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Different Predictive Control Strategies for Active Load Management in Distributed Power Systems with High Penetration of Renewable Energy Sources

机译:可再生能源高渗透的分布式电力系统中有效负载管理的不同预测控制策略

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In order to achieve a Danish energy supply based on 100% renewable energy from combinations of wind, biomass, wave and solar power in 2050 and to cover 50% of the Danish electricity consumption by wind power in 2020, it requires more renewable energy in buildings and industries (e.g. cold stores, greenhouses, etc.), and to coordinate the management of large numbers of distributed energy resources with the smart grid solution. This paper presents different predictive control (Genetic Algorithm-based and Model Predictive Control-based) strategies that schedule controlled loads in the industrial and residential sectors, based on dynamic power price and weather forecast, considering users’ comfort settings to meet an optimization objective, such as maximum profit or minimum energy consumption. Some field tests were carried out on a facility for intelligent, active and distributed power systems, which is built around a small power grid with renewable power generations (two wind turbines and solar panels), a vanadium battery for storage, EV-charging infrastructure for EVs, and an intelligent office building. The simulation and field tests demonstrated that GA-based and MPC-based predictive control strategies are able to achieve load shifting and enable end users to participate in market-based power systems, and thus profit from optimal consumption of energy in relation to price and supply of ancillary services in the power system, as well as improve grids with integration of high penetration of renewable energy sources, which could lead to reducing reinforcements in the future power systems.
机译:为了实现基于100%的可再生能源从风能,生物质能,波浪和太阳能发电的组合的丹麦能量供给在2050和覆盖在2020年在丹麦的电力消耗通过风功率的50%,它要求在建筑物中更多的可再生能源和行业(如冷饮店,大棚等),并与智能电网解决方案的协调大量分布式能源的管理。本文呈现出不同的预测控制(基于遗传算法和基于控制模型预测)战略,在工业和住宅部门计划控制的负载,基于动态电价和天气预报,考虑到用户的舒适设置,以满足优化目标,如利润最大化或最小的能源消耗。一些现场试验上对智能,活性和分布式电源系统的设施,其围绕与可再生能源发电世代(两个风力涡轮机和太阳能电池板)小的电网建,钒电池存储进行,EV-充电设施为电动车,以及智能办公楼。表明基于遗传算法和基于MPC预测控制策略,能够实现削峰填谷,使最终用户能够参与到以市场为基础的动力系统,因而相对于能源的最优消费利润的价格和供应的模拟和现场试验在电力系统的配套服务,以及改善与可再生能源,这可能导致减少在未来的电力系统增援高渗透的一体化格栅。

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