基于机器学习方法的人工神经网络建模实现能源

V. Prasad, P. Venkateswarlu, S. Raju, N. K. Darwante
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引用次数: 0

摘要

智能建筑的能源使用预测和调度是实施节能管理系统的必要条件。管理智能电网技术是实现系统容量和成本实时变化的关键技术。各种方法和模型用于预测和调度能源。本研究在使用机器学习技术之前分析了各种模型。这里,使用了人工神经网络和gan的组合。为了测试所提出的模型,使用了一个实时SB测试平台。这里使用CompactRIO来训练和评估所提出的模型,通过使用从光伏太阳能系统和S B电器收集的实时数据来实现人工神经网络。作为对部署现实世界的S - B测试平台和研究机器学习作为能源消耗预测和调度的可能领域感兴趣的研究人员的蓝图,所提出的模型已经开发出来,尽管它的准确性和数据集适中。
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ANN Modelling based on Machine Learning Approach to Accomplish Energy Source
Predicting and scheduling energy use in Smart Buildings (SB) is essential for implementing Energy-Efficient Management Systems. Managed Smart Grid technology is a critical component for the system's capacity and cost variances to be in real-time. Various methods and models are used to anticipate and schedule energy. This study has analyzed various models before utilizing the machine learning techniques. Here, a combination of ANNs and GANs are used. To test the proposed model, a real-time SB testbed is used. CompactRIO is used here to train and evaluate the proposed model by using the real-time data collected from a PV solar system and S B electrical appliances for ANN implementation. As a blueprint for researchers interested in deploying real-world S B testbeds and investigating machine learning as a possible arena for energy consumption prediction and scheduling, the proposed model has been developed, despite its moderate accuracy and dataset.
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