Smart meter measurements, though critical for accurate demand forecasting, face several drawbacks including consumers' privacy, data breach issues, to name a few. Recent literature has explored Federated Learning (FL) as a promising privacy-preserving machine learning alternative which enables collaborative learning of a model without exposing private raw data for short term load forecasting. Despite its virtue, standard FL is still vulnerable to an intractable cyber threat known as Byzantine attack carried out by faulty and/or malicious clients. Therefore, to improve the robustness of federated short-term load forecasting against Byzantine threats, we develop a state-of-the-art differentially private secured FL-based framework that ensures the privacy of the individual smart meter's data while protect the security of FL models and architecture. Our proposed framework leverages the idea of gradient quantization through the Sign Stochastic Gradient Descent (SignSGD) algorithm, where the clients only transmit the `sign' of the gradient to the control centre after local model training. As we highlight through our experiments involving benchmark neural networks with a set of Byzantine attack models, our proposed approach mitigates such threats quite effectively and thus outperforms conventional Fed-SGD models.
翻译:智能计量虽然对准确的需求预测至关重要,但面临若干缺陷,包括消费者隐私、数据违约问题等。最近的一些文献将联邦学习公司(FL)作为一个充满希望的隐私保护机器学习替代方案,可以合作学习模型,而不暴露私人原始数据,用于短期负荷预测。尽管标准FL有其优点,但标准FL仍然易受被称为Byzantine攻击的棘手网络威胁,即错误和(或)恶意客户进行的Byzantine攻击。因此,为了改进对拜占庭威胁的联邦短期负载预测的稳健性,我们开发了一个先进的、有差别的私人安全FL框架,确保个体智能仪数据的隐私,同时保护FL模型和架构的安全。我们提议的框架利用了通过信号Stochatic Graentigent(SignSGD)算法(SignSGD)的梯度分化概念,客户只在当地模型培训后将梯度的“信号”传送到控制中心。我们通过实验将神经网络与一套Byzantine-D攻击模型作为基准,我们建议的方法有效地减轻了这些威胁。