School of Geography and Tourism, Anhui Normal University, Wuhu, 241002, China; Engineering Technology Research Center of Resources Environment and GIS, Anhui Province, Wuhu, 241002, China.
School of Geography and Tourism, Anhui Normal University, Wuhu, 241002, China.
J Environ Manage. 2024 Sep;368:122135. doi: 10.1016/j.jenvman.2024.122135. Epub 2024 Aug 14.
Monitoring chlorophyll-a concentrations (Chl-a, μg·L) in aquatic ecosystems has attracted much attention due to its direct link to harmful algal blooms. However, there has been a lack of a cost-effective method for measuring Chl-a in small waterbodies. Inspired by the increase of smartphone photography, a Smartphone-based convolutional neural networks (CNN) framework (SCCA) was developed to estimate Chl-a in Aquatic ecosystem. To evaluate the performance of SCCA, 238 paired records (a smartphone image with a 12-color background and a measured Chl-a value) were collected from diverse aquatic ecosystems (e.g., rivers, lakes and ponds) across China in 2023. Our performance-evaluation results revealed a NS and R value of 0.90 and 0.94 in Chl-a estimation, demonstrating a satisfactory (NS = 0.84, R = 0.86) model fit in lower Chl-a (<30 μg L) conditions. SCCA had involved a realtime-update method with hyperparameter optimization technology. In comparison with the existing methods of measuring Chl-a, SCCA provides a useful screening tool for cost-effective measurement of Chl-a and has the potential for being an algal bloom screening means in small waterbodies, using Huajin River as a case study, especially under limited resources for water measurement. Overall, we highlight that the SCCA can be potentially integrated into a smartphone application in the future to diverse waterbodies in environmental management.
由于叶绿素 a(Chl-a)浓度与有害藻类水华直接相关,因此对水生生态系统中 Chl-a 浓度的监测受到了广泛关注。然而,对于小水体中的 Chl-a 测量,一直缺乏一种具有成本效益的方法。受智能手机摄影普及的启发,开发了一种基于智能手机的卷积神经网络(CNN)框架(SCCA),用于估算水生生态系统中的 Chl-a。为了评估 SCCA 的性能,我们于 2023 年从中国各地的不同水生生态系统(如河流、湖泊和池塘)收集了 238 对记录(智能手机图像与 12 种颜色背景和测量的 Chl-a 值)。我们的性能评估结果表明,在 Chl-a 估算中,NS 和 R 值分别为 0.90 和 0.94,表明在较低的 Chl-a(<30μg/L)条件下,模型拟合效果良好(NS=0.84,R=0.86)。SCCA 采用了实时更新方法和超参数优化技术。与现有的 Chl-a 测量方法相比,SCCA 为经济高效地测量 Chl-a 提供了一种有用的筛选工具,并且具有成为小水体藻类水华筛选手段的潜力,我们以划金河为例进行了研究,特别是在水资源测量有限的情况下。总的来说,我们强调 SCCA 将来有可能集成到智能手机应用程序中,用于环境管理中的各种水体。