Leveraging Autonomous Data Pipelines for ESG Reporting in Mining Operations (Safety, Health, Environmental, Social)
Authors: Urvangkumar Kothari
DOI: https://doi.org/10.37082/IJIRMPS.v11.i4.232625
Short DOI: https://doi.org/g9t995
Country: United States
Full-text Research PDF File:
View |
Download
Abstract: Environmental, Social, and Governance (ESG) reporting has become one of the crucial aspects of sustainable mining activities. The requirement of a real-time high fidelity ESG data has never been higher as stakeholders place increasing emphasis on transparency and regulatory requirements become rigorous. Outdated approaches that were based on manual data gathering and hindsight analysis can no longer be used. The following paper introduces an in-depth perspective on how autonomous data pipelines can be utilized to support on-demand ESG monitoring and reporting. We speak about the integration of cloud-based IoT platforms, edge computing, real time stream processing and machine learning tools. An example of use case dedicated to predictive safety and health monitoring is provided to illustrate real-life applications. The connectivity and infrastructure automation as an implementation issue are analyzed and strategic measures are suggested. The suggested architecture is a flexible, smart design of the structure of the contemporary mining company, which expects to enhance the integrity of its operations, decrease the risk, and address the ESG compliance challenge.
Keywords: ESG reporting, autonomous data pipelines, mining, IoT, edge computing, machine learning, health and safety, environmental monitoring.
Paper Id: 232625
Published On: 2023-07-01
Published In: Volume 11, Issue 4, July-August 2023
All research papers published in this journal/on this website are openly accessible and licensed under