs 爆发前一个月的逐日气象数据进行主成分分析,确定与 CyanoHABs 爆发密切相关的气象因素。最后,通过卷积神经网络(CNN)模型提取 CyanoHABs 面积和气象数据特征,并将其作为长短期记忆网络(LSTM)的输入。构建了一种集成 CNN-LSTM 的模型方法来预测 CyanoHABs 面积。结果表明,高 R(0.91)和低平均相对误差(17.42%)验证了 FAI 指数提取太湖 CyanoHABs 面积的有效性;与太湖 CyanoHABs 爆发密切相关的气象因素主要是温度、相对湿度、风速和降水;CNN-LSTM 集成模型对训练集和测试集的预测效果均优于 CNN 和 LSTM 模型。本研究为预测 CyanoHABs 面积的时空变化提供了一种有效的方法,为内陆水安全的科学有效调控提供了新的思路。