需求侧管理中基于智能代理的空调人口直接负荷控制

Pegah Yazdkhasti, Julian Luciano Cárdenas–Barrera, Chris Diduch
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引用次数: 0

摘要

将风能和太阳能等波动性可再生资源整合到现有电力系统中,对电网可靠性和这些资源的无缝整合提出了挑战。为解决可再生能源发电固有的不稳定性,直接负荷控制成为需求侧管理的一种可行方法。空调等恒温控制电器在这种方法中发挥着重要作用。然而,有效的直接负荷控制需要准确的负荷大小估计和负荷转移的潜力。在本文中,我们介绍了一种智能代理架构,该架构采用数学模型来预测总体耗电行为,即使控制器引入了变化。为了评估系统性能,我们开发了一个数值模拟器,证明了系统对变化的适应能力、自我训练能力以及在预测总耗电量方面的持续改进能力。
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Smart Agent-Based Direct Load Control of Air Conditioner Populations in Demand Side Management
The integration of fluctuating renewable resources such as wind and solar into existing power systems poses challenges to grid reliability and the seamless incorporation of these resources. To address the inherent variability in renewable generation, direct load control emerges as a promising method for demand-side management. Thermostatically controlled appliances, like air conditioners, hold a significant role in this approach. However, effective direct load control necessitates accurate load magnitude estimation and the potential for load shifting. In this paper, we introduce a smart-agent architecture that employs a mathematical model to forecast aggregated power consumption behavior, even when changes are introduced by the controller. To assess system performance, a numerical simulator was developed, demonstrating the system’s adaptability to changes, its self-retraining capability, and its continuous improvement in predicting aggregated power consumption.
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