Lightweight LSTM Model for Energy Theft Detection via Input Data Reduction
Caylum Collier, Krishnendu Guha

TL;DR
This paper introduces a lightweight LSTM-based energy theft detection system with a pre-filter mechanism that significantly reduces energy consumption while maintaining high detection accuracy in smart grids.
Contribution
It presents a novel pre-filtering watchdog mechanism that reduces input data to the LSTM model, enhancing energy efficiency without sacrificing detection performance.
Findings
Power consumption reduced by over 64%
High detection accuracy maintained with minimal loss
Effective across multiple theft scenarios
Abstract
With the increasing integration of smart meters in electrical grids worldwide, detecting energy theft has become a critical and ongoing challenge. Artificial intelligence (AI)-based models have demonstrated strong performance in identifying fraudulent consumption patterns; however, previous works exploring the use of machine learning solutions for this problem demand high computational and energy costs, limiting their practicality -- particularly in low-theft scenarios where continuous inference can result in unnecessary energy usage. This paper proposes a lightweight detection unit, or watchdog mechanism, designed to act as a pre-filter that determines when to activate a long short-term memory (LSTM) model. This mechanism reduces the volume of input fed to the LSTM model, limiting it to instances that are more likely to involve energy theft thereby preserving detection accuracy while…
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