42 research outputs found
Analysis and Review of NASA Earth Science Metadata: How Automation Plays a Role
The Analysis and Review of the Common Metadata Repository (CMR ARC) Team reviews all EOSDIS metadata. The teams objective is to achieve consistency, correctness, and completeness for all metadata records in the CMR, as well as improve the discoverability of NASA's Earth Science data within the CMR framework. This work is currently being completed at Marshall Space Flight Center. CMR makes a single discovery point possible for NASA's Earth Science data users. The CMR team, in collaboration with three other core metadata teams, contributes to the stewardship of NASA's Earth Science data through a process of continual curation and the ongoing development of the Unified Metadata Model (UMM). A key tool now used in the curation process, referred to as the NASA CMR Dashboard, is an online curation dashboard developed in collaboration with software development company, Element 84. This tool facilitates the review of Earth Science metadata records and subsequent stakeholder collaboration on the resolution of identified issues. A key capability of the new tool is a suite of automated compliance checks written in Python 3.6 that verify the integrity of various metadata elements across multiple standards
Visit Harford Trail Map
Final project for URSP688L: Planning Technologies (Fall 2018).
University of Maryland, College Park.This project focused on creating an interactive and searchable map of the most popular
trails in Harford County for the use on the Visit Harford website. This report provides
background on previously available searchable and interactive trail mapping, describes in detail
what the project鈥檚 goals, discusses the data collection process, including where the data was
collected from and qualitative data sought out.
A significant amount of data about Harford County Trails is available online, but it is not
consolidated in one place. If a visitor to Harford County wants to find a trail for hiking or biking,
there are numerous incomplete data sources and maps provided by jurisdictions and
independent organizations. The purpose of this project is to consolidate information on Harford
County鈥檚 most popular trails so that visitors and residents have easier access to the beauty of
Harford County through its comprehensive network of state parks, county parks, and trails.
This report also describes how data was gathered and manipulated to suit this project. It
also discusses the methodology, analysis, and visualization of the data. The primary purpose of
this report is to explain how the team used the data collected for mapping purposes, as well as
the project鈥檚 results. It includes a tutorial of how to use the final product with an analysis of how
it might be used on the Visit Harford site. This new interactive tool can benefit Harford County
residents and tourists alike. Ultimately, the interactive map will be incorporated into an app that
visitors to Harford County will be able to use to find not just trails, but other attractions, such as
dining, lodging, and entertainment.
Visit Harford is the destination marketing organization of Harford County, Maryland with
the goal of driving more tourism activity in Harford County. Their website includes many
attractions for both residents and tourists. Through the PALS program, our class was tasked with
providing the County with improved spatial data for tourist attractions in Harford County,
making the County more navigable for those seeking to get the most out of their visits in and
around Harford County.
Our group was assigned to Harford County鈥檚 trails. At the project鈥檚 outset, Harford
County did not have any kind of trail map that visitors could use. Additionally, the Visit Harford
County website only had a list of trails in the county, without any meaningful qualitative data
about the trails. In fact, the list of trails was included in the list of parks as a combined list of
parks and trails.1 Our group was tasked with creating an up-to-date trails inventory with
qualitative data about each trail, and then represent that data in an interactive map.
There is currently no interactive format nor a single place for visitors to research trails.
