Determining the Invasive Plant Dynamics in Bolgoda Lake Using Open-source Data

K.A.T.T Kannangara, M.B. Shoukie, M.P.A. Nayomi, SM Dassanayake, Abn Dassanyake, C. Jayawardena
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Abstract

Identifying invasive plants (IP) and monitoring their dynamics is essential to minimize potential adverse effects on natural resources. Remote sensing (RS) could effectively cater to such requirements by acquiring data in many critical domains. Limitations of spatial resolution, spectral information, and large imagery files usually hinder retrieving, managing, and analyzing remotely sensed data. The cloud-based computational capabilities of Google Earth Engine (GEE) provide the amenities for geospatial data analysis, retrieval, and processing with access to a majority of freely available, public, multi-temporal RS data. Integrating machine learning algorithms into GEE generates a promising path toward operationalizing automated RS-based IP monitoring by overcoming traditional challenges. Use of Classification and Regression Trees (CART) classifier to generate water-vegetation classification over six years (2016-2021) with Landsat 8 and Sentinel 2 images enabled mapping the invasive plants and their dominant component of Water Hyacinth (Pontederia crassipes) across a heterogeneous landscape in Bolgoda Lake, Sri Lanka. Also, the study could develop a relatively accurate classification of the water-vegetation dynamics over the time of interest. The classified time series data indicates the annual variation of the water, vegetation, and non-vegetation classes with rapidly fluctuating seasonal cycles for the vegetation cover. These results could benefit regulatory authorities and institutions to optimize environmental resource management and prioritize eco-preservation attempts. Moreover, the findings reflect the capabilities of deep learning models to identify invasive plant behaviors even with modest spatial and spectral resolution imagery.
利用开源数据确定Bolgoda湖入侵植物动态
识别入侵植物并监测其动态对减少对自然资源的潜在不利影响至关重要。遥感可以通过获取许多关键领域的数据来有效地满足这种需求。空间分辨率、光谱信息和大型图像文件的限制通常会阻碍检索、管理和分析遥感数据。b谷歌Earth Engine (GEE)基于云的计算能力为地理空间数据分析、检索和处理提供了便利,可以访问大多数免费提供的、公开的、多时相的RS数据。通过克服传统挑战,将机器学习算法集成到GEE中,为实现基于rs的自动化IP监控提供了一条有希望的途径。利用分类与回归树(CART)分类器,利用Landsat 8和Sentinel 2图像生成六年(2016-2021)的水-植被分类,绘制了斯里兰卡Bolgoda湖异质景观中入侵植物及其主要成分水葫芦(Pontederia crassipes)的分布图。此外,该研究可以在感兴趣的时间内对水-植被动态进行相对准确的分类。分类时间序列数据显示了植被覆盖的水、植被和非植被类别的年变化,具有快速波动的季节周期。这些结果有助于监管部门和机构优化环境资源管理和优先考虑生态保护工作。此外,这些发现反映了深度学习模型即使在适度的空间和光谱分辨率图像下也能识别入侵植物的行为。
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