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A MULTI-AGENT SHARED MACHINE LEARNING APPROACH FOR REAL-TIME BATTERY OPERATION MODE PREDICTION AND CONTROL

机译:实时电池运行模式预测和控制的多代理共享机器学习方法

摘要

A method, system, and device for controlling energy storage devices are provided, the method including receiving a trained machine learning model from a centralized machine learning system, recording temporal data for a respective energy storage device, periodically transmitting the temporal data to the machine learning system, performing a mode prediction for controlling the energy storage device using the trained machine learning model and the temporal data, and sending a control signal to the energy storage device to operate in the predicted mode. The machine learning system aggregates the temporal data transmitted by each agent and uses the aggregated temporal data to update the machine learning model. By using aggregated temporal data, less data is needed from an individual energy storage device so that when a new energy storage device joins the machine learning system, the new energy storage device can benefit from increased performance with less computation.
机译:提供了一种用于控制能量存储设备的方法,系统和设备,该方法包括从集中式机器学习系统接收训练后的机器学习模型,记录各个能量存储设备的时间数据,将时间数据周期性地发送至机器学习系统,执行模式预测以使用训练有素的机器学习模型和时间数据来控制能量存储设备,并将控制信号发送到能量存储设备以在预测模式下运行。机器学习系统聚合每个代理发送的时间数据,并使用聚合的时间数据更新机器学习模型。通过使用聚合的时间数据,单个能量存储设备需要的数据更少,因此,当新的能量存储设备加入机器学习系统时,新的能量存储设备可以受益于性能提高且计算量更少。

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