NILM Applications: Literature review of learning approaches, recent developments and challenges

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[29]  Xianyong Xu,et al.  Non-Intrusive Load Monitoring Based on Feature Extraction of Change-point and XGBoost Classifier , 2020, 2020 IEEE 4th Conference on Energy Internet and Energy System Integration (EI2).

[30]  M. Funes,et al.  Review of NILM applications in smart grids: power quality assessment and assisted independent living , 2020, 2020 Argentine Conference on Automatic Control (AADECA).

[31]  Chengwei Huang,et al.  Sequence-to-Sequence Load Disaggregation Using Multiscale Residual Neural Network , 2020, IEEE Transactions on Instrumentation and Measurement.

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[34]  Shuicheng Yan,et al.  ConvBERT: Improving BERT with Span-based Dynamic Convolution , 2020, NeurIPS.

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[40]  Abdul Halim,et al.  KNN Methods with Varied K, Distance and Training Data to Disaggregate NILM with Similar Load Characteristic , 2020, APCoRISE.

[41]  Hui Liu,et al.  Sequence to Point Learning Based on Bidirectional Dilated Residual Network for Non Intrusive Load Monitoring , 2020, International Journal of Electrical Power & Energy Systems.

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[59]  Songsong Chen,et al.  A SVM Optimized by Particle Swarm Optimization Approach to Load Disaggregation in Non-Intrusive Load Monitoring in Smart Homes , 2019, 2019 IEEE 3rd Conference on Energy Internet and Energy System Integration (EI2).

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[64]  Xu Zhang,et al.  Dilated residual attention network for load disaggregation , 2019, Neural Computing and Applications.

[65]  Mark D. Plumbley,et al.  Deep Learning Based Energy Disaggregation and On/Off Detection of Household Appliances , 2019, ACM Trans. Knowl. Discov. Data.

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[68]  Fang-Yi Chang,et al.  An Analysis of Semi-Supervised Learning Approaches in Low-Rate Energy Disaggregation , 2019, 2019 3rd International Conference on Smart Grid and Smart Cities (ICSGSC).

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[71]  Nikolaos Doulamis,et al.  Bayesian-optimized Bidirectional LSTM Regression Model for Non-intrusive Load Monitoring , 2019, ICASSP 2019 - 2019 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).

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[76]  Stefano Squartini,et al.  Transfer Learning for Non-Intrusive Load Monitoring , 2019, IEEE Transactions on Smart Grid.

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