An Adaptive Deep Learning Framework for Day-ahead Forecasting of Photovoltaic Power Generation
Xing Luo, Dongxiao Zhang

TL;DR
This paper introduces an adaptive deep learning framework using LSTM with a two-phase learning strategy and drift detection to improve day-ahead photovoltaic power generation forecasting accuracy amidst concept drift.
Contribution
It proposes an adaptive LSTM model with a novel two-phase learning strategy and drift detection algorithm to handle concept drift in PV power forecasting.
Findings
AD-LSTM outperforms offline LSTM in accuracy.
The model effectively detects and adapts to concept drift.
Superior to traditional machine learning and statistical models.
Abstract
Accurate forecasts of photovoltaic power generation (PVPG) are essential to optimize operations between energy supply and demand. Recently, the propagation of sensors and smart meters has produced an enormous volume of data, which supports the development of data based PVPG forecasting. Although emerging deep learning (DL) models, such as the long short-term memory (LSTM) model, based on historical data, have provided effective solutions for PVPG forecasting with great successes, these models utilize offline learning. As a result, DL models cannot take advantage of the opportunity to learn from newly-arrived data, and are unable to handle concept drift caused by installing extra PV units and unforeseen PV unit failures. Consequently, to improve day-ahead PVPG forecasting accuracy, as well as eliminate the impacts of concept drift, this paper proposes an adaptive LSTM (AD-LSTM) model,…
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Taxonomy
MethodsSigmoid Activation · Tanh Activation · Long Short-Term Memory
