ISEMP Data Management System
Support entire workflow Based on required functions Based on understanding of the data ISEMP Data Management System
ISEMP work flow - Programmatic coordination - Develop and test sampling designs - Develop and test field protocols - Develop and test metrics or indicators - Design and implement experiments - Develop and test evaluation tools * DM system should support development and testing of sampling designs, protocols, and metrics
Functional Requirements Programmatic Needs (regional) –Enforce data standards –Long-term storage and retrieval –Data integration –Web-based data distribution –Regional analyses Data Generator Needs (local) –Validation at data entry –Summarize raw data –Ad-hoc analysis –Submittal to central warehouse * DM system must support both regional and local needs
ISEMP Data Management System
The ISEMP Data Any information that may help us understand status & trends of listed salmonids, to understand effectiveness of restoration projects, and to understand the processes that drive status, trend, and effectiveness. Geographic scope includes three ISEMP pilot basins * Broad contextual scope * Focus on small geographic area (pilot study)
Generic Structure for Empirical Data Time Stamp Location Protocol Object Attribute Value Units Observation Latitude Longitude Site Name Sub Basin Watershed Stream Distance Location Author Reference Date Version Narrative Protocol Class Sub Class Taxa Object * Time, location, and protocol are characteristics of an observation
How did we get started? By compiling Excel spreadsheets –(a process called data normalization)
Non-normalized
1st Normal Form
2 nd Normal Form * Normalizing data facilitates data analysis
Generalized Data Structure
ISEMP Data Management System
ATM’s (distributed data templates) Enforce data format Validate data at data entry Summarize data Support ad-hoc analysis Submittal to central warehouse
Smolt Trap ATM
Fish Distribution Over Time
Fulton Condition
Species Codes
Habitat ATM
Conclusions Support development and testing of sampling designs, protocols, and metrics Support both regional and local needs Broad contextual scope Focus on small geographic area Time, location, and protocol are characteristics of an observation Normalizing data facilitates data analysis
Questions?
Site Protocol Statistical Design Data Collection Event Stream Habitat Fish Water Quality Aquatic Resources Schema MetadataObservation Class