What Else Do the Deep Learning Techniques Tell Us about Voltage Dips Validity? Regional-Level Assessments with the New QuEEN System Based on Real Network Configurations
Abstract
:1. Introduction
2. Voltage Dips Monitoring: The QuEEN System
3. Voltage Dips Validity in Isolated and Compensated Network
Extinction of a Single Phase-to-Ground Fault
- Case 1: SC closed—compensated neutral (CN) system;
- Case 2: SC open—isolated neutral (IN) system.
- Faulted line currents (IR, F, IS, F, IT, F);
- Line-to-line voltages (VRS, s, VST, s, VTR, s) computed from the VTs secondary side phase to ground voltages (VR, s, VS, s, VT, s);
- Line-to-line voltages at MV busbar (VRS, VST, VTR);
- Homopolar voltage (V0).
4. Voltage Dip Validity Assessment: Current and New Criteria
4.1. 2nd Harmonic Criterion
- the occurrence of an exceeding of the second harmonic threshold (fixed at a given percentage of the effective value);
- the occurrence of a minimum number of consecutive overruns of the second harmonic threshold.
4.2. DELFI—Deep Learning for False Events Identification
5. Comparison of Criteria for Validity Assessment
- Overall Set: 10,704 events;
- Compensated Neutral Subset: 6273 events;
- Isolated Neutral Subset: 4431 events.
- Global analysis: all data are grouped, respectively for each defined subset;
- Sensibility analysis: the subsets are analyzed considering duration and residual voltage;
- Regional analysis: subsets are considered among the seven chosen regions.
5.1. Global Analysis
- T, F, ND for the 2nd Harmonic Criterion classifier;
- T, F, T + F for the DELFI classifier.
- DELFI results are in the rows;
- the columns refer to the outcomes of the 2nd Harmonic Criterion.
- (T, ND): the recorded values for the CN and IN Subsets are, respectively 10.2% and 12.6%, namely a considerable number of events, classified as ND by the 2nd Harmonic Criterion but readmitted as T by the DELFI classifier (respectively 640 and 557 voltage dips). This means that the DELFI classifier readmits into class T a not negligible number of ND events for both subsets;
- (F, ND): the recorded value is 0.6% for the CN Subset, namely 40 events, while the same cell reaches 16.5% or 732 events for the IN Subset. This disparity is a consistent result since, theoretically, the F events are not foreseen for the CN Subset and hence the new criterion acts coherently with the expected electrical characteristics of the network;
- (T, F): the number of events classified as F by the 2nd Harmonic Criterion and readmitted as T by DELFI is not negligeable for both the CN and IN Subsets with 1.9% (120 events) and 3.2% (144 events), respectively.
5.2. Sensibility Analysis: Duration and Residual Voltage
- events with duration < 90 ms;
- events with duration ≥ 90 ms.
5.3. Regional Analysis
- the T label rate ranges from 80.2% in Sicilia up to 92.4% in Sardegna;
- considering F events, the highest ratios are recorded for Lazio and Campania with 6.6% and 8.6%, respectively;
- finally, for the ND label rate, high values are recorded for Sicilia (17.9%), Lazio (11.4%), Piemonte (9.4%) and Lombardia (9.3%).
- there is a significant increase in the T rate for all regions, going from 92.7% in Lombardia up to the 99.2% reached in Sardegna;
- consistent with what has been highlighted for class T, class F rate decreases in percentage for almost all regions except for Piemonte and Lombardia. This means that most of the ND events are reclassified as T in each region so that the increase of the T class compared to the F class is significantly larger. This is in accordance with what is expected from the network characteristics.
- the T events ratio shows a considerable variation, ranging from 27.2% in Piemonte to 90.9% in Sardegna. Additionally, noteworthy is the 42.6% recorded in Lombardia;
- considering F events, the regional distribution is very irregular as the maximum values is reached by Piemonte with 24.5% while the minimum value 2.6% is recorded in Sardegna;
- finally, also for ND events, the regional distribution is uneven and with considerably higher values than the CN Subset: the highest values are recorded in Piemonte at 48.3% and Lombardia at 44.7% while Sicilia, Lazio and Campania have slightly lower values, with 25%, 21% and 20%, respectively. However, they are still higher than those of the CN Subset.
