AI-Driven Strategies for Reducing Deforestation

Rakibul Hasan, Syeda Farjana Farabi, Md Kamruzzaman, Md Khokan Bhuyan, Sadia Islam Nilima, Atia Shahana
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Abstract

Recent advancements in data science, coupled with the revolution in digital and satellite technology, have catalyzed the potential for artificial intelligence (AI) applications in forestry and wildlife sectors. Recognizing the critical importance of addressing land degradation and promoting regeneration for climate regulation, ecosystem services, and population well-being, there is a pressing need for effective land use planning and interventions. Traditional regression approaches often fail to capture underlying drivers' complexity and nonlinearity. In response, this research investigates the efficacy of AI in monitoring, predicting, and managing deforestation and forest degradation compared to conventional methods, with a goal to bolster global forest conservation endeavors. Employing a fusion of satellite imagery analysis and machine learning algorithms, such as convolutional neural networks and predictive modelling, the study focuses on key forest regions, including the Amazon Basin, Central Africa, and Southeast Asia. Through the utilization of these AI-driven strategies, critical deforestation hotspots have been successfully identified with an accuracy surpassing 85%, markedly higher than traditional methods. This breakthrough underscores the transformative potential of AI in enhancing the precision and efficiency of forest conservation measures, offering a formidable tool for combating deforestation and degradation on a global scale.
人工智能驱动的减少毁林战略
数据科学的最新进展,加上数字和卫星技术的革命,催化了人工智能(AI)在林业和野生动物领域的应用潜力。由于认识到解决土地退化和促进再生对气候调节、生态系统服务和人口福祉的至关重要性,因此迫切需要有效的土地利用规划和干预措施。传统的回归方法往往无法捕捉潜在驱动因素的复杂性和非线性。因此,与传统方法相比,本研究调查了人工智能在监测、预测和管理毁林和森林退化方面的功效,旨在促进全球森林保护工作。这项研究融合了卫星图像分析和机器学习算法,如卷积神经网络和预测建模,重点关注亚马逊流域、中非和东南亚等主要森林地区。通过利用这些人工智能驱动的策略,成功确定了关键的森林砍伐热点,准确率超过 85%,明显高于传统方法。这一突破凸显了人工智能在提高森林保护措施的精确度和效率方面的变革潜力,为在全球范围内打击森林砍伐和退化提供了一个强大的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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