使用深度学习技术的可再生能源系统能量建模

Suryanarayan Sharma, D. Yadav
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引用次数: 0

摘要

使用可持续能源系统(RES)的社区寻求通过整合可再生能源来满足其电力需求,同时减少对公用事业的依赖。此外,智能微电网使人们更容易获得控制能源使用的服务,这可能会降低当地的公用事业成本。这些基础设施受到机器学习技术、大数据、人工智能、物联网和传感器技术的影响。机器学习技术的新进步需要产生精确的学习方法,这些方法可以用于电力分析过程,例如监测、预测、预测、调度和决策。这将改善电力控制援助和可再生能源的推广。然而,随着智能电网系统问题的复杂性(如非线性和不可预测性)的增加,由此产生的能源数据格式的复杂性也在增加。学习过程不能由基本的ML方法完成,因为它只能评估基本的原始数据。因此,尽管数据结构复杂而广泛,但可以使用深度学习(DL)方法。在这项研究中,将开发卷积神经网络(CNN)作为学习模型,以提供未来电力使用和可再生能源装置的精确预测。一旦使用卷积过程从过去检索到有趣的模式,则使用回声状态网络来学习时间特征。得到的时空特征表示最终给出全连通层进行预测。该方法是在对深度学习和机器学习模型进行全面测试后开发的。与最先进的模型相比,结果表明,推荐的模型作为生产资源和消费者之间的能源平衡模型,使用MAE、MSE、RMSE和NRMSE指标的预测误差显著降低。
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Renewable Energy Systems Energy Modeling using Deep Learning Techniques
Communities using Sustainable Energy Systems (RES) seek to meet their electrical needs while reducing their reliance on public utilities by integrating renewable energy sources. Additionally, an intelligent micro grid makes it simple to access services for controlling energy use, which might lower utility costs for locals. These infrastructures are influenced by ML technologies, big data, AI, the IoT, and sensor technologies. New advancements in ML technology are required to produce precise learning approaches that can be used in the electricity analytical process, such as such monitoring, forecasting, prediction, scheduling, and decision-making. This will improve power control assistance and the spread of renewable energy sources. However, as the complexity of issues with the smart grid system, such as non-linearity and unpredictability, rises, so does the complexity of the resulting energy data format. The learning process cannot be completed by the fundamental ML approach since it can only evaluate fundamental raw data. Therefore, despite the data’s intricate and extensive structure, the Deep Learning (DL) approach may be used. A Convolutional Neural Network (CNN) will be developed in this study as a learning model to provide precise forecasts of future power usage and renewable energy installations. The echo state network is used to learn temporal features once interesting patterns have been retrieved from the past using the convolution process. The resultant spatiotemporal feature representation is ultimately given to fully connected layers for prediction. The proposed method was developed after thorough testing of both deep learning and machine learning models. When compared to state-of-the-art models, the results show that the recommended model performs as a model for energy equilibrium among production resources and consumers, with significant decreases in forecasting errors using MAE, MSE, RMSE, and NRMSE metrics.
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