Artificial intelligence (AI) is rapidly emerging as an important tool in environmental crime enforcement. Environmental crimes, such as illegal logging, mining, fishing, wildlife trafficking and waste trafficking, are becoming increasing complex and transnational.

In many environmental crime hotspots, enforcement bodies must monitor vast and remote areas, analyze fragmented and incomplete data, and respond to adaptive criminal networks with limited staff and infrastructure. AI offers a way to extend capacity – enabling large-scale data processing, pattern detection and more targeted prioritization of enforcement actions.

Yet early experience shows that the main barriers to effective AI use are structural rather than technical. In many cases, these structural factors determine success or failure more decisively than the sophistication of the tools themselves.

Case studies show that AI can deliver tangible benefits when it is aligned with operational realities. It is successful when its applications are problem-orientated, embedded in existing workflows, supported by human oversight and based on sufficiently robust data. AI alone cannot capture the local context, legal nuance and situational interpretation on which enforcement decisions often depend. Systems that enable human review and support decision-making are therefore more reliable and actionable.

Environmental crime poses several strategic challenges for the use of AI, leading to a clear conclusion: effective use of AI in environmental crime enforcement depends less on advancing technology and more on strengthening the underlying systems that enable it to function. This includes investing in data infrastructure, building institutional capacity, aligning tools with clearly defined problems and developing effective governance frameworks.