scispace - formally typeset
Search or ask a question

What is GridStat about? 


Best insight from top research papers

GridStat is a QoS-managed middleware framework designed to replace the power grid's aging, inflexible, and slow data communications system. It specializes in the publish-subscribe paradigm and takes advantage of the semantics of periodic updates of cached sensor data to provide data delivery with a per-subscriber rate, latency, and redundant paths. GridStat is well-suited for delivering sensor data over a wide-area network, but its baseline one-way mechanisms are not suitable for round-trip invocations. To address this, Ratatoskr, a tunable remote procedure call mechanism, has been developed that builds on the QoS semantics of GridStat and supports three kinds of redundancy. Additionally, user-defined pre- and post-condition predicates over GridStat status variables are built into the call semantics, allowing for additional physical assurance of call success.

Answers from top 5 papers

More filters
Papers (5)Insight
GridStat is a middleware framework for disseminating operational power grid status data, providing a common programming abstraction across a distributed computing system.
GridStat is a QoS-managed middleware framework designed to replace the power grid's aging, inflexible, and slow data communications system.
GridStat is a middleware framework developed to provide flexible, robust, and secure data communications for the power grid's operations, including monitoring, operation, protection, and control needs.
GridStat is a developing communication technology that provides real-time data delivery services to the electric power grid. It focuses on improving the cyber security of the system.
GridStat is a QoS-managed middleware framework designed to replace the power grid's aging, inflexible, and slow data communications system.

Related Questions

What is research data?4 answersResearch data refers to the information collected, observed, or generated for analysis to produce original research outcomes. It holds significant value in scholarly endeavors, enabling researchers to justify their conclusions based on acquired data, which can be scrutinized by peers for verification. The handling and management of research data are crucial aspects of the research process, ensuring data cleanliness and appropriateness for analysis. The complexity of data transformations during research is highlighted, emphasizing the need for precise descriptions and ownership claims by researchers. Furthermore, the role of academic libraries in facilitating access to research data and promoting open data practices is underscored, emphasizing the importance of data security, collaboration opportunities, and increased research impact.
What is DATA analysis?5 answersData analysis is the process of examining and interpreting data to uncover useful information, draw conclusions, and support decision-making. It involves verifying the accuracy and authenticity of the data, applying appropriate procedures to analyze the data, and confirming the insights derived from the analysis. Data analysis can be performed using various techniques and methodologies, such as quantitative, qualitative, and mixed methods. It plays a crucial role in optimizing processes, improving efficiency, making informed decisions, understanding customer trends and satisfaction, and effective marketing of products and services. Data analysis encompasses activities like data cleaning, transformation, modeling, and visualization. It is used in diverse domains, including business, science, and social science, and involves gathering data from multiple sources, such as sensors, interviews, online sources, and documentation. The processed data is organized for further analysis, often in a structured format like a table or spreadsheet.
What is Data Analysis?5 answersData analysis is the process of examining and interpreting data to uncover useful information, draw conclusions, and support decision-making. It involves verifying the accuracy and authenticity of the data, applying appropriate procedures to analyze the data, and confirming the insights derived from the analysis. Data analysis can be performed using various techniques and methodologies, such as quantitative, qualitative, and mixed methods. It plays a crucial role in optimizing processes, improving efficiency, reducing costs, and facilitating better decision-making in organizations. Data analysis also helps in understanding customer trends, enhancing products and services, and enabling effective marketing strategies. The data for analysis can be collected from different sources, including sensors, interviews, online sources, and documentation. The collected data is processed and organized for further analysis, often in a structured format like a spreadsheet or statistical software.
What is Data?5 answersData is a broad term that refers to facts or information collected for reference or analysis. It can be numerical facts, clinical signs, therapy records, or any other type of information that is collected and organized. At a basic level, data is represented as sequences of binary digits (bits) in computer systems. Data science, a field that focuses on extracting patterns and insights from large datasets, encompasses principles, algorithms, and processes for analyzing data. It incorporates elements from related fields such as machine learning and data mining, but also deals with challenges like handling unstructured data, using big-data technologies, and addressing data ethics and regulation. Overall, data is the foundation of various disciplines and plays a crucial role in decision-making and analysis.
How does one calculate fractal dimension from gridded data?5 answersFractal dimension can be calculated from gridded data using various methods. One approach is the box-counting method, which involves partitioning the data into grid cells and counting the number of boxes needed to cover the data points in each cell. This method can be scaled up for big data using a data structure called the box locality index (BLI). Another method involves calculating the number of boxes needed to cover each grid and then fitting a fractal dimension using least squares. There are also other estimators available for estimating the fractal dimension, such as the correlation-based estimator and the entropy-based estimator. Additionally, the mobile box-counting method can be used to calculate fractal dimension more accurately by moving and merging multi-dimensional grids. The choice of the thickness of the curve line at calculating its fractal dimension using the box-counting method is also an important consideration.
What is the steel grid dimension?4 answersThe dimension of the steel grid is not explicitly mentioned in the abstracts provided.