As environmental systems become more complex and climate change effects speed up, there is a growing need for more flexible and data-based methods to manage resources sustainably. Reinforcement Learning (RL), which is good at making decisions step by step when things are uncertain, presents a strong option for improving how we monitor and control the environment. This study looks at how RL can be used in environmental monitoring to better predict, evaluate, and manage key resources like water, forests, and air quality. By combining RL with sensor networks, remote sensing tools, and ecological models, the system can keep learning from changing environmental conditions. Examples show that using RL improves the ability to spot problems, makes better use of resources, and helps take actions before issues get worse. The results show that RL can help make environmental governance more adaptable, improve the ability of systems to handle challenges, and move toward more sustainable goals. Future work will focus on solving issues like having not enough data, making sure the models are clear and understandable, and considering ethical issues to ensure that RL is used responsibly and openly in real-world environmental decisions.
V et al. (Tue,) studied this question.