Abstract

Globally, solar photovoltaic (PV) installations on distribution LV feeders have increased significantly. The increased penetration leads to several technical problems on existing networks and impacts utilities’ business models as energy sales drop. For proactive management of these challenges, utilities need to continually monitor the capacity of installed PV. To this end, some utilities typically require PV installations to be registered and sometimes use GIS mapping to approximate the installed PV capacity. However, these GIS PV capacity estimations methods are unreliable. Therefore, to obtain reliable PV capacity estimates at a distribution level, comprehensive modeling is required to accurately represent the generation output and the distribution load. This paper proposes a novel probabilistic PV estimation method that uses time-series historical sets of load and irradiance data to estimate the embedded PV capacity while considering the uncertainty in solar irradiance and the measured net load. Uncertainty characterization is implemented using empirical probability density functions, and simulation is performed stochastically using Monte-Carlo methods. A novel quantile analysis approach is developed and used in the computation of the final PV estimates. The proposed methodology is tested using measured load data from Ausgrid customers, Australia, and achieves reasonable accuracy (between 86% and 90% for the tested cases) and a 10% mean absolute percentage error. This approach is robust to the effects of input uncertainty and can be used by distribution utilities to estimate and monitor PV capacity installed on the distribution networks without incurring extra advanced metering investment costs.

Highlights

  • In contrast to the geographical information systems (GIS) methods, disaggregation models have been used to estimate the PV capacity installed at the customer level using customer load data

  • 3) KEY GAPS IN LITERATURE This paper addresses critical gaps in the existing literature concerning the estimation of PV capacity

  • This paper focuses on residential low voltage (LV) PV systems where PV systems are allowed to export power back to the grid

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Summary

INTRODUCTION

In contrast to the GIS methods, disaggregation models have been used to estimate the PV capacity installed at the customer level using customer load data These methods have been used to inform other areas of energy informatics. The literature includes a wide range of studies that are focused on estimating instantaneous PV generation from aggregated load data where the installed PV capacity is known The method requires common sets of data to estimate the PV capacity on a distribution feeder as opposed to extensive AMI data seen in related studies This makes the estimation process less costly to the DNOs. This paper focuses on residential LV PV systems where PV systems are allowed to export power back to the grid.

OVERVIEW OF THE PROPOSED METHODOLOGY
Stochastic Expansion
VALIDATION OF THE METHODOLOGY
A PRACTICAL CASE STUDY
B Without controlled loads
Findings
CONCLUSION
Full Text
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