基于知识提炼的新型轻量级框架,用于降低多模式太阳辐照度预测模型的复杂性

IF 9.7 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL Journal of Cleaner Production Pub Date : 2024-09-16 DOI:10.1016/j.jclepro.2024.143663
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引用次数: 0

摘要

太阳能本身的不确定性给电网并网、短期能源规划和调度带来了巨大困难。深度学习方法以其强大的学习能力使预测短期太阳能成为可能,但其复杂的模型结构和庞大的可训练参数给实际部署带来了很大困难。因此,本文提出了一种基于知识提炼策略的轻量级框架,在保证可接受精度的同时,大大降低了多模态太阳辐照度预测模型的复杂度,为实际部署提供了便利。首先,基于 ResNet18-Informer 建立了具有多模态结构和良好精度的教师模型。然后,利用所提出的轻量级框架,根据教师模型的知识获得轻量级模型。分析了各种模型的比较和知识提炼的最佳设置。结果表明,轻量级模型可以将可训练参数、推理时间和 GPU 内存分别减少 97.7%、52.5% 和 36.3%。与结构相同但未进行知识蒸馏的模型相比,归一化均方根误差减少了 24.87%,验证了拟议框架的优越性。使用比率为 0.3 的轻损失软损失可以获得最佳的轻量级模型训练效果。在太阳辐照度预测任务中,具有 3 个残差块和 3 个 LSTM 层的结构被证明是轻量级模型的最佳结构。
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A new lightweight framework based on knowledge distillation for reducing the complexity of multi-modal solar irradiance prediction model

The inherent uncertainty of solar energy brings great difficulties to the grid connection and short-term energy planning and dispatching. Deep learning method makes it possible to predict the short-term solar energy with its powerful learning ability, but its complex model structure and huge trainable parameters bring great difficulties to the practical deployment. Therefore, this paper proposes a lightweight framework based on knowledge distillation strategy, which greatly reduces the complexity of multi-modal solar irradiance prediction model meanwhile ensuring an acceptable accuracy, facilitating the practical deployment. Firstly, a teacher model with multi-modal structure and good accuracy is built based on ResNet18-Informer. Then, the lightweight model is obtained by the proposed lightweight framework depending on the knowledge of teacher model. The comparisons of various models and the optimal settings of knowledge distillation are analyzed. Results show that the lightweight model can reduce the trainable parameters, inference time, and GPU memory by 97.7%, 52.5%, and 36.3%, respectively. The normalized root mean square error is reduced by 24.87% compared with the same structure model but without knowledge distillation, verifying the superiority of the proposed framework. The soft loss using the light loss with the ratio of 0.3 can obtain the best training results for the lightweight model. The structure with 3 residual blocks and 3 LSTM layers is proved to be the best for the lightweight model in the solar irradiance prediction task.

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来源期刊
Journal of Cleaner Production
Journal of Cleaner Production 环境科学-工程:环境
CiteScore
20.40
自引率
9.00%
发文量
4720
审稿时长
111 days
期刊介绍: The Journal of Cleaner Production is an international, transdisciplinary journal that addresses and discusses theoretical and practical Cleaner Production, Environmental, and Sustainability issues. It aims to help societies become more sustainable by focusing on the concept of 'Cleaner Production', which aims at preventing waste production and increasing efficiencies in energy, water, resources, and human capital use. The journal serves as a platform for corporations, governments, education institutions, regions, and societies to engage in discussions and research related to Cleaner Production, environmental, and sustainability practices.
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