On the Calculation of Time Alignment Errors in Data Management Platforms for Distribution Grid Data †
Abstract
:1. Introduction
- formally introduces a set of precise metrics to capture the behavior of the time alignment error (Section 3.3);
- shows that this measurement error is strongly dependent on the measured quantity and on time of day (Section 4.3 and Section 5.5), thus establishing that such error needs to be estimated online and cannot be replaced by a rule-of-thumb approximation;
- shows the challenges for measurement device complexity in a straightforward online estimation approach;
- introduces a model-based formula for Additive Alignment Error, assesses the accuracy of this model-based approach, and shows the benefits of applying the model-based online estimation in practical systems (Section 4.3).
2. Related Work
3. Quantification of the Time Alignment Error
3.1. Summary of Previous Work
3.2. Assumptions
- The Data Management Platform can obtain an upper bound for the clock offset between the measurement device and a reference clock. This can be accomplished, for instance, by acting as time server for the measurement device using the Network Time Protocol [21];
- A constant offset between the measurement device clock and the reference clock is assumed for the period of interest, that is, clock drifts are low enough that the clock offset does not change in this period. This is a reasonable assumption if time periods of interest are in the range of hours to few days.
3.3. Definition of Normalized and Additive Alignment Errors
4. Trace-Driven Assessment of the Additive Alignment Error in Customer Measurements
4.1. Overview of Customer Measurements
4.2. Trace-Driven Calculation Method
4.3. Trace-Driven Results for Additive Alignment Error
5. Model-Based Calculation of the Additive Alignment Error
5.1. Previous Work
5.2. Closed-Form Equation for Additive Alignment Error
5.3. Model Fitting Choices
5.4. Comparison of Models and Trace with Respect to
5.5. Comparison of Model Accuracy for
5.6. Practical Application of the Model-Based Approach for Online Estimation
- The Data Platform sends discretization limits (and number of states) and time horizon for estimation (e.g., 3 h) to the measurement devices;
- The measurement device counts the transition matrix for discrete value changes (from which and also can be obtained by the Data Management Platform) and sends it after the time period was elapsed;
- The Data Management Platform estimates the clock synchronization bounds, , from measurements of communication network delays for each device i. If the Data Management Platform is also the time server for the clock-synchronization, then internal information from the clock-synchronization protocol execution can be used to improve this estimate;
- The data platform calculates via Equation (7) and uses as the standard deviation of the clock induced error; this standard deviation is added to the standard deviation of the device-induced (and, if applicable, measurement transformer-induced) error and provided to the applications as data quality attribute.
6. Summary and Outlook
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Schwefel, H.-P.; Antonios, I.; Lipsky, L. On the Calculation of Time Alignment Errors in Data Management Platforms for Distribution Grid Data. Sensors 2021, 21, 6903. https://doi.org/10.3390/s21206903
Schwefel H-P, Antonios I, Lipsky L. On the Calculation of Time Alignment Errors in Data Management Platforms for Distribution Grid Data. Sensors. 2021; 21(20):6903. https://doi.org/10.3390/s21206903
Chicago/Turabian StyleSchwefel, Hans-Peter, Imad Antonios, and Lester Lipsky. 2021. "On the Calculation of Time Alignment Errors in Data Management Platforms for Distribution Grid Data" Sensors 21, no. 20: 6903. https://doi.org/10.3390/s21206903
APA StyleSchwefel, H. -P., Antonios, I., & Lipsky, L. (2021). On the Calculation of Time Alignment Errors in Data Management Platforms for Distribution Grid Data. Sensors, 21(20), 6903. https://doi.org/10.3390/s21206903