Litcius/Paper detail

Explainable Artificial Intelligence (XAI) Empowered Digital Twin on Soil Carbon Emission Management Using Proximal Sensing

Di An, YangQuan Chen

202312 citationsDOI

Abstract

Digital Twin can be developed to represent a certain soil carbon emissions ecosystem that takes into account various parameters such as the type of soil, vegetation, climate, human interaction, and many more. With the help of sensors and satellite imagery, real-time data can be collected and fed into the digital model to simulate and predict soil carbon emissions. However, the lack of interpretable prediction results and transparent decision-making results makes Digital Twin unreliable, which could damage the management process. Therefore, we proposed an explainable artificial intelligence (XAI) empowered Digital Twin for better managing soil carbon emissions through AI-enabled proximal sensing. We validated our XAIoT-DT components by analyzing real-world soil carbon content datasets. The preliminary results demonstrate that our framework is a reliable tool for managing soil carbon emissions with relatively high prediction results at a low cost.

Topics & Concepts

Soil carbonEnvironmental scienceVegetation (pathology)Carbon fibersProcess (computing)Computer scienceRemote sensingEcosystemSoil scienceSoil waterEcologyGeologyAlgorithmMedicineOperating systemPathologyBiologyComposite numberDigital Transformation in IndustryExplainable Artificial Intelligence (XAI)Impact of AI and Big Data on Business and Society