Razak Faculty of Technology and Informatics, Universiti Teknologi Malaysia, Kuala Lumpur, Malaysia.
National Hydrographic Centre, Pulai Indah, Selangor, Malaysia.
PLoS One. 2021 Sep 23;16(9):e0257761. doi: 10.1371/journal.pone.0257761. eCollection 2021.
Integrating Multibeam Echosounder (MBES) data (bathymetry and backscatter) and underwater video technology allows scientists to study marine habitats. However, use of such data in modeling suitable seagrass habitats in Malaysian coastal waters is still limited. This study tested multiple spatial resolutions (1 and 50 m) and analysis window sizes (3 × 3, 9 × 9, and 21 × 21 cells) probably suitable for seagrass-habitat relationships in Redang Marine Park, Terengganu, Malaysia. A maximum entropy algorithm was applied, using 12 bathymetric and backscatter predictors to develop a total of 6 seagrass habitat suitability models. The results indicated that both fine and coarse spatial resolution datasets could produce models with high accuracy (>90%). However, the models derived from the coarser resolution dataset displayed inconsistent habitat suitability maps for different analysis window sizes. In contrast, habitat models derived from the fine resolution dataset exhibited similar habitat distribution patterns for three different analysis window sizes. Bathymetry was found to be the most influential predictor in all the models. The backscatter predictors, such as angular range analysis inversion parameters (characterization and grain size), gray-level co-occurrence texture predictors, and backscatter intensity levels, were more important for coarse resolution models. Areas of highest habitat suitability for seagrass were predicted to be in shallower (<20 m) waters and scattered between fringing reefs (east to south). Some fragmented, highly suitable habitats were also identified in the shallower (<20 m) areas in the northwest of the prediction models and scattered between fringing reefs. This study highlighted the importance of investigating the suitable spatial resolution and analysis window size of predictors from MBES for modeling suitable seagrass habitats. The findings provide important insight on the use of remote acoustic sonar data to study and map seagrass distribution in Malaysia coastal water.
将多波束回声测深仪 (MBES) 数据(水深和反向散射)和水下视频技术相结合,可使科学家研究海洋生境。然而,在马来西亚沿海水域的模型中使用这些数据来模拟合适的海草生境仍然有限。本研究测试了多个空间分辨率(1 米和 50 米)和分析窗口大小(3×3、9×9 和 21×21 个单元格),这些分辨率和窗口大小可能适合马来西亚登嘉楼州热浪岛海洋公园的海草生境关系。应用最大熵算法,使用 12 个水深和反向散射预测因子,共开发了 6 个海草栖息地适宜性模型。结果表明,精细和粗糙空间分辨率数据集都可以产生高精度 (>90%) 的模型。然而,来自较粗分辨率数据集的模型显示出不同分析窗口大小的不一致的栖息地适宜性地图。相比之下,来自精细分辨率数据集的栖息地模型显示出三种不同分析窗口大小的相似栖息地分布模式。在所有模型中,水深都是最具影响力的预测因子。反向散射预测因子,如角域分析反转参数(特征和粒度)、灰度共生纹理预测因子和反向散射强度水平,对粗分辨率模型更为重要。预测的海草生境适宜性最高的区域预计在较浅 (<20 米) 的水域中,并散布在边缘礁 (东至南) 之间。在预测模型的西北方向较浅 (<20 米) 的区域和边缘礁之间,还发现了一些分散的、高度适宜的生境。本研究强调了调查 MBES 预测因子的适宜空间分辨率和分析窗口大小的重要性,以便对适宜的海草生境进行建模。研究结果为利用远程声学声纳数据研究和绘制马来西亚沿海水域海草分布提供了重要的见解。