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Load control for supply-demand balancing under Renewable Energy forecasting

机译:可再生能源预测下供需平衡的负载控制

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This paper integrates the conception of forecasting Renewable Energy (RE) sources and the user's load demands with intelligent Demand Side Management (DSM) under smart DC micro-grid (SDMG) architecture. The RE are mainly consisting of intermittent solar and wind generators, while the load demands are classified as base (uncontrollable) loads and flexible (controllable) loads. The base loads are priority loads and are served in real time, while flexible loads could be operated intelligently according to the availability of the supply. We integrate a day-ahead prediction mechanism for RE, so that we can schedule a day-ahead consumption accordingly. Practically, these predictions are attained with certain level of forecasting errors, causing imbalance in supply and demands at real-time. This imbalance also known as RE uncertainty, will make the power system unstable. To address the dynamic behavior of SDMG and to balance supply and demands, we propose a novel robust control strategy for controllable flexible demands. To simplify our system we make the generation and demands deterministic, by employing intelligence of Support Vector Machine (SVM) learning algorithm. We then incorporate SVM with novel Sliding Mode Control (SMC) for scheduling consumer's flexible loads to make DSM more efficient and accurate. The energy allocation mechanism to consumer demands is made analogous to non-linear fluid flow model. The simulations have established an effective forecasted data using SVM and efficient balancing results of supply and demand using SMC.
机译:本文将可再生能源(RE)源(RES)和用户负载需求的概念集成了智能DC微网格(SDMG)架构下的智能需求侧管理(DSM)。该RE主要由间歇的太阳能发电机组成,而负载需求被归类为基础(无法控制)负载和柔性(可控的)负载。基本负载是优先级负载,并且实时服务,而可以根据电源的可用性智能地操作柔性负载。我们整合了一天的预测机制,以便我们可以相应地安排一天的消费。实际上,这些预测具有一定程度的预测误差,在实时导致供需不平衡。这种不平衡也称为RE不确定性,将使电力系统不稳定。为了解决SDMG的动态行为和平衡供需,我们提出了一种用于可控灵活需求的新型强大控制策略。为了简化我们的系统,我们通过采用支持向量机(SVM)学习算法的智能来实现生成和需求确定性。然后,我们将SVM与新颖的滑动模式控制(SMC)合并,用于调度消费者的灵活负载,使DSM更高效和准确。对消费者需求的能量分配机制类似于非线性流体流动模型。模拟已经建立了使用SVM的有效预测数据,并使用SMC的供需平衡结果。

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