Environmental Consequences in the Neighbourhood of Rapid Unplanned Urbanisation in Bangalore City

T. V. Ramachandra, Tulika Mondal, Bharath Settur, B. Aithal
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Abstract

The knowledge of landscape dynamics aids in evolving strategies for the prudent management of natural resources to sustain ecosystem services. The availability of spatiotemporal remote sensing data with advancements in artificial intelligence (AI) and machine learning (ML) algorithms has aided in assessing the ecological status in urban environments, markedly revealing complex patterns and interactions. The current communication presents landscape dynamics in the Bengaluru Urban district from 1973 to 2022 using a supervised machine learning technique based on the Random Forest algorithm with temporal Landsat data, which showed a 51.86% increase in the built-up area and a 26.28% decrease in the green cover. Rapid unplanned urbanization after globalization and the opening up of Indian markets (in Bengaluru city) has witnessed erosion in the natural surface (waterbodies and green cover) in the neighborhood, which has been impacting the health of the environment and people. Computation of fragmentation indices showed a decline of the native green cover by 177.2 sq. km. in the southern part of the district. Likely land use changes are predicted using the Cellular Automata Markov model considering the base case scenario. The analyses revealed a further possible increase in built-up to 1536.08 sq. km, a decrease in green cover by 14.32 sq. km by 2038, and the disappearance of water bodies, which highlights the need to mitigate the adverse impacts of land use changes through planned urbanization considering the environment and livelihood of local communities. The decline of heat sinks such as water bodies and green cover would contribute to an increase in the land surface temperature (LST), which would affect the microclimate of Bengaluru, highlighting the need to sustain ecosystem services to support the livelihood of local communities. Understanding the ecological significance of diverse habitat characteristics of the urban region and the prediction of likely changes in a high degree of spatial heterogeneity would assist the decision-makers in framing appropriate policies.
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班加罗尔市无规划的快速城市化对周边环境造成的后果
景观动力学的知识有助于制定审慎管理自然资源以维持生态系统服务的战略。随着人工智能(AI)和机器学习(ML)算法的进步,时空遥感数据的可用性有助于评估城市环境中的生态状况,显着揭示复杂的模式和相互作用。当前的通信使用基于随机森林算法的监督机器学习技术和时间Landsat数据展示了1973年至2022年班加罗尔市区的景观动态,该技术显示建成区面积增加了51.86%,绿化面积减少了26.28%。在全球化和印度市场开放(班加罗尔市)之后,迅速的无计划城市化导致附近自然地表(水体和绿化)受到侵蚀,影响了环境和人民的健康。破碎化指数计算表明,本地绿化面积减少了177.2 sq。公里。在这个地区的南部。考虑基本情景,使用元胞自动机马尔可夫模型预测可能的土地利用变化。分析显示,建筑面积可能进一步增加至1536.08平方米。Km,绿化面积减少了14.32平方公里。以及水体消失,这凸显了考虑到当地社区的环境和生计,通过有计划的城市化来减轻土地利用变化的不利影响的必要性。水体和绿色覆盖等热汇的减少将导致地表温度(LST)的增加,这将影响班加罗尔的小气候,突出了维持生态系统服务以支持当地社区生计的必要性。了解城市区域不同生境特征的生态意义,预测高度空间异质性可能发生的变化,有助于决策者制定适当的政策。
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