An Asymmetric Loss with Anomaly Detection using LSTM Framework for Power Consumption Prediction

International Journal of Innovative Research in Science Engineering and Technology 14 (4):9348-9352 (2025)
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Abstract

Building an accurate load forecasting model with minimal under predictions is vital to prevent any undesired power outages due to underproduction of electricity. However, the power consumption patterns of the residential sector contain fluctuations and anomalies making them challenging to predict. In this paper, we propose multiple Long Short-Term Memory (LSTM) frameworks with different asymmetric loss functions to impose a higher penalty on underpredictions. We also apply a density based spatial clustering of applications with noise (DBSCAN) anomaly detection approach, prior to the load forecasting task, to remove any present outliers.

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