Obreja Cristian Dragos, Buruiana Daniela Laura, Mereuta Elena, Muresan Alina, Ceoromila Alina Mihaela, Ghisman Viorica, Axente Roxana Elena
Faculty of Engineering, Interdisciplinary Research Centre in the Field of Eco-Nano Technology and Advance Materials CC-ITI, "Dunarea de Jos" University of Galati, Galati, Romania.
Department of Mechanical Engineering, "Dunarea de Jos" University of Galati, 47 Domneasca, 800008, Galati, Romania.
Plant Methods. 2023 Jun 24;19(1):61. doi: 10.1186/s13007-023-01042-w.
Common reed (Phragmites australis L.) is a highly productive wetland plant and a possible valuable resource of renewable biomass worldwide. For a sustainable management the exploitation of reed is beneficial because the increasing demand for sustainable biomass which presents reed bed areas and wetlands. Knowing the properties of plant biomass obtained from reeds is essential both for the effect on combustion equipment and for the impact on the environment. Brates Lake, situated in Galati, Romania is a natural watershed with reed plantations.
We used the convolutional neural network method combined with the cropped image techniques represent a powerful tool for high-precision image-based biomass detection in lake areas. The study aimed to investigate the morphological and chemical parameters through SEM-EDX analysis and pH, conductivity, nitrate anion, nitrite anion, total nitrogen, sulphate anion, sulphide anion, phosphate anion concentrations were determined from reed extract. The samples have a moderately acidic reaction pH 4.91-4.98. The number of soluble salts in the reed extract is in the range of 3.24-4.70 g/L, the values are within normal limits, providing the plant with the necessary nutrients.
This is the first time that neural networks are used for the detection and prediction of areas at risk for biodiversity (reduction of water gloss until it disappears, imbalances caused by keeping reeds dry in water) caused by the aggressive and uncontrolled growth of reeds.
芦苇(Phragmites australis L.)是一种高产的湿地植物,可能是全球可再生生物质的宝贵资源。为了可持续管理,芦苇的开发利用是有益的,因为对可持续生物质的需求不断增加,这对芦苇床区域和湿地构成了压力。了解芦苇植物生物质的特性对于其对燃烧设备的影响以及对环境的影响都至关重要。位于罗马尼亚加拉茨的布拉泰斯湖是一个有芦苇种植园的天然流域。
我们使用卷积神经网络方法结合裁剪图像技术,这是一种用于湖区基于图像的高精度生物质检测的强大工具。该研究旨在通过扫描电子显微镜-能谱分析(SEM-EDX)研究形态和化学参数,并测定芦苇提取物中的pH值、电导率、硝酸根阴离子、亚硝酸根阴离子、总氮、硫酸根阴离子、硫离子、磷酸根阴离子浓度。样品具有中等酸性反应,pH值为4.91 - 4.98。芦苇提取物中的可溶性盐含量在3.24 - 4.70 g/L范围内,这些值在正常范围内,为植物提供了必要的养分。
这是首次将神经网络用于检测和预测因芦苇的过度和无控制生长而导致的生物多样性风险区域(水光泽度降低直至消失,水中芦苇干燥导致的失衡)。