A feature fusion technique for improved non-intrusive load monitoring

被引:4
作者
Reddy R. [1 ]
Garg V. [1 ]
Pudi V. [2 ]
机构
[1] Building Science Research Centre, IIIT-H, Gacchibowli, Hyderabad
[2] Data Science and Analytics Centre, KCIS, IIIT-H, Gacchibowli, Hyderabad
关键词
Appliance identification; Feature learning; Non-intrusive load monitoring;
D O I
10.1186/s42162-020-00112-w
中图分类号
学科分类号
摘要
Load identification is an essential step in Non-Intrusive Load Monitoring (NILM), a process of estimating the power consumption of individual appliances using only whole-house aggregate consumption. Such estimates can help consumers and utility companies improve load management and save power. Current state-of-the-art methods for load identification generally use either steady state or transient features for load identification. We hypothesize that these are complementary features and so a hybrid combination of them will result in an improved appliance signature. We propose a novel hybrid combination that has the advantage of being low-dimensional and can thus be easily integrated with existing classification models to improve load identification. Our improved hybrid features are then used for building appliance identification models using Naive Bayes, KNN, Decision Tree and Random Forest classifiers. The proposed NILM methodology is evaluated for robustness in changing environments. An automated data collection setup is established to capture 7 home appliances aggregate data under varying voltages. Experimental results show that our proposed feature fusion based algorithms are more robust and outperform steady state and transient feature-based algorithms by at least +9% and +15% respectively. © 2020, The Author(s).
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