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引用次数: 15

摘要

需求响应是当前和未来电网系统面临日益增加的可变性和峰值需求的关键组成部分。扩展需求响应需要有效地预测大量消费者的个人响应,同时选择正确的信号。本文提出了一个新的在线学习问题,该问题捕获了消费者多样性、消息传递疲劳和响应预测。我们使用多武装强盗模型的框架来解决这个问题。这产生了简单且易于实现的基于索引的学习算法,具有可证明的性能保证。
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Online learning for demand response
Demand response is a key component of existing and future grid systems facing increased variability and peak demands. Scaling demand response requires efficiently predicting individual responses for large numbers of consumers while selecting the right ones to signal. This paper proposes a new online learning problem that captures consumer diversity, messaging fatigue and response prediction. We use the framework of multi-armed bandits model to address this problem. This yields simple and easy to implement index based learning algorithms with provable performance guarantees.
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