The only option is the Parks & Trails website where trails are consolidated with the parks. But
not all trails are included, and the site doesn鈥檛 include a map.Harford Count
Metadata Deep Dive: Results from a Detailed Quality Assessment of NASA's Earth Observation Metadata
No abstract availabl
Eliminating Science Friction: A Metadata Quality Framework for the Earth Sciences
No abstract availabl
Collaborative Metadata Curation in Support of NASA Earth Science Data Stewardship
Growing collection of NASA Earth science data is archived and distributed by EOSDISs 12 Distributed Active Archive Centers (DAACs). Each collection and granule is described by a metadata record housed in the Common Metadata Repository (CMR). Multiple metadata standards are in use, and core elements of each are mapped to and from a common model the Unified Metadata Model (UMM). Work done by the Analysis and Review of CMR (ARC) Team
NASA's Collaborative Metadata Curation Activity to Improve Earth Science Data Discovery
No abstract availabl
Learning not blaming: Investigating ten fatal road traffic collisions using STAMP-CAST
There have been strong calls in the research literature for the adoption of system-based approaches to further reduce road casualties. However, person-based approaches remain at the forefront of both national and local-level decision-making around road safety in the UK. Focusing on person-based approaches inhibits learning across the system. Practical examples are needed to support adoption of system-based approaches and ensure safety learning is maximised within the industry.This study builds on previous work (Staton et al., 2022) mapping the control structure for the municipal area of Cambridgeshire, UK. It utilizes a system-based accident investigation method: Causal Analysis based on System Theory (CAST) (Leveson, 2019). The method is based on Rasmussen鈥檚 Risk Management Framework and is used to identify weaknesses in the control structure across the entire sociotechnical system. This supports understanding why the collision occurred and prevention of similar future events, rather than apportioning blame. In the study, CAST is used to investigate a random sample of ten fatal collisions that occurred in Cambridgeshire between 2018 and 2020. The investigations were conducted retrospectively using police forensic collision investigation files that had already concluded crown or coroner鈥檚 court proceedings.Across all ten collisions investigated, 21 different types of actor were identified across all levels of the system, each of whom played some role in at least one of the collisions. As a result, 49 specific recommendations are made concerning these actor鈥檚 roles in preventing future road deaths and serious injuries. In addition, 11 system-wide recommendations are made relating to communication and coordination; the safety information system; safety culture; design of the safety management system; changes and dynamics over time; and economic factors in the system environment.This study demonstrates that the CAST method is a viable tool for learning in the road safety industry and provides a taxonomy of system hazards, alongside the system control structure from Staton et al. (2022), to support any future analysis using this method. The use of CAST identifies the importance of controls within the road transport system and that currently, despite having one of the best road safety records in the world, the existing controls in place in the UK are insufficient to prevent serious injury and death occurring daily and are in danger of being eroded further through a political agenda of deregulation.This study reinforces that road safety requires system-based approaches and the strength of the CAST method in identifying system-wide recommendations which can be used in support of a Safe System approach to provide recommendations across the Safe System pillars
Learning not blaming: Investigating ten fatal road traffic collisions using STAMP-CAST
There have been strong calls in the research literature for the adoption of system-based approaches to further reduce road casualties. However, person-based approaches remain at the forefront of both national and local-level decision-making around road safety in the UK. Focusing on person-based approaches inhibits learning across the system. Practical examples are needed to support adoption of system-based approaches and ensure safety learning is maximised within the industry.
This study builds on previous work (Staton et al., 2022) mapping the control structure for the municipal area of Cambridgeshire, UK. It utilizes a system-based accident investigation method: Causal Analysis based on System Theory (CAST) (Leveson, 2019). The method is based on Rasmussen鈥檚 Risk Management Framework and is used to identify weaknesses in the control structure across the entire sociotechnical system. This supports understanding why the collision occurred and prevention of similar future events, rather than apportioning blame. In the study, CAST is used to investigate a random sample of ten fatal collisions that occurred in Cambridgeshire between 2018 and 2020. The investigations were conducted retrospectively using police forensic collision investigation files that had already concluded crown or coroner鈥檚 court proceedings.
Across all ten collisions investigated, 21 different types of actor were identified across all levels of the system, each of whom played some role in at least one of the collisions. As a result, 49 specific recommendations are made concerning these actor鈥檚 roles in preventing future road deaths and serious injuries. In addition, 11 system-wide recommendations are made relating to communication and coordination; the safety information system; safety culture; design of the safety management system; changes and dynamics over time; and economic factors in the system environment.
This study demonstrates that the CAST method is a viable tool for learning in the road safety industry and provides a taxonomy of system hazards, alongside the system control structure from Staton et al. (2022), to support any future analysis using this method. The use of CAST identifies the importance of controls within the road transport system and that currently, despite having one of the best road safety records in the world, the existing controls in place in the UK are insufficient to prevent serious injury and death occurring daily and are in danger of being eroded further through a political agenda of deregulation.
This study reinforces that road safety requires system-based approaches and the strength of the CAST method in identifying system-wide recommendations which can be used in support of a Safe System approach to provide recommendations across the Safe System pillars.</p