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Dive into the research topics where Mervyn Parakrama B. Ekanayake is active.

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Featured researches published by Mervyn Parakrama B. Ekanayake.


IEEE Transactions on Smart Grid | 2016

Residential Appliance Identification Based on Spectral Information of Low Frequency Smart Meter Measurements

Chinthaka Dinesh; Buddhika W. Nettasinghe; Roshan Indika Godaliyadda; Mervyn Parakrama B. Ekanayake; Janaka Ekanayake; J. V. Wijayakulasooriya

A nonintrusive load monitoring (NILM) method for residential appliances based on uncorrelated spectral components of an active power consumption signal is presented. This method utilizes the Karhunen Loéve expansion to breakdown the active power signal into subspace components (SCs) so as to construct a unique information rich appliance signature. Unlike existing NILM techniques that rely on multiple measurements at high sampling rates, this method works effectively with a single active power measurement taken at a low sampling rate. After constructing the signature data base, SC level power conditions were introduced to reduce the number of possible appliance combinations prior to applying the maximum a posteriori estimation. Then, an appliances matching algorithm was presented to identify the turned-on appliance combination in a given time window. After identifying the turned-on appliance combination, an energy estimation algorithm was introduced to disaggregate the energy contribution of each individual appliance in that combination. The proposed NILM method was validated by using two public databases: 1) tracebase; and 2) reference energy disaggregation data set. The presented results demonstrate the ability of the proposed method to accurately identify and disaggregate individual energy contributions of turned-on appliance combinations in real households.


IEEE Transactions on Smart Grid | 2017

Incorporating appliance usage patterns for non-intrusive load monitoring and load forecasting

Shirantha Welikala; Chinthaka Dinesh; Mervyn Parakrama B. Ekanayake; Roshan Indika Godaliyadda; Janaka Ekanayake

This paper proposes a novel non-intrusive load monitoring (NILM) method which incorporates appliance usage patterns (AUPs) to improve performance of active load identification and forecasting. In the first stage, the AUPs of a given residence were learned using a spectral decomposition based standard NILM algorithm. Then, learnt AUPs were utilized to bias the priori probabilities of the appliances through a specifically constructed fuzzy system. The AUPs contain likelihood measures for each appliance to be active at the present instant based on the recent activity/inactivity of appliances and the time of day. Hence, the priori probabilities determined through the AUPs increase the active load identification accuracy of the NILM algorithm. The proposed method was successfully tested for two standard databases containing real household measurements in USA and Germany. The proposed method demonstrates an improvement in active load estimation when applied to the aforementioned databases as the proposed method augments the smart meter readings with the behavioral trends obtained from AUPs. Furthermore, a residential power consumption forecasting mechanism, which can predict the total active power demand of an aggregated set of houses, 5 min ahead of real time, was successfully formulated and implemented utilizing the proposed AUP based technique.


international conference on information and automation | 2016

Robust Non-Intrusive Load Monitoring (NILM) with unknown loads

Shirantha Welikala; Chinthaka Dinesh; Roshan Indika Godaliyadda; Mervyn Parakrama B. Ekanayake; Janaka Ekanayake

A Non-Intrusive Load Monitoring (NILM) method, robust even in the presence of unlearned or unknown appliances (UUAs) is presented in this paper. In the absence of such UUAs, this NILM algorithm is capable of accurately identifying each of the turned-ON appliances as well as their energy levels. However, when there is an UUA or set of UUAs are turned-ON during a particular time window, proposed NILM method detects their presence. This enables the operator to detect presence of anomalies or unlearned appliances in a household. This quality increases the reliability of the NILM strategy and makes it more robust compared to existing NILM methods. The proposed Robust NILM strategy (RNILM) works accurately with a single active power measurement taken at a low sampling rate as low as one sample per second. Here first, a unique set of features for each appliance was extracted through decomposing their active power signal traces into uncorrelated subspace components (SCs) via a high-resolution implementation of the Karhunen-Loeve (KLE). Next, in the appliance identification stage, through considering power levels of the SCs, the number of possible appliance combinations were rapidly reduced. Finally, through a Maximum a Posteriori (MAP) estimation, the turned-ON appliance combination and/or the presence of UUA was determined. The proposed RNILM method was validated using real data from two public databases: Reference Energy Disaggregation Dataset (REDD) and Tracebase. The presented results demonstrate the capability of the proposed RNILM method to identify, the turned-ON appliance combinations, their energy level disaggregation as well as the presence of UUAs accurately in real households.


energy 2016, Vol. 4, Pages 414-443 | 2016

Non-intrusive load monitoring based on low frequency active power measurements

Chinthaka Dinesh; Pramuditha Perera; Roshan Indika Godaliyadda; Mervyn Parakrama B. Ekanayake; Janaka Ekanayake


international conference on computational intelligence, modelling and simulation | 2012

An Eigenfilter Based Approach for Extraction of Fetal Heart Signals under Noisy Conditions Using Adaptive Filters

Wijayamuni N. M. Soysa; Roshan Indika Godaliyadda; J. V. Wijayakulasooriya; Mervyn Parakrama B. Ekanayake; Iresh C. Kandauda


international conference on industrial and information systems | 2016

A real-time non-intrusive load monitoring system

Shirantha Welikala; Chinthaka Dinesh; Mervyn Parakrama B. Ekanayake; Roshan Indika Godaliyadda; Janaka Ekanayake


international conference on industrial and information systems | 2013

Extraction and analysis of fetal heart signals with abnormalities an Eigen-analysis based approach

Wijemuni N. M. Soysa; Roshan Indika Godaliyadda; J. V. Wijayakulasooriya; Mervyn Parakrama B. Ekanayake; Iresh C. Kandauda


Applied Energy | 2017

Non-intrusive load monitoring under residential solar power influx

Chinthaka Dinesh; Shirantha Welikala; Yasitha Liyanage; Mervyn Parakrama B. Ekanayake; Roshan Indika Godaliyadda; Janaka Ekanayake


international conference on computational intelligence, modelling and simulation | 2013

A Robust Subspace Classification Method for Highly Correlated Acoustic Signals

Don Buddhika Wijayantha Nettasinghe; Thudugalage Amanthi Ratnayake; Nimesh Nadeesha Pollwaththage; Gunawath Mudiyanselage Roshan Indika Godaliyadda; J. V. Wijayakulasooriya; Mervyn Parakrama B. Ekanayake


international conference on advances in ict for emerging regions | 2017

Real-time non-intrusive appliance load monitoring under supply voltage fluctuations

Yasitha Liyanage; Shirantha Welikala; Chinthaka Dinesh; Mervyn Parakrama B. Ekanayake; Roshan Indika Godaliyadda; Janaka Ekanayake

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