Abstract

In order to achieve more efficient energy consumption, it is crucial that accurate detailed information is given on how power is consumed. Electricity details benefit both market utilities and also power consumers. Non-intrusive load monitoring (NILM), a novel and economic technology, obtains single-appliance power consumption through a single total power meter. This paper, focusing on load disaggregation with low hardware costs, proposed a load disaggregation method for low sampling data from smart meters based on a clustering algorithm and support vector regression optimization. This approach combines the k-median algorithm and dynamic time warping to identify the operating appliance and retrieves single energy consumption from an aggregate smart meter signal via optimized support vector regression (OSVR). Experiments showed that the technique can recognize multiple devices switching on at the same time using low-frequency data and achieve a high load disaggregation performance. The proposed method employs low sampling data acquired by smart meters without installing extra measurement equipment, which lowers hardware cost and is suitable for applications in smart grid environments.

Highlights

  • With energy consumption growing year after year, carbon emissions have become an important issue for many countries

  • We provide performance comparisons against the literature using the Factorial hidden Markov models (FHMM) method and the approach using Dynamic time warping (DTW), having analyzed the sensitivity of the proposed algorithm with the number of sample feature, proving that optimized support vector regression (OSVR) is better than SVM for regression (SVR) for power estimation

  • This paper proposed a new load disaggregation method for low sampling data from smart meters based on K-medians and OSVR

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Summary

Introduction

With energy consumption growing year after year, carbon emissions have become an important issue for many countries. The third problem to NILM methods is the poor power estimation accuracy caused by the power variety of appliances when operating. We considered the above three problems and propose a fusion load disaggregation method for low sampling data from smart meters. The combination of the K-median algorithm and DTW were used to identify the operation states of appliances and estimate the power using optimized support vector regression (OSVR) according to the consumption pattern feature of the appliance. The proposed method is suitable for low sample data scenes and requires low computational complexity (only active power being used). We provide performance comparisons against the literature using the FHMM method and the approach using DTW, having analyzed the sensitivity of the proposed algorithm with the number of sample feature, proving that OSVR is better than SVR for power estimation.

98 2. Proposed Method
Aggregation Power Clustering and Appliance Identification through DTW
Power Retrieve
Performance Evaluation Metrics
Performance Comparison
Proposed Method
Time Consumption Comparison of Power Trajectory Estimation
Estimation Performance Comparison between OSVR and SVR
Method Limitations and Ways to Address Them
Findings
Conclusions
Full Text
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