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Advisor(s)
Abstract(s)
Specific information about types of appliances and their use in a specific time window could
help determining in details the electrical energy consumption information. However, conventional
main power meters fail to provide any specific information. One of the best ways to solve these
problems is through non-intrusive load monitoring, which is cheaper and easier to implement than
other methods. However, developing a classifier for deducing what kind of appliances are used at
home is a difficult assignment, because the system should identify the appliance as fast as possible
with a higher degree of certainty. To achieve all these requirements, a convolution neural network
implemented on hardware was used to identify the appliance through the voltage and current (V-I)
trajectory. For the implementation on hardware, a field programmable gate array (FPGA) was used
to exploit processing parallelism in order to achieve optimal performance. To validate the design,
a publicly available Plug Load Appliance Identification Dataset (PLAID), constituted by 11 different
appliances, has been used. The overall average F-score achieved using this classifier is 78.16% for the
PLAID 1 dataset. The convolution neural network implemented on hardware has a processing time
of approximately 5.7 ms and a power consumption of 1.868 W.
Description
Keywords
Non-intrusive load monitoring Convolution neural network V-I trajectory Hardware classifier FPGA . Faculdade de Ciências Exatas e da Engenharia
Citation
Publisher
MDPI