An Integrated Neural Network and Machine Learning Model for Multi-Dimensional Mineral Resource Assessment
 
    
    - Organization:
- The Australasian Institute of Mining and Metallurgy
- Pages:
- 16
- File Size:
- 1309 KB
- Publication Date:
- Jan 1, 1995
Abstract
The potential of the developed multi-dimensional analysis system to assist  interpretation from large data sets through derived digital mapping  models is presented accompanied by preliminary results. The concept  learning model is original and its application general. Applications exist  in general science, engineering, earth resource management and  economics. The developed system incorporates advances in machine  learning, neural networks, object-oriented software engineering,  knowledge representation and fuzzy logic. ' The specific application presented involves automatic earth resource  modelling and assessment involving geological theories of mineral  potential. The developed system functions as a new and powerful mineral  exploration tool, To date the model has been trialled on an earth resource  database and several published data sets. A more general potential  application is knowledge discovery within databases. The specific theory  that is tested in the experimental results is the nature of the cause-effect  relationship between the hypothesised geological causes and the  measured effects within a previously published test survey. Also integrated here are a neurophysiological cerebellar model of  human learning, a new concept similarity measure for pattern  recognition, modelled components to explain human concept formation  through knowledge discovery and a means of permanent  representation.The implementation is as a new artificial neural network  architecture functioning as a hybrid expert system. Understanding of programmed concept learning is extended through  the model. Also established is a basis for a new approach to multivariate  data analysis. Spatial analysis for decision support is integrated over  many dimensions, relationships, data types and data modes. Application of the developed methodology and system adds value to  data bases. Discovered knowledge is represented as new generalisations,  interpolations, classification hierarchies, aggregations and associations  within a dynamic, maintainable and reusable integrated knowledge  framework. New digital knowledge products and intelligent access follow.  Permanently stored, maintainable, easily accessible and discovered  knowledge improves decisions through extended hypothesis testing,  spatial data analysis and inferencing, prediction, logical deductions and  explanations.
Citation
APA: (1995) An Integrated Neural Network and Machine Learning Model for Multi-Dimensional Mineral Resource Assessment
MLA: An Integrated Neural Network and Machine Learning Model for Multi-Dimensional Mineral Resource Assessment. The Australasian Institute of Mining and Metallurgy, 1995.
