集成能源监控物联网系统及神经网络控制演示验证结果

Douglas Ellman, Pratiksha Shukla, Yuanzhang Xiao, M. Iskander, Kevin L. Davies
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引用次数: 0

摘要

越来越多地使用可再生能源和分布式发电为客户资源创造了机会,通过调整电力消耗和发电来支持电力系统运行,以满足全系统和当地电网的需求。我们提出了一个集成的能源物联网(E-IoT)测试平台,包括:(1)具有传感、通信和控制功能的分布式高级实时电网能源监测系统(ARGEMS);(2)分布式智能家居站点,包括用于监测和控制物理和模拟物联网(IoT)分布式能源(DERs)的智能家居中心,如太阳能系统、家用电池和智能电器;(3)基于人工智能和优化的控制算法,对客户der进行管理,使其在满足客户需求的同时响应电网状况。这三个组件的集成可以演示和评估各种先进的DER监测和控制策略,以改善电网运行和客户利益。我们通过在物理智能家居集线器上运行的神经网络模仿学习算法来演示模拟家用电池的控制,从而验证了该E- IoT试验台的功能,其中控制器根据本地电力系统测量和模拟的大容量电力系统条件响应ARGEMS设备触发的电网服务事件。所开发的神经网络控制器模仿模型预测控制优化算法的性能,但所需的计算时间减少了近2万倍,并且可以在小型分布式计算机上运行。
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Integrated Energy Monitoring and Control IoT System and Validation Results from Neural Network Control Demonstration
Increasing use of renewable and distributed power generation creates opportunities for customer resources to support power system operations by adjusting power consumption and generation to address grid needs, based on system-wide and local grid conditions. We present an integrated Energy Internet of Things (E-IoT) testbed including (1) distributed Advanced Realtime Grid Energy Monitor Systems (ARGEMS) with sensing, communication, and control capabilities, (2) distributed smart home sites, including smart home hubs for monitoring and control of physical and simulated Internet of Things (IoT) distributed energy resources (DERs) such as solar systems, home batteries, and smart appliances, and (3) control algorithms based on artificial intelligence and optimization, which manage customer DERs to respond to power grid conditions while serving customer needs. The integration of these three components enables demonstration and assessment of a variety of advanced DER monitoring and control strategies for improved power grid operations and customer benefits. We validate the functionality of this E- IoT testbed by demonstrating control of a simulated home battery by a neural network imitation learning algorithm running on a physical smart home hub, where the controller responds to grid services events triggered by an ARGEMS device based on local power system measurements and simulated bulk power system conditions. The developed neural network controller imitates the performance of a model predictive control optimization algorithm, but requires nearly 20,000 times less computational time and can run on small distributed computers.
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