2024
DOI: 10.18280/ts.410148
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Deep Learning-Based Auto-LSTM Approach for Renewable Energy Forecasting: A Hybrid Network Model

Deenadayalan Venkatraman,
Vaishnavi Pitchaipillai

Abstract: In recent years, renewable energy forecasting has gained increasing attention due to its potential to minimize energy resource usage and maximize the security of power plant operation. Deep learning models have emerged as a promising tool for renewable energy prediction. However, the application of these techniques for renewable energy forecasting remains sparse. In this work, we introduce a deep belief network-based auto-LSTM approach that utilizes a wireless sensor network (WSN) for energy forecasting in sol… Show more

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