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Micro-grid energy dispatch optimization and predictive control algorithms; A UC Irvine case study

机译:微电网能源调度优化和预测控制算法;加州大学尔湾分校的案例研究

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Distributed power and energy resources are now being used to meet the combined electric power, heating, and cooling demands of many buildings. The addition of on-site renewables and their accompanying intermittency and non-coincidence requires even greater dynamic performance from the distributed power and energy system. Load following generators, energy storage devices, and predictive energy management are increasingly important to achieve the simultaneous goals of increased efficiency, reduced emissions, and sustainable economics. This paper presents two optimization strategies for the dispatch of a multi-chiller cooling plant with cold-water thermal storage. The optimizations aim to reduce both costs and emissions while considering real operational constraints of a plant. The UC Irvine campus micro-grid operation between January 2009 and December 2013 serves as a case study for how improved utilization of energy storage can buffer demand transients, reduce costs and improve plant efficiency. A predictive control strategy which forecasts campus demands from weather predictions, optimizes the plant dispatch, and applies feedback control to modify the plant dispatch in real-time is compared to best-practices manual operation. The dispatch optimization and predictive control algorithms are shown to reduce annual utility bill costs by 12.0%, net energy costs by 3.61%, and improve energy efficiency by 1.56%.
机译:现在,已使用分布式电源和能源来满足许多建筑物的综合电力,供暖和制冷需求。现场可再生能源的增加及其伴随的间歇性和非巧合性,要求分布式电力和能源系统具有更高的动态性能。负载跟随发电机,能量存储设备和预测性能源管理对于实现提高效率,减少排放和可持续经济的同时目标越来越重要。本文提出了一种具有冷水蓄热的多机组冷却装置调度的两种优化策略。这些优化旨在降低成本和排放,同时考虑工厂的实际运营限制。加州大学欧文分校校园微电网于2009年1月至2013年12月运营的案例研究表明,如何提高储能利用率可以缓解需求瞬变,降低成本并提高工厂效率。与最佳实践手动操作相比,一种预测控制策略可以根据天气预报预测校园需求,优化工厂调度,并应用反馈控制实时修改工厂调度。显示调度优化和预测控制算法可将年度水电费成本降低12.0%,净能源成本降低3.61%,能源效率提高1.56%。

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