- for the T class, a global increase is achieved. Four regions have reached a T rate above 90% (Veneto, Campania, Sicilia and Sardegna), while Lombardia and Piemonte show considerably lower values with, respectively 53.7% and 40.7%;
- focusing on F events, the adoption of the new criterion in Lombardia and Piemonte outcomes is relevant: an increase of 31% and 33%, respectively, was recorded, while Lazio and Sicilia recorded an increase of about 7%. On the other hand, Sardegna and Campania showed a reduction in the F rate of −1.3%.
- Piemonte and Lombardia (~50% of F events) which seem to be characterized by a high number of single phase-to-ground faults compared to polyphase ones;
- Veneto, Campania, Sardegna and Sicily (<10% of F events) which show a low number of single-phase to ground faults compared to polyphase ones;
- Lazio (20% of F events), which seems to have been affected by an intermediate number of single-phase to ground faults compared to polyphase ones.
5.4. New QuEEN Website Tables
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Parameter | Value |
---|---|
Rp | 2667 Ω |
Lp | 12.75 H |
Kv | 20 kV/√3/100 V/√3 |
Rs | 0.067 Ω |
Ls | 0.32 mH |
RB | 66.67 Ω |
Parameter | Value |
---|---|
CNN number of Layers | 1 |
Number of Kernel Matrices | 63 |
Mini-Batch Size | 33 |
Learning Rate | 1.2 × 10−5 |
Max-Epoch | 20 |
Italian Region | Number of Events |
---|---|
Piemonte | 1127 |
Lombardia | 1143 |
Veneto | 1133 |
Lazio | 1664 |
Campania | 1306 |
Sardegna | 1438 |
Sicilia | 2893 |
Validity Criterion | Dataset | Criterion Labels | |||
---|---|---|---|---|---|
T [%] | F [%] | ND [%] | T + F [%] | ||
2nd Harmonic Criterion | Overall Set | 74.4% | 6.8% | 18.7% | - |
CN Subset | 85.7% | 3.4% | 10.9% | - | |
IN Subset | 58.5% | 11.7% | 29.8% | - | |
DELFI | Overall Set | 87.1% | 11.9% | - | 1% |
CN Subset | 97.5% | 1.7% | - | 0.8% | |
IN Subset | 72.3% | 26.3% | - | 1.4% |
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Zanoni, M.; Chiumeo, R.; Tenti, L.; Volta, M. What Else Do the Deep Learning Techniques Tell Us about Voltage Dips Validity? Regional-Level Assessments with the New QuEEN System Based on Real Network Configurations. Energies 2023, 16, 1189. https://doi.org/10.3390/en16031189
Zanoni M, Chiumeo R, Tenti L, Volta M. What Else Do the Deep Learning Techniques Tell Us about Voltage Dips Validity? Regional-Level Assessments with the New QuEEN System Based on Real Network Configurations. Energies. 2023; 16(3):1189. https://doi.org/10.3390/en16031189
Chicago/Turabian StyleZanoni, Michele, Riccardo Chiumeo, Liliana Tenti, and Massimo Volta. 2023. "What Else Do the Deep Learning Techniques Tell Us about Voltage Dips Validity? Regional-Level Assessments with the New QuEEN System Based on Real Network Configurations" Energies 16, no. 3: 1189. https://doi.org/10.3390/en16031189
APA StyleZanoni, M., Chiumeo, R., Tenti, L., & Volta, M. (2023). What Else Do the Deep Learning Techniques Tell Us about Voltage Dips Validity? Regional-Level Assessments with the New QuEEN System Based on Real Network Configurations. Energies, 16(3), 1189. https://doi.org/10.3390/en16031189