A Data Warehouse for Weather Information: A Pattern Recognition Solution for Climatic Conditions in México

Data warehouse related technologies, allows to extract, group and analyze historical data in order to identify information valuable to decision making processes. In this paper the implementation of a weather data warehouse (WDW) to store Mexico’s weather variables is presented. The weather variables data were provided by the Mexican Institute for Water Technologies (IMTA), the IMTA does research, development, adaptation, human resource formation and technology transfer to improve the Mexico’s water management, and in this way contribute to the sustainable development of Mexico. The implemented WDW contains two dimension tables (one time dimension table and, one geographical dimension table) and one fact table (that stores the data values for weather variables). The time dimension table spans over ten years from 1980 to 1990. The geographical dimension table involves many Mexico’s hydrological zones and comes from 5551 measuring stations. The WDW enables (through the dimensions navigation) the identification of weather patterns that would be useful for: a) agriculture politics definition; b) climatic change research; and c) contingency plans over weather extreme conditions. Even it is well known, but it is important to mention, that the data warehouse paradigm (in many cases) is better to derivate knowledge from the data in comparison to the database paradigm, a fact that was confirmed through the WDW exploitation.

[1]  Ralph Kimball,et al.  The Data Warehouse Lifecycle Toolkit: Expert Methods for Designing, Developing and Deploying Data Warehouses with CD Rom , 1998 .

[2]  Sunita Sarawagi,et al.  Modeling multidimensional databases , 1997, Proceedings 13th International Conference on Data Engineering.

[3]  Panos Vassiliadis,et al.  Modeling multidimensional databases, cubes and cube operations , 1998, Proceedings. Tenth International Conference on Scientific and Statistical Database Management (Cat. No.98TB100243).