A Hybrid Signal Processing Technique for Recognition of Complex Power Quality Disturbances

•A hybrid algorithm applying ST, HT and RBDT is designed for recognition of multiple PQ disturbances.•Designed HPQI and HPLI indices effectively detect and localize the CPQDs.•Proposed RBDT supported decision rules driven by features computed from HPQI and HPLI effectively classified the CPQDs. Clas...

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Veröffentlicht in:Electric power systems research 2022-06, Vol.207, p.107865, Article 107865
Hauptverfasser: Mahela, Om Prakash, Parihar, Mayank, Garg, Akhil Ranjan, Khan, Baseem, Kamel, Salah
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creator Mahela, Om Prakash
Parihar, Mayank
Garg, Akhil Ranjan
Khan, Baseem
Kamel, Salah
description •A hybrid algorithm applying ST, HT and RBDT is designed for recognition of multiple PQ disturbances.•Designed HPQI and HPLI indices effectively detect and localize the CPQDs.•Proposed RBDT supported decision rules driven by features computed from HPQI and HPLI effectively classified the CPQDs. Classification accuracy higher than 98% is achieved.•Performance of algorithm is better compared to HT and RBDT based technique.•Algorithm is validated to recognize CPQDs incident on practical distribution network. Hence, it can be incorporated in online PQ monitoring devices. This paper proposes an algorithm based on the Stockwell transform (ST) and Hilbert transform (HT) to classify complex power quality disturbances (CPQDs). Two indices are used for detection and locating the CPQDs. The first index is the hybrid power quality index (HPQI), which is used to classify CPQDs. The Stockwell maximum values factor (SMVF), Stockwell summation values factor (SSVF), and Stockwell variance values factor (SVVF) are computed by utilizing the ST to process a voltage signal having a superimposed PQ disturbance. To compute the Hilbert index (HI), the voltage signal is also processed using the HT. The HPQI index is calculated by element-to-element multiplication of the SMVF, SSVF, SVVF, HI, and a weight factor (WF). The second index is the hybrid power quality disturbance time localization index (HPLI), which is used to locate the complex PQ events in a given time frame. For classification of investigated CPQDs, seven different features extracted from various indices defined using ST and HT are taken as input to the rule-based decision tree (RBDT). RBDT classifies the disturbances using simple decision rules, which has the merit of low computational time. The algorithm is able to correctly detect CPQDs with a 98% accuracy rate. The proposed algorithm outperforms the literature's algorithm, which is based on HT and RBDT. Furthermore, it is demonstrated that the algorithm effectively recognizes CPQDs that occur in real-time on a practical distribution network in Rajasthan State, India. [Display omitted]
doi_str_mv 10.1016/j.epsr.2022.107865
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Classification accuracy higher than 98% is achieved.•Performance of algorithm is better compared to HT and RBDT based technique.•Algorithm is validated to recognize CPQDs incident on practical distribution network. Hence, it can be incorporated in online PQ monitoring devices. This paper proposes an algorithm based on the Stockwell transform (ST) and Hilbert transform (HT) to classify complex power quality disturbances (CPQDs). Two indices are used for detection and locating the CPQDs. The first index is the hybrid power quality index (HPQI), which is used to classify CPQDs. The Stockwell maximum values factor (SMVF), Stockwell summation values factor (SSVF), and Stockwell variance values factor (SVVF) are computed by utilizing the ST to process a voltage signal having a superimposed PQ disturbance. To compute the Hilbert index (HI), the voltage signal is also processed using the HT. The HPQI index is calculated by element-to-element multiplication of the SMVF, SSVF, SVVF, HI, and a weight factor (WF). The second index is the hybrid power quality disturbance time localization index (HPLI), which is used to locate the complex PQ events in a given time frame. For classification of investigated CPQDs, seven different features extracted from various indices defined using ST and HT are taken as input to the rule-based decision tree (RBDT). RBDT classifies the disturbances using simple decision rules, which has the merit of low computational time. The algorithm is able to correctly detect CPQDs with a 98% accuracy rate. The proposed algorithm outperforms the literature's algorithm, which is based on HT and RBDT. Furthermore, it is demonstrated that the algorithm effectively recognizes CPQDs that occur in real-time on a practical distribution network in Rajasthan State, India. 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Classification accuracy higher than 98% is achieved.•Performance of algorithm is better compared to HT and RBDT based technique.•Algorithm is validated to recognize CPQDs incident on practical distribution network. Hence, it can be incorporated in online PQ monitoring devices. This paper proposes an algorithm based on the Stockwell transform (ST) and Hilbert transform (HT) to classify complex power quality disturbances (CPQDs). Two indices are used for detection and locating the CPQDs. The first index is the hybrid power quality index (HPQI), which is used to classify CPQDs. The Stockwell maximum values factor (SMVF), Stockwell summation values factor (SSVF), and Stockwell variance values factor (SVVF) are computed by utilizing the ST to process a voltage signal having a superimposed PQ disturbance. To compute the Hilbert index (HI), the voltage signal is also processed using the HT. 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Classification accuracy higher than 98% is achieved.•Performance of algorithm is better compared to HT and RBDT based technique.•Algorithm is validated to recognize CPQDs incident on practical distribution network. Hence, it can be incorporated in online PQ monitoring devices. This paper proposes an algorithm based on the Stockwell transform (ST) and Hilbert transform (HT) to classify complex power quality disturbances (CPQDs). Two indices are used for detection and locating the CPQDs. The first index is the hybrid power quality index (HPQI), which is used to classify CPQDs. The Stockwell maximum values factor (SMVF), Stockwell summation values factor (SSVF), and Stockwell variance values factor (SVVF) are computed by utilizing the ST to process a voltage signal having a superimposed PQ disturbance. To compute the Hilbert index (HI), the voltage signal is also processed using the HT. The HPQI index is calculated by element-to-element multiplication of the SMVF, SSVF, SVVF, HI, and a weight factor (WF). The second index is the hybrid power quality disturbance time localization index (HPLI), which is used to locate the complex PQ events in a given time frame. For classification of investigated CPQDs, seven different features extracted from various indices defined using ST and HT are taken as input to the rule-based decision tree (RBDT). RBDT classifies the disturbances using simple decision rules, which has the merit of low computational time. The algorithm is able to correctly detect CPQDs with a 98% accuracy rate. The proposed algorithm outperforms the literature's algorithm, which is based on HT and RBDT. Furthermore, it is demonstrated that the algorithm effectively recognizes CPQDs that occur in real-time on a practical distribution network in Rajasthan State, India. 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subjects Algorithms
Classification
Computing time
Decision trees
Disturbances
Electric potential
Feature extraction
Hilbert transform
Hilbert transformation
hybrid power quality index
hybrid Signal Processing Technique
Integral transforms
Multiplication
power quality
Power reliability
rule based decision tree
Signal processing
Stockwell transform
Voltage
title A Hybrid Signal Processing Technique for Recognition of Complex Power Quality Disturbances
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