Artificial intelligence in environmental conservation: evaluating cyber risks and opportunities for sustainable practices

Uwaga Monica Adanma, Emmanuel Olurotimi Ogunbiyi
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Abstract

This study explores the integration of Artificial Intelligence (AI) into environmental conservation efforts, aiming to assess AI's transformative potential in enhancing sustainability practices. Employing a systematic literature review and content analysis, the research scrutinizes peer-reviewed articles, reports, and case studies from 2014 to 2024, focusing on the application of AI in biodiversity preservation, climate change mitigation, and sustainable resource management. The methodology hinges on a comprehensive search strategy, adhering to strict inclusion and exclusion criteria to ensure the relevance and quality of the literature analyzed. Key findings reveal that AI significantly contributes to environmental conservation by optimizing resource management, improving predictive analytics for biodiversity conservation, and facilitating advanced monitoring and analysis to mitigate environmental impacts. However, the deployment of AI technologies also presents ethical and cybersecurity challenges, necessitating robust frameworks for responsible use. The study underscores the importance of interdisciplinary collaboration, stakeholder engagement, and the development of ethical AI solutions to address these challenges effectively. Finally, AI holds immense promise for advancing environmental sustainability efforts. Strategic recommendations include fostering partnerships across disciplines, prioritizing ethical considerations in AI development, and enhancing AI literacy among conservationists. Future research directions emphasize the need for innovative AI applications in conservation and addressing the socio-technical complexities of integrating AI into environmental strategies. This study contributes valuable insights into leveraging AI for a sustainable and resilient future, highlighting the critical balance between technological advancements and ethical considerations. Keywords: Artificial Intelligence (AI), Environmental Conservation, Sustainability, Cyber Risks.
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环境保护中的人工智能:评估可持续做法的网络风险和机遇
本研究探讨了将人工智能(AI)融入环境保护工作的问题,旨在评估人工智能在加强可持续发展实践方面的变革潜力。通过系统的文献综述和内容分析,本研究仔细研究了 2014 年至 2024 年间同行评议的文章、报告和案例研究,重点关注人工智能在生物多样性保护、气候变化减缓和可持续资源管理中的应用。研究方法以全面的搜索策略为基础,严格遵守纳入和排除标准,以确保所分析文献的相关性和质量。主要研究结果表明,人工智能通过优化资源管理、改进生物多样性保护的预测分析以及促进高级监测和分析以减轻环境影响,极大地促进了环境保护。然而,人工智能技术的部署也带来了道德和网络安全方面的挑战,因此有必要为负责任的使用制定强有力的框架。这项研究强调了跨学科合作、利益相关者参与以及开发符合伦理的人工智能解决方案对于有效应对这些挑战的重要性。最后,人工智能在推动环境可持续发展方面大有可为。战略建议包括促进跨学科合作,在人工智能开发中优先考虑伦理因素,以及提高自然保护工作者的人工智能素养。未来的研究方向强调需要在自然保护中创新性地应用人工智能,并解决将人工智能融入环境战略的社会技术复杂性问题。这项研究为利用人工智能实现可持续和有韧性的未来提供了宝贵的见解,同时强调了技术进步与伦理考虑之间的关键平衡。关键词人工智能(AI) 环境保护 可持续性 网络风险
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