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Privacy Enhanced Energy Prediction in Smart Building using Federated Learning

机译:利用联合学习,隐私增强了智能建筑的能量预测

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Prediction of energy consumption is useful in energy budgeting of smart grids, expenditure budgeting by consumers, and comfort management of smart buildings. Essentially, building management systems of smart buildings need to manage energy, efficiently. In order to do this, energy prediction plays an important role. The energy consumption, in general, is predicted using machine learning algorithms. However, machine learning algorithms demand massive amounts of data for performing well. Acquisition of this data from data owners can lead to privacy breaches. Federated learning is a framework of distributed systems which can mitigate privacy breaches to certain extent. Federated learning has as such been developed for mobile edge devices like vehicles, phones etc. In this paper, a novel application of federated learning framework focused on the smart building energy prediction scenario is presented. The architectural details on how the federated learning framework is applied is presented. Also, the performance of this prediction model as compared to centralized method of machine learning is discussed. Deep neural networks are used with the American Society of Heating, Refrigerating and Air-Conditioning Engineers (ASHRAE) dataset to realize and evaluate this architecture.
机译:能源消耗预测可用于智能电网的能源预算,消费者支出预算和智能建筑的舒适化管理。基本上,智能建筑的建设管理系统需要有效地管理能源。为此,能量预测发挥着重要作用。通常使用机器学习算法预测能量消耗。但是,机器学习算法需要大量的数据进行良好。从数据业主获取此数据可能会导致隐私泄露。联合学习是分布式系统的框架,可以减轻特定程度的隐私泄露。提出了联合学习,如此,介绍了在本文中为车辆,手机等开发的移动边缘设备。提出了一种专注于智能建筑能量预测场景的联邦学习框架的新颖应用。介绍了如何应用联合学习框架的架构细节。而且,讨论了与集中式机器学习方法相比的这种预测模型的性能。深度神经网络与美国加热,制冷和空调工程师(ASHRAE)数据集一起使用,实现和评估这座架构。

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