Stockholm university

Research project Optimization of Agricultural Management for Soil Carbon Sequestration

Global climate change is one of the greatest challenges facing humanity. Utilizing the carbon-lowering capacity of global soils has great potential to mitigate such changes.

jordkolsekvestering

The project "Optimization of agricultural management for carbon sequestration using deep reinforcement learning and large-scale simulations" aims to develop an intelligent agricultural management system with deep reinforcement learning (RL) and large-scale soil and crop simulations.

Global climate change is one of the biggest challenges facing humanity. Leveraging the carbon sink capacity of global soils has great potential to mitigate such change. The project entitled “Optimization of Agricultural Management for Soil Carbon Sequestration Using Deep Reinforcement Learning and Large-Scale Simulations” aims to develop an intelligent agricultural management system using deep reinforcement learning (RL) and large-scale soil and crop simulations. To achieve this, a simulator will be built for modelling, quantifying and predicting the complex soil-water-plant-atmosphere interactions, using high-performance computing platforms. This is needed because soil carbon sequestration in croplands has tremendous potential to help mitigate climate change; however, it is challenging to develop management practices for optimal carbon sequestration and crop yield solutions.

Project members

Project managers

Zahra Kalantari

Forskare

Department of Physical Geography
Zahra Kalantari

Members

Georgia Destouni

Professor i hydrologi

Department of Physical Geography
Gia Destouni

Zahra Kalantari

Forskare

Department of Physical Geography
Zahra Kalantari