Mining Data Collection, Storage, and Interpretation Method Advancements

- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 15
- File Size:
- 741 KB
- Publication Date:
- Jun 25, 2023
Abstract
Mining data collection, storage, and interpretation methods have progressively changed over time. Data collection, for the most part, has transitioned from handwritten notes and logs based on manual gauge readings to real-time data streaming through instrumentation capable of directly communicating with site-based data historians or cloud storage. Data collection and storage have had to adjust commensurately with the volume of data, leading to more complex database architecture. Geoscience interpretation methods have also changed; however, the first goals of modeling and understandings from first principles remain the same and are typically deeply rooted in historical academic work. Machine learning methods are becoming more common, available, and implemented by industry and practitioners. Despite the wide accessibility of machine learning methods, the population of geoscience subject matter experts in the underlying theory of this analysis type is limited. This form of analysis, therefore, must be conducted carefully and in conjunction with subject matter experts, on both machine learning theory and the field it is being applied to. This paper aims to provide background history on data analytics and machine learning, current methods and practices, and high-level geoscience case study examples, as well as take aways regarding the mining industry, potential pitfalls specific to geosciences, and possible perspectives on the direction of artificial intelligence in the future.
Citation
APA:
(2023) Mining Data Collection, Storage, and Interpretation Method AdvancementsMLA: Mining Data Collection, Storage, and Interpretation Method Advancements. Society for Mining, Metallurgy & Exploration, 2023.