基于神经网络和区块链的低压配电网负荷预测

Lauren M. Qaisieh, N. Tawalbeh
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引用次数: 1

摘要

本文提出了一种高效可靠的短期负荷预测算法,可以确定最终用户的最佳运行状态。提出的解决方案结合了配电公司的智能电表读数、天气条件和以前的消耗数据,并将它们输入到一个可靠的基于神经网络的负荷预测和调度算法中,以确保最佳运行条件。预测的电力消耗数据将呈现给最终用户,以规划最佳的能源使用。此外,基于区块链的通信系统用于整个网络的信息交换。最终用户将把他们的实际电力消耗数据发送给公用事业供应商,以确保电厂的计划运行和有效利用,并实施动态定价。
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Load Forecasting Using Neural Networks and Blockchains for Low Voltage Distribution Networks
This work presents an efficient and reliable short term load forecasting algorithm that can determine the optimal operating conditions for end consumers. The proposed solution combines smart meters readings from the electrical distribution company along with weather conditions, and previous consumption figures and feeds them into a reliable neural network-based load forecasting and scheduling algorithm to ensure optimal operating conditions. Predicted power consumption figures will be presented to end users to plan for optimal energy usage. Furthermore, A Blockchain-based communication system is used for information exchange throughout the network. End users will have their actual power consumption figures sent to the utility provider to ensure the planned operation and efficient use of power plants and implementation of dynamic pricing.
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