Abstract

Non-intrusive load monitoring, a convenient way to discern the energy consumption of a house, has been studied extensively. However, most research works have been carried out based on a hypothetical condition that each electric appliance has only one running state. This leads to low identification accuracy for multi-state electric appliances. To deal with this problem, a method for identifying the type and state of electric appliances based on a power time series is proposed in this paper. First, to identify the type of appliance, a convolutional neural network model was constructed that incorporated residual modules. Then, a k-means clustering algorithm was applied to calculate the number of states of the appliance. Finally, in order to identify the states of the appliances, different k-means clustering models were established for different multi-state electric appliances. Experimental results show effectiveness of the proposed method in identifying both the type and the running state of electric appliances.

Highlights

  • Non-intrusive load monitoring (NILM) has been studied extensively in smart grids as a convenient way to discern the energy consumption of a house by analyzing aggregated signals [1]

  • The switching event detection process detects the on and off states of an electric appliance according to transient signal characteristics

  • There are already various non-intrusive load identification methods [9,10,11]; most research works have been carried out based on a hypothetical condition that each electric appliance only has one running state

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Summary

Introduction

Non-intrusive load monitoring (NILM) has been studied extensively in smart grids as a convenient way to discern the energy consumption of a house by analyzing aggregated signals [1]. The NILM method includes several processes, such as switching event detection [3,4,5], non-intrusive load decomposition [6], non-intrusive load identification, and so on. There are already various non-intrusive load identification methods [9,10,11]; most research works have been carried out based on a hypothetical condition that each electric appliance only has one running state. With the development of science and technology, the type of electric appliance and the running state of each electric appliance is increased; that is, lots of electric appliances have multiple states In such a situation, electric appliance identification becomes more and more difficult

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