Assessing the Potential of AI for Spatially Sensitive Nature-Related Financial Risks

Steven Reece, Emma O donnell, Felicia Liu, Joanna Wolstenholme, Frida Arriaga, Giacomo Ascenzi, Richard Pywell
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Abstract

There is growing recognition among financial institutions, financial regulators and policy makers of the importance of addressing nature-related risks and opportunities. Evaluating and assessing nature-related risks for financial institutions is challenging due to the large volume of heterogeneous data available on nature and the complexity of investment value chains and the various components' relationship to nature. The dual problem of scaling data analytics and analysing complex systems can be addressed using Artificial Intelligence (AI). We address issues such as plugging existing data gaps with discovered data, data estimation under uncertainty, time series analysis and (near) real-time updates. This report presents potential AI solutions for models of two distinct use cases, the Brazil Beef Supply Use Case and the Water Utility Use Case. Our two use cases cover a broad perspective within sustainable finance. The Brazilian cattle farming use case is an example of greening finance - integrating nature-related considerations into mainstream financial decision-making to transition investments away from sectors with poor historical track records and unsustainable operations. The deployment of nature-based solutions in the UK water utility use case is an example of financing green - driving investment to nature-positive outcomes. The two use cases also cover different sectors, geographies, financial assets and AI modelling techniques, providing an overview on how AI could be applied to different challenges relating to nature's integration into finance. This report is primarily aimed at financial institutions but is also of interest to ESG data providers, TNFD, systems modellers, and, of course, AI practitioners.
评估人工智能对空间敏感的自然金融风险的潜力
金融机构、金融监管机构和决策者日益认识到应对与自然相关的风险和机遇的重要性。对金融机构而言,评估与自然相关的风险具有挑战性,这是因为有关自然的异构数据量巨大,而且投资价值链和各组成部分与自然的关系错综复杂。利用人工智能(AI)可以解决数据分析和复杂系统分析的双重问题。我们要解决的问题包括:利用发现的数据填补现有数据缺口、不确定性条件下的数据估算、时间序列分析和(接近)实时更新。本报告以巴西牛肉供应用例和水务用例这两个不同用例的模型为基础,介绍了潜在的人工智能解决方案。我们的两个使用案例涵盖了可持续金融的广泛视角。巴西养牛业使用案例是绿化金融的一个范例--将与自然相关的考虑因素纳入主流金融决策,使投资从历史记录不佳和不可持续运营的行业中转移出来。在英国水务案例中,部署基于自然的解决方案是绿色融资的一个例子--推动投资以取得对自然积极的成果。这两个案例还涵盖了不同的行业、地域、金融资产和人工智能建模技术,概述了如何将人工智能应用于与自然融入金融相关的不同挑战。本报告主要面向金融机构,但 ESG 数据提供商、TNFD、系统建模人员,当然还有人工智能从业人员也会感兴趣。
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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