题名: |
Investigation of Error Patterns in Geographical Databases |
作者: |
Dryer, David; Jacobs, Derya A.; Karayaz, Gamze; Gronbech, Chris |
关键词: |
geographic;database;invest;erns;ases;stig;ecognition;prediction;visibility;statistical |
摘要: |
The objective of the research conducted in this project is to develop a methodology to investigate the accuracy of Airport Safety Modeling Data (ASMD) using statistical, visualization, and Artificial Neural Network (ANN) techniques. Such a methodology can contribute to answering the following research questions: Over a representative sampling of ASMD databases, can statistical error analysis techniques be accurately learned and replicated by ANN modeling techniques This representative ASMD sample should include numerous airports and a variety of terrain characterizations. Is it possible to identify and automate the recognition of patterns of error related to geographical features Do such patterns of error relate to specific geographical features, such as elevation or terrain slope Is it possible to combine the errors in small regions into an error prediction for a larger region What are the data density reduction implications of this work ASMD may be used as the source of terrain data for a synthetic visual system to be used in the cockpit of aircraft when visual reference to ground features is not possible during conditions of marginal weather or reduced visibility. In this research, United States Geologic Survey (USGS) digital elevation model (DEM) data has been selected as the benchmark. Artificial Neural Networks (ANNS) have been used and tested as alternate methods in place of the statistical methods in similar problems. They often perform better in pattern recognition, prediction and classification and categorization problems. Many studies show that when the data is complex and noisy, the accuracy of ANN models is generally higher than those of comparable traditional methods. |
报告类型: |
科技报告 |