基于深度神经网络的智能家居微电网可再生能源发电预测

Purwanto, Hermawan, Suherman, D. A. Widodo, N. Iksan
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引用次数: 0

摘要

本研究在微观尺度上实施智能电网是为了满足家庭用电需求。太阳能等可再生能源的使用将通过智能电网整合,这样家庭就可以独立供电,而不依赖国家电力。此外,与国家电网整合后,还可以降低每月的电费成本。智能微电网还可以提供能源管理服务,如监测、预测、预测、调度和决策,这些服务由人工智能、智能传感器等一些技术支持,从而使消费者的用电效率更高。在本研究中,采用深度神经网络(DNN)和门递归单元(GRU)作为结构模型开发了预测方法。选择GRU模型是因为它比LSTM、Auto-LSTM、Auto-GRU模型性能更好,MAE和MSE分别为0.0342和0.00245。
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Renewable Energy Generation Forecasting on Smart Home Micro Grid using Deep Neural Network
The implementation of smart grid on a micro scale in this study was for household electricity fulfillment needs. The use of renewable energy sources such as solar power will be integrated through a smart grid so that households can become independent in providing electricity and not depend on state electricity. Besides, it can also reduce monthly electricity costs when integrated with the state electricity network. Smart Micro Grid also enables the availability of energy management services such as monitoring, prediction, forecasting, scheduling and decision-making that was supported by some technologies such as artificial intelligent, smart sensors so that consumer use of electricity was more efficient. In this research, the forecasting method developed using the Deep Neural Network (DNN) and the Gate Recurrent Unit (GRU) as the architectural model. The GRU model was chosen because it has better performance compared to other models, namely LSTM, Auto-LSTM, Auto-GRU with MAE and MSE values of 0.0342 and 0.00245.
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