Key Laboratory for Water and Sediment Sciences of Ministry of Education, School of Environment, Beijing Normal University, Beijing, China.
Environ Manage. 2013 May;51(5):1044-54. doi: 10.1007/s00267-013-0029-5. Epub 2013 Mar 21.
Accurate and reliable forecasting is important for the sustainable management of ecosystems. Chlorophyll a (Chl a) simulation and forecasting can provide early warning information and enable managers to make appropriate decisions for protecting lake ecosystems. In this study, we proposed a method for Chl a simulation in a lake that coupled the wavelet analysis and the artificial neural networks (WA-ANN). The proposed method had the advantage of data preprocessing, which reduced noise and managed nonstationary data. Fourteen variables were included in the developed and validated model, relating to hydrologic, ecological and meteorologic time series data from January 2000 to December 2009 at the Lake Baiyangdian study area, North China. The performance of the proposed WA-ANN model for monthly Chl a simulation in the lake ecosystem was compared with a multiple stepwise linear regression (MSLR) model, an autoregressive integrated moving average (ARIMA) model and a regular ANN model. The results showed that the WA-ANN model was suitable for Chl a simulation providing a more accurate performance than the MSLR, ARIMA, and ANN models. We recommend that the proposed method be widely applied to further facilitate the development and implementation of lake ecosystem management.
准确可靠的预测对于生态系统的可持续管理至关重要。叶绿素 a(Chl a)的模拟和预测可以提供预警信息,使管理者能够为保护湖泊生态系统做出适当的决策。在本研究中,我们提出了一种将小波分析和人工神经网络(WA-ANN)相结合的湖泊 Chl a 模拟方法。所提出的方法具有数据预处理的优势,可减少噪声并管理非平稳数据。该模型包含了 14 个变量,涉及 2000 年 1 月至 2009 年 12 月华北白洋淀研究区的水文、生态和气象时间序列数据。将所提出的 WA-ANN 模型与多元逐步线性回归(MSLR)模型、自回归综合移动平均(ARIMA)模型和常规 ANN 模型进行了比较,以评估其在湖泊生态系统中对逐月 Chl a 模拟的性能。结果表明,WA-ANN 模型适用于 Chl a 模拟,其性能优于 MSLR、ARIMA 和 ANN 模型。我们建议广泛应用该方法,以进一步促进湖泊生态系统管理的发展和实施。