A methodological analysis of consumption patterns and anomaly detection in prepaid and postpaid metering systems: an N-BEATS-driven predictive modeling approach
Abstract
The introduction of the prepaid metering system has caused severe dissatisfaction
among the masses, claiming that there was a noticeable spike in the bills of their
monthly electricity bill. This issue was addressed in this thesis paper through a
rigorous investigation, comparing the existing prepaid metering system with the
previously used post-paid metering system to identify the underlying causes of this
discrepancy. Related datasets were collected through the Dhaka Power Distribution
Company (DPDC), mainly focusing on the Paribagh, the first area introduced
with this intelligent prepaid meter system. The dataset includes 22,000 individual
customers’ billing information, and then a robust survey was conducted to accumulate
1797 households’ information on appliance usage, family size, and other relevant
factors.
To predict the prepaid and postpaid consumption trends, we incorporated the deep
learning model N-BEATS, which efficiently forecasts time series data. We also
conducted several operations on our prepaid and postpaid data to better address the
issue. Moreover, we deployed the isolation forest model to address the anomalies
that would align with the underlying cause of the dissatisfaction of the masses.
To assist in validating our survey data, we deployed several data validation methods,
such as the Kolmogorov-Smirnov test, and Pearson’s correlation. Furthermore, Pearson’s
correlation technique has been used to demonstrate the correlation between
prepaid and postpaid appliance usage. With N-BEATS providing a crystal difference
between prepaid and postpaid data, Isolation Forest also directed us to the
irregularities that may lean towards the reason for the increased billing.
To address customers’ growing concerns, the authority might find our findings fruitful
in solving the irregularities to ensure a seamless transition to the prepaid system.
This research also illustrates actionable recommendations to ensure a satisfactory
customer experience with transparent energy billing.