Abstract

Non-urgent high energy-consuming residential appliances, such as pool pumps, may significantly affect the peak to average ratio (PAR) of energy demand in smart grids. Effective load monitoring is an important step to provide efficient demand response (DR) to PAR. In this paper, we focus on pool pump analytics and present a deep learning framework, PUMPNET, to identify the pool pump operation patterns from power consumption data. Different from conventional time-series based Non-intrusive Load Monitoring (NILM) methods, our approach transfers the time-series data into image-like (date-time matrix) data. Then a U-shaped fully convolutional neural network is developed to detect and segment the image-like data in pixel level for operation detection. Our approach identify whether pool pumps operate given thirty-minute interval aggregated active power consumption data in kilowatt-hours only. Furthermore, the PUMPNET algorithm could identify pool pump operation status with high accuracy in the low-frequency sampling scenario for thousands of household, compared to traditional NILM algorithms which process high sampling rate data and can only apply to limited number of households. Experiments on real-world data validate the promising results of the proposed PUMPNET model.

Highlights

  • Smart grids are modern electrical grids supplying electricity with monitoring and reacting to local demands, which result in an intelligent, high-efficient, and sustainable method in electricity delivery (Siano 2014)

  • We propose a pool pump operation detection network (PUMPNET) to overcome inconsistent patterns of thousands of device

  • Related works we mainly focus on previous on-off detection deep learning models to demonstrate the inappropriateness of previous works to our scenario

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Summary

Introduction

Smart grids are modern electrical grids supplying electricity with monitoring and reacting to local demands, which result in an intelligent, high-efficient, and sustainable method in electricity delivery (Siano 2014). There is a high peak to average power ratio (PAR) of energy demand in grids. Energy providers and operators usually adopt demand response (DR) programs to feedback the real-time load of customers, including direct load control programs, load curtailment programs, time of use pricing and real-time pricing (Jordehi 2019). These programs require centralized load monitoring performed to acquiring load sequence (2021) 4:1

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