Stacking Ensemble Learning-Based Load Identification Considering Feature Fusion by Cyber-Physical Approach
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TL;DR: Wang et al. as discussed by the authors proposed a novel stacking ensemble learning (SEL)-based load identification framework considering physical and cyber feature descriptors (CFDs), which can nicely fuse features by integrating different types of features into corresponding classifiers of the SEL model.
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Abstract: Nonintrusive load monitoring (NILM) methods considering multiple representative features can improve load identification. However, these existing methods assemble all features into one classifier, which easily causes overfitting and increases the computational complexity during the training process. To tackle these problems, this article proposes a novel stacking ensemble learning (SEL)-based load identification framework considering physical and cyber feature descriptors (CFDs), which can nicely fuse features by integrating different types of features into corresponding classifiers of the SEL model. The proposed framework includes two main parts: 1) comprehensive features are constructed based on a physical feature descriptor (PFD) and a CFD to fully explore the representative feature space and 2) the SEL model is developed to enhance the mutual complementary ability of different features and increase the variability of base classifiers. To evaluate the effectiveness of the proposed method, experiments are conducted on a public dataset. Numerical evaluations for residential building loads show that the proposed method significantly improves the identification performance and outperforms prior methods.
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Citations
Energy Disaggregation of Residential House via Event Based Optimization Technique
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TL;DR: In this paper , an event detection method for NILM systems has been proposed that is based on the analysis of the statistical properties of the aggregate power signal, which uses a sliding window approach and K-means clustering to detect number of devices from the power signal and then applies a threshold-based algorithm to detect electrical events.
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References
A novel stacked generalization ensemble-based hybrid LGBM-XGB-MLP model for Short-Term Load Forecasting
Mohamed Massaoudi,Mohamed Massaoudi,Shady S. Refaat,Ines Chihi,Mohamed Trabelsi,Fakhreddine S. Oueslati,Haitham Abu-Rub +6 more
TL;DR: A novel stacking ensemble-based algorithm is proposed that copes with the stochastic variations of the load demand using a stacked generalization approach and is validated using two datasets from different locations: Malaysia and New England.
290
Electricity load forecasting: a systematic review
TL;DR: In this paper, the authors conducted a systematic and critical review of about seventy-seven relevant previous works reported in academic journals over nine years (2010-2020) in electricity demand forecasting.
278
PLAID: a public dataset of high-resoultion electrical appliance measurements for load identification research: demo abstract
Jingkun Gao,Suman Giri,Emre Can Kara,Mario Berges +3 more
- 03 Nov 2014
TL;DR: The Plug-Level Appliance Identification Dataset (PLAID), a public and crowd-sourced dataset for load identification research consisting of short voltage and current measurements for different residential appliances, is introduced.
238
Non-intrusive load monitoring by using active and reactive power in additive Factorial Hidden Markov Models
Roberto Bonfigli,Emanuele Principi,Marco Fagiani,Marco Severini,Stefano Squartini,Francesco Piazza +5 more
TL;DR: A NILM algorithm based on the joint use of active and reactive power in the Additive Factorial Hidden Markov Models framework is proposed, which outperforms AFAMAP, Hart’s algorithm, and Hart's with MAP respectively.
Non-intrusive load monitoring algorithm based on features of V–I trajectory
TL;DR: An NILM algorithm based on features of the V–I trajectory, which accurately represented those appliances that had multiple built-in modes with distinct power consumption profiles and has higher accuracy than the algorithm using other load features.
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