Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature

Monitoring electricity consumption in the home is an important way to help reduce energy usage. Nonintrusive Load Monitoring (NILM) is existing technique which helps us monitor electricity consumption effectively and costly. NILM is a promising approach to obtain estimates of the electrical power co...

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Main Authors: Jihyun Kim, Thi-Thu-Huong Le, Howon Kim
Format: Article
Language:English
Published: Hindawi Limited 2017-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2017/4216281
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spelling doaj-3b3a48859d0b49d1ae04f704607959c62020-11-24T22:01:07ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52651687-52732017-01-01201710.1155/2017/42162814216281Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel SignatureJihyun Kim0Thi-Thu-Huong Le1Howon Kim2IoT Research Center, PNU, Busan, Republic of KoreaPusan National University, Busan, Republic of KoreaPusan National University, Busan, Republic of KoreaMonitoring electricity consumption in the home is an important way to help reduce energy usage. Nonintrusive Load Monitoring (NILM) is existing technique which helps us monitor electricity consumption effectively and costly. NILM is a promising approach to obtain estimates of the electrical power consumption of individual appliances from aggregate measurements of voltage and/or current in the distribution system. Among the previous studies, Hidden Markov Model (HMM) based models have been studied very much. However, increasing appliances, multistate of appliances, and similar power consumption of appliances are three big issues in NILM recently. In this paper, we address these problems through providing our contributions as follows. First, we proposed state-of-the-art energy disaggregation based on Long Short-Term Memory Recurrent Neural Network (LSTM-RNN) model and additional advanced deep learning. Second, we proposed a novel signature to improve classification performance of the proposed model in multistate appliance case. We applied the proposed model on two datasets such as UK-DALE and REDD. Via our experimental results, we have confirmed that our model outperforms the advanced model. Thus, we show that our combination between advanced deep learning and novel signature can be a robust solution to overcome NILM’s issues and improve the performance of load identification.http://dx.doi.org/10.1155/2017/4216281
collection DOAJ
language English
format Article
sources DOAJ
author Jihyun Kim
Thi-Thu-Huong Le
Howon Kim
spellingShingle Jihyun Kim
Thi-Thu-Huong Le
Howon Kim
Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature
Computational Intelligence and Neuroscience
author_facet Jihyun Kim
Thi-Thu-Huong Le
Howon Kim
author_sort Jihyun Kim
title Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature
title_short Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature
title_full Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature
title_fullStr Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature
title_full_unstemmed Nonintrusive Load Monitoring Based on Advanced Deep Learning and Novel Signature
title_sort nonintrusive load monitoring based on advanced deep learning and novel signature
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5265
1687-5273
publishDate 2017-01-01
description Monitoring electricity consumption in the home is an important way to help reduce energy usage. Nonintrusive Load Monitoring (NILM) is existing technique which helps us monitor electricity consumption effectively and costly. NILM is a promising approach to obtain estimates of the electrical power consumption of individual appliances from aggregate measurements of voltage and/or current in the distribution system. Among the previous studies, Hidden Markov Model (HMM) based models have been studied very much. However, increasing appliances, multistate of appliances, and similar power consumption of appliances are three big issues in NILM recently. In this paper, we address these problems through providing our contributions as follows. First, we proposed state-of-the-art energy disaggregation based on Long Short-Term Memory Recurrent Neural Network (LSTM-RNN) model and additional advanced deep learning. Second, we proposed a novel signature to improve classification performance of the proposed model in multistate appliance case. We applied the proposed model on two datasets such as UK-DALE and REDD. Via our experimental results, we have confirmed that our model outperforms the advanced model. Thus, we show that our combination between advanced deep learning and novel signature can be a robust solution to overcome NILM’s issues and improve the performance of load identification.
url http://dx.doi.org/10.1155/2017/4216281
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